The Role of the Discount Policy of Prepayment on Environmentally Friendly Inventory Management
Abstract
:1. Introduction
- How do payment-in-advance models affect pricing and replenishment decisions as well as the total profit when customer demand is sensitive to the selling price and environmental performance of the producer?
- Will discount policy impact retailers’ choice of payment in advance settings and total profit?
- How do the customer preference for carbon emission reduction levels and various emission costs impact the retailer’s total profit?
2. Literature Review
3. Mathematical Model Formulation for Inventory Model
- Inventory of a single product is considered with a limitless planning horizon.
- The replenishment rate is boundless.
- The lead time is constant and the shortages are overlooked.
- The retailer has to make a payment in advance to the supplier [23].
- The supplier offers a discount on the purchase cost of the products according to the number of instalment decisions [23].
3.1. Case I: With Advanced Payment and a Discount for Instalment Based Payment
3.1.1. Total Cost per Unit Time
- (a)
- Ordering cost per cycle:
- (b)
- The inventory holding cost per cycle:
- (c)
- The purchase cost per cycle:
- (d)
- Transportation cost per cycle:
- (e)
- Instalment capital cost:
- (f)
- Discount on purchase cost:
- (g)
- Carbon emission reduction cost:
- (h)
- Sales revenue per cycle:
3.1.2. Total Profit per Unit Time
3.2. Case II: With Advanced Payment and a Discount for Single Time Payment
3.3. Case III: Without Advanced Payment
4. Theoretical Development
4.1. Case I (with Advanced Payment and a Discount for Instalment Based Payment)
4.2. Case II: With Advanced Payment and a Discount for Single Time Payment
4.3. Case III: Without Advanced Payment
5. Analysis and Discussion
5.1. Case Study
5.2. Numerical Illustration
5.3. Sensitivity Analysis
- The market potential is positively correlated with the integrated profit. The selling price is correlated similarly, but the cycle length interacts negatively. One can detect the continuous rise in profit and selling price with growing market potential for all these three cases, and the profit becomes maximum for Case II, whereas the selling price, as well as cycle length, become minimum.
- The total profit and selling price decline for all three cases as the price elasticity parameter increases. The cycle length behaves in the opposite direction. One can observe the highest profit at the minimum value of the price elasticity parameter for a discount on a single-instalment payment (Case II).
- The total profit increases for all three cases with higher values of carbon emission reduction level (). The selling price and the cycle length show the same characteristics. The total profit is comparatively much lower in Case I as the instalment policy creates an extra cost. The profit is best in Case II, since the discount in purchasing cost influences higher profit gaining.
- For all three cases, the ordering cost , as well as the holding cost , have a direct impact on total profit. The higher values of those two costs create a lower profit and vice versa. The increasing ordering charge or holding charge means a decline in profit. It is easy to observe the significant consequence of this fact for all three cases. A similar type of effect has been noted for fluctuations of the per-unit purchase cost .
- The larger the number of trips the lesser the profit becomes since an extra trip means it needs an additional fixed cost, variable cost, fuel, labor, etc. Therefore, the profit becomes lower for the intensifications of trips. The travel distance , fuel cost , fuel consumption per ton of payload (), and product weight () have similar impacts on profit as those can add additional expenses. Any longer distance brings additional cost in the expenses, so reduction of distance can optimize the profit, which is numerically true, as shown in the sensitivity table.
- The implications of carbon emission cost on transportation cost have important roles in profit gaining. Increasing values of carbon emission cost per unit distance () and carbon emission cost per unit item per unit distance () force the total profit to be less in all three cases.
5.4. Managerial Implications
- (i)
- From the three observed cases, the lowest selling price is obtained when the payment in advance is performed in a single payment. Further study also confirms that profit is higher for a smaller number of instalments; hence, managers can optimize the number of installments in this direction considering their financial condition.
- (ii)
- The case with a single payment also results in a lower selling price. It is beneficial for customers and increases the demand level.
- (iii)
- One can take important pricing decisions from the study and maintain a healthy profit margin by incorporating these strategies and simultaneously observing the nature of the customers.
- (iv)
- This study provides some insights into how preferences for low carbon can influence the sales of the retailer and in which way a manager can maintain an eco-friendly inventory. This study shows that the total profit increases with higher values of carbon emission reduction level and higher preferences for low carbon among customers.
6. Conclusions
- (i)
- The optimal replenishment rate clinging to the commencement of payment in advance has been successfully integrated and offers some significant results.
- (ii)
- Simultaneous integration of discount policy, payment in advance to the selling price, and reduction of carbon-emission-dependent demand work efficiently. It provides some techniques for the retailer to manage inventories profitably.
- (iii)
- A smaller number of instalments of the payment in advance increase the profit. This study shows that the case with a single payment results in a higher total profit and a lower selling price.
