Market-Oriented Procurement Planning Leading to a Higher Service Level and Cost Optimization
Abstract
:Featured Application
Abstract
1. Introduction
2. Materials and Methods
2.1. Methodological Approach
- system perspective,
- control loops,
- synergy,
- learning/lifecycle,
- sizing of the variety,
- Ashby’s law of the variety requirement, and
- modeling.
- Literature research on supply chain management, demand planning, inventory planning, procurement strategies, and economic analysis considering investments and costs.
- The development of a conceptual model as a management framework for decision-making for managerial positions within existing companies.
- The design of a case study for the automotive industry to test the conceptual model.
- The use of Vensim is a simulation program to apply the case study. Simulation allows companies to assess how and when it is better to make decisions. Therefore, these analyses can help to discover if certain decisions are wise or not acting as a decision-supporting tool [30].
- A comparison of the conceptual model versus other inventory planning models in different demand scenarios based on demand lifecycle patterns extracted from the literature with elements for lifecycle consideration.
2.2. Delimitation of the Research Work
3. Design of the Conceptual and Simulation Models
3.1. Conceptual Model Development Based on System Theory and Statistics
- Brown [36]: “The quantitative study of the operation is made by statistical analysis of operational data to predict the outcome of similar conditions”. Therefore, random data series are created for demand based on the demand values of past periods by reproducing “similar conditions”. Then, based on this generated demand, a prediction of the future forecast uncertainty or error is obtained for various forecast proposals. The forecast proposals are calculated using different forecasting methods. Finally, based on criteria, such as the forecast uncertainty, the conceptual model decides whether to change to another forecasting method in order to reduce risk due to the existing or future uncertainty.
- System theory and cybernetics: from the historical development point of view, cybernetics can be considered as part of the system theory. Both sciences deal essentially with the same subject, so they can be difficult to separate from each other. However, the focus of system theory is on the development of systems, whereas cybernetics explores the control and operation of systems [37]. In this context, cybernetics is used as a basis for the conceptual model, as shown in Figure 1. In the beginning, based on a set of goals defined by the observer as an interactive agent, a forecasting method is selected. Then, the forecast of future demand is the input for the inventory and procurement planning. Later, the results are obtained, and, by comparing them with the goals, a self-optimization is performed by deciding to maintain or change the forecasting method, the inventory safety factors, and the order release point as well as the procurement policy to be applied. Finally, by doing so, the system converges to a defined set of goals with a feedback control loop each period or planning period.
- System dynamics (SD): This is a natural modeling tool for inventory planning due to its nature that focuses on stocks and flows [3]. It is applied to simulating the conceptual model. SD is a rigorous method for the qualitative description of exploring supply chains. It facilitates modeling and qualitative simulation analysis to design and control the supply chain structure [22]. SD can, should, and will be further used to improve supply chain management practice [28].
- Put the customer first.
- Generate, analyze, and respond to market changes.
- The capability to use resources efficiently to produce premium customer value.
- Long-term planning horizon: in this planning horizon, decisions for increasing storage or production capacities can be taken. New locations can also be opened to increase capacities or shorten replenishment times. In the long-term, the model can decide to increase the service level goals and, therefore, the safety factor for the inventory levels.
- Medium-term planning horizon: The model decides on the production level as well as the level and conditions for employees on a monthly basis. In this planning horizon, the forecasting methods and procurement policies can change to be aligned or adjusted to a certain set of goals.
- Short-term planning horizon: it considers one week as the smallest period of the model in which changes can take place. In this planning horizon, parameters within the different planning method changes and variability of personnel can be performed to adapt production and inventories to the customer demand.
