Mallen, Alex and Keller, Christoph A and Kutz, J Nathan (2023) Koopman-inspired approach for identification of exogenous anomalies in nonstationary time-series data. Machine Learning: Science and Technology, 4 (2). 025033. ISSN 2632-2153
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Abstract
In many scenarios, it is necessary to monitor a complex system via a time-series of observations and determine when anomalous exogenous events have occurred so that relevant actions can be taken. Determining whether current observations are abnormal is challenging. It requires learning an extrapolative probabilistic model of the dynamics from historical data, and using a limited number of current observations to make a classification. We leverage recent advances in long-term probabilistic forecasting, namely Deep Probabilistic Koopman, to build a general method for classifying anomalies in multi-dimensional time-series data. We also show how to utilize models with domain knowledge of the dynamics to reduce type I and type II error. We demonstrate our proposed method on the important real-world task of global atmospheric pollution monitoring, integrating it with NASA's Global Earth Observing System Model. The system successfully detects localized anomalies in air quality due to events such as COVID-19 lockdowns and wildfires.
Item Type: | Article |
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Subjects: | STM Repository > Multidisciplinary |
Depositing User: | Managing Editor |
Date Deposited: | 07 Oct 2023 09:41 |
Last Modified: | 07 Oct 2023 09:41 |
URI: | http://classical.goforpromo.com/id/eprint/3702 |