Remote Sensing-Based Quantification of the Summer Maize Yield Gap Induced by Suboptimum Sowing Dates over North China Plain
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Jiahua Zhang | Sha Zhang | Yun Bai | Sha Zhang | Yun Bai | Jiahua Zhang
[1] Zhimin Wang,et al. Reduced irrigation increases the water use efficiency and productivity of winter wheat-summer maize rotation on the North China Plain. , 2018, The Science of the total environment.
[2] Yaozhong Pan,et al. Prediction of Crop Yield Using Phenological Information Extracted from Remote Sensing Vegetation Index , 2021, Sensors.
[3] Jianjun Wu,et al. Intensification of historical drought over China based on a multi‐model drought index , 2020, International Journal of Climatology.
[4] Joanne C. White,et al. Generation of dense time series synthetic Landsat data through data blending with MODIS using a spatial and temporal adaptive reflectance fusion model. , 2009 .
[5] Lei Wang,et al. Identifying crop planting areas using Fourier-transformed feature of time series MODIS leaf area index and sparse-representation-based classification in the North China Plain , 2018, International Journal of Remote Sensing.
[6] Qin Yongtian,et al. Study on Cultivated Technology for Super High Yield of Summer Maize in Huanghuaihai Region , 2009 .
[7] A. McDonald,et al. Decomposing maize yield gaps differentiates entry points for intensification in the rainfed mid-hills of Nepal , 2015 .
[8] B. Kamkar,et al. Yield Gap Analysis Using Remote Sensing and Modelling Approaches: Wheat in the Northwest of Iran , 2020 .
[9] Walter T. Dado,et al. A million kernels of truth: Insights into scalable satellite maize yield mapping and yield gap analysis from an extensive ground dataset in the US Corn Belt , 2021 .
[10] D. Lobell,et al. A meta-analysis of crop yield under climate change and adaptation , 2014 .
[11] J. Ritchie,et al. A Comprehensive Review of the CERES-Wheat, -Maize and -Rice Models’ Performances , 2016 .
[12] E. Wang,et al. Declining yield potential and shrinking yield gaps of maize in the North China Plain , 2014 .
[13] P. Sentelhas,et al. Soybean-maize succession in Brazil: Impacts of sowing dates on climate variability, yields and economic profitability , 2019, European Journal of Agronomy.
[14] Liming He,et al. Cotton Yield Estimate Using Sentinel-2 Data and an Ecosystem Model over the Southern US , 2019, Remote. Sens..
[15] Fengmei Yao,et al. A comparative analysis of the NDVIg and NDVI3g in monitoring vegetation phenology changes in the Northern Hemisphere , 2018 .
[16] B. Ha,et al. Assessment of a Proximal Sensing-integrated Crop Model for Simulation of Soybean Growth and Yield , 2020, Remote. Sens..
[17] Sha Zhang,et al. A remote sensing-based two-leaf canopy conductance model: Global optimization and applications in modeling gross primary productivity and evapotranspiration of crops , 2018, Remote Sensing of Environment.
[18] Shaokun Li,et al. Canopy characteristics of high-yield maize with yield potential of 22.5 Mg ha−1 , 2017 .
[19] Tiantian Li,et al. A random forest model to predict heatstroke occurrence for heatwave in China. , 2019, The Science of the total environment.
[20] J. I. Ortiz-Monasterio,et al. Satellite detection of earlier wheat sowing in India and implications for yield trends , 2013 .
[21] D. Neuhoff,et al. Rice Yield Gaps in Smallholder Systems of the Kilombero Floodplain in Tanzania , 2020, Agronomy.
[22] J. I. Ortiz-Monasterio,et al. Yield uncertainty at the field scale evaluated with multi-year satellite data , 2007 .
[23] Dehai Zhu,et al. Improving winter wheat yield estimation by assimilation of the leaf area index from Landsat TM and MODIS data into the WOFOST model , 2015 .
[24] Peijuan Wang,et al. Yield estimation of winter wheat in the North China Plain using the remote-sensing–photosynthesis–yield estimation for crops (RS–P–YEC) model , 2011 .
[25] C. Field,et al. Crop yield gaps: their importance, magnitudes, and causes. , 2009 .
[26] Xiaoguang Yang,et al. Maize yield gaps caused by non-controllable, agronomic, and socioeconomic factors in a changing climate of Northeast China. , 2016, The Science of the total environment.
[27] S. Gallo,et al. Environmental and management variables explain soybean yield gap variability in Central Argentina , 2018, European Journal of Agronomy.
[28] D. Lobell,et al. Improving the accuracy of satellite-based high-resolution yield estimation: A test of multiple scalable approaches , 2017 .
[29] Wenzhi Zhao,et al. Validation of five global radiation models with measured daily data in China , 2004 .
[30] D. Lobell,et al. On the use of statistical models to predict crop yield responses to climate change , 2010 .
[31] R. Deihimfard,et al. Yield gap analysis simulated for sugar beet-growing areas in water-limited environments , 2020 .
[32] Mirco Boschetti,et al. Downscaling rice yield simulation at sub-field scale using remotely sensed LAI data , 2019, European Journal of Agronomy.
[33] Bhupinder S. Farmaha,et al. Contribution of persistent factors to yield gaps in high-yield irrigated maize , 2016 .
[34] Maik Rosenberger,et al. A novel algorithm for bad pixel detection and correction to improve quality and stability of geometric measurements , 2016 .
[35] K. Cassman,et al. Estimating crop yield potential at regional to national scales , 2013 .
[36] James W. Jones,et al. CSM-IXIM: A New Maize Simulation Model for DSSAT Version 4.5 , 2011 .
[37] L. Garibaldi,et al. Exploring genotype, management, and environmental variables influencing grain yield of late-sown maize in central Argentina , 2016 .
[38] D. Lobell,et al. A scalable satellite-based crop yield mapper , 2015 .
[39] Xiying Zhang,et al. Contribution of cultivar, fertilizer and weather to yield variation of winter wheat over three decades: A case study in the North China Plain , 2013 .
[40] David B. Lobell,et al. The use of satellite data for crop yield gap analysis , 2013 .
[41] M. Howden,et al. Simulation of crop and water productivity for rice (Oryza sativa L.) using APSIM under diverse agro-climatic conditions and water management techniques in Sri Lanka , 2015 .
[42] Y. Ryu,et al. BESS-Rice: A remote sensing derived and biophysical process-based rice productivity simulation model , 2018, Agricultural and Forest Meteorology.
[43] W. Xie,et al. Adapting Agriculture to Climate Change through Growing Season Adjustments: Evidence from Corn in China , 2021, American Journal of Agricultural Economics.
[44] Fusuo Zhang,et al. Understanding production potentials and yield gaps in intensive maize production in China , 2013 .
[45] Andrew E. Suyker,et al. Improving maize growth processes in the community land model: Implementation and evaluation , 2018 .
[46] R. Betts,et al. JULES-crop: a parametrisation of crops in the Joint UK Land Environment Simulator , 2014 .
[47] Jin Chen,et al. Mapping plastic greenhouse with medium spatial resolution satellite data: Development of a new spectral index , 2017 .
[48] J. Wolf,et al. Yield gap analysis with local to global relevance—A review , 2013 .
[49] David B. Lobell,et al. Using satellite remote sensing to understand maize yield gaps in the North China Plain , 2015 .
[50] E. Wang,et al. Quantifying the impact of irrigation on groundwater reserve and crop production - A case study in the North China Plain , 2015 .