An Analytical Review on Classification of IoT Traffic and Channel Allocation Using Machine Learning Technique

Santosh Lavate, P. K. Srivastava
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Abstract

The growth of Internet of Things devices and technologies has given rise to a challenging new threat in the form of user data traffic flow. When there is insufficient channel allocation and network traffic measures in place, large volumes of sensitive data are at danger, and the transmission of data around the world can be slowed down by unwanted data. Cybercriminals have the potential to take use of this for evil ends. As a consequence of this, sophisticated mechanisms for assigning network channels and classifying network traffic are required. These mechanisms must be able to analyze and assign carriers to Internet of Things (IoT) network traffic in real time. We present a novel strategy based on machine learning for assigning channels in IoT networks and identifying data that is safe to use in order to get around this problem. The classification of Internet of Things (IoT) traffic networks and the allotment of channels for harmless data in huge network traffic could both benefit greatly from the application of this technology. The suggested approach makes use of deep learning technologies to perform operations at the network level, which results in a significant reduction in the amount of time spent on network classification and allocation of appropriate transmission medium for Benign traffic while also producing encouraging outcomes.
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基于机器学习技术的物联网流量分类与信道分配分析综述
物联网设备和技术的发展带来了用户数据流量这一具有挑战性的新威胁。当信道分配不足和网络流量措施不到位时,大量敏感数据处于危险之中,并且数据在全球范围内的传输可能会因不需要的数据而减慢。网络罪犯有可能利用这一点来达到邪恶的目的。因此,需要复杂的机制来分配网络通道和对网络流量进行分类。这些机制必须能够实时分析和分配运营商到物联网(IoT)网络流量。我们提出了一种基于机器学习的新策略,用于在物联网网络中分配通道,并识别安全使用的数据,以解决这个问题。物联网(IoT)流量网络的分类和巨大网络流量中无害数据的通道分配都可以从该技术的应用中受益匪浅。建议的方法利用深度学习技术在网络层面执行操作,这大大减少了用于网络分类和为良性流量分配适当传输介质的时间,同时也产生了令人鼓舞的结果。
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