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Article

A Lean Approach to Developing Sustainable Supply Chains

by
Carina L. Gargalo
1,
Eduardo Pereda Pons
2,
Ana Paula Barbosa-Povoa
2 and
Ana Carvalho
2,*
1
Process and Systems Engineering Center (PROSYS), Department of Chemical and Biochemical Engineering, Technical University of Denmark, 2800 Kgs. Lyngby, Denmark
2
Centre for Management Studies (CEG-IST), Instituto Superior Técnico, University of Lisbon, 1649004 Lisbon, Portugal
*
Author to whom correspondence should be addressed.
Sustainability 2021, 13(7), 3714; https://doi.org/10.3390/su13073714
Submission received: 4 December 2020 / Revised: 2 March 2021 / Accepted: 22 March 2021 / Published: 26 March 2021
(This article belongs to the Special Issue Sustainable Management and Multiple Attribute Decision Making)

Abstract

:
Corporations and their supply chains have to go through significant changes to become more sustainable as society is pressing for sustainable systems. To this end, it is critical to develop new methodologies to trim away processes and activities that add no value and, thus, derive more sustainable supply chains. Considering the need to have a simple tool that can be used by managers to achieve this goal, in this work, we explore the value stream mapping method (VSM) and extend it to support the design of sustainable supply chains in a more systematic and quantitative way. This work proposes a new generic methodology, called SustainSC-VSM, which allows assessing the supply chain’s performance through a set of realistic indicators. These indicators are designed to identify bottlenecks that hinder sustainable operations development and provide guidelines to achieve that goal by following a lean-driven sustainability approach. SustainSC-VSM was tested and validated through its application to a relevant industrial case study, where operational bottlenecks were pinpointed and potential solutions were identified to seek continuous improvement. Although envisioned to be generic and applicable to all supply chains, the indicators should be selected according to the context in study (e.g., services). SustainSC-VSM aims at being a generic and systematic tool to design future value stream maps to achieve a more sustainable supply chain following a lean-driven sustainability approach, through the use of multi-dimensional and multi-disciplinary indicators to identify and solve the supply chain’s bottlenecks.

1. Introduction

Worldwide stressors, such as climate change and a consciousness of social and environmental responsibilities, along with stronger competition and lower profit margins, have been forcing companies to vigorously act to maintain their competitiveness and to commit to sustainable practices and performance management [1,2]. Both academics and industries are motivated to find the best way to simultaneously include all three aspects of sustainability (economic, environmental and social) to achieve meaningful and beneficial results. Lean management has proven to be a handy and innovative tool to promote continuous improvement, and to be easily adaptable to include sustainability aspects [1]. It is an evolving methodology that targets the highest quality, profitability and customer service level, at the lowest possible costs, in a prompt fashion, through the continuous reduction in waste regarding value-added and non-value-added operations [3]. The unavoidable effect of evolving drivers over the years, such as expanded business networks and customer needs and demands, has motivated the change in focus to the supply chain management level [1,4,5,6]. “(SCM) encompasses the planning and management of all activities involved in sourcing and procurement, conversion, and logistics management activities” [7]. Lean management has been broadened to include all the actors of the supply chain. In this context, Vonderembse et al. [8] described “lean supply chain” as the “continuous improvement of efforts that target the reduction of waste and non-value-added activities along the value chain.” Thus, from the sustainability angle, it has been proven that it is impossible to observe environmental and social policies and preserve competitiveness without collaboration among supply chain actors [1,9]. Due to the ongoing interest and need to implement corporate environmental and social policies, combining lean management and sustainability has become more popular. An increasing number of studies have proven that there are clear positive impacts (economic, environmental and social) on the supply chain performance when lean is linked to sustainability [10]. Intensive research has been conducted on the interaction and the pursuit of sustainability, application of lean management and supply chain management practices. Since one of the lean operational goals is to keep or improve the production quality but reduce the use of resources, lean principles lead to more environmentally friendly operations due to lower waste produced and thus lower environmental impact. By reducing the quantity of materials used, the costs are also reduced, and therefore sustainability’s economic facet is likewise addressed. Increasing quality and efficiency leads to water and energy consumption improvements, which also gets reflected in the costs. Henceforth, by implementing the lean principles, one also achieves the main sustainability goals. More and more research has been suggesting the substantial overlap, similarities and synergies between these two concepts and how to use them [11].
Table 1 summarizes the most relevant and popular lean tools developed over the years that attempt to tackle this issue of combining these two concepts: thriving towards sustainability by applying lean principles. Notwithstanding, and as documented in Table 1, many studies have focused on developing tools that are usually based on qualitative models and, more specifically, operations. Improvements towards sustainable supply chains have not been widely explored in the literature and process bottlenecks have been identified in a qualitative way, which leads to missing some important critical points and misleading actions. There is an overall lack of generic, systematic and quantitative approaches to tackle supply chain bottlenecks and point out ways to overcome these matters towards more sustainable supply chains. Therefore, the following research question (RQ) can be formulated and will be answered by this work:
RQ: How can a value stream mapping (VSM) methodology be extended to sustainable supply chain management analysis, so that bottlenecks can be identified and improved in a systematic, accurate and quantitative way?
Henceforth, this work differs from the previous studies in the field by proposing a new methodology called SustainSC-VSM, whose goal is to systematically combine sustainability, lean philosophy and supply chain management into a holistic, quantitative and qualitative methodology. SustainSC-VSM is a systematic tool that measures the supply chain performance and provides guidelines to attain a more sustainable supply chain following a lean-driven sustainability approach by guiding the manager through the steps needed to trim away processes and operations that add no value to the whole value chain. This work introduces the following novel contributions:
(i)
Proposes a new methodology, which integrates the extended VSM (EVSM) [12] methodology with SustainPro’s systematic approach [13];
(ii)
Introduces new multi-disciplinary qualitative and quantitative indicators that represent and analyze all facets of sustainability to measure the supply chain performance;
(iii)
Through the use of indicators, the whole supply chain is assessed in terms of the three pillars of sustainability. The assessment of materials and information flows between the supply chain actors is performed;
(iv)
Identifies, in a quantitative way, the supply chain’s bottlenecks, as well as providing potential solutions, prioritization of actions and recommendations to overcome the identified bottlenecks;
(v)
Facilitates creating future value stream maps to attain a (more) sustainable supply chain.
In summary, SustainSC-VSM aims at being a generic and systematic tool that, following a lean-driven sustainability approach through the use of indicators, identifies and improves the supply chain’s bottlenecks. Such tool supports the design of a value stream map that will inform decision makers to achieve a (more) sustainable supply chain.
The remainder of the manuscript is organized as follows. In Section 2, the background literature referring to the tools used to develop the SustainSC-VSM methodology is described. Section 3 describes the methodology proposed in this work. The case study description and the results of the application of the methodology are presented in Section 3. Lastly, key conclusions are drawn and “take-home” messages are formulated in Section 4.

2. Methodology for Lean Design of Sustainable Supply Chains: SustainSC-VSM

The main goal of this work is to propose a new generic and systematic step-by-step methodology to extend the analysis to the sustainable supply chain context, facilitating the identification of bottlenecks in a quantitative way and providing guidelines on the creation of a future value stream map, where lean principles are incorporated alongside pertinent indicators. Thus, it is targeted towards achieving a more sustainable and efficient supply chain. Figure 1 presents the proposed methodology, which is called SustainSC-VSM. This new methodology incorporates two methodologies: (i) extended value stream mapping (EVSM) and (ii) SustainPro, further extending them to the context of sustainable supply chains.
SustainSC-VSM based its roots in EVSM because, as described in Table 1, this is a useful tool to identify and screen waste in the supply chain in a qualitative way [12]. Moreover, its straightforwardness and uniform language convert EVSM into a valuable tool for managers that can be used in all kinds of supply chains. However, one of the significant limitations in EVSM analysis is the lack of an available quantitative procedure, which often leads to cumbersome tasks. Moreover, this methodology does not take into consideration the sustainability aspects, and therefore, to tackle this challenge, in the new methodology SustainSC-VSM, EVSM is combined with SustainPro.
SustainPro is a framework that incorporates an indicator-based methodology to design new sustainable alternatives in any chemical process [13]. SustainPro implements the methodology proposed by Carvalho et al. (2008) [36] and Carvalho et al. (2009a) [37]. SustainPro is able to decompose complex systems in smaller parts and assess them quantitatively. However, to cover the whole supply chain and not only the production of chemical processes, SustainPro needs to be adapted and extended to include indicators that fit sustainable supply chain purposes. The indicators integrated in SustainSC-VSM are multi-dimensional and multi-disciplinary and are designed to measure supply chain performance and effectively point out its bottlenecks.
The SustainSC-VSM steps are described in the following subsections.

