An Insight into the Impacts of Memory, Selling Price and Displayed Stock on a Retailer’s Decision in an Inventory Management Problem
Abstract
:1. Introduction
1.1. Basic Idea of Fractional Calculus and Memory Effect
1.2. EOQ Models and Fractional Calculus
1.3. Motivation of the Work
- A massive volume of literature exists that is related to the EOQ/EPQ(Economic Production Quantity) model. However, there is no such significant number of papers to date dealing with the impact of memory on the decision-making procedure.
- There are enough reasons to consider the EOQ/EPQ models in memory-sensitive situations. In reality, a decision-making phenomenon involving human’s association cannot be memory-free.
- To date, most of the memory-sensitive model discussed in the light of fractional calculus is developed on the assumptions of constant demand, price, or time-dependent demand. Furthermore, they are inferior in numbers compared to the whole literature on the theories of EOQ and EPQ models.
- Consequently, there are motives for including the memory sense in lot-size modelling, but the literature is still in its infancy. The analysis of fractional calculus is complicated, which might be the cause.
1.4. Novelties of the Work
- This paper manifests the collective impact of pricing, displayed stock, shortage, and memory on retailers’ decisions. This paper uses demand as a function of selling price and displayed stock to formulate the model. The model is discussed for both the cases of shortage and without shortage. It also incorporates memory sense in theory utilizing fractional calculus tools. Several earlier studies addressed the mentioned features separately. But, no literature discussed the impacts simultaneously.
- An algorithm for solving the optimization model that corresponds to the proposed EOQ is created for quantitative analysis by using the Mathematica software.
- The given mathematical model provides significant management insight into a business phenomenon. This concept can be used for freshly established retail businesses when the showroom is still being constructed. The proposedmodel in this research might be applied to the small-scale retailing of bakeries and poultry slaughtering.
1.5. Structure of the Paper
2. Notations, Assumptions and Hypothesis
2.1. Notations and Assumptions
2.2. Hypothesis
- (i)
- Demand is linear function of selling price and displayed stock., i.e., where are positive constants and is the selling price of the product.
- (ii)
- Shortage is allowed and completely backlogged.
- (iii)
- Replenishment rate is spontaneous and lead time is zero.
- (iv)
- Lot size and time horizon are finite.
- (v)
- The retailing phenomenon is memory-motivated.
3. Formulation of Proposed Model
3.1. Basic Ideology about the Proposed EOQ Model
3.2. Reformulation of the EOQ Model in Memory-Motivated Arena
4. Solution of the Proposed Fractional EOQ Model
4.1. Some Relevant Costs and Revenue Calculations
- (i)
- Set up cost: This is onetime investment. It also includes the ordering cost and is taken as a constant .
- (ii)
- Total holding cost: The holding cost per unit is and span of stock is . Thus, the total holding cost can be obtained by the following fractional integration of order
- (iii)
- Total shortage cost: The system is taken to be with shortage. Thus, there is a shortage cost per unit which is and the total shortage cost on the time span as
- (iv)
- Sales revenue: The selling price per unit is and span of stock is . Thus, the tota sales revenue can be
- (v)
- Total profit: Total profit can be obtained by subtracting all the relevant costs from the total earned revenue. Thus, total profit from the whole lot cycle can be obtained as
- (vi)
- Average profit: To optimize the profitability, the retailer’s main concern will be on the optimization of the average profit which can be obtained as
4.2. Deduction of Memory-Free Models Connected to the Proposed Model
4.3. More EOQ Models as Particular Cases of the Proposed Model
5. Solution Methodology and Numerical Simulation
5.1. Solution Methodology
Algorithm 1 |
Step 1: Start |
Step 2: Initialize input variable , and |
Step 3: Set |
Step 4: Check “for” condition |
Step 5: If “for” condition is validated go to Step 5, otherwise go to Step 9 |
Step 6: Evaluate , , , and |
Step 7: Find Maximum value of and optimal value of , , and |
Step 8: Store , |
Step 9: Go to Step 3 |
Step 10: |
Step 11: Store |
Step 12: Sensitivity analysis of with respect to input variables |
5.2. Numerical Simulation
5.3. Sensitivity Analysis
5.4. Major Observations
- (i)
- As the memory index approaches to value 1 (towards the memory less situation), the model with the shortage coincides with the model without shortage. Thus, there is no such effect of the unit shortage cost on the average profit function. Thus, the sensitivity curve of the average profit to the unit shortage cost is displayed as a straight line in Figure 12.
