首页> 外文期刊>International Journal of Innovative Computing Information and Control >LEAST SQUARES SUPPORT VECTOR MACHINE FOR POWER SYSTEM STABILIZER DESIGN USING WIDE AREA PHASOR MEASUREMENTS
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LEAST SQUARES SUPPORT VECTOR MACHINE FOR POWER SYSTEM STABILIZER DESIGN USING WIDE AREA PHASOR MEASUREMENTS

机译:使用广域相量测量的电力系统稳定器设计的最小二乘支持向量机

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摘要

This paper proposes a design method of power system stabilizer by a, least squares support vector machine (LS-SVMPSS) for wide area stability control. Both local and inter-area data based on synchronized phasor measurements considering time delay are considered as the input features of the LS-SVMPSS. A large number of the training data sets of a multi-machine power system are reduced by the measurement of similarity between samples. Removing the redundant data in the training set not only improves the LS-SVMPSS performance but also decreases computation expense during the operation of LS-SVMPSS. The LS-SVMPSS parameters and the similarity threshold are optimized by a genetic algorithm. As a result, the redundant data in the training set can be discarded while the reduced data are the optimal support vectors in the LS-SVMPSS model. The LS-SVMPSS control signals can be adapted in real time by various operating conditions and different disturbances. The performance of the LS-SVMPSS is compared with the conventional PSS and the neural network-based PSS. Simulation results in a two-area four-machine power system demonstrate that the proposed LS-SVMPSS is very robust to various disturbances under wide range of operating conditions in comparison to other PSSs.
机译:提出了一种基于最小二乘支持向量机(LS-SVMPSS)的电力系统稳定器设计方法,用于广域稳定控制。基于同步相量测量并考虑时间延迟的局域和区域间数据均被视为LS-SVMPSS的输入特征。通过测量样本之间的相似性,减少了多机电源系统的大量训练数据集。去除训练集中的冗余数据不仅可以提高LS-SVMPSS的性能,而且可以减少LS-SVMPSS运行过程中的计算开销。通过遗传算法优化了LS-SVMPSS参数和相似度阈值。结果,可以丢弃训练集中的冗余数据,而减少的数据是LS-SVMPSS模型中的最佳支持向量。 LS-SVMPSS控制信号可以根据各种运行条件和不同的干扰情况进行实时调整。 LS-SVMPSS的性能与常规PSS和基于神经网络的PSS进行了比较。在两区域四机动力系统中的仿真结果表明,与其他PSS相比,所提出的LS-SVMPSS在宽范围的工作条件下对各种干扰非常鲁棒。

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