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首页> 外文期刊>SN Applied Sciences >Investigating the leaf area index changes in response to climate change (case study: Kasilian catchment, Iran)
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Investigating the leaf area index changes in response to climate change (case study: Kasilian catchment, Iran)

机译:调查响应气候变化的叶面积指数变化(案例研究:伊朗,Kasilian流域)

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Vegetation cover plays an important role in the hydrologic cycle of Kasilian catchment in Iran. This study aimed to estimate leaf area index (LAI), as an important vegetation factor in hydrologic loses, in response to climate change in the future period (2020–2039) over Kasilian catchment located in the north of Iran. For this purpose, LAI was simulated by gridded BIOME-BGC in 319 pixels within the case study domain over the study period (2004–2013) for three dominant land covers of the Kasilian catchment including deciduous broadleaf forest (DBF), shrubs, and C3 grasses, and BIOMEBGC accuracy has been assessed using MODIS-derived LAI. Then, monthly projections of climate variables obtained from the average of 9 AOGCMs-AR5 in the future period (2020–2039) and annual projection of CO_2 level from 2004 to 2039 under RCP2.6 and RCP8.5 scenarios were used to assess the impact of climate change on LAI. Results show that LAI will increase in response to the overall predicted rise in temperature, precipitation, and CO_2 level under both scenarios in all pixels. This increase under the RCP8.5 scenario is predicted to be more than RCP2.6 scenario so that the mean LAI in Kasilian catchment will increase by 3.1% and 2.2% under RCP8.5 and RCP2.6 scenarios, respectively. In addition, our analysis showed that DBF land cover will be more sensitive to climate change in this catchment.
机译:植被在伊朗Kasilian流域的水文循环中起着重要作用。这项研究旨在估计叶面积指数(LAI),作为水文损失的重要植被因素,以应对伊朗北部Kasilian集水区未来一段时间(2020-2039年)的气候变化。为此,在研究期(2004-2013年)内,通过网格BIOME-BGC在案例研究域内的319个像素中模拟了Kasilian流域的三个主要土地覆盖(包括落叶阔叶林(DBF),灌木和C3)的LAI草和BIOMEBGC的准确性已使用MODIS衍生的LAI进行了评估。然后,使用RCP2.6和RCP8.5情景下从未来9个AOGCMs-AR5的平均值(未来时期(2020-2039))获得的月度预测以及2004年至2039年CO_2水平的年度预测来评估影响。气候变化对LAI的影响。结果表明,在两种情况下,在所有像素中,LAI都会响应于温度,降水和CO_2水平的总体预测升高而增加。预计RCP8.5方案下的这一增长将超过RCP2.6方案,因此在RCC8.5和RCP2.6方案下,Kasilian流域的平均LAI将分别增长3.1%和2.2%。此外,我们的分析表明,该流域的DBF土地覆盖将对气候变化更为敏感。

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