Adaptive Target Localization under Uncertainty using Multi-Agent Deep Reinforcement Learning with Knowledge Transfer
Ahmed Alagha, Rabeb Mizouni, Shakti Singh, Jamal Bentahar, Hadi Otrok

TL;DR
This paper introduces a multi-agent deep reinforcement learning approach with transfer learning to improve target localization accuracy under environmental uncertainties, such as false alarms and unreachable targets.
Contribution
It proposes a novel MADRL method with transfer learning for robust target localization in uncertain environments, addressing practical challenges ignored by prior work.
Findings
The method effectively detects target existence and reachability.
It accurately estimates target location even in complex environments.
Benchmark results show superior performance over existing approaches.
Abstract
Target localization is a critical task in sensitive applications, where multiple sensing agents communicate and collaborate to identify the target location based on sensor readings. Existing approaches investigated the use of Multi-Agent Deep Reinforcement Learning (MADRL) to tackle target localization. Nevertheless, these methods do not consider practical uncertainties, like false alarms when the target does not exist or when it is unreachable due to environmental complexities. To address these drawbacks, this work proposes a novel MADRL-based method for target localization in uncertain environments. The proposed MADRL method employs Proximal Policy Optimization to optimize the decision-making of sensing agents, which is represented in the form of an actor-critic structure using Convolutional Neural Networks. The observations of the agents are designed in an optimized manner to capture…
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