基于自组织映射和概率密度分布的弧焊参数性能分析

V. Kumar, S. Albert, N. Chandrasekhar, J. Jayapandian, M. V. Venkatesan
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引用次数: 13

摘要

在焊接过程中,电流和电压会发生随机变化,这是普通电流表和电压表无法记录的。利用数字存储示波器(DSO)高速采集焊接过程中的电压和电流信号,并对存储的数据进行后续分析,对了解弧焊过程非常有用。在本研究中,使用DSO以100000个样本/s的采样率获取两个逆变器电源和两个发电机电源在两个不同电极焊接时的焊接数据。该数据使用快速傅里叶变换(FFT)低通滤波器进行滤波,并进行时域和统计分析。采用概率密度分布(pdd)和自组织映射(SOM)构成的人工神经网络对电源和焊机的性能进行了评价。本文探讨了使用自组织映射作为执行无监督学习的机制,以比较各种焊接参数(包括焊接电源和焊工)的性能特征。用SOM得到的结果与统计分析得到的pdd进行了比较。最后表明,除了PDD之外,利用SOM技术分析电压和电流数据也可以用于电弧焊接过程的评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance analysis of arc welding parameters using self organizing maps and probability density distributions
During welding, random variations in current and voltage occur, which cannot be recorded with ordinary ammeter and voltmeter. Acquisition of voltage and current signals while welding is in progress at a very high speed using digital storage oscilloscope (DSO) and subsequent analysis of the stored data can be very useful to understand the arc welding process. In the present study, welding data were acquired for two inverter and two generator power sources while welding with two different electrodes using a DSO at the sampling rate of 100000 samples/s. This data was filtered using the Fast Fourier Transform (FFT) low pass filter and subjected to time domain and statistical analysis. Probability Density Distributions (PDDs) and artificial neural network comprising of Self Organizing Maps (SOM) were used to evaluate performance of power sources and welders. This paper explores the use of self-organizing maps as a mechanism for performing unsupervised learning for comparing performance characteristics of various welding parameters which includes welding power supplies and welders. Results obtained using SOM has been compared with the PDDs obtained during statistical analysis. Finally it is shown that in addition to PDD, analysis of voltage and current data using SOM technique can also be used to evaluate the arc welding process.
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