A probabilistic sequence classification approach for early fault prediction in distribution grids using long short-term memory neural networks

被引:32
作者
Skydt, Mathis Riber [1 ]
Bang, Mads [1 ]
Shaker, Hamid Reza [1 ]
机构
[1] Univ Southern Denmark, Maersk McKinney Moeller Inst, Ctr Energy Informat, Fac Engn, Odense, Denmark
关键词
Fault prediction; Predictive maintenance; Grid management; Risk assessment; Neural networks; LSTM; POWER QUALITY DISTURBANCES; WAVELET TRANSFORM; S-TRANSFORM; MACHINE; SELECTION; EVENTS; SYSTEM;
D O I
10.1016/j.measurement.2020.108691
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
As the global power grid must undergo a profound transformation in the coming decades to ensure reliable and cost-effective operation in a system with large shares of intermittent renewable energy generation, a critical element will be to leverage advanced data-driven predictive tools to optimise grid management activities. As it is expected that existing grids will be operated more to their limits, it is important to obtain better operational insights and estimations of the time to equipment failure to provide useful operational guidance and maintenance prioritisation support for grid operators. In this regard, this paper proposes a novel and real-time applicable method for fault prediction in 10 kV underground oil-insulated power cables using low-resolution data from a real case study from a Danish distribution system operator. The developed method is based on a sequence classification approach using long short-term memory neural networks where three different operational states are defined (Normal, Early warning, and Critical warning) to allow for prediction flexibility and better indication of the presence of systemic faults. Moreover, to enhance the data foundation, this paper investigates a Virtual Sample Generation method based on an adaptive Gaussian distribution. The capability of the proposed method yields satisfying results with prediction accuracy on the test set reaching as high as (similar to)90%, hence proving the usefulness of the proposed approach and paving the way for smarter maintenance protocols.
引用
收藏
页数:17
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