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Damage patterns recognition in dressing tools using PZT-based SHM and MLP networks

机译:使用基于PZT的SHM和MLP网络在修整工具中识别损坏模式

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摘要

In order to promoting the optimization of the theme: “grinding-dressing”, this study intends to contribute to the fill the gap of works completed with the damage diagnostic systems in dressing tools. For this purpose, this work aims to use neural models based on multilayer Perceptron networks (MLP) to improve the damage pattern recognition in diamond dressing tools based on electromechanical impedance (EMI). Thus, experimental dressing tests were performed with a single-point diamond-dressing tool and a low-cost lead zirconate titanate (PZT) transducer to acquire the impedance signatures at different dressing passes. The proposed approach was able to select the optimal frequency range in impedance signatures to determine the dressing tool condition. To achieve this, representative damage indices in several frequency bands were considered as input to the proposed intelligent system. This new approach open the door to effective implementation of future works for a broader situation in grinding process.
机译:为了促进主题“磨削-修整”的优化,本研究旨在弥补修整工具中损坏诊断系统完成的工作的空白。为此,这项工作旨在使用基于多层感知器网络(MLP)的神经模型来改善基于机电阻抗(EMI)的金刚石修整工具中的损伤模式识别。因此,使用单点金刚石修整工具和低成本的锆钛酸铅(PZT)换能器进行了实验修整测试,以获取不同修整行程下的阻抗特征。所提出的方法能够在阻抗签名中选择最佳频率范围,以确定修整工具的状况。为了实现这一目标,将几个频带中的代表性损坏指数视为拟议智能系统的输入。这种新方法为更广泛的磨削情况打开了有效实施未来工作的大门。

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