Interval Type-2 Fuzzy Super SBM Network DEA for Assessing Sustainability Performance of Third-Party Logistics Service Providers Considering Circular Economy Strategies in the Era of Industry 4.0
Abstract
:1. Introduction
2. Literature Review
2.1. Supply Chain Management in Industry 4 Era
2.2. 3PLs Role in Sustainable Supply Chain Management
3. Materials and Methods
The Extension of Interval Type-2 Fuzzy Network SBM DEA to Measure Efficiency and Super-efficiency
4. Results
5. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Criteria | Sub-Criteria | Description | Some of the References |
---|---|---|---|
Governance | Management commitment to shape effective SCM 4.0 framework | Determination of sustainability vision and its publication while promoting shared values in the field of sustainability in the workplace and encourage employees to advance the principles of sustainability considering green governance principles | [6,33,34,35,36,37,38,39,40] |
Coordination and cooperation among supply chain members | Effective cooperation is helpful to set sustainability principles through the whole supply chain and gain of integration. Network of machines, workers, and systems should be implemented in the whole supply chain to shape Industry 4 logic | [21,41,42,43,44,45,46] | |
Technology innovation | The capability to adopt innovative and internet-based approaches to face the objectives of business partners and increase market penetration and clearance (E-commerce; Enterprise resource planning, Online status tracking systems, IOT, IOS, IOP and big data, or application of machine learning algorithms are some of the key technologies of Industry 4 | [45,46,47,48] | |
Data Management | In Industry 4 all the processes related to data, information and knowledge are changed considering the inharmonious nature of raw data. So, importance of data integration and management is out of question | [44,46] | |
Legislations and standards | Stakeholder management considering and external accountability, transparency and information sharing, and cooperation with other supply chain parts to enhance sustainability of the whole chain via shared strategies | [48,49,50,51] | |
Commitment to the transparency of the supply chain | Stakeholder management considering internal and external accountability, transparency and information sharing, and cooperation with other supply chain parts to enhance sustainability of the whole chain via shared strategies | [48,50,51] | |
Omni-channel strategy commitment | Seeking to synchronize inventory, logistics and distribution functions across all sales channels to meet consumer demand | [21,52,53] | |
Resilience | A risk management approach concerned with how system prevent or deals with service disturbance; this is done paying attention to flexibility | [13,35,48,54] | |
Economic | Quality | Seeking to define and update the values of the customer | [13,48,55,56,57] |
Financial capability | Realized revenue less total cost per period of the organization and its reputation to obtain external financial resources | [12,13,48] | |
Lead time | All the processing time, transit time, etc. needed to handle the inventory to the customer | [12,48] | |
Delivery and Service | Value-added services that could be pre- and post-sale Pre- and post-sale services to customer considering problem resolution ability while commitment to continuous improvement | [12,48,55] | |
Environment
| Recycle | Gentle logistics service by looking toward a material-recycling society in compliance with all regulations | [13,48,55] |
Disposal | Dealing with scrap, waste and refuse to prevent environmental pollution and waste of resources | [13,48,55,56] | |
