Design of Green Cold Chain Networks for Imported Fresh Agri-Products in Belt and Road Development
Abstract
:1. Introduction
2. Literature Review
3. Problem Description and Formulation
3.1. Problem Descriptions
3.2. Model Development
3.3. Model Solution
- CM: min OF1 (1)
- s.t.: Constraints (3)–(11);
4. Numerical Experiments
4.1. Data Collection
4.2. Analysis and Discussion
4.2.1. Solutions of the Two Base Scenarios with a Single Objective
4.2.2. The Trade-Offs between the Two Objectives
- (1)
- The main reason for emission reduction on the cold chain is because of the increase of DC numbers. When more DCs are selected, the distance of outbound transportation will sharply drop. Then, the emission items related to outbound transportation will decrease, which can compensate for the emission increase related to inbound transportation and DC maintenance.
- (2)
- By carefully comparing the average temperature of each DC as shown in Table 4, we can see that when the number of DCs is increased, the average temperatures of DCs increase accordingly. Meanwhile, when the number of DCs stays equal—for example, in Scenarios 3, 4, and 5—the average temperature declines, which can, in turn, reduce the overall carbon emissions. This explains the decline on the Pareto frontier at the Scenario 3 point. The number of DCs increases at a rate of 2 for Scenarios 1, 2, 3, and the LC scenario. Meanwhile, the number stays stable for Scenario 4. This means that the emission reductions of outbound transportation cannot cover the emission increase caused by opening a DC. Consequently, an emission reduction can be obtained by moving DCs to lower-temperature places, which consequently increases the transportation cost.
- (3)
- The cost and emissions for inbound transportation and DC maintenance are positively related to the number of DCs, while the effect on outbound transportation is exactly the same in the opposite way. Moreover, the carbon emissions caused by transportation account for the largest share of the total emissions. This provides an important direction for the control of carbon emissions in cold supply chains.
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A
Ports | Manzhouli | Urumqi | Qingdao | Tianjin | Ningbo | Shanghai | Fuzhou |
AAT (°C) | −1.2 | 8.4 | 12.3 | 13.8 | 16.6 | 17.6 | 21 |
Supply of Fruit (ton) | 8000 | 10,000 | 32,000 | 26,000 | 52,000 | 47,000 | 23,000 |
Supply of Frozen Product (ton) | 18,000 | 15,000 | 29,000 | 20,000 | 49,000 | 45,000 | 24,000 |
Ports | Guangzhou | Nanning | Shenzhen | ||||
AAT (°C) | 21.9 | 22.3 | 22.5 | ||||
Supply of Fruit (ton) | 36,000 | 18,000 | 33,000 | ||||
Supply of Frozen Product (ton) | 32,000 | 12,000 | 35,000 |
Potential DCs | Manzhouli | Changchun | Urumqi | Shenyang | Qingdao | Beijing | Tianjin |
AAT (°C) | −1.2 | 6.6 | 8.4 | 8.8 | 12.3 | 13.8 | 13.8 |
Potential DCs | Shijiazhuang | Kunming | Nanjing | Xi'an | Zhengzhou | Ningbo | Chengdu |