3.2. Demand Planning and Forecasting Theory
3.3. Inventory Planning
3.4. Procurement Planning
- Constant order quantity (q): The most used, in practice, is the classical economic order quantity (EOQ) with the Andler–Harris formula for the optimal batch size. The optimal batch size is always calculated for a certain period, in this case, for a year [46]. The economic order quantity (EOQ) that has been considered also takes care of the back-ordered units, finding the optimal quantity to order between four components: the cost per unit, the procurement cost per order, the inventory holding cost, and the backlog penalty cost [50]. This order quantity strategy can be applied with a dynamic calculation each period or with a discrete calculation valid for a period, such as a year. In the first case, the EOQ is calculated every week depending on the current demand pattern of the customers, i.e., an EOQ that changes depending on the expected demand for the next year. In the second case, based on the demand forecast for the next year, the EOQ is fixed for the next year, and the value does not change until the next planning year. With the EOQ calculated, the number of expected orders for the next year is derived; however, this number is typically not an integer, and therefore an adjustment is necessary. The weeks between orders are truncated to an integer, and then the EOQ is adjusted by maintaining the total expected demand for the next year.
- Variable order quantity (depending on the target level, S): The inventory is filled up to a target level [47]. This is one of the options of the dynamic or feedback-dependent model. The model uses the reorder point with variable order quantity to respond dynamically. This method requires a high administration and IT effort to check the stocks after each transaction [43]. It is usually applicable for high-value goods with variable demand. The time frame between procurement orders varies. To define the target level (S), it should be a level defined by an invariant formula, but whose parameters vary over time. As a result, the target level varies over time, and so does the order quantity to reach it. This ordering method is able to change the target level to respond to customer demands, their volatility, and existing delivery backlogs. After this, the definition can determine the quantity ordered, , in the model, when the stock drops under the reorder point (s). With this quantity ordered, a warehouse is planned to have sufficient products to meet customer demands for a period equal to two times the replenishment time.
3.5. Key Performance Indicators for an Inventory Management Model
3.6. Design of Case Study to Test the Model Depending on the Product Lifecycle
- The product is a finished/sale product after the OEM production facility;
- The orders have only one product type; There is only this product type in the supply chain model considered;
- There is no transport limitation, or transport means limitation between the different stages;
- The replenishment times between stages at the beginning of the case study have the same distribution over the period considered;
- A steady supply of materials for the production process of the Tier 1 supplier is given;
- The stock and products in the transport process are known in every moment, assuming a calculation after each transaction along the supply chain;
- Order information along the supply chain is available;
- Demand is not known, but historical data for all customers is available one week after the demand;
- Customers do not leave the company or order before or more if the last orders were not met on time;
- In the beginning, all employees have the same experience and have the same capacity to perform warehouse activities. Employees characteristics, such as age or experience, are variables that can be parameterized in the model to assess their influence;
- The production capacity is always between a minimum and a maximum, given a capacity per shift and the number of employees if no decision has been taken along the simulation. The minimum and maximum production capacities per shift are the same for all models at the beginning of the simulation study;
- The storage capacities have a maximum level, and it is the same for all models at the beginning of the simulation;
- Maintenance is not considered in the production facilities nor in the storage warehouses;
- Products do not suffer any kind of problems/failure in their transportation from the production facility to the customers;
- Packaging is already performed in the production facility.
- Market demand: This is defined by values read from a database outside of the model. Demand defines the evolution of customer requests and the phase of the product lifecycle. The length of the product lifecycle is also an input that can influence the decision-making process depending on the risk.
- Supply chain flow: There are two configurations: the supply chain can contain WIP products or not. The first represents a supply chain flow already in existence, and the second represents a new supply chain flow of products. The scenarios simulated are from the first type.
- Production capacity: There is a maximum of 900 units per week in three shifts at the beginning of the simulation. During the simulation, investment options are considered for increasing the capacity if needed and if the conditions for the decision are given.
- The storage capacity at the beginning of the simulation is five weeks for Tier 1 and for the OEM manufacturer for the maximum of 600 units per week considering two working shifts, therefore, totaling 3000 units of storage capacity.
- Working shifts: At the beginning of the simulation, there are two working shifts.
- The personnel capacity at the beginning of the simulation is a group of 20 employees at both warehouses of Tier 1 and OEM with a capacity of 15 units per shift to be processed.
- Investment, costs, prices, and interest rates: All these values per unit for the different types of economic parameters are inputs from outside of the model as well as the values of the investments for new capacities.
- Replenishment times between stages: The distribution is set at the beginning and can only change if a new warehouse is put in operation.
- New Investment—new warehouse and production facilities: This can increase capacities as well as reduce lead times at both Tier 1 and OEM producers.
