Incorporating a dynamic gene-based process module into a crop simulation model
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Gerrit Hoogenboom | Willingthon Pavan | Fabio A A Oliveira | James W Jones | Mehul Bhakta | C Eduardo Vallejos | Melanie J Correll | Kenneth J Boote | José M C Fernandes | Carlos A Hölbig
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