- (iv)
- With the increasing customers’ preferences for environmentally friendly products, retailers should increase the effort for reducing emission levels.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Notations | Units | Description |
---|---|---|
units | Demand function | |
$/trip | Fixed cost of transportation | |
unit | Number of trips | |
$/km | Carbon emission cost per unit distance | |
$/unit/km | Carbon emission cost per unit item per unit distance | |
liter/ton | Fuel consumption per ton of payload | |
liter | Empty vehicle fuel consumption | |
$/unit | Holding cost per unit | |
km | One way distance | |
unit | Number of instalments | |
kg | Product weight | |
$/liter | Price of fuel | |
$ | Carbon emission reduction investment | |
constant | Payment in advance portion of purchase cost | |
$/cycle | Ordering cost per cycle | |
months | Lead time | |
constant | Interest rate due to instalment based payment in advance | |
constant | Interest rate on loan amount | |
units | Order quantity | |
$/unit | Purchase cost per unit | |
Decision Variables | ||
$/unit | Selling price | |
months | Replenishment time. |
Parameter (Base) | Change in % | Changed Value | Case I | Case II | Case III | ||||||
---|---|---|---|---|---|---|---|---|---|---|---|
(200) | 20% | 240.000 | 307.119 | 5.822 | 5033.220 | 288.058 | 5.311 | 7382.136 | 290.771 | 5.376 | 7020.964 |
10% | 220.000 | 290.755 | 6.428 | 3311.817 | 271.614 | 5.756 | 5278.759 | 274.336 | 5.839 | 4971.943 | |
−10% | 180.000 | 258.518 | 8.618 | 893.981 | 238.977 | 7.150 | 2089.039 | 241.740 | 7.313 | 1891.779 | |
−20% | 160.000 | 243.186 | 11.289 | 209.085 | 222.937 | 8.402 | 1007.654 | 225.755 | 8.676 | 866.120 | |
(0.60) | 20% | 0.720 | 247.554 | 9.192 | 510.321 | 227.756 | 7.208 | 1636.208 | 230.539 | 7.411 | 1443.080 |
10% | 0.660 | 259.677 | 8.058 | 1090.069 | 240.206 | 6.729 | 2446.337 | 242.962 | 6.878 | 2223.500 | |
−10% | 0.540 | 292.835 | 6.698 | 3116.149 | 273.686 | 6.012 | 4923.224 | 276.409 | 6.097 | 4641.829 | |
−20% | 0.480 | 315.870 | 6.240 | 4772.288 | 296.810 | 5.732 | 6801.839 | 299.523 | 5.797 | 6491.457 | |
(2) | 20% | 2.400 | 274.676 | 7.269 | 1943.027 | 255.402 | 6.332 | 3529.771 | 258.138 | 6.443 | 3276.993 |
10% | 2.200 | 274.595 | 7.274 | 1936.966 | 255.320 | 6.336 | 3521.782 | 258.057 | 6.447 | 3269.278 | |
−10% | 1.800 | 274.434 | 7.284 | 1924.869 | 255.157 | 6.342 | 3505.830 | 257.894 | 6.454 | 3253.873 | |
−20% | 1.600 | 274.353 | 7.290 | 1918.833 | 255.075 | 6.346 | 3497.867 | 257.812 | 6.458 | 3246.183 | |
(0.50) | 20% | 0.600 | 274.729 | 7.375 | 1935.516 | 255.447 | 6.424 | 3521.148 | 258.185 | 6.537 | 3268.518 |
10% | 0.550 | 274.621 | 7.325 | 1933.370 | 255.342 | 6.380 | 3517.653 | 258.079 | 6.492 | 3265.220 | |
−10% | 0.450 | 274.411 | 7.238 | 1928.139 | 255.137 | 6.302 | 3509.587 | 257.873 | 6.413 | 3257.564 | |
−20% | 0.400 | 274.309 | 7.201 | 1925.044 | 255.037 | 6.270 | 3505.001 | 257.773 | 6.380 | 3253.193 | |
(500) | 20% | 600.000 | 600.000 | 7.328 | 1927.490 | 255.259 | 6.381 | 3509.871 | 257.997 | 6.493 | 3257.708 |
10% | 550.000 | 550.000 | 7.304 | 1929.198 | 255.249 | 6.360 | 3511.833 | 257.986 | 6.472 | 3259.636 | |
