Himeur Yassine, Elnour Mariam, Fadli Fodil, Meskin Nader, Petri Ioan, Rezgui Yacine, Bensaali Faycal, Amira Abbes
Department of Architecture & Urban Planning, Qatar University, Doha, Qatar.
College of Engineering and Information Technology, University of Dubai, Dubai, UAE.
Artif Intell Rev. 2023;56(6):4929-5021. doi: 10.1007/s10462-022-10286-2. Epub 2022 Oct 15.
In theory, building automation and management systems (BAMSs) can provide all the components and functionalities required for analyzing and operating buildings. However, in reality, these systems can only ensure the control of heating ventilation and air conditioning system systems. Therefore, many other tasks are left to the operator, e.g. evaluating buildings' performance, detecting abnormal energy consumption, identifying the changes needed to improve efficiency, ensuring the security and privacy of end-users, etc. To that end, there has been a movement for developing artificial intelligence (AI) big data analytic tools as they offer various new and tailor-made solutions that are incredibly appropriate for practical buildings' management. Typically, they can help the operator in (i) analyzing the tons of connected equipment data; and; (ii) making intelligent, efficient, and on-time decisions to improve the buildings' performance. This paper presents a comprehensive systematic survey on using AI-big data analytics in BAMSs. It covers various AI-based tasks, e.g. load forecasting, water management, indoor environmental quality monitoring, occupancy detection, etc. The first part of this paper adopts a well-designed taxonomy to overview existing frameworks. A comprehensive review is conducted about different aspects, including the learning process, building environment, computing platforms, and application scenario. Moving on, a critical discussion is performed to identify current challenges. The second part aims at providing the reader with insights into the real-world application of AI-big data analytics. Thus, three case studies that demonstrate the use of AI-big data analytics in BAMSs are presented, focusing on energy anomaly detection in residential and office buildings and energy and performance optimization in sports facilities. Lastly, future directions and valuable recommendations are identified to improve the performance and reliability of BAMSs in intelligent buildings.
从理论上讲,楼宇自动化与管理系统(BAMS)可以提供分析和运营建筑物所需的所有组件和功能。然而,在现实中,这些系统只能确保对供暖、通风和空调系统进行控制。因此,许多其他任务就留给了操作人员,例如评估建筑物的性能、检测异常能耗、确定提高效率所需的改进措施、确保终端用户的安全和隐私等。为此,人们一直在推动开发人工智能(AI)大数据分析工具,因为它们提供了各种新的、量身定制的解决方案,非常适合实际的建筑物管理。通常,它们可以帮助操作人员:(i)分析大量的连接设备数据;以及(ii)做出智能、高效和及时的决策,以提高建筑物的性能。本文对在BAMS中使用人工智能大数据分析进行了全面系统的综述。它涵盖了各种基于人工智能的任务,例如负荷预测、水资源管理、室内环境质量监测、占用检测等。本文的第一部分采用精心设计的分类法来概述现有框架。对不同方面进行了全面综述,包括学习过程、建筑环境、计算平台和应用场景。接着,进行了批判性讨论以确定当前的挑战。第二部分旨在让读者深入了解人工智能大数据分析的实际应用。因此,本文展示了三个在BAMS中使用人工智能大数据分析的案例研究,重点是住宅和办公楼的能源异常检测以及体育设施的能源和性能优化。最后,确定了未来的发展方向和有价值的建议,以提高智能建筑中BAMS的性能和可靠性。