From multiple cropping index to multiple cropping frequency: Observing cropland use intensity at a finer scale
文献类型: 外文期刊
第一作者: Xiang, Mingtao
作者: Xiang, Mingtao;Yu, Qiangyi;Wu, Wenbin
作者机构:
关键词: Cropping intensity; Land use; Agricultural intensification; Crop phenology; Data fusion; Uncertainty
期刊名称:ECOLOGICAL INDICATORS ( 影响因子:4.958; 五年影响因子:5.846 )
ISSN: 1470-160X
年卷期: 2019 年 101 卷
页码:
收录情况: SCI
摘要: Accurate observations on multiple cropping practices are required to better understand the status and potential of cropland use intensity. However, previous studies largely relied on multiple cropping index (MCI), which only measures the average state for an administrative unit. In this study we use various satellite images to observe the multiple cropping frequency (MCF), in order to know how MCF improves the observation of multiple cropping practices as an alternative of MCI, and how temporal and spatial resolution affect the observation of MCF. We apply the NDVI time-series curve to observe cropland phenology, and subsequently to estimate the MCF by counting the number of peaks. Three MCF maps are developed for the experimental region (Jinxian County, Poyang Lake Plain, South China) in the year 2015 based on MODIS, GF (GF-1/WFV) and GF-MODIS fusion, which represent a character of higher temporal resolution, higher spatial resolution, and higher temporal-spatial resolution, respectively. All these maps have detected multiple cropping patterns, including various single-, double-and triple-cropping pixels: 90.38%, 9.54%, and 0.08% from the MODIS map, 70.32%, 29.27%, and 0.41% from the GF map, and 64.85%, 33.62%, and 1.53% from the GF-MODIS map. The confusion matrix containing 161 field samples shows that the overall accuracy and Kappa coefficient are 62.11% and 0.34, 78.88% and 0.65, and 90.06% and 0.84, for the MODIS, GF, and GF-MODIS maps, respectively. Moreover, the statistics show that the county-level MCI is 1.42, while the aggregated MCI for these maps are 1.10, 1.30, and 1.37, respectively. Our study indicates that the GF-MODIS map not only has highest accuracy but also has a closest estimation on MCI. It implies that higher spatial resolution is the first necessity for mapping the MCF in the landscape fragmented region. Higher temporal resolution is also important to distinguish the nuances on MCF induced by crop rotation.
分类号:
- 相关文献
作者其他论文 更多>>
-
Extreme surface solar ultraviolet radiation events reduce maize yields in China
作者:Guan, Haixiang;Huang, Jianxi;Li, Xuecao;Zeng, Yelu;Su, Wei;Miao, Shuangxi;Zhu, Peng;Huang, Jianxi;Huang, Jianxi;Li, Xuecao;Zeng, Yelu;Su, Wei;Miao, Shuangxi;Jin, Zhenong;Ma, Yuyang;Wu, Wenbin;Wu, Wenbin;Wu, Bingfang;Wu, Bingfang
关键词:
-
Crop sample prediction and early mapping based on historical data: Exploration of an explainable FKAN framework
作者:Cheng, Feifei;Qiu, Bingwen;Yang, Peng;Wu, Wenbin;Yu, Qiangyi;Qian, Jianping;Wu, Bingfang;Chen, Jin;Chen, Xuehong;Tubiello, Francesco N.;Tryjanowski, Piotr;Takacs, Viktoria;Duan, Yuanlin;Lin, Lihui;Wang, Laigang;Zhang, Jianyang;Dong, Zhanjie
关键词:Historical Data; Sample generation; Crop mapping; Interpretability; Google Earth Engine
-
Estimating the spatial distribution and exploring the factors influencing cultivated land quality through a hybrid random forest and Bayesian maximum entropy model
作者:Fei, Xufeng;Lou, Zhaohan;Sheng, Meiling;Xiang, Mingtao;Ren, Zhouqiao;Lv, Xiaonan;Fei, Xufeng;Sheng, Meiling;Xiang, Mingtao;Ren, Zhouqiao;Lv, Xiaonan;Xiao, Rui
关键词:Soil quality; Spatial analysis; Bayesian maximum entropy; Influencing factors; Machine learning
-
Field-scale irrigated winter wheat mapping using a novel cross-region slope length index in 3D canopy hydrothermal and spectral feature space
作者:Zhang, Youming;Yang, Guijun;Li, Zhenhong;Liu, Miao;Zhang, Jing;Gao, Meiling;Zhu, Wu;Zhang, Youming;Yang, Guijun;Yang, Xiaodong;Song, Xiaoyu;Long, Huiling;Liu, Miao;Meng, Yang;Thenkabail, Prasad S.;Wu, Wenbin;Zuo, Lijun;Meng, Yang
关键词:Winter wheat; Irrigation mapping; Hydrothermal and spectral feature; Cross-region; Rainfed line; Slope Length Index
-
Exploring the spatio-temporal dynamics and driving mechanisms of toxic metal pollution in soil using a hybrid machine learning-based model
作者:Xiang, Mingtao;Lou, Zhaohan;Sheng, Meiling;Ren, Zhouqiao;Fei, Xufeng;Lv, Xiaonan;Xiang, Mingtao;Sheng, Meiling;Ren, Zhouqiao;Fei, Xufeng;Lv, Xiaonan;Xiao, Rui
关键词:Toxic metals; Risk assessment; Spatio-temporal variation; Source-oriented health risk; Driving factors
-
A robust framework for mapping complex cropping patterns: The first national-scale 10 m map with 10 crops in China using Sentinel 1/2 images
作者:Qiu, Bingwen;Wu, Fangzheng;Hu, Xiang;Yang, Peng;Wu, Wenbin;Qian, Jianping;Chen, Jin;Chen, Xuehong;He, Liyin;Joe, Berry;Tubiello, Francesco N.;Wang, Laigang
关键词:Cropping patterns mapping; Model generalization; Dual-driven models; Crop diversity; Sentinel-1/2
-
Customized crop feature construction using genetic programming for early-and in-season crop mapping☆
作者:Wen, Caiyun;Lu, Miao;Xia, Lang;Sun, Jing;Shi, Yun;Wei, Yanbing;Wu, Wenbin;Lu, Miao;Bi, Ying;Bi, Ying
关键词:Remote Sensing; Crop mapping; Genetic Programming; Feature Construction; Customized feature