Tutorial 1 Intro – KTH: Using Physics-informed Learning for Nonlinear System Identification of Underwater Robots

27 Sep 2021
15:00-15:30
HOTEL ADRIATIC - LECTURE ROOM

Tutorial 1 Intro – KTH: Using Physics-informed Learning for Nonlinear System Identification of Underwater Robots

Accurate dynamics models are crucial for simulation, control design and state estimation for robotic systems. In the case of underwater robots and AUVs in particular, the dynamics can be highly nonlinear — this makes it difficult to simulate, control and estimate their motion in complex tasks such as docking, inspection and obstacle avoidance. Data-driven approaches can help identify nonlinear dynamics models for AUVs. Such identified models can be useful in applications including adaptive Model Predictive Control and Extended Kalman Filters. In this tutorial, we will present a workflow using JAX and physics-informed learning to learn a dynamics model from AUV pose data (positions, orientations, linear and angular velocities). We will teach the audience how to perform simulations to validate this model against a ground truth. We will also share the code for this tutorial in an open repository.

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The tutorials consist of introduction presentation of 30 minutes and hands-on part of 60min. Tutorial hands-on and demos are divided in three groups which will rotate together every hour:

15:30 – 16:30 Group 1
Demo: H20
Group 2
T1 hands-on: KTH
Group 3
Demo: Statim
16:30 – 17:30 Group 2
Demo: H20
Group 3
T1 hands-on: KTH
Group 1
Demo: Statim
17:30 – 18:30 Group 3
Demo: H20
Group 1
T1 hands-on: KTH
Group 2
Demo: Statim
Breaking the Surface