An Overview on the Applications of Typical Non-linear Algorithms Coupled With NIR Spectroscopy in Food Analysis

Food Engineering Reviews - Tập 12 Số 2 - Trang 173-190 - 2020
Muhammad Zareef1, Quansheng Chen1, Md Mehedi Hassan1, Muhammad Arslan1, Malik Muhammad Hashim2, Waqas Ahmad1, Felix Y.H. Kutsanedzie1, Akwasi Akomeah Agyekum1
1School of Food and Biological Engineering, Jiangsu University, Xuefu Road 301, Zhenjiang, 213013, People’s Republic of China
2Department of Food Science and Technology, Gomal University, D.I. Khan, Pakistan

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