:::

詳目顯示

回上一頁
題名:Effective Pattern Recognition of Control Charts Using A Dynamically Trained Learning Vector Quantization Network
書刊名:工業工程學刊
作者:顧瑞祥 引用關係薛友仁 引用關係
作者(外文):Guh, Ruey-shiangShiue, Yeou-ren
出版日期:2008
卷期:25:1
頁次:頁73-89
主題關鍵詞:Static artificial neural networkPattern recognitionControl chartStatistical process controlLearning vector quantization靜態類神經網路形狀辨識管制圖統計製程管制學習向量量化網路
原始連結:連回原系統網址new window
相關次數:
  • 被引用次數被引用次數:期刊(0) 博士論文(0) 專書(0) 專書論文(0)
  • 排除自我引用排除自我引用:0
  • 共同引用共同引用:3
  • 點閱點閱:59
特定的管制圖異常形狀通常與特定的製程異常原因有關,因此,即時有效地偵測及分辨管制圖中出現的異常形狀,可幫助品管人員快速找到造成製程異常的原因,從而降低不良品發生的機率。近年來,有很多研究利用類神經網路線上即時辨識管制圖的異常形狀,然而,如何在即時辨識的條件下,精確地分辨異常形狀的形狀類別,是這一類研究常有的共同問題。這個問題來自於此領域絕大部份的研究皆採用靜態(static)監督式類神經網路作為辨識管制圖的工具,如倒傳遞網路(back propagation network, BPN)或學習向量量化(learning vector quantization, LVQ)網路,但在即時辨識的環境中,管制圖的形狀事實上是一種動態(dynamic)的時間序列(time series),因此,問題的根本原因在於靜態類神經網路無法有效地辨識動態的管制圖形狀,然而訓練動態類神經網路(如Niocognitron)執行辨識任務是相當複雜且困難的。有鑑於此,本研究提出一個動態訓練法則,以提昇LVQ網路即時辨識管制圖異常形狀之績效。模擬結果顯示經過動態訓練之LVQ網路,在辨識管制圖異常形狀的精度與速度上,均優於此領域文獻中所提出的類神經網路辨識模式。雖然本研究是以提昇LVQ網路之辨識績效為主要的研究目的,本文所提出的動態訓練法則也可以應用在其他的類神經網路架構上,如自適應共振理論(adaptive resonance theory, ART)網路。
Unnatural control chart patterns (CCPs) are associated with a particular set of assignable causes for process variation. Hence, effectively recognizing CCPs can substantially narrow down the set of possible causes to be examined, and accelerate the diagnostic search. Recently, machine-learning techniques, especially the artificial neural network (ANN), have been widely used as an effective tool for CCP recognition (CCPR) tasks. Most ANN applications in CCPR have been using static supervised ANNs, such as back propagation networks (BPNs) and learning vector quantization (LVQ) networks. The false recognition problem (i.e. the patterns are misclassified) commonly encountered for these ANN-based CCPR models is mainly due to the fact that the static ANNs cannot appropriately deal with dynamic patterns, such as CCPs. In this research, a dynamic training algorithm is designed to provide an LVQ network-based CCPR model the capability to on-line recognize the dynamic CCPs that vary over time. The numerical results using simulation show that the dynamically trained LVQ network-based model proposed in this research performs much better than other ANN-based models reported in literature with respective to recognition accuracy and speed. Although this research considers the specific application of a real-time CCPR model based on an LVQ network, the proposed dynamic training algorithm could be applied to CCPR systems based on other ANN architectures in general.
期刊論文
1.Wang, T. Y.、Chen, L. H.(2002)。Mean shifts detection and classification in multivariate process: a neural-fuzzy approach。Journal of Intelligent Manufacturing,13(3),211-221。  new window
2.Swift, J. A.、Mize, J. H.(1995)。Out-of-control Pattern Recognition and Analysis for Quality Control Charts Using Lisp-based Systems。Computers and Industrial Engineering,28,81-91。  new window
3.Cheng, C.-S(1997)。A neural network approach for the analysis of control chart patterns。International Journal of Production Research,35(3),667-697。  new window
4.Guh, R. S.、Tannock, J. D. T.(1999)。Recognition of control chart concurrent patterns using a neural network approach。International Journal of Production Research,37(8),1743-1765。  new window
5.Hassan, A.、Baksh, M. S. N.、Shaharoun, A. M.、Jamaluddin, H.(2003)。Improved SPC chart pattern recognition using statistical features。International Journal of Production Research,41(7),1587-1603。  new window
6.Waibel, A.、Hanazawa, T.、Hinton, G.、Shikano, K.、Lang, K. J.(1989)。Phoneme Recognition Using Time-delay Neural Networks。IEEE Transactions on Acoustic, Speech and Signal Processing,37,328-339。  new window
7.Gan, F. F.(1992)。CUSUM Control Charts under Linear Drift。The Statistician,41,71-84。  new window
8.曾慶安、鄭春生(1994)。偵測製程平均值及變異數變化之類神經網路。工業工程學刊,11(2),67-75。new window  延伸查詢new window
9.Guh, R. S.、Zorriassatine, F.、Tannock, J. D. T.、O'Brien, C.(1999)。On-line control chart pattern detection and discrimination--A neural network approach。Artificial Intelligence in Engineering,13,413-425。  new window
10.Nelson, L. S.(1985)。Interpreting Shewhart X-bar Control Charts。Journal of Quality Technology,17,114-116。  new window
11.Pham, D. T.、Oztemel, E.(1994)。Control chart pattern recognition using learning vector quantization networks。International Journal of Production Research,32,721-729。  new window
12.Lucas, J. M.(1982)。Combined Shewhart-CUSUM quality control schemes。Journal of Quality Technology,14(2),51-59。  new window
