首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part D: Journal of Automobile Engineering >Optimizing the shape parameters of radial basis functions: an application to automobile crashworthiness
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Optimizing the shape parameters of radial basis functions: an application to automobile crashworthiness

机译:优化径向基函数的形状参数:在汽车耐撞性中的应用

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摘要

Radial basis functions (RBFs) are approximate mathematical models that can mimic the behaviour of rapidly changing and computationally expensive simulations, such as finite element simulations for predicting automobile crash responses. The most popular way of selecting optimal RBF shape parameters is based on minimizing the global cross-validation error (CVE). Solving this optimization problem may lead to the construction of globally accurate RBF models, but the shape parameters are assumed to be constant over the entire design space. On the other hand, having flexible shape parameters that can change over the design space may allow the local behaviour to be captured better, thereby improving the accuracy. Thus, optimizing the RBF shape parameters based on minimization of the pointwise CVE rather than the global CVE is proposed in this paper. Three benchmark mathematical functions followed by an automobile crash problem are used to evaluate the effectiveness of the proposed method. It is found that the RBF models based on the minimum pointwise CVE outperform the RBF models based on the minimum global CVE.
机译:径向基函数(RBF)是近似的数学模型,可以模仿快速变化且计算昂贵的仿真的行为,例如用于预测汽车碰撞响应的有限元仿真。选择最佳RBF形状参数的最流行方法是基于最小化全局交叉验证误差(CVE)。解决此优化问题可能会导致构建全局精确的RBF模型,但假定形状参数在整个设计空间中是恒定的。另一方面,具有可以在设计空间上改变的灵活形状参数可以更好地捕获局部行为,从而提高准确性。因此,本文提出了基于点状CVE而不是全局CVE的最小化来优化RBF形状参数。使用三个基准数学函数以及一个汽车碰撞问题来评估该方法的有效性。发现基于最小点向CVE的RBF模型优于基于最小全局CVE的RBF模型。

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