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A smart and less intrusive feedback request algorithm towards human-centered HVAC operation

机译:一种智能且富有侵入性的反馈请求算法朝向人以人为本的HVAC操作

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摘要

There is an increasing number of recent studies about personalized thermal preferences and controls in office buildings. Data collection from occupants in real buildings is necessary for training and updating models. However, sufficient quantity and quality of data are required for developing reliable models, along with optimal model complexity, efficient updating modes and robust evaluation metrics. Therefore, long-term collection of occupant feedback is often needed, which might be intrusive and impractical. This paper presents a Bayesian modeling approach which incorporates voluntary feedback data (comfort-related responses), collected via participatory interfaces, along with requested feedback data, into the personal thermal preference learning framework. This is achieved by explicitly considering occupants' participation -a type of behavior -in the model structure, i.e., integration of thermal preference-related feedback and occupant behavior. The approach was evaluated with two different datasets collected from two experimental setups with human test-subjects. A smart feedback request algorithm was developed, which determines whether to request feedback at any given time based on the quantified value (i.e., information gain) of the request. The value was computed using the expected Kullback-Leibler divergence between the current and updated posterior parameter distributions. In addition, a simulation study was conducted to evaluate the performance of the algorithm. The results show that the new algorithm learns individual thermal preferences with reduced feedback requests, i.e., effective but less-intrusive. Requesting occupant feedback only when truly needed is important for smart and practical human-centered HVAC operation.
机译:有关办公楼中的个性化热偏好和控制的最近研究数量越来越多。从真实建筑物中的乘员的数据收集是培训和更新模型所必需的。然而,开发可靠的模型需要足够的数量和数据质量,以及最佳的模型复杂性,有效的更新模式和强大的评估度量。因此,通常需要长期收集乘员反馈,这可能是侵入性和不切实际的。本文介绍了一种贝叶斯建模方法,该方法包括通过参与式接口收集的自愿反馈数据(舒适相关的响应),以及请求的反馈数据,进入个人热偏好学习框架。这是通过显式考虑占用者的参与-A类型的行为来实现 - 在模型结构中,即热偏好相关反馈和乘员行为的整合。通过从两种实验装置中收集的具有人体测试对象的两种不同的数据集进行评估。开发了一种智能反馈请求算法,其基于请求的量化值(即信息增益)来确定是否在任何给定时间请求反馈。使用当前和更新的后参数分布之间的预期kullback-Leibler分歧来计算该值。此外,进行了模拟研究以评估算法的性能。结果表明,新算法通过减少的反馈请求,即有效但不含侵扰来了解各个热偏好。只有在真正需要时,请求乘员反馈对于智能和实际的人以人以人为本的HVAC操作很重要。

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