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Development of a parsimonious GA-NN ensemble model with a case study for Charpy impact energy prediction

机译:基于夏比冲击能量预测的案例研究简化的GA-NN集成模型的开发

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摘要

A parsimonious genetic algorithm guided neural network ensemble modelling strategy is presented. Each neural network candidate model to participate in the ensemble model is structurally selected using a genetic algorithm. This provides an effective route to improve the performance of the individual neural network models as compared to more traditional neural network modelling approaches, whereby the neural network structure is selected through some trial-and-error methods or heuristics. The parsimonious neural network ensemble modelling strategy developed in this paper is highly efficient and requires very little extra computation for developing the ensemble model, thus overcoming one of the major known obstacles for developing an ensemble model. The key techniques behind the implementation of the ensemble model, include the formulation of the fitness function, the generation of the qualified neural network candidate models, as well as the specific definitions of the assemble strategies. A case study is presented which exploits a complex industrial data set relating to the Charpy impact energy for heat-treated steels, which was provided by Tata Steel Europe. Modelling results show a significant performance improvement over the previously developed models for the same data set
机译:提出了一种基于简约遗传算法的神经网络集成建模策略。使用遗传算法在结构上选择参与集成模型的每个神经网络候选模型。与更传统的神经网络建模方法相比,这提供了一条有效的途径来提高单个神经网络模型的性能,从而通过某些反复试验方法或启发式方法来选择神经网络结构。本文开发的简约神经网络集成建模策略非常高效,开发集成模型需要很少的额外计算,因此克服了开发集成模型的主要障碍之一。集成模型实现背后的关键技术包括适应度函数的公式化,合格的神经网络候选模型的生成以及组装策略的特定定义。塔塔钢铁欧洲公司提供了一个案例研究,该案例利用了与热处理钢的夏比冲击能相关的复杂工业数据集。建模结果表明,与以前开发的相同数据集模型相比,性能有了显着提高

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  • 来源
    《Advances in Engineering Software》 |2011年第7期|p.435-443|共9页
  • 作者单位

    Institute for Microstructural and Mechanical Process Engineering: The University of Sheffield (IMMPETUS), Department of Automatic Control and Systems Engineering,The University of Sheffield, Mappin Street, Sheffield SI 3JD, UK;

    Institute for Microstructural and Mechanical Process Engineering: The University of Sheffield (IMMPETUS), Department of Automatic Control and Systems Engineering,The University of Sheffield, Mappin Street, Sheffield SI 3JD, UK;

    Institute for Microstructural and Mechanical Process Engineering: The University of Sheffield (IMMPETUS), Department of Automatic Control and Systems Engineering,The University of Sheffield, Mappin Street, Sheffield SI 3JD, UK;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    neural networks; genetic algorithms; ensemble modelling; charpy impact energy; heat-treated steel; model structure optimisation;

    机译:神经网络;遗传算法;集成建模;夏比冲击能;热处理钢;模型结构优化;

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