Graduate School of Mechanical Engineering, 34996Pusan National University, Busan, Korea.
School of Mechanical Engineering, 34996Pusan National University, Busan, Korea.
Sci Prog. 2023 Jan-Mar;106(1):368504221146081. doi: 10.1177/00368504221146081.
The heat exchanger (HE) is an important component of almost every energy generation system. Periodic inspection of the HEs is particularly important to keep high efficiency of the entire system. In this paper, a novel ultrasonic water immersion inspection method is presented based on circumferential wave (CW) propagation to detect defective HE. Thin patch-type piezoelectric elements with multiple resonance frequencies were adopted for the ultrasonic inspection of narrow-spaced HE in an immersion test. Water-filled HE was used to simulate defective HE because water is the most reliable indicator of the defect. The HE will leak water no matter what the defect pattern is. Furthermore, continuous wavelet transform (CWT) was used to investigate the received CW, and inverse CWT was applied to separate frequency bands corresponding to the thickness and lateral resonance modes of the piezoelectric element. Different arrangements of intact and leaky HE were tested with several pairs of thin piezoelectric patch probes in various instrumental setups. Also, direct waveforms in the water without HE were used as reference signals, to indicate instrumental gain and probe sensitivity. Moreover, all filtered CW corresponding to resonance modes together with the direct waveforms in the water were used to train the deep neural networks (DNNs). As a result, an automatic HE state classification method was obtained, and the accuracy of the applied DNN was estimated as 99.99%.
换热器(HE)是几乎每个能源发电系统的重要组成部分。定期检查 HE 对于保持整个系统的高效率尤为重要。本文提出了一种基于周向波(CW)传播的新型超声水浸检测方法,用于检测有缺陷的 HE。采用具有多个共振频率的薄贴片式压电元件进行浸没式测试中窄间距 HE 的超声检测。用水填充 HE 来模拟有缺陷的 HE,因为水是缺陷最可靠的指示物。无论缺陷模式如何,HE 都会漏水。此外,采用连续小波变换(CWT)来研究接收到的 CW,并应用逆 CWT 来分离对应于压电元件厚度和横向共振模式的频带。在不同的仪器设置中,使用几对薄压电贴片探头测试了完整和泄漏的 HE 的不同布置。此外,将没有 HE 的水中的直接波用作参考信号,以指示仪器增益和探头灵敏度。而且,所有与共振模式对应的滤波后的 CW 以及水中的直接波都被用于训练深度神经网络(DNN)。结果,获得了一种自动 HE 状态分类方法,应用的 DNN 的准确性估计为 99.99%。