Abstract:
Wind turbines are an important component of the global strategy for the transition to renewable energy sources and the fight against climate change. Their implementation ...Show MoreMetadata
Abstract:
Wind turbines are an important component of the global strategy for the transition to renewable energy sources and the fight against climate change. Their implementation contributes to sustainable development and to improving the ecological situation of the planet. Detecting and elimination of defects helps reduce the wear of the components and prevent premature failure. This can significantly extend the life of wind turbines, which is economically beneficial for owners and operators. The use of UAVs allows for minimizing the risks for personnel, as inspection and diagnosis of defects can be carried out without the need to lift people to great heights or stay in dangerous areas. This is especially important for turbines located in places of difficult access. The images taken by the UAV contain many extraneous objects and fuzzy data. Fuzzy logic allows you to create models for pattern recognition and object classification in images, taking into account uncertainty and variation in the data. This increases the accuracy and reliability of pattern recognition systems. This article proposes an image processing system to detect wind turbine defects, with a fuzzy system module that selects images from a video stream for further processing.
Published in: 2024 14th International Conference on Advanced Computer Information Technologies (ACIT)
Date of Conference: 19-21 September 2024
Date Added to IEEE Xplore: 16 October 2024
ISBN Information: