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- Title
Toward a Combined Seasonal Weather and Crop Productivity Forecasting System: Determination of the Working Spatial Scale.
- Authors
Challinor, A. J.; Slingo, J. M.; Wheeler, T. R.; Craufurd, P. Q.; Grimes, D. I. F.
- Abstract
A methodology is presented for the development of a combined seasonal weather and crop productivity forecasting system. The first stage of the methodology is the determination of the spatial scale(s) on which the system could operate; this determination has been made for the case of groundnut production in India. Rainfall is a dominant climatic determinant of groundnut yield in India. The relationship between yield and rainfall has been explored using data from 1966 to 1995. On the all-India scale, seasonal rainfall explains 52% of the variance in yield. On the subdivisional scale, correlations vary between variance r² = 0.62 (significance level p < 10[sup -4]) and a negative correlation with r² = 0.1 (p = 0.13). The spatial structure of the relationship between rainfall and groundnut yield has been explored using empirical orthogonal function (EOF) analysis. A coherent, largescale pattern emerges for both rainfall and yield. On the subdivisional scale (∼300 km), the first principal component (PC) of rainfall is correlated well with the first PC of yield (r² = 0.53, p < 10[sup -4]), demonstrating that the large-scale patterns picked out by the EOFs are related. The physical significance of this result is demonstrated. Use of larger averaging areas for the EOF analysis resulted in lower and (over time) less robust correlations. Because of this loss of detail when using larger spatial scales, the subdivisional scale is suggested as an upper limit on the spatial scale for the proposed forecasting system. Further, district-level EOFs of the yield data demonstrate the validity of upscaling these data to the subdivisional scale. Similar patterns have been produced using data on both of these scales, and the first PCs are very highly correlated (r² = 0.96). Hence, a working spatial scale has been identified, typical of that used in seasonal weather forecasting, that can form the basis of crop modeling work for the case of groundnut production...
- Subjects
WEATHER forecasting; CLIMATE change; AGRICULTURAL productivity
- Publication
Journal of Applied Meteorology (1988), 2003, Vol 42, Issue 2, p175
- ISSN
0894-8763
- Publication type
Article
- DOI
10.1175/1520-0450(2003)042<0175:TACSWA>2.0.CO;2