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A Quantile Regression-Based Approach for Online Probabilistic Prediction of Unstable Groups of Coherent Generators in Power Systems

机译:基于数量的回归基于在电力系统中的不稳定发生器不稳定组的在线概率预测

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This paper proposes a novel framework for probabilistic data-driven prediction of unstable groups of coherent generators in interconnected power systems. In contrast to existing techniques in which deterministic classification or forecasting approaches are applied to an offline database, the current study relies on a prediction interval (PI)-based method to tackle prediction uncertainties. First, similarity coefficients (SCs) are considered as internal outputs and calculated for all offline cases. Then, at some generator terminals as selected via a feature selection process, voltage values are measured and used as the input features of the prediction tool. Quantile regression forest is conducted to generate PIs, in which several intervals with certain probabilities are predicted for SCs between any pair of generators. Thereafter, the obtained PIs are used to shape an empirical cumulative distribution function of SCs; a Monte Carlo simulation is then conducted to find a reliable estimate of possible grouping patterns. Finally, a decision-making phase is employed to draw clear distinctions among various parts of the most plausible grouping pattern with respect to a reliability index. This approach can offer power system operators wider flexibility to select a corrective control strategy. The effective performance of the developed approach is demonstrated on several IEEE test systems, followed by a discussion of results.
机译:本文提出了互联电力系统中不稳定的相干发电机的不稳定组的概率数据驱动预测的新框架。与将确定性分类或预测方法应用于离线数据库的现有技术相反,目前的研究依赖于基于预测间隔(PI)的方法来解决预测不确定性。首先,相似系数(SCS)被视为内部输出并为所有离线案例计算。然后,在经由特征选择过程中选择的一些发生器终端,测量电压值并用作预测工具的输入特征。进行分量回归森林以产生PIS,其中在任何一对发电机之间的SCS之间预测了几种具有某些概率的间隔。此后,所获得的PIS用于塑造SCS的经验累积分布功能;然后进行蒙特卡罗模拟以找到可能的分组模式的可靠估计。最后,采用决策阶段来利用关于可靠性指数的最合理分组模式的各个部分的清晰区分。这种方法可以提供电力系统运营商更广泛的灵活性,以选择纠正控制策略。在几个IEEE测试系统上证明了开发方法的有效性能,然后讨论了结果。

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