Digital Twin-Native AI-Driven Service Architecture for Industrial Networks (2311.14532v1)
Abstract: The dramatic increase in the connectivity demand results in an excessive amount of Internet of Things (IoT) sensors. To meet the management needs of these large-scale networks, such as accurate monitoring and learning capabilities, Digital Twin (DT) is the key enabler. However, current attempts regarding DT implementations remain insufficient due to the perpetual connectivity requirements of IoT networks. Furthermore, the sensor data streaming in IoT networks cause higher processing time than traditional methods. In addition to these, the current intelligent mechanisms cannot perform well due to the spatiotemporal changes in the implemented IoT network scenario. To handle these challenges, we propose a DT-native AI-driven service architecture in support of the concept of IoT networks. Within the proposed DT-native architecture, we implement a TCP-based data flow pipeline and a Reinforcement Learning (RL)-based learner model. We apply the proposed architecture to one of the broad concepts of IoT networks, the Internet of Vehicles (IoV). We measure the efficiency of our proposed architecture and note ~30% processing time-saving thanks to the TCP-based data flow pipeline. Moreover, we test the performance of the learner model by applying several learning rate combinations for actor and critic networks and highlight the most successive model.
- A. Sari, A. Lekidis, and I. Butun, “Industrial networks and iiot: Now and future trends,” Industrial IoT: Challenges, Design Principles, Applications, and Security, pp. 3–55, 2020.
- P. Arthurs, L. Gillam, P. Krause, N. Wang, K. Halder, and A. Mouzakitis, “A taxonomy and survey of edge cloud computing for intelligent transportation systems and connected vehicles,” IEEE Transactions on Intelligent Transportation Systems, vol. 23, no. 7, pp. 6206–6221, 2022.
- Y. Ge, H. Li, and A. Tuzhilin, “Route recommendations for intelligent transportation services,” IEEE Transactions on Knowledge and Data Engineering, vol. 33, no. 3, pp. 1169–1182, 2021.
- N. Kumar, S. S. Rahman, and N. Dhakad, “Fuzzy inference enabled deep reinforcement learning-based traffic light control for intelligent transportation system,” IEEE Transactions on Intelligent Transportation Systems, vol. 22, no. 8, pp. 4919–4928, 2021.
- J. Wen, B. Gabrys, and K. Musial, “Toward digital twin oriented modeling of complex networked systems and their dynamics: A comprehensive survey,” IEEE Access, vol. 10, pp. 66 886–66 923, 2022.
- T. Do-Duy, D. Van Huynh, O. A. Dobre, B. Canberk, and T. Q. Duong, “Digital twin-aided intelligent offloading with edge selection in mobile edge computing,” IEEE Wireless Communications Letters, vol. 11, no. 4, pp. 806–810, 2022.
- Z. Tu, L. Qiao, R. Nowak, H. Lv, and Z. Lv, “Digital twins-based automated pilot for energy-efficiency assessment of intelligent transportation infrastructure,” IEEE Transactions on Intelligent Transportation Systems, vol. 23, no. 11, pp. 22 320–22 330, 2022.
- M. Ghahramani and F. Pilla, “Analysis of carbon dioxide emissions from road transport using taxi trips,” IEEE Access, vol. 9, pp. 98 573–98 580, 2021.
- K. Duran, B. Karanlik, and B. Canberk, “Ai-driven partial topology discovery algorithm for broadband networks,” in 2021 IEEE 18th Annual Consumer Communications & Networking Conference (CCNC), 2021, pp. 1–6.
- E. Ak and B. Canberk, “Fsc: Two-scale ai-driven fair sensitivity control for 802.11ax networks,” in GLOBECOM 2020 - 2020 IEEE Global Communications Conference, 2020, pp. 1–6.
- Y. Sun, Y. Hu, H. Zhang, H. Chen, and F.-Y. Wang, “A parallel emission regulatory framework for intelligent transportation systems and smart cities,” IEEE Transactions on Intelligent Vehicles, vol. 8, no. 2, pp. 1017–1020, 2023.
- N. Niroomand, C. Bach, and M. Elser, “Segment-based co2𝑐superscript𝑜2co^{2}italic_c italic_o start_POSTSUPERSCRIPT 2 end_POSTSUPERSCRIPT emission evaluations from passenger cars based on deep learning techniques,” IEEE Access, vol. 9, pp. 166 314–166 327, 2021.
- M. Singh and R. K. Dubey, “Deep learning model based co2 emissions prediction using vehicle telematics sensors data,” IEEE Transactions on Intelligent Vehicles, vol. 8, no. 1, pp. 768–777, 2023.
- X. Fei, F. Long, F. Li, and Q. Ling, “Multi-component fusion temporal networks to predict vehicle exhaust based on remote monitoring data,” IEEE Access, vol. 9, pp. 42 358–42 369, 2021.
- K. Duran and B. Canberk, “Digital twin enriched green topology discovery for next generation core networks,” IEEE Transactions on Green Communications and Networking, pp. 1–1, 2023.
- E. Ak, K. Duran, O. A. Dobre, T. Q. Duong, and B. Canberk, “T6conf: Digital twin networking framework for ipv6-enabled net-zero smart cities,” IEEE Communications Magazine, pp. 1–7, 2023.
Paper Prompts
Sign up for free to create and run prompts on this paper using GPT-5.
Top Community Prompts
Collections
Sign up for free to add this paper to one or more collections.