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首页> 外文期刊>Generation, Transmission & Distribution, IET >State estimation of 500 kV sulphur hexafluoride high-voltage CBs based on Bayesian probability and neural network
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State estimation of 500 kV sulphur hexafluoride high-voltage CBs based on Bayesian probability and neural network

机译:基于贝叶斯概率和神经网络的500 kV六氟化硫高压断路器的状态估计

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摘要

Circuit breakers (CBs) are of vital importance for the stability of power systems, and a new two-stage hierarchical state estimation method is proposed for 500 kV sulphur hexafluoride CBs based on Bayesian probability and perceptron neural networks. On the basis of the samples collected from Yunnan Power Grid in China, a new indicator system is constructed by association rules. Bayesian probability is applied to measure the correlation between the individual indicators and comprehensive indicators at the same status level, to weigh the individual indicators. Also, an adaptive perceptron is improved to train the weights of comprehensive indicators in different operational conditions, to eliminate the influence of the imbalance problem of relative deterioration. Then, the operating state of equipment can be inferred according to the calculated comprehensive scores. Finally, taking the actual operating equipment as an example, the effectiveness of this proposed method is proved by sample tests and comparison with other existing linear methods.
机译:断路器(CB)对于电力系统的稳定性至关重要,并且基于贝叶斯概率和感知器神经网络,针对500 kV六氟化硫断路器提出了一种新的两阶段分层状态估计方法。根据从中国云南电网收集的样本,根据关联规则构建了一个新的指标体系。使用贝叶斯概率来测量同一状态级别下各个指标与综合指标之间的相关性,以权衡各个指标。而且,改进了自适应感知器,以训练不同操作条件下综合指标的权重,从而消除相对恶化的不平衡问题的影响。然后,可以根据计算出的综合评分来推断设备的运行状态。最后,以实际的操作设备为例,通过样本测试和与其他现有线性方法的比较证明了该方法的有效性。

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