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Evaluation of the effects of climate change on meteorological and hydrological parameters using climatic models and Mann – Kendall test (case study: Urmia Lake)

Abstract Climate change and increase of global temperature are important environmental issues on which various studies have been conducted in recent years. This issue has a high importance due to environmental, economic and social impacts because, human activities are based on climate stability. In this article, effects of climate change on meteorological and hydrological parameters of Urmia Lake watershed have been investigated and forecasted for period 2010-2100. In order to forecast meteorological parameters, Atmosphere General Circulation Model was used. Temperature, precipitation and evaporation data were downscaled and calibrated using LARS software by SDSM model and observed data. In continue, Artificial Neural Network (ANN) was used to simulate model of precipitation to runoff. The models outputs mostly showed increase of temperature and evaporation and decrease of precipitation in future periods. Also, the results of Mann-Kendall indicated that, climate change and global warming is not significant on long-term trend of hydrological factors affecting Urmia Lake. Therefore, the factors of rapid reduction of the lake water level in recent years should be explored among climatic fluctuations such as wet and drought, and human factors such as dam constructing, uncontrolled extraction of groundwater and unsuitable irrigation methods.

Abstract
Climate change and increase of global temperature are important environmental issues on which various studies have been conducted in recent years. This issue has a high importance due to environmental, economic and social impacts because, human activities are based on climate stability. In this article, effects of climate change on meteorological and hydrological parameters of Urmia Lake watershed have been investigated and forecasted for period 2010-2100. In order to forecast meteorological parameters, Atmosphere General Circulation Model was used. Temperature, precipitation and evaporation data were downscaled and calibrated using LARS software by SDSM model and observed data. In continue, Artificial Neural Network (ANN) was used to simulate model of precipitation to runoff. The models outputs mostly showed increase of temperature and evaporation and decrease of precipitation in future periods. Also, the results of Mann-Kendall indicated that, climate change and global warming is not significant on long-term trend of hydrological factors affecting Urmia Lake. Therefore, the factors of rapid reduction of the lake water level in recent years should be explored among climatic fluctuations such as wet and drought, and human factors such as dam constructing, uncontrolled extraction of groundwater and unsuitable irrigation methods.

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J. Bio. & Env. Sci. 2014<br />

Introducti<strong>on</strong><br />

Increasing greenhouse gases after industrial<br />

revoluti<strong>on</strong> disturbs <str<strong>on</strong>g>the</str<strong>on</strong>g> earth energy balance <strong>and</strong> has<br />

causes <str<strong>on</strong>g>the</str<strong>on</strong>g> earth to be warm. According to <str<strong>on</strong>g>the</str<strong>on</strong>g> reports<br />

<str<strong>on</strong>g>of</str<strong>on</strong>g> Intergovernmental Panel <strong>on</strong> Climate Change<br />

(IPCC), if emissi<strong>on</strong> <str<strong>on</strong>g>of</str<strong>on</strong>g> greenhouse gases is not<br />

reduced, mean temperature <str<strong>on</strong>g>of</str<strong>on</strong>g> <str<strong>on</strong>g>the</str<strong>on</strong>g> earth increases by<br />

1.1 to 4.4 ⁰C. Global warming phenomen<strong>on</strong> <strong>and</strong> its<br />

resulted <str<strong>on</strong>g>climate</str<strong>on</strong>g> <str<strong>on</strong>g>change</str<strong>on</strong>g> have significant impacts <strong>on</strong><br />

water cycle <strong>and</strong> water resources system. Climate<br />

<str<strong>on</strong>g>change</str<strong>on</strong>g> results in <str<strong>on</strong>g>change</str<strong>on</strong>g> in run<str<strong>on</strong>g>of</str<strong>on</strong>g>f volume, durati<strong>on</strong><br />

<strong>and</strong> time, <strong>and</strong> c<strong>on</strong>sequence <str<strong>on</strong>g>of</str<strong>on</strong>g> this happening will<br />

make much <str<strong>on</strong>g>change</str<strong>on</strong>g>s in water resources management<br />

