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Contingency Analysis of Power Systems with Artificial Neural Networks

机译:人工神经网络的电力系统权变分析

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摘要

A fast assessment of the single contingency policy for power systems is crucial in power system planning and live operation. Power system planning methods based on thousands of power flow calculations, such as time series based grid planning strategies, rely on a fast evaluation of loadings in case of simulated outages. Standard approximation methods, such as the line outage distribution factor (LODF) matrix, have limited accuracy and can only approximate real power flows. To increase accuracy and to predict other power system parameters, we perform contingency analysis with artificial neural networks. Deep feedforward network architectures are trained with 20% of AC power flow results from time series simulation of one year. The remaining line loadings and bus voltages are then predicted. Detailed analyses are conducted on a real German 110 kV sub-transmission grid located in Karlsruhe. The method is additionally tested on the IEEE57 bus system and the CIGRE15 bus medium voltage grid. For each test grid prediction errors are extremely low (0.5%) in comparison to the LODF method (18.6%). Prediction times are significantly less compared to AC power flow calculations (10s vs. 1861s).
机译:快速评估电力系统的单个应急策略对于电力系统规划和实时运行至关重要。基于数千种潮流计算的电力系统规划方法,例如基于时间序列的电网规划策略,在发生模拟故障时依赖于负荷的快速评估。标准的近似方法,例如线路中断分布因子(LODF)矩阵,精度有限,只能近似实际潮流。为了提高准确性并预测其他电力系统参数,我们使用人工神经网络进行了权变分析。深度前馈网络体系结构接受了一年时间序列仿真得出的20%的交流潮流结果的训练。然后预测剩余的线路负载和总线电压。在位于卡尔斯鲁厄的真实的德国110 kV子输电网上进行了详细的分析。该方法已在IEEE57总线系统和CIGRE15总线中压电网上进行了额外测试。与LODF方法(18.6%)相比,每个测试网格的预测误差极低(0.5%)。与交流潮流计算相比,预测时间要短得多(10s对1861s)。

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