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Main Authors: Robb, David A., Risbridger, Donald, Mills, Ben, Rakhmatulin, Ildar, Kong, Xianwen, Erden, Mustafa, Esser, M. J. Daniel, Carter, Richard M., Chantler, Mike J.
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.11090
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author Robb, David A.
Risbridger, Donald
Mills, Ben
Rakhmatulin, Ildar
Kong, Xianwen
Erden, Mustafa
Esser, M. J. Daniel
Carter, Richard M.
Chantler, Mike J.
author_facet Robb, David A.
Risbridger, Donald
Mills, Ben
Rakhmatulin, Ildar
Kong, Xianwen
Erden, Mustafa
Esser, M. J. Daniel
Carter, Richard M.
Chantler, Mike J.
contents The alignment of optical systems is a critical step in their manufacture. Alignment normally requires considerable knowledge and expertise of skilled operators. The automation of such processes has several potential advantages, but requires additional resource and upfront costs. Through a case study of a simple two mirror system we identify and examine three different automation approaches. They are: artificial neural networks; practice-led, which mimics manual alignment practices; and design-led, modelling from first principles. We find that these approaches make use of three different types of knowledge 1) basic system knowledge (of controls, measurements and goals); 2) behavioural skills and expertise, and 3) fundamental system design knowledge. We demonstrate that the different automation approaches vary significantly in human resources, and measurement sampling budgets. This will have implications for practitioners and management considering the automation of such tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2409_11090
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Three Approaches to the Automation of Laser System Alignment and Their Resource Implications: A Case Study
Robb, David A.
Risbridger, Donald
Mills, Ben
Rakhmatulin, Ildar
Kong, Xianwen
Erden, Mustafa
Esser, M. J. Daniel
Carter, Richard M.
Chantler, Mike J.
Systems and Control
Machine Learning
Robotics
The alignment of optical systems is a critical step in their manufacture. Alignment normally requires considerable knowledge and expertise of skilled operators. The automation of such processes has several potential advantages, but requires additional resource and upfront costs. Through a case study of a simple two mirror system we identify and examine three different automation approaches. They are: artificial neural networks; practice-led, which mimics manual alignment practices; and design-led, modelling from first principles. We find that these approaches make use of three different types of knowledge 1) basic system knowledge (of controls, measurements and goals); 2) behavioural skills and expertise, and 3) fundamental system design knowledge. We demonstrate that the different automation approaches vary significantly in human resources, and measurement sampling budgets. This will have implications for practitioners and management considering the automation of such tasks.
title Three Approaches to the Automation of Laser System Alignment and Their Resource Implications: A Case Study
topic Systems and Control
Machine Learning
Robotics
url https://arxiv.org/abs/2409.11090