- Investment in the increase in production and storage capacities in the existing locations: This can increase capacities for both Tier 1 and OEM producers maintaining lead times.
- Demand planning: The decision of changing or not changing between the different forecasting methods applied to the conceptual model based on the forecast error. The change has impacts on all levels of the planning and organizational decisions.
- Planning decisions:
- ◦
- Inventory planning: safety stock level (k) changes as required for the target service level. This also decides whether to order each t periods or when the inventory drops under s, the reorder point level.
- ◦
- Procurement planning: The selection of one of the four policies of Table 5 as it is assumed that the inventory is checked after each stock movement. The (t, q) applies an economic order quantity calculated once and applied until the policy changed, the (t, S) strategy has a constant distance between orders and the S is calculated based on a dynamic target level consisting of safety stock and base stock. The (s, q)-Policy applies an economic order quantity calculated each time the inventory level drops below the reorder point, and the (s, S)-Policy orders the quantity to reach the target level, S, when inventory drops below s.
- Organizational decisions:
- ◦
- Number of working shifts: Based on the demand forecast, the planning of 3, 2, or 1 working shift is performed.
- ◦
- Production output: Monthly planning of the target production output is performed by leveling the production quantities based on a given demand forecast for a planning horizon of a month, 4 weeks in the simulation.
- ◦
- Number of employees: The number of employees per shift. At the operational level, the forecast influences the number of employees working every week to adapt the system to customer demand.
3.7. Simulation Models
- Forecasting method:
- The forecasting method is the same over the lifecycle. It allows changes in the parameters of the method over time.
- The forecasting method changes over time depending on selected criteria, such as the forecast error within a certain period. This also allows changes in the parameters of the method over time.
- Procurement policy:
- The procurement policy is the same over the lifecycle. This allows changes in the parameters of the method over time.
- The procurement policy changes over time depending on selected criteria, such as the variation coefficient within a certain period. This also allows changes in the parameters of the method over time.
- Strategy for decision-making and product lifecycle:
- Decisions at all levels, strategic, tactical, and operational, including investments, employee characteristics, and as well as the safety factor, k, do not depend on the product lifecycle.
- Decisions at all levels, strategic, tactical, and operational, depending on the product lifecycle. Criteria such as years or time until end-of-lifecycle are considered.
- EOQ simulation model: This is described by a model applying 1a with a cumulative moving average as a forecasting method, 2a with a (t, q)-policy with an EOQ order quantity and 3a with decisions not dependent on the product lifecycle.
- Reorder point simulation model: This is a model described by 1a with a cumulative moving average as a forecasting method, 2a with an (s, S)-policy, reorder point policy and 3a with decisions not dependent on the product lifecycle.
- Market-oriented simulation model with 1b, i.e., one of the methods described in Section 3.2 with the possibility to change to another method based on selected criteria, such as the forecast error. Moreover, this model is described by 2b selecting one of the four policies in Table 5 and has the capability of changing to other policies and by 3b with decisions dependent on the product lifecycle.
3.8. Simulation Models Validation
- For a lower nominal capacity per shift (units per week), the customer backlog, total production, and working shifts must be higher, and the products in the OEM warehouse storage must be lower.
- For a higher customer demand (units per week), the customer backlog, total production, and working shifts must be higher, and the products in the OEM warehouse storage must be lower, as shown in Figure 5. The red lines indicate the lower nominal capacity, and the blue lines indicate the higher nominal capacity per shift.
4. Results and Discussion
4.1. Scenarios
- First demand scenario: This represents the classical, the growth–decline–plateau, and the rapid penetration lifecycle demand patterns of Rink and Swan [57];
- Second demand scenario: This represents the cycle–recycle and the cycle–half recycle lifecycle demand patterns of Rink and Swan [57];
- Third demand scenario: This represents the stable maturity and the high and low plateau lifecycle demand pattern of Rink and Swan [57];
- Fourth demand scenario: This represents the growing maturity and the innovative maturity lifecycle demand patterns of Rink and Swan [57];
- Fifth demand scenario: This represents the increasing and decreasing sales lifecycle demand patterns of Rink and Swan [57].
