Sustainable Supply Chain Model for Defective Growing Items (Fishery) with Trade Credit Policy and Fuzzy Learning Effect
Abstract
:1. Introduction
1.1. Literature Review According to the Trade-Credit Policy Model under Various Policies
1.2. Literature Review According to the Trade-Credit Policy and Imperfect Quality Items-Based Model under Various Policies
1.3. Literature Review According to the Imperfect Quality Items, Carbon Emissions, and Growing Items-Based Model under Various Policies
1.4. Literature Review According to Imperfect Quality Items, Carbon Emissions, Trade Credit, and Learning Fuzzy Theory-Based Model under Various Policies
1.5. Introduction of the Proposed Study
1.5.1. Introduction of the Proposed Study’s Background, Perspective, Research Gap, and Our Contribution
- (i)
- How buyer’s total fuzzy profit and order quantity get affected by trade credit policy under fuzzy environment.
- (ii)
- What is the impact of the learning rate on the buyer’s total fuzzy profit under a fuzzy environment?
- (iii)
- What is the impact of the number of shipments on the buyer’s total fuzzy profit under a fuzzy environment?
- (iv)
- How the buyer’s total fuzzy profit gets affected by changes in various parameters (distance, feeding cost, ordering cost, selling price, etc.).
- (v)
- How the buyer’s total fuzzy profit gets affected by changes in lower and upper deviation of demand rate.
1.5.2. Outlook of Present Study through Flowchart
2. Assumptions and Definitions
2.1. Assumption
- ⮚
- The demand rate has been considered imprecise in nature and treated as a triangular fuzzy number (Alsaedi et al. [37]). The triangular fuzzy number is used to fuzzify the model, and the signed distance method is applied to defuzzify the model.
- ⮚
- ⮚
- It is assumed that the buyer inspects the whole lot received at a constant screening rate; after that, the buyer separates the whole lot received from the seller into two categories, defective and non-defective items, and then sells them at different selling prices (Salameh and Jaber [6]). It is also considered that the selling price of good quality is greater than that of defective quality items (poorer) (Jaggi et al. [38]). The fraction of defective growing items follows the S-shape learning curve (Jaber et al. [9]). All defective growing items are sold in different markets (Mittal and Sharma [24]).
- ⮚
- To avoid shortages within screening time.
- ⮚
- It is assumed that the rework or lack of replacement of growing defective items after the delivery of the lot.
- ⮚
- ⮚
- It is supposing that when the transaction of the newborn items shifts from one place to another, a lot of carbon units emit due to transportation, which is very harmful to the environment and incorporates emission cost for low carbon units (Guru et al. [39]).
2.2. Some Basic Definitions
3. Model Formulation
3.1. S-Shape Learning Curve
3.2. Model Description
- Case-1:
- Case-2:
- Case-3:
4. Proposed Model under Fuzzy Environment
5. Solution Method
5.1. Solution Method for Case 1
5.2. Solution Method for Case 2
5.3. Solution Method for Case 3
5.4. Algorithm
5.5. Numerical Example
6. Sensitivity Analysis
7. Observation and Managerial Insights
- From Table 4, we can conclude that if the number of shipments increases, then the number of newborn items and the buyer’s total fuzzy profit increase as well because the percentage of defective items decreases as the number of shipments increases from the mathematical relationship between the number of shipments and the defective percentage.
- From Table 5, it can be observed that when the credit period increases, the number of newborn items and the buyer’s total fuzzy profit increase as well. The newborn items and buyer’s total profit increase due to the presence of the trade credit policy because the buyer obtains more credit period for the selling of items, and its revenue generates more due to interest earned and the selling of items when trade credit period is less than or equal to cycle length. On the other hand, the seller obtains more profit due to interest paid when the buyer does not return borrowed items on or before the fixed credit period. Finally, in this model, the credit policy positively affects the order quantity and the buyer’s total fuzzy profit. The trade-credit policy can be risky for the seller when the financing period is very large. The graphical impact of the trade credit period has been shown in Figure 9 and Figure 10.
- From Table 6, it can be analyzed that as the learning rate increases with keeping other model parameter constant, the number of newborn items and the buyer’s total fuzzy profit increase because when the learning rate increases, the percentage of defective items decreases per shipment, but those items cannot be removed from the lot. Initially, the order quantity increases when the learning rate increases, but only for some time, and for some values of the learning rate, the order quantity becomes constant. This specific value of the learning rate is more important for the fishery industry and the order quantity. Learning theory suggests that the buyer obtains more profit on less order quantity. The impact of the learning rate has been shown in Figure 11 and Figure 12.
- From Table 7, if the lower and upper deviation of the fuzzy demand rate increase, the number of newborn items and the buyer’s total fuzzy profit increase because the selling of items increases and generates more revenue. The interest earned and interest paid vary due to the lower and upper deviation of the demand rate. The decision-makers can manage the value of the lower and upper deviation of the demand rate for the fishery industry. The fuzzy learning theory is more beneficial for the fishery industry.
