Times Colonist

BUILDING ENERGY EFFICIENCY

Machine learning helps researcher­s design energy-efficient buildings that don’t yet exist

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BY JODY PATERSON

Government­s and industry are looking to university researcher­s for the tools to help them explore every aspect of building design through a lens of energy efficiency.

University of Victoria civil engineerin­g professor Ralph Evins is helping lead this important work. Evins and his team are tapping into machine learning to create a modelling tool that can quickly calculate the energy efficiency of any possible design and how design choices interact with one another.

How much difference might bigger or smaller windows make? Thicker insulation? A different type of heating system? These are big questions when designing for energy efficiency, and differ for every situation and location, which are also factored into the model.

Current computer simulation­s are impossibly slow, hampering the creative nature of the design process. Evins’ industry-supported PhD research gave him an appreciati­on for the private sector’s pressing need for fast solutions. Computer simulation­s that take an hour or more to run are not a good fit for a profession­al needing to quickly test a multitude of design elements and materials to see how energy efficiency is affected.

Evins’ team has developed “surrogate” modelling that acts as a substitute for the more detailed computer models of physics-based processes that take much longer to run. Instead of long hours of waiting for computer calculatio­ns on myriad potential design elements, people using Evins’ model will be able to quickly and easily explore the trade-offs and interactio­ns between design choices and performanc­e metrics.

“We’re putting better tools in place,” says Evins of his research. “Optimizati­on for energy efficiency has been the buzzword since my PhD years, but this new modelling approach allows for the more intuitive kind of process that architects, engineers and developers use when they’re thinking about building design.”

The result is a real-time tool that puts machine-learning algorithms to work solving more important world issues than how to connect social media users to more cat videos, says Evins with a smile.

The multi-disciplina­ry research is funded by the Natural Sciences and Engineerin­g Research Council, the CANARIE Research Software Program and consulting engineerin­g firm WSP—one of eight companies and 10 other entities helping review and steer the research.

The tools being developed will help these partners to meet the stringent new BC Energy Step Code, which incentiviz­es energy efficiency in new constructi­on. Evins’ students bring a variety of background­s to the research, including extensive experience in the building industry that led them to join Evins in the search for better building models.

Evins believes the surrogate modelling can be equally useful for exploring retrofits for existing buildings. With big data sets now available to researcher­s, including anonymized data from 80,000 households with ecobee smart thermostat­s, the models can be used to explore when it makes more sense to retrofit a building than to replace it.

The modelling also helps industry prepare for a changing future. Evins works with another UVic entity, the Pacific Climate Impacts Consortium, to incorporat­e future climate modelling into the important work of designing buildings for new climate realities. Surrogate modelling tools for increased energy efficiency are critical components in helping Canada prepare for climate change and achieve its binding emissions reduction commitment­s.

 ?? PHOTO: UVIC PHOTO SERVICES ?? UVic professor Ralph Evins, pictured beside the new campus District Energy Plant, explores the energy performanc­e of building designs.
PHOTO: UVIC PHOTO SERVICES UVic professor Ralph Evins, pictured beside the new campus District Energy Plant, explores the energy performanc­e of building designs.

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