Research

Computational engineering to tackle global challenges.

Cimne menu projects

Discover our latest research projects

Innovation

Delivering tangible solutions for the benefit of all.

Cimne menu nuclear

See how advanced simulation enhances nuclear safety

Community

A thriving network of global innovators, thinkers, and life-long learners in numerical methods.

Cimne menu unesco

Learn how the UNESCO Chair in Numerical Methods spearheads frontier innovation in the Global South

About

We are a pioneering research and innovation centre in computational engineering, founded in 1987.

Cimne menu people

People at CIMNE: Meet the talent that makes it possible.

See how advanced simulation enhances nuclear safety

Learn how the UNESCO Chair in Numerical Methods spearheads frontier innovation in the Global South

News

Back

EN-TRACK project starts

Nov 24, 2020

The European project EN-TRACK, coordinated by CIMNE-BEE Group, aims to enable continuous, large-scale data gathering on the energy and financial performance of Energy Efficiency Measures applied to buildings. 

By creating an open source big data platform and engaging public & commercial building owners, building operators, financial institutions, policy makers, the project will enable de-risking of Energy Efficiency Investments based on their actual performance in real life.  The EN-TRACK’s ultimate goal is to promote an evidence-based approach in decision-making on buildings renovation and to make the Energy Efficiency Investment a mainstream activity for financial institutions.

Entrack Kick-off Meeting
    Telco Kick-off Meeting of the project

“We are excited to coordinate a magnificent consortium of 7 partners from 5 European countries gathering the expertise best fitted for the job”, explains CIMNE-BEE Group team at its last Newsletter

Related news: “CIMNE will coordinate EN-TRACK project from November 2020”

Follow the project on Twitter: https://twitter.com/en_trackh2020

Related News

CIMNE-ETSII Lab Uses AI and Satellite Data to Monitor Water Quality
CIMNE-ETSII Lab Uses AI and Satellite Data to Monitor Water Quality

Experts at the CIMNE-UPM ETSII Lab (Aula CIMNE-UPM ETSII) have evaluated the effectiveness of Machine Learning (ML) and satellite imagery to assess water quality in inland settings. In a recent study, Ms. Laura Cáceres, Dr Jorge Rodríguez Chueca and Dr David J....

Tags

Share: