文件名称:A Group-Based IoT Devices Classification Through Network Traffic Analysis Based on Machine Learning Approach
- 所属分类:
- 其他书籍
- 资源属性:
- [PDF]
- 上传时间:
- 2022-03-23
- 文件大小:
- 807.78kb
- 下载次数:
- 0次
- 提 供 者:
- elmustafasayed@gmail.com
- 相关连接:
- 无
- 下载说明:
- 别用迅雷下载,失败请重下,重下不扣分!
介绍说明--下载内容均来自于网络,请自行研究使用
With the rapid growth of the Internet of Things (IoT), the
deployment, management, and identification of IoT devices that are connected
to networks become a big concern. Consequently, they emerge as a
prominent challenge either for mobile network operators who try to offer
cost-effective services tailored to IoT market, or for network administrators
who aim to identify as well reduce costs processing and optimize
traffic management of connected environments. In order to achieve high
accuracy in terms of reliability, loss and response time, new devices real
time discovery techniques based on traffic characteristics are mandatory
in favor of the identification of IoT connected devices.
Therefore, we design GBC−IoT, a group-based machine learning approach
that enables to identify connected IoT devices through network
traffic analysis. By leveraging well-known machine learning algorithms,
GBC−IoT fr a mework identifies and categorizes IoT devices into three
classes with an overall accuracy equals to roughly 99.98%. Therefore,
GBC−IoT can efficiently identify IoT devices with less processing overhead
compared to previous studies.
deployment, management, and identification of IoT devices that are connected
to networks become a big concern. Consequently, they emerge as a
prominent challenge either for mobile network operators who try to offer
cost-effective services tailored to IoT market, or for network administrators
who aim to identify as well reduce costs processing and optimize
traffic management of connected environments. In order to achieve high
accuracy in terms of reliability, loss and response time, new devices real
time discovery techniques based on traffic characteristics are mandatory
in favor of the identification of IoT connected devices.
Therefore, we design GBC−IoT, a group-based machine learning approach
that enables to identify connected IoT devices through network
traffic analysis. By leveraging well-known machine learning algorithms,
GBC−IoT fr a mework identifies and categorizes IoT devices into three
classes with an overall accuracy equals to roughly 99.98%. Therefore,
GBC−IoT can efficiently identify IoT devices with less processing overhead
compared to previous studies.
(系统自动生成,下载前可以参看下载内容)
下载文件列表
压缩包 : Bassene-Gueye2021_Chapter_AGroup-BasedIoTDevicesClassifi.rar 列表 Bassene-Gueye2021_Chapter_AGroup-BasedIoTDevicesClassifi.pdf