{"id":52082,"date":"2025-07-14T14:11:12","date_gmt":"2025-07-14T18:11:12","guid":{"rendered":"https:\/\/engineering.jhu.edu\/case\/?post_type=news&#038;p=52082"},"modified":"2025-07-14T14:46:17","modified_gmt":"2025-07-14T18:46:17","slug":"ai-model-slashes-hvac-energy-costs-while-predicting-them-with-precision","status":"publish","type":"news","link":"https:\/\/engineering.jhu.edu\/case\/news\/ai-model-slashes-hvac-energy-costs-while-predicting-them-with-precision\/","title":{"rendered":"AI Model Slashes HVAC Energy Costs While Predicting Them with Precision"},"content":{"rendered":"<p><span data-contrast=\"auto\">A new machine learning approach developed by researchers at the Johns Hopkins University and the University of Mons could help property owners better predict and manage energy usage and costs, potentially reducing both electricity bills and greenhouse gas emissions. The team\u2019s Decision-Focused Learning (DFL) model can accurately forecast the cost of heating, ventilation, and air conditioning (HVAC) in commercial and residential buildings.<\/span><span data-ccp-props=\"{}\">\u00a0<\/span><\/p>\n<p><span data-contrast=\"auto\">Their results appear in <\/span><a href=\"https:\/\/doi.org\/10.1145\/3679240.3734584\"><i><span data-contrast=\"none\">E-Energy \u201925: Proceedings of the 16th Association for Computing Machinery International Conference on Future and Sustainable Energy Systems<\/span><\/i><\/a><span data-contrast=\"auto\">.<\/span><span data-ccp-props=\"{}\">\u00a0<\/span><\/p>\n<p><span data-contrast=\"auto\">Buildings account for about 13% of U.S. greenhouse gas emissions, according to the Environmental Protection Agency, with this figure climbing to 31% when building electricity consumption is included. The majority of this energy demand stems from HVAC systems working continuously to maintain comfortable indoor temperatures.<\/span><span data-ccp-props=\"{}\">\u00a0<\/span><\/p>\n<p><span data-contrast=\"auto\">\u201cOptimizing energy use in buildings is one of the most impactful ways we can reduce carbon emissions, but HVAC systems are some of the most complex systems to design in terms of optimal energy usage,\u201d said <\/span><a href=\"https:\/\/engineering.jhu.edu\/case\/faculty\/uzi-yury-dvorkin\/\"><span data-contrast=\"none\">Yury Dvorkin<\/span><\/a><span data-contrast=\"auto\">, study co-author, associate professor in the departments of <\/span><a href=\"https:\/\/engineering.jhu.edu\/case\/\"><span data-contrast=\"none\">Civil and Systems Engineering<\/span><\/a><span data-contrast=\"auto\"> (CaSE) and Electrical and Computer Engineering at Johns Hopkins Whiting School of Engineering, and the U.S. d<\/span><span data-contrast=\"auto\">irector of the National Science Foundation\u2019s <\/span><a href=\"https:\/\/energyinstitute.jhu.edu\/epics\/\"><span>Electric Power Innovation for a Carbon-free Society Center (EPICS).<\/span><\/a> <span data-ccp-props=\"{&quot;134233117&quot;:false,&quot;134233118&quot;:false,&quot;201341983&quot;:0,&quot;335551550&quot;:1,&quot;335551620&quot;:1,&quot;335559685&quot;:0,&quot;335559737&quot;:0,&quot;335559738&quot;:0,&quot;335559739&quot;:160,&quot;335559740&quot;:259}\">\u00a0<\/span><\/p>\n<p><span data-contrast=\"auto\">Dvorkin says that each building has distinct characteristics, such as their age, size, local climate, and occupancy levels that affect energy consumption and cost. He noted that even an imperceptible temperature adjustment on the scale of just one degree Fahrenheit can lead to substantial changes in energy use and utility costs.\u00a0<\/span><span data-ccp-props=\"{}\">\u00a0<\/span><\/p>\n<p><span data-contrast=\"auto\">Traditional methods of predicting heating and cooling use in buildings rely on physics-based models, which are highly accurate, but difficult to scale due to each building requiring significant customization to address unique characteristics. Their complexity also makes physics-based models hard to scale quickly, the researchers say.<\/span><span data-ccp-props=\"{}\">\u00a0<\/span><\/p>\n<p><span data-contrast=\"auto\">In contrast, simpler AI-driven data models promise faster forecasting, but often ignore the physical realities of how buildings work, sometimes recommending impractical or even impossible settings. <\/span><a href=\"https:\/\/favarop.github.io\/\"><span data-contrast=\"none\">Pietro Favaro<\/span><\/a><span data-contrast=\"auto\">, study co-author and doctoral candidate at the University of Mons, <\/span><span data-contrast=\"auto\">also points out that historical building data used to train the AI models prevents the models from learning where they could have the greatest impact, as the historical data often repeats daily routines.<\/span><span data-ccp-props=\"{}\">\u00a0<\/span><\/p>\n<p><span data-contrast=\"auto\">By combining physics-based and AI models, the team developed DFL, which allows users to optimize decisions that reduce energy usage and cost, rather than simply aiming for a specific temperature or temperature range.<\/span><span data-ccp-props=\"{}\">\u00a0<\/span><\/p>\n<p><span data-contrast=\"auto\">\u201cWhat makes DFL unique is that it directly connects predictions to outcomes,\u201d said Dvorkin. \u201cIt doesn\u2019t just model temperatures\u2014it helps users decide how to run HVAC systems to meet their goals, whether that be a lower level of emissions or a lower electricity bill, by taking the downstream effects into account.