基于PCBoost和SVM的电力生产材料消耗预测方法

Yang Qing, Wang Bin, Z. Peilan, Chen Xiang, Zhao Meng, Wang Yang
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引用次数: 3

摘要

安全库存决策分析对于有效降低库存成本和资金占用率,保证电网物资及时供应具有重要意义,而电力公司安全库存决策分析是基于物资消耗预测数据进行的。由于电力公司耗材行业的特殊性,存在数据不均衡、训练集数量不足(小样本)等问题。针对这两个问题,本文首先提出使用基于AdaBoost的改进PCBoost算法,并结合SVM(支持向量机)解决训练集中的不平衡和数量过少的问题,并给出了实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The prediction method of material consumption for electric power production based on PCBoost and SVM
Analysis of safety inventory decision is of great significance to effectively reduce the inventory cost and fund occupancy rate, and to ensure timely material supply of power grid, while analysis of safety inventory decision of power companies is based on material consumption forecasting data. As the industry particularity of power company material consumption, the existing problems of data are not balanced and short of quantity of the training set (small sample). To solve these two problems, this paper first proposed the use of improved PCBoost algorithm based on AdaBoost and combined with SVM (Support Vector Machine) to solve the unbalance and the small number in the training set, and the experimental results are revealed.
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