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Extreme learning machine combined with whale optimization algorithm for spectral quantitative analysis of complex samples
作者:Yuxia Liu, Hao Sun, Chunyan Zhao, Changkun Ai, Xihui Bian*
关键字:Chemometrics, Multivariate calibration, Discretized whale optimization algorithm, Transfer functions
论文来源:期刊
具体来源:Journal of Chemometrics, 2024
发表时间:2024年
Extreme learning machine (ELM) is combined with the discretized whale optimization algorithm (WOA) for spectral quantitative analysis of complex samples. In this method, the spectral variables selected by the discretized WOA were used to build the ELM model. Before establishing the model, the activation function and the number of hidden nodes in ELM as well as the transfer function of the discretized WOA are determined. Furthermore, the predictive performance of the full-spectrum partial least squares (PLS), ELM, and WOA-ELM models was compared with four complex sample datasets: blood, light gas oil and diesel fuels, ternary mixture, and corn samples using root mean square error of prediction (RMSEP) and correlation coefficient (R). The results show that WOA-ELM model has the best prediction accuracy compared to full-spectrum PLS and ELM models. Therefore, the proposed method provides a novel approach for quantitative analysis of complex samples