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Data-Driven Pattern Recognition Model Employing Auditory Receptors for Human-Based Structural Health Monitoring System

机译:基于听觉受体的人为结构健康监测系统的数据驱动模式识别模型

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A quintessential conceptual element common to most Structural Health Monitoring (SHM) systems is the use of non-destructive methods and technologies to allow for the uninterrupted and' efficient monitoring of structural damages. Recent advancements pertaining to the logistical underpinnings of novel damage detection SHM techniques have caused a shift from mathematical modeling of structures to pattern recognition algorithms encompassing both supervised and" unsupervised learning methods. This work draws inspiration from current progressions in the field of neuroscience to incorporate the human brain in performing supervised pattern recognition, whereby the initial (i.e. damaged or undamaged) state of the structure is of prior knowledge. In this context, a framework for damage detection relating to shear-building structures has been developed for practical implementation in response to a range of different damage circumstances. The proposed framework uses human ears as auditory receptors to communicate received data to the human brain for interpretation. Two distinct audio signals are derived from the modal analysis of the structure. Induced audible signals are exposed to human subjects, and through consistent training, the ultimate ability of subjects to determine the state of structures is evaluated through training-test schemes for gathered responses. The results obtained are then contrasted with those obtained through the use of specific Machine Learning (ML) algorithms. Initial results involving direct human perception have thus far revealed a noteworthy impact effected by these assessments on understanding the behavior of structures. Possible areas of future growth may also be exploitable if other receptors (for instance, touch receptors as vehicles to transfer data to the human brain through vibrotactile patterns) are used in similar pattern recognition SHM systems.
机译:大多数结构健康监测(SHM)系统共有的一个典型概念元素是使用非破坏性方法和技术,以实现对结构破坏的不间断和高效监测。新型损伤检测SHM技术在后勤基础上的最新进展已导致从结构的数学建模转向包含有监督和“无监督”学习方法的模式识别算法。这项工作从神经科学领域的最新进展中汲取了灵感,并将其纳入人脑在执行有监督的模式识别时,结构的初始(即损坏或未损坏)状态是先验知识,在这种情况下,已针对剪切构建结构开发了一种用于损伤检测的框架,以响应提出的框架使用人耳作为听觉感受器,将接收到的数据传达给人脑进行解释;从结构的模态分析中得出两个截然不同的音频信号;将可听见的声音信号暴露给人类受试者,并通过一致训练中,通过训练测试方案对受试者确定结构状态的最终能力进行评估,以收集反应。然后将获得的结果与通过使用特定的机器学习(ML)算法获得的结果进行对比。迄今为止,涉及人类直接感知的初步结果表明,这些评估对理解结构的行为产生了显着影响。如果在类似的模式识别SHM系统中使用其他受体(例如,将触觉受体作为通过动触觉模式将数据传输到人脑的媒介)的话,未来的增长领域也可能是可利用的。

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