首页> 外文期刊>Computers & mathematics with applications >Overlapping radial basis function interpolants for spectrally accurate approximation of functions of eigenvalues with application to buckling of composite plates
【24h】

Overlapping radial basis function interpolants for spectrally accurate approximation of functions of eigenvalues with application to buckling of composite plates

机译:重叠的径向基函数插值用于特征值的谱精确逼近,并应用于复合板屈曲

获取原文
获取原文并翻译 | 示例
           

摘要

Many physical simulations involve eigenvalue computations: natural frequencies, stability, ...Engineering optimization requires many evaluations of such eigenvalues leading to excessive computational times, especially for global optimization techniques. Accurate approximations of eigenvalues with respect to optimization variables that often are natural parameters of the physical systems are then required to alleviate the computational burden. Dependence of the critical eigenvalue with respect to these natural parameters is often complex; part of the reason is that the critical eigenvalue is the minimum of several eigenvalues, resulting in a loss of differentiability for physical parameters where the critical eigenvalue becomes multiple. This discontinuous derivative prevents from accurate approximation whenever the approximation model is smooth such as most of the standard approximation techniques (kriging, artificial neural network,...). In this work, we present an original strategy that takes into account this discontinuous behavior by dividing the input space through the clustering of the gradient space. Radial basis interpolants are then constructed over each region and a patch region is defined that encompasses the non dif-ferentiable region. This allows us to retrieve over the whole domain of definition excellent convergence rates and numerical experiments over realistic numerical simulation show that it is possible to achieve spectrally accurate approximations.
机译:许多物理模拟都涉及特征值计算:固有频率,稳定性等。工程优化需要对这些特征值进行许多评估,从而导致计算时间过长,尤其是对于全局优化技术而言。然后需要特征值相对于优化变量的精确近似,该优化变量通常是物理系统的自然参数,以减轻计算负担。关键特征值对这些自然参数的依赖性通常很复杂。部分原因是临界特征值是多个特征值中的最小值,导致临界特征值变为多个时物理参数的可微性损失。每当近似模型是平滑的时,例如大多数标准近似技术(kriging,人工神经网络等),这种不连续的导数都会阻止精确近似。在这项工作中,我们提出了一种原始策略,该策略通过将输入空间除以梯度空间的聚类来考虑这种不连续行为。然后在每个区域上构造径向基插值,并定义一个覆盖不可微分区域的面片区域。这使我们能够在定义的整个范围内获得出色的收敛速度,并且相对于实际数值模拟的数值实验表明,有可能实现频谱精确的近似。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号