基于GABP优化算法的压铸件质量预测研究

Research on quality prediction of die-cast components based on GABP optimized algorithm

  • 摘要: 针对压铸系统缺乏实时质量反馈导致废品剔除滞后的问题,以电机外水套压铸系统为研究对象,提出一种基于遗传算法优化反向传播神经网络(genetic algorithm back propagation, GABP)的铸件质量预测方法。通过分析模具温度控制机理,利用模温机进油口温度参数间接表征模具温度变化趋势,并结合三阶傅里叶级数对温度数据进行曲线拟合,表征了一个压铸周期内温度参数的动态变化特征。基于构建的三阶傅里叶级数温度样本数据,训练GABP神经网络模型,构建了压铸件质量预测模型,并通过遗传算法对反向传播神经网络的权值与阈值进行优化,同时将铸件质量预测结果嵌入到压铸系统数字孪生模型,依此对压铸件的铸件质量进行实时监测和反馈。

     

    Abstract: In order to solve the problem of lag in rejection caused by the lack of real-time quality feedback of the die-casting system, a casting quality prediction method based on genetic algorithm back propagation (GABP) neural network was proposed, taking the die-casting system of the outer water jacket of the motor as the research object. By analyzing the mold temperature control mechanism, the input temperature parameter of mold-temperature controlling device was used to indirectly characterize the mold temperature change trend, and the temperature data was fitted with the curve combined with the third-order Fourier series to characterize the dynamic change characteristics of the temperature parameters of the die-casting cycle. Based on the third-order Fourier series temperature sample data, the GABP neural network model was used for training, the quality prediction model of die castings was constructed, and the weights and thresholds of the backpropagation neural network were optimized by genetic algorithm, and the casting quality prediction results were embedded into the digital twin model of the die-casting system, so as to realize the real-time monitoring and feedback of the quality of die castings.

     

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