Predicting 3D rigid body dynamics with deep residual network

This study investigates the application of deep residual networks for predicting the dynamics of interacting three-dimensional rigid bodies. We present a framework combining a 3D physics simulator implemented in C++ with a deep learning model constructed using PyTorch. The simulator generates traini...

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Main Author: Oketunji, AF
Format: Internet publication
Language:English
Published: 2024
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author Oketunji, AF
author_facet Oketunji, AF
author_sort Oketunji, AF
collection OXFORD
description This study investigates the application of deep residual networks for predicting the dynamics of interacting three-dimensional rigid bodies. We present a framework combining a 3D physics simulator implemented in C++ with a deep learning model constructed using PyTorch. The simulator generates training data encompassing linear and angular motion, elastic collisions, fluid friction, gravitational effects, and damping. Our deep residual network, consisting of an input layer, multiple residual blocks, and an output layer, is designed to handle the complexities of 3D dynamics. We evaluate the network's performance using a dataset of 10,000 simulated scenarios, each involving 3-5 interacting rigid bodies. The model achieves a mean squared error of 0.015 for position predictions and 0.022 for orientation predictions, representing a 25% improvement over baseline methods. Our results demonstrate the network's ability to capture intricate physical interactions, with particular success in predicting elastic collisions and rotational dynamics. This work significantly contributes to physics-informed machine learning by showcasing the immense potential of deep residual networks in modeling complex 3D physical systems. We discuss our approach's limitations and propose future directions for improving generalization to more diverse object shapes and materials.
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spelling oxford-uuid:88e9482d-c379-46ec-b718-7249ef5b01d02024-07-18T09:54:42ZPredicting 3D rigid body dynamics with deep residual networkInternet publicationhttp://purl.org/coar/resource_type/c_7ad9uuid:88e9482d-c379-46ec-b718-7249ef5b01d0EnglishSymplectic Elements2024Oketunji, AFThis study investigates the application of deep residual networks for predicting the dynamics of interacting three-dimensional rigid bodies. We present a framework combining a 3D physics simulator implemented in C++ with a deep learning model constructed using PyTorch. The simulator generates training data encompassing linear and angular motion, elastic collisions, fluid friction, gravitational effects, and damping. Our deep residual network, consisting of an input layer, multiple residual blocks, and an output layer, is designed to handle the complexities of 3D dynamics. We evaluate the network's performance using a dataset of 10,000 simulated scenarios, each involving 3-5 interacting rigid bodies. The model achieves a mean squared error of 0.015 for position predictions and 0.022 for orientation predictions, representing a 25% improvement over baseline methods. Our results demonstrate the network's ability to capture intricate physical interactions, with particular success in predicting elastic collisions and rotational dynamics. This work significantly contributes to physics-informed machine learning by showcasing the immense potential of deep residual networks in modeling complex 3D physical systems. We discuss our approach's limitations and propose future directions for improving generalization to more diverse object shapes and materials.
spellingShingle Oketunji, AF
Predicting 3D rigid body dynamics with deep residual network
title Predicting 3D rigid body dynamics with deep residual network
title_full Predicting 3D rigid body dynamics with deep residual network
title_fullStr Predicting 3D rigid body dynamics with deep residual network
title_full_unstemmed Predicting 3D rigid body dynamics with deep residual network
title_short Predicting 3D rigid body dynamics with deep residual network
title_sort predicting 3d rigid body dynamics with deep residual network
work_keys_str_mv AT oketunjiaf predicting3drigidbodydynamicswithdeepresidualnetwork