Tracking the magnitude of climate change and variability with remote sensing data to improve targeting of climate smart agricultural technologies

F. Muthoni
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引用次数: 1

Abstract

Quantifying the magnitude and significance of climate change variables over space and time in Africa is challenging due to sparse distribution of weather stations and poor quality of existing data. Time series climate data generated from remote sensing platforms could provide plausible alternative for measuring the trends of climate change in data limiting context. This study utilise time series remote sensing data for rainfall, maximum temperature and minimum temperature to investigate the magnitude and significance of spatial-temporal trends over six countries in West Africa. A modified Mann-Kendall test and Theil-Sen’s slope are utilised to test the significance and the magnitude of trends respectively for period between 1981 and 2017. June to September rainfall along the Sahel, Sudan and northern Guinea savanna agro-ecological zones revealed a significant increase (0.1 – 3 mm yr $^{-1}$) that peaked in August. Extreme temperatures for period between August and October remained stable while significant positive trend (0.005 – 0.07°C yr $^{-1}$) was observed in rest of months. Areas experiencing significant drying and warming trends are earmarked as priority for targeting appropriate climate smart agricultural technologies. The widespread significant increase of extreme temperatures justifies increased investments in measures to cope with heat stress.
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利用遥感数据跟踪气候变化和变率的幅度,以提高气候智能型农业技术的针对性
由于气象站分布稀疏和现有数据质量差,对非洲气候变化变量在空间和时间上的大小和重要性进行量化具有挑战性。在数据有限的情况下,遥感平台产生的时间序列气候数据可为测量气候变化趋势提供似是而非的替代方法。本研究利用降雨、最高温度和最低温度的时间序列遥感数据,研究了西非六个国家的时空趋势的幅度和意义。利用修正的Mann-Kendall检验和Theil-Sen斜率分别检验1981年至2017年期间趋势的显著性和幅度。6月至9月,萨赫勒、苏丹和几内亚北部热带稀树草原农业生态区的降雨量显著增加(每年0.1 - 3毫米),并在8月达到峰值。8 ~ 10月极端气温保持稳定,其余月份极端气温呈显著上升趋势(0.005 ~ 0.07℃/年$^{-1}$)。正在经历严重干旱和变暖趋势的地区被指定为优先开发适当气候智能型农业技术的地区。极端温度的广泛显著增加证明了增加应对热应激措施的投资是合理的。
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