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Improved Deep Belief Network and Model Interpretation Method for Power System Transient Stability Assessment

机译:改进的深度信仰网络和电力系统瞬态稳定性评估模型解释方法

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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.
机译:实时瞬态稳定性评估(TSA)和应急控制是抑制事故扩展的有效措施,防止系统不稳定,并在电力系统故障时避免大规模的停电。但是,实时评估对计算速度非常苛刻,传统方法不称职。本文提出了一种改进的深度信念网络(DBN),以快速评估瞬态稳定性,这考虑了电力系统在损耗功能的构建中的结构特征。深度学习在许多领域都有生效,但通常被认为是一个黑匣子模型。从机器学习解释的角度来看,本文提出了局部线性解释器(LLI)模型,并试图对系统特征和评估结果之间的关系进行合理解释,并说明了从输入特征空间的转换过程高维表示空间。该方法在IEEE新英格兰测试系统上进行了测试,并在中国的区域电力系统上证明。结果表明,该方法具有瞬态,高精度和瞬态稳定性评估中的良好解释性。

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