Production Planning Problem of a Two-Level Supply Chain with Production-Time-Dependent Products
Abstract
:Featured Application
Abstract
1. Introduction
- whether each supplier should be opened and operated in each period;
- the total production quantities of the semi-finished product among candidate levels;
- production quantities of each type of semi-finished product at the operated suppliers in each period.
2. Problem Description
- The supply chain consists of multiple suppliers and a manufacturing plant;
- Locations of the manufacturing plant and the (candidate) suppliers are pre-determined and given;
- The suppliers produce several types of semi-finished products, and different semi-finished products may be produced at the same production line of a supplier. Note that we need to decide suppliers, product lines, and product types to produce, respectively;
- If two or more types of semi-finished products are to be produced at the same supplier, they should be started simultaneously;
- In a supplier, a new batch cannot be started while a batch is being produced;
- A setup operation is needed (for cleaning and maintenance of a production line) at each supplier before each production run of a batch;
- The capacity levels of production lines of each supplier and setup cost for each level are known and fixed;
- Capacity of each supplier is equal to the sum of capacity levels of production lines in the supplier;
- The demand for each product type in each period may vary by period and is known in advance;
- There is no shortage of raw material for the semi-finished products;
- There is no defective in the production process at the suppliers. Hence, the input and the output quantities at a supplier are the same;
- All suppliers are ready to start production at the beginning (starting) of the planning horizon. In addition, there is no need for a setup operation for the first batch of the planning horizon;
- The transportation time is negligibly short (compared to a period);
- Only one production line can be selected and operated for a supplier at each operating period;
- Production quantity of operated production line in a supplier to be operated in each period is equal to the capacity of the operated production line.
2.1. Indices and Parameters
- i
- index for suppliers (i = 1,…, I)
- l
- index for semi-finished product types (l = 1,…, L)
- t
- index for time periods (t = 1,…,T)
- j
- index for production lines (j = 1,…,J)
- production time (in the number of time periods) of semi-finished product type l at the suppliers
- setup cost for each batch at supplier i with production line j
- capacity of production line j at supplier i
- demand quantity (at the manufacturing plant) of semi-finished product type l in period t
- production cost per one unit of semi-finished product type l at supplier i
- transportation cost per one unit of semi-finished product type l from supplier i to the manufacturing plant
- M
- a very large (positive) number
2.2. Decision Variables
- production quantity of semi-finished product type l, the quantity that is being processed, at production line j in supplier i on period t
- = 1 if production line j of supplier i starts processing semi-finished product l in period t, and 0 otherwise
- = 1 if production line j of supplier i starts producing semi-finished products in period t, and 0 otherwise
3. Heuristic Algorithm
- i
- for suppliers (i = 1,…, I)
- l
- index for semi-finished product
- total demand quantity of demand group t, i.e., the sum of demand quantities of semi-finished products for which the production should be started in period t to meet their demand
- average of production costs of semi-finished product types produced at supplier i,
- average of transportation costs of semi-finished product types produced at supplier i,
- set of suppliers that are available (to start production) in period t, those have been set up at the beginning of period t for production of semi-finished products
- set of suppliers that are to start production in period t
- Zijt
- = 1 if i∈, i.e., if supplier i with production line j is selected to start production in period t, and 0 otherwise
- Step 0
- Set = {1, 2, …, I}, = ∅, t=1, and TC* = ∞. Compute for t = 1,…, T, and Vij for i = 1,…, I and j = 1,…, J. Let t = 1.
- Step 1
- If there are suppliers with , select a supplier with the smallest value of among them; otherwise, select a supplier and its production line with the smallest among suppliers in . Update and , and let .
- Step 2
- If , go to Step 1. Otherwise (), if t = T, go to Step 3; otherwise, let t←t + 1 and go to Step 1.
- Step 3
- Solve the linear program, [LP], defined by the solution of Step 1 (with a commercial LP solver), and stop.
4. Computational Experiments
- Demand was generated from U(500, 800) for all types of product at each period;
- The capacities of the three production lines at a supplier were generated from U(100, 200), U(200, 300), and U(300, 400), and setup costs for these production lines were generated from U(500, 1000), U(1000, 1500), and U(1500, 2000), respectively;
- The production cost of each type of semi-finished products of a supplier were generated from U(10, 15), U(20, 25), and U(30, 35). The transportation costs between a supplier and the manufacturing plants were generated from U(5, 10), U(10, 15), and U(15, 20) for semi-finished product types 1, 2, and 3, respectively.