−10% | 450.000 | 450.000 | 7.255 | 1932.633 | 255.228 | 6.318 | 3515.777 | 257.965 | 6.429 | 3263.512 | |
−20% | 400.000 | 400.000 | 7.230 | 1934.359 | 255.217 | 6.297 | 3517.759 | 257.954 | 6.408 | 3265.459 | |
(1000) | 20% | 1200.000 | 274.705 | 7.661 | 1904.138 | 255.402 | 6.667 | 3483.047 | 258.143 | 6.785 | 3231.349 |
10% | 1100.000 | 274.611 | 7.472 | 1917.355 | 255.321 | 6.505 | 3498.230 | 258.060 | 6.620 | 3246.269 | |
−10% | 900.000 | 274.416 | 7.082 | 1944.839 | 255.153 | 6.169 | 3529.792 | 257.889 | 6.277 | 3277.285 | |
−20% | 800.000 | 274.314 | 6.879 | 1959.165 | 255.066 | 5.994 | 3546.236 | 257.799 | 6.099 | 3293.445 | |
(2) | 20% | 2.400 | 274.874 | 6.665 | 1880.559 | 255.547 | 5.798 | 3455.949 | 258.290 | 5.901 | 3204.722 |
10% | 2.200 | 274.698 | 6.951 | 1905.144 | 255.396 | 6.050 | 3484.203 | 258.136 | 6.157 | 3232.485 | |
−10% | 1.800 | 274.322 | 7.661 | 1958.047 | 255.072 | 6.675 | 3544.953 | 257.806 | 6.792 | 3292.184 | |
−20% | 1.600 | 274.120 | 8.112 | 1986.783 | 254.898 | 7.072 | 3577.924 | 257.628 | 7.196 | 3324.587 | |
(150) | 20% | 180.000 | 293.494 | 8.787 | 814.828 | 270.045 | 7.024 | 2257.755 | 273.355 | 7.211 | 2013.351 |
10% | 165.000 | 283.949 | 7.923 | 1321.012 | 262.628 | 6.655 | 2853.657 | 265.649 | 6.798 | 2602.859 | |
−10% | 135.000 | 265.149 | 6.774 | 2643.576 | 247.869 | 6.065 | 4237.982 | 250.326 | 6.152 | 3989.230 | |
−20% | 120.000 | 255.831 | 6.363 | 3458.375 | 240.517 | 5.824 | 5026.037 | 242.696 | 5.893 | 4785.642 | |
(200) | 20% | 240.000 | 274.630 | 7.510 | 1914.685 | 255.338 | 6.538 | 3495.164 | 258.077 | 6.653 | 3243.255 |
10% | 220.000 | 274.573 | 7.396 | 1922.735 | 255.288 | 6.439 | 3504.411 | 258.026 | 6.553 | 3252.342 | |
−10% | 180.000 | 274.456 | 7.161 | 1939.223 | 255.187 | 6.237 | 3523.344 | 257.924 | 6.347 | 3270.948 | |
−20% | 160.000 | 274.396 | 7.042 | 1947.672 | 255.136 | 6.134 | 3533.044 | 257.871 | 6.242 | 3280.480 | |
(6) | 20% | 10.000 | 276.047 | 10.344 | 1719.361 | 256.552 | 8.967 | 3270.326 | 259.315 | 9.130 | 3022.364 |
10% | 8.000 | 275.654 | 9.558 | 1772.825 | 256.217 | 8.296 | 3331.964 | 258.972 | 8.445 | 3082.910 | |
−10% | 4.000 | 274.766 | 7.783 | 1895.591 | 255.455 | 6.772 | 3473.225 | 258.196 | 6.892 | 3221.698 | |
−20% | 2.000 | 274.246 | 6.742 | 1968.856 | 255.007 | 5.876 | 3557.357 | 257.739 | 5.979 | 3304.374 | |
(100) | 20% | 120.000 | 277.083 | 7.515 | 1751.504 | 257.773 | 6.508 | 3276.862 | 260.513 | 6.627 | 3032.791 |
10% | 110.000 | 275.798 | 7.396 | 1840.244 | 256.505 | 6.423 | 3394.380 | 259.244 | 6.538 | 3146.228 | |
−10% | 90.000 | 273.233 | 7.166 | 2023.510 | 253.972 | 6.257 | 3635.126 | 256.708 | 6.365 | 3378.819 | |
−20% | 80.000 | 271.953 | 7.056 | 2118.033 | 252.707 | 6.176 | 3758.353 | 255.441 | 6.281 | 3497.972 | |
(1) | 20% | 1.200 | 274.550 | 7.349 | 1925.991 | 255.268 | 6.399 | 3508.150 | 258.006 | 6.512 | 3256.016 |
10% | 1.100 | 274.532 | 7.314 | 1928.446 | 255.253 | 6.369 | 3510.969 | 257.991 | 6.481 | 3258.787 | |
−10% | 0.900 | 274.497 | 7.244 | 1933.392 | 255.223 | 6.309 | 3516.648 | 257.960 | 6.420 | 3264.368 | |
−20% | 0.800 | 274.479 | 7.209 | 1935.882 | 255.208 | 6.278 | 3519.508 | 257.944 | 6.389 | 3267.179 | |
