DANSE: Data-driven Non-linear State Estimation of Model-free Process in Unsupervised Learning Setup
Anubhab Ghosh, Antoine Honor\'e, Saikat Chatterjee

TL;DR
DANSE is a novel unsupervised learning method that estimates and forecasts states of model-free processes using RNNs to capture non-linear dynamics, providing closed-form posteriors without prior process knowledge.
Contribution
It introduces DANSE, a data-driven nonlinear state estimation approach that operates without supervised labels or known process models, using RNNs for parameter learning in an unsupervised setup.
Findings
DANSE achieves competitive accuracy compared to traditional model-based filters.
It effectively handles high-dimensional state estimation.
The method works well on simulated non-linear processes like Lorenz and Chen attractors.
Abstract
We address the tasks of Bayesian state estimation and forecasting for a model-free process in an unsupervised learning setup. For a model-free process, we do not have any a-priori knowledge of the process dynamics. In the article, we propose DANSE -- a Data-driven Nonlinear State Estimation method. DANSE provides a closed-form posterior of the state of the model-free process, given linear measurements of the state. In addition, it provides a closed-form posterior for forecasting. A data-driven recurrent neural network (RNN) is used in DANSE to provide the parameters of a prior of the state. The prior depends on the past measurements as input, and then we find the closed-form posterior of the state using the current measurement as input. The data-driven RNN captures the underlying non-linear dynamics of the model-free process. The training of DANSE, mainly learning the parameters of the…
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Taxonomy
TopicsFault Detection and Control Systems · Forecasting Techniques and Applications · Reservoir Engineering and Simulation Methods
