From Physics-Based Models to Predictive Digital Twins via Interpretable
Machine Learning
- URL: http://arxiv.org/abs/2004.11356v3
- Date: Tue, 28 Apr 2020 21:08:37 GMT
- Title: From Physics-Based Models to Predictive Digital Twins via Interpretable
Machine Learning
- Authors: Michael G. Kapteyn and Karen E. Willcox
- Abstract summary: This work develops a methodology for creating a data-driven digital twin from a library of physics-based models.
The digital twin is updated using interpretable machine learning.
The approach is demonstrated through the development of a structural digital twin for a 12ft wingspan unmanned aerial vehicle.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This work develops a methodology for creating a data-driven digital twin from
a library of physics-based models representing various asset states. The
digital twin is updated using interpretable machine learning. Specifically, we
use optimal trees---a recently developed scalable machine learning method---to
train an interpretable data-driven classifier. Training data for the classifier
are generated offline using simulated scenarios solved by the library of
physics-based models. These data can be further augmented using experimental or
other historical data. In operation, the classifier uses observational data
from the asset to infer which physics-based models in the model library are the
best candidates for the updated digital twin. The approach is demonstrated
through the development of a structural digital twin for a 12ft wingspan
unmanned aerial vehicle. This digital twin is built from a library of
reduced-order models of the vehicle in a range of structural states. The
data-driven digital twin dynamically updates in response to structural damage
or degradation and enables the aircraft to replan a safe mission accordingly.
Within this context, we study the performance of the optimal tree classifiers
and demonstrate how their interpretability enables explainable structural
assessments from sparse sensor measurements, and also informs optimal sensor
placement.
Related papers
- An Interpretable Systematic Review of Machine Learning Models for
Predictive Maintenance of Aircraft Engine [0.12289361708127873]
This paper presents an interpretable review of various machine learning and deep learning models to predict the maintenance of aircraft engine.
In this study, sensor data is utilized to predict aircraft engine failure within a predetermined number of cycles using LSTM, Bi-LSTM, RNN, Bi-RNN GRU, Random Forest, KNN, Naive Bayes, and Gradient Boosting.
A lucrative accuracy of 97.8%, 97.14%, and 96.42% are achieved by GRU, Bi-LSTM, and LSTM respectively.
arXiv Detail & Related papers (2023-09-23T08:54:10Z) - Defect Classification in Additive Manufacturing Using CNN-Based Vision
Processing [76.72662577101988]
This paper examines two scenarios: first, using convolutional neural networks (CNNs) to accurately classify defects in an image dataset from AM and second, applying active learning techniques to the developed classification model.
This allows the construction of a human-in-the-loop mechanism to reduce the size of the data required to train and generate training data.
arXiv Detail & Related papers (2023-07-14T14:36:58Z) - Probabilistic machine learning based predictive and interpretable
digital twin for dynamical systems [0.0]
Two approaches for updating the digital twin are proposed.
In both cases, the resulting expressions of updated digital twins are identical.
The proposed approaches provide an exact and explainable description of the perturbations in digital twin models.
arXiv Detail & Related papers (2022-12-19T04:25:59Z) - Learning to Simulate Realistic LiDARs [66.7519667383175]
We introduce a pipeline for data-driven simulation of a realistic LiDAR sensor.
We show that our model can learn to encode realistic effects such as dropped points on transparent surfaces.
We use our technique to learn models of two distinct LiDAR sensors and use them to improve simulated LiDAR data accordingly.
arXiv Detail & Related papers (2022-09-22T13:12:54Z) - Advancing Reacting Flow Simulations with Data-Driven Models [50.9598607067535]
Key to effective use of machine learning tools in multi-physics problems is to couple them to physical and computer models.
The present chapter reviews some of the open opportunities for the application of data-driven reduced-order modeling of combustion systems.
arXiv Detail & Related papers (2022-09-05T16:48:34Z) - Physics-Inspired Temporal Learning of Quadrotor Dynamics for Accurate
Model Predictive Trajectory Tracking [76.27433308688592]
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.
arXiv Detail & Related papers (2022-06-07T13:51:35Z) - How Well Do Sparse Imagenet Models Transfer? [75.98123173154605]
Transfer learning is a classic paradigm by which models pretrained on large "upstream" datasets are adapted to yield good results on "downstream" datasets.
In this work, we perform an in-depth investigation of this phenomenon in the context of convolutional neural networks (CNNs) trained on the ImageNet dataset.
We show that sparse models can match or even outperform the transfer performance of dense models, even at high sparsities.
arXiv Detail & Related papers (2021-11-26T11:58:51Z) - DeepSatData: Building large scale datasets of satellite images for
training machine learning models [77.17638664503215]
This report presents design considerations for automatically generating satellite imagery datasets for training machine learning models.
We discuss issues faced from the point of view of deep neural network training and evaluation.
arXiv Detail & Related papers (2021-04-28T15:13:12Z) - A Probabilistic Graphical Model Foundation for Enabling Predictive
Digital Twins at Scale [0.0]
We create an abstraction of the asset-twin system as a set of coupled dynamical systems.
We demonstrate how the model is instantiated to enable a structural digital twin of an unmanned aerial vehicle.
arXiv Detail & Related papers (2020-12-10T17:33:59Z) - Machine learning based digital twin for dynamical systems with multiple
time-scales [0.0]
Digital twin technology has a huge potential for widespread applications in different industrial sectors such as infrastructure, aerospace, and automotive.
Here we focus on a digital twin framework for linear single-degree-of-freedom structural dynamic systems evolving in two different operational time scales.
arXiv Detail & Related papers (2020-05-12T15:33:25Z) - A machine learning based plasticity model using proper orthogonal
decomposition [0.0]
Data-driven material models have many advantages over classical numerical approaches.
One approach to develop a data-driven material model is to use machine learning tools.
A machine learning based material modelling framework is proposed for both elasticity and plasticity.
arXiv Detail & Related papers (2020-01-07T15:46:16Z)
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.