(0.30) | 20% | 0.360 | 276.872 | 7.495 | 1765.910 | 257.565 | 6.493 | 3295.975 | 260.306 | 6.611 | 3051.237 |
10% | 0.330 | 275.693 | 7.386 | 1847.598 | 256.401 | 6.415 | 3404.086 | 259.140 | 6.530 | 3155.600 | |
−10% | 0.270 | 273.338 | 7.176 | 2015.853 | 254.076 | 6.264 | 3625.122 | 256.811 | 6.372 | 3369.148 | |
−20% | 0.240 | 272.162 | 7.075 | 2102.417 | 252.914 | 6.190 | 3738.045 | 255.648 | 6.296 | 3478.330 | |
(1.50) | 20% | 1.800 | 276.837 | 7.423 | 1770.736 | 257.535 | 6.432 | 3301.545 | 260.275 | 6.549 | 3056.708 |
10% | 1.650 | 275.675 | 7.350 | 1850.041 | 256.386 | 6.385 | 3406.898 | 259.125 | 6.499 | 3158.363 | |
−10% | 1.350 | 273.355 | 7.211 | 2013.351 | 254.091 | 6.294 | 3622.255 | 256.827 | 6.403 | 3366.330 | |
−20% | 1.200 | 272.197 | 7.144 | 2097.353 | 252.944 | 6.250 | 3732.257 | 255.678 | 6.356 | 3472.639 | |
(0.50) | 20% | 0.600 | 276.837 | 7.423 | 1770.736 | 257.535 | 6.432 | 3301.545 | 260.275 | 6.549 | 3056.708 |
10% | 0.550 | 275.675 | 7.350 | 1850.041 | 256.386 | 6.385 | 3406.898 | 259.125 | 6.499 | 3158.363 | |
−10% | 0.450 | 273.355 | 7.211 | 2013.351 | 254.091 | 6.294 | 3622.255 | 256.827 | 6.403 | 3366.330 | |
−20% | 0.400 | 272.197 | 7.144 | 2097.353 | 252.944 | 6.250 | 3732.257 | 255.678 | 6.356 | 3472.639 | |
(0.03) | 20% | 0.036 | 274.518 | 7.286 | 1930.418 | 255.241 | 6.345 | 3513.234 | 257.978 | 6.457 | 3261.013 |
10% | 0.033 | 274.516 | 7.283 | 1930.666 | 255.240 | 6.342 | 3513.518 | 257.977 | 6.454 | 3261.292 | |
−10% | 0.027 | 274.513 | 7.276 | 1931.160 | 255.237 | 6.336 | 3514.086 | 257.974 | 6.447 | 3261.850 | |
−20% | 0.024 | 274.511 | 7.272 | 1931.408 | 255.235 | 6.333 | 3514.370 | 257.972 | 6.444 | 3262.129 | |
(0.02) | 20% | 0.024 | 274.721 | 7.292 | 1916.421 | 255.442 | 6.347 | 3494.684 | 258.180 | 6.459 | 3243.109 |
10% | 0.022 | 274.618 | 7.286 | 1923.661 | 255.340 | 6.343 | 3504.237 | 258.077 | 6.455 | 3252.334 | |
−10% | 0.018 | 274.412 | 7.273 | 1938.177 | 255.136 | 6.335 | 3523.379 | 257.873 | 6.446 | 3270.820 | |
−20% | 0.016 | 274.308 | 7.267 | 1945.454 | 255.034 | 6.331 | 3532.969 | 257.771 | 6.442 | 3280.081 |
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Sultana, S.; Mashud, A.H.M.; Daryanto, Y.; Miah, S.; Alrasheedi, A.; Hezam, I.M. The Role of the Discount Policy of Prepayment on Environmentally Friendly Inventory Management. Fractal Fract. 2022, 6, 26. https://doi.org/10.3390/fractalfract6010026
Sultana S, Mashud AHM, Daryanto Y, Miah S, Alrasheedi A, Hezam IM. The Role of the Discount Policy of Prepayment on Environmentally Friendly Inventory Management. Fractal and Fractional. 2022; 6(1):26. https://doi.org/10.3390/fractalfract6010026
Chicago/Turabian StyleSultana, Shirin, Abu Hashan Md Mashud, Yosef Daryanto, Sujan Miah, Adel Alrasheedi, and Ibrahim M. Hezam. 2022. "The Role of the Discount Policy of Prepayment on Environmentally Friendly Inventory Management" Fractal and Fractional 6, no. 1: 26. https://doi.org/10.3390/fractalfract6010026
APA StyleSultana, S., Mashud, A. H. M., Daryanto, Y., Miah, S., Alrasheedi, A., & Hezam, I. M. (2022). The Role of the Discount Policy of Prepayment on Environmentally Friendly Inventory Management. Fractal and Fractional, 6(1), 26. https://doi.org/10.3390/fractalfract6010026