Reconstruction of observed mechanical motions with Artificial Intelligence tools

02/23/2022
by   Antal Jakovác, et al.
0

The goal of this paper is to determine the laws of observed trajectories assuming that there is a mechanical system in the background and using these laws to continue the observed motion in a plausible way. The laws are represented by neural networks with a limited number of parameters. The training of the networks follows the Extreme Learning Machine idea. We determine laws for different levels of embedding, thus we can represent not only the equation of motion but also the symmetries of different kinds. In the recursive numerical evolution of the system, we require the fulfillment of all the observed laws, within the determined numerical precision. In this way, we can successfully reconstruct both integrable and chaotic motions, as we demonstrate in the example of the gravity pendulum and the double pendulum.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/22/2021

Time series analysis with dynamic law exploration

In this paper we examine, how the dynamic laws governing the time evolut...
research
03/01/2017

Learning A Physical Long-term Predictor

Evolution has resulted in highly developed abilities in many natural int...
research
05/08/2019

Asymptotic laws for upper and strong record values in the extreme domain of attraction and beyond

Asymptotic laws of records values have usually been investigated as limi...
research
11/27/2019

Visual Physics: Discovering Physical Laws from Videos

In this paper, we teach a machine to discover the laws of physics from v...
research
07/13/2020

A Motion Taxonomy for Manipulation Embedding

To represent motions from a mechanical point of view, this paper explore...
research
04/07/2022

Three Laws of Technology Rise or Fall

Newton's laws of motion perfectly explain or approximate physical phenom...
research
08/17/2018

Proving Type Class Laws for Haskell

Type classes in Haskell are used to implement ad-hoc polymorphism, i.e. ...

Please sign up or login with your details

Forgot password? Click here to reset