Professor John McCall j.mccall@rgu.ac.uk
Professorial Lead
Bayesian based data reconciliation and Gross Error Detection
People Involved
Project Description
To research, develop, evaluate and implement an innovative Bayesian based data reconciliation and Gross Error Detection (GED) approach for hydrocarbon allocation and attribution using a cloud-based software approach
Status | Project Complete |
---|---|
Funder(s) | Accord ESL Innovate UK |
Value | £273,890.00 |
Project Dates | May 27, 2019 - Feb 15, 2023 |
Partner Organisations | Accord ESL |
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