基于深度学习的物联网信任传感器数据行为检测机制

Q2 Social Sciences
Hyun-Woo Kim, Eun-Ha Song
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引用次数: 1

摘要

在本文中,我们提出了BDM-TSD(信任感知数据的行为检测机制)来对具有感知功能的物联网环境中的可靠传感器数据识别的风险组和非风险组进行分类。BDM-TSD收集连接到物联网环境的传感器设备的感知时间、操作周期、感知数据类型等信任数据以及人工恶意数据。所收集的数据通过随后通过深度学习操作的传感器设备的行为来执行网络分组分析和感测数据行为分析。此前,研究通过安全代理检测每个设备的未授权系统调用或通过监控服务器检测异常行为,而在物联网环境中使用先进的攻击技术检测新的和变体的恶意行为的研究还不够。通过恶意数据包过滤和多传感器行为检测,可以实现可信的物联网配置。在本文中,我们展示了如何基于多个传感器的感知功能,使用深度学习来检测物联网环境中的异常和恶意行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Behavior Detection Mechanism for Trust Sensor Data Using Deep Learning in the Internet of Things
In this paper, we propose BDM-TSD(Behavior Detection Mechanism for Trust Sensing Data) to classify risk group and non-risk group for reliable sensor data identification in IoT environment with sensing function. BDM-TSD collects trust data such as sensing time, operation cycle, and type of sensing data of sensor devices connected to the IoT environment and artificial malicious data. The collected data performs network packet analysis and sensing data behavior analysis through the behavior of the sensor device that is subsequently operated through deep learning. Previously, research was conducted to detect unauthorized system calls of each device through security agents or abnormal behaviors through monitoring servers, and research to detect new and variant malicious behaviors with advanced attack techniques in IoT environments is insufficient A trusted IoT configuration is possible through malicious packet filtering and multi-sensor behavior detection. In this paper, we show how deep learning can be used to detect anomalies and malicious behaviors in the IoT environment based on the sensing function of multiple sensors.
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来源期刊
Webology
Webology Social Sciences-Library and Information Sciences
自引率
0.00%
发文量
374
审稿时长
10 weeks
期刊介绍: Webology is an international peer-reviewed journal in English devoted to the field of the World Wide Web and serves as a forum for discussion and experimentation. It serves as a forum for new research in information dissemination and communication processes in general, and in the context of the World Wide Web in particular. Concerns include the production, gathering, recording, processing, storing, representing, sharing, transmitting, retrieving, distribution, and dissemination of information, as well as its social and cultural impacts. There is a strong emphasis on the Web and new information technologies. Special topic issues are also often seen.
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