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Volume 31 Issue 5
May  2010
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Quality prediction of laser cladding layer based on improved neural network

  • Corresponding author: ZHOU Jian-zhong, zhoujz@ujs.edu.cn
  • Received Date: 2006-07-26
    Accepted Date: 2006-09-06
  • Artificial neural networks were introduced in the area of laser cladding forming.The prediction model of surface quality in laser cladding parts,including the width,depth of cladding layer and dilution,was proposed based on the improved learned arithmetic.The model combined the global optimization searching performance of the genetic algorithm and the localization of the back propagation(BP) neural networks.Five technical parameters were selected to test the reliability of the model.The simulation and experimental results show that the evolutionary neural network based on genetic algorithm can effectively overcome the problem of falling into local minimum point.This method can get higher accuracy of prediction.It improves the measurement precision with the maximum relative error 2.14% between the predicted content and the real value.
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  • [1]

    LIU X M,GUAN Z Z.The relationship between the process parameter of laser cladding by powder feeding method and the laser layer parameters[J].Transactions of Metal Heat Treatment,1998,A26(5):29~34.
    [2]

    van ACKER K,VANHOYWEGHEN D,PERSOONS R et al.Influence of tungsten carbide particle size and distribution on the wear resistance of laser clad WC/Ni coatings[J].Wear,2005,258(1~4):194~202.
    [3]

    SONG J L,DENG Q L,CHEN Ch Y et al.Rebuilding of metal components with laser cladding forming[J].Applied Surface Science,2006,252(22):7934~7940.
    [4]

    WU X W,ZHU B D,ZENG X Y et al.Critical state of laser cladding with power auto-feeding[J].Surface and Coatings Technology,1996,79(1~3):200~204.
    [5]

    JI S Q,LI P,ZENG X Y.Microstructure and mechanical property analyses of the metal parts direct fabricated by laser cladding[J].Laser Technology,2006,30(2):130~133(in Chinese).
    [6]

    YAN P F,ZHANG C S.Artificial neural network and simulated evolutionary computing[M].Beijing:Tsinghua University Press,2000.15~22(in Chinese).
    [7]

    LEI Y J,ZHANG S W,LI X W et al.MATLAB genetic algorithm toolbox and application[M].Xi ' an:University of Electronic Science and Technology of China Press,2005.15~33(in Chinese).
    [8]

    STEEN W M,WEERASINGHE V M,MONSON P.Some aspects of the formation of laser clad tracks[J].SPIE,1996,650:226~234.
    [9]

    LIU J C,LIU L J.Experimental study on fabrication of thin-wall metallic features by laser cladding[J].Chinese Journal of Mechanical Engineering,2004,40(10):185~188(in Chinese).
    [10]

    ZHU B D,ZENG X Y,TAO C Y et al.Effect of laser processing parameters on dilution of the cladded coating[J].Chinese Journal of Materials Research,1994,8(4):315~319(in Chinese).
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Quality prediction of laser cladding layer based on improved neural network

    Corresponding author: ZHOU Jian-zhong, zhoujz@ujs.edu.cn
  • 1. School of Mechanical Engineering, Jiangsu University, Zhenjiang 212013, China

Abstract: Artificial neural networks were introduced in the area of laser cladding forming.The prediction model of surface quality in laser cladding parts,including the width,depth of cladding layer and dilution,was proposed based on the improved learned arithmetic.The model combined the global optimization searching performance of the genetic algorithm and the localization of the back propagation(BP) neural networks.Five technical parameters were selected to test the reliability of the model.The simulation and experimental results show that the evolutionary neural network based on genetic algorithm can effectively overcome the problem of falling into local minimum point.This method can get higher accuracy of prediction.It improves the measurement precision with the maximum relative error 2.14% between the predicted content and the real value.

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