4.2. Simulation Results
4.3. Discussion
- Existing flow and product: A lower demand uncertainty is expected as well as a low supply uncertainty in comparison to the other scenarios. Historical data are available. The production, storage, and distribution capacities are known as well as the lead times. In this scenario, the EOQ option can be appropriate in case the demand is stationary.
- New flow and existing product: A lower demand uncertainty is expected with a higher supply uncertainty in comparison to the first scenario. Historical data are available, but the production, storage, and distribution capacities are not known as well as the lead times. In this scenario, the reorder-point option can be appropriate, and monitoring of the capacities and lead times is required.
- Existing flow and new products: A higher demand uncertainty is expected with a lower supply uncertainty in comparison to the first scenario. Historical data are not available, but the production, storage, and distribution capacities are known as well as the lead times. In this scenario, the reorder-point option can be appropriate, and monitoring of the customer demand is required.
- New flow and new products: A higher demand uncertainty is expected with a higher supply uncertainty in comparison to all the other scenarios. Historical data are not available, nor are the production, storage, distribution capacities, and lead times. In this scenario, the reorder-point option can be appropriate with monitoring of each stock transaction and with real-time information regarding the customer demand along the supply chain.
5. Conclusions
- Due to a new conceptual model developed for inventory management, managers can use the model as conceptual guidance or as a tool for improving operations and decision-making by gathering real-time data within the fourth industrial revolution.
- The case study was created and simulated with different simulation models to test their performances with the same KPIs.
- The simulation of the market-oriented simulation model presented better overall results for the relevant key parameters for all five scenarios, particularly in demand scenarios and product lifecycles with high variability, demand pattern changes, and uncertainty.
- Forecasting techniques and their application for different planning horizons. Selection according to the maximization of the forecasting accuracy under demand uncertainty.
- Selection of the safety factor depending on the target service level.
- Use of the different procurement policies and their change based on the system conditions as demand variability.
- Investment decisions are based on product lifecycle.
- Decision-making within the model for the planning areas based on real-time data.
- Criteria for changing between forecasting methods.
- Criteria for changing procurement policies.
- Criteria for adapting organizational planning dynamically.
- Consideration of different lifecycle patterns and their consideration of planning and investment decisions.
- Conceptual model based on cybernetics and simulated based on system dynamics.
- The current challenges of manufacturing companies were described, and those influencing the inventory management as well as the common methods were applied in the models.
- Dynamic inventory management with adaptability was proved to be necessary, particularly when uncertainty is high.
- The importance of synchronized demand planning, inventory planning, procurement planning, as well as personal planning together with investment planning, considering the overall lifecycle, was concluded as key for organizations to secure long-term viability.
- The methodological combination provides managers with a framework to be prepared for future scenarios, to generate digital twins, and to develop IT software based on market-oriented procurement planning. Therefore, the model is the basis for a conceptual model to generate value-added solutions based on Industry 4.0 technologies, such as the Internet of things and real data monitoring.
- Higher service level;
- Higher delivery reliability;
- Lower inventories costs;
- Higher utilization of available resources;
- Lower forecast error; and
- Lower outsourcing costs for warehouse storage.
- We assumed transport and storages only for one product;
- The complexity of the supply chain was partially built in the simulation model;
- The organization structure and interfaces were not considered in the simulation model;
- All information was considered as available; and
- The concept was not proven in any company.
- To transfer this research method to real supply chains, apply it in particular cases as a tool for strategic planning and assist supply chain leaders by centralizing all data related to a topic in a short period of time, enabling the simulation of what-if-scenarios.
- To consider organization units and their communication within the simulation model.
Author Contributions
Funding
Conflicts of Interest
Appendix A. Formulae of the Conceptual Model
- Moving average: The simple moving average (SMA) is the non-weighted mean of the previous n data [42]. In the model, the cumulative moving average (CMA) is applied:
- Linear regression: The regression method is usually applicable to a steady course of a time series or a stable trend [43]. It can be defined as follows where “a” is the slope, ttrend is the time since the trend demand pattern started, and “b” is the value at the time when the trend demand pattern was initiated:
- Exponential smoothing: The exponential smoothing method carries out an exponential weighting of the forecast errors to determine the forecast value for the next period [42]:
- ;
- .
