An Integrated Model for the Harvest, Storage, and Distribution of Perishable Crops
Abstract
:1. Introduction
- we propose an optimization model to support in an integrated way an agricultural company in the harvesting, storage, and distribution decisions. The model can be used at the tactical level to define the most profitable configuration of the main operating parameters;
- we propose an optimization model to support horizontal collaboration, in terms of distribution activities, between two or more heterogeneous agri-companies, which share part of their customers. The model can increase profit;
- we propose a heuristic framework which can deal with the two proposed optimization models and invite day-by-day to collaboration, only when profitable for the suppliers.
2. Literature Review
3. Problem Description and Model Formulation
3.1. Single-Supplier Model
3.2. Model for Horizontal Collaboration between Suppliers
4. Case Study
4.1. Instances
4.2. Computational Experiments and Managerial Insights—Tactical Level
4.2.1. Single-Supplier Model
4.2.2. Collaboration between Suppliers
4.3. Computational Experiments and Managerial Insights—Operational Level
- harvesting decisions: if and how much to harvest;
- inventory decisions: amount of product of each age to store;
- shipping decisions: amount of product of each age to ship to the main customer and spot customers;
- routing decisions: routes to reach the different DCs.
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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harvesting/distribution time horizon, with ; | |
set of weeks of the harvesting/distribution time horizon, with ; | |
set of days of week w; | |
set of DCs of the main customer, with ; | |
set of nodes, including the company 0, with ; | |
set of arcs, with ; | |
set of vehicles, with ; | |
L | load capacity of each vehicle; |
kilometric distance between node i and node j, ; | |
time distance in minutes between node i and node j, ; | |
fuel price per kilometer; | |
wage rate for the drivers per minute; | |
amount of ripe product at week w; | |
unit selling price of product of age s at period t to the main customer; | |
unit revenue of product of age s at period t to the main customer; | |
demand of product at period t by DC j; | |
unit storage cost at period t; | |
maximum storage time; | |
fraction of demand of the main customer to be satisfied at each period (i.e., service level); | |
, | sufficiently high constants; |
unit selling price of product of age s at period t to the spot customer; | |
demand of product at period t by spot customers; | |
storage capacity; | |
daily shipping time limit referring to the DCs of the main customer (i.e., service level); | |
unit reward related to the quality of service offered to the main customers; | |
unit production cost; | |
fixed daily harvesting cost (i.e., rental of specialized equipment); | |
number of harvesting days per week. |
amount of product harvested at period t; | |
binary variable equal to 1 if harvesting is made at period t; | |
