面向智能家居边缘ids评估的物联网传感器遥测数据综合

Sasirekha Gvk, Amulya Bangari, M. Rao, Jyotsna L. Bapat, D. Das
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引用次数: 0

摘要

智能家居由冰箱、空调、电能表等设备组成,它们将遥测数据发送到云端进行分析、决策和控制。智能家居网络容易受到拒绝服务、注入攻击等攻击,需要入侵检测系统(IDS)检测。基于机器学习(ML)的IDS开发面临的挑战是缺乏用于ML模型生成和评估的实际数据。本文提出了一种基于样本间时间差的入侵检测方法。此外,还描述了如何综合攻击的影响。使用此合成数据评估基于XGBoost的分类器。该合成数据的质量已在合成数据训练和真实数据测试(TSTR)和预测能力(PC)方面进行了计算。这种合成数据可以通过多个级别的攻击影响因子(AIF)生成,其中级别由准确分类数据的难度决定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Synthesis of IoT Sensor Telemetry Data for Smart Home Edge-IDS Evaluation
Smart homes comprise of gadgets like refrigerators, air conditioners, energy meters etc, which send telemetry data to the cloud for analysis, decision making and control. Smart home networks are prone to attacks like denial of service, injection attack etc., which need to be detected by the Intrusion Detection Systems (IDS). The challenge in the development of Machine Learning (ML) based IDS is the scarcity of actual data for ML model generation and evaluation. In this paper, an approach of IDS based on the time difference between samples is proposed. Also, how the impact of the attacks can be synthesized, is described. An XGBoost based classifier is evaluated using this synthetic data. The quality of this synthetic data has been computed in terms of Training on Synthetic data and Testing on Real Data (TSTR) and Prediction Capability (PC). This synthetic data can be generated with multiple levels of Attack Impact Factor (AIF), where the level is determined by how difficult it is to classify the data accurately.
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