Publication | Closed Access
Learning Occupancy in Single Person Offices with Mixtures of Multi-lag Markov Chains
12
Citations
15
References
2013
Year
Unknown Venue
Artificial IntelligenceEngineeringMachine LearningIntelligent SystemsBuilt EnvironmentData ScienceHidden Markov ModelBuilding AutomationSystems EngineeringPrediction ModellingSmart BuildingOccupancy DynamicsPredictive AnalyticsReal-time Occupancy ForecastingComputer ScienceForecastingEnergy PredictionSingle Person OfficesMulti-lag Markov Chains
The problem of real-time occupancy forecasting for single person offices is critical for energy efficient buildings which use predictive control techniques. Due to the highly uncertain nature of occupancy dynamics, the modeling and prediction of occupancy is a challenging problem. This paper proposes an algorithm for learning and predicting single occupant presence in office buildings, by considering the occupant behaviour as an ensemble of multiple Markov models at different time lags. This model has been tested using real occupancy data collected from PIR sensors installed in three different buildings and compared with state of the art methods, reducing the error rate by on average 5% over the best comparator method.
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