Generative Surrogates for Fast Simulation: TPC Case
Fedor Ratnikov, Artem Maevskiy, Alexander Zinchenko, Victor Riabov,, Alexey Sukhorosov, Dmitrii Evdokimov

TL;DR
This paper presents a GAN-based surrogate model for fast simulation of the TPC detector response in high energy physics, significantly reducing computational time while maintaining high fidelity.
Contribution
The paper introduces a novel GAN-based approach for high-energy physics detector simulation, demonstrating substantial speedup and high accuracy for TPC response modeling.
Findings
Achieved at least tenfold acceleration of TPC simulation
Generated high-fidelity detector responses
Outlined deployment strategy into experimental software
Abstract
Simulation of High Energy Physics experiments is widely used, necessary for both detector and physics studies. Detailed Monte-Carlo simulation algorithms are often limited due to the computational complexity of such methods, and therefore faster approaches are desired. Generative Adversarial Networks (GANs) are well suited for aggregating a number of detailed simulation steps into a surrogate probability density estimator readily available for fast sampling. In this work, we demonstrate the power of the GAN-based fast simulation model on the use case of simulating the response for the Time Projection Chamber (TPC) in the MPD experiment at the NICA accelerator complex. We show that our model can generate high-fidelity TPC responses, while accelerating the TPC simulation by at least an order of magnitude. We describe alternative representation approaches for this problem and also outline…
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Taxonomy
TopicsSimulation Techniques and Applications · Generative Adversarial Networks and Image Synthesis · Computational Physics and Python Applications
