Obaidullah Salehie, Tarmizi Bin Ismail, Shamsuddin Shahid, Saad Sh Sammen, Anurag Malik, Xiaojun Wang
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引用次数: 14
Abstract
Assessment of the thermal bioclimatic environmental changes is important to understand ongoing climate change implications on agriculture, ecology, and human health. This is particularly important for the climatologically diverse transboundary Amy Darya River basin, a major source of water and livelihood for millions in Central Asia. However, the absence of longer period observed temperature data is a major obstacle for such analysis. This study employed a novel approach by integrating compromise programming and multicriteria group decision-making methods to evaluate the efficiency of four global gridded temperature datasets based on observation data at 44 stations. The performance of the proposed method was evaluated by comparing the results obtained using symmetrical uncertainty, a machine learning similarity assessment method. The most reliable gridded data was used to assess the spatial distribution of global warming-induced unidirectional trends in thermal bioclimatic indicators (TBI) using a modified Mann-Kendall test. Ranking of the products revealed Climate Prediction Center (CPC) temperature as most efficient in reconstruction observed temperature, followed by TerraClimate and Climate Research Unit. The ranking of the product was consistent with that obtained using SU. Assessment of TBI trends using CPC data revealed an increase in the Tmin in the coldest month over the whole basin at a rate of 0.03-0.08 °C per decade, except in the east. Besides, an increase in diurnal temperature range and isothermally increased in the east up to 0.2 °C and 0.6% per decade, respectively. The results revealed negative implications of thermal bioclimatic change on water, ecology, and public health in the eastern mountainous region and positive impacts on vegetation in the west and northwest.
Supplementary information: The online version contains supplementary material available at 10.1007/s00477-022-02172-8.
对热生物气候环境变化的评估对于了解气候变化对农业、生态和人类健康的影响至关重要。这对于气候多样的跨界艾米河流域尤其重要,该流域是中亚数百万人的主要水源和生计来源。然而,缺乏较长时间的观测温度数据是这种分析的主要障碍。本文采用妥协规划和多准则群体决策相结合的方法,对基于44个站点观测数据的4个全球网格化温度数据集的效率进行了评估。通过对比对称不确定性(一种机器学习相似度评估方法)获得的结果,对所提方法的性能进行了评估。利用最可靠的网格数据,利用改进的Mann-Kendall检验评估了全球变暖引起的热生物气候指标(TBI)单向趋势的空间分布。结果显示,气候预测中心(CPC)的温度对观测温度的重建效率最高,其次是terrclimate和Climate Research Unit。利用CPC数据对TBI趋势的评估显示,除东部地区外,整个盆地最冷月份的Tmin以每10年0.03-0.08°C的速度增加。此外,东部的日温差和等温线分别增加0.2°C和0.6% / a。结果表明,热生物气候变化对东部山区的水、生态和公共卫生具有消极影响,对西部和西北部的植被具有积极影响。补充信息:在线版本包含补充资料,下载地址:10.1007/s00477-022-02172-8。