Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Erasmus Oware is active.

Publication


Featured researches published by Erasmus Oware.


Water Resources Research | 2016

Direct prediction of spatially and temporally varying physical properties from time-lapse electrical resistance data

Thomas Hermans; Erasmus Oware; Jef Caers

Time-lapse applications of electrical methods have grown significantly over the last decade. However, the quantitative interpretation of tomograms in terms of physical properties, such as salinity, temperature or saturation, remains difficult. In many applications, geophysical models are transformed into hydrological models, but this transformation suffers from spatially and temporally varying resolution resulting from the regularization used by the deterministic inversion. In this study, we investigate a prediction-focused approach (PFA) to directly estimate subsurface physical properties with electrical resistance data, circumventing the need for classic tomographic inversions. First, we generate a prior set of resistance data and physical property forecast through hydrogeological and geophysical simulations mimicking the field experiment. We reduce the dimension of both the data and the forecast through principal component analysis in order to keep the most informative part of both sets in a reduced dimension space. Then, we apply canonical correlation analysis to explore the relationship between the data and the forecast in their reduced dimension space. If a linear relationship can be established, the posterior distribution of the forecast can be directly sampled using a Gaussian process regression where the field data scores are the conditioning data. In this paper, we demonstrate PFA for various physical property distributions. We also develop a framework to propagate the estimated noise level in the reduced dimension space. We validate the results by a Monte Carlo study on the posterior distribution and demonstrate that PFA yields accurate uncertainty for the cases studied. This article is protected by copyright. All rights reserved.


Water Resources Research | 2013

Physically based regularization of hydrogeophysical inverse problems for improved imaging of process‐driven systems

Erasmus Oware; Stephen Moysey; Taufiquar Khan


Journal of Hydrology | 2014

Geophysical evaluation of solute plume spatial moments using an adaptive POD algorithm for electrical resistivity imaging

Erasmus Oware; Stephen Moysey


Geophysics | 2016

Estimation of hydraulic conductivities using higher-order MRF-based stochastic joint inversion of hydrogeophysical measurements

Erasmus Oware


Seg Technical Program Expanded Abstracts | 2012

Improved imaging of electrically conductive solute plumes using a new strategy for physics-based regularization of resistivity imaging problems

Erasmus Oware; Stephen Moysey; Taufiquar Khan


Seg Technical Program Expanded Abstracts | 2018

Basis-Constrained Bayesian-McMC: Hydrologic Process Parameterization of Stochastic Geoelectrical Imaging of Solute Plumes

Erasmus Oware; Michael Awatey; Thomas Hermans; James Irving


Seg Technical Program Expanded Abstracts | 2018

Application of electromagnetic induction to develop a precision irrigation framework to facilitate smallholder dry season farming in the Nasia-Kparigu area of northern Ghana

Jeremy M. Fontaine; Alexander Percy; Erasmus Oware; Patience Bosompemaa; Vincent Gbedzi; John W. Lane


AGU Fall meeting, Abstracts | 2017

Hydrogeophysical inversion using the prediction-focused approach : methodology and application

Thomas Hermans; Erasmus Oware; Jef Caers; Frédéric Nguyen


Water Resources Research | 2016

Direct prediction of spatially and temporally varying physical properties from time-lapse electrical resistance data: DIRECT FORECAST FROM TL RESISTANCE DATA

Thomas Hermans; Erasmus Oware; Jef Caers


Archive | 2016

Electrical Resistivity Monitoring of Heat Tracer to Characterize Lab-Scale Hydraulic Conductivity Distributions

Peter Adetokunbo; Thomas Hermans; Erasmus Oware

Collaboration


Dive into the Erasmus Oware's collaboration.

Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar

John W. Lane

United States Geological Survey

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Researchain Logo
Decentralizing Knowledge