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Stone impact damage to automotive paint finishes-a neural net analysis of electrochemical impedance data

机译:石材冲击对汽车漆面的损害-电化学阻抗数据的神经网络分析

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Automotive car bodies are subject to impact by stones either lofted from tires or launched by other passing vehicles. Impact can result either in physical loss of paint and the possibility of failure at the metal/phosphate-polymer interface. A neural network (NN) analysis of electrochemical impedance data is presented. It is shown that electromechanical impedance spectroscopy (EIS) is a very sensitive post impact diagnostic probe to detect delamination at the metal-polymer boundary. Considering the noisy quality of data, the learning of the NN is good. It is shown that the NN is able to make predictions that are in agreement with independent experimental observations. Based on this preliminary work the future use of the NN as a predictive tool will rely on a comprehensive data set obtained under rigorous experimental conditions using stone projectiles, alternate treatments of impedance data, and also taking into account parameters such as stone shape, mass, and density.
机译:汽车车身会受到从轮胎放下或其他过往车辆发射的石头的撞击。撞击会导致油漆的物理损失以及在金属/磷酸盐-聚合物界面处失效的可能性。提出了电化学阻抗数据的神经网络(NN)分析。结果表明,机电阻抗谱(EIS)是一种非常灵敏的撞击后诊断探针,可检测金属-聚合物边界处的分层。考虑到数据的噪声质量,NN的学习效果很好。结果表明,神经网络能够做出与独立实验观察一致的预测。在这项初步工作的基础上,未来将NN用作预测工具将依赖于在严格的实验条件下使用石头射弹,阻抗数据的替代处理以及考虑到参数(例如石头形状,质量,和密度。

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