使用机器学习的物联网信任计算模型

C. K. Marigowda, T. J, G. S, V. K. R., Muthyamala A
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引用次数: 0

摘要

多年来,物联网已经发展到更大的程度,物体通过网络相互通信。节点间的异构通信导致了大量的信息共享,敏感信息可以通过网络共享。为了防止设备与恶意节点通信,在信息共享过程中维护隐私和安全非常重要。为了防止节点与恶意节点通信,引入了信任的概念。设计了一种基于机器学习概念的物联网信任计算模型,该模型基于信任标记对信任进行评估。有三个信任标记,其中两个被评估。三个信任标志是知识、经验和信誉。根据知识信任标记的信任属性数学公式分别对其进行评估,然后基于这些属性,应用基于机器学习的算法训练模型对对象进行可信和不可信分类。知识信任标记的有效性通过仿真和混淆矩阵来衡量。训练模型的准确度由准确度分数表示。基于机器学习的物联网信任计算模型在将对象划分为可信和不可信方面具有较高的准确性。体验信任标记是基于其属性进行评估的,并且体验的行为会随着时间的推移而呈现出图形。
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Trust Computational Model For Iot Using Machine Learning
The Internet of Things has evolved over the years to a greater extent, where objects communicate with each other over a network. Heterogenous communication between the nodes leads to a large amount of information sharing, and sensitive information could be shared over the network. It is important to maintain privacy and security during information sharing to protect devices from communicating with malicious nodes. The concept of trust was introduced to prevent nodes from communicating with malicious nodes. A trust computation model for the IoT based on machine learning concepts was designed, which evaluates trust based on the Trust Marks. There are three trust marks, out of which two are evaluated. The three trust marks are knowledge, experience, and reputation. Knowledge trust marks are evaluated separately based on their trust property mathematical formulations, and then based on these properties, machine learning-based algorithms are applied to train the model to classify the objects as trustworthy and untrustworthy. The effectiveness of the Knowledge Trust Mark is measured by a simulation and confusion matrix. The accuracy of the trained model is shown by the accuracy score. The trust computational model for IoT using machine learning shows higher accuracy in classifying the objects as trustworthy and untrustworthy. The experience trust mark is evaluated based on its properties, and the behaviour of the experience is shown over time graphically.
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来源期刊
International Journal of Sensors, Wireless Communications and Control
International Journal of Sensors, Wireless Communications and Control Engineering-Electrical and Electronic Engineering
CiteScore
2.20
自引率
0.00%
发文量
53
期刊介绍: International Journal of Sensors, Wireless Communications and Control publishes timely research articles, full-length/ mini reviews and communications on these three strongly related areas, with emphasis on networked control systems whose sensors are interconnected via wireless communication networks. The emergence of high speed wireless network technologies allows a cluster of devices to be linked together economically to form a distributed system. Wireless communication is playing an increasingly important role in such distributed systems. Transmitting sensor measurements and control commands over wireless links allows rapid deployment, flexible installation, fully mobile operation and prevents the cable wear and tear problem in industrial automation, healthcare and environmental assessment. Wireless networked systems has raised and continues to raise fundamental challenges in the fields of science, engineering and industrial applications, hence, more new modelling techniques, problem formulations and solutions are required.
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