Non-Destructive Evaluation

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  • 文章类型: Journal Article
    起源于20世纪初,超声检测在医学中的应用越来越广泛,工业,和材料科学。在超声检测中,实现高信噪比和高效率是至关重要的。前者意味着成像清晰度和检测深度的增加,而后者有助于更快地刷新图像。用常规的短脉冲来激励探头很难平衡这两个指标,所以在一般的处理方法中,这两个因素需要权衡。为了解决上述问题,编码激励(CE)可以增加脉冲持续时间,并提供了巨大的潜力,以提高信噪比与等效甚至更高的效率。在本文中,我们首先回顾CE的基本原理,包括信号调制,信号传输,信号接收,脉冲压缩,和优化方法。然后,我们介绍了CE在超声检测不同领域的应用,专注于工业体波单探头检测,工业导波检测,工业体波相控阵检测,和医学相控阵成像。最后,我们指出了CE的优势以及一些未来的方向。
    Originating in the early 20th century, ultrasonic testing has found increasingly extensive applications in medicine, industry, and materials science. Achieving both a high signal-to-noise ratio and high efficiency is crucial in ultrasonic testing. The former means an increase in imaging clarity as well as the detection depth, while the latter facilitates a faster refresh of the image. It is difficult to balance these two indicators with a conventional short pulse to excite the probe, so in general handling methods, these two factors have a trade-off. To solve the above problems, coded excitation (CE) can increase the pulse duration and offers great potential to improve the signal-to-noise ratio with equivalent or even higher efficiency. In this paper, we first review the fundamentals of CE, including signal modulation, signal transmission, signal reception, pulse compression, and optimization methods. Then, we introduce the application of CE in different areas of ultrasonic testing, with a focus on industrial bulk wave single-probe detection, industrial guided wave detection, industrial bulk wave phased array detection, and medical phased array imaging. Finally, we point out the advantages as well as a few future directions of CE.
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  • 文章类型: Journal Article
    近年来,超声波检测(UT)越来越多地应用机器学习(ML)。促进缺陷检测和分类的更高水平的自动化和决策。构建广义训练数据集,将ML应用于无损评估(NDE),因此,UT,由于需要原始和有代表性的有缺陷标本的数据,因此异常困难。然而,在大多数UT测试案例中,有缺陷的样本数据本质上是罕见的,使数据覆盖成为应用ML时的主要问题。常见的数据增强(DA)策略提供的解决方案有限,因为它们不会增加数据集的方差,这可能导致训练数据的过拟合。虚拟缺陷方法和生成对抗神经网络(GAN)在UT中的最新应用是旨在解决此问题的复杂DA方法。另一方面,对超声波传播进行建模的完善研究允许生成合成UT训练数据。在这种情况下,我们提出了第一个主题审查,以总结过去几十年在NDE中合成和增强UT训练数据方面的进展。此外,概述了合成UT数据生成和增强的方法。在有限元等数值方法中,有限差分,和弹性动力学有限积分法,半分析方法,如一般点源合成,高斯光束的叠加,介绍和讨论了铅笔法以及其他UT建模软件。同样,现有的一维和多维UT数据的DA方法,特征空间增强,提出并讨论了用于增强的GAN。本文最后详细讨论了用于合成UT训练数据生成和UT数据DA的现有方法的优点和局限性,以帮助读者对特定测试用例的应用做出决策。
    Ultrasonic Testing (UT) has seen increasing application of machine learning (ML) in recent years, promoting higher-level automation and decision-making in flaw detection and classification. Building a generalized training dataset to apply ML in non-destructive evaluation (NDE), and thus UT, is exceptionally difficult since data on pristine and representative flawed specimens are needed. Yet, in most UT test cases flawed specimen data is inherently rare making data coverage the leading problem when applying ML. Common data augmentation (DA) strategies offer limited solutions as they don\'t increase the dataset variance, which can lead to overfitting of the training data. The virtual defect method and the recent application of generative adversarial neural networks (GANs) in UT are sophisticated DA methods targeting to solve this problem. On the other hand, well-established research in modeling ultrasonic wave propagations allows for the generation of synthetic UT training data. In this context, we present a first thematic review to summarize the progress of the last decades on synthetic and augmented UT training data in NDE. Additionally, an overview of methods for synthetic UT data generation and augmentation is presented. Among numerical methods such as finite element, finite difference, and elastodynamic finite integration methods, semi-analytical methods such as general point source synthesis, superposition of Gaussian beams, and the pencil method as well as other UT modeling software are presented and discussed. Likewise, existing DA methods for one- and multidimensional UT data, feature space augmentation, and GANs for augmentation are presented and discussed. The paper closes with an in-detail discussion of the advantages and limitations of existing methods for both synthetic UT training data generation and DA of UT data to aid the decision-making of the reader for the application to specific test cases.