AAT (°C) | 14.6 | 15.0 | 15.1 | 15.8 | 16.4 | 16.6 | 16.8 |
Potential DCs | Hefei | Wuhan | Shanghai | Hangzhou | Chongqing | Fuzhou | Guangzhou |
AAT (°C) | 17.0 | 17.3 | 17.6 | 18.2 | 19.5 | 21.0 | 21.9 |
Potential DCs | Nanning | Shenzhen | |||||
AAT (°C) | 22.3 | 22.5 |
Retailers | Manzhouli | Jiamusi | Qiqihar | Chifeng | Harbin | Jilin | Daqing |
---|---|---|---|---|---|---|---|
AAT (°C) | −1.2 | 3.0 | 3.2 | 3.5 | 3.5 | 3.9 | 4.2 |
Demand of Fruit (ton) | 2511 | 2524 | 1009 | 2042 | 1578 | 1025 | 2196 |
Demand of Frozen Product (ton) | 1674 | 1803 | 1442 | 1856 | 3155 | 1025 | 1464 |
Retailers | Hohhot | Siping | Datong | Changchun | Fushun | Jiuquan | Zhangzhou |
AAT (°C) | 4.3 | 5.9 | 6.4 | 6.6 | 6.6 | 6.6 | 6.7 |
Demand of Fruit (ton) | 1033 | 2363 | 2369 | 3483 | 1312 | 2015 | 1505 |
Demand of Frozen Product (ton) | 1475 | 1969 | 1974 | 3166 | 1312 | 1832 | 1505 |
Retailers | Baotou | Lhasa | Urumqi | Yinchuan | Anshan | Shizuishan | Shenyang |
AAT (°C) | 7.2 | 7.4 | 8.4 | 8.5 | 8.5 | 8.6 | 8.8 |
Demand of Fruit (ton) | 2240 | 1766 | 1896 | 2449 | 1062 | 1354 | 2215 |
Demand of Frozen Product (ton) | 1493 | 1766 | 1264 | 3061 | 1327 | 1504 | 3691 |
Retailers | Pingliang | Yan'an | Taiyuan | Wuhai | Qinhuangdao | Yangquan | Lanzhou |
AAT (°C) | 9.0 | 9.1 | 9.5 | 9.6 | 10.0 | 10.0 | 10.3 |
Demand of Fruit (ton) | 1959 | 1122 | 4036 | 989 | 1422 | 2209 | 3830 |
Demand of Frozen Product (ton) | 1306 | 1603 | 3363 | 1977 | 1580 | 1699 | 3482 |
Retailers | Dalian | Tongchuan | Tianshui | Xianyang | Qingdao | Tangshan | Kaifeng |
AAT (°C) | 10.5 | 10.6 | 11.0 | 11.1 | 12.3 | 12.5 | 12.5 |
Demand of Fruit (ton) | 3020 | 2513 | 864 | 1952 | 4763 | 923 | 1216 |
Demand of Frozen Product (ton) | 3020 | 1933 | 1440 | 1627 | 3664 | 1846 | 1216 |
Retailers | Dongying | Zibo | Liupanshui | Beijing | Tianjin | Jinan | Handan |
AAT (°C) | 12.8 | 13.3 | 13.5 | 13.8 | 13.8 | 13.8 | 14.0 |
Demand of Fruit (ton) | 1579 | 1686 | 1683 | 4490 | 3636 | 4190 | 2356 |
Demand of Frozen Product (ton) | 1435 | 1297 | 1870 | 7484 | 7271 | 3809 | 1812 |
Retailers | Anshun | Zaozhuang | Qujing | Luoyang | Shijiazhuang | Huzhou | Luohe |
AAT (°C) | 14.0 | 14.5 | 14.5 | 14.5 | 14.6 | 14.7 | 14.7 |
Demand of Fruit (ton) | 1123 | 1817 | 1543 | 1554 | 1841 | 3951 | 2258 |
Demand of Frozen Product (ton) | 1871 | 1817 | 1102 | 1036 | 3069 | 3592 | 1882 |
Retailers | Kunming | Nanjing | Bengbu | Zunyi | Guiyang | Changzhou | Wuhu |
AAT (°C) | 15.0 | 15.1 | 15.1 | 15.1 | 15.3 | 15.5 | 15.5 |
Demand of Fruit (ton) | 2971 | 2494 | 2064 | 1216 | 3934 | 3991 | 2297 |
Demand of Frozen Product (ton) | 3301 | 3563 | 1474 | 1216 | 3278 | 3070 | 1641 |
Retailers | Baoshan | Zhenjiang | Suzhou | Xi'an | Jiaxing | Mianyang | Deyang |
AAT (°C) | 15.5 | 15.6 | 15.7 | 15.8 | 15.9 | 16.0 | 16.0 |
Demand of Fruit (ton) | 727 | 4371 | 3548 | 5298 | 2694 | 822 | 1735 |
