State Key Laboratory of Separation Membranes and Membrane Processes, School of Chemical Engineering and Technology, Tiangong University, Tianjin 300387, China; Key Lab of Process Analysis and Control of Sichuan Universities, Yibin University, Sichuan 644000, China; State Key Laboratory of Plateau Ecology and Agriculture, Qinghai University, Xining 810016, China.
State Key Laboratory of Separation Membranes and Membrane Processes, School of Chemical Engineering and Technology, Tiangong University, Tianjin 300387, China.
Spectrochim Acta A Mol Biomol Spectrosc. 2023 Jan 5;284:121788. doi: 10.1016/j.saa.2022.121788. Epub 2022 Aug 28.
The quantification of single oil in high order edible blend oil is a challenging task. In this research, a novel swarm intelligence algorithm, discretized whale optimization algorithm (WOA), was first developed for reducing irrelevant variables and improving prediction accuracy of hexanary edible blend oil samples. The WOA is inspired by hunting strategy of humpback whales, which mainly includes three behaviors, i.e., encircling prey, bubble-net attacking and searching for prey. In discretized WOA, positions of whales were updated and then discretized by arctangent function. The whale population performance, iteration number and whale number of WOA were investigated. To validate the performance of selected variables, partial least squares (PLS) was used to build model and predict single oil contents in hexanary blend oil. Results show that WOA-PLS can provide the best prediction accuracy compared with full-spectrum PLS, continuous wavelet transform-PLS (CWT-PLS), uninformative variable elimination-PLS (UVE-PLS), Monte Carlo uninformative variable elimination-PLS (MCUVE-PLS) and randomization test-PLS (RT-PLS). Furthermore, CWT-WOA-PLS can further produce better results with fewer variables compared with WOA-PLS.
多元食用调和油中单油含量的定量分析是一项具有挑战性的任务。本研究首次开发了一种新颖的群体智能算法——离散化鲸鱼优化算法(WOA),用于减少无关变量并提高六元食用调和油样品的预测精度。WOA 受到座头鲸捕猎策略的启发,主要包括三种行为,即包围猎物、泡泡网捕猎和寻找猎物。在离散化 WOA 中,通过反正切函数更新和离散化鲸鱼的位置。研究了 WOA 的鲸鱼种群性能、迭代次数和鲸鱼数量。为了验证所选变量的性能,采用偏最小二乘法(PLS)建立模型并预测六元混合油中单油的含量。结果表明,与全谱 PLS、连续小波变换-偏最小二乘法(CWT-PLS)、无信息变量消除-偏最小二乘法(UVE-PLS)、蒙特卡罗无信息变量消除-偏最小二乘法(MCUVE-PLS)和随机化检验-偏最小二乘法(RT-PLS)相比,WOA-PLS 可以提供最佳的预测精度。此外,与 WOA-PLS 相比,CWT-WOA-PLS 可以用更少的变量产生更好的结果。