智能占用驱动恒温器通过动态用户分析

Yannick De Bock, Andrés Auquilla, K. Kellens, A. Nowé, J. Duflou
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引用次数: 5

摘要

通过学习用户行为来匹配系统功能和用户需求,可以显著减少能源消耗。习惯和日常行为被利用并捕获在用户配置文件中,以自动创建定制的加热时间表。然而,随着时间的推移,用户的行为可能会逐渐或突然改变,旧的占用模式可能会过时。因此,自学习系统应该能够应对这些变化,并相应地调整已识别的用户配置文件。提出了一种跟踪变化的行为和更新相应的用户配置文件的方法,从而提出了加热时间表。通过比较静态学习和增量学习策略的预测精度和潜在的节能来评估所提出的策略。结果通过单用户办公室的真实数据集来说明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent occupancy-driven thermostat by dynamic user profiling
Matching system functionality and user needs by learning from user behaviour enables a significant reduction in energy consumption. Habits and routine behaviour are exploited and captured in user profiles to automatically create customized heating schedules. However, over time the user conduct can change either gradually or abruptly and old occupancy patterns could become obsolete. Hence, a self-learning system should be able to cope with these changes and adapt the identified user profiles accordingly. An approach to track changing behaviour and update the corresponding user profiles, and hence heating schedules, is presented. The proposed strategy is evaluated by comparing prediction accuracy and potential energy savings to the case where learning is static and to incremental learning strategies. The results are illustrated by means of a real-life dataset of a single-user office.
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