基于中性粒细胞的机器学习环境,用于物联网中设备的可信度

A. Salamai
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引用次数: 0

摘要

工业部门是最适合的部门之一,可以从工业物联网(IIoT)的思想和技术的实施中获得相当大的优势,它是世界上最具竞争力的行业之一。制造业中自动化流程的使用越来越多,导致了基于工业物联网的各种应用。这些应用需要有效地集成各种不同的系统,并在所有机器上执行顺利的操作。集成和平稳运行的问题使工业物联网成为智能制造领域的一个新的研究课题。这带来了几个问题,包括安全性、问责制、信心和可靠性。作为工业物联网(IIoT)的一部分,许多设备将通过无线和互联网基础设施相互连接并相互交互。当这种情况发生时,工业物联网设备的可靠性成为防止恶意机器注入过程中的关键组成部分。因此,需要一个智能计算机模型来有效地聚类和分类IIoT设备所拥有的可信度水平。在本文中,我们描述了一个基于中性TOPSIS的物联网(IIoT)信任模型,并被IIoT应用程序用于确定IIoT设备的信任评分。通过使用从IIoT设备接收到的历史知识、时间知识和网络行为信息构建的模型来评估设备的可靠性。除此之外,该模型还建议使用KNN和决策树对收集到的属性进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neutrosophic-based machine learning context for the trustworthiness of devices in the internet of things
The industrial sector is among the most suited sectors that may considerably advantage from the implementation of the ideas and technology of the Industrial Internet of Things (IIoT), and it is one of the most competitive industries in the world. The increased use of automated processes in manufacturing sectors results in a wide variety of applications based on IIoT. These applications call for the efficient integration of a wide variety of different systems and the execution of smooth operations across all machines. The issue of integration and smooth operation presents IIoT as a new subject of study in smart manufacturing. This carries with it several problems, including those on security, accountability, confidence, and dependability. As part of the Industrial Internet of Things (IIoT), many devices will be linked to one another and interact with one another through wireless and internet infrastructure. When this kind of situation plays out, the reliability of the IIoT devices becomes a key component in the process of preventing injection by hostile machines. As a result, an intelligent computer model is required to effectively cluster and categorize the level of trustworthiness possessed by the IIoT devices. In this article, we describe a trust model for the Internet of Things (IIoT) that is based on the neutrosophic TOPSIS and is utilized by IIoT apps to determine the trust score of IIoT devices. The reliability of devices is evaluated by the model that was constructed using the historical knowledge, chronological knowledge, and network behavior information that is received from IIoT devices. In addition to that, the model suggests KNN, and a Decision tree to categorize the attributes that were collected.
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