Green Remanufacturing | Manufacturing practices that do not harm the environment during any phases. It involves green redesign of products, use of environmentally friendly raw materials, eco-friendly packing, distribution, and reuse after end of life of product. It is totally related to green reverse logistics | [13,48,55,56] | |
Green Technology | Technology that is invented to mitigate or reverse the effects of human activities on the environment. For water transportation for instance, it can be about hybrid-electrical propulsion systems in order to replace diesel engines and for road transportation it is about liquefied natural gas | [13,48,57] | |
Environment protection certifications | The Eco-Management and Audit Scheme (EMAS) and ISO 14001 are two of such certifications | [13,48,57] | |
Eco-design production | Manufacturing sustainable products to satisfy consumers considering logistics role | [13,48] | |
Greenhouse gas emissions | Handling logistics operations such as transportation, warehousing and inventories to reduce greenhouse gas emissions | [12,48,55] | |
Green HRM and Green transformational leadership | Policies, practices, and systems that stimulate a green behavior of a company’s employees in order to create an environmentally sensitive, resource efficient and socially responsible workplace and overall organization | [56,57,58] | |
Environmental management system | To systematically ensure that commitment to environmental protection improvement exists in the business organizations towards environmental sustainability | [47,58,59,60,61] | |
Social | Health and safety | Paying attention to the health and safety of the internal people and also accident rates and noises being created | [13,48,62] |
Customization true voice of stakeholders | A systematic approach to understand the stakeholders’ needs and values to customize the services and products should be tracked. Industry 4.0 enables supply chains to better define customers’ behaviors and needs. | [13,46,48] | |
Support for charity activities, arts and cultural expression | Culture protection ideas in product design and related services to support art and culture expressions in addition to participating in charity activities | [3,61,62] | |
Human machine Interaction optimization | Setting framework to mutual human and machine communication, connections, collaboration and interfaces. This is a prerequisite of Industry 4 functions | [44,46,59] | |
Decent work | Employment that respects the fundamental rights of the human person as well as the rights of workers in terms of conditions of work safety and remuneration. Respect for the physical and mental integrity of the worker in the exercise of his/her employment | [55,57,63,64] |
Type | Nature | Value Estimation | |
---|---|---|---|
Management commitment | Input | Fuzzy | Senior managers opinions by the aid of questionnaire |
Capital employed | Input | Crisp | Official documents |
Revenue per year | Output | Crisp | |
Decent work | Link | Fuzzy | Getting employees’ opinions by the aid of questionnaire |
Employee trust in leadership | Link | Fuzzy | |
EMS (Environmental Management System) | Link | Fuzzy | Consulting responsible managers |
Environmental performance | Link | Fuzzy | Getting stakeholders opinions by the aid of questionnaire (Random sampling) |
Social performance quality | Link | Fuzzy | |
Satisfaction | Link | Fuzzy | |
Trust in brand | Output | Fuzzy |
Linguistic Variables | The Related Interval Type-2 Fuzzy Number |
---|---|
Strongly agree | (0.8,0.9,0.9,1:1,1) (0.85,0.9,0.9,0.95:0.9,0.9) |
Agree | (0.6,0.7,0.7,0.8:1,1) (0.65,0.7,0.7,0.75:0.9,0.9) |
Undecided | (0.4,0.5,0.5,0.6:1,1) (0.45, 0.5,0.5, 0.55:0.9,0.9) |
