基于自适应反向传播人工神经网络和高效特征的控制图模式识别

J. Addeh, A. Ebrahimzadeh, V. Ranaee
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引用次数: 15

摘要

控制图模式是重要的统计过程控制工具,用于确定过程是在预期模式下运行,还是在非自然模式下运行。控制图模式的准确识别对于有效的系统监控以保持高质量的产品至关重要。本文介绍了一种由两大决策层组成的新型混合智能系统。第一层利用统计特征和神经网络将模式分成三组。在第二层,在每一组中,使用形状特征和神经网络进行识别。其中一个特性在这个领域是新颖的。在神经网络学习中,训练算法因参数变化而产生的无差异对算法的继承性有着重要的影响。因此,自适应反向传播算法被用于神经网络的训练。仿真结果表明,该系统具有较高的识别精度。
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Control chart pattern recognition using adaptive back-propagation artificial Neural networks and efficient features
Control chart patterns are important statistical process control tools for determining whether a process is running in its intended mode or in the presence of unnatural patterns. Accurate recognition of control chart patterns is essential for efficient system monitoring to maintain high-quality products. This paper introduces a novel hybrid intelligent system that composed of two major decision layers. The patterns divided into three binary groups using Statistical feature and Neural networks in the first layer. In the second layer, in each of groups, recognition is done using shape features and Neural networks. One of these features is novel in this area. In learning of neural networks, indifference of training algorithm due to parameter change has an important role in succession of an algorithm. Therefore adaptive back-propagation algorithm is applied for training of neural networks. Simulation results show that the proposed system has high recognition accuracy.
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