Reinforcement Learning Guided Engineering Design: from Topology Optimization to Advanced Modelling

Authors

  • Giorgi Tskhondia Independent researcher

Abstract

Applying reinforcement learning for topology optimization is a novel approach to engineering design. In this work, I produced 6 by 6 and 5 by 5 grid topologies by the PPO algorithm and 4 4 by the HRL algorithm in adequate compute wall-clock time. I have also addressed increasing the calculation speed for artificial intelligence-driven topology optimization by combining genetic algorithms and reinforcement learning in a straightforward sequential (one method after another). First, I apply genetic algorithms to get an outline of the topology, and then I 'fine-tune' or refine the obtained topology by reinforcement learning approach. This way, I can obtain more optimal topologies and reduce wall-clock time. In particular, I optimized topology for a 10 by 10 grid, which can be seen as an improvement over a 6 by 6 topology obtained by reinforcement learning alone. The genetic algorithm alone could not produce such an optimal topology as a combination of reinforcement learning and genetic algorithms in comparable wall-clock times.

Keywords:

topology optimization, reinforcement learning, generalizable, engineering design, genetic algorithms

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Published

2025-03-12 — Updated on 2025-03-12

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How to Cite

Tskhondia, G. (2025). Reinforcement Learning Guided Engineering Design: from Topology Optimization to Advanced Modelling. Journal of Next-Generation Research 5.0, 1(3). https://doi.org/10.70792/jngr5.0.v1i3.95

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