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基于PCA主成分分析和BP神经网络企业库存预测的研究 被引量:3

Research on Inventory Prediction Based on Principal Component Analysis and BP Neural Network
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摘要 近年来,人力资源和物流及仓储成本的不断攀升,导致零件制造成本不断上升,而准确的库存预测有助于企业据此调整生产计划,降低制造成本,有助于实现企业利润最大化。本文通过PCA主成分分析方法确定影响企业库存的因素,编写python代码分析出影响库存的主要因素,包括订单、当月销量等因素,提出JIT即零库存作为企业库存管理的发展方向。随后选取影响库存的因素,分析并计算相关网络参数,建立BP神经网络,用MATLAB编写预测算法,预测9月的库存,确认预测的合理性,验证了算法的有效性。 In recent years,the ever-increasing costs of human resources,logistics,and warehousing have led to the rise of component manufacturing costs.Accurate inventory forecasts can help enterprises adjust production plans accordingly,reduce manufacturing costs,and help maximize profts.This paper adopts the PCA method to determine the factors that affect the inventory,writes python codes to analyze the main factors affecting the inventory,including orders,monthly sales and other factors,puts forward the JIT zero inventory as the development direction of enterprise inventory management.Then the factors that affect the inventory are selected,analyzing and calculating relevant network parameters,establishing BP neural network,using MATLAB to write the prediction algorithm,predicting the inventory in September,confrming the rationality of the prediction,and verifying the effectiveness of the algorithm.
作者 腾杨刚 陈劲杰 葛桂林 TENG Yanggang;CHEN Jinjie;GE Guilin(School of Machine Engineering,University of Shanghai for Science and Technology,Shanghai 200093,Chin)
出处 《软件工程》 2018年第7期14-16,13,共4页 Software Engineering
关键词 PCA主成分分析 BP神经网络 库存预测 PYTHON 机器学习 PCA (Principal Component Analysis) BP neural network inventory prediction Python machine learning
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