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Machine Learning of the Ultrasound Signal Travel Path Effect in Estimating the Residual Life of the US Army Vehicles

机译:超声信号传播路径效应在估计美军车辆剩余寿命中的机器学习

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In this work, neural networks based machine learning (ML) is proposed for continuously monitoring the residual life of structural parts in the US Army vehicles using ultrasound signals. From a carefully selected set of experiments, a 65 GB data set comprising of ultrasound signals were obtained. Several scales of wavelet decompositions were examined for these signals and the statistical content in a 11-scale wavelet decomposition were selected as the input features to the ML algorithms. Using the knowledge of the statistical outliers and an autoencoder algorithm, the spurious signals coming from the far away placed sensors were removed. Using a five-layer neural network based linear regression ML algorithm, the damage was estimated up to a 95.25% aggregated correlation over the entire range of the damage in various stages of progression even in the presence of variations in the incoming data samples with regards to the ultrasound excitation frequency and in the relative orientation of the ultrasound travel path with respect to the damage orientation. When the variation in the incoming data samples is reduced by controlling for either the ultrasound excitation frequency or the ultrasound travel path, the algorithm estimated the damage up to an aggregated correlation in the range of 99.71-99.86 Accounting for such variations is important because the ultrasound actuator–sensor systems cannot be expected to be deployed at precise locations relative to the damage location and orientation because such information may not be available while the damage is still nascent The ability to differentiate damage signals coming from different structural parts and learning the evolving damage from those signals will lead to increased sustainment of vehicles in the US Army operations.
机译:在这项工作中,提出了基于神经网络的机器学习(ML),用于使用超声信号连续监视美军车辆中结构部件的剩余寿命。从一组精心选择的实验中,获得了包含超声信号的65 GB数据集。针对这些信号检查了几种尺度的小波分解,并选择了11尺度小波分解的统计内容作为ML算法的输入特征。利用统计异常值和自动编码器算法的知识,可以消除来自遥远放置的传感器的杂散信号。使用基于五层神经网络的线性回归ML算法,即使在传入数据样本存在变化的情况下,在各个进展阶段,在整个损害范围内,损害估计高达95.25%的聚合相关性超声激励频率和超声行进路径相对于损伤方位的相对方位。当通过控制超声激发频率或超声传播路径来减少传入数据样本中的变化时,该算法估计损坏的累积相关性在99.71-99.86范围内,对这种变化的考虑很重要,因为超声不能期望将执行器-传感器系统部署在相对于损坏位置和方向的精确位置,因为在损坏仍处于新生阶段时可能无法获得此类信息。能够区分来自不同结构部件的损坏信号并从中获知不断发展的损坏的能力。这些信号将导致美国陆军行动中车辆的维护性提高。

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