SPECIAL NOTICE
99 -- Licensing Opportunity: Autonomous Anomaly Detection of Model Forecasts of Controllable Devices in Residential Communities
- Notice Date
- 9/11/2024 7:40:24 AM
- Notice Type
- Special Notice
- Contracting Office
- ORNL UT-BATTELLE LLC-DOE CONTRACTOR Oak Ridge TN 37831 USA
- ZIP Code
- 37831
- Solicitation Number
- 2024-09-11-P
- Response Due
- 10/26/2024 2:00:00 PM
- Archive Date
- 10/27/2024
- Point of Contact
- Andreana Leskovjan, Phone: 8653410433
- E-Mail Address
-
leskovjanac@ornl.gov
(leskovjanac@ornl.gov)
- Description
- Invention Reference Number: 202405628 Water heaters and heating, ventilation, and air conditioning (HVAC) systems collectively consume about 58% of home energy use. Managing these systems is crucial for managing peak demand, carbon emission, energy consumption, electricity price and integrating distributed renewables into older grid systems. However, model forecasts lack anomaly detection systems which are essential for efficient use of devices as they can allow to study the behavior of the model, improve forecasting load accuracy, and implement error correction schemes. This technology is an autonomous system that can perform data curation, data cleaning, conduct error analysis, and detect anomalies of model forecasts of HVAC and water heater systems. Description This technology is software based on machine learning that autonomously identifies anomalies in HVAC and water heater systems in homes and commercial buildings. It is time-consuming and intensive to detect these anomalies manually as a residential neighborhood often contains several homes. The complexity further increases with the increasing time period of analysis. This is an autonomous system that can perform data curation, data cleaning, conduct error analysis, and detect anomalies of model forecasts of HVAC and water heater systems, and can classify anomalies for subgroups such as different floors, fan use, corner units, basement and water usage profiles. Benefits Only method to automatically detect anomalies in predictive control and correct them without human intervention Saves time and money More efficient Can run on laptop or cloud Increases occupant comfort Can detect anomalies in power grid Applications and Industries Electric utilities HVAC/Plumbing Construction Contact To learn more about this technology, email�partnerships@ornl.gov�or call 865-574-1051.
- Web Link
-
SAM.gov Permalink
(https://sam.gov/opp/f0c628e31f874ff2aed5c2f7b176509f/view)
- Place of Performance
- Address: Oak Ridge, TN 37830, USA
- Zip Code: 37830
- Country: USA
- Zip Code: 37830
- Record
- SN07206797-F 20240913/240911230118 (samdaily.us)
- Source
-
SAM.gov Link to This Notice
(may not be valid after Archive Date)
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