Volume 8, Issue 1 (spring 2004)                   2004, 8(1): 1-10 | Back to browse issues page

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M. M. Ghasemi, A. R. Sepaskhah. Prediction of Annual Precipitation in Khuzestan Province Based on Early Rain Events in Fall. Journal of Crop Production and Processing 2004; 8 (1) :1-10
URL: http://jcpp.iut.ac.ir/article-1-400-en.html
Abstract:   (11105 Views)
The vast pastures and agricultural development plans for dry farming and irrigated farming in Khuzestan Province depend on rain. This requires availability of annual precipitation prediction models to be used in the management decision-making process. In this research, the long-term daily precipitation data from 15 rain gauge stations in the study area were collected for study and a relationship between the early fall season precipitations of 42.5 mm (t42.5) and the annual precipitation was obtained. The results showed that the relationship was an inverse one such that the later the fall precipitation occurred, the greater the annual precipitation would be. To increase the coefficient of determination in the models, climatic variables such as Persian Gulf sea surface temperature and geographical characteristics (longitude, latitude, altitude, and long term mean annual precipitation) were used. Except for the long term mean annual precipitation and altitude, other variables did not increase the coefficient of determination. The final simple model found is as follows: Pa=184.787-1.891t42.5+0.855Pm , R2=0.704 where, Pa is the annual precipitation, t42.5 is the time from beginning of fall season for 42.5 mm of precipitation, and Pm is the long term mean annual precipitation.
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Type of Study: Research | Subject: General

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