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首页> 外文期刊>Journal of control, automation and electrical systems >Functional Approximation of Power System Steady-State Voltage Stability Limits by Artificial Neural Networks
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Functional Approximation of Power System Steady-State Voltage Stability Limits by Artificial Neural Networks

机译:用人工神经网络对电力系统稳态电压稳定极限进行功能逼近

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The estimation of steady-state voltage stability limits represented by the critical value of a voltage stability index (VSI) in power flow-based electric energy system models may be a very difficult task, which might render their applicability impractical. When voltage collapse is associated with a generation bus reaching one of its reactive power generation limits, critical values of VSIs based on properties of the system Jacobian are difficult to be predicted without actually solving the maximum loading problem. In this context, this paper proposes the functional approximation of power system steady-state voltage stability limits, represented by the critical values of the minimum singular value (MSV) and tangent vector norm (TVN) indices, by means of artificial neural networks (ANNs). To construct a steady-state voltage stability boundary, the maximum loading problem was solved for a normalized even distribution of generation and load increase patterns using an optimal power flow-based approach. With these collapse points, the MSV and TVN indices were calculated and then used in the training and testing processes of the ANNs. A 6-bus system was used for carrying out this study. Results show that the proposed architecture of ANNs can be readily applied to the functional approximation of these VSIs at the voltage collapse...
机译:在基于潮流的电能系统模型中,以电压稳定指数(VSI)的临界值表示的稳态电压稳定极限的估计可能是一项非常艰巨的任务,这可能使其实用性不切实际。当电压崩溃与发电母线达到其无功发电极限之一相关联时,如果不实际解决最大负载问题,则很难基于系统雅可比矩阵的特性来预测VSI的临界值。在这种情况下,本文提出了通过人工神经网络(ANN)来表示电力系统稳态电压稳定极限的函数近似值,以最小奇异值(MSV)和正切向量范数(TVN)指数的临界值表示)。为了构建稳态电压稳定边界,使用基于最优潮流的方法解决了最大负载问题,以实现发电和负载增加模式的标准化均匀分布。利用这些崩溃点,可以计算出MSV和TVN指数,然后将其用于ANN的训练和测试过程。本研究使用6总线系统。结果表明,提出的ANN架构可以很容易地应用于电压崩溃时这些VSI的功能逼近...

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