BIoTA: Control-Aware Attack Analytics for Building Internet of Things

Nur Imtiazul Haque, M. Rahman, Dong Chen, H. Kholidy
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引用次数: 13

Abstract

Modern building control systems adopt demand control heating, ventilation, and cooling (HVAC) for increased energy efficiency. The integration of the Internet of Things (IoT) in the building control system can determine real-time demand, which has made the buildings smarter, reliable, and efficient. As occupants in a building are the main source of continuous heat and CO2 generation, estimating the accurate number of people in real-time using building IoT (BIoT) system facilities is essential for optimal energy consumption and occupants’ comfort. However, the incorporation of less secured IoT sensor nodes and open communication network in the building control system eventually increases the number of vulnerable points to be compromised. Exploiting these vulnerabilities, attackers can manipulate the controller with false sensor measurements and disrupt the system’s consistency. The attackers with the knowledge of overall system topology and control logics can launch attacks without alarming the system. This paper proposes a building internet of things analyzer (BIoTA) framework1 that assesses the smart building HVAC control system’s security using formal attack modeling. We evaluate the proposed attack analyzer’s effectiveness on the commercial occupancy dataset (COD) and the KTH live-in lab dataset. To the best of our knowledge, this is the first research attempt to formally model a BIoT-based HVAC control system and perform an attack analysis.
BIoTA:物联网建筑的控制感知攻击分析
现代建筑控制系统采用需求控制加热、通风和冷却(HVAC)来提高能源效率。物联网(IoT)在楼宇控制系统中的集成,可以实时确定需求,使楼宇更加智能、可靠、高效。由于建筑物中的居住者是持续热量和二氧化碳产生的主要来源,因此实时估计使用建筑物联网(BIoT)系统设施的准确人数对于优化能源消耗和居住者舒适度至关重要。然而,在建筑控制系统中加入安全性较低的物联网传感器节点和开放式通信网络最终会增加易受攻击点的数量。利用这些漏洞,攻击者可以用虚假的传感器测量来操纵控制器并破坏系统的一致性。了解系统整体拓扑结构和控制逻辑的攻击者可以在不引起系统警觉的情况下进行攻击。本文提出了一个建筑物联网分析仪(BIoTA)框架1,该框架使用形式化攻击建模来评估智能建筑暖通空调控制系统的安全性。我们在商业占用数据集(COD)和KTH居住实验室数据集上评估了所提出的攻击分析器的有效性。据我们所知,这是第一次对基于生物技术的暖通空调控制系统进行正式建模并进行攻击分析的研究尝试。
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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