Faculty of Electrical and Computer Engineering, Babol University of Technology, Babol 4213743556, Iran.
ISA Trans. 2010 Jul;49(3):387-93. doi: 10.1016/j.isatra.2010.03.007. Epub 2010 Apr 18.
Automatic recognition of abnormal patterns in control charts has seen increasing demands nowadays in manufacturing processes. This study investigates the design of an accurate system for control chart pattern (CCP) recognition from two aspects. First, an efficient system is introduced that includes two main modules: the feature extraction module and the classifier module. The feature extraction module uses the entropies of the wavelet packets. These are applied for the first time in this area. In the classifier module several neural networks, such as the multilayer perceptron and radial basis function, are investigated. Using an experimental study, we choose the best classifier in order to recognize the CCPs. Second, we propose a hybrid heuristic recognition system based on particle swarm optimization to improve the generalization performance of the classifier. The results obtained clearly confirm that further improvements in terms of recognition accuracy can be achieved by the proposed recognition system.
如今,制造业过程中对控制图异常模式的自动识别需求日益增加。本研究从两个方面探讨了控制图模式(CCP)识别的精确系统设计。首先,引入了一个高效的系统,该系统包括两个主要模块:特征提取模块和分类器模块。特征提取模块使用小波包的熵。这在该领域尚属首次应用。在分类器模块中,研究了几种神经网络,如多层感知器和径向基函数。通过实验研究,我们选择了最佳的分类器,以便识别 CCP。其次,我们提出了一种基于粒子群优化的混合启发式识别系统,以提高分类器的泛化性能。得到的结果清楚地证实,所提出的识别系统可以进一步提高识别精度。