- From Table 8, if the feeding cost increases, the number of newborn items is constant while the buyer’s total fuzzy profit decreases due to the addition of the feeding cost to the revenue cost.
- From Table 9, if the holding cost increases, the number of newborn items is constant while the buyer’s total fuzzy profit decreases because the cost function increases due to the increase in the holding cost.
- From Table 10, the inspection of the lot must be performed when the lot has some defective items. If the inspection cost increases, the number of newborn item is constant, whereas the buyer’s total profit decreases because the cost function increases. The decision-makers can manage the inspection cost according to the model.
- From Table 11, we see that if the purchasing cost increases, the number of newborn item is constant, and the buyer’s total fuzzy profit decreases because the cost function increases.
- From Table 12, when the buyer increases the selling price of good quality items, the number of newborn items is constant and increases the total fuzzy profit because the selling price of good items is more than the purchasing price and generates more revenue due to more sales.
- From Table 13, when the carbon emission tax rate increases, the number of newborn items is constant, but the buyer’s total fuzzy profit decreases due to the addition of carbon taxation in the cost function.
- From Table 14, if the traveling distance increases, then the number of the newborn items is constant, but the buyer’s total fuzzy profit decreases because the emission cost increases due to the increase in distance.
8. Conclusions
Funding
Data Availability Statement
Conflicts of Interest
Notations
Weight for newborn items (g) | |
Weight for newborn items (g) at any time t. | |
The rate of demand for items (g per year). | |
The rate of fuzzy demand for items (g per year). | |
Upper triangular fuzzy number (g per year). | |
Lower triangular fuzzy number (g per year). | |
Whole weight (g) for inventory at time t. | |
The rate of exponential growth in per unit time t | |
The weight (g) in the asymptotic position when growth increases exponentially | |
The constant of integration for exponential growth function | |
Percentage of defective slaughtered items in a whole lot, which follows the learning curve. | |
Weight (g) at supremum during the first growth region for split linear growth function. | |
Weight (g) at supremum during the duration in the growth region for the growth function. | |
The number of newborn items demanded/cycle (decision variable) | |
Unit purchasing cost (ZAR per g) | |
Unit selling cost for goods item (ZAR per g) | |
Unit selling cost for defective item (ZAR per g) | |
Unit holding cost for each item (ZAR per g) | |
Unit feeding cost for the item (ZAR per g) | |
Ordering cost per growing cycle (ZAR per g per year) | |
Screening cost for each item (ZAR per g) | |
Screening rate for each item (g/min) | |
Carbon emissions per Km due to transport | |
Distance covered in one way (Km) | |
Emissions tax rate ($ per Ton) | |
IHC | Inventory carrying cost (in $) |
Purchasing cost (in $) | |
Ordering cost (in $) | |
Feeding cost (in $) | |
Carbon emission cost (in $) | |
Whole revenue (in $) | |
Total Inventory cost for the buyer (in $) | |
Trade credit period (years). | |
Interest gained | |
Interest charged | |
Cycle length (years) | |
Growing time period (years) | |
Time for inspection (years) | |
Selling time period for items (years) | |
The buyer’s total profit without credit policy | |
The buyer’s total profit under credit policy for case 1 | |
The buyer’s total profit under credit policy for case 2 | |
The buyer’s total profit under credit policy for case 3 | |
The buyer’s total fuzzified profit under credit policy for case 1 | |
The buyer’s total fuzzified profit under credit policy for case 2 | |
The buyer’s total fuzzified profit under credit policy for case 3 | |
The buyer’s total defuzzified profit under credit policy for case 1 | |
The buyer’s total defuzzified profit under credit policy for case 2 | |
The buyer’s total defuzzified profit under credit policy for case 3 |
Appendix A
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Authors | Imperfect Quality Items | Growing Items | Trade Credit Policy | Carbon Emissions | Learning Effect | Fuzzy Environment |
