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Meta-Learning of Neural State-Space Models Using Data From Similar Systems

Ankush Chakrabarty, Gordon Wichern, Christopher R. Laughman

2023IFAC-PapersOnLine13 citationsDOIOpen Access PDF

Abstract

Deep neural state-space models (SSMs) provide a powerful tool for modeling dynamical systems solely using operational data. Typically, neural SSMs are trained using data collected from the actual system under consideration, despite the likely existence of operational data from similar systems which have previously been deployed in the field. In this paper, we propose the use of model-agnostic meta-learning (MAML) for constructing deep encoder network-based SSMs, by leveraging a combination of archived data from similar systems (used to meta-train offline) and limited data from the actual system (used for rapid online adaptation). We demonstrate using a numerical example that meta-learning can result in more accurate neural SSM models than supervised or transfer-learning, despite few adaptation steps and limited online data. Additionally, we show that by carefully partitioning and adapting the encoder layers while fixing the state-transition operator, we can achieve comparable performance to MAML while reducing online adaptation complexity.

Topics & Concepts

Computer scienceAdaptation (eye)Artificial intelligenceArtificial neural networkMachine learningField (mathematics)Deep learningMeta learning (computer science)State spaceState (computer science)EncoderTransfer of learningData modelingData miningAlgorithmEngineeringDatabaseTask (project management)Operating systemOpticsPhysicsPure mathematicsMathematicsStatisticsSystems engineeringModel Reduction and Neural NetworksGaussian Processes and Bayesian InferenceDomain Adaptation and Few-Shot Learning
Meta-Learning of Neural State-Space Models Using Data From Similar Systems | Litcius