论文标题
通过整合事件时间间隔,在智能家中有效检测有效的异常检测
Effective Anomaly Detection in Smart Home by Integrating Event Time Intervals
论文作者
论文摘要
智能家庭物联网系统和设备容易受到攻击和故障。结果,用户对其安全性和安全问题的担忧以及智能家庭部署的流行而出现。在一个聪明的家中,由于网络攻击,设备故障或人类错误,可能发生各种异常(例如火灾或洪水)。这些关注激励研究人员提出各种异常检测方法。现有关于智能家居异常检测的工作重点是检查物联网设备事件的顺序,但忽略了事件的时间信息。此限制使他们能够检测出导致延迟而不是缺少/注射事件的异常。为了填补这一空白,在本文中,我们提出了一种新型的异常检测方法,该方法将事件间隔考虑在内。我们提出了一个创新的度量标准,以量化两个事件序列之间的时间相似性。我们设计了一种学习常见日常活动事件序列的时间模式的机制。通过将序列与学习模式进行比较,可以检测到延迟引起的异常。我们从现实世界测试床上收集设备事件进行培训和测试。实验结果表明,我们提出的方法在三个日常活动中获得了93%,88%,89%的精度。
Smart home IoT systems and devices are susceptible to attacks and malfunctions. As a result, users' concerns about their security and safety issues arise along with the prevalence of smart home deployments. In a smart home, various anomalies (such as fire or flooding) could happen, due to cyber attacks, device malfunctions, or human mistakes. These concerns motivate researchers to propose various anomaly detection approaches. Existing works on smart home anomaly detection focus on checking the sequence of IoT devices' events but leave out the temporal information of events. This limitation prevents them to detect anomalies that cause delay rather than missing/injecting events. To fill this gap, in this paper, we propose a novel anomaly detection method that takes the inter-event intervals into consideration. We propose an innovative metric to quantify the temporal similarity between two event sequences. We design a mechanism to learn the temporal patterns of event sequences of common daily activities. Delay-caused anomalies are detected by comparing the sequence with the learned patterns. We collect device events from a real-world testbed for training and testing. The experiment results show that our proposed method achieves accuracies of 93%, 88%, 89% for three daily activities.