Open Access

Cloud-Orchestrated Ensemble Deep Learning Architectures for Predictive Modeling of Cryptocurrency Market Dynamics: A Theoretical, Empirical, and Cyber-Physical Systems Perspective

4 Department of Computer Science, Technical University of Munich, Germany

Abstract

The rapid expansion of cryptocurrency markets has generated unprecedented challenges for predictive modeling due to their extreme volatility, structural non-stationarity, decentralized governance, and sensitivity to technological, macroeconomic, and socio-political stimuli. Traditional econometric approaches have proven insufficient for capturing the nonlinear, regime-switching, and sentiment-driven characteristics inherent in digital asset markets. Concurrently, ensemble learning and deep neural architectures have demonstrated remarkable predictive capacity across diverse domains, including environmental forecasting, biomedical diagnostics, infrastructure monitoring, and cyber-physical security systems (Hansen and Salamon, 1990; Zhou, 2012; Shen et al., 2022; Fu et al., 2023). Recent advances have further emphasized the integration of ensemble deep learning with scalable cloud infrastructures to manage high-dimensional streaming data and real-time inference demands in volatile markets (Kanikanti et al., 2025).

This study develops a comprehensive, publication-ready research framework for predictive modeling of cryptocurrency trends using cloud-deployed ensemble deep learning systems. The investigation synthesizes theoretical foundations from ensemble theory, gradient boosting, stacking, and neural residual learning with contemporary developments in cloud computing, Internet of Things architectures, blockchain-based data integrity mechanisms, and cyber-physical security paradigms (Dietterich, 2000; He et al., 2016; Burhan et al., 2018; Attkan and Ranga, 2022). Unlike conventional studies limited to performance benchmarking, this research advances a multi-layered interpretive model that situates cryptocurrency forecasting within a broader technological ecosystem involving distributed ledger technologies, edge-cloud coordination, and privacy-preserving analytics.

The study contributes theoretically by reframing cryptocurrency forecasting as a cyber-physical data fusion challenge and practically by offering a scalable blueprint for secure, high-performance predictive analytics in digital asset markets. The research concludes by outlining directions for explainable ensemble systems, adaptive regime detection, federated learning extensions, and sustainability considerations in cloud-intensive modeling environments.

Keywords

References

πŸ“„ Du, K. L., & Swamy, M. N. S. (2019). Combining multiple learners: Data fusion and ensemble learning. In Neural Networks and Statistical Learning. Springer.
πŸ“„ Burhan, M., Rehman, R. A., Khan, B., & Kim, B. S. (2018). IoT elements, layered architectures and security issues: A comprehensive survey. Sensors, 18, 2796.
πŸ“„ Zhou, Z. H. (2012). Ensemble methods: Foundations and algorithms. CRC Press.
πŸ“„ Fu, X., Zhang, B., Wang, L., Wei, Y., Leng, Y., & Dang, J. (2023). Stability prediction for soil-rock mixture slopes based on a novel ensemble learning model. Frontiers in Earth Science, 10, 1102802.
πŸ“„ Hansen, L. K., & Salamon, P. (1990). Neural network ensembles. IEEE Transactions on Pattern Analysis and Machine Intelligence, 12(10), 993-1001.
πŸ“„ Attkan, A., & Ranga, V. (2022). Cyber-physical security for IoT networks: A comprehensive review on traditional, blockchain and artificial intelligence based key-security. Complex & Intelligent Systems, 8, 3559-3591.
πŸ“„ Ribeiro, M. H. D. M., Silva, R. G. D., Moreno, S. R., Mariani, V. C., & Coelho, L. D. S. (2022). Efficient bootstrap stacking ensemble learning model applied to wind power generation forecasting. International Journal of Electrical Power & Energy Systems, 136, 107712.
πŸ“„ Ali, B., & Awad, A. I. (2018). Cyber and physical security vulnerability assessment for IoT-based smart homes. Sensors, 18, 817.
πŸ“„ Zhang, Y., & Wang, Y. (2019). A comprehensive review of ensemble deep learning: Opportunities and challenges. Journal of Machine Learning Research, 20, 1-50.
πŸ“„ Kanikanti, V. S. N., Nagavalli, S. P., Varanasi, S. R., Sresth, V., Gandhi, A., & Lakhina, U. (2025). Predictive modeling of crypto currency trends using cloud-deployed ensemble deep learning. In 2025 IEEE International Conference on Computing (ICOCO) (pp. 42-47). IEEE.
πŸ“„ Dietterich, T. G. (2000). Ensemble methods in machine learning. International Workshop on Multiple Classifier Systems, 1-15.
πŸ“„ He, K., Zhang, X., Ren, S., & Sun, J. (2016). Deep residual learning for image recognition. In IEEE Conference on Computer Vision and Pattern Recognition (CVPR), 770-778.
πŸ“„ Kumar, N. M., & Mallick, P. K. (2018). Blockchain technology for security issues and challenges in IoT. Procedia Computer Science, 132, 1815-1823.
πŸ“„ Shen, Y., Zhu, J., Deng, Z., Lu, W., & Wang, H. (2022). EnsDeepDP: An Ensemble Deep Learning Approach for Disease Prediction Through Metagenomics. IEEE/ACM Transactions on Computational Biology and Bioinformatics, 20, 986-998.
πŸ“„ Friedman, J. H. (2001). Greedy function approximation: A gradient boosting machine. Annals of Statistics, 29, 1189-1232.
πŸ“„ Younis, E. M. G., Zaki, S. M., Kanjo, E., & Houssein, E. H. (2022). Evaluating ensemble learning methods for multi-modal emotion recognition using sensor data fusion. Sensors, 22, 5611.
πŸ“„ Gu, J., Liu, S., Zhou, Z., Chalov, S. R., & Zhuang, Q. (2022). A stacking ensemble learning model for monthly rainfall prediction in the Taihu basin, China. Water, 14, 492.
πŸ“„ Khalaf, O. I., & Abdulsahib, G. M. (2021). Optimized dynamic storage of data in IoT based on blockchain for wireless sensor networks. Peer-to-Peer Networking and Applications, 14, 2858-2873.
πŸ“„ Chen, C., & Li, Q. (2020). A multimodal music emotion classification method based on multifeature combined network classifier. Mathematical Problems in Engineering, 2020, 1-11.
πŸ“„ Pan, Y., Zhao, C., & Liu, Z. (2021). Estimating the daily NO2 concentration with high spatial resolution in the Beijing-Tianjin-Hebei region using an ensemble learning model. Remote Sensing, 13, 1-16.
πŸ“„ Frustaci, M., Pace, P., & Aloi, G. (2017). Securing the IoT world: Issues and perspectives. In IEEE Conference on Standards for Communications and Networking.
πŸ“„ Liu, W., & Liao, W. (2019). Ensemble learning for deep learning: A review. Journal of Artificial Intelligence Research, 61, 55-89.
πŸ“„ Abayomi-Alli, O. O., Damasevicius, R., Maskeliunas, R., & Misra, S. (2022). An ensemble learning model for COVID-19 detection from blood test samples. Sensors, 22, 2224.

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