TY - JOUR ID - 61700 TI - Evaluating impact of teleconnection indexes on river flow forecasting(Case study: Hablehrud River Basin) JO - Journal of Range and Watershed Managment JA - JRWM LA - en SN - 5044-2008 AU - Yazdani, Mohammad Reza AU - zolfaghari, Ali Asghar AD - University of Semnan Assistant professor, Department of desertification, University of Semnan, Iran. Y1 - 2016 PY - 2016 VL - 69 IS - 2 SP - 515 EP - 528 KW - River flow modeling KW - teleconnection index KW - Sensitivity analysis KW - flow forecasting KW - Artificial Neural Networks DO - 10.22059/jrwm.2016.61700 N2 - Watershed outflow has influenced by different factors such as climatic, human and physical aspects and this Variability of effective factors can cause complex conditions, difficulty of flow forecasting and it mainly originates by different local and temporal scales of these factors. Also, some remote meteorological signals can cause changes in meteorological conditions in different regions. Hablehrud river flow has a vital role in regional development, especially for agricultural section. Thus research of river flow forecasting should be done for water resources management especially when there are drought and climate change conditions in order to facilitate sustainable development. In this study four nonlinear models of artificial neural networks including Generalized Feed Foreward Networks (JFNNs), Jordan/Elman Networks(JENs), Time Lag Recurrent Networks(TLRNs) and Radius Basis Function Networks(RBF) was used to modeling Hablehrud river flow(Bonkuh station) during 1982 to 2011. Input variables after sensitivity analysis were used in 4 models and 4 scenarios. Ten teleconnection indexes were used as input of the model to evaluate their roles in model capability. Results indicated that in the test stage Jordan/Elman Networks represented lower error compared with selected models (RMSE for 4 scenarios are5.57, 4.9, 5.35 and 4.62 respectively). In general error showed decreasing trend from first scenario to the last. Error was decreased of 15 to 31 percent by using teleconnection patterns as inputs (GFFN=%26, JEN=%15.8, TLRN=%25.5 and RBF=%31.7). Totally using teleconnection indexes as inputs in the modeling stage can diminish error of flow forecasting, although selected models indicated different results due to its variable topologies. UR - https://jrwm.ut.ac.ir/article_61700.html L1 - https://jrwm.ut.ac.ir/article_61700_8f279daab198c88ec8a0944efe4ed905.pdf ER -