Synergistic Interplay of Large Language Model and Digital Twin for Autonomous Optical Networks: Field Demonstrations
Yuchen Song, Yao Zhang, Anni Zhou, Yan Shi, Shikui Shen, Xiongyan, Tang, Jin Li, Min Zhang, Danshi Wang

TL;DR
This paper presents a digital twin-enhanced large language model framework for autonomous optical networks, enabling safe, reliable, and optimized decision-making through real-time data integration and pre-deployment verification in field scenarios.
Contribution
It introduces a novel digital twin and LLM integration for autonomous optical networks, enabling dynamic decision-making and pre-deployment strategy verification in real-world environments.
Findings
Effective performance optimization under dynamic loadings.
Successful protection switching in field-deployed networks.
Performance recovery after fiber cuts demonstrated.
Abstract
The development of large language models (LLM) has revolutionized various fields and is anticipated to drive the advancement of autonomous systems. In the context of autonomous optical networks, creating a high-level cognitive agent in the control layer remains a challenge. However, LLM is primarily developed for natural language processing tasks, rendering them less effective in predicting the physical dynamics of optical communications. Moreover, optical networks demand rigorous stability, where direct deployment of strategies generated from LLM poses safety concerns. In this paper, a digital twin (DT)-enhanced LLM scheme is proposed to facilitate autonomous optical networks. By leveraging monitoring data and advanced models, the DT of optical networks can accurately characterize their physical dynamics, furnishing LLMs with dynamic-updated information for reliable decision-making.…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Semiconductor Quantum Structures and Devices · Advanced Research in Systems and Signal Processing