- .
- = standard deviation of demand (D);
- = arithmetic average of demand.
Service Level | Safety Factor, k |
---|---|
90% | 1.28 |
95% | 1.64 |
99% | 2.33 |
99.9% | 3.09 |
Appendix B. Formulae of Key Performance Indicators (KPIs)
- Cumulated Demand (products): This represents the cumulated demand to be satisfied in a certain period:
- MAD of the forecast (products): This is the sum of the absolute values that come from the difference between the real and forecast demands for the simulation periods [42]. This sums the values of the forecast errors and divides the sum by the number of periods. MAD is a useful method to show the forecast error in the same units of the time series data [42]. In the model, the weekly production order is leveled based on a monthly forecast and used to place production orders:
- Average WIP stock (products): This is the average stock after production until the end-customer. Inventory is also one of the most important drivers in a distribution network [51]. Inventory always involves storage costs; therefore, stock levels should be minimized while assuring the service level that was established for the customers in the strategy of the company:
- Average stock at Tier 1 producer and at original equipment manufacturer (OEM) producer (products): This applies the same formula as for the average WIP stock when considering only the specific warehouses of Tier 1 or OEM producers.
- Utilization rate of employees (%): This is the percentage of the nominal capacity of the employees that is used to perform the warehouse activities. Utilization is another important KPI. It defines the rate of capacity that is currently being used [51]. In this case, it defines the capacity utilization of those employees that perform the warehouse activities:
- On-time delivery (OTD) (%): This represents the percentage of the quantity delivered on time for a certain period. It is a quantity-oriented KPI that describes the customer demand percentages that could be satisfied directly from the stock in a certain period [42]. The difference with the service level (%) relapse is in consideration of the single product and not on the whole demand to meet in each week:
- Service level (%): This represents the percentage of weeks in which the demand is satisfied. It is the probability of demand fulfillment in a certain period with the stock in the warehouses. It also considers the accumulated backlog. Therefore, it is a quantity- and time-oriented KPI [42]. It represents the percentage of weeks in which the clients were fully served with all the products they ordered. It is considered as an unmet demand in those cases when the delivered quantity to the customers was not sufficient to supply the customer demand for the current period and the customer’s backlog from previous weeks:
- Average procurement quantity (products): This represents the average quantity ordered along a certain period:
- Average customer backlog (products): This is the sum of all products until the current period that were not delivered to meet the delivery date and, therefore, that is going to be served with delay:
- Weeks with customer backlog (weeks): This is the sum of all weeks until the current period in which a client was not fully served:
- Inventory costs (million USD): This is the sum of the procurement costs from an external supplier or from in-house production, storage costs, material planning, and handling costs [43]:
- Procurement costs (million USD): In the model, this is applied as external procurement costs and not as in-house production. Therefore, the external procurement costs depend on the order quantity and cost price as direct costs and the order costs and cost rate of the order initiations [43]:
