电力系统保护与控制
電力繫統保護與控製
전력계통보호여공제
POWER SYSTM PROTECTION AND CONTROL
2013年
23期
115-119
,共5页
溶解气体分析%电力变压器%故障诊断%熵理论%云模型%云发生器
溶解氣體分析%電力變壓器%故障診斷%熵理論%雲模型%雲髮生器
용해기체분석%전력변압기%고장진단%적이론%운모형%운발생기
dissolved gas analysis (DGA)%power transformer%fault diagnosis%entropy theory%cloud model%cloud generator
为了解决变压器故障诊断中存在的随机性和模糊性问题,提出了基于反馈云熵模型的电力变压器故障诊断新方法。通过对大量电力变压器故障征兆及故障类型的统计分析,并将其视作云滴输入贝叶斯反馈逆向云发生器中,得到故障特征气体的云模型参数值,构建变压器故障诊断标准正态云模型。将云关联系数和信息熵理论有机结合起来,降低了对单个标准正态云模型的依赖性,充分挖掘变压器油中溶解气体所包含的故障信息,提高了变压器故障诊断的准确率。通过不断丰富输入样本、修正云模型参数值的方法,可以进一步提高模型诊断效果。实例分析结果表明该模型的故障诊断准确率较高,并具有较好的理论价值和应用前景。
為瞭解決變壓器故障診斷中存在的隨機性和模糊性問題,提齣瞭基于反饋雲熵模型的電力變壓器故障診斷新方法。通過對大量電力變壓器故障徵兆及故障類型的統計分析,併將其視作雲滴輸入貝葉斯反饋逆嚮雲髮生器中,得到故障特徵氣體的雲模型參數值,構建變壓器故障診斷標準正態雲模型。將雲關聯繫數和信息熵理論有機結閤起來,降低瞭對單箇標準正態雲模型的依賴性,充分挖掘變壓器油中溶解氣體所包含的故障信息,提高瞭變壓器故障診斷的準確率。通過不斷豐富輸入樣本、脩正雲模型參數值的方法,可以進一步提高模型診斷效果。實例分析結果錶明該模型的故障診斷準確率較高,併具有較好的理論價值和應用前景。
위료해결변압기고장진단중존재적수궤성화모호성문제,제출료기우반궤운적모형적전력변압기고장진단신방법。통과대대량전력변압기고장정조급고장류형적통계분석,병장기시작운적수입패협사반궤역향운발생기중,득도고장특정기체적운모형삼수치,구건변압기고장진단표준정태운모형。장운관련계수화신식적이론유궤결합기래,강저료대단개표준정태운모형적의뢰성,충분알굴변압기유중용해기체소포함적고장신식,제고료변압기고장진단적준학솔。통과불단봉부수입양본、수정운모형삼수치적방법,가이진일보제고모형진단효과。실례분석결과표명해모형적고장진단준학솔교고,병구유교호적이론개치화응용전경。
In order to solve the problem of randomness and fuzziness in power transformer fault diagnosis, a new fault diagnosis method for power transformer based on feedback cloud entropy model is proposed. After the statistic analysis of the collected fault examples of chromatographic data for transformer oil, which is put into Bayesian feedback backward cloud generator as cloud drop, the transformer fault diagnosis standard normal cloud model is built based on parameter values of fault characteristic gases cloud model. The model integrates cloud correlation coefficient and information entropy theory, reduces the dependence on the single standard normal cloud model and digs more information of the dissolved gases in transformer oil, and improves the accuracy of transformer fault diagnosis. By increasing training samples and correction cloud model parameter, the effectiveness of the model can be further enhanced. The results of example show that the model has higher accuracy, and has well theoretical value and application prospects.