摘要
选用RBF神经网络建立绝缘子泄漏电流特征量、气象参数与绝缘子污秽程度之间的映射关系,通过人工污秽试验数据对网络进行训练,搭建了基于RBF神经网络的绝缘子污秽智能诊断模型,并对该模型的预测做了验证,结果表明,可以对绝缘子污秽程度实现很好的预测效果。
The mapping relationships of the insulator leakage current characteristics, mete- orological parameters and the degree of insulator contamination were established by means of RBF neural network, the network was trained by inputting the artificial insulator contamination test data, and then the intelligent diagnosis model of insulator contamination based on RBF neu- ral network was built and the prediction results of the model were validated. The results show that good prediction effect can be achieved using the degree of insulator contamination.
出处
《中国煤炭》
北大核心
2015年第7期84-87,共4页
China Coal
关键词
RBF神经网络
智能诊断
绝缘子
泄漏电流
RBF neural network, intelligent diagnosis, insulator, leakage current