基于KPCA-PSO-SVM的制造业多价值链产品需求预测——以环网柜需求为例

D. Niu, Min Yu, Ruoyun Du, Lijie Sun, Xiaomin Xu, Huanfen Zhang
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引用次数: 0

摘要

随着社会需求和经济的增长,环网柜(RNC)已成为配电最后一公里的关键环节。从企业的角度预测RNC的需求,可以为企业的生产计划和经营决策提供建议。本文从制造业多价值链出发,充分挖掘供应链、生产链和营销链的有效信息作为需求预测的输入变量。考虑到涉及的因素太多,本文采用KPCA对数据进行降维,并采用粒子群优化(PSO)优化的支持向量机对A环主机制造企业的需求进行预测。为了验证模型的有效性,选择ARMA、SVM和PSO-SVM对模型进行比较。结果表明,本文采用的KPCA-PSO-SVM具有较高的预测精度和效率。根据预测结果,给出相应的决策建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Manufacturing Multi-value Chain Product Demand Forecasting Based on KPCA-PSO-SVM : -Taking the Demand of the Ring Network Cabinet as an Example
With the growth of social demand and economy, the ring network cabinet (RNC) has become the key link of the last kilometer of distribution. Forecasting the demand of RNC from the perspective of enterprises can provide suggestions for the production plan and business decisions of enterprises. Starting from the manufacturing multi-value chain, this paper fully taps the effective information of supply chain, production chain and marketing chain as the input variables of demand forecasting. Considering too many factors involved, this paper uses KPCA to reduce the data dimension, and uses the support vector machine optimized by particle swarm optimization (PSO) to predict the demand of A ring-main unit manufacturing enterprises. In order to verify the validity of the model, ARMA, SVM and PSO-SVM are selected to compare the models. The results show that the KPCA-PSO-SVM adopted in this paper has higher prediction accuracy and efficiency. According to the prediction results, this paper gives corresponding decision-making suggestions.
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