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Leaching Fraction (LF) of Irrigation Water for Saline Soils Using Machine Learning
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作者 Rab Nawaz Bashir Imran Sarwar Bajwa +4 位作者 Muhammad Waseem Iqbal Muhammad Usman Ashraf Ahmed Mohammed Alghamdi Adel ABahaddad Khalid Ali Almarhabi 《Intelligent Automation & Soft Computing》 SCIE 2023年第5期1915-1930,共16页
Soil salinity is a serious land degradation issue in agriculture.It is a major threat to agriculture productivity.Extra irrigation water is applied to leach down the salts from the root zone of the plants in the form ... Soil salinity is a serious land degradation issue in agriculture.It is a major threat to agriculture productivity.Extra irrigation water is applied to leach down the salts from the root zone of the plants in the form of a Leaching fraction(LF)of irrigation water.For the leaching process to be effective,the LF of irriga-tion water needs to be adjusted according to the environmental conditions and soil salinity level in the form of Evapotranspiration(ET)rate.The relationship between environmental conditions and ET rate is hard to be defined by a linear relationship and data-driven Machine learning(ML)based decisions are required to determine the calibrated Evapotranspiration(ETc)rate.ML-assisted ETc is pro-posed to adjust the LF according to the ETc and soil salinity level.A regression model is proposed to determine the ETc rate according to the prevailing tempera-ture,humidity,and sunshine,which would be used to determine the smart LF according to the ETc and soil salinity level.The proposed model is trained and tested against the Blaney Criddle method of Reference evapotranspiration(ETo)determination.The validation of the model from the test dataset reveals the accu-racy of the ML model in terms of Root mean squared errors(RMSE)are 0.41,Mean absolute errors(MAE)are 0.34,and Mean squared errors(MSE)are 0.28 mm day-1.The applications of the proposed solution in a real-time environ-ment show that the LF by the proposed solution is more effective in reducing the soil salinity as compared to the traditional process of leaching. 展开更多
关键词 Leaching fraction saline soil EVAPOTRANSPIRATION machine learning calibrated evapotranspiration artificial intelligence blaney criddle method
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扎龙湿地参照作物蒸散发估算的经验模型 被引量:14
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作者 王昊 许士国 孙砳石 《水科学进展》 EI CAS CSCD 北大核心 2007年第2期246-251,共6页
湿地参照作物蒸散发量是湿地水量平衡的重要因素。本研究选取了扎龙湿地周边8个气象台站1961-2000年的历史数据,通过拟合经典的FAO56 Penman-Monteith模型,建立了估算扎龙芦苇湿地逐月参照作物蒸散发的经验模型。建模时考虑到各气象因... 湿地参照作物蒸散发量是湿地水量平衡的重要因素。本研究选取了扎龙湿地周边8个气象台站1961-2000年的历史数据,通过拟合经典的FAO56 Penman-Monteith模型,建立了估算扎龙芦苇湿地逐月参照作物蒸散发的经验模型。建模时考虑到各气象因子对潜在蒸散发的作用,尝试了不同的组合方式及拟合模型,最终采用月最高气温、月最低气温、月降雨量和月平均风速四个因子,建立了非线性e指数方程。该模型与Blaney-Criddle、Priestley-Taylor、Hargreaves等三个常用经验模型进行了比较,得到较好的结果。新建模型在各气象站的应用表明,能够显著逼近FAO56 Penman-Monteith模型结果,计算的逐月参照作物蒸散发具有理想的精度。 展开更多
关键词 经验模型 FAO56 Penman—Monteith Blaney—criddle Priesfley—Taylor HARGREAVES 参照作物蒸散发 扎龙湿地
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