(IPCC, 2007).<br />

In studies <str<strong>on</strong>g>of</str<strong>on</strong>g> <str<strong>on</strong>g>climate</str<strong>on</strong>g> <str<strong>on</strong>g>change</str<strong>on</strong>g> investigati<strong>on</strong> <str<strong>on</strong>g>of</str<strong>on</strong>g> its<br />

impacts <strong>on</strong> different secti<strong>on</strong>s, various uncertainties<br />

affect <str<strong>on</strong>g>the</str<strong>on</strong>g> final result. Greenhouse gases emissi<strong>on</strong><br />

scenario <strong>and</strong> Atmosphere Ocean General Circulati<strong>on</strong><br />

Model (AOGCM) are uncertainties in <strong>climatic</strong><br />

simulati<strong>on</strong>s. If <str<strong>on</strong>g>the</str<strong>on</strong>g>se uncertainties are not c<strong>on</strong>sidered<br />

in analysis, validati<strong>on</strong> <str<strong>on</strong>g>of</str<strong>on</strong>g> <str<strong>on</strong>g>the</str<strong>on</strong>g> results will be reduced.<br />

Therefore, use <str<strong>on</strong>g>of</str<strong>on</strong>g> <strong>on</strong>ly AOGCM model under an<br />

emissi<strong>on</strong> scenario for <str<strong>on</strong>g>climate</str<strong>on</strong>g> <str<strong>on</strong>g>change</str<strong>on</strong>g> analysis cannot<br />

cover whole <str<strong>on</strong>g>the</str<strong>on</strong>g> range <str<strong>on</strong>g>of</str<strong>on</strong>g> related uncertainties <strong>and</strong> will<br />

provide abnormal results. So, <str<strong>on</strong>g>the</str<strong>on</strong>g> researchers have<br />

attempted to c<strong>on</strong>sider <str<strong>on</strong>g>the</str<strong>on</strong>g>se uncertainty sources by<br />

more than <strong>on</strong>e <strong>climatic</strong> model under emissi<strong>on</strong><br />

scenarios in <str<strong>on</strong>g>climate</str<strong>on</strong>g> <str<strong>on</strong>g>change</str<strong>on</strong>g> studies (Massah Bavani,<br />

2006). For example, Kamga (2005) used three<br />

<strong>climatic</strong> <strong>models</strong> under emissi<strong>on</strong> scenarios A2 <strong>and</strong> B2,<br />

Massah Bavani (2006) used seven <strong>climatic</strong> <strong>models</strong><br />

under emissi<strong>on</strong> scenarios A2 <strong>and</strong> B2. Maurer et al.<br />

(2009) used 16 <strong>climatic</strong> <strong>models</strong> under emissi<strong>on</strong><br />

scenarios A2 <strong>and</strong> B2. Khani Tamalieh et al. (2012)<br />

used a <strong>climatic</strong> model under scenario A2 in evaluati<strong>on</strong><br />

<str<strong>on</strong>g>of</str<strong>on</strong>g> <str<strong>on</strong>g>the</str<strong>on</strong>g> <str<strong>on</strong>g>effects</str<strong>on</strong>g> <str<strong>on</strong>g>of</str<strong>on</strong>g> <str<strong>on</strong>g>climate</str<strong>on</strong>g> <str<strong>on</strong>g>change</str<strong>on</strong>g> <strong>on</strong> drought traits.<br />

They found that, in future periods <str<strong>on</strong>g>of</str<strong>on</strong>g> <str<strong>on</strong>g>climate</str<strong>on</strong>g> <str<strong>on</strong>g>change</str<strong>on</strong>g>s<br />

<str<strong>on</strong>g>the</str<strong>on</strong>g>re will be more variati<strong>on</strong>s for <strong>parameters</strong> <str<strong>on</strong>g>of</str<strong>on</strong>g><br />

precipitati<strong>on</strong> <strong>and</strong> temperature in <str<strong>on</strong>g>the</str<strong>on</strong>g> east <str<strong>on</strong>g>of</str<strong>on</strong>g> <strong>Urmia</strong><br />

