Atiah Winifred Ayinpogbilla, Johnson Robert, Muthoni Francis Kamau, Mengistu Gizaw Tsidu, Amekudzi Leonard Kofitse, Kwabena Osei, Kizito Fred
Kwame Nkrumah University of Science and Technology (KNUST), Department of Physics, Meteorology and Climate Science Unit, Kumasi, Ghana.
International Institute of Tropical Agriculture (IITA), Duluti, Arusha, P.O. Box 10, Tanzania.
Heliyon. 2023 Jun 28;9(7):e17604. doi: 10.1016/j.heliyon.2023.e17604. eCollection 2023 Jul.
Like many other African countries, Ghana's rain gauge networks are rapidly deteriorating, making it challenging to obtain real-time rainfall estimates. In recent years, significant progress has been made in the development and availability of real-time satellite precipitation products (SPPs). SPPs may complement or substitute gauge data, enabling better real-time forecasting of stream flows, among other things. However, SPPs still have significant biases that must be corrected before the rainfall estimates can be used for any hydrologic application, such as real-time or seasonal forecasting. The daily satellite-based rainfall estimate (CHIRPS-v2) data were bias-corrected using the Bias Correction and Spatial Disaggregation (BSCD) approach. The study further investigated how bias correction of daily satellite-based rainfall estimates affects the identification of seasonality and extreme rainfall indices in Ghana. The results revealed that the seasonal and annual rainfall patterns in the region were better represented after the bias correction of the CHIRPS-v2 data. We observed that, before bias correction, the cessation dates in the country's southwest and upper middle regions were slightly different. However, they matched those of the gauge well after bias correction. The novelty of this study is that, in addition to improving rainfall using CHIRPS data, it also enhances the identification of seasonality indices. The paper suggests the BCSD approach for correcting rainfall estimates from other algorithms using long-term historical records indicative of the rainfall variability area under consideration.
与许多其他非洲国家一样,加纳的雨量计网络正在迅速恶化,这使得获取实时降雨估计变得具有挑战性。近年来,实时卫星降水产品(SPP)的开发和可用性取得了重大进展。SPP可以补充或替代雨量计数据,从而能够更好地进行实时径流预报等。然而,在将降雨估计用于任何水文应用(如实时或季节性预报)之前,SPP仍然存在必须校正的显著偏差。基于卫星的每日降雨估计(CHIRPS-v2)数据使用偏差校正和空间分解(BSCD)方法进行了偏差校正。该研究进一步调查了基于卫星的每日降雨估计的偏差校正如何影响加纳季节性和极端降雨指数的识别。结果表明,对CHIRPS-v2数据进行偏差校正后,该地区的季节性和年度降雨模式得到了更好的呈现。我们观察到,在偏差校正之前,该国西南部和中上部地区的雨季结束日期略有不同。然而,偏差校正后它们与雨量计的日期相匹配。这项研究的新颖之处在于,除了使用CHIRPS数据改进降雨外,它还增强了季节性指数的识别。本文建议使用BCSD方法,利用指示所考虑降雨变率区域的长期历史记录来校正来自其他算法的降雨估计。