Intent-based Deep Reinforcement Learning for Multi-agent Informative Path Planning
Tianze Yang, Yuhong Cao, Guillaume Sartoretti

TL;DR
This paper introduces a decentralized deep reinforcement learning method with intent sharing and attention mechanisms for multi-agent informative path planning, improving cooperation and performance under communication constraints.
Contribution
It presents a novel intent-based DRL framework with attention mechanisms for multi-agent path planning, addressing prediction noise and communication limitations.
Findings
Outperforms traditional reactive planning methods.
Effective under limited communication ranges.
Enhances cooperation through intent sharing and attention mechanisms.
Abstract
In multi-agent informative path planning (MAIPP), agents must collectively construct a global belief map of an underlying distribution of interest (e.g., gas concentration, light intensity, or pollution levels) over a given domain, based on measurements taken along their trajectory. They must frequently replan their path to balance the exploration of new areas with the exploitation of known high-interest areas, to maximize information gain within a predefined budget. Traditional approaches rely on reactive path planning conditioned on other agents' predicted future actions. However, as the belief is continuously updated, the predicted actions may not match the executed actions, introducing noise and reducing performance. We propose a decentralized, deep reinforcement learning (DRL) approach using an attention-based neural network, where agents optimize long-term individual and…
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Taxonomy
TopicsUAV Applications and Optimization · Distributed Control Multi-Agent Systems · Robotic Path Planning Algorithms
