New Study Finds a 5G-Enabled System for the Next Generation of Cybersecurity
Industrial Internet of Things (IIoT) helps streamline processes by creating communication networks between different components of an industry. However, these IIoT systems are also prone to security threats which need to be addressed to ensure a safe Industry 4.0 revolution. Researchers from INU developed an AI-based convolutional neural network architecture that can classify malware attacks in 5G-enabled IIoT systems.
IIoT has recently gained popularity due to its ability to create communication networks between different components of an industry and bring about the new revolution—Industry 4.0. Powered by wireless 5G connectivity and artificial intelligence (AI), IIoT holds the ability to analyze critical problems and provide solutions that can improve the operational performance of industries ranging from manufacturing to healthcare.
IoT is highly user-centric—it connects TVs, voice assistants, refrigerators, etc.—whereas IIoT deals with enhancing the health, safety, or efficiency of larger systems, bridging hardware with software, and carrying out data analysis to provide real-time insights.
However, while IIoT does have many advantages, it also comes with its share of vulnerabilities such as security threats in the form of attacks trying to disturb the network or siphoning resources. As IIoT is getting more popular in industries, it is becoming crucial to develop an efficient system to handle such security concerns. So, a team of multinational researchers led by Prof. Gwanggil Jeon from Incheon National University stepped up to the challenge.
They took a deep dive into the world of 5G-enabled IIoT to explore its threats and come up with a novel solution to the problem.