Kirill Krinkin

Work place: School of Computer Science and Engineering, Constructor University, Bremen, Germany

E-mail: kirill@krinkin.com

Website: https://orcid.org/0000-0001-5949-7830

Research Interests:

Biography

Kirill Krinkin is currently serving as a researcher at JetBrains Research and holds an academic position as Adjunct Professor at Constructor University in Germany. He is also giving lectures at Neapolis University Pafos in Cyprus. He earned his Ph.D. in Computer Science and has dedicated over two decades to research and development in various fields including Software Engineering, Operating Systems, Computer Networks, Autonomous Mobile Robots, and Co-evolutionary Intelligence Engineering. Dr. Krinkin authored or co-authored over 100 technical papers. He is also a lecturer in Mobile Robotics at various universities. Since 2012, he has organized the Joint Advanced Student School (JASS), an annual international project-driven initiative focusing on emerging technologies. Under his mentorship, student teams have twice won the Artificial Intelligence Driving Olympics Challenge (AIDO) at the ICRA and NeurIPS conferences.

Author Articles
Dynamic Data Aggregation Model for Social Internet of Things Devices: Exploring the Static and Mobile Nature

By Meghana J. Hanumanthappa J. S. P. Shiva Prakash Kirill Krinkin

DOI: https://doi.org/10.5815/ijieeb.2024.05.06, Pub. Date: 8 Oct. 2024

The increasing ubiquity of Social Internet of Things (SIoT) devices necessitates innovative data aggregation techniques to distill meaningful insights from diverse sources. This study introduces a Dynamic Data Aggregation Model for SIoT devices. The model aims to amalgamate static and mobile device data, employing Density-Based Spatial Clustering of Applications with Noise (DBSCAN) for spatial clustering and Recurrent Neural Networks (RNN) for predicting mobile device movement patterns. The purpose is to offer a holistic approach to predictive analytics in the SIoT domain by seamlessly integrating these methodologies. The model begins with data preprocessing, ensuring data quality. It then applies DBSCAN for spatial clustering, enabling a comprehensive understanding of spatial relationships between devices. Simultaneously, RNNs are used for predictive modeling, specifically in forecasting mobile device movement patterns. The integration of DBSCAN clustering and RNNs forms the model’s innovative core, providing a unified solution for dynamic data aggregation. Comprehensive testing demonstrates the model’s notable accuracy in predicting mobile device movement patterns. By combining the spatial clustering capabilities of DBSCAN with the predictive power of RNNs, the model effectively unifies static and mobile data, advancing predictive analytics in the SIoT context. The proposed model yielded average values of 0.14604 (Mean Squared Error), 2.678385 (Mean Absolute Error), 0.307154 (Root Mean Squared Error), and 1.342317 (Mean Absolute Percentage Error), respectively. The Dynamic Data Aggregation Model proves its efficacy in addressing SIoT challenges. The integration of DBSCAN clustering and RNNs offers a versatile framework for dynamic data analysis, contributing significantly to predictive analytics in SIoT contexts.

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Security Framework for Social Internet of Things: A Relativity Strength Approach

By K. S. Santhosh Kumar Hanumanthappa J. S. P. Shiva Prakash Kirill Krinkin

DOI: https://doi.org/10.5815/ijieeb.2024.04.03, Pub. Date: 8 Aug. 2024

The evolution of the Internet of Things (IoT) into the Social Internet of Things (SIoT) involves the integration of social networking features into smart devices. In this paradigm, smart devices emulate human social behavior by forming social relationships with other devices within the network. These relationships are leveraged for service discovery, emphasizing the need for robust security to foster collaboration and cooperation among devices. Security is paramount in the SIoT landscape, as malicious messages from devices can disrupt service functionality, impacting service quality and reliability. These challenges are particularly pronounced in social networks, introducing unique considerations such as heterogeneity and navigability. This study introduces a Security Framework for the Social Internet of Things, adopting a Relativity Strength Approach to enhance the security and reliability of IoT devices within social network contexts. The framework incorporates a relativity-based security model, utilizes Q-learning for efficient device navigation, and employs decision tree classification for assessing service availability. By optimizing hop counts and considering the strength of relationships between devices, the framework enhances security, resource utilization, and service reliability. The proposed security framework introduces a” Relationship key” derived from device-to-device relationships as a central element. This key, coupled with a standard 256-bit Advanced Encryption Standard (AES) algorithm, is employed for encryption and decryption processes. The relationship key technique ensures data protection during transmission, guaranteeing confidentiality and service integrity during network navigation. The system demonstrates an overall security effectiveness of 88.75%, showcasing its robustness in thwarting attacks and preventing unauthorized access. With an impressive overall communication efficiency of 91.75%, the framework minimizes errors and delays, facilitating optimal information trans- mission in smart environments. Furthermore, its 97.5% overall service availability assures a continuous and reliable user experience, establishing the framework’s capability to deliver secure, efficient, and highly accessible smart services.

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