<strong>Lake</strong> than its west. Grieser <strong>and</strong> Tromel (2002)<br />

investigated temperature <str<strong>on</strong>g>of</str<strong>on</strong>g> 100 years in Europe <strong>and</strong><br />

dem<strong>on</strong>strated that, annual temperature fluctuati<strong>on</strong>s<br />

are significantly increased in <str<strong>on</strong>g>the</str<strong>on</strong>g> Eastern Europe <strong>and</strong><br />

almost has had increasing trend throughout <str<strong>on</strong>g>the</str<strong>on</strong>g><br />

regi<strong>on</strong>. In a same research in which Wilby <strong>and</strong><br />

Dettinger (2006) investigated <str<strong>on</strong>g>the</str<strong>on</strong>g> effect <str<strong>on</strong>g>of</str<strong>on</strong>g> <str<strong>on</strong>g>climate</str<strong>on</strong>g><br />

<str<strong>on</strong>g>change</str<strong>on</strong>g> <strong>on</strong> <str<strong>on</strong>g>the</str<strong>on</strong>g> amount <str<strong>on</strong>g>of</str<strong>on</strong>g> low flows <str<strong>on</strong>g>of</str<strong>on</strong>g> Teams River in<br />

Engl<strong>and</strong>, uncertainty sources associated with AOGCM<br />

Model, downscaling methods, greenhouse gases<br />

emissi<strong>on</strong> scenario, various <strong>models</strong> <str<strong>on</strong>g>of</str<strong>on</strong>g> simulating<br />

precipitati<strong>on</strong>-run<str<strong>on</strong>g>of</str<strong>on</strong>g>f <strong>and</strong> uncertainty related to <str<strong>on</strong>g>the</str<strong>on</strong>g>ir<br />

<strong>parameters</strong> c<strong>on</strong>sidering different weights <strong>and</strong> M<strong>on</strong>te<br />

Carlo method were simulated.<br />

The results showed that, uncertainties associated with<br />

AOGCM <strong>models</strong> have <str<strong>on</strong>g>the</str<strong>on</strong>g> highest proporti<strong>on</strong> <strong>and</strong><br />

greenhouse gases have <str<strong>on</strong>g>the</str<strong>on</strong>g> minimum proporti<strong>on</strong> in<br />

estimating <str<strong>on</strong>g>the</str<strong>on</strong>g> probability functi<strong>on</strong> <str<strong>on</strong>g>of</str<strong>on</strong>g> run<str<strong>on</strong>g>of</str<strong>on</strong>g>f. Minville<br />

et al. (2008) investigated <str<strong>on</strong>g>the</str<strong>on</strong>g> uncertainty <str<strong>on</strong>g>of</str<strong>on</strong>g> <str<strong>on</strong>g>the</str<strong>on</strong>g> effect<br />

<str<strong>on</strong>g>of</str<strong>on</strong>g> <str<strong>on</strong>g>climate</str<strong>on</strong>g> <str<strong>on</strong>g>change</str<strong>on</strong>g> <strong>on</strong> <str<strong>on</strong>g>the</str<strong>on</strong>g> run<str<strong>on</strong>g>of</str<strong>on</strong>g>f <str<strong>on</strong>g>of</str<strong>on</strong>g> Canada watershed<br />

<strong>using</strong> HSAMI. They used five GCM <strong>models</strong> <strong>and</strong> two<br />

emissi<strong>on</strong> scenarios. Results reveals an increase in<br />

temperature by 1 to 14 ⁰C <strong>and</strong> seas<strong>on</strong>al precipitati<strong>on</strong><br />

by -9 to 55%. Also, <str<strong>on</strong>g>the</str<strong>on</strong>g> amount <str<strong>on</strong>g>of</str<strong>on</strong>g> run<str<strong>on</strong>g>of</str<strong>on</strong>g>f <str<strong>on</strong>g>of</str<strong>on</strong>g> <str<strong>on</strong>g>the</str<strong>on</strong>g><br />

watershed affected by <str<strong>on</strong>g>climate</str<strong>on</strong>g> <str<strong>on</strong>g>change</str<strong>on</strong>g> will <str<strong>on</strong>g>change</str<strong>on</strong>g>. In<br />

a research c<strong>on</strong>ducted by Samadi <strong>and</strong> Massah Bavani<br />

