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2 result(s) for "Devendiran, Ramkumar"
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Realization of Sustainable Development Goals with Disruptive Technologies by Integrating Industry 5.0, Society 5.0, Smart Cities and Villages
Significant changes in society were emphasized as being required to achieve Sustainable Development Goals, a need which was further intensified with the emergence of the pandemic. The prospective society should be directed towards sustainable development, a process in which technology plays a crucial role. The proposed study discusses the technological potential for attaining the Sustainable Development Goals via disruptive technologies. This study further analyzes the outcome of disruptive technologies from the aspects of product development, health care transformation, a pandemic case study, nature-inclusive business models, smart cities and villages. These outcomes are mapped as a direct influence on Sustainable Development Goals 3, 8, 9 and 11. Various disruptive technologies and the ways in which the Sustainable Development Goals are influenced are elaborated. The investigation into the potential of disruptive technologies highlighted that Industry 5.0 and Society 5.0 are the most supportive development to underpin the efforts to achieve the Sustainable Development Goals. The study proposes the scenario where both Industry 5.0 and Society 5.0 are integrated to form smart cities and villages where the prospects of achieving Sustainable Development Goals are more favorable due to the integrated framework and Sustainable Development Goals’ interactions. Furthermore, the study proposes an integrated framework for including new age technologies to establish the concepts of Industry 5.0 and Society 5.0 integrated into smart cities and villages. The corresponding influence on the Sustainable Development Goals are also mapped. A SWOT analysis is performed to assess the proposed integrated approach to achieve Sustainable Development Goals. Ultimately, this study can assist the industrialist, policy makers and researchers in envisioning Sustainable Development Goals from technological perspectives.
HybridRobustNet: enhancing detection of hybrid attacks in IoT networks through advanced learning approach
The proliferation of Internet of Things (IoT) devices has revolutionized various domains, but it has also brought forth numerous security challenges. One of the most concerning threats is the emergence of hybrid attacks, which combine multiple attack vectors to exploit vulnerabilities in IoT networks. Existing security mechanisms often struggle to effectively predict and detect these sophisticated hybrid attacks, leading to compromised system integrity and data confidentiality. In this paper, we propose robust learning approach, named HybridRobustNet (HRN), for predicting and detecting hybrid attacks over IoT networks. HRN integrates machine learning algorithms, deep neural networks, and ensemble techniques to achieve enhanced detection accuracy and resilience against evolving hybrid attack patterns. By leveraging a diverse set of features, including network traffic patterns, device behavior, and communication characteristics, HRN effectively captures the complex relationships and dependencies between various attack components. Furthermore, the proposed approach incorporates real-time adaptive learning mechanisms, enabling it to dynamically adapt to new attack strategies and mitigate false positives. To evaluate the effectiveness of HRN, extensive experiments were conducted on a realistic IoT testbed comprising heterogeneous devices and attack scenarios. The results demonstrate that HRN outperforms state-of-the-art approaches in terms of attack detection accuracy, robustness against evasion techniques, and low false positive rates. Additionally, its computational efficiency makes it suitable for deployment in resource-constrained IoT environments. The contributions of this work are twofold. Firstly, it addresses the pressing need for robust detection mechanisms against hybrid attacks, which can have severe consequences for IoT networks. Secondly, it introduces a unique and adaptive learning approach, HRN, which exhibits superior performance and adaptability in the face of emerging attack strategies. The findings presented in this article provide valuable insights into the design of effective security mechanisms for IoT networks and pave the way for future research in the field of hybrid attack detection.