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Using an artificial neural network to predict the residual stress induced by laser shock processing

机译:使用人工神经网络预测激光休克处理引起的残余应力

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摘要

With the purpose of using the artificial neural network (ANN) method to predict the residual stresses induced by laser shock processing (LSP), the Ni-Cr-Fe-based precipitation-hardening superalloy GH4169 was selected as the experimental material in this work, and the experimental samples were treated by LSP with laser power densities of 4.24GW/cm(2), 7.07GW/cm(2), and 9.90GW/cm(2) and overlap rates of 10%, 30%, and 50%. The depth-wise residual stresses of experimental samples prior to and after LSP were taken according to the x-ray diffraction sin(2)psi method and electrolytic-polished layer by layer. The ANN model for residual stress prediction was established, and the laser power density, overlap rate, and depth were set as input parameters, while residual stress was set as the output parameter. The residual stresses of untreated samples and those treated with laser power densities of 4.24GW/cm(2) and 9.90GW/cm(2) were selected as the training sets, and the data of experimental samples treated with a laser power density of 7.07GW/cm(2) were reserved as testing sets for validating the trained network. After LSP, beneficial stable compressive residual stresses were introduced in the material's near surface, and the overall maximum compressive residual stresses were formed on the top surface (surface residual stress). Depending on the LSP process parameters, the surface residual stresses ranged from 236 MPa to 799 MPa, and the compressive residual stress depths of all treated sampleswere over 0.50 mm. According to the results obtained by ANN, the coefficient of determination R-2 of the training sets is 0.9948, which shows a good fitness for the training network. The R-2 of the testing sets is 0.9931, which is less than that of the training sets but still shows high accuracy. This work proves that the ANN method can be applied to predict the residual stress of metallic materials by LSP treatment with high accuracy and provides a guiding value for the optimization of the LSP process. (C) 2021 Optical Society of America
机译:为了利用人工神经网络(ANN)方法预测激光冲击处理(LSP)引起的残余应力,本工作选择了Ni-Cr-Fe基沉淀硬化高温合金GH4169作为实验材料,对实验样品进行了激光功率密度为4.24GW/cm(2)、7.07GW/cm(2)的LSP处理,9.90GW/cm(2),重叠率分别为10%、30%和50%。根据x射线衍射sin(2)psi法和电解抛光逐层测量LSP前后实验样品的深度方向残余应力。建立了残余应力预测的神经网络模型,以激光功率密度、重叠率和深度为输入参数,以残余应力为输出参数。选择未处理样品和激光功率密度为4.24GW/cm(2)和9.90GW/cm(2)的样品的残余应力作为训练集,并保留激光功率密度为7.07GW/cm(2)的实验样品的数据作为测试集,以验证训练后的网络。LSP后,在材料的近表面引入了有益的稳定残余压应力,并在顶部表面形成了整体最大残余压应力(表面残余应力)。根据LSP工艺参数,表面残余应力范围为236 MPa至799 MPa,所有处理样品的压缩残余应力深度均超过0.50 mm。根据人工神经网络得到的结果,训练集的决定系数R-2为0.9948,这表明训练网络具有良好的适应性。测试集的R-2为0.9931,这比训练集的R-2小,但仍显示出较高的准确性。这项工作证明,人工神经网络方法可以高精度地预测LSP处理金属材料的残余应力,并为LSP工艺的优化提供了指导价值。(2021)美国光学学会

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  • 来源
    《Applied optics》 |2021年第11期|共8页
  • 作者单位

    Chinese Acad Sci Shenyang Inst Automat State Key Lab Robot Shenyang 110016 Peoples R China;

    Dalian Univ Technol Dalian 116024 Peoples R China;

    Chinese Acad Sci Shenyang Inst Automat State Key Lab Robot Shenyang 110016 Peoples R China;

    Univ Hull Kingston Upon Hull HU67RX N Humberside England;

    Chinese Acad Sci Shenyang Inst Automat State Key Lab Robot Shenyang 110016 Peoples R China;

    Chinese Acad Sci Shenyang Inst Automat State Key Lab Robot Shenyang 110016 Peoples R China;

    Chinese Acad Sci Shenyang Inst Automat State Key Lab Robot Shenyang 110016 Peoples R China;

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