2.1. Step 1: Extended Value Stream Mapping (EVSM)

In this step, the sequence of operations and entities within the supply chain is represented through EVSM [12]. There are eight tasks, and they are described as follows:
Task 1: Identify the product family. A product family encompasses a group of products, which follow very similar process steps. Two products that have the same or similar functionality or features are a potential example.
Task 2: Define a convenient field of view. Due to the often complex nature of the supply chain, Womack and Jones (2002) [12] proposed dividing the entire supply chain into different parts; however, they did not indicate how to do it and they did not propose any quantitative decomposition. To this end, to extend the scope of EVSM, SustainSC-VSM splits the complex structure of the supply chain into smaller areas named open paths, which are proposed in SustainPro (see Step 2, path decomposition).
Task 3: Create the work team, including all supply chain entities and companies. Note that this task is not mandatory.
Task 4: Determine the level of detail of the EVSM by setting clear system boundaries. It is essential to note that the EVSM’s scale is broader than the VSM, which is limited to facility-level boundaries.
Task 5: Collect the information about the flowrates, lead times and value-added time.
Task 6: Map the backflow from the supply chain’s last entity, which triggers the entire production of the upstream process. As mentioned, since the full supply chain is a complex process, it is recommended to map each entity as a single process. The different entities can be separated into factories, warehouses/cross-docks and retailers. Each entity is defined by its standard symbol, along with the describing data. The required data for each entity are as follows:
  • Factory: (i) average time that the flow spends in the raw materials’ warehouse; (ii) time that the flow is being processed; (iii) time spent in the final goods warehouse; and (iv) the ratio of defects and every part every interval (EPEI).
  • Retailer: demand (daily or weekly) for each product of the family.
  • Warehouse: (i) ratio of product defects; and (ii) average time that the product flow stays in the warehouse.
Task 7: Mapping of transportation using predefined symbols. It is essential to distinguish between the expected shipment, including its frequency, and the expedited shipment flow. It is necessary to represent the frequency of the rush or special orders (between the facilities). To clearly describe the shipment characteristics, the following data are required: (i) distance between entities; (ii) time between facilities; (iii) average order of shipment (batch size); and (iv) average ratio of defects of the shipment process. This information is further analyzed in Step 3 of the methodology.
Task 8: Mapping of the transport flows. This information entails: (i) the frequency of the communications; and (ii) the processing time of the information data identified by each production control department.
At the end of this step, the user can comprehensively envision the sequence of all supply chain activities. All activities, with and without value added, are pinpointed following their sequence and connection. Furthermore, after defining the current stream map, all data needed to describe the supply chain operations (see the complete set of data collected in Table 2) are collected as part of this methodology step.

2.2. Step 2: Path Decomposition

In this step, the supply chain network structure identified in Step 1 is decomposed by breaking it down into smaller areas to simplify the identification of bottlenecks. These smaller areas are determined by applying graph theory [38], which is implemented in SustainPro [13] and incorporated in SustainSC-VSM. Hence, all the mass and energy flow paths are split into open and closed paths for each compound in the process. The closed paths are recycled flows that start and end in the same entity. On the other hand, open paths are flows of a specific compound/part/unit with an entrance and an exit of the system. The “entrance” of a compound is due to one of two events, feed stream or production in a production facility, whereas the “exit” means that the compound gets out of the system or is consumed in a given process of the supply chain. SustainPro is used to identify all the open and closed paths and determine each path’s respective flow compound/part/unit.

2.3. Step 3: Calculate Indicators

As previously discussed, there is a lack of systematization when integrating the different parts of the supply chain to improve operations sustainability. Furthermore, despite the guidelines proposed by [12], which steps are necessary to achieve an improved value stream map is not always evident. Thus, to lead and motivate companies to embrace sustainability, in this work, a new set of indicators is proposed to assess the supply chain paths comprehensively. The proposed indicators cover all three sustainability pillars and create a new information area to ensure optimal coordination between entities to improve performance. The indicators should cover the most popular classification, which divides the indicators into four categories: quality [39,40], time [39,40,41], cost [39,40,42] and flexibility [39,43]. The indicators are applied to all paths to carry out a comparative analysis and prioritize the retrofit actions to be taken to improve the current value stream map. Noteworthy is that most of the indicators inbuilt in the SustainSC-VSM methodology are generic and applied to the different types of supply chains covering the manufacturing, chemical process-based supply chains and service-based supply chain. The user must select from the list of indicators the ones that translate the activities of the supply chain to be studied. It often occurs that trade-offs among objectives must be made. Furthermore, companies are not recommended to improve all indicators simultaneously, since this will require high resource investment. Therefore, the SustainSC-VSM methodology aims at guiding the managers to carefully prioritize the indicators following their business goals, in order to succeed in devising a more sustainable future state value stream map. The indicators implemented in the SustainSC-VSM methodology are described in detail in the next subsections. A summary list of all indicators introduced in the proposed methodology (SustainSC-VSM) is presented in Table A1 in Appendix A.
Furthermore, the data required to estimate the economic, environmental, social and information indicators (detailed in Table 3, Table 4, Table 5, Table 6, Table 7, Table 8 and Table 9) are summarized in Table 2. The data required from the companies are data usually available in the different industries, which therefore makes it possible and easy to calculate the indicators presented in Table 3, Table 4, Table 5, Table 6, Table 7, Table 8 and Table 9.

2.3.1. Step 3.1: Economic Indicators

The economic indicators report financial metrics assessing if the company’s resources are being well used to create value and intend to point out other potential ways to create value. In the supply chain management community, it is agreed that accomplishing the strategic goals in any supply chain implies a sound control system, including performance measurements regarding the cost, quality, time and flexibility of the supply chain [39,40]. Therefore, these are the subgroups into which the economic indicators are divided.

Cost

The supply chain cost is one of the most critical aspects of the supply chain’s models. A competitive supply chain requires an in-depth understanding of the distribution cost. To this end, the authors propose a set of relevant indicators to assess the most relevant costs; they are described in Table 3. It is important to note that some of the indicators are adapted from the relevant literature, while the remaining were devised in this work.

Time

The flow of a product usually entails the loss of considerable time going through operations without any value to the client. According to [12], the majority of value streams can be compressed to reduce or even eliminate avoidable processing time. To this end, this subsection proposes three indicators for the purpose of tracking time. The lead time is a pivotal factor in measuring a supply chain’s performance since it directly impacts the inventory performance as well as the production forecast [47]. Short lead times provide a very significant competitive advantage. Shortening the lead time might enable the value stream to respond to real orders, rather than inaccurate forecasts, and reduce waste [12].
Furthermore, the lead time also plays a significant role in the bullwhip effect; a long lead time in replenishment orders intensifies information distortion [48]. Moreover, inventory turnover is a standard metric used to show the number of times that the inventory is consumed in a period. It can be improved by applying economies of scale as local optimization. However, this can lead to the bullwhip effect [48]. To this end, this section proposes a group of indicators to efficiently assess time (see Table 4).

Quality

Measuring quality reflects the capacity of delivering high customer service [40], which means: (i) delivery of minimal defected products; (ii) in the demanded quantity; and (iii) in time [49]. A positive view on the company’s service quality can lead to its long-term survival, while failure to achieve this might seriously damage its viability [50]. Furthermore, many supply chain models assume perfect systems, but, in any production system, there are flaws in the production processes as a result of human error and other causes [51]. Therefore, it is also essential to measure the performance of the production equipment. Buchmeister et al. (2012) [52] pointed out that the Overall Equipment Efficiency level (OEE) of downstream stages has an important influence on inventory oscillation and order variability. Muthian and Huang (2007) [53] proposed the Overall Throughput Effectiveness (OTE) metric to monitor performance at the factory level; this metric is based on OEE, which was firstly introduced by Nakajima (1988) [54]. Thus, to keep track of quality, this work proposes a set of metrics to assess all the relevant facets of quality in the supply chain (see Table 5).

Flexibility

Flexibility is the aptitude to respond to quick changes in supply or demand [40]. Beamon (1999) [39] stated that supply chains’ flexibility should be evaluated with regard to four aspects: volume, delivery, mix and new product. Nevertheless, these aspects are not always a concern for all supply chains since they are product-dependent. Furthermore, [55] singled out time and volume flexibility as a common source of disagreement among buyers and suppliers. Hence, this work covers volume flexibility and time flexibility. Volume flexibility is needed to overcome customer order oscillations, and time flexibility is critical to fulfilling rush or special orders [39] (see Table 6).

2.3.2. Step 3.2: Environmental Indicators

Several quantitative performance metrics have been established to estimate the impact of the supply chain in the environment, such as GHG emissions, material recycling, waste production and energy use, among others [56]. In this work, the most critical environmental indicators identified in the literature [57] were collected and combined into the indicators presented in Table 7.

2.3.3. Step 3.3: Social Indicators

Metrics of the social performance show the company’s policies towards its stakeholders (e.g., suppliers, employees). These indicators provide information about its employment situation and its relationship with private and public institutions or community groups [37]. However, there is still a lack of agreement in the literature regarding the best approach to evaluate social sustainability [59]. Nonetheless, the authors of [59] identified four elements that stakeholders find worthy of protection: (i) labor practices, (ii) human rights, (iii) product responsibility and (iv) society. The indicators proposed in this work cover all the topics mentioned above and are defined in Table 8.

2.3.4. Step 3.4: Information Indicators

Information indicators aim to represent a new sustainability angle to assess the effectiveness of coordination among the supply chain members and the potential benefits of implementing information-sharing policies. The performance of the supply chain highly depends on the quality of the information. The information flows directly impact the inventory levels, shipments and the production schedules [48]. Furthermore, information distortion can lead to the presence of the bullwhip effect. Lee et al. (2004) [48] referred to the bullwhip effect as “the phenomenon where orders to the supplier tend to have a larger variance than sales to the buyer (i.e., demand distortion), and the distortion propagates upstream in an amplified form (i.e., variance amplification)”.
Sabato and Bruccoleri (2005) [62] showed that reducing lead time variability is, in some cases, more effective in removing the bullwhip effect than lowering the average lead time.
The proposed indicators aim to prevent the bullwhip effect and ensure coordination among the supply chain members to reduce the variability of the lead time. These indicators are described in Table 9.

2.4. Step 4: Bottleneck Identification and Potential Solutions

The indicators defined above are applied to each path, and based on their values, the managers can potentially identify the most critical areas of the supply chain. In Table 10, a few guidelines and recommendations are suggested to improve each indicator separately and improve the supply chain’s overall sustainability.
Noteworthy is that, based on Step 4, it is then possible to follow the recommendations and overcome the identified bottlenecks, therefore leading the user to the future value stream map (Figure 1).

