O. Jones
Micro-CHP Trial Report
Jones, O.; Wardle, R.; Matthews, P.C.
Abstract
This report presents an analysis of the performance of domestic Micro-CHP devices, installed at 11 separate domestic locations for the CLNR project. The report addresses Learning Objective 1 of the project, which is to enhance understanding of current, emerging and possible future customer load and generation characteristics. The technology installed is a Baxi Ecogen Stirling engine, with a maximum heat output of 6kW, a maximum electrical output of 1kW, and an overall efficiency of 90% [1], producing a heat to power ratio of 6:1, an electric efficiency of 13%, and a heat efficiency of 77%. In each location, two parameters were monitored: the electrical demand from and generation produced by the micro-CHP engine; and the amount of electricity imported (or exported) from the grid by the house as a whole. Both were measured in average watts per measured interval, with measurements taken every minute. Trial monitoring began in December 2012 and ended in March 2014. Trial monitoring data was provided by British Gas. The analysis in this report focuses on two areas; the economic and carbon savings of the Micro-CHP and the operating profile of the Micro-CHP and thus the potential impact on distribution networks.
Citation
Jones, O., Wardle, R., & Matthews, P. (2014). Micro-CHP Trial Report. Northern Powergrid (Northeast) Limited, Northern Powergrid (Yorkshire) Plc, British Gas Trading Limited, University of Durham and EA Technology Ltd
Report Type | Technical Report |
---|---|
Acceptance Date | Nov 17, 2014 |
Publication Date | Nov 17, 2014 |
Deposit Date | Sep 29, 2015 |
Publicly Available Date | Oct 30, 2015 |
Series Title | Customer-Led Network Revolution |
Public URL | https://durham-repository.worktribe.com/output/1636685 |
Publisher URL | http://www.networkrevolution.co.uk/project-library/micro-chp-trial-report/ |
Additional Information | Publisher: Northern Powergrid (Northeast) Limited Type: monograph Subtype: technical_report |
Files
Published Report
(1.2 Mb)
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