LiDAR‐based automated UAV inspection of wind turbine rotor blades

Author:

Castelar Wembers Carlos1ORCID,Pflughaupt Jasper1,Moshagen Ludmila1,Kurenkov Michael1,Lewejohann Tim1,Schildbach Georg1

Affiliation:

1. Institute for Electrical Engineering in Medicine University of Lübeck Lübeck Germany

Abstract

AbstractThe global trend indicates that overall wind energy production, both onshore and offshore, will increase drastically in the next decade. Therefore, presently, much effort is focused on optimizing the operation and maintenance of wind turbines, since these are quite challenging and cost‐intensive. To aid or even completely fulfill a specific inspection task, an automated solution is proposed in this paper. The prototype is built on an M300 drone platform from DJI Technology Co. and is presented here. It requires a single, additional 2D‐LiDAR sensor mounted on an upwards frame. The proposed control and path planning algorithms have been tested in the AirSim simulation environment, as well as in local model airfields and at real onshore and offshore wind turbines. As a result, a comprehensive sequential‐phased mission is presented, which reduces the total time required for the inspection routine to approximately 14 min, representing about half the time an expert pilot may need for the same task. Additionally, a platform prototype that may be deployed on a ship's deck for a safe landing is presented. It guarantees instant adhesion upon contact and avoids unwanted drone backlash due to sudden and unexpected ship movement during the landing approach. Further work will focus mainly on additional offshore flight probes, optimizing the landing platform, and tuning the flight algorithms.

Publisher

Wiley

Reference41 articles.

1. Structural Health Monitoring of Wind Turbine Blades: Acoustic Source Localization Using Wireless Sensor Networks

2. PSO-VFA: A Hybrid Intelligent Algorithm for Coverage Optimization of UAV-Mounted Base Stations

3. Council of European Union. (2019a) Commission implementing regulation (EU) no 219/947.https://eur-lex.europa.eu/eli/reg_impl/2019/947/oj[Accessed 16th July 2023].

4. Council of European Union. (2019b) Commission delegated regulation (EU) no 219/945.https://eur-lex.europa.eu/eli/reg_del/2019/945/oj[Accessed 16th July 2022].

5. DJI. (n.d.‐a) Onboard SDK Documentation.https://developer.dji.com/onboard-api-reference[Accessed 20th October 2022].

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