3. Results

To validate the SustainSC-VSM methodology, as presented in Figure 1, Section 2, a case study of the supply chain of a heat exchanger manufacturer is used (adapted from Persson (2011) [64]). The case study presented in Figure 2 was selected as a good representative supply chain since (i) it refers to a relatively large company in Denmark and Nordic countries with an international supply chain; (ii) it has a discrete flow, which shows the applicability of SustainSC-VSM to the manufacturing and services sectors; and (iii) the data collected are real and complete.
Raw materials such as stainless steel, copper and other metals are obtained from different suppliers (1a, 2a and 3a, respectively) and transported to the main central manufacturing component unit in Ronneby, Factory A (1, 2). The critical components are subsequently distributed to the three supply units: Ronneby (4), Italy (5) and China (6). Connections are setup locally for each supply unit (3, 7, 8). Distribution centers supply the U.S. (13) and the after-market (10, 12). The remaining companies and end customers are supplied by all supply units but not through the distribution centers (11, 14, 15).
Streams 18, 19 and 20 represent the final products (heat exchangers) when they are sold to be implemented in the physical plant.
A critical component used in the end product manufacture is produced in the component unit in Ronneby. Its production process is divided into two parts: one part that supplies the Ronneby supply unit in a make-to-order (MTO) environment, and the second part produces the component in a make-to-stock (MTS) environment (forecast-based). Moreover, the supply units (Ronneby S.U. and Italy S.U) are produced in an MTO environment. In this work, the case study is framed around the whole network. However, it only includes the “after-market” and the “U.S. market” as customers. Therefore, the flows were adapted to reflect this. Although this simplification somewhat changes the final results, it is sensible to accept the obtained results as valid, since the supply chain structure is already quite complex.

3.1. Step 1: Extended Value Stream Map

The supply chain structure presented in Figure 2 should be decomposed into three EVSMs since it has three known customers. However, due to space constraints, we will focus on the detailed representation and analysis of the after-market and the U.S. market EVSMs, as presented in Figure 3 and Figure 4.
The Italian factory is located in Monza [65], and the distribution center is located in Denmark [66].
The required data to produce the EVSMs are summarized in Table 11 and Table 12 and they were collected as follows:
  • The distances between the different units were obtained by using Google Maps;
  • The data needed for the complete description of the data boxes (EPEI, defects, inventory days, batch and demand) of the EVSM were collected from the Alfa Laval sustainability report [67];
  • The demand was estimated based on the Alfa Laval sustainability report [67] and by applying some assumptions, such as: (i) the heat exchangers represent 40% of the sales in the equipment divisions, and (ii) the after-market represents 35 % of the total market share.
The production control entities are the offices where the information flows are managed in the supply chain (all data are shared electronically between entities). As previously mentioned, the share of the component unit that serves Italy S.U. works in an MTS environment. The supply unit and the part of the component unit that serves Ronneby S.U. works in an MTO environment. Thus, the supply units only schedule batches in response to a confirmed order. Furthermore, the data reported in Table 13 were estimated in resemblance to the EVSM described in [12] and considering the supply chain description presented in [64]. The EVSM representation of the after-market was developed in this work, depicted in Figure 3. The nature and the frequency of the information flow are detailed in Table 13. Note that the information flows in Figure 3 are linked to the number presented in the first column.
The material flows of the EVSM presented in Figure 3 are described as follows:
  • The steel and copper suppliers send a weekly shipment of 150 coils to the Ronneby C.U.;
  • The component unit is manufactured in the Ronneby C.U.;
  • A fraction of the finished items are sent to the Italy S.U. by truck, and the others are sent to the Ronneby S.U. by milk run;
  • The heat exchangers are manufactured in each supply unit. The heat exchangers are made of the component unit, which was sent earlier from the Ronneby C.U., and a connection component, which was acquired from a local supplier;
  • Once the heat exchangers are manufactured, the supply units’ factories send the finished product to the distribution center in Denmark;
  • The finished goods are distributed to all the retailers in the distribution center.
The information flows of the EVSM presented in Figure 3 are described as follows:
  • All retailers send daily information on the sales to the office of customer production control;
  • All data are processed in the production control office, and the shipment orders are sent to the distribution center;
  • The distribution center sends the shipments’ confirmation back to the office of customer production control;
  • The office of customer production control also sends the consumption data and the orders to the production control;
  • The information is then processed in Ronneby’s production control office, and orders are sent to the supply units located in Ronneby and Italy;
  • The Ronneby and Italy supply units send weekly and daily confirmation of the shipments, respectively;
  • The Ronneby production control office also sends daily material requirements to the suppliers;
  • The Ronneby production control office sends the monthly production forecast to the Ronneby C.U.
The EVSM of the U.S. customer market developed in this work is represented in Figure 4. The distribution center is located in Indianapolis, where Alfa Laval has a distribution center that supplies the U.S. market (https://www.alfalaval.com/globalassets/images/misc/partnerdays/alfalavalpartnerdays2018-programme.pdf, accessed on 1 January 2021).
The data presented in this step aim to depict the supply chain operations in a consistent and straightforward manner. The EVSM representation identified all the activities in accordance with their sequence and relationships.
Furthermore, as previously mentioned, the supply chain’s structure and the production approach of each entity were obtained from Persson (2011) [64] and Alfa Laval’s sustainability report [67]. However, in the sustainability report, the given figures include all company operations, mostly not relevant to this work. Thus, some assumptions were needed to be made to collect the required data.
The total inventory, lead time, demand, defective flow and inventory required for the EVSM are presented in Table 12 and Table 13. Table 14 and Table 15 summarize the details for each entity and transport flows. The sources of information used are detailed in Appendix B, Section 3. A summary of the data regarding the open paths is shown in Table 16.

3.2. Step 2: Path Decomposition

SustainPro [13] was used to generate the open paths for the two EVSMs previously mentioned. The reader is referred to Carvalho et al., 2008 [36,69] for details on SustainPro’s inbuilt methodology used for path decomposition. Thus, network decomposition was applied, and a total of 15 open paths were obtained, representing the whole supply chain. However, since this study, as mentioned before, focuses solely on the paths related to the after-market and the U.S. customer market, only the corresponding open paths will be analyzed. This totals to nine out of the fifteen open paths identified, as presented in Table 17. The path decomposition for the nine open paths is presented in Table 17, where each path is linked to a component and a flow which forms the flow-path.

3.3. Step 3: Calculation of the Indicators

In this section, the indicators included in the SustainSC-VSM methodology are estimated for all the open paths. As mentioned in the detailed description of the indicators presented in Section 2, Step 3.1, the indicators EILC (Entity Inventory Level Cost) and OLTF (Operational Lead Time Factor) characterize the supply chain’s entities. Thus, Table 18 and Table 19 summarize the indicators with regard to EILC and OLTF. In contrast, Table 20 summarizes the remaining indicators’ values, which correspond to the U.S. market and the after-market open paths. As observed, the worst paths regarding the EILC and OLTF indicators are OP1 and OP9, respectively. The most critical open path with regard to inventory is OP1 (see Table 18); thereby, the EILC indicator is applied only to this path. In terms of the lead time, the most critical is OP9.

3.4. Step 4: Bottleneck Identification and Potential Solutions

In this section, the supply chain’s bottlenecks are identified and analyzed. Moreover, some suggestions are provided to tackle these bottlenecks. The indicators are grouped in the same order as presented in the description of the methodology in Section 2.

3.4.1. Economic Indicators

The economic indicators are analyzed in Table 21 to identify the potential creation of wealth for the customer and assess the organization’s resource effectiveness in the supply chain. The higher the performance, the greater the level of competitiveness of the supply chain.

3.4.2. Information Indicators

The information indicators are analyzed in Table 22 to identify potential improvements regarding the coordination of information and material flows.

3.4.3. Environmental Indicators

The environmental indicators are assessed and discussed in Table 23 to identify the bottlenecks regarding the supply chain’s environmental performance.

3.4.4. Social Indicators

Finally, to achieve a more socially sustainable supply chain, the social indicators are analyzed to improve its performance. They are presented and discussed in Table 24.
The presented indicators point out all the significant supply chain bottlenecks. The indicators provide sufficient and adequate information to guide the development of the future state of EVSM. It is important to note that, as presented in Figure 5, OP9 is the one that shows the highest number of critical points. Therefore, the recommendation is that this path should be the one to be tackled first.
In summary, the main outcomes/achievements of applying the SustainSC-VSM methodology to the case study are as follows:
(i)
It leads to the identification of hot spots (e.g., flow of steel from supplier to the component unit in Ronneby and its transport to the Ronneby supply unit seem to be a critical point due to high levels of inventory);
(ii)
It provides suggestions to overcome these hot spots (e.g., change current MTS policy to MTO in order to reduce unnecessary inventory);
(iii)
It guides the user towards the development of the future state of the value stream map based on the suggestions provided, allowing the development of a more sustainable supply chain.

