Physics-Inspired Temporal Learning of Quadrotor Dynamics for Accurate
Model Predictive Trajectory Tracking
- URL: http://arxiv.org/abs/2206.03305v1
- Date: Tue, 7 Jun 2022 13:51:35 GMT
- Title: Physics-Inspired Temporal Learning of Quadrotor Dynamics for Accurate
Model Predictive Trajectory Tracking
- Authors: Alessandro Saviolo, Guanrui Li, Giuseppe Loianno
- Abstract summary: Accurately modeling quadrotor's system dynamics is critical for guaranteeing agile, safe, and stable navigation.
We present a novel Physics-Inspired Temporal Convolutional Network (PI-TCN) approach to learning quadrotor's system dynamics purely from robot experience.
Our approach combines the expressive power of sparse temporal convolutions and dense feed-forward connections to make accurate system predictions.
- Score: 76.27433308688592
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Accurately modeling quadrotor's system dynamics is critical for guaranteeing
agile, safe, and stable navigation. The model needs to capture the system
behavior in multiple flight regimes and operating conditions, including those
producing highly nonlinear effects such as aerodynamic forces and torques,
rotor interactions, or possible system configuration modifications. Classical
approaches rely on handcrafted models and struggle to generalize and scale to
capture these effects. In this paper, we present a novel Physics-Inspired
Temporal Convolutional Network (PI-TCN) approach to learning quadrotor's system
dynamics purely from robot experience. Our approach combines the expressive
power of sparse temporal convolutions and dense feed-forward connections to
make accurate system predictions. In addition, physics constraints are embedded
in the training process to facilitate the network's generalization capabilities
to data outside the training distribution. Finally, we design a model
predictive control approach that incorporates the learned dynamics for accurate
closed-loop trajectory tracking fully exploiting the learned model predictions
in a receding horizon fashion. Experimental results demonstrate that our
approach accurately extracts the structure of the quadrotor's dynamics from
data, capturing effects that would remain hidden to classical approaches. To
the best of our knowledge, this is the first time physics-inspired deep
learning is successfully applied to temporal convolutional networks and to the
system identification task, while concurrently enabling predictive control.
Related papers
- MSTFormer: Motion Inspired Spatial-temporal Transformer with
Dynamic-aware Attention for long-term Vessel Trajectory Prediction [0.6451914896767135]
MSTFormer is a motion inspired vessel trajectory prediction method based on Transformer.
We propose a data augmentation method to describe the spatial features and motion features of the trajectory.
Second, we propose a Multi-headed Dynamic-aware Self-attention mechanism to focus on trajectory points with frequent motion transformations.
Third, we construct a knowledge-inspired loss function to further boost the performance of the model.
arXiv Detail & Related papers (2023-03-21T02:11:37Z) - ConCerNet: A Contrastive Learning Based Framework for Automated
Conservation Law Discovery and Trustworthy Dynamical System Prediction [82.81767856234956]
This paper proposes a new learning framework named ConCerNet to improve the trustworthiness of the DNN based dynamics modeling.
We show that our method consistently outperforms the baseline neural networks in both coordinate error and conservation metrics.
arXiv Detail & Related papers (2023-02-11T21:07:30Z) - Online Dynamics Learning for Predictive Control with an Application to
Aerial Robots [3.673994921516517]
Even though prediction models can be learned and applied to model-based controllers, these models are often learned offline.
In this offline setting, training data is first collected and a prediction model is learned through an elaborated training procedure.
We propose an online dynamics learning framework that continually improves the accuracy of the dynamic model during deployment.
arXiv Detail & Related papers (2022-07-19T15:51:25Z) - End-to-End Learning of Hybrid Inverse Dynamics Models for Precise and
Compliant Impedance Control [16.88250694156719]
We present a novel hybrid model formulation that enables us to identify fully physically consistent inertial parameters of a rigid body dynamics model.
We compare our approach against state-of-the-art inverse dynamics models on a 7 degree of freedom manipulator.
arXiv Detail & Related papers (2022-05-27T07:39:28Z) - Gradient-Based Trajectory Optimization With Learned Dynamics [80.41791191022139]
We use machine learning techniques to learn a differentiable dynamics model of the system from data.
We show that a neural network can model highly nonlinear behaviors accurately for large time horizons.
In our hardware experiments, we demonstrate that our learned model can represent complex dynamics for both the Spot and Radio-controlled (RC) car.
arXiv Detail & Related papers (2022-04-09T22:07:34Z) - Leveraging the structure of dynamical systems for data-driven modeling [111.45324708884813]
We consider the impact of the training set and its structure on the quality of the long-term prediction.
We show how an informed design of the training set, based on invariants of the system and the structure of the underlying attractor, significantly improves the resulting models.
arXiv Detail & Related papers (2021-12-15T20:09:20Z) - Physics-guided Deep Markov Models for Learning Nonlinear Dynamical
Systems with Uncertainty [6.151348127802708]
We propose a physics-guided framework, termed Physics-guided Deep Markov Model (PgDMM)
The proposed framework takes advantage of the expressive power of deep learning, while retaining the driving physics of the dynamical system.
arXiv Detail & Related papers (2021-10-16T16:35:12Z) - Neural Networks with Physics-Informed Architectures and Constraints for
Dynamical Systems Modeling [19.399031618628864]
We develop a framework to learn dynamics models from trajectory data.
We place constraints on the values of the outputs and the internal states of the model.
We experimentally demonstrate the benefits of the proposed approach on a variety of dynamical systems.
arXiv Detail & Related papers (2021-09-14T02:47:51Z) - Using Data Assimilation to Train a Hybrid Forecast System that Combines
Machine-Learning and Knowledge-Based Components [52.77024349608834]
We consider the problem of data-assisted forecasting of chaotic dynamical systems when the available data is noisy partial measurements.
We show that by using partial measurements of the state of the dynamical system, we can train a machine learning model to improve predictions made by an imperfect knowledge-based model.
arXiv Detail & Related papers (2021-02-15T19:56:48Z) - Learning Stable Deep Dynamics Models [91.90131512825504]
We propose an approach for learning dynamical systems that are guaranteed to be stable over the entire state space.
We show that such learning systems are able to model simple dynamical systems and can be combined with additional deep generative models to learn complex dynamics.
arXiv Detail & Related papers (2020-01-17T00:04:45Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.