利用机器学习算法模型估算干旱地区的马铃薯水足迹

IF 2.3 3区 农林科学 Q1 AGRONOMY Potato Research Pub Date : 2024-04-02 DOI:10.1007/s11540-024-09716-1
Amal Mohamed Abdel-Hameed, Mohamed Abuarab, Nadhir Al-Ansari, Hazem Sayed, Mohamed A. Kassem, Ahmed Elbeltagi, Ali Mokhtar
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引用次数: 0

摘要

为了实现水资源管理的可持续性,需要对水足迹进行精确评估,以提高农业灌溉用水量和作物产量。虽然彭曼-蒙蒂斯方法比其他方法更成功,也是最常用的水足迹计算技术,但它需要大量不同时空尺度的气象参数,而埃及等许多发展中国家有时无法获得这些参数。机器学习模型因其在输入和输出的非线性关系中的高性能而被广泛用于表示复杂的现象。因此,本研究的目标是:(1) 在埃及尼罗河三角洲的三个马铃薯省(Al-Gharbia、Al-Dakahlia 和 Al-Beheira)开发和比较四种机器学习模型:支持向量回归 (SVR)、随机森林 (RF)、极端梯度提升 (XGB) 和人工神经网络 (ANN);(2) 在气候输入变量的最佳组合中选择最佳模型。本研究使用的可用变量包括最高气温(Tmax)、最低气温(Tmin)、平均气温(Tave)、风速(WS)、相对湿度(RH)、降水量(P)、蒸气压差(VPD)、太阳辐射(SR)、播种面积(SA)和作物系数(Kc),用于预测 1990-2016 年间的马铃薯蓝水足迹(BWF)。使用输入变量的六种情景(Sc1-Sc6)来测试各变量在四个应用模型中的权重。结果表明,基于蒸气压差、降水、太阳辐射和作物系数数据,使用 XGB 和 ANN 模型的 Sc5 在预测该干旱地区的蓝水足迹方面取得了最理想的结果,其次是 Sc1。所创建的模型产生了相对较好的结果,有助于水资源管理和发展规划人员的决策过程。
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Estimation of Potato Water Footprint Using Machine Learning Algorithm Models in Arid Regions

Precise assessment of water footprint to improve the water consumption and crop yield for irrigated agricultural efficiency is required in order to achieve water management sustainability. Although Penman-Monteith is more successful than other methods and it is the most frequently used technique to calculate water footprint, however, it requires a significant number of meteorological parameters at different spatio-temporal scales, which are sometimes inaccessible in many of the developing countries such as Egypt. Machine learning models are widely used to represent complicated phenomena because of their high performance in the non-linear relations of inputs and outputs. Therefore, the objectives of this research were to (1) develop and compare four machine learning models: support vector regression (SVR), random forest (RF), extreme gradient boost (XGB), and artificial neural network (ANN) over three potato governorates (Al-Gharbia, Al-Dakahlia, and Al-Beheira) in the Nile Delta of Egypt and (2) select the best model in the best combination of climate input variables. The available variables used for this study were maximum temperature (Tmax), minimum temperature (Tmin), average temperature (Tave), wind speed (WS), relative humidity (RH), precipitation (P), vapor pressure deficit (VPD), solar radiation (SR), sown area (SA), and crop coefficient (Kc) to predict the potato blue water footprint (BWF) during 1990–2016. Six scenarios (Sc1–Sc6) of input variables were used to test the weight of each variable in four applied models. The results demonstrated that Sc5 with the XGB and ANN model gave the most promising results to predict BWF in this arid region based on vapor pressure deficit, precipitation, solar radiation, crop coefficient data, followed by Sc1. The created models produced comparatively superior outcomes and can contribute to the decision-making process for water management and development planners.

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来源期刊
Potato Research
Potato Research AGRONOMY-
CiteScore
5.50
自引率
6.90%
发文量
66
审稿时长
>12 weeks
期刊介绍: Potato Research, the journal of the European Association for Potato Research (EAPR), promotes the exchange of information on all aspects of this fast-evolving global industry. It offers the latest developments in innovative research to scientists active in potato research. The journal includes authoritative coverage of new scientific developments, publishing original research and review papers on such topics as: Molecular sciences; Breeding; Physiology; Pathology; Nematology; Virology; Agronomy; Engineering and Utilization.
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