Paper 14110-27
A methodology to automate precision optical alignment using sensitivity-aware optimization
16 April 2026 • 14:20 - 14:40 CEST | Madrid 1/Salon 3 (Niveau/Level 0)
Abstract
In optical and laser systems, accurate optical alignment is critical, as sub-micron positioning errors can lead to beam degradation, reduced throughput, and unstable system behaviour. Therefore, in this study, we introduce a generalised combined machine learning and optimisation approach that (a) models how alignment adjustments influence optical propagation and (b) computes real-time correction commands. The model is trained on simulated alignment data and then adapted to variations in the optical configuration using transfer learning. This approach reduces the need for full retraining after any configuration changes. A sensitivity analysis identifies the most influential actuators, enabling the system to reduce correction dimensionality and improve both convergence speed and stability. We present an example combining supervised learning with a ray-based physical simulation of a laser resonator with actuator updates computed using a constrained nonlinear optimisation routine that maximizes laser pulse energy. The proposed approach achieves a sub-50 ms control-cycle execution in our implementation, which allows for rapid correction. The modular framework enables real-time control and is compatible with standard robotic or mechatronic stages and custom actuator configurations. It also demonstrates generalisability by providing rapid and reliable alignment across automated testing environments, precision optics manufacturing, and research setups.
Presenter
Heriot-Watt Univ. (United Kingdom)
Dr. Gautami Alagarsamy is a Postdoctoral Research Associate at the Institute of Photonics and Quantum Sciences, Heriot-Watt University, Edinburgh, United Kingdom. She works on an EPSRC-funded project in collaboration with the University of Edinburgh and Leonardo UK, focusing on automating the alignment of precision optical systems using machine learning. She holds a B.Eng. in Electronics and an M.Eng. in VLSI Design from Anna University, a Ph.D. in Machine Learning and IoT applications from Anna University, and an MSc in Robotics from Heriot-Watt University. Formerly an Assistant Professor at SNS College of Technology in India, she has contributed to several book chapters and international research publications in the fields of IoT, robotics, and intelligent systems. Her research interests include robotics, photonics, AI-driven automation, and intelligent system design.