Precision irrigation perspectives on the sustainable water-saving of field crop production in China: Water demand prediction and irrigation scheme optimization
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Xinxing Li | Zetian Fu | Yaoqi Peng | Yongjun Zheng | Yuhong Dong | Zetian Fu | Yongjun Zheng | Xinxing Li | Dong Yuhong | Yingxin Xiao | Haijun Yan | Yan Haijun | Peng Yaoqi | Xiao Yingxin
[1] Guohe Huang,et al. A hybrid fuzzy-stochastic programming method for water trading within an agricultural system , 2014 .
[2] Xiaoling Zhang,et al. Influence of drip irrigation by reclaimed water on the dynamic change of the nitrogen element in soil and tomato yield and quality , 2016 .
[3] Hamid Taghavifar,et al. Appraisal of artificial neural networks to the emission analysis and prediction of CO2, soot, and NOx of n-heptane fueled engine , 2016 .
[4] Song Xue,et al. Effect of optimization forms of flow path on emitter hydraulic and anti-clogging performance in drip irrigation system , 2017, Irrigation Science.
[5] Craig H. Bishop,et al. Adaptive sampling with the ensemble transform Kalman filter , 2001 .
[6] F. Tsai,et al. Prediction of effluent quality parameters of a wastewater treatment plant using a supervised committee fuzzy logic model , 2018 .
[7] Joaquín Izquierdo,et al. Hybrid regression model for near real-time urban water demand forecasting , 2017, J. Comput. Appl. Math..
[8] C. Biernath,et al. Evaluating the ability of four crop models to predict different environmental impacts on spring wheat grown in open-top chambers , 2011 .
[9] Xinguang He,et al. A hybrid wavelet neural network model with mutual information and particle swarm optimization for forecasting monthly rainfall , 2015 .
[10] Ehsan Ardjmand,et al. Water demand forecasting: review of soft computing methods , 2017, Environmental Monitoring and Assessment.
[11] Xiaoyin Liu,et al. Comparison of 16 models for reference crop evapotranspiration against weighing lysimeter measurement , 2017 .
[12] Xiaoshuan Zhang,et al. Energy-efficient sensing method for table grapes cold chain management , 2017 .
[13] A. Chukalla. Interactive comment on “ Marginal cost curves for water footprint reduction in irrigated agriculture : guiding a cost-effective reduction of crop water consumption to a benchmark or permit level ” , 2017 .
[14] Fariborz Haghighat,et al. A new multiple regression model for predictions of urban water use , 2016 .
[15] Z. Hao,et al. China's water sustainability in the 21st century: a climate-informed water risk assessment covering multi-sector water demands , 2013 .
[16] Jae-Dong Jang,et al. Estimation of soil moisture using deep learning based on satellite data: a case study of South Korea , 2018, GIScience & Remote Sensing.
[17] A. Hoekstra,et al. Marginal cost curves for water footprint reduction in irrigated agriculture: Guiding a cost-effective reduction of crop water consumption to a permit or benchmark level , 2017 .
[18] M. A. Mottalib,et al. Feasibility of solar pump for sustainable irrigation in Bangladesh , 2015 .
[19] Vugar E. Ismailov,et al. On the approximation by neural networks with bounded number of neurons in hidden layers , 2014 .
[20] T. Gallali,et al. Impact of three and seven years of no-tillage on the soil water storage, in the plant root zone, under a dry subhumid Tunisian climate , 2013 .
[21] F. Ma,et al. Rice root system spatial distribution characteristics at flowering stage and grain yield under plastic mulching drip irrigation (PMDI). , 2014 .
[22] Peijiang Yuan,et al. The superior fault tolerance of artificial neural network training with a fault/noise injection-based genetic algorithm , 2016, Protein & Cell.
[23] H. Troy Nagle,et al. Performance of the Levenberg–Marquardt neural network training method in electronic nose applications , 2005 .