Bayesian sequential change diagnosis
Savas Dayanik, Christian Goulding, H. Vincent Poor

TL;DR
This paper develops a Bayesian sequential approach for detecting and identifying regime changes in data streams, providing an optimal strategy with practical numerical implementation for applications like fault detection and target identification.
Contribution
It introduces a unified Bayesian framework for joint change detection and identification, deriving an optimal strategy and illustrating its properties through numerical examples.
Findings
Optimal sequential decision strategy derived
Numerical scheme for implementation provided
Special cases include classical change detection and multi-hypothesis testing
Abstract
Sequential change diagnosis is the joint problem of detection and identification of a sudden and unobservable change in the distribution of a random sequence. In this problem, the common probability law of a sequence of i.i.d. random variables suddenly changes at some disorder time to one of finitely many alternatives. This disorder time marks the start of a new regime, whose fingerprint is the new law of observations. Both the disorder time and the identity of the new regime are unknown and unobservable. The objective is to detect the regime-change as soon as possible, and, at the same time, to determine its identity as accurately as possible. Prompt and correct diagnosis is crucial for quick execution of the most appropriate measures in response to the new regime, as in fault detection and isolation in industrial processes, and target detection and identification in national defense.…
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Taxonomy
TopicsAdvanced Statistical Process Monitoring · Fault Detection and Control Systems · Advanced Control Systems Optimization
