会议专题

Study to Selection of Suppliers Approach Based on Approved BP Artificial Neural Network

Supplier selection is one of the most critical decisions in a supply chain.While it can contribute to the supply good suppliers,supply chains overall incorrect selection can drive the whole chain into disarray.The back-propagation algorithm(BP) is a well-known method of training a multilayer Feed -Forward Artificial Neural Networks(FFANNS).Although the algorithm is successful,it has some disadvantages.Because of adopting the gradient method by BP neural network,the problems including slowly learning convergent velocity and easily converging to local minimum can not be avoided.In addition,the selection of learning factor and inertial factor affects the convergence of BP neural network,which are usually determined by experiences.Therefore the effective application of BP neural network is limited.In this paper a new method in BP algorithm to avoid local minimum was proposed by means of adding gradually training data and hidden units.In addition,the paper also proposed a new model of controllable feed-forward neural network for supplier selection.

BP FFANNS input layer output layer hidden layer

Na Liu Jianchang Lu Lin Zhu

School of Business and AdministrationNorth China Electric Power UniversityBaoding ,China School of Business and Administration North China Electric Power University Baoding ,China

国际会议

2008 IEEE International Conference on Service Operations and Logistics, and Informatics(IEEE/SOLI’2008)(IEEE服务运作、物流与信息年会)

北京

英文

2008-10-12(万方平台首次上网日期,不代表论文的发表时间)