(2008), downscaling <str<strong>on</strong>g>of</str<strong>on</strong>g> precipitati<strong>on</strong> <strong>and</strong> temperature<br />

was d<strong>on</strong>e by statistical method (SDSM) <strong>and</strong> Artificial<br />

Neural Network (ANN). At <str<strong>on</strong>g>the</str<strong>on</strong>g> end <str<strong>on</strong>g>of</str<strong>on</strong>g> <str<strong>on</strong>g>the</str<strong>on</strong>g> menti<strong>on</strong>ed<br />

research it was c<strong>on</strong>cluded that, successfulness <str<strong>on</strong>g>of</str<strong>on</strong>g> both<br />

methods has been same for temperature downscaling<br />

while, ANN was more successful than SDSM for<br />

downscaling <str<strong>on</strong>g>of</str<strong>on</strong>g> precipitati<strong>on</strong> (Samadi et al., 2008). In<br />

ano<str<strong>on</strong>g>the</str<strong>on</strong>g>r research carried out by Ash<str<strong>on</strong>g>of</str<strong>on</strong>g>teh et al.<br />

(2008), <str<strong>on</strong>g>the</str<strong>on</strong>g> effect <str<strong>on</strong>g>of</str<strong>on</strong>g> <str<strong>on</strong>g>climate</str<strong>on</strong>g> <str<strong>on</strong>g>change</str<strong>on</strong>g> <strong>on</strong> <str<strong>on</strong>g>the</str<strong>on</strong>g> peak<br />

discharge <str<strong>on</strong>g>of</str<strong>on</strong>g> Aidoghmoush in period 2040-2069 for<br />

scenario A2 was investigated. Seven AOGCM <strong>models</strong><br />

had been used in this <strong>study</strong>. The results show that,<br />

temperature <str<strong>on</strong>g>of</str<strong>on</strong>g> <str<strong>on</strong>g>the</str<strong>on</strong>g> watershed increases in period<br />

2050 between 1 <strong>and</strong> 6 ⁰C compared with <str<strong>on</strong>g>the</str<strong>on</strong>g> base<br />

period. Also, <str<strong>on</strong>g>the</str<strong>on</strong>g> range <str<strong>on</strong>g>of</str<strong>on</strong>g> precipitati<strong>on</strong> variati<strong>on</strong>s will<br />

be -80 to 100%. Comparis<strong>on</strong> <str<strong>on</strong>g>of</str<strong>on</strong>g> <str<strong>on</strong>g>the</str<strong>on</strong>g> samples flood<br />

intensity in various return periods in two future<br />

decades showed that, peak discharge <str<strong>on</strong>g>of</str<strong>on</strong>g> <str<strong>on</strong>g>the</str<strong>on</strong>g> watershed<br />

affected by <str<strong>on</strong>g>climate</str<strong>on</strong>g> <str<strong>on</strong>g>change</str<strong>on</strong>g> will <str<strong>on</strong>g>change</str<strong>on</strong>g> (Ash<str<strong>on</strong>g>of</str<strong>on</strong>g>tehsadat<br />

et al., 2008). Ghorbani & Soltani (2002) studied <str<strong>on</strong>g>the</str<strong>on</strong>g><br />

<str<strong>on</strong>g>climate</str<strong>on</strong>g> <str<strong>on</strong>g>change</str<strong>on</strong>g> <str<strong>on</strong>g>of</str<strong>on</strong>g> Gorgan meteorology stati<strong>on</strong> <strong>using</strong><br />

113 | Khaneshan et al

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