Satellite-Based Hydrothermal Variables Are Superior to Traditional Climate Data for Predicting Maize Yield
文献类型: 外文期刊
第一作者: Li, Rui-Qing
作者: Li, Rui-Qing;Leng, Pei;Li, Rui-Qing;Jin, Xiuliang;Zhang, Xia;Shang, Guo-Fei
作者机构:
关键词: Air temperature; land surface temperature (LST); precipitation; soil moisture (SM); yield prediction
期刊名称:IEEE GEOSCIENCE AND REMOTE SENSING LETTERS ( 影响因子:4.4; 五年影响因子:4.7 )
ISSN: 1545-598X
年卷期: 2024 年 21 卷
页码:
收录情况: SCI
摘要: Traditional climate data, such as air temperature and precipitation, have been widely used in various models for crop yield prediction. One of the major challenges is that most of these climate data were derived from either reanalysis products with relatively coarser spatial resolution or from in situ measurements with limited representativeness, which would inevitably reveal significant mismatches regarding spatial scale with other synchronously used vegetation and soil parameters at high resolution (e.g., similar to 1 km). To this end, satellite-derived land surface temperature (LST) and soil moisture (SM) at a high spatial resolution of 1 km were used as proxies of air temperature and precipitation to evaluate the feasibility of predicting maize yield in three major regions (northeast, northwest, and north China). Specifically, each region includes three provinces. Three widely used machine learning models, namely, the gradient boosting decision tree, extreme gradient boosted tree, and random forest (RF), were considered to avoid the contingency of a single model. In this study, the three models were trained at two spatial scales: 1) region by region and 2) entire maize planting area. Results indicated that using satellite-based LST and SM instead of traditional climate data of air temperature and precipitation can obtain a significantly improved maize yield prediction with the average root mean square error decreased from 862 to 827 kg/ha when the models were trained region by region and from 894 to 840 kg/ha when the models were trained over the entire maize planting area.
分类号:
- 相关文献
作者其他论文 更多>>
-
SPTS: Single Pixel in Time-Series Triangle Model for Estimating Surface Soil Moisture
作者:Ma, Tian;Leng, Pei;Aliyu Kasim, Abba;Li, Zhao-Liang;Ma, Tian;Gao, Yu-Xin;Guo, Xiaonan;Zhang, Xia;Shang, Guo-Fei;Li, Zhao-Liang
关键词:Land surface temperature (LST); Landsat; single pixel in time series (SPTS); soil moisture
-
Synergistic use of stay-green traits and UAV multispectral information in improving maize yield estimation with the random forest regression algorithm
作者:Liu, Yuan;Meng, Lin;Nie, Chenwei;Liu, Yadong;Song, Yang;Jin, Xiuliang;Liu, Yuan;Fan, Kaijian;Meng, Lin;Nie, Chenwei;Liu, Yadong;Song, Yang;Jin, Xiuliang;Cheng, Minghan
关键词:UAV multispectral; Maize yield; Stay-Green Index (SGI); Machine learning; Remote sensing
-
Research on variety identification of common bean seeds based on hyperspectral and deep learning
作者:Li, Shujia;Sun, Laijun;Zhang, Lingyu;Bai, Hongyi;Wang, Ziyue;Jin, Xiuliang;Feng, Guojun
关键词:Hyperspectral; Common bean; Convolutional neural network; Deep learning
-
Remote sensing of root zone soil moisture: A review of methods and products
作者:Kasim, Abba Aliyu;Leng, Pei;Li, Yu-Xuan;Duan, Si-Bo;Li, Zhao-Liang;Kasim, Abba Aliyu;Liao, Qian-Yu;Li, Zhao-Liang;Geng, Yun-Jing;Song, Xiaoning;Ma, Jianwei;Sun, Yayong
关键词:Root zone soil moisture; Surface soil moisture; Remote sensing; Estimation methods; Satellite-based products
-
Retrieval of global surface soil and vegetation temperatures based on multisource data fusion
作者:Liu, Xiangyang;Li, Zhao-Liang;Duan, Si-Bo;Leng, Pei;Si, Menglin;Li, Zhao-Liang;Si, Menglin
关键词:Soil temperature; Vegetation temperature; Multisource data fusion; MODIS; ERA5-land
-
Natural Variation of PH8 Allele Improves Architecture and Cold Tolerance in Rice
作者:Chen, Cheng;Zhang, Xia;Xu, Mingjia;Zhao, Weiying;Wang, Yangkai;Xiong, Jiawei;Yuan, Hua;Chen, Weilan;Tu, Bin;Li, Ting;Kang, Liangzhu;Tang, Shiwen;Wang, Yuping;Ma, Bingtian;Li, Shigui;Qin, Peng;Chen, Cheng;Zhang, Xia;Chen, Jialin;Chen, Zhuo
关键词:Rice; Plant height; Cold tolerance; GWAS; Selection
-
Nitrogen management in rice under crop rotation and nitrogen level adjustment: Comprehensive responses of soil, roots, and plant growth
作者:Song, Yunsheng;Dong, Minghui;Jin, Meijuan;Gu, Junrong;Chen, Fei;Chen, Peifeng;Jin, Xiuliang;Hu, Yajie;Wang, Yuxuan
关键词:Crop rotation; Nitrogen management; Root morphology; Nitrogen use efficiency; Soil nutrient dynamics