Evaluation of the Integrated Canadian Crop Yield Forecaster (ICCYF) model for in-season prediction of crop yield across the Canadian agricultural landscape

被引:105
|
作者
Chipanshi, Aston [1 ]
Zhang, Yinsuo [2 ]
Kouadio, Louis [3 ]
Newlands, Nathaniel [3 ]
Davidson, Andrew [2 ]
Hill, Harvey [4 ]
Warren, Richard [5 ]
Qian, Budong [6 ]
Daneshfar, Bahram [2 ]
Bedard, Frederic [7 ]
Reichert, Gordon [7 ]
机构
[1] Agr & Agri Food Canada, Sci & Technol Branch, Geomat & Earth Observat Div ACGEO, AgroClimate, Regina, SK S4P OM3, Canada
[2] AAFC, STB, ACGEO, Ottawa, ON K1A 0C6, Canada
[3] AAFC, STB, Lethbridge Res Ctr, Lethbridge, AB T1J 4B1, Canada
[4] AAFC, STB, ACGEO, Saskatoon, SK S7N 0X2, Canada
[5] AAFC, STB, ACGEO, Fredericton, NB E3B 4Z7, Canada
[6] AAFC, STB, Eastern Cereal & Oilseed Res Ctr, Ottawa, ON K1A 0C6, Canada
[7] STAT Canada, Div Agr, Remote Sensing & Geospatial Anal, Ottawa, ON K1A 0T6, Canada
关键词
Probabilistic yield forecast; ICCYF; Canada; Spring wheat; Barley; Canola; WHEAT YIELDS; SIMULATION; CORN; MOISTURE; WEATHER; SYSTEMS;
D O I
10.1016/j.agrformet.2015.03.007
中图分类号
S3 [农学(农艺学)];
学科分类号
0901 ;
摘要
Early warning information on crop yield and production are very crucial for both farmers and decision-makers. In this study, we assess the skill and the reliability of the Integrated Canadian Crop Yield Forecaster (ICCYF), a regional crop yield forecasting tool, at different temporal (i.e. 1-3 months before harvest) and spatial (i.e. census agricultural region - CAR, provincial and national) scales across Canada. A distinct feature of the ICCYF is that it generates in-season yield forecasts well before the end of the growing season and provides a probability distribution of the forecasted yields. The ICCYF integrates climate, remote sensing derived vegetation indices, soil and crop information through a physical process-based soil water budget model and statistical algorithms. The model was evaluated against yield survey data of spring wheat, barley and canola during the 1987-2012 period. Our results showed that the ICCYF performance exhibited a strong spatial pattern at both CAR and provincial scales. Model performance was better from regions with a good coverage of climate stations and a high percentage of cropped area. On average, the model coefficient of determination at CAR level was 66%, 51% and 67%, for spring wheat, barley and canola, respectively. Skilful forecasts (i.e. model efficiency index >0) were achieved in 70% of the CARs for spring wheat and canola, and 43% for barley (low values observed in CAR with small harvested area). At the provincial scale, the mean absolute percentage errors (MAPE) of the September forecasts ranged from 7% to 16%, 7% to 14%, and 6% to 14% for spring wheat, barley and canola, respectively. For forecasts at the national scale, MAPE values (i.e. 8%, 5% and 9% for the three respective crops) were considerably smaller than the corresponding historical coefficients of variation (i.e. 17%, 10% and 17% for the three crops). Overall, the ICCYF performed better for spring wheat than for canola and barley at all the three spatial scales. Skilful forecasts were achieved by mid-August, giving a lead time of about 1 month before harvest and about 3-4 months before the final release of official survey results. As such, the ICCYF could be used as a complementary tool for the traditional survey method, especially in areas where it is not practical to conduct such surveys. Crown Copyright (C) 2015 Published by Elsevier B.V.
引用
收藏
页码:137 / 150
页数:14
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