- (ii)
- The medium memory sense is given by the value of the memory index near 0.5. For medium memory sense, the models with and without shortage again converge to one.
- (iii)
- The span of the lot cycle decreases uniformly with an exception at the value of the memory index near zero as the memory sense is more vital for the case of a model without shortage. For the case of shortage, the span of the lot cycle is a little bit high for the memory index nearer to both the extreme ends that is 0 and 1. The graph is almost a straight line in the memory index’s other intermediate values.
- (iv)
- The lot sizes for both models face gradual uniform decay as the memory becomes more robust. The curves representing the two models coincide for the memory index values equal to 0.5 and 1.
- (v)
- The variation of the total average profit against the lot cycle is not uniform. For both the cases of shortage and without shortage, it faces several up and down in the curve plotting. Because of the effect of memory, there is no such straightforward relation between the average profit and lot cycle.
- (vi)
- As the setup and holding costs gradually increase from −50% to 50% of its value, the total average profit decreases moderately. The outcome is quite evident.
- (vii)
- The unit selling price has seemed the most crucial input parameter, which significantly impacts the sensitivity of the optimal solution. As the selling price gradually increases from −50% to 50%of its value, the total average profit increases, covering a vast range of values.
- (viii)
- Apart from the insignificant role of the unit shortage cost on the sensitivity of the optimal solution (reasons are discussed earlier), the impact of the stock coefficient in the demand function is also slightly inferior on the sensitivity analysis of the profit function. This is because we restrict our model to be developed under the assumption that the demand is dependent on the displayed stock, but not so much.
6. Managerial Insights and Real-Life Applications
6.1. Managerial Insights
- A person involved in the situation cannot be memory-free. Because of the interactions between retailers and customers during earlier transactions, there must be some system memory that might play a part in the current scenario. It has been determined through the models’ numerical simulation that the memory negatively impacts the retailer’s objective of maximum gain. The retailer’s objective may be accomplished in a nearly memory-free setting. The absence of memory is the ideal circumstance for increased profitability, but this is not always feasible in practice.
- The selling price and demand are inversely correlated. On the other hand, the numerical results show that raising the selling price will maximize the profit. The selling price’s influence on the profit function outweighs its influence on the demand function.
- The showroom’s merchandise display may help favorably draw customers’ attention. However, in practice, this effect is not comparable to the mania surrounding the instance of decreasing the selling price. Numerical optimization assumes that the stock component of the demand function has low values. The result is a favorable but marginally less significant influence of the presented stock on the profit target.
- Another intriguing finding from the numerical results is that the retailer’s purpose in a memory-free environment is best served by the convergence of the models with and without shortage. The highest average profit may be achieved when there is no shortage and no memory constraints.
