An investigation of belief-free DRL and MCTS for inspection and maintenance planning
Koutas, Daniel, Bismut, Elizabeth, Straub, Daniel
–arXiv.org Artificial Intelligence
We propose a novel Deep Reinforcement Learning (DRL) architecture for sequential decision processes under uncertainty, as encountered in inspection and maintenance (I&M) planning. Unlike other DRL algorithms for (I&M) planning, the proposed +RQN architecture dispenses with computing the belief state and directly handles erroneous observations instead. We apply the algorithm to a basic I&M planning problem for a one-component system subject to deterioration. In addition, we investigate the performance of Monte Carlo tree search for the I&M problem and compare it to the +RQN. The comparison includes a statistical analysis of the two methods' resulting policies, as well as their visualization in the belief space.
arXiv.org Artificial Intelligence
Dec-22-2023
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