amount of product of age s shipped to DC j by vehicle k at period t; | |
inventory level of product of age s at the end of period t; | |
binary variable equal to 1 if vehicle k travels arc at period t; | |
time to serve DC j at period t; | |
amount of product of age s sold at period t to spot customers. |
set of companies, with | |
set of DCs to be served, with | |
set of nodes, including the hub 0, with ; | |
set of arcs, with ; | |
subset of DCs to be served by company c; | |
set of vehicles, with ; | |
kilometric distance between node i and node j, ; | |
time distance in minutes between node i and node j, ; | |
fixed fuel cost for the depot-to-hub round trip by spoke-supplier c; | |
fixed driver cost for the depot-to-hub round trip by spoke-supplier c; | |
amount of product to be shipped by company c to DC at period t; | |
number of vehicles to be used for the depot-to-hub round trip by spoke-supplier c at period t. |
K | h | |||||||||
---|---|---|---|---|---|---|---|---|---|---|
[unit] | [Day] | [kg] | [EUR/kg] | [EUR/Day] | [EUR/Kilometer] | [EUR/Minute] | [Hour] | [EUR/Kg] | ||
2 | 4 | 30,000 | 0.10 | 800 | 0.30 | 0.15 | 0.85 | - | 0.03 | |
1 | 4 | 10,000 | 0.15 | 500 | 0.30 | 0.15 | - | 10 | 0.10 |
0 | 392 | 433 | 55 | 277 | 619 | |
392 | 0 | 152 | 367 | 696 | 236 | |
433 | 152 | 0 | 405 | 583 | 337 | |
55 | 367 | 405 | 0 | 362 | 592 | |
277 | 696 | 583 | 362 | 0 | 851 | |
619 | 236 | 337 | 592 | 851 | 0 |
0 | 235 | 276 | 51 | 188 | 360 | |
235 | 0 | 113 | 222 | 406 | 152 | |
276 | 113 | 0 | 245 | 343 | 215 | |
51 | 222 | 245 | 0 | 226 | 344 | |
188 | 406 | 343 | 226 | 0 | 480 | |
360 | 152 | 215 | 344 | 480 | 0 |
0 | 512 | 739 | 604 | 691 | |
512 | 0 | 236 | 103 | 272 | |
739 | 236 | 0 | 145 | 161 | |
604 | 103 | 145 | 0 | 182 | |
691 | 272 | 161 | 182 | 0 |
0 | 295 | 432 | 369 | 422 | |
295 | 0 | 144 | 73 | 171 | |
432 | 144 | 0 | 98 | 113 | |
369 | 73 | 98 | 0 | 124 | |
422 | 171 | 113 | 124 | 0 |
KPI | ||||||
---|---|---|---|---|---|---|
2 | 3 | 4 | 5 | 6 | 7 | |
Revenue Main [EUR] | 119,336.37 | 123,304.78 | 124,484.04 | 125,568.56 | 125,946.92 | 125,724.96 |
Reward Main [EUR] | 3282.25 | 3287.55 | 3274.44 | 3277.89 | 3270.17 | 3252.99 |
Revenue Spot [EUR] | 11,920.63 | 12,287.85 | 13,014.80 | 12,961.07 | 13,369.76 | 14,153.24 |
Inventory Cost [EUR] | 13,585.96 | 7049.99 | 4152.71 | 2550.25 | 1360.49 | 678.69 |
Fuel Cost [EUR] | 22,897.35 | 22,894.17 | 22,894.26 | 22,894.17 | 22,894.26 | 22,894.17 |
Driver Cost [EUR] | 7172.04 | 7170.87 | 7171.14 | 7170.87 | 7171.14 | 7170.87 |
Production Cost [EUR] | 36,341.34 | 36,341.34 | 36,341.34 | 36,341.34 | 36,341.34 | 36,341.34 |
Havesting Cost [EUR] | 9600.00 | 14,400.00 | 19,200.00 | 24,000.00 | 28,800.00 | 33,600.00 |
Number of trips [unit] | 75.10 | 75.10 | 75.10 | 75.10 | 75.10 | 75.10 |
Average product age [day] | 2.18 | 1.62 | 1.37 | 1.22 | 1.10 | 1.02 |
Profit [EUR] | 44,942.56 | 51,023.81 | 51,013.84 | 48,850.89 | 46,019.62 | 42,446.12 |
KPI | ||||||
---|---|---|---|---|---|---|
2 | 3 | 4 | 5 | 6 | 7 | |
Revenue Main [EUR] | 119,280.69 | 123,288.01 | 124,382.05 | 125,457.42 | 125,893.95 | 125,725.60 |
