UAV‐aided distribution line inspection using double‐layer offloading mechanism

Author:

Duo Chunhong123ORCID,Li Yongqian1,Gong Wenwen23,Li Baogang1,Qi Guoliang23,Zhang Ji24

Affiliation:

1. School of Electrical and Electronic Engineering North China Electric Power University Baoding China

2. School of Control and Computer Engineering North China Electric Power University Baoding China

3. Hebei Key Laboratory of Knowledge Computing for Energy & Power Baoding China

4. Engineering Research Center of Intelligent Computing for Complex Energy Systems Ministry of Education Baoding China

Abstract

AbstractWith the continuous growth of electricity demand, the safe and stable operation of distribution lines is crucial for power transportation. Unmanned aerial vehicle (UAV) inspection has been widely used for the maintenance and repair of distribution lines. Due to the limitations of computational power and endurance, it is difficult for UAVs to independently complete data processing. Combined with mobile edge computing (MEC), this paper proposes a computing offloading strategy based on multi‐agent reinforcement learning and double‐layer offloading mechanism, which can further utilize the computing power of non‐task devices and edge servers. Firstly, three‐layer system architecture, named MEC‐U‐NTDC (MEC‐UAV‐Non‐task Device Cloud), is built. Secondly, double‐layer offloading mechanism is designed to comprehensively utilize the computing power of edge servers and neighbouring non‐task devices. Finally, a multi‐agent algorithm DLMQMIX is proposed to minimize the total cost for UAV inspection. Simulation experiments show that the proposed algorithm can effectively solve the task offloading problem of UAV‐aided distribution line inspection, and compared with algorithms such as PSO, GA, and QMIX, it performs better in terms of average delay, system cost, and load balancing, achieving a smaller total system cost.

Funder

Fundamental Research Funds for the Central Universities

Publisher

Institution of Engineering and Technology (IET)

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