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Genetic Programming for Modeling Vibratory Finishing Process: Role of Experimental Designs and Fitness Functions

机译:用于建模振动整理过程的遗传编程:实验设计和健身功能的作用

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Manufacturers seek to improve efficiency of vibratory finishing process while meeting increasingly stringent cost and product requirements. To serve this purpose, mathematical models have been formulated using soft computing methods such as artificial neural network and genetic programming (GP). Among these methods, GP evolves model structure and its coefficients automatically. There is extensive literature on ways to improve the performance of GP but less attention has been paid to the selection of appropriate experimental designs and fitness functions. The evolution of fitter models depends on the experimental design used to sample the problem (system) domain, as well as on the appropriate fitness function used for improving the evolutionary search. This paper presents quantitative analysis of two experimental designs and four fitness functions used in GP for the modeling of vibratory finishing process. The results conclude that fitness function SRM and PRESS evolves GP models of higher generalization ability, which may then be deployed by experts for optimization of the finishing process.
机译:制造商寻求提高振动整理过程的效率,同时满足日益严格的成本和产品要求。为了满足此目的,已经使用诸如人工神经网络和遗传编程(GP)的软计算方法制定了数学模型。在这些方法中,GP自动演变模型结构及其系数。在提高GP的性能方面有广泛的文献,但较少关注的是选择适当的实验设计和健身功能。 Fitter模型的演变取决于用于对问题(系统)域进行采样的实验设计,以及用于改善进化搜索的适当的健身功能。本文介绍了对GP中使用的两种实验设计和四种健身功能的定量分析,用于振动整理过程的建模。结果得出结论,健身功能SRM和压力演进了GP模型的较高概括能力,然后可以由专家部署,以优化整理过程。

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