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Artificial neural networks and signal clipping for Profibus DP diagnostics

机译:用于Profibus DP诊断的人工神经网络和信号限幅

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This research proposes the use of Artificial Neural Networks to diagnose industrial networks communication via Profibus DP Protocol. These diagnostics are based on information provided by the Physical Layer from the Profibus DP Protocol. In order to analyze the physical layer, an Artificial Neural Network first analyzes signal samples transmitted through the industrial network. In case these signals show some deformation, the Artificial Neural Network indicates a possible cause for the problem, after all, problems from Profibus networks generate specific and distinctive standards imprinted on the digital signal wave formats. Before the Artificial Neural Network analysis, the signal was pre-processed through a clipper methodology. The project was validated by data obtained from concrete Profibus networks created in laboratory. The results were satisfactory, proving the great strength and versatility that intelligent computer systems have when applied to the purposes outlined in this work.
机译:这项研究提出使用人工神经网络来诊断通过Profibus DP协议进行的工业网络通信。这些诊断基于物理层从Profibus DP协议提供的信息。为了分析物理层,人工神经网络首先分析通过工业网络传输的信号样本。如果这些信号显示出某种程度的变形,则人工神经网络会指出问题的可能原因,毕竟,Profibus网络的问题会产生印在数字信号波格式上的特定且独特的标准。在进行人工神经网络分析之前,信号是通过限幅器方法进行预处理的。该项目已通过从实验室创建的具体Profibus网络获得的数据进行了验证。结果令人满意,证明了将智能计算机系统应用于本工作中概述的目的所具有的强大功能和多功能性。

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