- Warehouse storage costs (million USD): This is the sum of capital commitment costs and storage costs [43]:
- ◦
- Capital commitment costs: This is the function of the interest rate, inventory quantity, and its inventory value and storage time:
- ◦
- Storage costs: These are determined by the space, personnel, handling, and depreciation costs. The model does not include the renting of spaces or depreciation costs:
- Stock-out or shortage costs: The components of shortage costs are lost contribution margins, reduced revenues, and additional costs, such as contractual penalties [43]. For the model, it is considered as a penalty per unit not delivered on time in each period:
- Investment costs (million USD): This is the quantity invested in new warehouses or in an increase in capacity along the supply chain:
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No. | Area | Short-Term Planning (1 Week–1 Month) | Medium-Term Planning (1–3 Months) | Long-Term Planning (3 Months–1 or More Years) |
---|---|---|---|---|
1 | Demand planning | Forecasting Parameters | Forecasting method changes based on forecast accuracy | Forecasting methods definition and random number generation methodology |
2 | Inventory planning | Days between orders for economic order quantity (EOQ) Reorder point | Procurement policy changes based on the variation coefficient | Service level goal, safety stock, safety factor |
3 | Procurement planning | EOQ quantity calculation Target level adjustment | Procurement policy changes based on the variation coefficient | Procurement policies available for decision-making |
4 | Organizational Decisions | Employees flexibility of 10% based on weekly forecasts | Production plan based on monthly forecasts | Working shifts based on quarter forecasts |
5 | Investment-Risk Strategy | No decision | No decision | Open new warehouse (increase of storage capacity) Increase production capacities |
No. | Demand Forecasting Method | Formula |
---|---|---|
1 | Cumulative moving average (CMA) | |
2 | Linear regression | |
3 | Exponential smoothing of the first order | |
4 | Exponential smoothing of the second order | |
5 | Exponential smoothing of the third order | |
6 | Croston method |
No. | Replenishment Method | Formula for Safety Stock |
---|---|---|
1 | Reorder point | |
2 | EOQ |
No. | Replenishment Method | Stock for Procurement Order Release |
---|---|---|
1 | Reorder point | |
2 | EOQ | Stock level at t, when weeks between last order release equals weeks between the last procurement order |
Order Cycle | Fix (Order Rhythm Method) | Variable (Reorder Point Method) | |
---|---|---|---|
Order Quantity | |||
Fix | t, q—Policy | s, q—Policy | |
Variable | t, S—Policy | s, S—Policy |
No. | Replenishment Method | Procurement Order Quantity |
---|---|---|
1 | Reorder point | |
2 | EOQ (backordering) |
No. | Key Indicator | Formula |
---|---|---|
1 | ∑ Demand (products) | |
2 | MAD of the forecast (products) | |
3 | Ø WIP stock (products) | |
4 | Ø stock at Tier 1 producer (products) | |
5 | Ø stock at OEM producer (products) | |
6 | Utilization rate of employees (%) | |
7 | On-time delivery (%) | |
8 | Service level (%) | |
9 | Ø Procurement quantity (products) | |
10 | Ø Customer backlog (products) | |
11 | ∑ Weeks with customer backlog (weeks) | |
12 | ∑ Inventory costs (mil. USD) | |
13 | ∑ Procurement costs (mil. USD) | |
14 | ∑ Capital commitment costs (mil. USD) | |
15 | ∑ Storage costs (mil. USD) | |
16 | ∑ Stockout costs (mil. USD) | |
17 | ∑ Investment costs (mil. USD) |
No. | Area | 1. EOQ Simulation Model | 2. Reorder-Point Simulation Model | 3. Market-Oriented Simulation Model |
