AI-Augmented OTDR Fault Localization Framework for Resilient Rural Fiber Networks in the United States
Sabab Al Farabi (Department of Industrial Engineering, Lamar University, Beaumont, Texas, USA)

TL;DR
This paper introduces an AI-enhanced OTDR framework that improves fault detection and classification in rural fiber optic networks, aiding proactive maintenance and deployment in underserved areas.
Contribution
It combines traditional OTDR analysis with machine learning to enhance fault localization accuracy in rural fiber networks, addressing a critical infrastructure need.
Findings
Significantly improved fault detection accuracy over traditional methods
Reduced false positives in fault classification
Demonstrated effectiveness on synthetic rural network datasets
Abstract
This research presents a novel framework that combines traditional Optical Time-Domain Reflectometer (OTDR) signal analysis with machine learning to localize and classify fiber optic faults in rural broadband infrastructures. The proposed system addresses a critical need in the expansion of middle-mile and last-mile networks, particularly in regions targeted by the U.S. Broadband Equity, Access, and Deployment (BEAD) Program. By enhancing fault diagnosis through a predictive, AI-based model, this work enables proactive network maintenance in low-resource environments. Experimental evaluations using a controlled fiber testbed and synthetic datasets simulating rural network conditions demonstrate that the proposed method significantly improves detection accuracy and reduces false positives compared to conventional thresholding techniques. The solution offers a scalable, field-deployable…
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Taxonomy
TopicsAdvanced Photonic Communication Systems · Optical Network Technologies · Power Systems Fault Detection
