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Academic Journal of Business & Management, 2021, 3(10); doi: 10.25236/AJBM.2021.031010.

Research on Supply Quantity Transportation and Ordering Model Based on TOPSIS and Support Vector Regression

Author(s)

Jiaxin Huang1, Chiyuan Zheng2, Chengke Jin1

Corresponding Author:
Jiaxin Huang
Affiliation(s)

1Industrial Center, College of Innovation and Entrepreneurship, Nanjing Institute of Technology, Nanjing, 211167, China

2School of Automation, Nanjing Institute of Technology, Nanjing, 211167, China

Abstract

For the ordering and transportation of raw materials, we should focus on the production efficiency of the enterprise, that is, the purchasing cost of raw materials, the stability of supply, and the loss rate of transportation. Feature engineering is carried out according to the relevant data to generate more supply features, and the evaluation model uses TOPSIS combined with entropy weight to give the supplier ranking. First of all, this paper makes a quantitative analysis of the supply characteristics of suppliers and uses Python to deal with the order quantity and supply quantity data of the suppliers. Based on this, the data mining work is carried out, and the supply characteristics are analyzed quantitatively. And use TOPSIS combined with entropy weight to give the top 50 most important suppliers, and then work out the most economical raw material ordering plan and the least loss transfer plan in the next 24 weeks. Using SPSS software, the descriptive statistics related to the transport loss rate are obtained. Combined with the data analysis of the loss rate, the corresponding ranking of transporters is obtained by using the entropy weight method, and the 0-1 integer programming is constructed for the transshipment scheme. Support vector regression algorithm model is used to predict the most economical raw material ordering plan per week in the next 24 weeks. This paper provides a reference for the ordering and transportation process of raw materials in enterprises.

Keywords

TOPSIS Entropy weight, 0-1 programming, support vector regression

Cite This Paper

Jiaxin Huang, Chiyuan Zheng, Chengke Jin. Research on Supply Quantity Transportation and Ordering Model Based on TOPSIS and Support Vector Regression. Academic Journal of Business & Management (2021) Vol. 3, Issue 10: 51-55. https://doi.org/10.25236/AJBM.2021.031010.

References

[1] Liu Jingqi, Wang Rui, Sun Minghao, Rong Fengzhi. Fuzzy Comprehensive Evaluation of Credit decision of small and medium-sized Enterprises based on AHP- Entropy weight method [J]. China Agricultural Accounting, 2021, {4} (06): 39-43.

[2] Zuo Linxiao, Gao Peng, Feng Dong, Wang Xiaowei, Hou Enke. Quantitative evaluation of geological structure complexity based on AHP- entropy weight coupling method [J/OL]. Coal Science and Technology, {3}, {4} {5}: 1-9 [2021-07-17]. Http://kns.cnki.net/kcms/detail/11.2402.td.20210508.0945. 002.html.

[3] Cao Zejun, Li Congdong. A Summary of Emergency Organization assignment Optimization based on Mathematical programming [J]. Journal of System Simulation, 2021 Magazine 33 (01): 1-12.

[4] Jin Weijia. Portfolio optimization based on integer linear programming and mixed-integer linear programming [J]. Management and Technology of small and medium-sized Enterprises (Middle Journal), 2021 (09): 116118.

[5] Zhang Zhenquan, Li Xingfei, Yang Shaobo. Short-term prediction of effective wave height based on AR-SVR model [J]. Journal of Solar Energy, 2021. 42 (07): 15-20.