\u201d<\/span><span data-ccp-props=\"{}\">\u00a0<\/span><\/p>\n<p><span data-contrast=\"auto\">Favaro, who was a previous year-long visiting student with Dvorkin\u2019s group in the Whiting School of Engineering\u2019s Department of Civil and Systems Engineering and Ralph O\u2019Connor Sustainable Energy Institute, validated DFL using real data from buildings and simulated experiments on a multi-zone building. Instead of looking for a single \u201ccorrect\u201d temperature, the researchers focused on the model\u2019s margin of error and tested how each suggestion ultimately affected energy use and cost. Over time, the DFL method not only obeyed the laws of physics but also learned which choices led to the most energy-efficient outcomes.<\/span><span data-ccp-props=\"{&quot;134233117&quot;:false,&quot;134233118&quot;:false,&quot;201341983&quot;:0,&quot;335551550&quot;:1,&quot;335551620&quot;:1,&quot;335559685&quot;:0,&quot;335559737&quot;:0,&quot;335559738&quot;:0,&quot;335559739&quot;:160,&quot;335559740&quot;:259}\">\u00a0<\/span><\/p>\n<p><span data-contrast=\"auto\">Dvorkin and Favaro say their approach has far-reaching implications. DFL could help reduce the environmental impact of heating and cooling, while also freeing up electricity for other uses\u2014or for export to regions facing power shortages. As global demand for electricity and computing power grows, driven by the rise in AI and data centers, such energy savings could bolster grid resilience. The team also found that energy savings translate directly into cost savings\u2014a win for property owners and their electricity bills.\u00a0<\/span><span data-ccp-props=\"{}\">\u00a0<\/span><\/p>\n<p><span data-contrast=\"auto\">\u201cWhile we focused this study specifically on HVAC management, the methodology we developed can be applied to a broad range of systems, including those that are more complex, like data centers, which is something we would like to explore in collaboration with CaSE&#8217;s Jan Drgona,\u201d said Favaro.<\/span><span data-ccp-props=\"{}\">\u00a0<\/span><\/p>\n<p><span data-contrast=\"auto\">The team\u2019s paper was awarded Runner-Up in this year\u2019s Best Paper competition at the <\/span><a href=\"https:\/\/energy.acm.org\/conferences\/eenergy\/2025\/index.php\"><span data-contrast=\"none\">ACM e-Energy<\/span><\/a><span data-contrast=\"auto\"> conference. Favaro continues to collaborate with Dvorkin on the refinement and applications of DFL.\u00a0<\/span><span data-ccp-props=\"{}\">\u00a0<\/span><\/p>\n<p><span data-contrast=\"auto\">Thanks to a recent <\/span><a href=\"https:\/\/hub.jhu.edu\/2025\/05\/16\/johns-hopkins-nexus-awards-2025\/\"><span data-contrast=\"none\">Nexus Award<\/span><\/a><span data-contrast=\"auto\"> from Johns Hopkins, Dvorkin is now working with fellow Hopkins researchers <\/span><a href=\"https:\/\/engineering.jhu.edu\/case\/faculty\/magdalena-klemun\/\"><span data-contrast=\"none\">Magdalena Klemun<\/span><\/a><span data-contrast=\"auto\"> and <\/span><a href=\"https:\/\/energyinstitute.jhu.edu\/people\/benjamin-link\/\"><span data-contrast=\"none\">Ben Link<\/span><\/a><span data-contrast=\"auto\"> on Project INTERSECT\u2014a research initiative applying these findings toward affordable and community-responsive data center expansion. The group will also work with <\/span><a href=\"https:\/\/engineering.jhu.edu\/case\/faculty\/jan-drgona\/\"><span data-contrast=\"none\">Jan Drgona<\/span><\/a><span data-contrast=\"auto\">, an expert in building energy management and machine learning, to develop solutions for thermal management of data centers.\u00a0<\/span><span data-ccp-props=\"{}\">\u00a0<\/span><\/p>\n<p><span data-contrast=\"auto\">\u201cWith technologies like DFL, we have an exciting opportunity to translate academic research directly into solutions that reduce energy costs, improve air quality, and develop a more reliable electrical grid,\u201d said Dvorkin. \u201cThis is the kind of real-world impact our communities need.\u201d<\/span><span data-ccp-props=\"{}\">\u00a0<\/span><\/p>\n<p><span data-contrast=\"auto\">Additional study co-authors were <\/span><a href=\"https:\/\/www.epeu-umons.be\/team-2\/jean-francois-toubeau\"><span data-contrast=\"none\">Jean-Fran\u00e7ois Toubeau<\/span><\/a><span data-contrast=\"auto\"> and <\/span><a href=\"https:\/\/www.epeu-umons.be\/team-2\/francoisvallee\"><span data-contrast=\"none\">Fran\u00e7ois Vall\u00e9e<\/span><\/a><span data-contrast=\"auto\"> of the University of Mons.<\/span><span data-ccp-props=\"{&quot;134233117&quot;:false,&quot;134233118&quot;:false,&quot;201341983&quot;:0,&quot;335551550&quot;:1,&quot;335551620&quot;:1,&quot;335559685&quot;:0,&quot;335559737&quot;:0,&quot;335559738&quot;:0,&quot;335559739&quot;:160,&quot;335559740&quot;:259}\">\u00a0<\/span><\/p>\n","protected":false},"template":"","class_list":["post-52082","news","type-news","status-publish","hentry","news_categories-future-energy-infrastructure","news_categories-research","news_categories-resilient-cities","news_categories-systems"],"acf":[],"yoast_head":"<!-- This site is optimized with the Yoast SEO plugin v27.7 - https:\/\/yoast.com\/product\/yoast-seo-wordpress\/ -->\n<title>AI Model Slashes HVAC Energy Costs While Predicting Them with Precision - Department of Civil &amp; 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