首页> 外文期刊>The Analyst: The Analytical Journal of the Royal Society of Chemistry: A Monthly International Publication Dealing with All Branches of Analytical Chemistry >A hybrid model combining wavelet transform and recursive feature elimination for running state evaluation of heat-resistant steel using laser-induced breakdown spectroscopy
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A hybrid model combining wavelet transform and recursive feature elimination for running state evaluation of heat-resistant steel using laser-induced breakdown spectroscopy

机译:一种混合模型,将小波变换和递归特征消除用于使用激光诱导击穿光谱运行耐热钢的状态评估

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摘要

Heat-resistant steel is widely used in various industries, and the running state is of great importance for equipment function and safety. In this work, laser-induced breakdown spectroscopy (LIBS) is applied to evaluate the running state of steel using indicators of micro and macro properties. The hybrid model based on wavelet threshold denoising (WTD) and K-fold-support vector machine-recursive feature elimination (K-SVM-RFE) is proposed to estimate the different indictors of various service conditions of steel. Fourteen T91 specimens, including 4 industrial specimens obtained from different service conditions in the power plant boiler, were used as the analytes. Firstly, the noise signal of the LIBS spectra of each specimen was analyzed and removed with WTD. Secondly, an improved approach K-SVM-RFE was applied to select the optimal feature subset and build the classification models of aging grade and hardness grade. The influence of denoising pretreatment on model performance was compared and discussed. Finally, the assessment matrix, established using the indicators from the aging grade and hardness grade, was used to evaluate the running state of steel. The results show that the test assessment matrix obtained with the hybrid model based on WTD and K-SVM-RFE is consistent with the reference matrix on the running state of steel.
机译:耐热钢广泛应用于各种行业,运行状态对于设备功能和安全性具有重要意义。在这项工作中,应用激光诱导的击穿光谱(Libs)来使用微观和宏观性质的指标评估钢的运行状态。提出了基于小波阈值去噪(WTD)和k折叠式支持向量机递归特征消除(K-SVM-RFE)的混合模型以估计钢的各种服务条件的不同标识。 14个T91标本,包括从发电厂锅炉的不同服务条件获得的4个工业标本作为分析物。首先,用WTD分析并除去每个样本的Libs光谱的噪声信号。其次,应用了改进的方法K-SVM-RFE以选择最佳特征子集并构建老化等级和硬度等级的分类模型。比较探讨了去噪对模型性能的影响。最后,使用使用来自老化等级和硬度等级的指标建立的评估矩阵来评估钢的运行状态。结果表明,基于WTD和K-SVM-RFE的混合模型获得的测试评估矩阵与在钢的行驶状态下的参考矩阵一致。

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