Affiliation:
1. Computer Engineering and Informatics Department, University of Patras, 26504 Patras, Greece
2. Department of Management Science and Technology, University of Patras, 26334 Patras, Greece
3. Department of Industrial Management and Technology, University of Piraeus, 18534 Piraeus, Greece
Abstract
In the context of the Internet of Things (IoT), Tiny Machine Learning (TinyML) and Big Data, enhanced by Edge Artificial Intelligence, are essential for effectively managing the extensive data produced by numerous connected devices. Our study introduces a set of TinyML algorithms designed and developed to improve Big Data management in large-scale IoT systems. These algorithms, named TinyCleanEDF, EdgeClusterML, CompressEdgeML, CacheEdgeML, and TinyHybridSenseQ, operate together to enhance data processing, storage, and quality control in IoT networks, utilizing the capabilities of Edge AI. In particular, TinyCleanEDF applies federated learning for Edge-based data cleaning and anomaly detection. EdgeClusterML combines reinforcement learning with self-organizing maps for effective data clustering. CompressEdgeML uses neural networks for adaptive data compression. CacheEdgeML employs predictive analytics for smart data caching, and TinyHybridSenseQ concentrates on data quality evaluation and hybrid storage strategies. Our experimental evaluation of the proposed techniques includes executing all the algorithms in various numbers of Raspberry Pi devices ranging from one to ten. The experimental results are promising as we outperform similar methods across various evaluation metrics. Ultimately, we anticipate that the proposed algorithms offer a comprehensive and efficient approach to managing the complexities of IoT, Big Data, and Edge AI.
Reference94 articles.
1. Mashayekhy, Y., Babaei, A., Yuan, X.M., and Xue, A. (2022). Impact of Internet of Things (IoT) on Inventory Management: A Literature Survey. Logistics, 6.
2. Issues and challenges of using blockchain for iot data management in smart healthcare;Vonitsanos;Biomed. J. Sci. Tech. Res.,2021
3. Unlocking Edge Intelligence Through Tiny Machine Learning (TinyML);Zaidi;IEEE Access,2022
4. Ersoy, M., and Şansal, U. (2020, January 18–20). Analyze Performance of Embedded Systems with Machine Learning Algorithms. Proceedings of the Trends in Data Engineering Methods for Intelligent Systems: Proceedings of the International Conference on Artificial Intelligence and Applied Mathematics in Engineering (ICAIAME 2020), Antalya, Turkey.
5. Khobragade, P., Ghutke, P., Kalbande, V.P., and Purohit, N. (2022, January 21–22). Advancement in Internet of Things (IoT) Based Solar Collector for Thermal Energy Storage System Devices: A Review. Proceedings of the 2022 2nd International Conference on Power Electronics & IoT Applications in Renewable Energy and its Control (PARC), Mathura, India.
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