Combining dynamic neural networks and image sequences in a dynamic model for complex industrial production processes

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摘要

This paper describes how to build a quality prediction model for complex industrial production processes using dynamic neural networks. It is known that it is difficult to analyze the mechanisms of many complex industrial production processes and build models by employing classical methods. In this study, based on the image sequences obtained by using the computer-vision-detection-system, the features of image sequences are extracted, and a dynamic neural network model is built to predict and judge the product qualities. The neural network with recurrent architecture consists of two blocks and is controlled by a switch function. The performance evaluation shows that the proposed method achieves a prediction rate of 87.5% accurate, and provides evidence that the method is feasible, effective and promising in its future applications.

论文关键词:Dynamic natural network,Order derivatives,Image sequences,Geometric features of image

论文评审过程:Available online 20 January 1999.

论文官网地址:https://doi.org/10.1016/S0957-4174(98)00023-2