Litcius/Paper detail

A Random Forest Classification Algorithm Based Personal Thermal Sensation Model for Personalized Conditioning System in Office Buildings

Qingyun Li, Jie Han, Lin Lu

2020The Computer Journal21 citationsDOI

Abstract

Abstract The personal thermal sensation model is used as the main component for personalized conditioning system, which is an effective method to fulfill thermal comfort requirements of the occupants, considering the energy consumption. The Random Forest classification algorithm based thermal sensation model is developed in this study, which combines indoor air quality parameters, personal information, physiological factors and occupancy preferences on selection of 7-level of sensation: cold, cool, slightly cool, neutral, slightly warm, warm and hot. Our model shows better functionality, as well as performance and factor selection. As a result, our method has achieved 70.2% accuracy, comparing with the 57.4% accuracy of support vector machine, and 67.7% accuracy of neutral network in an ASHRAE RP-884 database. Therefore, our newly developed model can be used in personalized thermal adjustment systems with intelligent control functions.

Topics & Concepts

ASHRAE 90.1Thermal comfortComputer scienceAir conditioningRandom forestSimulationThermalAlgorithmThermal sensationArtificial intelligenceEngineeringMeteorologyMechanical engineeringPhysicsBuilding Energy and Comfort OptimizationUrban Heat Island MitigationColor perception and design