A Multivariate Density Forecast Approach for Online Power System Security Assessment
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...
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Zusammenfassung: | 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. |
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DOI: | 10.48550/arxiv.2105.03047 |