Estimation of soil temperature from meteorological data using different machine learning models
文献类型: 外文期刊
第一作者: Feng, Yu
作者: Feng, Yu;Hao, Weiping;Gao, Lili;Gong, Daozhi;Cui, Ningbo;Cui, Ningbo
作者机构:
关键词: Soil temperature; Machine learning models; Soil depth; Extreme learning machine
期刊名称:GEODERMA ( 影响因子:6.114; 五年影响因子:6.183 )
ISSN: 0016-7061
年卷期: 2019 年 338 卷
页码:
收录情况: SCI
摘要: Soil temperature (T-s) plays a key role in physical, biological and chemical processes in terrestrial ecosystems. Accurate estimation of T-s at various soil depths is crucial for land-atmosphere interactions. This study investigated the applicability of four different machine learning models, extreme learning machine (ELM), generalized regression neural networks (GRNN), backpropagation neural networks (BPNN) and random forests (RF), for modeling half-hourly T-s at four different depths of 2 cm, 5 cm, 10 cm, and 20 cm on the Loess Plateau of China. A field experiment was conducted to measure half-hourly T-s and meteorological variables. Air temperature, wind speed, relative humidity, solar radiation, and vapor pressure deficit were used as inputs to train the models for estimation of half-hourly T-s. The results showed ELM, GRNN, BPNN and RF models provided desirable performance in modeling half-hourly T-s at all depths, with root mean square error values ranging 2.26-2.95, 2.36-3.10, 2.32-3.04 and 2.31-3.00 degrees C, mean absolute error values ranging 1.76-2.26, 1.83-2.31, 1.80-2.32 and 1.79-2.26 degrees C, Nash-Sutcliffe coefficient values ranging 0.856-0.930, 0.841-0.924, 0.847-0.927 and 0.850-0.927, and concordance correlation coefficient values ranging 0.925-0.965, 0.925-0.963, 0.928-0.963, and 0.924-0.961 for the ELM, GRNN, BPNN, and RF models, respectively. There was a statistically significant agreement (P < 0.001) between the measured and modeled values at both half-hour and daily timescales, and the box plots showed the distributional differences between the measured and modeled values were small. Generally, the ELM model had slightly better performance with much better computation speed than GRNN, BPNN as well as RF models at half-hourly timescales, thus the ELM model was highly recommended to estimate T-s at different soil depths.
分类号:
- 相关文献
作者其他论文 更多>>
-
Effect of practicing water-saving irrigation on greenhouse gas emissions and crop productivity: A global meta-analysis
作者:Tan, Mingdong;Cui, Ningbo;Jiang, Shouzheng;Xing, Liwen;Wen, Shenglin;Liu, Quanshan;Wang, Zhihui;Tan, Mingdong;Cui, Ningbo;Jiang, Shouzheng;Xing, Liwen;Wen, Shenglin;Liu, Quanshan;Wang, Zhihui;Li, Weikang;Yan, Siwei;Wang, Yaosheng;Jin, Haochen
关键词:Irrigation method; Agricultural greenhouse effect; Water use efficiency; Crop yield
-
Estimating stomatal conductance of citrus orchard based on UAV multi-modal information in Southwest China
作者:Liu, Quanshan;Wu, Zongjun;Cui, Ningbo;Zheng, Shunsheng;Jiang, Shouzheng;Wang, Zhihui;Zhao, Lu;Liu, Quanshan;Wu, Zongjun;Cui, Ningbo;Zheng, Shunsheng;Jiang, Shouzheng;Wang, Zhihui;Zhao, Lu;Gong, Daozhi;Wang, Yaosheng;Wei, Renjuan
关键词:Stomatal conductance (Gs); UAV multimodal information; Soil moisture content (SMC); Kernel extreme learning machine (KELM); Black-winged kite algorithm (BKA); Black-winged kite algorithm (BKA)
-
Deciphering the preservative effects of protamine from Xinjiang Coregonus peled on grass carp (Ctenopharyngodon idellus) fillets during refrigerated storage: a perspective from the microbiome
作者:Zhang, Rong;Gao, Yanan;Zhu, Song;Gao, Lili;Zhao, Xueqin;Liu, Shuyan;Fan, Xiaoji;Wang, Tingzhang;Zhang, Rong;Fan, Yiling;Zhu, Song;Gao, Lili;Zhao, Xueqin;Jiang, Dan;Ma, Zhuang;Liu, Shuyan
关键词:Grass carp; Refrigerated storage; Protamine; Food preservative; Compound preservative; Microbiome
-
Lipoic Acid Enhances the Defense Capability of Citrus Fruits to Blue Mold Caused by Penicillium italicum
作者:Lu, Zhihong;Hong, Min;Wang, Rikui;Feng, Yu;He, Mingyang;Hong, Min;He, Mingyang;Cheng, Shiming
关键词:lipoic acid; citrus;
Penicillium italicum ; natural compound; defense capability -
Deficit irrigation enhances yield and water productivity of apples by inhibiting excessive vegetative growth and improving photosynthetic performance
作者:Wen, Shenglin;Cui, Ningbo;Xing, Liwen;Wu, Zongjun;Zhang, Yixuan;Wang, Zhihui;Wen, Shenglin;Cui, Ningbo;Xing, Liwen;Wu, Zongjun;Zhang, Yixuan;Wang, Zhihui;Wang, Yaosheng;Gong, Daozhi
关键词:Drip irrigation; Growth indicators; Leaf area index; Photosynthetic parameters; Structural equation modeling
-
Optimization of kiwifruit irrigation strategies using multi-objective optimization algorithms coupled with water production functions
作者:Zheng, Shunsheng;Cui, Ningbo;Wang, Zhihui;Chen, Fei;Liu, Quanshan;Jiang, Shouzheng;Zheng, Shunsheng;Cui, Ningbo;Wang, Zhihui;Chen, Fei;Liu, Quanshan;Jiang, Shouzheng;Gong, Daozhi
关键词:Deficit irrigation; Precision irrigation; Multi-objective optimization; Water allocation strategy; Water deficit sensitivity index; Jensen model
-
Effect of different data quality control on evapotranspiration of winter wheat with Bowen ratio method
作者:Wu, Yingnan;Li, Qiaozhen;Zhong, Xiuli;Gong, Daozhi;Liu, Xiaoying
关键词:Crop evaporation; Energy balance; Diurnal effect; Stage and seasonal effect; Invalid rejection