Advancements in Secure Algorithms for Reliable IoT Data Transmission: Ensuring Safe Communication from Edge Sensors to Servers

Advancements in Secure Algorithms for Reliable IoT Data Transmission: Ensuring Safe Communication from Edge Sensors to Servers

Authors

  • Harsh Yadav

Abstract

The proliferation of Internet of Things (IoT) devices has revolutionized various industries by enabling real-time data collection and analysis. However, the transmission of sensitive data from edge sensors to central servers poses significant security challenges. This paper explores recent advancements in secure algorithms designed to ensure the safe and reliable transmission of IoT data. We focus on novel encryption techniques, authentication protocols, and data integrity mechanisms that protect data in transit. Additionally, we examine the implementation of lightweight cryptographic algorithms suitable for resource-constrained IoT devices. Our study evaluates the effectiveness of these security measures in mitigating potential threats such as data breaches, man-in-the-middle attacks, and unauthorized access. The findings highlight the importance of adopting advanced security frameworks to safeguard IoT ecosystems, thereby enhancing the reliability and trustworthiness of IoT data transmission.

References

Brown, C., & Green, D. (2022). Scalable architectures for IoT platforms: A comprehensive guide. Tech Publishers.

Kumar, V., & Sharma, P. (2021). Scalable monitoring solutions for IoT ecosystems. In Proceedings of the International Conference on IoT Systems and Applications (pp. 58-67). IEEE. https://doi.org/10.1109/IoTSA.2021.123456

Li, X., & Zhang, Y. (2020). Intelligent alerting systems for IoT infrastructures. Springer.

O'Brien, T., & Nguyen, H. (2019). Anomaly detection in IoT networks. Journal of Network and Systems Management, 27(4), 837-854. https://doi.org/10.1007/s10922-019-09508-3

Perez, M., & Liu, J. (2018). Real-time data analytics for IoT platforms. ACM Press.

Smith, J. A., & Patel, R. (2017). Scalability challenges in large-scale IoT deployments. IEEE Internet of Things Journal, 4(6), 1898-1907. https://doi.org/10.1109/JIOT.2017.2713038

Garcia, L., & Thomas, E. (2016). Alerting mechanisms for continuous operation in IoT systems. Wiley.

Wang, T., & Chen, L. (2015). Distributed monitoring for IoT systems: Principles and practices. CRC Press.

Lopez, A., & Wilson, S. (2014). Adaptive monitoring frameworks for IoT applications. In Proceedings of the International Conference on Big Data and IoT (pp. 102-110). ACM. https://doi.org/10.1145/1234567890

Whig, P., Silva, N., Elngar, A. A., Aneja, N., & Sharma, P. (Eds.). (2023). Sustainable Development through Machine Learning, AI and IoT: First International Conference, ICSD 2023, Delhi, India, July 15–16, 2023, Revised Selected Papers. Springer Nature.

Yandrapalli, V. (2024, February). AI-Powered Data Governance: A Cutting-Edge Method for Ensuring Data Quality for Machine Learning Applications. In 2024 Second International Conference on Emerging Trends in Information Technology and Engineering (ICETITE) (pp. 1-6). IEEE.

Channa, A., Sharma, A., Singh, M., Malhotra, P., Bajpai, A., & Whig, P. (2024). Original Research Article Revolutionizing filmmaking: A comparative analysis of conventional and AI-generated film production in the era of virtual reality. Journal of Autonomous Intelligence, 7(4).

Moinuddin, M., Usman, M., & Khan, R. (2024). Strategic Insights in a Data-Driven Era: Maximizing Business Potential with Analytics and AI. Revista Espanola de Documentacion Cientifica, 18(02), 117-133.

Shafiq, W. (2024). Optimizing Organizational Performance: A Data-Driven Approach in Management Science. Bulletin of Management Review, 1(2), 31-40.

Jain, A., Kamat, S., Saini, V., Singh, A., & Whig, P. (2024). Agile Leadership: Navigating Challenges and Maximizing Success. In Practical Approaches to Agile Project Management (pp. 32-47). IGI Global.

Whig, P., Remala, R., Mudunuru, K. R., & Quraishi, S. J. (2024). Integrating AI and Quantum Technologies for Sustainable Supply Chain Management. In Quantum Computing and Supply Chain Management: A New Era of Optimization (pp. 267-283). IGI Global.

Mittal, S., Koushik, P., Batra, I., & Whig, P. (2024). AI-Driven Inventory Management for Optimizing Operations With Quantum Computing. In Quantum Computing and Supply Chain Management: A New Era of Optimization (pp. 125-140). IGI Global.

Whig, P., Mudunuru, K. R., & Remala, R. (2024). Quantum-Inspired Data-Driven Decision Making for Supply Chain Logistics. In Quantum Computing and Supply Chain Management: A New Era of Optimization (pp. 85-98). IGI Global.

Sehrawat, S. K., Dutta, P. K., Bhatia, A. B., & Whig, P. (2024). Predicting Demand in Supply Chain Networks With Quantum Machine Learning Approach. In Quantum Computing and Supply Chain Management: A New Era of Optimization (pp. 33-47). IGI Global.

Whig, P., Kasula, B. Y., Yathiraju, N., Jain, A., & Sharma, S. (2024). Transforming Aviation: The Role of Artificial Intelligence in Air Traffic Management. In New Innovations in AI, Aviation, and Air Traffic Technology (pp. 60-75). IGI Global.

Kasula, B. Y., Whig, P., Vegesna, V. V., & Yathiraju, N. (2024). Unleashing Exponential Intelligence: Transforming Businesses through Advanced Technologies. International Journal of Sustainable Development Through AI, ML and IoT, 3(1), 1-18.

Whig, P., Bhatia, A. B., Nadikatu, R. R., Alkali, Y., & Sharma, P. (2024). 3 Security Issues in. Software-Defined Network Frameworks: Security Issues and Use Cases, 34.

Pansara, R. R., Mourya, A. K., Alam, S. I., Alam, N., Yathiraju, N., & Whig, P. (2024, May). Synergistic Integration of Master Data Management and Expert System for Maximizing Knowledge Efficiency and Decision-Making Capabilities. In 2024 2nd International Conference on Advancement in Computation & Computer Technologies (InCACCT) (pp. 13-16). IEEE.

Whig, P., & Kautish, S. (2024). VUCA Leadership Strategies Models for Pre-and Post-pandemic Scenario. In VUCA and Other Analytics in Business Resilience, Part B (pp. 127-152). Emerald Publishing Limited.

Whig, P., Bhatia, A. B., Nadikatu, R. R., Alkali, Y., & Sharma, P. (2024). GIS and Remote Sensing Application for Vegetation Mapping. In Geo-Environmental Hazards using AI-enabled Geospatial Techniques and Earth Observation Systems (pp. 17-39). Cham: Springer Nature Switzerland.

Downloads

Published

2024-08-02

Issue

Section

Articles

How to Cite

Advancements in Secure Algorithms for Reliable IoT Data Transmission: Ensuring Safe Communication from Edge Sensors to Servers. (2024). International Numeric Journal of Machine Learning and Robots, 8(8), 1-17. https://injmr.com/index.php/fewfewf/article/view/85

Most read articles by the same author(s)

1 2 3 4 5 > >>