Computer Science ›› 2023, Vol. 50 ›› Issue (6A): 220300113-6.doi: 10.11896/jsjkx.220300113

• Software & Interdiscipline • Previous Articles     Next Articles

Study on Product Recovery Model of Remanufacturing Enterprises Based on Game Theory

CAI Ran, HUANG Pengpeng   

  1. School of Mechanical and Electrical Engineering,Jiangxi University of Science and Technology,Ganzhou,Jiangxi 341000,China
  • Online:2023-06-10 Published:2023-06-12
  • About author:CAI Ran,born in 1996,master.His main research interests include lean production and enterprise economics. HUANG Pengpeng,born in 1961,master,professor.His main research interests include simulation optimization of production and service system,operation mechanism of bulk-mechanical system.

Abstract: Based on the research assumptions in the closed-loop supply chain of different recycling channels,a product recycling model is established for recyclers(manufacturers,retailers or third-party recyclers),and the Stackelberg game theory is applied to analyze the models,and three types of recycling are obtained.For the equilibrium solution of the model,Matlab is used to numerically simulate the solution of the optimal recovery model.Research results show that in the market led by manufacturers,the pricing of remanufactured products’ sales channels and recycling channels do not change due to the different recycling models,but the profit distribution of channel members varies with the different recycling models.In the models where recycling is carried out by the manufacturer,the entire closed-loop supply chain has the largest profit,and the other two recycling models have the same closed-loop supply chain profit.The manufacturer always has the highest profit in all recycling models.

Key words: Remanufacturing, Closed-loop supply chain, Game theory, Recycling model, Matlab simulation

CLC Number: 

  • F224.9
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