Model-Based Anomaly Detection for A Transparent Optical Transmission System
01 January 2010
In this paper we present a novel approach to network anomaly detection. The approach combines physics-based process models with observational data models to characterize the uncertainties and derive the alarm decision rules. We formulate and apply three different methods based on this approach for a well-defined problem in optical network monitoring that features many of the typical challenges for this methodology. Specifically, we address the problem of monitoring optically-transparent transmission systems that use dynamically-controlled Raman amplification systems. We use models of amplifier physics together with statistical estimation to derive alarm decision rules and use these rules to automatically discriminate between measurement errors, anomalous losses, and pump failures. Our approach has led to an efficient tool for systematically detecting anomalies in the system behavior of a deployed network, where pro-active measures to address such anomalies are key to preventing unnecessary disturbances to the system's continuous operation.