Reward Main [EUR] | 1640.31 | 1643.21 | 1635.84 | 1637.65 | 1634.26 | 1626.49 |
Revenue Spot [EUR] | 11,976.92 | 12,331.40 | 13,127.04 | 13,072.11 | 13,436.19 | 14,153.24 |
Inventory Cost [EUR] | 13,594.38 | 7093.31 | 4171.01 | 2556.52 | 1380.45 | 680.04 |
Fuel Cost [EUR] | 20,513.85 | 20,507.28 | 20,517.18 | 20,507.22 | 20,509.71 | 20,509.71 |
Driver Cost [EUR] | 6520.79 | 6517.62 | 6521.78 | 6517.58 | 6518.81 | 6518.81 |
Production Cost [EUR] | 36,341.34 | 36,341.34 | 36,341.34 | 36,341.34 | 36,341.34 | 36,341.34 |
Harvesting Cost [EUR] | 9600.00 | 14,400.00 | 19,200.00 | 24,000.00 | 28,800.00 | 33,600.00 |
Number of trips [unit] | 72.00 | 71.80 | 72.00 | 71.80 | 71.90 | 71.90 |
Average product age [day] | 2.19 | 1.62 | 1.37 | 1.22 | 1.10 | 1.02 |
Profit [EUR] | 46,327.57 | 52,403.08 | 52,393.63 | 50,244.52 | 47,414.10 | 43,855.43 |
KPI | ||||||
---|---|---|---|---|---|---|
2 | 3 | 4 | 5 | 6 | 7 | |
Revenue Main [EUR] | 119,277.87 | 123,239.61 | 124,400.55 | 125,402.91 | 125,905.51 | 125,729.52 |
Reward Main [EUR] | 0.00 | 0.00 | 0.00 | 0.00 | 0.00 | 0.00 |
Revenue Spot [EUR] | 11,979.01 | 12,351.49 | 13,098.85 | 13,136.66 | 13,412.93 | 14,153.24 |
Inventory Cost [EUR] | 13,587.89 | 7056.84 | 4159.49 | 2561.87 | 1363.99 | 686.19 |
Fuel Cost [EUR] | 20,210.28 | 20,194.41 | 20,196.75 | 20,194.35 | 20,196.30 | 20,195.55 |
Driver Cost [EUR] | 6429.46 | 6425.54 | 6425.69 | 6424.73 | 6426.14 | 6425.03 |
Production Cost [EUR] | 36,341.34 | 36,341.34 | 36,341.34 | 36,341.34 | 36,341.34 | 36,341.34 |
Harvesting Cost [EUR] | 9600.00 | 14,400.00 | 19,200.00 | 24,000.00 | 28,800.00 | 33,600.00 |
Number of trips [unit] | 68.50 | 68.40 | 68.40 | 68.30 | 68.40 | 68.30 |
Average product age [day] | 2.19 | 1.62 | 1.37 | 1.22 | 1.10 | 1.02 |
Profit [EUR] | 45,087.91 | 51,172.98 | 51,176.14 | 49,017.28 | 46,190.68 | 42,634.65 |
KPI | ||||||
---|---|---|---|---|---|---|
2 | 3 | 4 | 5 | 6 | 7 | |
Revenue Main [EUR] | 78,878.70 | 79,015.54 | 79,048.03 | 78,371.14 | 76,767.99 | 76,219.58 |
Reward Main [EUR] | 0.00 | 0.00 | 0.00 | 0.00 | 0.00 | 0.00 |
Revenue Spot [EUR] | 14,363.05 | 15,320.20 | 15,604.37 | 16,385.33 | 17,908.06 | 18,301.31 |
Inventory Cost [EUR] | 11,245.55 | 6088.99 | 3883.02 | 2462.91 | 1329.36 | 798.99 |
Fuel Cost [EUR] | 19,081.74 | 19,081.74 | 19,081.74 | 19,081.74 | 19,081.74 | 19,081.74 |
Driver Cost [EUR] | 5835.63 | 5835.63 | 5835.63 | 5835.63 | 5835.63 | 5835.63 |
Production Cost [EUR] | 10,193.62 | 10,193.62 | 10,193.62 | 10,193.62 | 10,193.62 | 10,193.62 |
Harvesting Cost [EUR] | 7200.00 | 10,800.00 | 14,400.00 | 18,000.00 | 21,600.00 | 25,200.00 |
Number of trips [unit] | 41.70 | 41.70 | 41.70 | 41.70 | 41.70 | 41.70 |
Average product age [day] | 2.02 | 1.56 | 1.35 | 1.23 | 1.13 | 1.08 |
Profit [EUR] | 39,685.21 | 42,335.75 | 41,258.39 | 39,182.57 | 36,635.70 | 33,410.91 |
KPI | ||||||
---|---|---|---|---|---|---|
2 | 3 | 4 | 5 | 6 | 7 | |
Revenue Main [EUR] | 81,140.74 | 81,611.02 | 81,650.38 | 80,820.37 | 79,846.40 | 79,279.38 |
Reward Main [EUR] | 1368.48 | 1361.19 | 1353.85 | 1338.96 | 1325.22 | 1315.94 |