4. Conclusions

A novel methodology (SustainSC-VSM) is proposed in this work and it aims at being a systematic tool to design the future value stream map that will support the attainment of a (more) sustainable supply chain. This follows a lean-driven sustainability approach where a set of indicators is used to identify and solve the supply chain’s bottlenecks. SustainSC-VSM is based upon: (i) the lean viewpoint of zero wastes, smooth flow and adding value for the customer; (ii) the sustainability concepts, cutting the use of unnecessary resources; and (iii) the coordination of information to improve overall performance. Furthermore, guidelines to tackle the bottlenecks identified are also given. This methodology was tested and validated through its application to a relevant and real industrial case study. The indicators provided sufficient and adequate information to guide the user through the identification of the bottlenecks, and along with the provided recommendations, it was possible to derive the future state of the value stream map. Therefore, SustainSC-VSM proved to be an efficient tool to enhance the overall supply chain’s performance and sustainability.
SustainSC-VSM has many managerial benefits. (a) It allows visually mapping the operations of the supply chain in a sustainable perspective. (b) It turns VSM into being applicable to supply chains and increases the confidence in the bottlenecks’ identification. VSM is usually a visual and qualitative tool and SustainSC-VSM allows the decision makers, through a set of indicators, to clearly identify and prioritize actions towards a more sustainable supply chain. (c) Decision makers can use SustainSC-VSM in any sector and easily eliminate indicators that do not fit their purposes or add additional indicators that are relevant for their core business. (d) SustainSC-VSM decomposes complex supply chains in paths, which allows managers to clearly identify problems in complex systems, which are usually not comprehensive due to their complexity. (e) The proposed indicators are also a powerful tool for supply chain managers to quantify the improvements they have made. This will allow them to monitor their sustainability performance and also to communicate internally and with their stakeholders about the improvements achieved.
Although validated on a manufacturing case study, the proposed methodology is flexible and adaptable to other industries and sectors. Suggestions for further research include the analysis of additional case studies, so that some additional guidelines can be developed for the inclusion or exclusion of indicators according to the type of supply chain (service-based, chemical-based, etc.). Moreover, multicriteria decision analysis methodologies could be employed in order to explore potential trade-offs among indicators. This would provide a simpler way to communicate with the decision maker.

Author Contributions

C.L.G.: Methodology validation, writting and revision, E.P.P.: Methodology development, case study application, writting, A.P.B.-P.: revising and supervision A.C.: Methodology development, case study application, writting, revising and supervision. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

Nomenclature

AF—Allocation factor [mass or volume allocation]
AHP—Analytic Hierarchy Process
BC—Backorder Cost indicator (EUR)
BE—Bullwhip Effect [ratio]
CCorruption [Number of lawsuits]
Cap—Capacity
CDE—Carbon Footprint [ton CO2]
CE—Carbon Emissions [ton CO2]
C.U.—Component Unit
DDD—Delivery Due Date
Def—Defective flow
DemcDemand of compound c
DemeDemand of Entity e
eEntity
E—Total number of entities in a given path
EC—Energy Cost [EUR]
EDD—Earliest Due Date
EE-VSM—Energy and Environment VSM
EILC—Entity Inventory Level Cost
En—Energy consumed in each entity of the path
EPA—Environmental Protection Agency
EPEIEvery Part Every Interval
EVM—Environmental VSM
EVSM—Extended Value Stream Map
FAR—Fatal Accident Rate [Event/ (workers*time)]
FG—Finished Goods
Fop—Flow of the open path
FTF—Flexibility Time Factor [ratio]
FVF—Flexibility Volume Factor [ratio]
Gen—Green Energy
HC—Holding Cost
Hs—Highest Salary
Inv—Inventory
IT—Inventory Turn [time units]
JIT—Just in Time
KPI—Key Point Indicator
LE—Labor Equity [ratio]
Ls—Lowest Salary
LT—Lead time
LTF—Lead Time Factor [time units]
MVA—Material Value Added [EUR]
MF—Mass flow
Ne—Number of Employees
Ninc—Number of Incidents
Nls—Number of Lawsuits
OLTF—Operational Lead Time Factor [dimentionless]
OEE—Overall Equipment Efficiency
OP—OK-Parts indicator [%]
OTE—Overall Throughput Effectiveness [%]
p—Path
P—Total number of paths passing in that entity
PExPrice of the product when leaving the supply chain
PEnPrice of the raw material or the product before the value-added chain
PUtPrice of the utility (fuel, electricity, etc.) []
Rm—Raw mMaterial
SC—Supply Chain
SE—Sustainable Energy [%]
SKU—Stock Keeping Units
SLQF—Service Level Quantity Factor [dimentionless]
SLTF—Service Level Time Factor [dimentionless]
SSCM—Sustainable Supply Chain Management
SMED—Single Minute Exchange of Dies
S.U.—Supply Unit
TFop—Theoretical Flow of Open path
TILC—Total Inventory Level Cost [EUR]
TOC—Theory of Constraints
TPM—Total Preventive Maintenance
VF—Volume flow
VLT—Variability Lead Time [time units]
VSM—Value Stream Map
WWaste
WF—Waste Factor [ratio]
Wh—Working Hours
WIP—Work in Progress

Appendix A. Indicators

Table A1. Summary of all indicators proposed in the SustainSC-VSM methodology.
Table A1. Summary of all indicators proposed in the SustainSC-VSM methodology.
IndicatorDescriptionUnits
Material Value AddedValue added in the supply chain per pathEuro
Energy CostThe cost of energy consumption per pathEuro
Total Inventory Level CostThe cost of the inventory per pathEuro
Entity Inventory CostThe percentage of cost that represents each entityRatio
BackorderThe total value of lost sales per pathEuro
Lead Time FactorThe total lead time per pathTime
Operational Lead Time FactorThe percentage of time that represents each entityRatio
Inventory TurnsThe inventory that takes longer to empty per pathTime
Service Level Quantity FactorThe accomplishment of the delivered quantity per pathRatio
Service Level Time FactorThe accomplishment of the delivered time per pathRatio
OK-PartsThe quality of the delivered product per pathPercentage
Overall throughout effectivenessComparing actual to maximum attainable productivity p.e.p.Percentage
Volume FlexibilityThe capacity to adapt to volume demand changes per pathRatio
Time FlexibilityThe capacity to adapt to time demand changes per pathRatio
Carbon EmissionThe CO2 emissions into the environment per pathTons CO2
Waste FactorThe disposal of waste material per pathRatio
Sustainable EnergyThe ratio of renewable energy used per pathPercentage
Labor EquityThe distribution of employee compensation per pathRatio
Fatal Accident RateStatistical method that reports the number of incidents per pathInc/(Em*Time)
CorruptionThe total number of lawsuits per pathLawsuits
Variability of lead timeThe variability of the Lead Time Factor per pathTime
Bullwhip EffectThe demand variation of the first entity per pathRatio

Appendix B. Data Collection

The following data are composed of the information collected in order to apply the SustainSC-VSM methodology to the presented case study.
Price of Utilities: For entities, the data were obtained from (https://www.argusmedia.com/metals-platform/priceindex) (accessed on 24 February 2021). for European electricity prices and from (https://www.eia.gov/electricity/monthly/epm_table_grapher.php?t=epmt_5_03) for the USA electricity price (accessed on 24 February 2021). For transport flows, the fuel (gasoline) prices come from (http://www.globalpetrolprices.com) (accessed on 24 February 2021).
Energy Consumption: The consumption was estimated from the annual report (92.381 MWh) and the Alfa Laval ratio (EUR 1 million of value added/300 MWh) [67]. For transport flows, the energy consumption was determined assuming the average fuel consumption of a truck (17.4l/100 km) [70].
Holding Cost: The holding cost was estimated considering the premise: the more complex the component, the higher the cost, and from the annual figures of the inventory cost (SEK 258 million) [67].
Green Energy: For entities, the consumption of green energy was estimated from the annual report of the company (827 MWh) [67]. The annual report figures consider all the divisions of Alfa Laval; therefore, the data are just a fraction of the report figures. For transport flows, it was assumed that all the trucks are gasoline engine vehicles; therefore, the green energy is estimated as 0 in all the transport paths.
Employees: The number of employees was estimated from the annual report figures of the company [67]. The annual report figures consider all the divisions of Alfa Laval (16.468 employees); therefore, the data are just a fraction of the total number. In the allocation of employees in each factory, the amount of flow and the nature of the entity were considered. For example, a factory requires more employees than a distribution center.
Capacity: The process capacity of each facility was estimated from the data of the demand. The higher the demand for an entity, the higher the process capacity of the entity.
Carbon Footprint: For entities, the carbon footprint of the entities was estimated using two sources of information:
  • The annual report (34.440 tons CO2 manufacturing) [67];
  • The ratio between transport and production emissions (49.777 tons CO2 transport/34.440 tons CO2 manufacturing) [67].
For transport flow, the data of the carbon footprint were estimated using the ratio (105.5 g/(tonne*km)) [67].
Waste:
The defective flows are all the parts/final products that had quality problems and that, therefore, will be waste. Waste is considered as all the parts and final products that are not able to be reprocessed and all other material flows of production or packaging that will be waste. Therefore, waste includes the defective flows.
For entities, the waste was determined adding the defective flow and a complementary mass flow of material disposal which was assumed, since there were no data available.
For transport flows, the waste values match with the defective flow values because the only source of waste is the defects that may occur during the transport. Packaging waste has not been considered.
Lawsuits, Salaries and Incidents: The number of lawsuits, the salaries and the numbers of incidents were assumed, since there were no data available. The number of incidents makes reference to major injury accidents.
Working Hours: Finally, the number of worked hours per year was obtained from (https://data.oecd.org/emp/hours-worked.htm) (accessed on 24 February 2021).
Price of Product and Raw Materials: The price of the steel and copper is from (https://www.argusmedia.com/metals-platform/priceindex) (accessed on 24 February 2021). The final price of the heat exchanger was estimated from an Alfa Laval catalogue (https://pdf.directindustry.com/pdf/alfa-laval/heating-cooling-systems/16602-769212.html) (accessed on 24 February 2021).
Customer Demand, On-Time Flow and Theoretical Flow: The customer demand, the on-time flow and theoretical flow were estimated from the values of the flow of each path.
Delivery Due Date and Earliest Due Date: The delivery and earliest due dates were estimated from the Lead Time Factor.
Variance of Lead Time, Demand and Flow Path: The variances of lead time, demand and flow path were assumed since there were no data available. The mean value was used as a reference on the assumptions.
Open Paths:
Price of Product and Raw Materials: The price of the steel and copper is from (https://www.argusmedia.com/metals-platform/priceindex) (accessed on 24 February 2021).
The final price of the heat exchanger was estimated from an Alfa Laval catalogue (https://pdf.directindustry.com/pdf/alfa-laval/heating-cooling-systems/16602-769212.html) (accessed on 24 February 2021).
Customer Demand, On-Time Flow and Theoretical Flow: The customer demand, the on-time flow and theoretical flow were estimated from the values of the flow of each path.
Delivery Due Date and Earliest Due Date: The delivery and earliest due dates were estimated from the Lead Time Factor.
Variance of Lead Time, Demand and Flow Path: The variances of lead time, demand and flow path were assumed since there were no data available. The mean value was used as a reference on the assumptions.

