Moreno-Cadena Patricia, Hoogenboom Gerrit, Cock James H, Ramirez-Villegas Julian, Pypers Pieter, Kreye Christine, Tariku Meklit, Ezui Kodjovi Senam, Becerra Lopez-Lavalle Luis Augusto, Asseng Senthold
Agricultural and Biological Engineering Department, University of Florida, 101 Frazier Rogers Hall, PO Box 110570, Gainesville, FL, 32611-0570, USA.
Alliance of Bioversity International and International Center for Tropical Agriculture (CIAT), km 17 recta Cali-Palmira, 763537, Cali, Colombia.
Field Crops Res. 2021 Jun 15;267:108140. doi: 10.1016/j.fcr.2021.108140.
Cassava is an important crop in the developing world. The goal of this study was to review published cassava models (18) for their capability to simulate storage root biomass and to categorize them into static and dynamic models. The majority (14) are dynamic and capture within season growth dynamics. Most (13) of the dynamic models consider environmental factors such as temperature, solar radiation, soil water and nutrient restrictions. More than half (10) have been calibrated for a distinct genotype. Only one of the four static models includes environmental variables. While the static regression models are useful to estimate final yield, their application is limited to the locations or varieties used for their development unless recalibrated for distinct conditions. Dynamic models simulate growth process and provide estimates of yield over time with, in most cases, no fixed maturity date. The dynamic models that simulate the detailed development of nodal units tend to be less accurate in determining final yield compared to the simpler dynamic and statistic models. However, they can be more safely applied to novel environmental conditions that can be explored Deficiencies in the current models are highlighted including suggestions on how they can be improved. None of the current dynamic cassava models adequately simulates the starch content of fresh cassava roots with almost all models based on dry biomass simulations. Further studies are necessary to develop a new module for existing cassava models to simulate cassava quality.
木薯是发展中世界的一种重要作物。本研究的目的是回顾已发表的木薯模型(18个)模拟块根生物量的能力,并将它们分为静态模型和动态模型。大多数(14个)是动态模型,能够捕捉季节内的生长动态。大多数(13个)动态模型考虑了环境因素,如温度、太阳辐射、土壤水分和养分限制。超过一半(10个)已针对特定基因型进行了校准。四个静态模型中只有一个包含环境变量。虽然静态回归模型有助于估计最终产量,但除非针对不同条件重新校准,否则其应用仅限于用于模型开发的地点或品种。动态模型模拟生长过程,并在大多数情况下在没有固定成熟日期的情况下随时间提供产量估计。与更简单的动态模型和统计模型相比,模拟节点单元详细发育的动态模型在确定最终产量方面往往不太准确。然而,它们可以更安全地应用于可以探索的新环境条件。文中强调了当前模型存在的不足,并给出了如何改进的建议。目前没有一个动态木薯模型能够充分模拟新鲜木薯根的淀粉含量,几乎所有模型都是基于干生物量模拟的。有必要开展进一步研究,为现有木薯模型开发一个新模块来模拟木薯品质。