Revenue Spot [EUR] | 11,439.08 | 12,254.63 | 12,570.39 | 13,562.64 | 14,414.08 | 14,699.79 |
Inventory Cost [EUR] | 11,624.28 | 6360.80 | 4048.40 | 2588.84 | 1385.03 | 719.20 |
Fuel Cost [EUR] | 19,081.74 | 19,081.74 | 19,081.74 | 19,081.74 | 19,084.14 | 19,081.74 |
Driver Cost [EUR] | 5835.63 | 5835.63 | 5835.63 | 5835.63 | 5836.43 | 5835.63 |
Production Cost [EUR] | 10,193.62 | 10,193.62 | 10,193.62 | 10,193.62 | 10,193.62 | 10,193.62 |
Harvesting Cost [EUR] | 7200.00 | 10,800.00 | 14,400.00 | 18,000.00 | 21,600.00 | 25,200.00 |
Number of trips [unit] | 41.70 | 41.70 | 41.70 | 41.70 | 41.70 | 41.70 |
Average product age [day] | 2.05 | 1.57 | 1.36 | 1.23 | 1.13 | 1.08 |
Profit [EUR] | 40,013.02 | 42,955.04 | 42,015.23 | 40,022.14 | 37,486.49 | 34,264.93 |
Scenario | [EUR/Day] |
---|---|
— has less bargaining power than | 100.00 |
— has greater bargaining power than | 500.00 |
— and have the same bargaining power | 310.00 |
Profit [EUR] | Profit Increase [%] | ||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|
Autonomy | Collaboration— | Collaboration— | Collaboration— | ||||||||
Total | Total | Total | |||||||||
I1 | 7142.65 | 7414.50 | 1.04 | 8.19 | 4.68 | 16.25 | 0.86 | 8.41 | 13.03 | 15.04 | 14.06 |
I2 | 5332.24 | 1314.29 | 3.45 | 100.69 | 22.68 | 12.57 | 3.77 | 10.83 | 25.05 | 78.00 | 35.52 |
I3 | 9363.34 | 3591.73 | 1.65 | 55.66 | 16.62 | 13.46 | 1.58 | 10.17 | 16.14 | 35.70 | 21.56 |
I4 | 9589.83 | 4583.81 | 0.78 | 27.52 | 9.43 | 18.45 | 2.49 | 13.29 | 11.09 | 25.74 | 15.83 |
I5 | 10,656.61 | 7734.92 | 1.13 | 19.41 | 8.82 | 2.80 | 0.34 | 1.76 | 12.13 | 15.09 | 13.38 |
I6 | 6679.89 | 1981.08 | 1.00 | 37.98 | 9.46 | 9.36 | 2.27 | 7.74 | 13.48 | 52.40 | 22.38 |
I7 | 12,762.68 | 577.99 | 0.73 | 203.52 | 9.51 | 6.72 | 8.57 | 6.80 | 10.36 | 217.77 | 19.35 |
I8 | 4235.38 | 4508.95 | 5.08 | 64.68 | 35.82 | 61.68 | 3.11 | 31.48 | 39.79 | 32.08 | 35.82 |
I9 | 15,232.41 | 3969.68 | 0.57 | 36.00 | 7.89 | 9.50 | 2.00 | 7.95 | 9.16 | 30.82 | 13.64 |
I10 | 10,251.36 | 4542.15 | 0.67 | 17.45 | 5.82 | 7.97 | 1.67 | 6.03 | 8.01 | 23.91 | 12.89 |
Avg | 9124.64 | 4021.91 | 1.25 | 34.21 | 11.33 | 12.62 | 1.74 | 9.29 | 13.43 | 29.40 | 18.32 |
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Giallombardo, G.; Mirabelli, G.; Solina, V. An Integrated Model for the Harvest, Storage, and Distribution of Perishable Crops. Appl. Sci. 2021, 11, 6855. https://doi.org/10.3390/app11156855
Giallombardo G, Mirabelli G, Solina V. An Integrated Model for the Harvest, Storage, and Distribution of Perishable Crops. Applied Sciences. 2021; 11(15):6855. https://doi.org/10.3390/app11156855
Chicago/Turabian StyleGiallombardo, Giovanni, Giovanni Mirabelli, and Vittorio Solina. 2021. "An Integrated Model for the Harvest, Storage, and Distribution of Perishable Crops" Applied Sciences 11, no. 15: 6855. https://doi.org/10.3390/app11156855
APA StyleGiallombardo, G., Mirabelli, G., & Solina, V. (2021). An Integrated Model for the Harvest, Storage, and Distribution of Perishable Crops. Applied Sciences, 11(15), 6855. https://doi.org/10.3390/app11156855