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Figure 1. SustainSC-VSM methodology.
Figure 1. SustainSC-VSM methodology.
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Figure 2. Case study of the supply chain of a heat exchangers manufacturer. Adapted from Persson (2011) [64].
Figure 2. Case study of the supply chain of a heat exchangers manufacturer. Adapted from Persson (2011) [64].
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Figure 3. EVSM representation of the after-market developed in this work. Blue: supplier stage; green: manufacturing stages; orange: distributor stage; yellow: retailer stage. The EVSM was created in the Lucidchart software [68].
Figure 3. EVSM representation of the after-market developed in this work. Blue: supplier stage; green: manufacturing stages; orange: distributor stage; yellow: retailer stage. The EVSM was created in the Lucidchart software [68].
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Figure 4. The EVSM of the U.S. customer market developed in this work. Blue: supplier stage; green: manufacturing stages; orange: distributor stage; yellow: retailer stage. The EVSM was created in the Lucidchart software [68].
Figure 4. The EVSM of the U.S. customer market developed in this work. Blue: supplier stage; green: manufacturing stages; orange: distributor stage; yellow: retailer stage. The EVSM was created in the Lucidchart software [68].
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Figure 5. Critical points identified per open path.
Figure 5. Critical points identified per open path.
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Table 1. Lean tools and contributions towards sustainable development (SD) in chronological order. Adapted and extended from [1,14].
Table 1. Lean tools and contributions towards sustainable development (SD) in chronological order. Adapted and extended from [1,14].
ToolReferencesBrief Description
5S[15]
  • Encourages a clean and organized work environment (econ, env, soc)
  • Reduces health and safety risks and space needed for operations (econ, soc)
  • Increases job satisfaction rate (soc)
Kaizen[16]
  • Finds opportunities for continuous improvement and waste reduction (env, econ)
  • Reduces environmental impacts and health hazards inside or outside the production boundaries (env)
VSM[17,18]
  • Applied at the factory level (operations)
  • Visual tool to improve information and material flows (econ)
  • Used to obtain a roadmap for improvement by mapping the current and future value streams (track value-added and non-value-added operations) (econ)
  • Promotes waste elimination (econ, env)
  • Helps in tracking and eliminating avoidable and/or unnecessary use of resources (econ, env)
Extended VSM (EVSM)[12]
  • Extension of the VSM tool to the supply chain context (see points mentioned in lean tool VSM) (econ, env, soc)
Kanban and Visual Factory[19]
  • Deals with excessive inventory (the most prejudicial form of waste) (econ, env)
  • Enables good flow of information and items along the supply chain—some studies mention that it can augment the consumption of energy and water (econ, env)
  • Visual factory means the use of codes to promote good communication (econ, env, soc)
  • Facilitates the reduction in waste and good work environment (econ, env, soc)
Visual Management (Andon)[20]
  • Based on feedback alerts to control undesirable situations (econ, env, soc)
  • It provides real-time communication to avoid the propagation of problems along the value chain—associated with effective reduction in waste of resources (econ, env, soc)
  • Reduction in environmental waste and hazard (econ, env)
  • It could be used as alert mechanism for environmental management (env)
Total Productive Maintenance(TPM)[21]
  • Aims to decrease cycle times and reduce defected production and health risks by proactive maintenance (econ, env, soc)
  • Targets to increase production efficiency to reduce the amount of resources used and to avoid wastes (econ, env)
  • By applying preventive and proactive maintenance, it increases equipment life span and can be used to detect the need for the improvement of technology (econ, env)
Single Minute Exchange of Dies (SMED)[22,23]
  • Targets the reduction in changeover times by simplifying operations, reduction in or eradication of redundant tasks and work standardization. Systems become more responsive and with lower inventory levels (econ, env)
  • The goal is to reduce the changeover times to “single” digits (econ, env)
  • Potential reduction in emissions and hazardous chemicals (env)
  • Lower manufacturing costs (less equipment downtime), lower inventory levels and better responsiveness to customer demand (econ, env)
Jidoka (Autonomation)[24]
  • Investigates abnormality, determines root cause and promotes corrective actions (econ, env)
  • Contributes to economic sustainability and waste reduction by eliminating or reducing labor, material and energy usage (costs) (econ, env)
  • Lower health and safety issues (soc)
Just-in-time (JIT)[25]
  • Provides reduced inventories, increased liquidity and reduced space requirements (econ, env)
  • Lower inventories decreases the environmental impact and economic sustainability (econ, env)
Sustainable-VSM[26,27,28,29]
  • Based upon the VSM tool, extended to include environmental, social and sustainable manufacturing metrics (econ, env, soc)
  • Used to pinpoint value-adding and non-value-adding operations (econ, env)
Green VSM[30]
  • Extension of the VSM tool context (see points mentioned in lean tool VSM) (econ, env, soc)
  • It has the characteristics of VSM and additional Kaizan features (econ)
  • Uses a preventive strategy regarding processes, products and services (econ, env, soc)
  • Aims at increased overall efficiency and reduced social and environmental risks (econ, env, soc)
Environmental VSM[31]
  • Extension of the VSM tool (see points mentioned in lean tool VSM) (econ, env, soc)
  • It enables the visualization of an integrated structure of the resources usage (econ, env)
  • Mapping strategy applied to align the economic and environmental aspects in production processes (econ, env)
Energy Value Stream Mapping[32,33]
  • Extension of the VSM tool, including energy components (see points mentioned in lean tool VSM) (econ, env, soc)
  • Identifies the level of energy use and wastage in each step and points out the opportunities for energy savings (non-value-added energy consumption) (econ, env)
  • Leads to the development of a future value stream map taking into account the energy and cost assessment (econ, env)
  • Aids the division of operations and process steps into value- and non-value-added activities (econ, env, soc)
EPA Lean and Energy Toolkit[34]
  • Implements practical strategies and practices to enhance lean results while cultivating energy efficiency and reduction in greenhouse gas emissions, costs and risks (econ, env)
EPA Lean and Environment Toolkit [35]
  • It is developed and used by the EPA to improve environmental results, reduce business costs and risks and identify and eliminate waste (econ, env, soc)
Econ: it contributes to the economic pillar of sustainability; env: it contributes to the environmental pillar of sustainability; soc: it contributes to the social pillar of sustainability.
Table 2. Complete set of data to be collected.
Table 2. Complete set of data to be collected.
Data
EntityPath
Factory/WarehouseTransport
Price UtilityPrice UtilityPrice Product
Energy ConsumptionEnergy ConsumptionPrice Raw Material
InventoryLead TimeCostumer Demand
Holding CostDefective FlowOn Time
Lead TimeCarbon FootprintTheoretical Flow
DemandGreen Energy ConsumptionDue Date for Delivery
Defective FlowNumber of IncidentsEarliest Due Date
Process CapacityEmployeesVariance of Lead Time
Carbon FootprintNumber of LawsuitsVariance of Demand
WasteWasteVariance of Mass Flow
Green Energy ConsumptionLower SalaryPenalty Rate
Number IncidentsHigher Salary
EmployeesWorking Hours per Year
Number of Lawsuits
Demand Downstream Entity
Lower Salary
Higher Salary
Working Hours per Year
Table 3. Economic indicators: cost.
Table 3. Economic indicators: cost.
IndicatorDescriptionReferenceEquationNomenclature
Material Value Added–SC (MVA-SC)MVA-SC estimates the value generated between the start and the endpoint of a given path. This indicator is expressed in EUR, and, consequently, negative values of MVA-SC identify the need for changes/improvements. Adapted from [36] to the supply chain context M V A S C = F o p P E x P E n Equation (1)Fop—flow open path (kg/h)
PEX—final product selling price
PEN—price of raw material
Energy Cost-SC
(EC-SC)
EC-SC provides the value of energy consumption in a certain path. AF specifies the allocation of the energy consumed per path, estimated in mass or volume according to Equations (3) and (4).
As expected, having high values of EC-SC indicates the need for changes/improvements.
Adapted from [36] to the supply chain context E C S C = e = 0 E P U t × E n e × A F e Equation (2)e—entity
Put—price of utility
Ene—energy consumed in each entity of the path
AFe—allocation factor of the energy consumed
MF—mass flow
VF—volume flow
A F = M F p P M F Equation (3)
A F = V F p P V F   Equation (4)
Total Inventory Level Cost (TILC) Inventory is needed to buffer market and operational uncertainties; however, it often hides inefficient management of supply chain processes. This potentially leads to damages to the supply chain competitiveness due to unnecessary and avoidable costs [44]. The inventory cost represents 33% of the logistics cost [45]. To keep track of this, the Total Inventory Level Factor (TILC) indicator provides information about the most critical paths with regard to inventory costs. When keeping more inventory than necessary, the TILC will present high values, which points out excess costs in this regard. Developed in this work I L C = e = 0 E I n v e H C e A f e Equation (5)Inve—inventory of entity e
HCe—holding cost of a given SKU and entity e