13.Kohonen, T.(1988)。An introduction to neural computing。Neural Networks,1(1),3-16。  new window
14.楊銘賢、邱志洲(2001)。利用類神經網路在相關性製程中參數平移量之辨識。工業工程學刊,18(3),86-94。  延伸查詢new window
15.顧瑞祥(2002)。製程數據的非常態性對以類神經網路辨識管制圖異常之影響。工業工程學刊,19(6),13-22。new window  延伸查詢new window
16.Pearlmutter, B. A.(1989)。Learning State Space Trajectories in Recurrent Neural Networks。Neural Computation,1,263-269。  new window
17.Specht, D. F.(1990)。Probabilistic Neural Networks。Neural Networks,3,109-118。  new window
18.Fukushima, K.、Miyake, S.(1983)。Neocognitron: A Neural Network Model for a Mechanism of Visual Pattern Recognition。IEEE Transaction on Systems, Man, and Cybernetics,13,826-834。  new window
19.Nelson, L. S.(1984)。The Shewhart Control Chart-Tests for Special Causes。Journal of Quality Technology,16(4),237-239。  new window
20.Noorossana, R.、Farrokhi, M.、Saghaei, A.(2003)。Using Neural Networks to Detect and Classify Out-of-control Signals in Autocorrelated Processes。Quality and Reliability Engineering International,19,493-504。  new window
21.Davis, R. B.、Woodall, W. H.(1988)。Performance of the Control Chart Trend Rule under Linear Shift。Journal of Quality Technology,20,260-262。  new window
22.Vuckovic, A.、Radivojevic, V.、Chen, A. C. N.、Popovic, D.(2002)。Automatic Recognition of Alertness and Drowsiness from EEG by an Artificial Neural Network。Medical Engineering and Physics,24,349-360。  new window
23.Dieterle, F.、Muller-Hagedorn, S.、Liebich, H. M.、Gauglitz, G.(2003)。Urinary Nucleosides as Potential Tumor Markers Evaluated by Learning Vector Quantization。Artificial Intelligence in Medicine,28,265-279。  new window
24.Yang, M. S.、Yang, J. H.(2002)。A Fuzzy-soft Learning Vector Quantization for Control Chart Pattern Recognition。International Journal of Production Research,40,2721-2731。  new window
25.Hwarng, H. B.(2005)。Simultaneous Identification of Mean Shift and Correlation Change in AR(1) Processes。International Journal of Production Research,43,1761-11783。  new window
26.Guh, R. S.(2005)。A Hybrid Learning-based Model for On-line Detection and Analysis of Control Chart Patterns。Computers & Industrial Engineering,49(1),35-62。  new window
27.Gardner, J. W.、Shin, H. W.、Hines, E. L.、Dow, C. S.(2000)。An Electronic Nose System for Monitoring the Quality of Potable Water。Sensors and Actuators B,69,336-341。  new window
28.Zorriassatine, F.、Guh, R. S.、Parkin, R. M.、Coy, J.(2004)。Integrating Novelty Detection, Neural Networks and Conventional Tools for Pattern Recognition in Multivariate Processes。Journal of Engineering Manufacture, Proceedings of the Institute of Mechanical Engineers, Part B,218,779-793。  new window
29.Zhang, Z. P.、Chen, H. G.、Ye, S. W.、Zhao, J. W.(1996)。Comparison of the BP Training Algorithm and LVQ Neural Networks for e, μ, π Identification。Nuclear Instruments and Methods in Physics Research A,379,271-275。  new window
30.Shaffer, R. E.、Rose-Pehrsson, S. L.、McGill, R. A.(1999)。A Comparison Study of Chemical Sensor Array Pattern Recognition Algorithms。Analytica Chimica Acta,384,305-317。  new window
會議論文
1.Desieno, D.(1988)。Adding a Conscience to Competitive Learning。San Diego, CA。117-124。  new window
2.Kohonen, T.、Barna, G.、Chrisley, R.(1988)。Statistical Pattern Recognition with Neural Networks: Benchmarking Studies。San Diego, CA。61-68。  new window
3.Lucy-Bouler, T. L.(1993)。Application to Forecasting of Neural Network Recognition of Shifts and Trends in Quality Control Data。Portland, UK。631-633。  new window
學位論文
1.Lucy-Bouler, T.L.(1991)。Using Autocorrelations, CUSUMs and Runs Rules for Control Chart Pattern Recognition: An Expert System Approach,Alabama,USA。  new window
圖書
1.Law, A. M.、Kelton, W. D.(1982)。Simulation Modelling and Analysis。New York, NY:McGraw-Hill。  new window
2.Grant, L. E.、Leavenworth, R. S.、Grant, E. L.(1996)。Statistical Quality Control。New York, NY:McGraw-Hill。  new window
3.Duncan, A. J.(1986)。Quality Control and Industrial Statistics。Homewood, Illinois:Richard D. Irown Inc.。  new window
4.Western Electric Company(1958)。Statistical Quality Control Handbook。Western Electric Company。  new window
5.Medsker, L. R.(1995)。Hybrid Intelligent Systems。Boston, MA:Kluwer Academic Publishers。  new window
6.Kohonen, T.(1995)。Self Organization Maps。Self Organization Maps。Heidelberg, Germany。  new window
圖書論文
1.Rumelhart, D. E.、Hinton, G. E.、Williams, R. J.(1986)。Learning Internal Representations by Error Propagation。Parallel distributed processing: Explorations in microstructure of cognition, Vol. 1: Foundations。Cambridge, MA:MIT Press。  new window
 
 
 
 
第一頁 上一頁 下一頁 最後一頁 top