---|---|---|---|---|---|---|
Wright [17] | 🗸 | |||||
Salameh and Jaber [6] | 🗸 | |||||
Jaber et al. [9] | 🗸 | 🗸 | ||||
Sebatjane and Adetunji [13] | 🗸 | 🗸 | ||||
Mittal and Sharma [24] | 🗸 | 🗸 | ||||
Jayaswal et al. [19] | 🗸 | 🗸 | 🗸 | 🗸 | ||
Alamri et al. [21] | 🗸 | 🗸 | 🗸 | |||
Jayaswal et al. [22] | 🗸 | 🗸 | 🗸 | 🗸 | ||
Rezaei [23] | 🗸 | |||||
Mittal and Sharma [24] | 🗸 | 🗸 | 🗸 | |||
Pattnaik [25] | 🗸 | 🗸 | ||||
Rajeswari et al. [26] | 🗸 | |||||
Mahapatra et al. [27] | 🗸 | 🗸 | ||||
Taheri and Mirzazadeh [28] | 🗸 | 🗸 | ||||
Dinagar and Manvizhi [29] | 🗸 | 🗸 | ||||
Garg et al. [30] | 🗸 | 🗸 | ||||
Kuppulakshmi et al. [31] | 🗸 | 🗸 | ||||
Jayaswal and Mittal [32] | 🗸 | 🗸 | 🗸 | |||
Chung and Huang [33] | 🗸 | 🗸 | ||||
Sulak [34] | 🗸 | 🗸 | ||||
Shekarian et al. [35] | 🗸 | 🗸 | 🗸 | |||
Kazemi et al. [36] | 🗸 | 🗸 | ||||
Present study | 🗸 | 🗸 | 🗸 | 🗸 | 🗸 | 🗸 |
Inventory Parameter | Numerical Value of Inventory Parameter | Inventory Parameter | Numerical Value of Inventory Parameter |
---|---|---|---|
Fuzzy demand rate | 1,000,000 g/year | Holding cost | 0.04 ZAR/g/year |
Upper deviation fuzzy demand rate | 10,000 g/year | Ordering cost | 1000 ZAR/cycle |
Lower deviation fuzzy demand rate | 5000 g/year | Feeding cost | 0.2 ZAR/g/year |
Weight of each newborn growing item | 57 g | Weight of each newborn growing item at slaughtering time | 1500 g |
Purchasing cost | 0.025 ZAR/g | Selling price for good items | 0.05 ZAR/g |
Inspection cost | 0.00025 ZAR/g | Selling price for defective items | 0.02 ZAR/g |
Inspection rate | 5,256,000 g/year | Asymptotic weight | 6870 g |
Constant of integration | 120 | Growth rate | 40/year (0.11/day) |
Carbon emissions per Km due to transport | 0.00077344 | Distance covered in one way (Km) | 500 Km |
Emissions tax rate | 30 $ per Ton | Learning rate (b) | 0.79 |
Learning supporting parameter | 40 | Learning supporting parameter | 999 |
Number of shipments | 5 | Interest earned | 0.05 |
Interest earned | 0.08 | Trade credit period Interest earned | 0.363 year |
Cases | Optimal Number of New Born Items | Buyer’s Total Fuzzy Profit |
---|---|---|
, | ||
1 | 1193 | |
2 | 1194 | $ |
3 | 1197 | $ |
4 | 1203 | $ |
5 | 1214 | $ |
0.1 | 1211 | $ |
0.2 | 1213 | $ |
0.3 | 1214 | $ |
0.3932 | 1195 | $ |
0.4932 | 1198 | $ |
0.5932 | 1201 | $ |
0.6932 | 1213 | $ |
0.7932 | 1214 | $ |
0.8932 | 1214 | $ |
0.9932 | 1214 | $ |
Fuzzy Demand Rate | Total Fuzzy Profit | |||
---|---|---|---|---|
4000 g/year | 1,000,000 g/year | 2000 g/year | 1141 | $ |
6000 g/year | 1,000,000 g/year | 3000 g/year | 1203 | $ |
8000 g/year | 1,000,000 g/year | 4000 g/year | 1210 | $ |
10,000 g/year | 1,000,000 g/year | 5000 g/year | 1214 | $ |
Total Fuzzy Profit | ||
---|---|---|
0.2 | 1214 | $ |
0.3 | 1214 | $ |
0.4 | 1214 | $ |
Total Fuzzy Profit | ||
---|---|---|
0.04 | 1214 | $ |
0.06 | 991 | $ |
0.08 | 858 | $ |
Total Fuzzy Profit | ||
---|---|---|
0.00025 | 1214 | $ |
0.00035 | 1214 | $ |
0.00045 | 1214 | $ |
Total Fuzzy Profit | ||
---|---|---|
0.025 | 1214 | $ |
0.035 | 1214 | $ |
0.045 | 1214 | $ |
Total Fuzzy Profit | ||
---|---|---|
0.05 | 1214 | $ |
0.06 | 1214 | $ |
0.07 | 1214 | $ |
Total Fuzzy Profit | ||
---|---|---|
30 $ | 1214 | $ |
35 $ | 1214 | |
40 $ | 1214 | $ |
Total Fuzzy Profit | ||
---|---|---|
500 Km | 1214 | $ |
600 Km | 1214 | $ |
700 Km | 1214 | $ |
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Alamri, O.A. Sustainable Supply Chain Model for Defective Growing Items (Fishery) with Trade Credit Policy and Fuzzy Learning Effect. Axioms 2023, 12, 436. https://doi.org/10.3390/axioms12050436
Alamri OA. Sustainable Supply Chain Model for Defective Growing Items (Fishery) with Trade Credit Policy and Fuzzy Learning Effect. Axioms. 2023; 12(5):436. https://doi.org/10.3390/axioms12050436
Chicago/Turabian StyleAlamri, Osama Abdulaziz. 2023. "Sustainable Supply Chain Model for Defective Growing Items (Fishery) with Trade Credit Policy and Fuzzy Learning Effect" Axioms 12, no. 5: 436. https://doi.org/10.3390/axioms12050436
APA StyleAlamri, O. A. (2023). Sustainable Supply Chain Model for Defective Growing Items (Fishery) with Trade Credit Policy and Fuzzy Learning Effect. Axioms, 12(5), 436. https://doi.org/10.3390/axioms12050436