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用于改进水分利用和产量估算的三种重要珍珠粟品种的作物模型参数化

Crop Model Parameterisation of Three Important Pearl Millet Varieties for Improved Water Use and Yield Estimation.

作者信息

Ausiku Petrus A, Annandale John G, Steyn Joachim Martin, Sanewe Andrew J

机构信息

Department of Plant and Soil Sciences, University of Pretoria, Private Bag X20, Pretoria 0028, South Africa.

Department of Crop Production and Agriculture Technologies, University of Namibia, Private Bag 13301, Windhoek 9000, Namibia.

出版信息

Plants (Basel). 2022 Mar 18;11(6):806. doi: 10.3390/plants11060806.

Abstract

Pearl millet is an important crop for food security in Asia and Africa's arid and semi-arid regions. It is widely grown as a staple cereal grain for human consumption and livestock fodder. Mechanistic crop growth and water balance models are useful to forecast crop production and water use. However, very few studies have been devoted to the development of the model parameters needed for such simulations for pearl millet. The objectives of the study were to determine crop-specific model parameters for each of three pearl millet varieties (landrace, hybrid, and improved), as well as to calibrate and validate the Soil Water Balance (SWB) model for predicting pearl millet production and water use based on weather data. The SWB was chosen because it is widely used in southern Africa; however, the developed parameters should benefit other models as well. The presented crop-specific parameter values were derived from field observations and literature. Varieties with different phenology, maturity dates and tillering habits were grown under well-watered and well-fertilised conditions for calibration purposes. The calibrated model was used to predict biomass production, grain yield and crop water use. The hybrid's water use efficiency was higher than that of the landrace and improved variety.

摘要

珍珠粟是亚洲和非洲干旱及半干旱地区粮食安全的重要作物。它作为人类食用的主要谷物和牲畜饲料被广泛种植。作物生长和水分平衡的机理模型有助于预测作物产量和用水情况。然而,针对珍珠粟此类模拟所需模型参数的研究却非常少。本研究的目的是确定三个珍珠粟品种(地方品种、杂交品种和改良品种)各自特定于作物的模型参数,以及基于气象数据校准和验证用于预测珍珠粟产量和用水的土壤水分平衡(SWB)模型。选择SWB模型是因为它在南部非洲被广泛使用;然而,所开发的参数也应会使其他模型受益。所给出的特定于作物的参数值源自实地观测和文献。为校准目的,具有不同物候期、成熟日期和分蘖习性的品种在水分充足和施肥良好的条件下种植。校准后的模型用于预测生物量生产、谷物产量和作物用水。杂交品种的水分利用效率高于地方品种和改良品种。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b631/8951074/8ed58eccaf85/plants-11-00806-g001.jpg

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