Entity Inventory Level Cost (EILC)EILC specifies which entity (or entities) is (are) the most critical in inventory cost, within the identified critical path identified previously by TILC. The closer to 1, the worst the entity performs in terms of inventory costs.Developed in this work E I L C = I n v e × H C e A f e e = 0 E I n v e H C e A f e Equation (6)(see nomenclature given in indicator TILC)
Backorder Cost (BC) Running out of stock potentially leads to the company losing the order. Furthermore, a poor service level might lead the customers to change to a competing company [46]. Hence, monitoring these losses is critical, and this can be achieved by using the BC indicator, which displays the total value of lost sales in a given path. The price of the product suffers an increment due to client compensation. High BC points out inefficiencies.Developed in this work B C = D e m c F O P × 1 + i × P E x ) Equation (7)C—demand of component c
Demcdemand of component c
Table 4. Economic indicators: time.
Table 4. Economic indicators: time.
IndicatorDescriptionReferenceEquationNomenclature
Lead Time Factor (LTF)LTF gives the total lead time of each path. It aims at identifying the critical paths with regard to lead time, which can more easily contribute to a service level problem. High values indicate the need for improvements. Adapted from [37] to the supply chain context L T F = e E L T e Equation (8)LT—lead time of entity e
Operational Lead Time Factor (OLTF)OLTF identifies the most critical entity (or entities) within the critical paths pointed out by LTF. High values indicate potential bottlenecks with regard to the entity’s lead time. Adapted from [37] to the supply chain context O L T F = L T e e E L T e Equation (9)(see nomenclature given in indicator LTF)
Inventory Turnover (IT)IT indicator is used to indicate which inventory takes the longest to empty in a given path. It is only applied to entities with an inventory. High values of IT indicate high lead time, which points to lower agility of the path, and the more noticeable the bullwhip effect. Adapted from [12] to the supply chain context I T = m a x I n v e D e m e Equation (10)Deme—demand of the downstream process in considered time period
Inve—largest inventory of entity e
Table 5. Economic indicators: quality.
Table 5. Economic indicators: quality.
IndicatorDescriptionReferenceEquationNomenclature
Service Level Quantity Factor (SLQF)To keep track of the orders and the product demand quantities, SLQF informs if the orders are being fully satisfied in terms of the amount. When different from 0, it reports that the service level in terms of quantity is not at its best—that path is not satisfying the customer and thus needs to be improved. Developed in this work S L Q F = D e m c F o p D e m c Equation (11)(see nomenclature given in indicators BC and MVA-SC)
Service Level Time Factor (SLTF)Like SLQF, the SLTF indicator informs about the time as a service level by comparing the actual product delivery time to the expected/planned delivery time specified in the order. Values different from 0 indicate that the path’s service level in terms of timely delivery needs improvement. Developed in this work S L T F = F O P O n T i m e F O P Equation (12)OnTime—flowrate of the open path delivered according to the scheduled time
(see nomenclature given in indicator MVA-SC)
OK-Parts (OP) OP keeps track and raises awareness of the defected products in the value stream. It gives the ratio of product flow that successfully reaches the costumers with a suitable quality compared to the total amount produced. The lower the OP value, the worse the quality performance of the path.Developed in this work O P = e = 0 E 1 D e f e A f e F o p 100 Equation (13)Defe—defective flowrate of entity e
(see nomenclature given in indicators EC-SC and MVA-SC)
Overall Throughput Effectiveness (OTE-SC)To go a step further, in this work, we propose the OTE-SC metric to compare actual productivity to the maximum achievable productivity for a given path. Low values of OTE-SC indicate low production performance and the need to improve the production yield.Adapted from [53] to the supply chain context O T E S C = F o p T F o p 100 Equation (14)TFop—theoretical flow of an open path working at full yield
(see nomenclature given in indicators EC-SC and MVA-SC)
Table 6. Economic indicators: flexibility.
Table 6. Economic indicators: flexibility.
IndicatorDescriptionReferenceEquationNomenclature
Flexibility Volume Factor (FVF)FVF assesses if the company can adapt its production to demand variation in terms of quantity. Low values of FVF indicate a low capacity to adjust production to demand variations. Developed in this work F V F = m i n C a p e D e m e C a p e Equation (15)Cape—process capacity of the entity e of a given path
(see nomenclature given in indicator IT)
Flexibility Time Factor (FTF)FTF quantifies the company’s capability to adapt production to meet demand changes regarding time. The lower the value of FTF, the lower the company’s capacity to respond to changes in deadlines. Adapted from [39] to the supply chain context F T F = D D D E D D D D D Equation (16)DDD—due date for delivery
EDD—earliest due date for which delivery can be made
(see nomenclature given in indicator LTF)
Table 7. Environmental indicators.
Table 7. Environmental indicators.
IndicatorDescriptionReferenceEquationNomenclature
Carbon Emissions (CE)CE quantifies the CO2 emissions for each open path. High values of CE indicate the need to adopt more energy-efficient equipment and facilities and/or optimize the supply chain operations. Developed in this work C E = e = 0 E A F e × C D E e Equation (17)CDEecarbon dioxide emissions emitted by entity e
(see nomenclature given in indicator EC-SC)
Waste Factor (WF)WF measures the material waste disposal in the open paths. High values of WF point out a need for improvements and potential opportunities to reduce waste of resources and reduce operating costs by increasing material recycling. Developed in this work W F = e = 0 E W e A F e   F o p Equation (18)Wematerial waste from entity e
(see nomenclature given in indicators MVA-SC and EC-SC)
Sustainable Energy (SE)To motivate companies to commit to using more sustainable energy sources, SE measures the ratio of sustainable energy on the total energy consumed in the supply chain operations. The lower the ratio, the higher the need to adopt more environmentally friendly sources of energy. Adapted from [58] to the supply chain context S E = e = 0 E G e n e A f e e = 0 E E n e A f e 100 Equation (19)Geneconsumption of green energy by entity e
Eneconsumption of energy by entity e
(see nomenclature given in indicator EC-SC)
Table 8. Social indicators.
Table 8. Social indicators.
IndicatorDescriptionReferenceEquationNomenclature
Labor Equity (LE)To assess the labor market, LE describes the distribution of employee compensation. The closer the LE ratio is to one, the better the distribution of equity. Adapted from [60] to the supply chain context L E = m i n L s e H s e Equation (20)LSelowest salary of a given entity e
HSehighest salary of a given entity e including all benefits
Fatal Accident Rate (FAR)FAR is a statistical method that reports the number of fatal incidents [61] of an activity based upon the total number of employees working their entire lifetime. The higher the FAR, the bigger the need to improve procedures and/or change the operations. FAR was firstly proposed by the British chemical industry and here adjusted to the supply chain context. Adapted from [61] to the supply chain context F A R = e = 0 E N i n c e 10 8 e = 0 E N E e W h e Equation (21)Nincenumber of incidents in entity e
NEenumber of employees that work in entity e
Wheworking hours per year in entity e
Corruption (C)C is an attempt to quantify the effect of corruption on the social sustainability of an enterprise. The higher the C, the greater the need to change policies to fight corruption [59]. Developed in this work C = e = 0 E N l s e Equation (22)Nlsenumber of lawsuits in entity e
Table 9. Information indicators.
Table 9. Information indicators.
IndicatorDescriptionReferenceEquationNomenclature
Variability of Lead Time (VLT)VLT aims at monitoring the lead time variability. High values indicate the need to improve the information flow’s stability across a given path within the supply chain.Developed in this work V L T = σ L T F L T F Equation (23) σ L T F standard deviation of the lead time factor of a given path
LTF—lead time factor of a given path
Bullwhip Effect (BE)BE gives information concerning the demand variation in the more upstream process of a certain path to promote information sharing and prevent the bullwhip effect. The original equation used to quantify the bullwhip magnitude has been adapted to fit with the open path context. Since the more considerable order quantity variations are located in the most upstream process [48], each path only focuses on the demand increase of the first entity considered in the analysis.Adapted from [63] to the open path context B E = σ F o p σ D e m Equation (24) σ F o p variance of the orders of the first entity of a given path
σ D e m demand of flow of a given path
Table 10. Recommendations to improve each indicator estimated through the SustainSC-VSM methodology.
Table 10. Recommendations to improve each indicator estimated through the SustainSC-VSM methodology.
IndicatorRecommendations
MVA-SCRedesign the production process, for example, by applying process intensification and/or process integration.
EC-SCInvest in equipment and vehicles that are more efficient, as well as investing in continuous heat integration.
TILC
EILC
Decrease the level of production and demand uncertainty. The production uncertainty can be reduced by implementing more robust production processes. Demand uncertainty can be decreased by identifying a significant buffer near the end customer to protect the supply chain from market uncertainties or by applying a production leveling technique (“heijuka”).
BCImprove supply chain coordination and inventory management policies.
LTF
OLTF
