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Optimization of steel casting feeding system based on BP neural network and genetic algorithm

机译:基于BP神经网络和遗传算法的铸钢上料系统优化。

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The trial-and-error method is widely used for the current optimization of the steel casting feeding system, which is highly random, subjective and thus inefficient. In the present work, both the theoretical and the experimental research on the modeling and optimization methods of the process are studied. An approximate alternative model is established based on the Back Propagation (BP) neural network and experimental design. The process parameters of the feeding system are taken as the input, the volumes of shrinkage cavities and porosities calculated by simulation are simultaneously taken as the output. Thus, a mathematical model is established by the BP neural network to combine the input variables with the output response. Then, this model is optimized by the nonlinear optimization function of the genetic algorithm. Finally, a feeding system optimization of a steel traveling wheel is conducted. No shrinkage cavities and porosities are induced through the optimization. Compared to the initial design scheme, the process yield is increased by 4.1% and the volume of the riser is decreased by 5.48?06 mm?
机译:试错法被广泛用于当前的钢铸件送料系统优化中,该方法高度随机,主观且效率低下。在目前的工作中,对过程的建模和优化方法进行了理论和实验研究。基于反向传播(BP)神经网络和实验设计,建立了近似的替代模型。进料系统的工艺参数作为输入,通过模拟计算得出的收缩腔和孔隙的体积同时作为输出。因此,通过BP神经网络建立了数学模型,以将输入变量与输出响应进行组合。然后,通过遗传算法的非线性优化函数对该模型进行优化。最后,对钢制行走轮的进给系统进行了优化。通过优化不会产生收缩孔和孔隙。与最初的设计方案相比,该工艺的产量提高了4.1%,提升管的体积减少了5.48?06 mm?。

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