Computational intelligence based anomaly detection for Building Energy Management Systems

O. Linda, Dumidu Wijayasekara, Milos Manic, C. Rieger
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引用次数: 31

Abstract

In the past several decades Building Energy Management Systems (BEMSs) have become vital components of most modern buildings. BEMSs utilize advanced microprocessor technology combined with extensive sensor data collection and communication to minimize energy consumption while maintaining high human comfort levels. When properly tuned and operated, BEMSs can provide significant energy savings. However, the complexity of the acquired sensory data and the overwhelming amount of presented information renders them difficult to adjust or even understand by responsible building managers. This inevitably results in suboptimal BEMS operation and performance. To address this issue, this paper reports on a research effort that utilizes Computational Intelligence techniques to fuse multiple heterogeneous sources of BEMS data and to extract relevant actionable information. This actionable information can then be easily understood and acted upon by responsible building managers. In particular, this paper describes the use of anomaly detection algorithms for improving the understandability of BEMS data and for increasing the state-awareness of building managers. The developed system utilizes modified nearest neighbor clustering algorithm and fuzzy logic rule extraction technique to automatically build a model of normal BEMS operations and detect possible anomalous behavior. In addition, linguistic summaries based on fuzzy set representation of the input values are generated for the detected anomalies which increase the understandability of the presented results.
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基于计算智能的建筑能源管理系统异常检测
在过去的几十年里,建筑能源管理系统(BEMSs)已经成为大多数现代建筑的重要组成部分。BEMSs利用先进的微处理器技术,结合广泛的传感器数据收集和通信,在保持高人体舒适度的同时,最大限度地减少能源消耗。当适当地调整和操作时,BEMSs可以提供显著的能源节约。然而,所获得的感官数据的复杂性和所呈现的信息的压倒性数量使它们难以调整,甚至难以被负责任的建筑管理人员理解。这不可避免地导致BEMS操作和性能不理想。为了解决这个问题,本文报告了一项利用计算智能技术融合多个异构BEMS数据源并提取相关可操作信息的研究工作。然后,这些可操作的信息可以很容易地被理解,并由负责任的建筑管理人员采取行动。特别地,本文描述了异常检测算法的使用,以提高BEMS数据的可理解性,并增加建筑管理人员的状态意识。该系统利用改进的最近邻聚类算法和模糊逻辑规则提取技术,自动建立BEMS正常运行模型,并检测可能的异常行为。此外,对检测到的异常生成基于输入值模糊集表示的语言摘要,提高了呈现结果的可理解性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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