基于声场和粒子群优化的压电阵列元件故障检测

M. S. Z. Dehabadi, M. Jahed
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引用次数: 0

摘要

由于硬件故障、机械损伤、老化和疲劳问题,医用超声阵列换能器容易出现各种缺陷。故障元件会导致声场失真、旁瓣电平(SLL)升高和图像分辨率下降。压电阵列元件的故障检测是进行任何修复或补偿反应的一个明显而重要的前提。本文提出了一种基于少量辐射声场测量样本的逆优化方法来估计元件的贡献、位置和故障状态的严重程度。基于线性阵列换能器的有限元模型,对该方法进行了100个随机模拟测试数据集的评估。数据集中考虑了三种元件故障类型,包括完好、弱和死,以测量来自换能器的辐射远场声场的横向剖面。利用粒子群优化算法求解声场问题。如结果部分所示,检测准确率高达99%左右,证明了该方法检测弱元素和死元素的有效性。该方法在检测单个元件的灵敏度和电容方面优于电试验设备,尤其适用于包含大量元件和物理上不可用的子元件进行电试验的二维传感器。
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Fault Detection of Piezoelectric Array Element Using Acoustic Field and Particle Swarm Optimization
Medical ultrasonic array transducers are prone to various defects due to hardware malfunction, mechanical damages, aging, and fatigue issues. Faulty elements result in distorted acoustic field, higher side lobe level (SLL), and image resolution degradation. Fault detection of piezoelectric array element is an obvious and important prerequisite for any restoration or compensative reaction. In this work, an inverse optimization approach on the few measured samples of the radiated acoustic field is proposed to estimate the contribution of the element, its position and severity of its faulty condition. The proposed method is evaluated by 100 random simulated test datasets, based on finite element model (FEM) of a linear array transducer. Three element faulty types inclusive of Intact,Weak, and Dead, are considered in the datasets to measure a lateral profile of the radiated far-field acoustic field from the transducer. The problem on the acoustic field is solved by Particle Swarm Optimization (PSO) algorithm. The high detection accuracy of about 99%, as depicted in the results section, demonstrates the effectiveness of this method to detect Weak and Dead elements. The proposed method outperforms the electrical test equipment to check the sensitivity and capacitance of individual elements, especially for the 2D transducers containing large number of elements and physically unavailable sub-elements for the electrical tests.
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