Zhengzhou College of Finance and Economics, Zhengzhou 450000, China.
Comput Intell Neurosci. 2022 Mar 16;2022:1945507. doi: 10.1155/2022/1945507. eCollection 2022.
From a technological point of view, Industry 4.0 evolves and operates in a smart environment in which the real and virtual worlds come together through smart cyber-physical systems. These devices that control each other autonomously activate innovative functions that enhance the production process. However, the industrial environment in which the most modern digital automation and information technologies are integrated is an ideal target for large-scale targeted cyberattacks. Implementing an integrated and effective security strategy in the Industrial 4.0 ecosystem presupposes a vertical inspection process at regular intervals to address any new threats and vulnerabilities throughout the production line. This view should be accompanied by the deep conviction of all stakeholders that all systems of modern industrial infrastructure are a potential target of cyberattacks and that the slightest rearrangement of mechatronic systems can lead to generalized losses. Accordingly, given that there is no panacea in designing a security strategy that fully ensures the infrastructure in question, advanced high-level solutions should be adopted, effectively implementing security perimeters without direct dependence on human resources. One of the most important methods of active cybersecurity in Industry 4.0 is the detection of anomalies, i.e., the identification of objects, observations, events, or behaviors that do not conform to the expected pattern of a process. The theme of this work is the identification of defects in the production line resulting from cyberattacks with advanced machine vision methods. An original variational fuzzy autoencoder (VFA) methodology is proposed. Using fuzzy entropy and Euclidean fuzzy similarity measurement maximizes the possibility of using nonlinear transformation through deterministic functions, thus creating an entirely realistic vision system. The final finding is that the proposed system can evaluate and categorize anomalies in a highly complex environment with significant accuracy.
从技术角度来看,工业 4.0 在智能环境中发展和运行,其中真实世界和虚拟世界通过智能的网络物理系统融合在一起。这些相互控制的设备自主激活创新功能,增强了生产过程。然而,集成了最现代数字自动化和信息技术的工业环境是大规模有针对性网络攻击的理想目标。在工业 4.0 生态系统中实施综合有效的安全策略,需要定期进行垂直检查过程,以解决整个生产线的任何新威胁和漏洞。这种观点应该伴随着所有利益相关者的深刻信念,即现代工业基础设施的所有系统都是网络攻击的潜在目标,机电系统的 slightest 重新排列都可能导致普遍的损失。因此,鉴于在设计完全确保相关基础设施的安全策略方面没有灵丹妙药,应采用高级高级解决方案,在不直接依赖人力资源的情况下有效实施安全边界。工业 4.0 中主动网络安全的最重要方法之一是检测异常,即识别不符合过程预期模式的对象、观察、事件或行为。这项工作的主题是使用先进的机器视觉方法识别生产线因网络攻击而产生的缺陷。提出了一种原始的变分模糊自动编码器 (VFA) 方法。使用模糊熵和欧几里得模糊相似性测量最大限度地提高了通过确定性函数进行非线性变换的可能性,从而创建了一个完全现实的视觉系统。最终的发现是,所提出的系统可以在具有高度复杂性和显著准确性的环境中评估和分类异常。