Comparing Machine Learning Methods on Synthetic Laser Accelerated Proton Data
POSTER
Abstract
The rapid advancements in laser systems have enabled high-speed data acquisition with kHz repetition rates. However, due to the complex nature of laser–matter interactions and the limitations of analytical and computational methods, accurately characterizing their features remains challenging and costly. In this research, we harness the potential of machine learning to emulate laser interactions using synthetic datasets. By comparing the performance of neural networks, decision trees, and random forests, we identify effective and efficient approaches for analyzing real-world laser datasets generated by emerging laser systems.
Presenters
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Aditya Shah
Marietta College
Authors
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Aditya Shah
Marietta College
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Thomas Y Zhang
Ohio State University
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Ronak Desai
Ohio State University
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Chris Orban
Ohio State University
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Joseph R Smith
Marietta College