Ideally, all activities should be located at the same place near the end customer. This is often not possible, so the recommendation is to find facilities that share material flows and locate them as close as possible. Using “just in time” methods such as pull systems or process synchronization also shortens the lead time.
ITReduce the inventory by gradually ensuring not compromising the service level or reducing the batches’ size and increasing the pick-up frequency.
VF
TF
Redirect the flow of material to another path with a lower workload, or boost the work capacity acquiring newer and more effective equipment.
OK-PImplement failure prevention techniques (“poka yoke”) to reduce scrap and rework in every facility’s production processes.
SLQF
SLTF
Improve the information sharing between the supply chain members to know the capacity constraints and each supplier’s inventory management. According to the collected information, find out how to deliver the required orders in the proper quantity and time.
OTE-SCImplement kaizen workshops to decrease the production uncertainty (technical, organizational and quality losses, and changeover times).
VLTHomogenize all the processes of the value stream to gain stability and ensure consistent results over time.
BEAdopt a centralized multi-echelon inventory control system since it presents a superior performance over independently operating site-based inventory.
CEImplement more energy-efficient equipment, vehicles and facilities; and/or optimize the supply chain operations.
WFReengineer the production process to be more efficient and promote recycling policies.
SEImprove energy efficiency and invest in renewable and sustainable energy sources.
LEImprove the lowest salary and/or reduce the highest salary—decrease salary disparity.
FARImprove labor conditions by implementing robust security policies and provide training to the employees.
COrganize workshops to raise awareness among managers and promote transparent communication of information.
Table 11. Summary of the data regarding the entities.
Table 11. Summary of the data regarding the entities.
Data BoxesTIMETotalEPEIDefectsSteps
Rm (Days)WIP (Days)FG (Days)Value Added (s)
Ronneby C.U.41.81.523467.33 days3.42%30(6)
Ronneby S.U.0.82.52.316005.62 days4.13%26(5)
Italy2.22.61.817896.62 days2.13%26(5)
Distribution C.1.201.2 0.03%4(0)
Table 12. Summary of the data regarding transportation.
Table 12. Summary of the data regarding transportation.
TransportationTimeDistance (km)BatchDefectsFrequencySteps
Supplier Steel0.2 days95150 coils3.90%Weekly1
Supplier Copper0.3 days120150 coils4.31%Weekly1
Sup Connections IT02 days705 pallets (75 u/p)1.98%Weekly1
Sup Connections RO0.4 days15015 pallets (50 u/p)1.40%2× Week1
Ronneby C.O-IT2.4 days212210 pallets (50 u/p)2.01%Weekly1
Ro C.U. -Ro S.U.0.1 days15 pallet (50 u/p)0.50%Daily1
Ro S.U.- Distributor0.6 days44415 pallets (25 u/p)2.02%4× Week1
Italy-Distributor1 day135715 pallets (25 u/p)1.01%Weekly1
Distributor-Market0.8 days70315 pallets (25 u/p)1.56%Daily1
Table 13. Description of the EVSM’s information flow.
Table 13. Description of the EVSM’s information flow.
NumberInformation FlowsFrequencyDescription Flow
1Costumer-PCCostumerDailyConsumption Information
2Distribution-PCCostumerDailyShipping Release
3PCCostumer-DistributionDailyOrders
4PCCostumer-PCRonnebyDailyOrders/Consumption Information
5Italy-PCRonnebyWeeklyShipping Release
6PCRonneby-ItalyWeeklyOrders
7PCRonneby-Connections2× WeekSource Stocked Product
8Ronneby S.U.-PCRonneby4× WeekShipping Release
9PCRonneby-Ronneby S.U.4× WeekOrders
10PCRonneby-copperWeeklySource Stocked Product
11PCRonneby-steelWeeklySource Stocked Product
12PCRonneby-ConnectionsWeeklySource Stocked Product
13Ronneby C.U. -PCRonnebyDailyShipping Release
14PCRonneby- Ronneby C.U.MonthlyForecast
Table 14. Data of entities and the respective transportation flows.
Table 14. Data of entities and the respective transportation flows.
Factories/WarehouseRonneby C.U.ItalyRonneby S.U.Danish DistributorEEUU Distributor
Price Utility (EUR/MWh)80.00170.0080.00100.0061.90
Energy Consumption (MWh/year)6550410047501000800
Inventory Total (units)330014501850450675
Holding Cost (EUR/unit)911122220
Lead Time (days)7.36.65.61.24.5
Demand (units/day)375225300375150
Defective Flow (kg/year)9975.006508.3325,697.78933.3330.00
Process Capacity (units/day)400250305500300
Carbon Footprint (tones/year)524538753245635425
Waste (kg/year)23,00013,50028,750933.3330
Green Energy Consumption (MWh/year)400024900
Number Incidents10210
Employees (people)7403205246050
Number of Lawsuits10100
Largest Inventory (units)1500585750450675
Lowest Salary (EUR/year)21,00019,00023,00023,00024,000
Highest Salary (EUR/year)68,00066,00070,00085,00076,000
Working Hours (year)16071752160714111770
Table 15. Data related to transport flows.
Table 15. Data related to transport flows.
TransportSup SteelSup CopperSup Con ITSup Con RORo C.O-ITRo C.U. -Ro S.U.Ro S.U.- Danish D.C.It-Danish D.C.Danish D.C.-After-MarketIt-U.S. D.CU.S. D.C.-U.S. Market
Price Utility (EUR/MWh)102102109.3102102102102109.31106767
Energy Consumption (MWh/year)12.415.79.139.2276.90.7231.8177.1458.7959.3561.5
Lead Time (days)0.20.30.20.42.40.10.610.812.81.8
Defective Flow (kg/year)87752873.326419601172.51166.75027.6628.44853.395102940
Carbon Footprint (ton CO2/year)112.7542.212.92179.6652.964.92331.7445.45768.55816.43402.4
Green Energy (MWh/year)00000000000
Number of Incidents01001110100
Employees (people)11111111232
Number of Lawsuits01100000000
Waste (kg/year)87752873.326419601172.51166.75027.6628.44853.395102940
Lowest Salary (EUR/year)17,00020,00018,00016,00017,00018,0019,00022,00026,00026,00019,000
Highest Salary (EUR/year)50,00056,00056,00045,00036,00044,00050,00055,00084,00075,00066,000
Working Hours (year)16071607175216071607160716071752141117701770
Table 16. Data related to the open paths.
Table 16. Data related to the open paths.
PathOP1OP 2OP3OP4OP5OP6OP7OP8OP9
Price of Product (EUR/kg)140140140140140140140140140
Price of Raw Material (EUR/kg)2.12.15.685.683.502.6140140140
Customer Demand (kg/year)180,00045,00055,00013,500142,50035,000250,00062,222150,500
On Time (kg/year)180,00045,00050,00010,000125,00034,000230,00061,000146,000
Theoretical Flow (kg/year)210,00052,00061,50015,500160,00037,500275,00067,500170,000
Due Date for Delivery (days)151815196991128
Earliest Due Date (days)131413145.658724
The Variance of Lead Time (days)2.22.61.21.52.20.822.24
The Variance of Demand (kg/y)10,0005000400010006000500050,00010,0007500
The Variance of Flow Path (kg/y)10,5005550480010507000510065,00011,5008800
Penalty Rate0.10.150.10.150.10.150.70.70.6
Table 17. Path decomposition of the EVSM representing the U.S. customer market.
Table 17. Path decomposition of the EVSM representing the U.S. customer market.
Open PathComponentFlow (kg/y × 103)Description
1Steel180(Steel Supplier → Ronneby C.U. → Ronneby S.U.)
2Steel45(Steel Supplier → Ronneby C.U. → Italian S.U.)
3Copper53.3(Copper Supplier → Ronneby C.U. → Ronneby S.U.)
4Copper13.3(Copper Supplier → Ronneby C.U. → Italian S.U.)
5Connections140(Connections Supplier → Ronneby S.U.)
6Connections35(Connections Supplier → Italian S.U.)
7Heat Exchanger248.9(Ronneby S.U. → Danish distribution center → after-market)
8Heat Exchanger62.2(Italian S.U. → Danish distribution center → after-market)
9Heat Exchanger150(Italian S.U. → Indianapolis distribution center → after-market)
Table 18. EILC indicator of open path 1 in the entities regarding inventory. Values highlighted in red represent the worst performance.
Table 18. EILC indicator of open path 1 in the entities regarding inventory. Values highlighted in red represent the worst performance.
Open Path 1EILC
Ronneby C.U.0.741
Ronneby S.U.0.259
Table 19. OLTF for the critical open path 9 regarding entities concerning lead time. Values highlighted in red represent the worst performance.
Table 19. OLTF for the critical open path 9 regarding entities concerning lead time. Values highlighted in red represent the worst performance.
Open Path 9OLTF
Italian S.U.0.257
It S.U.-Indianapolis Distribution center0.498
Indianapolis Distribution center 0.070
Indianapolis Distribution center -U.S. market0.175
Table 20. Values of the indicators for all open paths. Values highlighted in red represent the worst performance.
Table 20. Values of the indicators for all open paths. Values highlighted in red represent the worst performance.
OP1OP2OP3OP4OP5OP6OP7OP8OP9
EconomicCostMVAEUR 24,822,000 EUR 6,205,500EUR 7,163,733EUR 1,790,933EUR 19,110,000EUR 4,809,000- EUR- EUR- EUR
ECEUR 434,374EUR 205.537EUR 129,682EUR 61,145EUR 89,493EUR 80,837EUR 296,007EUR 191,388EUR 493,554
TILCEUR 24,751EUR 6931EUR 7334EUR 2054EUR 4995EUR 1827EUR 16,800EUR 5228EUR 13,505
B- EUR- EUREUR 256,667EUR 26,833EUR 154,000- EUREUR 264,444- EUREUR 112,000
TimeLTF13.2016.5013.3016.606.006.808.209.6025.70
IT4.004.004.004.002.502.602.502.604.50
FlexibilityVF0.020.060.020.060.020.100.020.100.10
TF0.130.220.130.260.070.440.110.360.14
QualitySLQF0.0000.0000.030.010.010.0000.000.000.00
SLTF0.0000.0000.060.250.110.030.080.020.03
OK-P88.5%89%88.2%88.6%94.5%97.1%92.2%95.1%90.8%
OTE85.7%86.5%86.7%86.0%87.5%93.3%90.5%92.2%88.2%
InformationVLT0.170.160.090.090.370.120.240.230.16
BE1.051.111.201.051.171.021.301.151.17
EnvironmentCE4241.451748.291261.65519.24885.21452.916668.552035.468780.47
WF0.170.180.170.190.060.050.090.070.22
SE0.060.030.060.030.050.000.030.000.00
SocietyLE0.310.290.310.290.330.290.270.270.29
C213211110
FAR19711424617123705373080
Table 21. Identification of bottlenecks based on the economic indicators, and suggestions to overcome these bottlenecks.
Table 21. Identification of bottlenecks based on the economic indicators, and suggestions to overcome these bottlenecks.
Material Value Added (MVA-SC)The supply chain is working in the right conditions: no negative MVA-SC values have been limited improvements.
Energy Cost
(EC-SC)
OP9 seems to be the most critical path in terms of energy consumption (heat exchangers’ distribution from Italy to the USA market). It indicates the possibility of opening or using an existing factory in the U.S. to manufacture the components currently produced in Italy. This would also entail a change in the raw materials’ suppliers. Still, it would reduce the transportation costs as the material to transfer will not be the final product, but its components would reduce energy consumption.
