遺傳神經(jīng)算法在電力變壓器故障診斷中的應用
李銀龍,林志雄
福建省電力有限公司泉州電業(yè)局,福建 泉州 362000
摘 要: 利用遺傳算法的全局搜索性能和BP 算法較強的局部搜索能力,提出一種收斂速度快的改進遺傳神經(jīng)混合算法,并應用于油中溶解氣體分析的電力變壓器故障診斷中,實際結果表明,該算法能對電力變壓器各種故障進行有效分類,并具有較快的收斂速度和較高的診斷精度。
關鍵詞: 電力變壓器;遺傳算法;人工神經(jīng)網(wǎng)絡;故障診斷
中圖分類號:TM411 文獻標識碼:A 文章編號:1007-3175(2013)05-0047-03
Application of Genetic Neural Algorithm in Power Transformer Fault Diagnose
LI Yin-long, LIN Zhi-xiong
Quanzhou Power Bureau, Power Company in Fujian Province, Quanzhou 362000, China
Abstract: With the global search performance of genetic algorithm and the local search capability of back propagation (BP) algorithm, this paper raised a kind of fast convergence improved genetic mixed algorithm, which was applied in power transformer fault diagnosis to analyze gases dissolved in the oil. The actual result shows that the algorithm can classify effectively for each kind of fault in power transformer, with faster convergence speed and higher diagnosis accuracy.
Key words: power transformer; genetic algorithm; artificial neural network; fault diagnose
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