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Multi-population differential evolutionary particle swarm optimization for distribution state estimation using correntropy in electric power systems

机译:电力系统中利用熵的多种群差分进化粒子群算法用于配电状态估计

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This paper proposes Multi-population differential evolutionary particle swarm optimization (DEEPSO) for distribution state estimation (DSE) using correntropy in electric power systems. Practical equipment in distribution systems causes nonlinear characteristics in an objective function and evolutionary computation methods have been applied to DSE so far. This paper applies Multi-population DEEPSO in order to improve estimation quality. Minimization of sum of square errors by the weighted least mean square (WLMS) has a problem when outliers exist in the measure values. Quality of estimated results is largely affected by the outliers using the WLMS, while correntropy has a possibility not to be affected by the outliers. The proposed method applies to a typical distribution system. The results indicate that the proposed DEEPSO based method can improve estimation results compared with conventional DEEPSO based method, and the correntropy based proposed method can estimate distribution system conditions more accurately than the conventional WLMS with the outliers.
机译:针对电力系统中的熵,提出了多种群差分进化粒子群算法(DEEPSO)用于配电状态估计(DSE)。配电系统中的实用设备在目标函数中引起非线性特征,并且到目前为止,进化计算方法已应用于DSE。为了提高估计质量,本文应用多人口DEEPSO。当度量值中存在离群值时,通过加权最小均方(WLMS)最小化平方误差之和存在问题。估计结果的质量在很大程度上受使用WLMS的异常值的影响,而熵变有​​可能不受异常值的影响。所提出的方法适用于典型的配电系统。结果表明,与基于常规DEEPSO的方法相比,基于DEEPSO的方法可以改善估计结果,并且与基于WLMS的异常值相比,基于熵的方法可以更准确地估计配电系统条件。

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