---|---|---|---|---|
1 | Demand planning | Cumulative moving average | Cumulative moving average | Decision between:
|
2 | Inventory planning | No safety stock Reorder point each number of weeks based on the EOQ | Safety stock for the service level of 99% reorder point = base stock + safety stock | Decision between:
|
3 | Procurement planning | Order release each number of weeks based on the EOQ dynamic EOQ based on the forecast | Order release when inventory drops under the reorder-point 2 × BS + SS + customer backlogs - virtual inventory | Decision between:
|
4 | Organizational decisions | Decision on:
| Decision on:
| Decision on:
|
5 | Investment-risk strategy | Decision on increasing:
| Decision on increasing:
| Decision on increasing:
|
No. | Key Indicator | 1. EOQ Simulation Model | 2. Reorder-Point Simulation Model | 3. Market-Oriented Simulation Model |
---|---|---|---|---|
1 | ∑ Demand (products) | 149,965 | 149,965 | 149,965 |
2 | MAD of the forecast (products) | 42.0 | 42.0 | 18.3 |
3 | Ø WIP stock (products) | 16,262 | 19,640 | 17,769 |
4 | Ø stock at Tier 1 producer (products) | 11,817 | 10,467 | 12,743 |
5 | Ø stock at OEM producer (products) | 4446 | 9173 | 5026 |
6 | Utilization rate of employees (%) | 70.1 | 72.9 | 98.9 |
7 | On-time delivery (%) | 99.9 | 100.0 | 100.0 |
8 | Service level (%) | 99.8 | 100.0 | 100.0 |
9 | Ø Procurement quantity (products) | 2077 | 3741 | 2252 |
10 | Ø Customer backlog (products) | 0.1 | 0 | 0 |
11 | ∑ Weeks with customer backlog (weeks) | 1 | 0 | 0 |
12 | ∑ Inventory costs (mil. USD) | 3567 | 3737 | 3370 |
13 | ∑ Procurement costs (mil. USD) | 1628 | 1538 | 1538 |
14 | ∑ Capital commitment costs (mil. USD) | 1823 | 2083 | 1752 |
15 | ∑ Storage costs (mil. USD) | 116 | 116 | 80 |
16 | ∑ Stock-out costs (mil. USD) | 0.4 | 0 | 0 |
17 | ∑ Investment costs (mil. USD) | 310 (t = 124) | 326 (t = 114) | 338 (t = 21) |
No. | Key Indicator | 1. EOQ Simulation Model | 2. Reorder-Point Simulation Model | 3. Market-Oriented Simulation Model |
---|---|---|---|---|
1 | ∑ Demand (products) | 201,273 | 201,273 | 201,273 |
2 | MAD of the forecast (products) | 163.6 | 163.6 | 23.7 |
3 | Ø WIP stock (products) | 6773 | 11,986 | 12,712 |
4 | Ø stock at Tier 1 producer (products) | 4745 | 4593 | 5039 |
5 | Ø stock at OEM producer (products) | 2028 | 7393 | 7612 |
6 | Utilization rate of employees (%) | 74.5 | 79.3 | 99.2 |
7 | On-time delivery (%) | 62.2 | 96.9 | 98.7 |
8 | Service level (%) | 60.8 | 93.3 | 98.8 |
9 | Ø Procurement quantity (products) | 2120 | 4262 | 3798 |
10 | Ø Customer backlog (products) | 177.0 | 15.8 | 6.7 |
11 | ∑ Weeks with customer backlog (weeks) | 157 | 27 | 5 |
12 | ∑ Inventory costs (mil. USD) | 4135 | 3606 | 3514 |
13 | ∑ Procurement costs (mil. USD) | 1938 | 2051 | 2018 |
14 | ∑ Capital commitment costs (mil. USD) | 643 | 1291 | 1293 |
15 | ∑ Storage costs (mil. USD) | 138 | 138 | 107 |
16 | ∑ Stock-out costs (mil. USD) | 1416 | 126 | 54 |
17 | ∑ Investment costs (mil. USD) | 123 (t = 109) | 166 (t = 327) | 381 (t = 72) |
No. | Key Indicator | 1. EOQ Simulation Model | 2. Reorder-Point Simulation Model | 3. Market-Oriented Simulation Model |
---|---|---|---|---|
1 | ∑ Demand (products) | 176,481 | 176,481 | 176,481 |
2 | MAD of the forecast (products) | 55.2 | 55.2 | 16.7 |
3 | Ø WIP stock (products) | 9200 | 13,859 | 14,046 |
4 | Ø stock at Tier 1 producer (products) | 6109 | 5261 | 3954 |
5 | Ø stock at OEM producer (products) | 3091 | 8598 | 10,093 |
6 | Utilization rate of employees (%) | 77.2 | 80.0 | 99.1 |
7 | On-time delivery (%) | 96.0 | 100.0 | 100.0 |
8 | Service level (%) | 88.5 | 100.0 | 100.0 |
