LGCOMP-PHOPTICSMar 1, 2025

Shaping Laser Pulses with Reinforcement Learning

arXiv:2503.00499v2h-index: 14
Originality Incremental advance
AI Analysis

This work addresses the need for adaptive and efficient optimization in high-energy physics experiments, though it is incremental by extending DRL to this specific domain.

The paper tackled the problem of manually tuning High Power Laser systems by applying Deep Reinforcement Learning to learn control policies from non-destructive image observations, achieving 90% of the target intensity in test environments with varying dynamics.

High Power Laser (HPL) systems operate in the attoseconds regime -- the shortest timescale ever created by humanity. HPL systems are instrumental in high-energy physics, leveraging ultra-short impulse durations to yield extremely high intensities, which are essential for both practical applications and theoretical advancements in light-matter interactions. Traditionally, the parameters regulating HPL optical performance have been manually tuned by human experts, or optimized using black-box methods that can be computationally demanding. Critically, black box methods rely on stationarity assumptions overlooking complex dynamics in high-energy physics and day-to-day changes in real-world experimental settings, and thus need to be often restarted. Deep Reinforcement Learning (DRL) offers a promising alternative by enabling sequential decision making in non-static settings. This work explores the feasibility of applying DRL to HPL systems, extending the current research by (1) learning a control policy relying solely on non-destructive image observations obtained from readily available diagnostic devices, and (2) retaining performance when the underlying dynamics vary. We evaluate our method across various test dynamics, and observe that DRL effectively enables cross-domain adaptability, coping with dynamics' fluctuations while achieving 90\% of the target intensity in test environments.

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