Optimization of soluble solids content prediction models in ‘Hami’ melons by means of Vis-NIR spectroscopy and chemometric tools
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Ruoyu Zhang | Zhiqiang Zhai | Ruoyu Zhang | Rong Hu | Lixin Zhang | Zhiyuan Yu | Zhiqiang Zhai | Lixin Zhang | Rong Hu | Zhiyuan Yu
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