6.2. Possible Domains of Application
6.2.1. Retail Bakery Inventory
6.2.2. Chicken Retail Store
7. Conclusions and Future Research Scope
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A
Appendix B. Mittag–Leffler Function
- The two parameters Mittag–Leffler function is denoted by and is defined by
- The one parameter Mittag–Leffler function is denoted by and is defined by
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Authors | Year | Demand Function | Methodology |
---|---|---|---|
Das and Roy [46] | 2014 | Constant demand | Primal geometric programming for optimization |
Das and Roy [47] | 2015 | Lineartime-dependent demand | Primal geometric programming for optimization |
Pakhira et al. [48] | 2018 | Linear time-dependent demand | Primal geometric programming for optimization |
Pakhira et al. [49] | 2018 | Linear time-dependent demand | Primal geometric programming for optimization |
Pakhira et al. [50] | 2019 | Quadratic time-dependent demand | Primal geometric programming for optimization |
Pakhira et al. [51] | 2019 | Linear time-dependent fuzzy demand | Primal geometric programming for optimization and signed distance method for defuzzification |
Pakhira et al. [52] | 2020 | Time and order of fractional derivative dependent demand | Primal geometric programming for optimization |
Pakhira et al. [53] | 2020 | Time-dependent Mittag–Leffler function distributed demand | Primal geometric programming for optimization |
Rahaman et al. [54] | 2021 | Time-dependent decreasing fuzzy demand | Fractional differential equation and dense fuzzy environment optimization |
Rahaman et al. [55] | 2021 | Fuzzy price dependent demand | Fuzzy fractional differential equation and lock fuzzy dense environment of optimization |
Rahaman et al. [56] | 2022 | Fuzzy constant demand | Fuzzy fractional differential equation and trapezoidal fuzzy environment of optimization |
This paper | Price and displayed stock dependent demand | Mathematical analysis using fractional calculus and numerical optimization through a proposed algorithm by using Mathematica software(Company Name: Wolfram Research, Inc. Headquarter: Champaign, IL, United States) |
Notations | Units | Descriptions |
---|---|---|
USD | Holding cost per unit stock | |
USD | Setup cost as initial investment for basic infrastructure | |
USD | Shortage cost as penalty per unit shortage | |
USD | Selling price per unit sold items | |
Unit | Demand rate which is a linear function of selling price and displayed stock | |
Month | Complete lot cycle which includes both of the retailing and shortage phase (a decision variable) | |
Month | Active retailing cycle (a decision variable) | |
Unit | Optimal lot size for a retailing cycle (a decision variable) | |
Unit | Size of inventories at the beginning of a lot cycle (a decision variable) | |
Unit | ||
Unit | ||
Unit | Order of fractional derivative which is called differential memory index | |
Unit | Order of fractional integral which is called integral memory index | |
Unit | Demand potential which is a positive constant | |
Unit | Proportional constant for the relation between demand and selling price | |
C | Unit | Proportional constant for the relation between demand and displayed |
USD | Total average profit for the memory-motivated model (objective function) | |
USD | Total average profit for the memory-free model (objective function) |
Models | Conditions | |||
---|---|---|---|---|
With memory and shortage | ||||
With memory and without shortage | ||||
Without memory but with shortage | ||||
Without memory and shortage | ||||
Memory Index | |||||
---|---|---|---|---|---|
1 | 3.762 | 3.762 | 731.02 | 731.02 | 432.51 |
