Towards Detecting IoT Event Spoofing Attacks Using Time-Series Classification
- URL: http://arxiv.org/abs/2407.19662v1
- Date: Mon, 29 Jul 2024 02:52:59 GMT
- Title: Towards Detecting IoT Event Spoofing Attacks Using Time-Series Classification
- Authors: Uzma Maroof, Gustavo Batista, Arash Shaghaghi, Sanjay Jha,
- Abstract summary: Internet of Things (IoT) devices have grown in popularity since they can directly interact with the real world.
Event fingerprints from deployed sensors have been used to detect spoofed events.
We deploy advanced machine learning to detect event-spoofing assaults.
- Score: 4.487333825879047
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Internet of Things (IoT) devices have grown in popularity since they can directly interact with the real world. Home automation systems automate these interactions. IoT events are crucial to these systems' decision-making but are often unreliable. Security vulnerabilities allow attackers to impersonate events. Using statistical machine learning, IoT event fingerprints from deployed sensors have been used to detect spoofed events. Multivariate temporal data from these sensors has structural and temporal properties that statistical machine learning cannot learn. These schemes' accuracy depends on the knowledge base; the larger, the more accurate. However, the lack of huge datasets with enough samples of each IoT event in the nascent field of IoT can be a bottleneck. In this work, we deployed advanced machine learning to detect event-spoofing assaults. The temporal nature of sensor data lets us discover important patterns with fewer events. Our rigorous investigation of a publicly available real-world dataset indicates that our time-series-based solution technique learns temporal features from sensor data faster than earlier work, even with a 100- or 500-fold smaller training sample, making it a realistic IoT solution.
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