Design Optimization of Nuclear Fusion Reactor through Deep Reinforcement Learning

Jinsu Kim, Jaemin Seo
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Abstract

This research explores the application of Deep Reinforcement Learning (DRL) to optimize the design of a nuclear fusion reactor. DRL can efficiently address the challenging issues attributed to multiple physics and engineering constraints for steady-state operation. The fusion reactor design computation and the optimization code applicable to parallelization with DRL are developed. The proposed framework enables finding the optimal reactor design that satisfies the operational requirements while reducing building costs. Multi-objective design optimization for a fusion reactor is now simplified by DRL, indicating the high potential of the proposed framework for advancing the efficient and sustainable design of future reactors.
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通过深度强化学习优化核聚变反应堆的设计
本研究探讨了应用深度强化学习(DRL)优化核聚变反应堆设计的问题。DRL 可以有效地解决稳态运行的多重物理和工程约束所带来的挑战性问题。通过深度强化学习,核聚变反应堆的多目标设计优化得以简化,这表明该框架在推进未来反应堆的高效和可持续设计方面具有巨大潜力。
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