Comparison of three calibration methods for modeling rice phenology
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G. Hoogenboom | K. Boote | R. Confalonieri | Tamer Kahveci | S. Asseng | M. Dingkuhn | U. Singh | D. Wallach | Jianqiang He | Bing Liu | Yujing Gao | Ruoyang Zhang | U. Singh
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