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Silicon Carbide Surface Quality Prediction Based on Artificial Intelligence Methods on Multi-sensor Fusion Detection Test Platform

机译:基于人工智能方法对多传感器融合检测测试平台的碳化硅表面质量预测

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摘要

On the basis of the grinding process experiments for SiC ceramic workpiece, grinding process parameters are measured on the multi-sensor fusion detection test platform and experimental results are analyzed. Lempel-Ziv complexity (LZC) is introduced to reflect the integrated grinding process stability due to kinds of factors such as vibration from grinding machine parts and noise from experimental platform. The greater the LZC is, the fewer period factors are in the grinding process, which reflect the nonlinear correlations in the grinding process impacting on grinding process. A method is given based on LZC for analyzing grinding process stability. Under consideration of experimental results, a predictive model for surface quality is given by the Kernel Principle Component Analysis and Modified Extreme learning machine method (KPCA-MELM), and grinding process parameters can be optimized too. KPCA-MELM predictive model overcomes disadvantages of MELM predictive model of the randomness of weight omega and threshold value b by introducing improved genetic algorithm, which makes the roughness predictive error more accurate with the maximum error of 4.803%.
机译:在SiC陶瓷工件的研磨过程实验的基础上,在多传感器融合检测测试平台上测量研磨工艺参数,并分析实验结果。引入LEMPEL-ZIV复杂性(LZC)以反映集成磨削过程稳定性,因为诸如捕获机器部件的振动等因素和实验平台的噪声等因素。 LZC越大,较少的周期因子在研磨过程中,这反映了对研磨过程的研磨过程中的非线性相关性。基于LZC给出了一种方法,用于分析研磨过程稳定性。在考虑实验结果,通过内核原理分量分析和改进的极端学习机方法(KPCA-MELM)给出了表面质量的预测模型,也可以优化研磨过程参数。 KPCA-MELM预测模型通过引入改进的遗传算法克服了重量ω和阈值B随机性的梅尔预测模型的缺点,这使得粗糙度预测误差更准确,最大误差为4.803%。

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