Application of Core Vector Regression in Condition-Based Maintenance for Electric Power Equipments

Junhua Qu, Wenjuan Wang, Chao Wei
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Abstract

In this paper, we propose a forecasting model of electric power equipment statement assembled by core vector machines and particle swarm algorithm to improve the accuracy of electric equipment maintenance. The electric power equipment condition forecasting model improves parameter selection problems of nuclear vector regression by particle swarm algorithm, optimizes parameters of kernel function and reduces the artificial factors in the forecasting process, accordingly reduces the blindness in the process of training and improves the accuracy of the prediction, while core vector regression have the advantages of high precision, suitable for power equipment maintenance process.
核心向量回归在电力设备状态维护中的应用
为了提高电力设备维修的准确性,提出了一种基于核心向量机和粒子群算法组合的电力设备状态预测模型。该电力设备状态预测模型通过粒子群算法改进了核向量回归的参数选择问题,优化了核函数参数,减少了预测过程中的人为因素,从而减少了训练过程中的盲目性,提高了预测的准确性,同时核向量回归具有精度高的优点,适用于电力设备维护过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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