Using AIG in Verilog HDL, Autonomous Testing in a Family of Wien Bridge Cross Transducers

K. N. R. Praveen, Gadug Sudhamsu
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引用次数: 1

Abstract

This research reports on the software configuration of automated fault detection and recognition using neural networks (ANNs) in a class of 13.6 cross actuators. According to the findings, the suggested flaw detector is ideal for integrating knowledge into the devices in a way that is living thing. The seven often recurring defects in a batch of these sensors are directly determined by the automated fault tester that is being demonstrated. In this study, the suggested automated defect detector is trained using an ANN-based binary class system. If any of the mistakes occurs, logic Programming is applied to define a high or “1” output, whereas the returning is calculated whether the other 6 failures occurred lowest or “0”. The input outputs from the Or CAD programme are used as incoming signal, and indeed the produced train parameters, i.e., amplitude and biased of the artificial neural tool of Math, have been used.
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利用AIG在Verilog HDL中的应用,对一系列Wien桥交叉换能器进行自主测试
本研究报告了在一类13.6个交叉执行器中使用神经网络(ann)进行自动故障检测和识别的软件配置。根据研究结果,建议的探伤仪是将知识以一种有生命的方式整合到设备中的理想选择。在一批传感器中,七个经常重复出现的缺陷直接由正在演示的自动故障测试器确定。在本研究中,建议的自动缺陷检测器使用基于人工神经网络的二进制分类系统进行训练。如果发生任何错误,则应用逻辑编程来定义高输出或“1”输出,而返回则计算其他6个失败是发生最低还是“0”。Or CAD程序的输入输出用作输入信号,并且确实使用了数学人工神经工具产生的列车参数,即振幅和偏置。
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