Demand of Frozen Product (ton) | 1212 | 3362 | 3225 | 3784 | 3367 | 1643 | 1446 |
Retailers | Fuyang | Guangyuan | Xiangtan | Wuxi | Zhengzhou | Huainan | Jiujiang |
AAT (°C) | 16.0 | 16.1 | 16.1 | 16.2 | 16.4 | 16.5 | 16.5 |
Demand of Fruit (ton) | 1262 | 1681 | 1980 | 4801 | 2484 | 2016 | 1229 |
Demand of Frozen Product (ton) | 1578 | 1681 | 1320 | 3693 | 3105 | 1440 | 1229 |
Retailers | Ningbo | Chengdu | Yichang | Hefei | Zhuzhou | Huang Shi | Changsha |
AAT (°C) | 16.6 | 16.8 | 16.9 | 17.0 | 17.0 | 17.0 | 17.2 |
Demand of Fruit (ton) | 10910 | 10445 | 1250 | 1824 | 1678 | 1798 | 11,634 |
Demand of Frozen Product (ton) | 7793 | 7461 | 1389 | 3648 | 1291 | 1798 | 7756 |
Retailers | Wuhan | Nanchang | Shanghai | Hengyang | Hangzhou | Sanming | Ji'an |
AAT (°C) | 17.3 | 17.4 | 17.6 | 18.0 | 18.2 | 18.2 | 18.5 |
Demand of Fruit (ton) | 6421 | 4719 | 4225 | 1128 | 7858 | 2209 | 1732 |
Demand of Frozen Product (ton) | 7134 | 3146 | 7041 | 1611 | 7858 | 1699 | 1924 |
Retailers | Liuzhou | Ganzhou | Guilin | Chongqing | Yuxi | Shantou | Quanzhou |
AAT (°C) | 18.8 | 18.8 | 19.3 | 19.5 | 19.8 | 20.0 | 20.2 |
Demand of Fruit (ton) | 974 | 1495 | 4565 | 5977 | 1882 | 5179 | 1547 |
Demand of Frozen Product (ton) | 1218 | 1359 | 3804 | 7471 | 1568 | 3984 | 1547 |
Retailers | Fuzhou | Xiamen | Zhangzhou | Guangzhou | Huizhou | Nanning | Shenzhen |
AAT (°C) | 21.0 | 21.0 | 21.4 | 21.9 | 22.0 | 22.3 | 22.5 |
Demand of Fruit (ton) | 3108 | 4938 | 520 | 10,641 | 2256 | 2775 | 4490 |
Demand of Frozen Product (ton) | 3453 | 3292 | 1039 | 7601 | 1880 | 3469 | 7483 |
Retailers | North Sea | Haikou | |||||
AAT (°C) | 22.9 | 24.2 | |||||
Demand of Fruit (ton) | 2100 | 1443 | |||||
Demand of Frozen Product (ton) | 1750 | 1443 |
Parameters | Values/Estimations | Sources |
---|---|---|
Fuel conversion factor | 2.63 kg CO2/L | https://www.gov.uk/government/uploads/system/uploads/attachment_data/file/69568/pb13792-emission-factor-methodologypaper-120706.pdf [52] |
Fuel consumption rate for inbound transportation | 0.01427 L/kg·km | Kellner and Igl (2015) [5] |
Fuel consumption rate for outbound transportation | 0.01958 L/kg·km | Kellner and Igl (2015) [5] |
Base value of fuel consumption of refrigerators | 3.6 × 10–6 L/kg·km | Wu et al. (2013) [7] |
Coefficient of performance of refrigerators | Data according to Figure 4 | Wu et al. (2013) [7] |
Fuel price | 6.2 yuan/L [54] | http://youjia.chemcp.com [54] |
Emission factor of electricity | 0.766 kg CO2/kWh | http://www.iea.org/publications/freepublications/publication/name,32870,en.html [55] |
Fixed cost for maintaining DCs | 1,000,000,000 yuan | Assumption |
Electricity price | 1.2 yuan/kWh | http://www.nea.gov.cn/ [56] |
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Indices | |
i = 1,…,I | Set of ports |
j = 1,…,J | Set of potential DCs |
k = 1,…,K | Set of retailers |
u = 1,…,U | Set of products |
Parameters | |
