透過您的圖書館登入
IP:3.21.34.0
  • 學位論文

基於強化型Morlet轉換、解調變頻譜、多尺度熵、多頻帶頻譜熵與決策樹之齒輪箱異常診斷系統

A Gearbox Fault Diagnosis System Base on Enhanced Morlet Transform, Demodulation Spectrum, Multiscale Entropy, Multiband Spectrum Entropy and Decision Tree

指導教授 : 吳順德
若您是本文的作者,可授權文章由華藝線上圖書館中協助推廣。

摘要


產業應用上,齒輪箱扮演著重要的角色;典型的齒輪異常,包含了:磨損、輪尺斷裂、動不平衡、缺乏潤滑等,嚴重的甚至會發生齒輪本身崩壞的情形。當齒輪出現故障,振動訊號可能被激發出異常的振動特性;因此,可藉由對振動訊號的分析,利用不同的訊號處理方法,達成齒輪箱的異常診斷。本論文提出一齒輪箱異常診斷系統,用以辨識齒輪箱的異常狀態情形。首先,使用解調變頻譜、影像熵、多尺度熵和多頻帶頻譜熵抽取出異常狀態之特徵;接著,利用抽取出之特徵建立一決策樹模型。本論文所使用的齒輪箱實驗資料來源,是工業技術研究院機械與系統研究所智慧系統技術組監控系統技術部所建置之齒輪箱實驗平台,並由作者親自進行所有的實驗以收集本論文所需之實驗資料。實驗結果顯示,訓練出的決策樹模型,對於測試使用的資料之異常診斷,具有高度的準確性。

並列摘要


Gearboxes play an important role in industrial applications. Typical faults of gears include pitting, chipping, imbalance, loss-of-lubrication and more seriously, crack. When a gear has a fault, the vibration signal may carry the signature of the fault in the gears. Therefore, fault detection of the gearbox is possible by analyzing the vibration signal by different signal processing algorithms. In this dissertation, we propose a gearbox fault diagnosis system to distinguish different fault types of the gearbox. Firstly, signatures of the gear faults were extracted by the demodulation spectrum, image entropy, multi-scale entropy (MSE) and multiband spectral entropy (MBSE). Secondly, these extracted signatures were used to build a decision tree (DT) based model. In our simulations, the vibration signal datasets of gearbox from Industrial Technology Research Institute (ITRI) are utilized. In experimental results, the trained DT models have shown high accuracy of fault detection and fault classification on the test set.

並列關鍵字

gearbox fault diagnosis system decision tree

參考文獻


[1] Z. Xu, J. Xuan, T. Shi, B. Wu, and Y. Wu, “A Novel Fault Diagnosis Method of Bearing Based on Improved Fuzzy ARTMAP and Modified Distance Discriminant Technique,” Expert System with Applications, vol. 36, pp. 11801-11807, 2009.
[3] L. Choen, “Time-frequency distributions-a review,” Proceeding of the IEEE, vol. 77, no. 7, 1989.
[4] H. Oehlmann, D. Brie, M. Tomczak and A. Richard, “A Method for Analysing Gearbox Faults Using Time-Frequency Representations,” Mechanical Systems and Signal Processing, vol. 11, pp. 529-545, 1997.
[5] W. J. Staszewski, K. Worden and G. R. Tomlinson, “Time-Frequency Analysis in Gearbox Fault Detection Using the Wigner-Ville Distribution and Pattern Recongnition,” Mechanical Systems and Signal Processing, vol. 11, pp. 673-692, 1997.
[6] D. Gabor, “Theory of Communications,” Journal of the Institution of Electrical Engineers, vol. 93, no. 4, pp. 429-457, 1946.

被引用紀錄


葉名洲(2014)。基於智慧電錶之日常生活監測系統〔碩士論文,國立臺北科技大學〕。華藝線上圖書館。https://doi.org/10.6841/NTUT.2014.00163
陳威利(2014)。基於智慧電錶之家電負載即時辨識系統〔碩士論文,國立臺北科技大學〕。華藝線上圖書館。https://www.airitilibrary.com/Article/Detail?DocID=U0006-0602201415335700

延伸閱讀