Combining Slow and Fast: Complementary Filtering for Dynamics Learning

02/27/2023
by   Katharina Ensinger, et al.
0

Modeling an unknown dynamical system is crucial in order to predict the future behavior of the system. A standard approach is training recurrent models on measurement data. While these models typically provide exact short-term predictions, accumulating errors yield deteriorated long-term behavior. In contrast, models with reliable long-term predictions can often be obtained, either by training a robust but less detailed model, or by leveraging physics-based simulations. In both cases, inaccuracies in the models yield a lack of short-time details. Thus, different models with contrastive properties on different time horizons are available. This observation immediately raises the question: Can we obtain predictions that combine the best of both worlds? Inspired by sensor fusion tasks, we interpret the problem in the frequency domain and leverage classical methods from signal processing, in particular complementary filters. This filtering technique combines two signals by applying a high-pass filter to one signal, and low-pass filtering the other. Essentially, the high-pass filter extracts high-frequencies, whereas the low-pass filter extracts low frequencies. Applying this concept to dynamics model learning enables the construction of models that yield accurate long- and short-term predictions. Here, we propose two methods, one being purely learning-based and the other one being a hybrid model that requires an additional physics-based simulator.

READ FULL TEXT

page 6

page 7

page 16

page 17

research
11/05/2021

Adaptive Low-Pass Filtering using Sliding Window Gaussian Processes

When signals are measured through physical sensors, they are perturbed b...
research
08/04/2020

A User Guide to Low-Pass Graph Signal Processing and its Applications

The notion of graph filters can be used to define generative models for ...
research
02/04/2023

Personalized Graph Signal Processing for Collaborative Filtering

The collaborative filtering (CF) problem with only user-item interaction...
research
09/06/2023

Learning Hybrid Dynamics Models With Simulator-Informed Latent States

Dynamics model learning deals with the task of inferring unknown dynamic...
research
06/10/2020

A Bayesian Time-Varying Autoregressive Model for Improved Short- and Long-Term Prediction

Motivated by the application to German interest rates, we propose a time...
research
03/02/2020

Long Short-Term Sample Distillation

In the past decade, there has been substantial progress at training incr...
research
01/14/2021

Physics-aware, probabilistic model order reduction with guaranteed stability

Given (small amounts of) time-series' data from a high-dimensional, fine...

Please sign up or login with your details

Forgot password? Click here to reset