Dynamic Exclusion of Low-Fidelity Data in Bayesian Optimization for Autonomous Beamline Alignment

Megha R. Narayanan, Thomas W. Morris
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Abstract

Aligning beamlines at synchrotron light sources is a high-dimensional, expensive-to-sample optimization problem, as beams are focused using a series of dynamic optical components. Bayesian Optimization is an efficient machine learning approach to finding global optima of beam quality, but the model can easily be impaired by faulty data points caused by the beam going off the edge of the sensor or by background noise. This study, conducted at the National Synchrotron Light Source II (NSLS-II) facility at Brookhaven National Laboratory (BNL), is an investigation of methods to identify untrustworthy readings of beam quality and discourage the optimization model from seeking out points likely to yield low-fidelity beams. The approaches explored include dynamic pruning using loss analysis of size and position models and a lengthscale-based genetic algorithm to determine which points to include in the model for optimal fit. Each method successfully classified high and low fidelity points. This research advances BNL's mission to tackle our nation's energy challenges by providing scientists at all beamlines with access to higher quality beams, and faster convergence to these optima for their experiments.
在贝叶斯优化中动态排除低保真数据,实现自主光束线对准
同步辐射光源的光束线对准是一个高维、取样昂贵的优化问题,因为光束是通过一系列动态光学元件聚焦的。贝叶斯优化法是一种高效的机器学习方法,可用于寻找光束质量的全局最优值,但由于光束偏离传感器边缘或背景噪声造成的错误数据点,该模型很容易受到影响。这项研究是在布鲁克海文国家实验室(BNL)的国家同步辐射光源 II(NSLS-II)设备上进行的,旨在研究如何识别不可信的光束质量读数,并阻止优化模型寻找可能产生低保真光束的外点。所探索的方法包括使用尺寸和位置模型的损失分析进行动态修剪,以及使用基于长度标度的遗传算法来确定将哪些点纳入模型以实现最佳拟合。每种方法都成功地对高保真和低保真点进行了分类。这项研究为所有光束线的科学家提供了更高质量的光束,并使他们在实验中更快地收敛到这些最佳值,从而推进了 BNL 应对国家能源挑战的使命。
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