9 | Ø Procurement quantity (products) | 2077 | 4745 | 3214 |
10 | Ø Customer backlog (products) | 17.7 | 0 | 0 |
11 | ∑ Weeks with customer backlog (weeks) | 46 | 0 | 0 |
12 | ∑ Inventory costs (mil. USD) | 3121 | 3396 | 3157 |
13 | ∑ Procurement costs (mil. USD) | 1816 | 1759 | 1773 |
14 | ∑ Capital commitment costs (mil. USD) | 1043 | 1516 | 1293 |
15 | ∑ Storage costs (mil. USD) | 120 | 120 | 91 |
16 | ∑ Stock-out costs (mil. USD) | 141 | 0 | 0 |
17 | ∑ Investment costs (mil. USD) | 0 | 194 (t = 297) | 250 (t = 21) |
No. | Key Indicator | 1. EOQ Simulation Model | 2. Reorder-Point Simulation Model | 3. Market-Oriented Simulation Model |
---|---|---|---|---|
1 | ∑ Demand (products) | 217,581 | 217,581 | 217,581 |
2 | MAD of the forecast (products) | 48.8 | 48.8 | 18.0 |
3 | Ø WIP stock (products) | 12,110 | 15,901 | 14,610 |
4 | Ø stock at Tier 1 producer (products) | 8460 | 6858 | 4309 |
5 | Ø stock at OEM producer (products) | 3651 | 9043 | 10,301 |
6 | Utilization rate of employees (%) | 75.1 | 79.0 | 99.2 |
7 | On-time delivery (%) | 86.7 | 100.0 | 100.0 |
8 | Service level (%) | 82.5 | 100.0 | 100.0 |
9 | Ø Procurement quantity (products) | 2400 | 2897 | 2702 |
10 | Ø Customer backlog (products) | 60.9 | 0 | 0 |
11 | ∑ Weeks with customer backlog (weeks) | 70 | 0 | 0 |
12 | ∑ Inventory costs (mil. USD) | 4242 | 4035 | 3689 |
13 | ∑ Procurement costs (mil. USD) | 2217 | 2209 | 2197 |
14 | ∑ Capital commitment costs (mil. USD) | 1387 | 1676 | 1379 |
15 | ∑ Storage costs (mil. USD) | 150 | 150 | 113 |
16 | ∑ Stock-out costs (mil. USD) | 487 | 0 | 0 |
17 | ∑ Investment costs (mil. USD) | 263 (t = 158) | 276 (t =146) | 344 (t = 60) |
No. | Key Indicator | 1. EOQ Simulation Model | 2. Reorder-Point Simulation Model | 3. Market-Oriented Simulation Model |
---|---|---|---|---|
1 | ∑ Demand (products) | 189,173 | 189,173 | 189,173 |
2 | MAD of the forecast (products) | 45.2 | 45.2 | 17.6 |
3 | Ø WIP stock (products) | 14,704 | 16,766 | 13,338 |
4 | Ø stock at Tier 1 producer (products) | 11,304 | 6939 | 4542 |
5 | Ø stock at OEM producer (products) | 3400 | 9827 | 8796 |
6 | Utilization rate of employees (%) | 70.1 | 73.2 | 99.1 |
7 | On-time delivery (%) | 84.2 | 100.0 | 100.0 |
8 | Service level (%) | 78.0 | 100.0 | 100.0 |
9 | Ø Procurement quantity (products) | 2253 | 3432 | 2432 |
10 | Ø Customer backlog (products) | 74.9 | 0 | 0 |
11 | ∑ Weeks with customer backlog (weeks) | 88 | 0 | 0 |
12 | ∑ Inventory costs (mil. USD) | 4356 | 3832 | 3277 |
13 | ∑ Procurement costs (mil. USD) | 1946 | 1927 | 1929 |
14 | ∑ Capital commitment costs (mil. USD) | 1670 | 1763 | 1246 |
15 | ∑ Storage costs (mil. USD) | 141 | 141 | 101 |
16 | ∑ Stock-out costs (mil. USD) | 600 | 0 | 0 |
17 | ∑ Investment costs (mil. USD) | 273 (t = 150) | 280 (t = 141) | 324 (t = 63) |
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Gallego-García, S.; García-García, M. Market-Oriented Procurement Planning Leading to a Higher Service Level and Cost Optimization. Appl. Sci. 2020, 10, 8734. https://doi.org/10.3390/app10238734
Gallego-García S, García-García M. Market-Oriented Procurement Planning Leading to a Higher Service Level and Cost Optimization. Applied Sciences. 2020; 10(23):8734. https://doi.org/10.3390/app10238734
Chicago/Turabian StyleGallego-García, Sergio, and Manuel García-García. 2020. "Market-Oriented Procurement Planning Leading to a Higher Service Level and Cost Optimization" Applied Sciences 10, no. 23: 8734. https://doi.org/10.3390/app10238734
APA StyleGallego-García, S., & García-García, M. (2020). Market-Oriented Procurement Planning Leading to a Higher Service Level and Cost Optimization. Applied Sciences, 10(23), 8734. https://doi.org/10.3390/app10238734