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

11/14/2022
by   Ankush Chakrabarty, et al.
0

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.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/30/2019

Decoupling Adaptation from Modeling with Meta-Optimizers for Meta Learning

Meta-learning methods, most notably Model-Agnostic Meta-Learning or MAML...
research
10/31/2022

Optimizing Closed-Loop Performance with Data from Similar Systems: A Bayesian Meta-Learning Approach

Bayesian optimization (BO) has demonstrated potential for optimizing con...
research
10/26/2021

On sensitivity of meta-learning to support data

Meta-learning algorithms are widely used for few-shot learning. For exam...
research
08/30/2018

Learning to adapt: a meta-learning approach for speaker adaptation

The performance of automatic speech recognition systems can be improved ...
research
02/21/2021

Fast On-Device Adaptation for Spiking Neural Networks via Online-Within-Online Meta-Learning

Spiking Neural Networks (SNNs) have recently gained popularity as machin...
research
08/13/2020

Meta Learning MPC using Finite-Dimensional Gaussian Process Approximations

Data availability has dramatically increased in recent years, driving mo...
research
09/23/2022

Expanding the Deployment Envelope of Behavior Prediction via Adaptive Meta-Learning

Learning-based behavior prediction methods are increasingly being deploy...

Please sign up or login with your details

Forgot password? Click here to reset