最优最小二乘支持向量机参数选择在分布式发电输出预测中的应用

Z. M. Yasin, T. Rahman, Z. Zakaria
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引用次数: 5

摘要

本文提出了一种优化最小二乘支持向量机(LS-SVM)参数的方法来预测配电系统的分布式发电(DG)输出。在LS-SVM中,预测的准确性取决于核参数的选择。不幸的是,没有系统的方法来选择它们的最优值。为此,提出了一种新颖的量子启发进化规划-最小二乘支持向量机(QIEP-SVM)混合预测方法。在QIEP- svm中,采用量子启发进化规划(QIEP)对LS-SVM的gamma和sigma参数进行优化。QIEP是将进化规划(Evolutionary Programming, EP)与量子力学中的干涉、叠加等概念相结合,以增强经典的进化规划(Evolutionary Programming, EP)。首先利用多目标量子进化规划(QIEP)方法,根据24小时负荷分布,生成不同负荷条件下DG的最优输出。然后将模拟的数据用作最小二乘支持向量机(LS-SVM)的输入。有三个输入,即有功负载(MW),无功负载(MVAR)和最小电压(p.u)。然而,有五个输出表示DG在五个总线上的输出。优化过程的目标函数是最小化预测和目标输出之间的均方误差。然后利用交叉验证技术和混合人工神经网络-量子启发进化规划(QIEP-ANN)将QIEP-SVM与经典LS-SVM进行性能比较。与传统的LS-SVM和QIEP-ANN相比,QIEP-SVM模型具有更好的预测性能。本研究的所有仿真都是在IEEE 69总线配电测试系统上进行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal least squares support vector machines parameter selection in predicting the output of distributed generation
This paper presents a novel technique to optimise the least squares support vector machines (LS-SVM) parameters in predicting the output of Distributed Generation (DG) in a distribution system. In LS-SVM, the accuracy of the prediction is depends on the selection of kernel parameters. Unfortunately, there is no systematic methodology for selection of their optimal values. Therefore, a novel hybrid Quantum-Inspired Evolutionary Programming - Least Squares Support Vector Machine (QIEP-SVM) is developed for accurate prediction. In QIEP-SVM, Quantum-Inspired Evolutionary Programming (QIEP) is developed to optimise selected parameters for the LS-SVM which are gamma and sigma. QIEP is combining Evolutionary Programming (EP) with quantum mechanics concepts such as interference and superposition in order to enhance classical Evolutionary Programming (EP). The optimal output of DG is first generated using multiobjective Quantum-Inspired Evolutionary Programming (QIEP) at various loading condition according to 24-hours load profile. The data from the simulations are then used as the inputs to the Least-Squares Support Vector Machine (LS-SVM). There are three inputs which are active load (MW), reactive load (MVAR) and minimum voltage (p.u). Whereas, there are five outputs that represents the output of DG at five buses. The objective function for the optimisation process is to minimise the mean square error between predicted and targeted output. The performance of QIEP-SVM is then compared to classical LS-SVM using cross-validation technique and hybrid Artificial Neural Network-Quantum-Inspired Evolutionary Programming (QIEP-ANN). The results of QIEP-SVM model had shown better prediction performance as compared to classical LS-SVM and QIEP-ANN. All simulations in this study were carried out using IEEE 69-bus distribution test system.
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