研究生: |
鄭美滿 Meei-Maan Cheng |
---|---|
論文名稱: |
實驗性比壓器局部放電圖譜之辨識 Pattern Recognition of Partial Discharges for Experimental Potential Transformers |
指導教授: |
張宏展
Hong-Chan Chang |
口試委員: |
陳建富
Jiann-Fuh Chan 吳瑞南 Ruay-Nan Wu 陳財榮 Tsair-Rong Chen 郭政謙 Cheng-Chien Kuo |
學位類別: |
碩士 Master |
系所名稱: |
電資學院 - 電機工程系 Department of Electrical Engineering |
論文出版年: | 2005 |
畢業學年度: | 93 |
語文別: | 中文 |
論文頁數: | 113 |
中文關鍵詞: | 小波轉換 、類神經網路 、局部放電 、比壓器 |
外文關鍵詞: | wavelet transform, artificial neural network, partial discharge, potential transformers |
相關次數: | 點閱:339 下載:10 |
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本文應用二維小波轉換與類神經網路於24kV級模鑄式比壓器局部放電之圖譜辨識。主要包括比壓器局部放電訊號實際量測及應用圖譜辨識兩部分。實際量測之4種比壓器實驗模型,係由廠商配合製造有缺陷的模鑄式比壓器,而比壓器局部放電訊號之量測部分,乃是於屏蔽實驗室內,應用商用之局部放電檢測儀,測量上述4種實驗模型的三度空間之局部放電圖譜。圖譜辨識部分則由所量測之實驗數據,透過二維小波轉換進行特徵擷取,以當做倒傳遞類神經網路之訓練集,完整建構比壓器局部放電圖譜辨識系統。最後,再以原先量測之訓練集重疊加入隨機雜訊後,作為測試資料集,以驗證本文所提方法之正確性。研究結果顯示,在外加雜訊量為20pC時,系統之辨識成功率仍高達八成五,故本文值得鼓舞的結果,應足以提供電業預防設備絶緣裂化診斷之參考。
This thesis deals with a 2-D wavelet transform combined with artificial neural network to the partial discharge pattern recognition of 24kV cast-resin potential transformers. The research includes practical measurement from potential transformers and pattern recognition using partial discharge (PD) signals. Four experiment models of cast-resin potential transformers with artificial insulation defects were purposely manufactured by an electrical factory. Then, using a commercial PD detector, practical measurements of 3D patterns for the afore-mentioned four models were performed in a magnetically shielded laboratory. For increasing the recognition rate, the features of the 3D patterns obtained from partial discharge measurement are extracted by a 2-D wavelet transform. These features are subsequently used as the training data of a back-propagation neural network, which is used as the partial discharge based defect-diagnosis system. Lastly, this study randomly selects different levels of noise to distort the original measurements. These distorted data sets are then entered to the recongnition system for testing. Simulation results show that, at least 85% successful recognition rate can be achieved with 20pC noise added. These encouraging results present the effectiveness of the proposed approach to prevent system breakdown of utilities by early diagnosis of insulation deterioration.
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