基于差分进化算法的x射线源设计优化——一个案例研究。

Weizhong Yan, Ye Bai, Rui Xu, V. Neculaes
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引用次数: 1

摘要

今天用于多种应用的传统x射线源,如医学成像(计算机断层扫描、放射照相、乳房x线摄影和介入放射学)或工业检查,是基于真空的电子束设备,包括几个关键组件,如电子发射器、电子枪/阴极和阳极/靶。电子束产生、聚焦和控制以及电子束加速的相关电子设备位于真空室之外。这些管的一般拓扑结构在方向上已经改变了100多年;然而,管道设计仍然是一个漫长、低效、繁琐和复杂的过程;盲目设计实验并不一定会使过程更有效率。本文以x射线源光束光学系统为例,介绍了一种基于人工智能的优化算法——差分进化算法。通过一个小规模的设计问题,我们证明了DE可以是x射线源光束光学设计的有效优化方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
X-ray source design optimization using differential evolution algorithms-A case study.
Traditional x-ray sources used today for multiple applications, such as medical imaging (computed tomography, radiography, mammography, and interventional radiology) or industrial inspection, are vacuum based electron beam devices that include several key components, such as electron emitters, electron guns/cathodes, and anodes/targets. The associated electronics for electron beam generation, focusing and control, and beam acceleration are located outside the vacuum chamber. The general topology of these tubes has been directionally unchanged for more than 100 years; however, tube design remains a long, inefficient, tedious, and complex process; blind design of experiments do not necessarily make the process more efficient. As a case study, in this paper, we introduce the differential evolution (DE), an artificial intelligence-based optimization algorithm, for the design optimization of x-ray source beam optics. Using a small-scale design problem, we demonstrate that DE can be an effective optimization method for x-ray source beam optics design.
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