5. Discussion and Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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I | Instances | Solutions | CPU Time (s) | |||
---|---|---|---|---|---|---|
CPLEX | Heuristic | PE (%) † | CPLEX | Heuristic | ||
10 | 1 | 61,241 | 64,138 | 4.52 | 8.72 | 0.01 |
2 | 65,763 | 66,826 | 1.59 | 10.50 | 0.01 | |
3 | 63,785 | 65,348 | 2.39 | 9.88 | 0.01 | |
4 | 66,140 | 69,102 | 4.29 | 10.51 | 0.01 | |
5 | 67,249 | 67,336 | 0.13 | 10.15 | 0.01 | |
6 | 62,521 | 64,422 | 2.95 | 9.59 | 0.01 | |
7 | 67,159 | 68,917 | 2.55 | 10.20 | 0.01 | |
8 | 64,842 | 67,876 | 4.47 | 4.13 | 0.01 | |
9 | 64,898 | 67,874 | 4.38 | 9.54 | 0.01 | |
10 | 62,286 | 63,045 | 1.20 | 10.17 | 0.01 | |
average | 2.86 | 9.34 | 0.01 | |||
12 | 11 | 66,482 | 69,100 | 3.79 | 10.33 | 0.01 |
12 | 66,419 | 68,445 | 2.96 | 9.68 | <0.01 | |
13 | 67,534 | 69,359 | 2.63 | 17.05 | 0.01 | |
14 | 69,480 | 70,481 | 1.42 | 11.13 | <0.01 | |
15 | 66,838 | 69,198 | 3.41 | 18.30 | <0.01 | |
16 | 63,811 | 66,202 | 3.61 | 10.19 | <0.01 | |
17 | 68,788 | 71,314 | 3.54 | 10.58 | <0.01 | |
18 | 66,745 | 67,238 | 0.73 | 20.91 | <0.01 | |
19 | 69,016 | 70,455 | 2.04 | 36.71 | <0.01 | |
20 | 66,568 | 68,379 | 2.65 | 5.08 | 0.01 | |
average | 2.88 | 14.99 | <0.01 | |||
14 | 21 | 67,916 | 70,694 | 3.93 | 8.09 | 0.01 |
22 | 61,201 | 62,444 | 1.99 | 15.28 | 0.01 | |
23 | 60,641 | 63,014 | 3.77 | 16.34 | 0.02 | |
24 | 60,307 | 61,645 | 2.17 | 32.15 | 0.01 | |
25 | 64,082 | 66,033 | 2.95 | 16.37 | 0.02 | |
26 | 69,131 | 71,795 | 3.71 | 15.77 | 0.01 | |
27 | 66,336 | 67,238 | 1.34 | 16.75 | 0.01 | |
28 | 67,969 | 69,926 | 2.80 | 15.75 | 0.01 | |
29 | 68,762 | 70,799 | 2.88 | 64.61 | 0.01 | |
30 | 66,468 | 68,441 | 2.88 | 14.84 | 0.01 | |
average | 2.86 | 21.60 | 0.01 | |||
overall | 2.87 | 15.31 | 0.01 |
I | Instances | Solutions | CPU Time (s) | |||
---|---|---|---|---|---|---|
CPLEX | Heuristic | PE (%) † | CPLEX | Heuristic | ||
10 | 31 | 99,938 | 103,679 | 3.61 | 54.43 | 0.02 |
32 | 100,048 | 103,625 | 3.45 | 83.15 | 0.02 | |
33 | 98,220 | 99,221 | 1.01 | 337.07 | 0.02 | |
34 | 96,713 | 97,831 | 1.14 | 65.65 | 0.02 | |
35 | 99,205 | 103,530 | 4.18 | 82.81 | 0.02 | |
36 | 97,558 | 100,409 | 2.84 | 5.59 | 0.02 | |
37 | 92,685 | 93,386 | 0.75 | 199.40 | 0.01 | |
38 | 97,727 | 98,997 | 1.28 | 17.76 | 0.01 | |
39 | 98,465 | 98,477 | 0.01 | 48.02 | 0.01 | |
40 | 95,509 | 99,563 | 4.07 | 51.15 | 0.01 | |
average | 2.27 | 94.50 | 0.02 | |||
12 | 41 | 99,004 | 102,985 | 3.87 | 138.18 | 0.02 |
42 | 95,393 | 99,588 | 4.21 | 94.93 | 0.02 | |
43 | 95,428 | 96,940 | 1.56 | 316.49 | 0.02 | |
44 | 100,728 | 102,010 | 1.26 | 4005.74 | 0.02 | |
45 | 92,420 | 93,997 | 1.68 | 394.93 | 0.02 | |
46 | 96,613 | 98,264 | 1.68 | 895.34 | 0.02 | |
47 | 96,676 | 101,203 | 4.47 | 167.93 | 0.02 | |
48 | 92,614 | 93,242 | 0.67 | 486.23 | 0.01 | |
49 | 91,582 | 92,525 | 1.02 | 575.96 | 0.01 | |
50 | 92,176 | 94,345 | 2.30 | 525.38 | 0.02 | |
average | 2.30 | 760.11 | 0.02 | |||
14 | 51 | 115,364 | 119,444 | 3.42 | 8736.24 | 0.02 |
52 | 111,140 | 113,723 | 2.27 | >15,000 ‡ | 0.02 | |
53 | 117,477 | 118,300 | 0.70 | >15,000 ‡ | 0.02 | |
54 | 110,723 | 113,863 | 2.76 | 12,163.61 | 0.01 | |