Average annual temperatures of ports | |
Average annual temperature of DCs | |
Average annual temperature of cities of retailers | |
Unit carbon emission rate of transporting product u from port i to DC j (kg CO2/kg·km ) | |
Unit carbon emission rate of transporting product u from DC j to retailer k (kg CO2/kg·km) | |
Unit cost of transporting product u from port i to DC j (yuan/ kg·km) | |
Unit cost of transporting product u from DC j to retailer k (yuan/ kg·km) | |
Distance from port i to DC j | |
Distance from DC j to retailer k | |
Supply of product u of port i | |
Demand of product u of retailer j | |
Cost of DC j | |
Emission of DC j | |
Minimum number of DCs required by the decision-maker | |
Maximum number of DCs required by the decision-maker | |
A large number for modeling | |
Decision Variables | |
=1, if DC j is selected (binary decision variable) | |
Amount of products u transported from port i to DC j | |
Amount of products u transported from DC j to retailer k |
Vehicle Type | Fuel Consumption: Totally Loaded | Max. Payload |
---|---|---|
HGV-40 | 37.1 L/100 km | 26 tons |
HGV-24 | 23.5 L/100 km | 12 tons |
LC (Lowest Cost ) | LE (Lowest Emission) | |
---|---|---|
Transportation Cost (Yuan) | ||
Inbound Transportation | 1.25 × 1010 | 1.94 × 1010 |
Outbound Transportation | 2.78 × 1010 | 1.74 × 1010 |
Cost of DCs | 1.10 × 1010 | 2.20 × 1010 |
Total | 5.13 × 1010 | 5.88 × 1010 |
Carbon emission (kg CO2) | ||
Inbound Transportation | 5.19 × 109 | 7.30 × 109 |
Outbound Transportation | 1.12 × 1010 | 7.01 × 109 |
Emission of DCs | 6.37 × 108 | 1.20 × 109 |
Total | 1.70 × 1010 | 1.55 × 1010 |
General | ||
Number of DCs | 11 | 22 |
Scenarios | LC | 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | 10 | LE |
---|---|---|---|---|---|---|---|---|---|---|---|---|
No. of DCs | 11 | 13 | 15 | 17 | 17 | 17 | 18 | 18 | 19 | 20 | 21 | 22 |
Average °C of DCs | 7.20 | 9.03 | 10.03 | 11.34 | 11.01 | 10.67 | 12.00 | 11.58 | 12.38 | 13.09 | 13.88 | 14.48 |
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Share and Cite
Fang, Y.; Jiang, Y.; Sun, L.; Han, X. Design of Green Cold Chain Networks for Imported Fresh Agri-Products in Belt and Road Development. Sustainability 2018, 10, 1572. https://doi.org/10.3390/su10051572
Fang Y, Jiang Y, Sun L, Han X. Design of Green Cold Chain Networks for Imported Fresh Agri-Products in Belt and Road Development. Sustainability. 2018; 10(5):1572. https://doi.org/10.3390/su10051572
Chicago/Turabian StyleFang, Yan, Yiping Jiang, Lijun Sun, and Xingxing Han. 2018. "Design of Green Cold Chain Networks for Imported Fresh Agri-Products in Belt and Road Development" Sustainability 10, no. 5: 1572. https://doi.org/10.3390/su10051572
APA StyleFang, Y., Jiang, Y., Sun, L., & Han, X. (2018). Design of Green Cold Chain Networks for Imported Fresh Agri-Products in Belt and Road Development. Sustainability, 10(5), 1572. https://doi.org/10.3390/su10051572