Disagree | (0.2,0.3,0.3,0.4:1,1) (0.25,0.3,0.3,0.35:0.9,0.9) |
Strongly Disagree | (0,0.1,0.1,0.1:1,1) (0,0.1,0.1,0.05:0.9,0.9) |
Efficiency Value | |||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
3PLs | Total | Governance Node | Staff Node | Environment Node | Social Node | Brand Capability Node | |||||||
1 | TOR | [0.43,0.45] | 15 | [0.4,0.59] | 8 | [0.81,1] | 4 | [0.37,0.45] | 15 | [0.3,0.46] | 15 | [0.28,0.31] | 16 |
2 | KHA | [0.43,0.57] | 8 | [0.83,1] | 3 | [0.16,0.61] | 13 | [0.7,1] | 5 | [0.5,0.72] | 9 | [0.66,0.79] | 4 |
3 | ZANJ | [0.51,0.66] | 3 | [0.45,0.47] | 9 | [0.44,1] | 6 | [0.68,1] | 7 | [0.98,1.3] | 1 | [0.65,0.79] | 5 |
4 | KHF | [0.46,0.48] | 13 | [0.24,0.26] | 15 | [0.3,0.32] | 15 | [0.33,0.4] | 16 | [0.51,0.6] | 11 | [0.51,0.62] | 12 |
5 | KAL | [0.46,0.53] | 9 | [0.61,0.72] | 6 | [0.45,0.48] | 8 | [0.94,1] | 2 | [0.25,0.3] | 17 | [0.33,0.39] | 15 |
6 | PRES | [0.42,0.49] | 14 | [0.26,0.37] | 14 | [0.38,0.42] | 12 | [0.58,0.67] | 9 | [0.66,0.79] | 5 | [0.36,0.51] | 14 |
7 | TEH | [0.54,0.66] | 2 | [0.98, 1.2] | 2 | [1,1.1] | 1 | [0.84,1] | 4 | [0.75,1] | 2 | [0.89,1.22] | 1 |
8 | SHAR | [0.46,0.48] | 13 | [0.31,0.38] | 12 | [0.41,0.51] | 9 | [0.47,0.59] | 12 | [0.64,0.71] | 6 | [0.26,0.31] | 16 |
9 | DAR | [0.49,0.59] | 5 | [0.27,0.64] | 10 | [0.35,1] | 7 | [0.45,1] | 8 | [0.61,1] | 4 | [0.57,0.59] | 11 |
10 | PARS | [0.47,0.48] | 12 | [0.3,0.33] | 14 | [0.27,0.33] | 16 | [0.48,0.57] | 13 | [0.61,0.63] | 7 | [0.53,0.64] | 10 |
11 | SADI | [0.48,0.54] | 6 | [0.43,0.46] | 11 | [0.33,0.51] | 11 | [0.84,0.85] | 6 | [0.42,0.77] | 10 | [0.81,0.85] | 3 |
12 | ISF | [0.47,0.49] | 11 | [0.45,0.64] | 7 | [0.3,0.36] | 14 | [0.46,0.52] | 14 | [0.3,0.41] | 16 | [0.51,0.6] | 13 |
13 | ISA | [0.54,0.68] | 1 | [0.93,1.3] | 1 | [0.51,1] | 5 | [0.85,1.16] | 1 | [0.7,1] | 3 | [0.66,0.76] | 6 |
14 | IRAN | [0.48,0.49] | 10 | [0.22,0.45] | 13 | [0.2,0.21] | 17 | [0.32,0.37] | 17 | [0.43,0.51] | 13 | [0.62,0.64] | 8 |
15 | ABAD | [0.48,0.53] | 7 | [0.24,0.26] | 15 | [0.33,0.52] | 10 | [0.38,0.72] | 10 | [0.61,0.63] | 7 | [0.63,0.64] | 7 |
16 | BALO | [0.46,0.5] | 11 | [0.74,1] | 5 | [0.94,1] | 3 | [0.46,0.64] | 10 | [0.36,0.54] | 14 | [0.58,0.66] | 9 |
17 | BARES | [0.52,0.58] | 4 | [0.77,1] | 4 | [0.94,1.05] | 2 | [0.94,1] | 2 | [0.44,0.61] | 12 | [0.7,1] | 2 |
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Pishdar, M.; Danesh Shakib, M.; Antucheviciene, J.; Vilkonis, A. Interval Type-2 Fuzzy Super SBM Network DEA for Assessing Sustainability Performance of Third-Party Logistics Service Providers Considering Circular Economy Strategies in the Era of Industry 4.0. Sustainability 2021, 13, 6497. https://doi.org/10.3390/su13116497
Pishdar M, Danesh Shakib M, Antucheviciene J, Vilkonis A. Interval Type-2 Fuzzy Super SBM Network DEA for Assessing Sustainability Performance of Third-Party Logistics Service Providers Considering Circular Economy Strategies in the Era of Industry 4.0. Sustainability. 2021; 13(11):6497. https://doi.org/10.3390/su13116497
Chicago/Turabian StylePishdar, Mahsa, Masoumeh Danesh Shakib, Jurgita Antucheviciene, and Arvydas Vilkonis. 2021. "Interval Type-2 Fuzzy Super SBM Network DEA for Assessing Sustainability Performance of Third-Party Logistics Service Providers Considering Circular Economy Strategies in the Era of Industry 4.0" Sustainability 13, no. 11: 6497. https://doi.org/10.3390/su13116497
APA StylePishdar, M., Danesh Shakib, M., Antucheviciene, J., & Vilkonis, A. (2021). Interval Type-2 Fuzzy Super SBM Network DEA for Assessing Sustainability Performance of Third-Party Logistics Service Providers Considering Circular Economy Strategies in the Era of Industry 4.0. Sustainability, 13(11), 6497. https://doi.org/10.3390/su13116497