Regressive-stochastic models for predicting water level in Lake Urmia

Babak Vaheddoost*, Hafzullah Aksoy

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

13 Citations (Scopus)

Abstract

This study develops a set of models to investigate the water budget of Lake Urmia in Iran, a permanent hypersaline lake that has suffered a declining water level since the late 1990s. The models are of the regressive-stochastic type, a combination of multilinear regression and autoregressive integrated moving average stochastic models. The multilinear regression models were used to construct the core of the relationship of lake water level to streamflow, precipitation, evaporation and groundwater depth. Afterward, stochastic models were used to generate data for each independent variable to estimate the oscillation in the lake water depth. Several criteria were used to compare the performance of the models in the aggregated and disaggregated cases with which the pre- and post-encroachment periods are considered, respectively. The regressive-stochastic models are found to be competitive with the existing models developed so far for Lake Urmia water level.

Original languageEnglish
Pages (from-to)1892-1906
Number of pages15
JournalHydrological Sciences Journal
Volume66
Issue number13
DOIs
Publication statusPublished - 2021

Bibliographical note

Publisher Copyright:
© 2021 IAHS.

Funding

This work was supported by the Istanbul Technical University [BAP 39016]. The authors appreciate the support of the Scientific Research Unit of Istanbul Technical University through the project BAP 39016–Modelling Studies with Statistical Approaches for Lake Urmia, and express their gratitude to the Iran Water Resources Management Company for providing the data used in the study. The manuscript was raised to a high caliber with the contribution of the anonymous reviewers and Prof. Khatibi who reviewed the manuscript with patience, and with the advice of the Associate Editor, Dr Benjamin Dewals. We are thankful to them all for their efforts towards improving the manuscript.

FundersFunder number
Istanbul Teknik ÜniversitesiBAP 39016
Iran Water Resources Management Company

    Keywords

    • autoregressive model
    • Lake Urmia
    • multiple regression
    • stochastic models
    • water level

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