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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Experimental study of burn classification and prediction using indirect method in surface grinding of AISI 1045 steel
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Experimental study of burn classification and prediction using indirect method in surface grinding of AISI 1045 steel

机译:间接法在AISI 1045钢表面磨削中燃烧分类和预测的实验研究

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Grinding burn is a discoloration phenomenon according to the thickness of oxide layer on the ground surface. This study tries to establish an automatic grinding burn detection system with robust burn features that are caused by burn and not by the design parameters. To address this issue, a method based on acoustic emission sensor, accelerator, electric current transducers, and voltage transducers was proposed in an attempt to extract burn signatures. A trial-and-error experimental procedure was presented to find out burn threshold. Vitrified aluminum oxide grinding wheel and AISI 1045 steel workpiece were used in the grinding test, as they were the most commonly used wheel-workpiece combinations in conventional grinding process. With the help of fast Fourier transform and discrete wavelet transform, the spectral centroid of AE signal, the maximum value of power signal, and the RMS of the AE wavelet decomposition transform from wavelet decomposition levels d1 to d5 were extracted as burn features. The spectral centroid of AE signal was believed not to be affected by grinding parameters. A classification and prediction system based on support vector machine was established in order to identify grinding burn automatically. Results indicate that the classification system performs quite well on grinding burn classification and prediction.
机译:研磨烧伤是根据地面氧化物层厚度的一种变色现象。本研究试图建立一种自动磨削烧伤检测系统,该系统具有可靠的烧伤特征,这些特征是由烧伤而不是设计参数引起的。为了解决这个问题,提出了一种基于声发射传感器,加速器,电流换能器和电压换能器的方法,以尝试提取燃烧特征。提出了一个反复试验的实验程序来找出燃烧阈值。玻璃化氧化铝砂轮和AISI 1045钢制工件用于磨削测试,因为它们是常规磨削过程中最常用的砂轮-工件组合。借助于快速傅立叶变换和离散小波变换,提取了从小波分解水平d1到d5的AE信号的频谱质心,功率信号的最大值以及AE小波分解变换的RMS作为燃烧特征。 AE信号的频谱质心被认为不受研磨参数的影响。建立了基于支持向量机的分类预测系统,以自动识别磨削烧伤。结果表明,该分类系统在磨削烧伤分类和预测方面表现良好。

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