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Volume 34 Issue 2
May  2010
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Prediction of the pattern of electroless deposit after pulse laser heating via artificial neural network

  • Corresponding author: YAO Jian-hua, laser@zjut.edu.cn
  • Received Date: 2008-12-15
    Accepted Date: 2008-12-24
  • A model of the relationship between pulse-laser parameters and the pattern of electroless deposit composite coatings(taking into account hardened width,depth and melting state) with a back propagation neural network was constructed in order to explore the theoretical principles underlying pulse-laser reinforcement of plating coatings.The momentum-adaptive learning rate algorithm was selected to increase network stability,training speed and accuracy.The appearance of composite coating was effectively predicted with ±8.33% relative error.This method is a new way of exploring the theoretical principles of pulse-laser coating-reinforcement.
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Prediction of the pattern of electroless deposit after pulse laser heating via artificial neural network

    Corresponding author: YAO Jian-hua, laser@zjut.edu.cn
  • 1. MOE Key Laboratory of Mechanical Manufacture and Automation, Zhejiang University of Technology, Hangzhou 310014, China;
  • 2. Research Center of Laser Processing Technology and Engineering, Zhejiang University of Technology, Hangzhou 310014, China

Abstract: A model of the relationship between pulse-laser parameters and the pattern of electroless deposit composite coatings(taking into account hardened width,depth and melting state) with a back propagation neural network was constructed in order to explore the theoretical principles underlying pulse-laser reinforcement of plating coatings.The momentum-adaptive learning rate algorithm was selected to increase network stability,training speed and accuracy.The appearance of composite coating was effectively predicted with ±8.33% relative error.This method is a new way of exploring the theoretical principles of pulse-laser coating-reinforcement.

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