Dynamic Exclusion of Low-Fidelity Data in Bayesian Optimization for Autonomous Beamline Alignment
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...
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Main Authors | , |
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Format | Journal Article |
Language | English |
Published |
12.08.2024
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Subjects | |
Online Access | Get full text |
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Summary: | 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. |
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DOI: | 10.48550/arxiv.2408.06540 |