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Mimicking the biological neural system using electronic logic circuits

机译:使用电子逻辑电路模仿生物神经系统

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Detecting and locating cracks in structural components and joints that have high feature densities is a challenging problem in the field of Structural Health Monitoring. There have been advances in piezoelectric sensors, actuators, wave propagation, MEMS, and optical fiber sensors. However, few sensor-signal processing techniques have been applied to the monitoring of joints and complex structural geometries. This is in part because maintaining and analyzing a large amount of data obtained from a large number of sensors that may be needed to monitor joints for cracks is difficult. Reliable low cost assessment of the health of structures is crucial to maintain operational availability and productivity, reduce maintenance cost, and prevent catastrophic failure of large structures such as wind turbines, aircraft, and civil infrastructure. Recently, there have also been advances in development of simple passive techniques for health monitoring including a technique based on mimicking the biological neural system using electronic logic circuits. This technique aids in reducing the required number of data acquisition channels by a factor of ten or more and is able to predict the location of a crack within a rectangular grid or within an arbitrarily arranged network of continuous sensors or neurons. The current paper shows results obtained by implementing this method on an aluminum plate and joint. The plates were tested using simulated acoustic emissions and also loading via an MTS machine. The testing indicates that the neural system can monitor complex joints and detect acoustic emissions due to propagating cracks. High sensitivity of the neural system is needed, and further sensor development and testing on different types of joints is required. Also indicated is that sensor geometry, sensor location, signal filtering, and logic parameters of the neural system will be specific to the particular type of joint (material, thickness, geometry) being monitored. Also, a novel piezoresistive carbon nanotube nerve crack sensor is presented that can become a neuron and respond to local crack growth.
机译:在结构健康监测领域中,具有高特征密度的结构部件和接缝中的裂纹的检测和定位是一个具有挑战性的问题。压电传感器,致动器,波传播,MEMS和光纤传感器已经取得了进步。但是,很少有传感器信号处理技术已应用于关节和复杂结构几何形状的监视。这部分是因为难以维护和分析从大量传感器获得的大量数据,这些数据可能需要监视接头的裂缝。对结构健康进行可靠的低成本评估对于维护运营可用性和生产率,降低维护成本以及防止大型结构(如风力涡轮机,飞机和民用基础设施)的灾难性故障至关重要。近来,在用于健康监测的简单无源技术方面也取得了进展,包括基于使用电子逻辑电路模仿生物神经系统的技术。该技术有助于将所需的数据采集通道数量减少十倍或更多倍,并且能够预测矩形网格内或连续传感器或神经元任意布置的网络内裂纹的位置。本文显示了通过在铝板和接头上实施此方法获得的结果。使用模拟声发射并通过MTS机器对板进行了测试。测试表明,神经系统可以监视复杂的接头并检测由于传播的裂纹而产生的声发射。需要神经系统的高灵敏度,并且需要对不同类型的关节进行进一步的传感器开发和测试。还指出的是,神经系统的传感器几何形状,传感器位置,信号过滤和逻辑参数将特定于所监视的特定关节类型(材料,厚度,几何形状)。此外,提出了一种新型的压阻碳纳米管神经裂纹传感器,它可以成为神经元并响应局部裂纹的增长。

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