Raman spectroscopy combined with machine learning algorithms to detect adulterated Suichang native honey
Shuhan Hu(Xinjiang University), Bingyu Dong(Xinjiang Agricultural University), Yi Xie(Xinjiang University), Deyi Zhao(Xinjiang Agricultural University), Kai Zhang(Xinjiang University), Hongyi Li(Guangzhou Panyu Polytechnic), Chen Chen(Xinjiang University), Xiaoyi Lv(Fujian Medical University), Cheng Chen(Carnegie Mellon University)
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