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

机译:基于随机森林分类算法的办公楼个性化调节系统的个人热敏算法

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摘要

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.
机译:个人热敏型模型用作个性化调节系统的主要部件,这是一个有效的方法,用于考虑占用者的热舒适性要求,考虑到能量消耗。 基于随机森林分类算法的热敏感觉模型在本研究中开发,将室内空气质量参数,个人信息,生理因素和占用偏好结合在选择7级感觉:冷,凉,略微凉,中性略微温暖 ,温暖和热。 我们的模型显示了更好的功能,以及性能和因子选择。 因此,我们的方法已经实现了70.2%的精度,比较了支持向量机的57.4%的准确性,在ASHRAE RP-884数据库中的中性网络精度为67.7%。 因此,我们的新开发的模型可用于具有智能控制功能的个性化热调节系统。

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