This article focused on the comprehensive evaluation of statistical criteria applied in common mathematical models selected for experimental cold drying data for thin-layer food drying applications. In this context, Mackerel (Trachurus trachurus), known as a functional and sensitive food sample with its bioactive content, was selected as the experimental material for drying applications. For this purpose, four experimental groups (G5MM, G10MM, G15MM, G20MM) with different sample thicknesses (5, 10, 15, 20âmm) at 100âg were dried with 6âm/s air flow at 10°C for 24, 22, 20, and 14âh respectively. Twenty-three common semi-theoretic and empiric mathematical models were applied to the obtained drying values. For the comprehensive evaluation of the models, non-linear regression analysis was performed using 13 different statistical criteria such as r, RSS, SST, SSE, R (2), Ï (2), RMSE, residuals, RSSE, MBE, EF, SEE, and p. In this context, in the study where the relevant criteria were applied, for G20MM, Newton Lewis, Midilli-Küçük, Balbay and Åahin, Page, for G15MM, Henderson & Pabis, Logarithmic (Asymptotic), Binomial, Verma et al., Modified Henderson, Simplified Fick diff., Balbay and Åahin model were concluded to be the most suitable. In addition, for G10MM, Logarithmic (Asymptotic), Demir et al., Binary, Verma et al., Balbay and Åahin, Thompson and Alibas models, and in the G05MM group, Logarithmic (Asymptotic), Demir et al., Binary, Verma et al., Thompson, Balbay-Åahin and Alibas models were concluded to be the most suitable. According to the results obtained, it has been revealed that using only r, R (2), Ï (2) and RMSE equations instead of 13 statistical criteria in the evaluation of mathematical models gives significant and meaningful results.
Comprehensive Evaluation of Mathematical Models Used in the Thin-Layer Cold Dried Foods.
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作者:Kilic, Aydin
| 期刊: | Food Science & Nutrition | 影响因子: | 3.800 |
| 时间: | 2025 | 起止号: | 2025 Jul 1; 13(7):e70558 |
| doi: | 10.1002/fsn3.70558 | ||
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