55 | 112,605 | 117,975 | 4.55 | 4699.99 | 0.02 | |
56 | 115,180 | 116,935 | 1.50 | >15,000 ‡ | 0.01 | |
57 | 119,450 | 123,219 | 3.06 | >15,000 ‡ | 0.02 | |
58 | 123,667 | 127,613 | 3.09 | 8910.81 | 0.02 | |
59 | 114,046 | 116,018 | 1.70 | >15,000 ‡ | 0.01 | |
60 | 115,386 | 118,936 | 2.98 | >15,000 ‡ | 0.02 | |
average | 2.60 | 12,451.06 # | 0.02 | |||
overall | 2.39 | 4435.22 # | 0.02 |
I | Instances | Solutions | CPU Time (s) | |||
---|---|---|---|---|---|---|
CPLEX | Heuristic | PE (%) † | CPLEX | Heuristic | ||
10 | 61 | 169,759 | 173,114 | 1.94 | 173.61 | 0.03 |
62 | 155,805 | 158,119 | 1.46 | 9513.37 | 0.03 | |
63 | 167,030 | 169,765 | 1.61 | 12,856.51 | 0.02 | |
64 | 165,533 | 165,721 | 0.11 | >15,000 ‡ | 0.02 | |
65 | 166,244 | 170,480 | 2.48 | 11,773.90 | 0.02 | |
66 | 165,533 | 167,651 | 1.26 | >15,000 ‡ | 0.02 | |
67 | 160,947 | 167,575 | 3.96 | 3900.53 | 0.26 | |
68 | 152,001 | 153,545 | 1.01 | 433.19 | 0.03 | |
69 | 164,455 | 168,434 | 2.36 | 543.02 | 0.02 | |
70 | 164,631 | 168,660 | 2.39 | 4205.11 | 0.02 | |
average | 1.49 | 10,719.57 | 0.03 | |||
12 | 71 | 167,634 | 169,971 | 1.37 | 10,465.67 | 0.02 |
72 | 171,343 | 175,637 | 2.44 | >15,000 ‡ | 0.02 | |
73 | 156,004 | 161,773 | 3.57 | >15,000 ‡ | 0.02 | |
74 | 165,812 | 170,245 | 2.60 | 5367.22 | 0.02 | |
75 | 160,362 | 165,337 | 3.01 | >15,000 ‡ | 0.02 | |
76 | 174,292 | 178,776 | 2.51 | >15,000 ‡ | 0.02 | |
77 | 162,923 | 166,636 | 2.23 | >15,000 ‡ | 0.02 | |
78 | 160,262 | 162,809 | 1.56 | 3284.66 | 0.02 | |
79 | 165,380 | 166,674 | 0.78 | >15,000 ‡ | 0.12 | |
80 | 177,514 | 181,282 | 2.08 | 5342.69 | 0.02 | |
average | 2.22 | 11786.71 | 0.03 | |||
14 | 81 | 143,200 | 146,261 | 2.09 | 2292.85 | 0.03 |
82 | 148,173 | 150,786 | 1.73 | >15,000 ‡ | 0.03 | |
83 | 140,813 | 144,716 | 2.70 | >15,000 ‡ | 0.02 | |
84 | 144,862 | 149,986 | 3.42 | >15,000 ‡ | 0.02 | |
85 | 143,006 | 145,343 | 1.61 | 2278.75 | 0.03 | |
86 | 136,539 | 140,606 | 2.89 | >15,000 ‡ | 0.02 | |
87 | 144,260 | 149,363 | 3.42 | >15,000 ‡ | 0.02 | |
88 | 140,587 | 144,633 | 2.80 | >15,000 ‡ | 0.02 | |
89 | 138,474 | 142,013 | 2.49 | 14,701.13 | 0.02 | |
90 | 145,716 | 146,730 | 0.69 | >15,000 ‡ | 0.03 | |
average | 2.38 | 11,927.26 # | 0.02 | |||
overall | 2.03 | 11,477.85 # | 0.03 |
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Han, J.-H.; Lee, J.-Y.; Jeong, B. Production Planning Problem of a Two-Level Supply Chain with Production-Time-Dependent Products. Appl. Sci. 2021, 11, 9687. https://doi.org/10.3390/app11209687
Han J-H, Lee J-Y, Jeong B. Production Planning Problem of a Two-Level Supply Chain with Production-Time-Dependent Products. Applied Sciences. 2021; 11(20):9687. https://doi.org/10.3390/app11209687
Chicago/Turabian StyleHan, Jun-Hee, Ju-Yong Lee, and Bongjoo Jeong. 2021. "Production Planning Problem of a Two-Level Supply Chain with Production-Time-Dependent Products" Applied Sciences 11, no. 20: 9687. https://doi.org/10.3390/app11209687
APA StyleHan, J. -H., Lee, J. -Y., & Jeong, B. (2021). Production Planning Problem of a Two-Level Supply Chain with Production-Time-Dependent Products. Applied Sciences, 11(20), 9687. https://doi.org/10.3390/app11209687