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A Data Mining Approach to Discover Critical Events for Event-Driven Optimization in Building Air Conditioning Systems

机译:一种在建筑空调系统中发现事件驱动优化的关键事件的数据挖掘方法

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While online optimal control is regarded as an efficient tool to improve the operating efficiency of air conditioning, traditional optimal control strategies utilize the so-called time-driven optimization (TDO) scheme which triggers actions by "time". Although it works well for simple air conditioning systems, several limitations are encountered when systems become more and more complex. Since TDO is a periodic scheme, it may not be suitable or efficient to react to stochastic operational changes. Recently, in order to solve those limitations, the event-driven optimization (EDO) scheme has been proposed, in which actions are triggered by "event". However, previous studies only used prior knowledge to discover important events, which could only find events for general systems, and might not comprehensive because human prior knowledge is limited after all. Moreover, prior-knowledge-based method is able to discover new knowledge. Thus, this paper presents an effective data mining approach to discover the hidden knowledge in massive data set for EDO in building air conditioning systems. Results shown that data-mining-based EDO achieves a higher energy saving with reduced computation load, in comparison with the traditional TDO. Since the data mining approach can help to automate the process of finding critical events and event threshold, it also improves the practicability of EDO.
机译:虽然在线最佳控制被视为提高空调的运行效率的高效工具,但传统的最优控制策略利用所谓的时间驱动优化(TDO)方案,触发“时间”的动作。虽然适用于简单空调系统,但当系统变得越来越复杂时,遇到了几个限制。由于TDO是定期方案,因此对随机操作变化的反应可能不合适或有效。最近,为了解决这些限制,已经提出了事件驱动的优化(EDO)方案,其中“事件”触发了操作。然而,以前的研究只使用先前的知识来发现重要事件,这只能找到一般系统的事件,并且可能并不全面,因为人类的先验知识毕竟是有限的。此外,基于知识的方法能够发现新的知识。因此,本文提出了一种有效的数据挖掘方法,以发现建筑空调系统中的江户欧洲大规模数据集中的隐藏知识。结果表明,与传统的TDO相比,基于数据挖掘的EDO通过减少的计算负荷实现了更高的节能。由于数据挖掘方法可以帮助自动化找到关键事件和事件阈值的过程,因此它还提高了EDO的实用性。

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