Umar, Sheikh and Khan, Junaid and Malik, Mohd and Manzoor, Saika and Mushtaq, Jasir (2018) Prediction of Runoff in Dachigam Catchment and Generation of Time Series Autoregressive Model. Current Journal of Applied Science and Technology, 27 (5). pp. 1-12. ISSN 24571024
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Abstract
The study was conducted with the prime objective to generate a stochastic time series model, capable of predicting runoff in Dachigam catchment area of Dal lake. It covers an area of 141 sq. km. The runoff data of the catchment from the year 1993-2013 was collected and used for the generation of model. Autoregressive (AR) model of order, 1 were used for annual runoff series and different parameters were estimated by the general recursive formula. The goodness of fit and adequacy of models were tested by Box-pierce portmanteau test, Akaike Information Criterion and by comparison of historical and simulated graphs. The AIC value of runoff for AR (1) was model (326.35) which is satisfying the selection criteria. The mean forecast error is also very less in case of runoff AR (1) model. On the basis of the statistical test, Akaike Information Criterion the AR (1) models with estimate model parameters can be used efficiently for the future predictions in Dachigam Catchment. The graphical representation between historical and generated correlogram has also proved that there is a very close agreement between simulated and observed runoff. The coefficient of determination R2 for runoff AR (1) model is 0.98.The comparison between the measured and simulated run off by AR (1) model clearly shows that the generated model can be used efficiently for the prediction of runoff in Dachigam Catchment, which can benefit the farmers and research workers for water harvesting, ground water recharge, flood control and development of their water management strategies.
Item Type: | Article |
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Subjects: | Grantha Library > Multidisciplinary |
Depositing User: | Unnamed user with email support@granthalibrary.com |
Date Deposited: | 22 Apr 2023 13:01 |
Last Modified: | 24 Sep 2024 11:14 |
URI: | http://asian.universityeprint.com/id/eprint/713 |