首页> 外文会议>Conference on advances in x-ray optics >Global optimization and relectivity data fitting for X-ray multilayer mirrors by means of genetic algorithms
【24h】

Global optimization and relectivity data fitting for X-ray multilayer mirrors by means of genetic algorithms

机译:通过遗传算法实现X射线多层镜的全局优化和无密切数据

获取原文

摘要

The x-ray reflectivity of a multilayer is a non-linear function of many parameters (materials, layer thicknesses, densities, roughnesses). Non-linear fitting of experimental data with simulatins requires to use initial values sufficiently close to the optimum value. This is a difficult task when the space topology of the variables is highly structured, as in our case. The application of global optimization methods to fit multilayer reflectivity data is presented. Genetic algorithms are sotchastic methods based on the model of natural evolution: the improvement of a population along successive generations. A complete set of initial parameters constitutes an individual. The population is a collection of individuals. Each generation is built from the parent generation by applying some operators (e.g. selection, crossover, mutation) on the members of the parent generation. The pressure of selection drives the population to include "good" individuals. For large number of generations, the best individuals will approximate the optimum parameters. Some results on fitting experimental hard x-ray reflectivity data for Ni/C multilaters recorded at the ESRF BM5 are presented. This method could be also applied to the help in the design of multilayers optimized for a target applications, like for an astronomical grazing-incidence hard X-ray telescopes.
机译:多层的X射线反射率是许多参数(材料,层厚度,密度,粗糙度)的非线性函数。使用Simulatins的实验数据的非线性拟合需要使用足够接近最佳值的初始值。当变量的空间拓扑结构高度结构,如我们的情况,这是一项艰巨的任务。介绍了全局优化方法拟合多层反射数据的应用。基于自然演化模型的遗传算法是基于自然演进模型的系统:沿着连续几代人口的改善。一组完整的初始参数构成个人。人口是个人的集合。通过在父生成成员上应用一些运算符(例如,选择,交叉,突变),从父生成构建。选择压力驱动人口以包括“良好”个体。对于大量代,最好的个人将近似最佳参数。提出了一些关于在ESRF BM5上记录的NI / C多层的拟合实验硬X射线反射率数据的结果。该方法也可以应用于针对目标应用优化的多层设计的帮助,类似于天文放牧发生硬X射线望远镜。

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