A predictive model of wheat grain yield based on canopy reflectance indices and theoretical definition of yield potential

IF 2.2 4区 生物学 Q2 PLANT SCIENCES
João Paulo Pennacchi, Nicolas Virlet, João Paulo Rodrigues Alves Delfino Barbosa, Martin A. J. Parry, David Feuerhelm, Malcolm Hawkesford, Elizabete Carmo-Silva
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引用次数: 0

Abstract

Predicting crop yields through simple methods would be helpful for crop breeding programs and could be deployed at farm level to achieve accurate crop management practices. This research proposes a new method for predicting wheat grain yieldsthroughout the crop growth cycle based on canopy cover (CC) and reflectance indices, named Yieldp Model. The model was evaluated by comparing grain yields with the outputs of the proposed model using phenotypic data collected for a wheat population grown under field conditions for the 2015 and 2016 seasons. Accumulated radiation (RAD), Normalized Difference Vegetation Index (NDVI), Photochemical Reflectance Index (PRI), Water Index (WI), Harvest Index (HI) and CC indices were the components of the model. We found that the biomass accumulation predicted by the model was responsive throughout the crop cycle and the grain yield predicted was correlated to measured grain yield. The model was able to early predict grain yield based on biomass accumulated at anthesis. Evaluation of the model components enabled an improved understanding of the main factors limiting yield formation throughout the crop cycle. The proposed Yieldp Model explores a new concept of yield modelling and can be the starting point for the development of cheap and robust, on-farm, yield prediction during the crop cycle.

Abstract Image

基于冠层反射率指数和产量潜力理论定义的小麦产量预测模型
通过简单的方法预测作物产量将有助于作物育种计划,并可在农场一级部署,以实现准确的作物管理实践。本文提出了一种基于冠层覆盖度(CC)和反射率指数预测小麦生长周期产量的新方法——产量模型。通过对2015年和2016年在田间条件下种植的小麦群体收集的表型数据,将粮食产量与拟议模型的产量进行比较,对该模型进行了评估。累积辐射(RAD)、归一化植被指数(NDVI)、光化学反射率指数(PRI)、水分指数(WI)、收获指数(HI)和CC指数是该模型的组成部分。研究发现,该模型预测的生物量积累在整个作物周期中具有响应性,预测的粮食产量与实测值具有相关性。该模型能够根据花期积累的生物量对籽粒产量进行早期预测。通过对模型组成部分的评估,可以更好地了解整个作物周期中限制产量形成的主要因素。提出的Yieldp模型探索了产量建模的新概念,可以成为作物周期中廉价且可靠的农场产量预测发展的起点。
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来源期刊
CiteScore
4.20
自引率
7.70%
发文量
32
期刊介绍: The journal does not publish articles in taxonomy, anatomy, systematics and ecology unless they have a physiological approach related to the following sections: Biochemical Processes: primary and secondary metabolism, and biochemistry; Photobiology and Photosynthesis Processes; Cell Biology; Genes and Development; Plant Molecular Biology; Signaling and Response; Plant Nutrition; Growth and Differentiation: seed physiology, hormonal physiology and photomorphogenesis; Post-Harvest Physiology; Ecophysiology/Crop Physiology and Stress Physiology; Applied Plant Ecology; Plant-Microbe and Plant-Insect Interactions; Instrumentation in Plant Physiology; Education in Plant Physiology.
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