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An adaptive wavelet packet denoising algorithm for enhanced active acoustic damage detection from wind turbine blades

机译:一种用于增强风力涡轮机叶片的主动声损伤检测的自适应小波包去噪算法

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The development of a viable structural health monitoring (SHM) technology for the operational condition monitoring of wind turbine blades is of great interest to the wind industry. In order for any SHM technology to achieve the technical readiness and performance required for an operational implementation, advanced signal processing algorithms need to be developed to adaptively remove noise and retain the underlying signals of interest that describe the damage-related information. The wavelet packet transform decomposes a measured time domain signal into a time-frequency representation enabling the removal of noise that may overlap with the signal of interest in time and/or frequency. However, the traditional technique suffers from several assumptions limiting its applicability in an operational SHM environment, where the noise conditions commonly exhibit erratic behavior. Furthermore, an exhaustive number of options exist when selecting the parameters used in the technique with limited guidelines that can help select the most appropriate options for a given application. Appropriately defining the technique tends to be a daunting task resulting in a general avoidance of the approach in the field of SHM. This work outlines an adaptive wavelet packet denoising algorithm applicable to numerous SHM technologies including acoustics, vibrations, and acoustic emission. The algorithm incorporates a blend of non-traditional approaches for noise estimation, threshold selection, and threshold application to augment the denoising performance of real-time structural health monitoring measurements. Appropriate wavelet packet parameters are selected through a simulation considering the trade-off between signal to noise ratio improvement and amount of signal energy retained. The wavelet parameter simulation can be easily replicated to accommodate any SHM technology where the underlying signal of interest is known, as is the case in most active-based approaches including acoustic and wave-propagation techniques. The finalized adaptive wavelet packet algorithm is applied to a comprehensive dataset demonstrating an active acoustic damage detection approach on a -46 m wind turbine blade. The quality of the measured data and the damage detection performance obtained from simple spectral filtering is compared with the proposed wavelet packet technique. It is shown that the damage detection performance is enhanced in all but one test case by as much as 60%, and the false detection rate is reduced. The approach and the subsequent results presented in this paper are expected to help enable advancement in the performance of several established SHM technologies and identifies the considered acoustics-based SHM approach as a noteworthy option for wind turbine blade structural health monitoring.
机译:用于风力涡轮机叶片的运营状况监测的可行结构健康监测(SHM)技术的发展对风力行业感兴趣。为了使任何SHM技术实现操作实现所需的技术准备和性能,需要开发先进的信号处理算法以自适应地去除噪声并保留描述损坏相关信息的感兴趣的底层信号。小波分组变换将测量的时域信号分解成时频表示,使得能够与时间和/或频率的兴趣信号重叠的噪声。然而,传统技术遭受了几个假设,限制了其在运营SHM环境中的适用性,其中噪声条件通常具有不稳定的行为。此外,在选择具有有限指南的技术中使用的技术中使用的参数时,存在穷举的选项数量,可以帮助选择给定应用程序的最合适的选项。适当地定义该技术倾向于是令人生畏的任务,导致SHM领域中的方法一般避免。这项工作概述了适用于许多SHM技术的自适应小波包去噪算法,包括声学,振动和声发射。该算法包含非传统噪声估计方法的混合,阈值选择和阈值应用,以增加实时结构健康监测测量的去噪性能。考虑到信号与保留的信号能量的量之间的仿真,通过模拟选择适当的小波分组参数。可以容易地复制小波参数模拟以适应任何SHM技术,其中兴趣的潜在信号是已知的,就像基于最有效的方法的情况一样,包括声学和波动传播技术。最终的自适应小波分组算法应用于综合数据集,演示了-46M风力涡轮机叶片上的有源声学损伤检测方法。将测量数据的质量和从简单的光谱滤波获得的损伤检测性能与所提出的小波分组技术进行比较。结果表明,除了一个测试用例之外,损坏检测性能高达60%,并且减少了误报率。本文提出的方法和随后的结果有望帮助实现几种成熟的SHM技术的性能的推进,并将所考虑的基于声学的SHM方法识别为风力涡轮机叶片结构健康监测的值得注意的选择。

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