Predicting Equivalent Water Thickness in Wheat Using UAV Mounted Multispectral Sensor through Deep Learning Techniques
文献类型: 外文期刊
第一作者: Traore, Adama
作者: Traore, Adama;Duan, Aiwang;Soothar, Mukesh Kumar;Zhao, Ben;Ata-Ul-Karim, Syed Tahir;Traore, Seydou
作者机构:
关键词: equivalent water thickness; UAV; deep learning; vegetation indices; multispectral images
期刊名称:REMOTE SENSING ( 影响因子:4.848; 五年影响因子:5.353 )
ISSN:
年卷期: 2021 年 13 卷 21 期
页码:
收录情况: SCI
摘要: The equivalent water thickness (EWT) is an important biophysical indicator of water status in crops. The effective monitoring of EWT in wheat under different nitrogen and water treatments is important for irrigation management in precision agriculture. This study aimed to investigate the performances of machine learning (ML) algorithms in retrieving wheat EWT. For this purpose, a rain shelter experiment (Exp. 1) with four irrigation quantities (0, 120, 240, 360 mm) and two nitrogen levels (75 and 255 kg N/ha), and field experiments (Exps. 2-3) with the same irrigation and rainfall water levels (360 mm) but different nitrogen levels (varying from 75 to 255 kg N/ha) were conducted in the North China Plain. The canopy reflectance was measured for all plots at 30 m using an unmanned aerial vehicle (UAV)-mounted multispectral camera. Destructive sampling was conducted immediately after the UAV flights to measure total fresh and dry weight. Deep Neural Network (DNN) is a special type of neural network, which has shown performance in regression analysis is compared with other machine learning (ML) models. A feature selection (FS) algorithm named the decision tree (DT) was used as the automatic relevance determination method to obtain the relative relevance of 5 out of 67 vegetation indices (Vis), which were used for estimating EWT. The selected VIs were used to estimate EWT using multiple linear regression (MLR), deep neural network multilayer perceptron (DNN-MLP), artificial neural networks multilayer perceptron (ANN-MLP), boosted tree regression (BRT), and support vector machines (SVMs). The results show that the DNN-MLP with R-2 = 0.934, NSE = 0.933, RMSE = 0.028 g/cm(2), and MAE of 0.017 g/cm(2) outperformed other ML algorithms (ANN-MPL, BRT, and SVM- Polynomial) owing to its high capacity for estimating EWT as compared to other ML methods. Our findings support the conclusion that ML can potentially be applied in combination with VIs for retrieving EWT. Despite the complexity of the ML models, the EWT map should help farmers by improving the real-time irrigation efficiency of wheat by quantifying field water content and addressing variability.
分类号:
- 相关文献
作者其他论文 更多>>
-
Application of resource-environmental-economic perspective for optimal water and nitrogen rate under high-low seedbed cultivation in winter wheat
作者:Liu, Junming;Si, Zhuanyun;Fu, Yuanyuan;Zhang, Yingying;Kpalari, Djifa Fidele;Wu, Xiaolei;Cao, Hui;Gao, Yang;Duan, Aiwang;Liu, Junming;Kpalari, Djifa Fidele;Wu, Xiaolei;Cao, Hui;Wu, Lifeng;Gao, Yang;Duan, Aiwang;Gao, Yang
关键词:Resource use efficiency; Environmental footprint; Net benefit; Water and nitrogen regime
-
Nanotechnology in precision agriculture: Advancing towards sustainable crop production
作者:Zain, Muhammad;Ma, Haijiao;Sun, Chengming;Rahman, Shafeeq Ur;Nuruzzaman, Md.;Chaudhary, Sadaf;Azeem, Imran;Azeem, Imran;Mehmood, Faisal;Duan, Aiwang;Mehmood, Faisal
关键词:Nanotechnology; Precision agriculture; Nanosensors; Sustainable agriculture
-
Revisiting the relationship between nitrogen nutrition index and yield across major species
作者:Rodriguez, Ignacio M.;Lacasa, Josefina;van Versendaal, Emmanuela;Sandana, Patricio G.;Ciampitti, Ignacio A.;Lemaire, Gilles;Belanger, Gilles;Jego, Guillaume;Sandana, Patricio G.;Soratto, Rogerio P.;Djalovic, Ivica;Ata-Ul-Karim, Syed Tahir;Rodriguez, Ignacio M.;Calvo, Nahuel I. Reussi;Giletto, Claudia M.;Zhao, Ben
关键词:Nitrogen nutrition index NNI; Critical nitrogen (N) concentration; Nutrient management practices; Yield; Crops
-
Optimizing irrigation and N fertigation regimes achieved high yield and water productivity and low N leaching in a maize field in the North China Plain
作者:Ning, Dongfeng;Qin, Anzhen;Gao, Yang;Zhang, Jiyang;Duan, Aiwang;Liu, Zhandong;Chen, Haiqing;Wang, Xingpeng
关键词:Drip-fertigation; Grain yield; Nitrate nitrogen; Water -N productivity
-
The high-low seedbed cultivation increases crop yield, economic benefit, and energy efficiency while reducing the carbon footprint of winter wheat
作者:Liu, Junming;Si, Zhuanyun;Kader, Mounkaila Hamani Abdoul;Wu, Lifeng;Wu, Xiaolei;Cao, Hui;Gao, Yang;Duan, Aiwang;Liu, Junming;Kader, Mounkaila Hamani Abdoul;Wu, Xiaolei;Cao, Hui;Li, Shuang;Wu, Lifeng
关键词:Carbon footprint; Economic benefits; Energy use efficiency; Grain yield; High-low seedbed cultivation
-
A Review on Regulation of Irrigation Management on Wheat Physiology, Grain Yield, and Quality
作者:Si, Zhuanyun;Qin, Anzhen;Liang, Yueping;Duan, Aiwang;Gao, Yang
关键词:wheat; irrigation management; water productivity; physiology; yield and quality
-
Assessment and Application of EPIC in Simulating Upland Rice Productivity, Soil Water, and Nitrogen Dynamics under Different Nitrogen Applications and Planting Windows
作者:Hussain, Tajamul;Ben, Zhao;Hussain, Nurda;Duangpan, Saowapa;Hussain, Tajamul;Gollany, Hero T.;Mulla, David J.;Tahir, Muhammad;Maqbool, Saliha;Ben, Zhao;Ata-Ul-Karim, Syed Tahir;Liu, Ke
关键词:yield; evapotranspiration; runoff; N mineralization; nitrate leaching; volatilization