LGMASep 28, 2025

Heterogeneous Multi-agent Collaboration in UAV-assisted Mobile Crowdsensing Networks

arXiv:2509.25261v1h-index: 3WCSP
Originality Incremental advance
AI Analysis

This work addresses coordination challenges in UAV-assisted data collection, which is an incremental advancement for mobile crowdsensing applications.

The paper tackled the problem of coordinating sensing, communication, and computation in UAV-assisted mobile crowdsensing networks by proposing a joint optimization framework using multi-agent deep reinforcement learning, achieving significant improvements in the amount of processed sensing data compared to benchmarks.

Unmanned aerial vehicles (UAVs)-assisted mobile crowdsensing (MCS) has emerged as a promising paradigm for data collection. However, challenges such as spectrum scarcity, device heterogeneity, and user mobility hinder efficient coordination of sensing, communication, and computation. To tackle these issues, we propose a joint optimization framework that integrates time slot partition for sensing, communication, and computation phases, resource allocation, and UAV 3D trajectory planning, aiming to maximize the amount of processed sensing data. The problem is formulated as a non-convex stochastic optimization and further modeled as a partially observable Markov decision process (POMDP) that can be solved by multi-agent deep reinforcement learning (MADRL) algorithm. To overcome the limitations of conventional multi-layer perceptron (MLP) networks, we design a novel MADRL algorithm with hybrid actor network. The newly developed method is based on heterogeneous agent proximal policy optimization (HAPPO), empowered by convolutional neural networks (CNN) for feature extraction and Kolmogorov-Arnold networks (KAN) to capture structured state-action dependencies. Extensive numerical results demonstrate that our proposed method achieves significant improvements in the amount of processed sensing data when compared with other benchmarks.

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