Bridging the Trust Gap in AI-Driven Optical Networks with Structured Explainability
Paper i proceeding, 2026

AI/ML models can automate optical-network decisions, yet operators distrust their opaque outputs. Existing explainability methods help but remain hard to interpret and not directly actionable. We propose the Capture–Characterize–Communicate (3C) framework, which formalizes explainability as an end-to-end pipeline, i.e., from capturing model behavior,  through local explanations, to human-readable decision guidance. The framework is demonstrated on two optical-network problems: explainable RL for RMSA and LLM-augmented explainability for QoT estimation, where it produces auditable, operator-facing explanations.

explainable AI

large language models

network automation

SHAP

reinforcement learning

Optical networks

Författare

Kiarash Rezaei

Chalmers, Elektroteknik, Kommunikation, Antenner och Optiska Nätverk

Omran Ayoub

Carlos Natalino Da Silva

Chalmers, Elektroteknik, Kommunikation, Antenner och Optiska Nätverk

Paolo Monti

Chalmers, Elektroteknik, Kommunikation, Antenner och Optiska Nätverk

Opto-Electronics and Communications Conference, OECC

21668884 (ISSN) 21668892 (eISSN)

31st OptoElectronics and Communications Conference (OECC 2026)
Busan, South Korea,

Hållbara teknologier för avancerade, motståndskraftiga och energieffektiva nätverk - Advance

VINNOVA (2025-02987), 2025-12-01 -- 2028-11-17.

Styrkeområden

Informations- och kommunikationsteknik

Ämneskategorier (SSIF 2025)

Kommunikationssystem

Datavetenskap (datalogi)

Telekommunikation

Mer information

Skapat

2026-06-01