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Microstructural characterization of materials by neural network technique

机译:用神经网络技术表征材料的微观结构

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Ultrasonic signals received by pulse echo technique from plane parallel Zircaloy 2 samples of fixed thickness and of three different microstructures, were subjected to signal analysis, as conventional parameters like velocity and attenuation could not reliably discriminate them. The signals, obtained from these samples, were first sampled and digitized. Modified Karhunen Loeve Transform was used to reduce their dimensionality. A multilayered feed forward Artificial Neural Network was trained using a few signals in their reduced domain from the three different microstructures. The rest of the signals from the three samples with different microstructures were classified satisfactorily using this network.
机译:通过脉冲回波技术从平面平行的Zircaloy 2固定厚度且具有三个不同微结构的平面平行Zirloy 2样品接收的超声波信号经过信号分析,因为常规参数(例如速度和衰减)无法可靠地区分它们。从这些样本获得的信号首先被采样并数字化。修改后的Karhunen Loeve变换用于减小其维数。多层前馈人工神经网络使用来自三个不同微结构的在其缩小域中的一些信号进行训练。使用该网络对来自具有不同微结构的三个样品的其余信号进行了令人满意的分类。

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