Total Inventory Level Cost (TILC) and Entity Inventory Level Cost (EILC)OP1 is the most expensive path in terms of inventory. EILC indicates that the Ronneby C.U. factory has the largest inventory cost in OP1. This is due to the centralized production of component units, which gives the biggest circulation of flow through the Ronneby C.U. entity. Thus, to avoid this bottleneck, a change from the current MTS policy to MTO would be appropriate to reduce unnecessary inventory.
Backorder Cost (BC)OP7 is identified as being the most expensive in terms of losses for not meeting the demand requests. This indicator’s assessment should be a priority since the most competitive market with lower customer loyalty is the after-market (see the penalty rate in Table 15). Back-ordering can jeopardize the economic feasibility of the supply chain. OP3 and OP5 are pointed out as the second and third worst open paths with regard to back-ordering. These results indicate the need for a detailed analysis of the Ronneby S.U. entity, since OPs 7, 3 and 5 have the Ronneby S.U. facility in common.
Lead Time Factor (LTF) and Operational Lead Time Factor (OLTF)OP9 is the most critical path in terms of LTF. This is associated with the distribution of heat exchangers from Italy to the U.S. customer market. Analyzing OP9′s OLTF, it is clear that this is the path that carries the most significant bottleneck concerning lead time (Table 20). According to the EC-SC indicator, it would be beneficial to study the use of the facilities that Alfa Laval has in the U.S. to produce the components that are being produced in Italy (lower transportation time).
Inventory Turn (IT)OP9 is the most severe in terms of inventory turns—the distribution center appears to be the bottleneck. There is only one weekly shipment from Italy to Indianapolis due to the great distance between these entities. Thus, each order batch is large and takes a long while to be consumed. Adopting the proposed solutions in the EC–SC and LTF indicators would allow for more regular supplier shipments with a lower order batch, thereby reducing the non-value-added time and improving economic performance. If not possible to change the production location, implementing techniques such as a pull system to link the downstream process’s demand with the production of the upstream process would also reduce inventory time.
Flexibility Volume Factor (FVF)OPs 1, 3, 5 and 7 have the lowest volume flexibility of the supply chain. These paths share the Ronneby S.U. factory, which seems to be the bottleneck. This bottleneck indicates a very tight production schedule, which translates into losses due to back-ordering (Table 20 and BC analysis). To tackle this, balancing the supply unit factories’ workload seems to be the best option: (i) transfer a share of the production volume to the Italian supply unit factory, or (ii) invest in new equipment to increase effectiveness of the Ronneby S.U.
Flexibility Time Factor (FTF)OP5, followed by OP7, OP1 and OP3, is the most critical path in terms of time flexibility. This is closely related to the very limited volume flexibility of the Ronneby S.U. Thus, the measures stated above (analysis of BC and FVF) should be implemented to solve this threat to the supply chain’s overall sustainability.
Service Level Quantity Factor (SLQF) and Service Level Time Factor (SLTF)OP3 has the worst delivery performance in terms of the quantity. OP4 is the most critical path in terms of time service level and the second worst in quantity service level. Both OP3 and OP4 share the same copper supplier (see EVSM, Figure 3). This is the source of the low service level, which indicates that it would be beneficial to look for new suppliers to ensure a steady flow of raw material.
Ok-Parts (OP)OP3, followed by OP1, OP2 and OP4, is the most critical path in manufacturing quality (see Table 20). All these paths flow through the Ronneby C.U. factory and are the upstream paths in the supply chain (see EVSM, Figure 3). The most upstream entities should launch a kaizen project to implement the jidoka and poka yoke (mistake-proofing processes) approaches to reduce the scrap and the rework.
Overall Throughput Effectiveness (OTE-SC)OP1 has the lowest overall throughput effectiveness in the supply chain, which is probably caused by quality losses. Still, a more in-depth study should be led to assess the technical losses (machinery breakdowns) and organizational losses (lack of resources to manufacture). Each facility should improve their productivity and efficiency (total productive maintenance (TPM)).
Table 22. Identification of bottlenecks based on the information indicators and suggestions to overcome these bottlenecks.
Table 22. Identification of bottlenecks based on the information indicators and suggestions to overcome these bottlenecks.
Variability Lead Time (VLT)OP5 has the most considerable relative variance in the supply chain. This uncertainty weakens the production performance of the Ronneby S.U. factory, leading to organizational losses—it requires re-scheduling and forces the Ronneby S.U. factory to keep a large inventory. It would be beneficial to set up well-defined standards to prevent these time fluctuations. If not possible, the Ronneby S.U. factory should look for a new supplier to ensure a steady flow of raw materials.
Bullwhip Effect (BE)OP7 is the most critical path with regard to material distortion. The after-market seems to be an unsteady market, so many unforeseen deviations trigger rush orders, causing a malfunction in the supply chain. Two options are suggested to improve information performance: (i) to implement a vendor-managed inventory (currently the costumer production control sends orders to the Ronneby production control, Figure 3); and (ii) to increase the inventory units in the distribution center to protect it against the uncertainties of the market demand.
Table 23. Identification of bottlenecks based on the environmental indicators, and suggestions to overcome these bottlenecks.
Table 23. Identification of bottlenecks based on the environmental indicators, and suggestions to overcome these bottlenecks.
Carbon Emission (CE)OP9 has the most considerable carbon footprint in the supply chain. The transportation flow from the Italy S.U. has a significant impact on the CE; thereby, it is strongly recommended to adopt the solution mentioned above. Apart from moving the supply unit’s production, it is suggested to improve the equipment efficiency, especially the vehicles that account for the largest share of carbon emissions (see Table 15).
Waste Factor (WF)OP9 is again identified as the bottleneck in terms of material waste. This fact supports the conclusions drawn in the EC, TLF, IT and WF indicators. An additional critical factor which significantly impacts the waste generation is the production performance in terms of quality. The higher the scrap, the higher the waste. Hence, quality improvement should also reduce the supply chain’s environmental impact.
Sustainable Energy (SE)OP6 and OP8 do not consume any renewable energy. Analyzing the indicators and the related data, two concerns appear: (i) Italy’s factory is the only one that does not use renewable energy; and (ii) all transport energy comes from fossil energy. Due to the fact that transport represents a significant share of the energy consumption, it is required to (i) reduce the transport in the supply chain (adds value to the customer); and (ii) invest in “greener” means of transportation (e.g., hybrid vehicles or trains).
Table 24. Identification of bottlenecks based on the social indicators, and suggestions to overcome these bottlenecks.
Table 24. Identification of bottlenecks based on the social indicators, and suggestions to overcome these bottlenecks.
Labor Equity (LE)OP8 and OP7 are the most critical paths with regard to labor equity. This means that they report the most significant differences between the lowest and highest salaries (EUR 26 k and EUR 84 k) of the supply chain. Raising the lowest wage should be on the supply chain management agenda to reduce the gap of wealth distribution and, in this way, increase the workers’ motivation.
Corruption (C)OP3 has the worst performance regarding corruption. All entities of this path have broken the law, as well as dismissed the business ethic code. It represents a non-sustainable social performance that would probably damage the entire supply chain and its image. Therefore, measures must be implemented to raise awareness among workers about the importance of fair competition. Additionally, an internal audit program would help to review the current standards to decrease these figures significantly.
Fatal Accident Rate (FAR)OP7 is reported as having the highest fatal accident rate in the supply chain. This path is the most dangerous, and workers are prone to suffer an accident while carrying out their tasks. This must be considered as unacceptable for all the companies. Enhancing workforce protection policies and raising awareness among workers must be a priority in order to reduce the number of accidents.
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Gargalo, C.L.; Pereda Pons, E.; Barbosa-Povoa, A.P.; Carvalho, A. A Lean Approach to Developing Sustainable Supply Chains. Sustainability 2021, 13, 3714. https://doi.org/10.3390/su13073714

AMA Style

Gargalo CL, Pereda Pons E, Barbosa-Povoa AP, Carvalho A. A Lean Approach to Developing Sustainable Supply Chains. Sustainability. 2021; 13(7):3714. https://doi.org/10.3390/su13073714

Chicago/Turabian Style

Gargalo, Carina L., Eduardo Pereda Pons, Ana Paula Barbosa-Povoa, and Ana Carvalho. 2021. "A Lean Approach to Developing Sustainable Supply Chains" Sustainability 13, no. 7: 3714. https://doi.org/10.3390/su13073714

APA Style

Gargalo, C. L., Pereda Pons, E., Barbosa-Povoa, A. P., & Carvalho, A. (2021). A Lean Approach to Developing Sustainable Supply Chains. Sustainability, 13(7), 3714. https://doi.org/10.3390/su13073714

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