Bilal Zahid Hussain

and 1 more

In the contemporary era of rapid technological advancement, the Industrial Internet of Things (IIoT) has become a pivotal element in revolutionizing industrial operations. This paper delves into the escalating cybersecurity challenges posed by the sprawling networks of IIoT, accentuating the inadequacy of traditional cybersecurity methods in the face of sophisticated cyber threats. We introduce machine learning (ML) as a transformative approach to fortify the cybersecurity landscape of IIoT systems. Our research primarily focuses on the application of machine learning algorithms to detect, analyze, and counteract diverse cyber threats in IIoT environments. These algorithms are trained to recognize and respond to a spectrum of cyber threats, thereby enhancing the resilience of IIoT networks. We present a novel Convolutional-GRU autoencoder model, which demonstrates superior performance over traditional machine learning models in terms of accuracy, precision, recall, and F1score. This model is adept at learning and adapting from complex data patterns, ensuring robust defense against cyber intrusions. We also address the challenges in applying ML to IIoT cybersecurity, considering the varied nature of IIoT devices and the dynamic landscape of cyber threats. This study is an important stride towards enhancing IIoT cybersecurity, highlighting the symbiotic relationship between ML and IIoT. It serves as a foundation for future research and a guide for current implementations, aiming to create more secure, reliable, and efficient IIoT environments. By exploring the potential of ML in cybersecurity, we pave the way for a new era in industrial digital protection, one that is adaptable, forward-thinking, and resilient against the ever-evolving digital threats.

Bilal Zahid Hussain

and 2 more

This research paper presents a comprehensive investigation into the development of an innovative and novel custom neural network model for intrusion detection systems (IDS). In the current era of rapid data transfer facilitated by the internet and advancements in communication technologies, the security of sensitive information is of paramount concern. As attackers continuously devise new methodologies to steal or tamper with data, IDSs face significant challenges in effectively detecting and mitigating intrusions. While extensive research has been conducted to enhance IDS capabilities, the need for improved detection accuracy and reduced false alarm rates remains a pressing issue. Moreover, the identification of zeroday attacks continues to pose a formidable obstacle. In contrast to conventional IDS approaches that heavily rely on statistical methodologies and rule-based expert systems, this study embraces data mining techniques, specifically Neural Networks (NNs), to overcome the limitations associated with large datasets. This research paper proposes a meticulously designed custom neural network model that leverages machine learning (ML) algorithms to analyze contemporary host activity and cloud service data. The paper extensively discusses the utilized dataset, meticulously evaluates the performance of various classifiers, and introduces our innovative neural network model. Emphasizing the significance of our model in anomaly detection, the findings underscore the importance of robust ML models to ensure the efficacy and longevity of deployed defensive systems. By capitalizing on its innovative design and leveraging the power of ML algorithms, our model not only addresses the limitations of traditional IDS approaches but also paves the way for enhanced accuracy, reduced false alarms, and improved resilience against zero-day attacks. This research contributes to the advancement of the field, shedding light on the novel possibilities and remarkable innovation offered by our custom neural network model in safeguarding critical information in an increasingly hostile digital landscape.