ROLGSYJan 17, 2023

A reinforcement learning path planning approach for range-only underwater target localization with autonomous vehicles

arXiv:2301.06863v19 citationsh-index: 22Has Code
Originality Incremental advance
AI Analysis

This work addresses path planning for underwater target localization, which is incremental as it applies existing RL methods to a specific domain problem.

The paper tackled the problem of optimizing autonomous vehicle trajectories for range-only underwater target localization to improve accuracy and reduce resource consumption, finding that a reinforcement learning approach reduced median predicted error by 17% compared to analytical methods.

Underwater target localization using range-only and single-beacon (ROSB) techniques with autonomous vehicles has been used recently to improve the limitations of more complex methods, such as long baseline and ultra-short baseline systems. Nonetheless, in ROSB target localization methods, the trajectory of the tracking vehicle near the localized target plays an important role in obtaining the best accuracy of the predicted target position. Here, we investigate a Reinforcement Learning (RL) approach to find the optimal path that an autonomous vehicle should follow in order to increase and optimize the overall accuracy of the predicted target localization, while reducing time and power consumption. To accomplish this objective, different experimental tests have been designed using state-of-the-art deep RL algorithms. Our study also compares the results obtained with the analytical Fisher information matrix approach used in previous studies. The results revealed that the policy learned by the RL agent outperforms trajectories based on these analytical solutions, e.g. the median predicted error at the beginning of the target's localisation is 17% less. These findings suggest that using deep RL for localizing acoustic targets could be successfully applied to in-water applications that include tracking of acoustically tagged marine animals by autonomous underwater vehicles. This is envisioned as a first necessary step to validate the use of RL to tackle such problems, which could be used later on in a more complex scenarios

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