Trend and change-point detection analyses of rainfall and temperature over the Awash River basin of Ethiopia
Awash River basin (ARB) as a system is in a state of continuous change that requires successive studies to discern the changes or trends of climatic elements through time due to climate change/variability, and other socio-economical developmental activities in the basin. The livelihood of communitie...
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doaj-f4a5b5b810ca48fd81c28f9cc67e97e02021-10-04T10:53:12ZengElsevierHeliyon2405-84402021-09-0179e08024Trend and change-point detection analyses of rainfall and temperature over the Awash River basin of EthiopiaYitea Seneshaw Getahun0Ming-Hsu Li1Iam-Fei Pun2Taiwan International Graduate Program (TIGP), Earth System Science Program, Academia Sinica, Taipei, 115, Taiwan; Graduate Institute of Hydrological and Oceanic Sciences, National Central University, Taoyuan, 320, Taiwan; College of Agriculture and Natural Resource Sciences, Debre Berhan University, Debre Berhan, 445, Ethiopia; Corresponding author.Graduate Institute of Hydrological and Oceanic Sciences, National Central University, Taoyuan, 320, TaiwanGraduate Institute of Hydrological and Oceanic Sciences, National Central University, Taoyuan, 320, TaiwanAwash River basin (ARB) as a system is in a state of continuous change that requires successive studies to discern the changes or trends of climatic elements through time due to climate change/variability, and other socio-economical developmental activities in the basin. The livelihood of communities in the ARB is primarily based on rainfall-dependent agriculture. Effects of rainfall anomalies such as reduction of agricultural productivity, water scarcity, and food insecurity are becoming more prevalent in this area. In recent years, ARB has been experiencing more frequent rainfall anomalies that change-point detection test and trend analyses of basin rainfall associated with sea surface temperature is crucial in providing guidance to improve agricultural productivity in ARB. Change-point detection tests such as Pettit's, the von Neumann ratio (VNR), Buishand's range (BR) and standard normal homogeneity (SNH) plus trend analysis Mann-Kendall (MK) test of rainfall and temperature data from 29 meteorological stations in the ARB were carried out from 1986 to 2016. A significant increasing trend of annual and seasonal temperature was found. The temperature change-points for the annual and major rainy season (MRS) were detected in 2001, while for the minor rainy season (mRS) in 1997. A significant decreasing trend, shift, and high variability of rainfall were detected in the downstream part of the ARB. The BR and SNH results showed that the mRS rainfall change-point was in 1998, with a subsequent mean annual decrease of 52.5 mm. The increase (decrease) of rainfall in the annual and MRS was attributable to La Niña (El Niño) events. The significant decreasing trend and change-point of rainfall in the mRS was attributable to the steady warming of the Indian and Atlantic Oceans, local warming, and La Niña events. With this knowledge of the current trends and change-point for rainfall and temperature in the ARB, it is therefore essential that appropriate integrated water management and water-harvesting technologies are established, especially in the downstream areas. Moreover, early detection of El Niño episodes would provide invaluable warning of impending rainfall anomalies in the ARB and would enable better preparations to mitigate its negative effects.http://www.sciencedirect.com/science/article/pii/S2405844021021277Sea surface temperature anomaliesRainfall variabilityChange-point detectionTrend analysis |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Yitea Seneshaw Getahun Ming-Hsu Li Iam-Fei Pun |
spellingShingle |
Yitea Seneshaw Getahun Ming-Hsu Li Iam-Fei Pun Trend and change-point detection analyses of rainfall and temperature over the Awash River basin of Ethiopia Heliyon Sea surface temperature anomalies Rainfall variability Change-point detection Trend analysis |
author_facet |
Yitea Seneshaw Getahun Ming-Hsu Li Iam-Fei Pun |
author_sort |
Yitea Seneshaw Getahun |
title |
Trend and change-point detection analyses of rainfall and temperature over the Awash River basin of Ethiopia |
title_short |
Trend and change-point detection analyses of rainfall and temperature over the Awash River basin of Ethiopia |
title_full |
Trend and change-point detection analyses of rainfall and temperature over the Awash River basin of Ethiopia |
title_fullStr |
Trend and change-point detection analyses of rainfall and temperature over the Awash River basin of Ethiopia |
title_full_unstemmed |
Trend and change-point detection analyses of rainfall and temperature over the Awash River basin of Ethiopia |
title_sort |
trend and change-point detection analyses of rainfall and temperature over the awash river basin of ethiopia |
publisher |
Elsevier |
series |
Heliyon |
issn |
2405-8440 |
publishDate |
2021-09-01 |
description |
Awash River basin (ARB) as a system is in a state of continuous change that requires successive studies to discern the changes or trends of climatic elements through time due to climate change/variability, and other socio-economical developmental activities in the basin. The livelihood of communities in the ARB is primarily based on rainfall-dependent agriculture. Effects of rainfall anomalies such as reduction of agricultural productivity, water scarcity, and food insecurity are becoming more prevalent in this area. In recent years, ARB has been experiencing more frequent rainfall anomalies that change-point detection test and trend analyses of basin rainfall associated with sea surface temperature is crucial in providing guidance to improve agricultural productivity in ARB. Change-point detection tests such as Pettit's, the von Neumann ratio (VNR), Buishand's range (BR) and standard normal homogeneity (SNH) plus trend analysis Mann-Kendall (MK) test of rainfall and temperature data from 29 meteorological stations in the ARB were carried out from 1986 to 2016. A significant increasing trend of annual and seasonal temperature was found. The temperature change-points for the annual and major rainy season (MRS) were detected in 2001, while for the minor rainy season (mRS) in 1997. A significant decreasing trend, shift, and high variability of rainfall were detected in the downstream part of the ARB. The BR and SNH results showed that the mRS rainfall change-point was in 1998, with a subsequent mean annual decrease of 52.5 mm. The increase (decrease) of rainfall in the annual and MRS was attributable to La Niña (El Niño) events. The significant decreasing trend and change-point of rainfall in the mRS was attributable to the steady warming of the Indian and Atlantic Oceans, local warming, and La Niña events. With this knowledge of the current trends and change-point for rainfall and temperature in the ARB, it is therefore essential that appropriate integrated water management and water-harvesting technologies are established, especially in the downstream areas. Moreover, early detection of El Niño episodes would provide invaluable warning of impending rainfall anomalies in the ARB and would enable better preparations to mitigate its negative effects. |
topic |
Sea surface temperature anomalies Rainfall variability Change-point detection Trend analysis |
url |
http://www.sciencedirect.com/science/article/pii/S2405844021021277 |
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