Publication Details
ISAAC KWESI NOONI
- NUGS-Nanjing
- Photogrammetry & Remote Sensing (Phd)
- Nanjing University Of Information Science And Technology
Pharmacognostic Evaluation and Physicochemical Analysis of Paullinia pinnata L. (Sapindaceae) 06 Feb 2020
Journal of Pharmacognosy and Phytochemistry
Quantile Mapping Bias Correction on Rossby Centre Regional Climate Models for Precipitation Analysis over Kenya, East Africa 06 Feb 2020
Preprints
The heavy metal contents of some selected medicinal plants sampled from different geographical locations 06 Feb 2020
Pharmacognosy Research Journal
High Spatial Resolution Simulation of Sunshine Duration over the Complex Terrain of Ghana 06 Feb 2020
Sensors
Support vector machine to map oil palm in a heterogeneous environment 06 Feb 2020
International Journal of Remote Sensing
Assessing contract management as a strategic tool for achieving quality of work in Ghanaian construction industry: A case study of FPMU and MMDAs 06 Feb 2020
Journal of Financial Management of Property and Construction
Evapotranspiration and its Components in the Nile River Basin Based on Long-Term Satellite Assimilation Product 06 Feb 2020
Water
Atmosphere
06 Feb 2020 | 20:24
Climate models are usually evaluated to understand how well the modeled data reproduce specific application-related features. In Africa, where multisource data quality is an issue, there is a need to assess climate data from a general perspective to motivate such specific types of assessment, but mostly to serve as a basis for data quality enhancement activities. In this study, we assessed the Rossby Centre Regional Climate Model (RCA4) over West Africa without targeting any application-specific feature, while jointly evaluating its boundary conditions and accounting for observational uncertainties. Results from this study revealed that the RCA4 signal highly modifies the boundary conditions (global climate models (GCMs) and reanalysis data), resulting in a significant reduction of their biases in the dynamically downscaled outputs. The results, with respect to the observational ensemble members, are in line with the differences between the observation datasets. Among the RCA4 simulations, the ensemble mean outperformed all individual simulations regardless of the statistical metric and the reference data used. This indicates that the RCA4 adds value to GCMs over West Africa, with no influence of observational uncertainty, and its ensemble mean reduces model-related uncertainties.