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Improved Deep Belief Network and Model Interpretation Method for Power System Transient Stability Assessment 被引量:23

Improved Deep Belief Network and Model Interpretation Method for Power System Transient Stability Assessment
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摘要 The real-time transient stability assessment(TSA)and emergency control are effective measures to suppress accident expansion,prevent system instability,and avoid large-scale power outages in the event of power system failure.However,real-time assessment is extremely demanding on computing speed,and the traditional method is not competent.In this paper,an improved deep belief network(DBN)is proposed for the fast assessment of transient stability,which considers the structural characteristics of power system in the construction of loss function.Deep learning has been effective in many fields,but usually is considered as a black-box model.From the perspective of machine learning interpretation,this paper proposes a local linear interpreter(LLI)model,and tries to give a reasonable interpretation of the relationship between the system features and the assessment result,and illustrates the conversion process from the input feature space to the high-dimension representation space.The proposed method is tested on an IEEE new England test system and demonstrated on a regional power system in China.The result demonstrates that the proposed method has rapidity,high accuracy and good interpretability in transient stability assessment. The real-time transient stability assessment(TSA)and emergency control are effective measures to suppress accident expansion, prevent system instability, and avoid large-scale power outages in the event of power system failure. However,real-time assessment is extremely demanding on computing speed, and the traditional method is not competent. In this paper, an improved deep belief network(DBN) is proposed for the fast assessment of transient stability, which considers the structural characteristics of power system in the construction of loss function. Deep learning has been effective in many fields, but usually is considered as a black-box model. From the perspective of machine learning interpretation, this paper proposes a local linear interpreter(LLI) model, and tries to give a reasonable interpretation of the relationship between the system features and the assessment result, and illustrates the conversion process from the input feature space to the high-dimension representation space. The proposed method is tested on an IEEE new England test system and demonstrated on a regional power system in China. The result demonstrates that the proposed method has rapidity, high accuracy and good interpretability in transient stability assessment.
出处 《Journal of Modern Power Systems and Clean Energy》 SCIE EI CSCD 2020年第1期27-37,共11页 现代电力系统与清洁能源学报(英文)
基金 supported by National Natural Science Foundation of China(No.51777104) the Science and Technology Project of the State Grid Corporation of China.
关键词 Transient stability assessment(TSA) representation learning deep BELIEF network(DBN) local linear interpretation(LLI) visualization EMERGENCY control Transient stability assessment(TSA) representation learning deep belief network(DBN) local linear interpretation(LLI) visualization emergency control
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