Modeling the natural vegetation dynamic under climate change scenarios in coastal protected dryland of southeastern Tunisia

Abdelkader Idi, Jamila Msadek, A. Tlili, M. Tarhouni
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Abstract

According to the Intergovernmental Panel on Climate Change (IPCC), climate change is mainly manifested by severe droughts and rainfall decrease. These effects are multiple and vary from one region to another around the world including rising temperatures, altered precipitation patterns and degradation of the natural flora. The Zarat region (Gulf of Gabes) is notable for its climate variation, shallow waters, high levels of temperature and salinity. Understanding the vegetation dynamics in this coastal protected region under climate change scenarios is important for projection to the whole ecosystems. The Maxent model is used to predict the potential distribution of plant groups and Soil Adjusted Vegetation Index (SAVI) classes for many future time-periods (2021-2040, 2041-2060, 2061-2080 and 2081-2100) under different climate change scenarios in the Zarat region. Main results indicate that variables related to precipitation and temperature are more significant for predicting plants and SAVI classes distributions. Our findings can provide scientific basis for the dryland sustainable management and for plant community’s behavior under climate change.
突尼斯东南部沿海受保护旱地气候变化情景下的自然植被动态建模
政府间气候变化专门委员会(IPCC)指出,气候变化主要表现为严重干旱和降雨量减少。这些影响是多方面的,世界各地区各不相同,包括气温升高、降水模式改变和自然植被退化。扎拉特地区(加贝斯湾)的显著特点是气候多变、水域较浅、温度和盐度较高。了解该沿海保护区在气候变化情况下的植被动态对于预测整个生态系统非常重要。Maxent 模型用于预测扎拉特地区在不同气候变化情景下,植物群和土壤调整植被指数(SAVI)等级在未来多个时间段(2021-2040 年、2041-2060 年、2061-2080 年和 2081-2100 年)的潜在分布情况。主要结果表明,与降水和温度相关的变量对预测植物和 SAVI 等级分布更有意义。我们的研究结果可为旱地可持续管理和植物群落在气候变化下的行为提供科学依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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