A multivariate density forecast model based on deep learning is designed in this paper to forecast the joint cumulative distribution functions (JCDFs) of multiple security margins in power systems. Differing from existing multivariate density forecast models, the proposed method requires no a priori hypotheses on the distribution of forecasting targets. In addition, based on the universal approximation capability of neural networks, the value domain of the proposed approach has been proven to include all continuous JCDFs. The forecasted JCDF is further employed to calculate the deterministic security assessment index evaluating the security level of future power system operations. Numerical tests verify the superiority of the proposed method over current multivariate density forecast models. The deterministic security assessment index is demonstrated to be more informative for operators than security margins as well.
翻译:本文件设计了基于深层学习的多变量密度预测模型,以预测动力系统多个安全边际的联合累积分布功能(JCDFs),与现有的多变量密度预测模型不同,拟议方法不需要事先假设预测目标的分布;此外,根据神经网络的通用近似能力,已证明拟议方法的价值领域包括所有连续的JCDFs。预测的JCDF进一步用于计算评估未来动力系统运行安全水平的确定性安全评估指数。数字测试核实拟议方法优于当前多变量密度预测模型。确定性安全评估指数对操作者而言比安全边际也更具信息性。