创新型风力涡轮机无人机检测系统的声学信号分析

Pedro José Bernalte Sánchez, Isaac Segovia Ramírez, Fausto Pedro García Márquez, Alberto Pliego Marugán
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引用次数: 0

摘要

随着大型和更具创新性的风力涡轮机(WT)的部署,风能正在成为一种领先的可再生能源。这种扩张需要新的状态监测系统(CMS)和诊断技术,以提高竞争力、可靠性和可用性,并最大限度地降低与风力涡轮机运行相关的维护成本。本研究提出了一种基于风电机组声学分析的新型 CMS,并结合了先进的模式识别分析技术。研究人员开发了一种嵌入无人驾驶飞行器的声学 CMS,用于捕获、发送和处理机舱内发出的声音,并将其发送到地面站的声学接收器上进行进一步分析,以评估该方法的可行性。文章介绍了实验室使用快速傅立叶变换算法、研究时频域信号和测量能量的初步结果。文章介绍了一种先进的信号处理方法,用于过滤和定义识别不同建议方案的状态和条件的模式。该方法在工作中的风电机组中进行了测试,结果表明声学分析适用于风电机组的维护管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Acoustic signals analysis from an innovative UAV inspection system for wind turbines
Wind energy is emerging as a leading renewable energy source, with the deployment of large and more innovative wind turbines (WTs). This expansion requires new condition monitoring systems (CMS) and diagnostic techniques to reach competitiveness, improve reliability and availability, and minimize maintenance costs associated with WT operations. This research proposes a novel CMS based on acoustic analysis of WTs, combined with advanced analytics for pattern recognition. An acoustic CMS embedded in an unmanned aerial vehicle is developed to capture, send, and process the sound emitted in the nacelle to an acoustic receiver by a ground station for further analysis to assess the viability of the methodology. The article presents initial results from the laboratory using the fast Fourier transform algorithm, studying the signals in the time-frequency domain aspect and measuring the energy. An advanced signal processing method is presented to filter and define patterns that identify the state and condition of different proposed scenarios. The methodology is tested in a working WT, and the results demonstrate that the acoustic analysis is suitable for maintenance management in WTs.
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