0.9 | 6.303 | 3.373 | 603.02 | 1128.65 | 187.98 |
0.8 | 6.303 | 3.373 | 549.73 | 1038.12 | 174.83 |
0.7 | 6.303 | 3.373 | 498.35 | 947.94 | 157.93 |
0.6 | 6.303 | 3.373 | 448.26 | 856.87 | 137.81 |
0.5 | 3.392 | 3.392 | 400.95 | 400.95 | 256.84 |
0.4 | 6.303 | 3.373 | 419.03 | 752.54 | 90.41 |
0.3 | 6.303 | 3.373 | 309.14 | 605.26 | 64.51 |
0.2 | 6.303 | 3.373 | 267.46 | 527.40 | 38.10 |
0.1 | 5.120 | 3.574 | 229.85 | 441.20 | 17.41 |
Memory Index | |||
---|---|---|---|
1 | 3.762 | 731.02 | 432.51 |
0.9 | 3.971 | 698.10 | 415.29 |
0.8 | 4.085 | 641.35 | 387.56 |
0.7 | 4.016 | 563.39 | 350.12 |
0.6 | 3.755 | 478.17 | 305.56 |
0.5 | 3.392 | 400.95 | 256.84 |
0.4 | 3.024 | 338.24 | 205.86 |
0.3 | 2.710 | 289.47 | 153.29 |
0.2 | 2.498 | 251.86 | 98.91 |
0.1 | 2.607 | 222.71 | 42.50 |
Parameters | Percentage | |||||
---|---|---|---|---|---|---|
+50 | 4.601 | 4.601 | 895.34 | 895.34 | 312.94 | |
+30 | 4.285 | 4.285 | 833.85 | 833.85 | 357.96 | |
+10 | 3.994 | 3.994 | 766.81 | 766.81 | 406.56 | |
−10 | 3.570 | 3.570 | 693.39 | 693.39 | 459.79 | |
−30 | 3.151 | 3.151 | 611.30 | 611.30 | 515.31 | |
−50 | 2.665 | 2.665 | 516.43 | 516.43 | 588.09 | |
+50 | 3.058 | 3.058 | 593.12 | 593.12 | 310.07 | |
+30 | 3.289 | 3.289 | 638.35 | 638.35 | 356.06 | |
+10 | 3.582 | 3.582 | 695.80 | 695.80 | 405.86 | |
−10 | 3.972 | 3.972 | 772.17 | 772.17 | 460.59 | |
−30 | 4.524 | 4.524 | 880.82 | 880.82 | 522.09 | |
−50 | 5.399 | 5.399 | 1053.56 | 1053.56 | 593.75 | |
+50 | 3.832 | 3.832 | 730.23 | 730.23 | 895.34 | |
+30 | 3.804 | 3.804 | 730.55 | 730.55 | 712.46 | |
+10 | 3.776 | 3.776 | 730.86 | 730.86 | 512.58 | |
−10 | 3.748 | 3.748 | 731.17 | 731.17 | 337.70 | |
−30 | 3.721 | 3.721 | 731.48 | 731.48 | 145.82 | |
−50 | 4.550 | 3.658 | 724.58 | 899.60 | −43.76 | |
+50 | 3.762 | 3.762 | 731.02 | 731.02 | 432.51 | |
+30 | 3.762 | 3.762 | 731.02 | 731.02 | 432.51 | |
+10 | 3.762 | 3.762 | 731.02 | 731.02 | 432.51 | |
−10 | 3.762 | 3.762 | 731.02 | 731.02 | 432.51 | |
−30 | 3.762 | 3.762 | 731.02 | 731.02 | 432.51 | |
−50 | 3.762 | 3.762 | 731.02 | 731.02 | 432.51 | |
+50 | 3.783 | 3.783 | 738.59 | 738.59 | 436.26 | |
+30 | 3.774 | 3.774 | 735.53 | 735.53 | 434.75 | |
+10 | 3.766 | 3.766 | 732.51 | 732.51 | 433.26 | |
−10 | 3.758 | 3.758 | 729.53 | 729.53 | 431.77 | |
−30 | 3.750 | 3.750 | 726.57 | 726.57 | 430.29 | |
−50 | 3.742 | 3.742 | 723.65 | 723.65 | 428.81 |
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Rahaman, M.; Abdulaal, R.M.S.; Bafail, O.A.; Das, M.; Alam, S.; Mondal, S.P. An Insight into the Impacts of Memory, Selling Price and Displayed Stock on a Retailer’s Decision in an Inventory Management Problem. Fractal Fract. 2022, 6, 531. https://doi.org/10.3390/fractalfract6090531
Rahaman M, Abdulaal RMS, Bafail OA, Das M, Alam S, Mondal SP. An Insight into the Impacts of Memory, Selling Price and Displayed Stock on a Retailer’s Decision in an Inventory Management Problem. Fractal and Fractional. 2022; 6(9):531. https://doi.org/10.3390/fractalfract6090531
Chicago/Turabian StyleRahaman, Mostafijur, Reda M. S. Abdulaal, Omer A. Bafail, Manojit Das, Shariful Alam, and Sankar Prasad Mondal. 2022. "An Insight into the Impacts of Memory, Selling Price and Displayed Stock on a Retailer’s Decision in an Inventory Management Problem" Fractal and Fractional 6, no. 9: 531. https://doi.org/10.3390/fractalfract6090531
APA StyleRahaman, M., Abdulaal, R. M. S., Bafail, O. A., Das, M., Alam, S., & Mondal, S. P. (2022). An Insight into the Impacts of Memory, Selling Price and Displayed Stock on a Retailer’s Decision in an Inventory Management Problem. Fractal and Fractional, 6(9), 531. https://doi.org/10.3390/fractalfract6090531