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  • 文章类型: Journal Article
    本文回顾了用于土木结构的无损检测(NDT)和结构健康监测(SHM)的传感器技术的最新进展。本文的动机是传感器技术和数据分析的快速发展,导致不断发展的评估和监测结构系统。在为NDT和SHM系统提供输入参数及其确定结构健康状态的适用性的背景下,对常规和先进的传感器技术进行了系统审查和评估。提出的传感技术和监测系统是根据它们的能力选择的,可靠性,成熟,负担能力,人气,易用性,弹性,和创新。一个重要的重点是评估选定的技术和相关的数据分析,突出限制,优势,和缺点。本文介绍了光纤等传感技术,激光测振,声发射,超声波,热成像,无人机,微机电系统(MEMS),磁致伸缩传感器,和下一代技术。
    This paper reviews recent advances in sensor technologies for non-destructive testing (NDT) and structural health monitoring (SHM) of civil structures. The article is motivated by the rapid developments in sensor technologies and data analytics leading to ever-advancing systems for assessing and monitoring structures. Conventional and advanced sensor technologies are systematically reviewed and evaluated in the context of providing input parameters for NDT and SHM systems and for their suitability to determine the health state of structures. The presented sensing technologies and monitoring systems are selected based on their capabilities, reliability, maturity, affordability, popularity, ease of use, resilience, and innovation. A significant focus is placed on evaluating the selected technologies and associated data analytics, highlighting limitations, advantages, and disadvantages. The paper presents sensing techniques such as fiber optics, laser vibrometry, acoustic emission, ultrasonics, thermography, drones, microelectromechanical systems (MEMS), magnetostrictive sensors, and next-generation technologies.
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  • 文章类型: Journal Article
    在最近一段时间里,人们对使用脉冲红外热成像(PT)进行文化遗产(CH)的无损评估越来越感兴趣。与同一领域常用的其他技术不同,PT可以对不同类型的地下特征进行深度分辨检测,从而为学者和修复者提供有用的信息。由于这个原因,目前正在开展几项研究活动,以进一步提高PT的有效性.在这份手稿中,PT用于分析三种不同类型的CH的具体用途,即文献资料,面板画-marquetery,和马赛克,将被审查。在后一种情况下,即,马赛克,被动热成像与探地雷达(GPR)和数字显微镜(DM)相结合也得到了深化,考虑到它们在开放领域的适用性。之所以选择这些项目,是因为它们的物理和结构特性非常独特,因此,不同的PT(和,在某些情况下,验证)已经采用了调查方法。
    Over the recent period, there has been an increasing interest in the use of pulsed infrared thermography (PT) for the non-destructive evaluation of Cultural Heritage (CH). Unlike other techniques that are commonly employed in the same field, PT enables the depth-resolved detection of different kinds of subsurface features, thus providing helpful information for both scholars and restorers. Due to this reason, several research activities are currently underway to further improve the PT effectiveness. In this manuscript, the specific use of PT for the analysis of three different types of CH, namely documentary materials, panel paintings-marquetery, and mosaics, will be reviewed. In the latter case, i.e., mosaics, passive thermography combined with ground penetrating radar (GPR) and digital microscopy (DM) have also been deepened, considering their suitability in the open field. Such items have been selected because they are characterized by quite distinct physical and structural properties and, therefore, different PT (and, in some cases, verification) approaches have been employed for their investigations.
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  • 文章类型: Journal Article
    传感技术(ST)在结构健康监测(SHM)系统中起着关键作用。ST专注于开发传感器,感官系统,或智能材料,监测各种各样的材料属性,旨在创建智能结构和智能材料,使用嵌入式传感器(ES),并能够对其结构完整性进行连续和永久的测量。ESs的集成仅限于用于嵌入传感器的处理技术,因为它具有高温灵敏度,并且在将其插入结构期间可能会损坏。此外,工艺过程的选择取决于基材的成分,其包括金属或复合部件。智能传感器或其基础技术的选择是监测模式的基础。本文对采用ESs的SHM系统的传感技术的基础和应用进行了严格的回顾,着眼于他们的实际发展和创新,以及分析这些技术带来的挑战,以建立一条通过分布式测量系统实现互联世界的路径。
    Sensing Technology (ST) plays a key role in Structural Health-Monitoring (SHM) systems. ST focuses on developing sensors, sensory systems, or smart materials that monitor a wide variety of materials\' properties aiming to create smart structures and smart materials, using Embedded Sensors (ESs), and enabling continuous and permanent measurements of their structural integrity. The integration of ESs is limited to the processing technology used to embed the sensor due to its high-temperature sensitivity and the possibility of damage during its insertion into the structure. In addition, the technological process selection is dependent on the base material\'s composition, which comprises either metallic or composite parts. The selection of smart sensors or the technology underlying them is fundamental to the monitoring mode. This paper presents a critical review of the fundaments and applications of sensing technologies for SHM systems employing ESs, focusing on their actual developments and innovation, as well as analysing the challenges that these technologies present, in order to build a path that allows for a connected world through distributed measurement systems.
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  • 文章类型: Journal Article
    With the aim of increasing the efficiency of maintenance and fuel usage in airplanes, structural health monitoring (SHM) of critical composite structures is increasingly expected and required. The optimized usage of this concept is subject of intensive work in the framework of the EU COST Action CA18203 \"Optimising Design for Inspection\" (ODIN). In this context, a thorough review of a broad range of energy harvesting (EH) technologies to be potentially used as power sources for the acoustic emission and guided wave propagation sensors of the considered SHM systems, as well as for the respective data elaboration and wireless communication modules, is provided in this work. EH devices based on the usage of kinetic energy, thermal gradients, solar radiation, airflow, and other viable energy sources, proposed so far in the literature, are thus described with a critical review of the respective specific power levels, of their potential placement on airplanes, as well as the consequently necessary power management architectures. The guidelines provided for the selection of the most appropriate EH and power management technologies create the preconditions to develop a new class of autonomous sensor nodes for the in-process, non-destructive SHM of airplane components.
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