Fig. 1. Root Mean Square Error of heading date estimates for cv. Shindongjin using ORYZA2000 model.
Fig. 2. The values of (A) the determinant coefficient and (B) root mean square error of yield estimates using ORYZA2000 model, respectively.
Table 1. List of the phenology parameters for calibration
Table 2. List of the growth parameters for calibration
Table 3. The quantile values of the phenology development parameters calibrated with DRATES for ORYZA2000 model
Table 4. The quantile values of the phenological development parameters calibrated with QUESO for ORYZA2000 model
Table 5. The quantile values of the growth parameters calibrated with QUESO for ORYZA2000 model
참고문헌
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