Evaluation of Random Forests (RF) for Regional and Local-Scale Wheat Yield Prediction in Southeast Australia

被引:41
作者
Pang, Alexis [1 ]
Chang, Melissa W. L. [1 ,2 ]
Chen, Yang [1 ,3 ]
机构
[1] Univ Melbourne, Fac Vet & Agr Sci, Sch Agr & Food, Parkville, Vic 3010, Australia
[2] Singapore Food Agcy, 52 Jurong Gateway Rd,14-01,JEM Off Tower, Singapore 608550, Singapore
[3] CSIRO Data61, Goods Shed North, 34 Village St, Docklands 3008, Australia
关键词
wheat; yield prediction; random forests; satellite imagery; Normalized Difference Vegetation Index (NDVI); NITROGEN-FERTILIZATION; BIOMASS ESTIMATION; REGRESSION; CORN; DROUGHT; CLIMATE; INDEXES; FIELDS; COVER; CROPS;
D O I
10.3390/s22030717
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Wheat accounts for more than 50% of Australia's total grain production. The capability to generate accurate in-season yield predictions is important across all components of the agricultural value chain. The literature on wheat yield prediction has motivated the need for more novel works evaluating machine learning techniques such as random forests (RF) at multiple scales. This research applied a Random Forest Regression (RFR) technique to build regional and local-scale yield prediction models at the pixel level for three southeast Australian wheat-growing paddocks, each located in Victoria (VIC), New South Wales (NSW) and South Australia (SA) using 2018 yield maps from data supplied by collaborating farmers. Time-series Normalized Difference Vegetation Index (NDVI) data derived from Planet's high spatio-temporal resolution imagery, meteorological variables and yield data were used to train, test and validate the models at pixel level using Python libraries for (a) regional-scale three-paddock composite and (b) individual paddocks. The composite region-wide RF model prediction for the three paddocks performed well (R-2 = 0.86, RMSE = 0.18 t ha(-1)). RF models for individual paddocks in VIC (R-2 = 0.89, RMSE = 0.15 t ha(-1)) and NSW (R-2 = 0.87, RMSE = 0.07 t ha(-1)) performed well, but moderate performance was seen for SA (R-2 = 0.45, RMSE = 0.25 t ha(-1)). Generally, high values were underpredicted and low values overpredicted. This study demonstrated the feasibility of applying RF modeling on satellite imagery and yielded 'big data' for regional as well as local-scale yield prediction.
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页数:19
相关论文
共 79 条
[1]   Quantitative Remote Sensing at Ultra-High Resolution with UAV Spectroscopy: A Review of Sensor Technology, Measurement Procedures, and Data Correction Workflows [J].
Aasen, Helge ;
Honkavaara, Eija ;
Lucieer, Arko ;
Zarco-Tejada, Pablo J. .
REMOTE SENSING, 2018, 10 (07)
[2]   Random forest regression and spectral band selection for estimating sugarcane leaf nitrogen concentration using EO-1 Hyperion hyperspectral data [J].
Abdel-Rahman, Elfatih M. ;
Ahmed, Fethi B. ;
Ismail, Riyad .
INTERNATIONAL JOURNAL OF REMOTE SENSING, 2013, 34 (02) :712-728
[3]   Calibration and validation of APSIM-Wheat and CERES-Wheat for spring wheat under rainfed conditions: Models evaluation and application [J].
Ahmed, Mukhtar ;
Akram, Mustazhar Nasib ;
Asim, Muhammad ;
Aslam, Muhammad ;
Hassan, Fayyaz-ul ;
Higgins, Stewart ;
Stockle, Claudio O. ;
Hoogenboom, Gerrit .
COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2016, 123 :384-401
[4]   Review of Machine Learning Approaches for Biomass and Soil Moisture Retrievals from Remote Sensing Data [J].
Ali, Iftikhar ;
Greifeneder, Felix ;
Stamenkovic, Jelena ;
Neumann, Maxim ;
Notarnicola, Claudia .
REMOTE SENSING, 2015, 7 (12) :16398-16421
[5]   Break crops and rotations for wheat [J].
Angus, J. F. ;
Kirkegaard, J. A. ;
Hunt, J. R. ;
Ryan, M. H. ;
Ohlander, L. ;
Peoples, M. B. .
CROP & PASTURE SCIENCE, 2015, 66 (06) :523-552
[6]  
[Anonymous], 2018, Python for Data Analysis: Data Wrangling with Pandas, NumPy, and IPython
[7]   Simulating the impact of extreme heat and frost events on wheat crop production: A review [J].
Barlow, K. M. ;
Christy, B. P. ;
O'Leary, G. J. ;
Riffkin, P. A. ;
Nuttall, J. G. .
FIELD CROPS RESEARCH, 2015, 171 :109-119
[8]  
Bergstra J, 2012, J MACH LEARN RES, V13, P281
[9]   Farmer attitudes to the use of sensors and automation in fertilizer decision-making: nitrogen fertilization in the Australian grains sector [J].
Bramley, R. G. V. ;
Ouzman, J. .
PRECISION AGRICULTURE, 2019, 20 (01) :157-175
[10]   Random forests [J].
Breiman, L .
MACHINE LEARNING, 2001, 45 (01) :5-32