Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Causal Deep Operator Networks for Data-Driven Modeling of Dynamical Systems

View through CrossRef
<p>The deep operator network (DeepONet) architecture is a promising approach for learning functional operators, that can represent dynamical systems described by ordinary or partial differential equations. However, it has two major limitations, namely its failures to account for initial conditions and to guarantee the temporal causality – a fundamental property of dynamical systems. This paper proposes a novel causal deep operator network (Causal-DeepONet) architecture for incorporating both the initial condition and the temporal causality into data-driven learning of dynamical systems, overcoming the limitations of the original DeepONet approach. This is achieved by adding an independent root network for the initial condition and independent branch networks conditioned, or switched on/off, by time-shifted step functions or sigmoid functions for expressing the temporal causality. The proposed architecture was evaluated and compared with two baseline deep neural network methods and the original DeepONet method on learning the thermal dynamics of a room in a building using real data. It was shown to not only achieve the best overall prediction accuracy but also enhance substantially the accuracy consistency in multistep predictions, which is crucial for predictive contro</p>
Institute of Electrical and Electronics Engineers (IEEE)
Title: Causal Deep Operator Networks for Data-Driven Modeling of Dynamical Systems
Description:
<p>The deep operator network (DeepONet) architecture is a promising approach for learning functional operators, that can represent dynamical systems described by ordinary or partial differential equations.
However, it has two major limitations, namely its failures to account for initial conditions and to guarantee the temporal causality – a fundamental property of dynamical systems.
This paper proposes a novel causal deep operator network (Causal-DeepONet) architecture for incorporating both the initial condition and the temporal causality into data-driven learning of dynamical systems, overcoming the limitations of the original DeepONet approach.
This is achieved by adding an independent root network for the initial condition and independent branch networks conditioned, or switched on/off, by time-shifted step functions or sigmoid functions for expressing the temporal causality.
The proposed architecture was evaluated and compared with two baseline deep neural network methods and the original DeepONet method on learning the thermal dynamics of a room in a building using real data.
It was shown to not only achieve the best overall prediction accuracy but also enhance substantially the accuracy consistency in multistep predictions, which is crucial for predictive contro</p>.

Related Results

Perancangan Beban Kerja Proses Produksi Pabrik Tahu Ciburial dengan Metode Work Load Analysis
Perancangan Beban Kerja Proses Produksi Pabrik Tahu Ciburial dengan Metode Work Load Analysis
Abstract. Excessive workload can create an uncomfortable working atmosphere for workers because it can trigger the emergence of work stress more quickly. On the other hand, a lack ...
Causal discovery and prediction: methods and algorithms
Causal discovery and prediction: methods and algorithms
(English) This thesis focuses on the discovery of causal relations and on the prediction of causal effects. Regarding causal discovery, this thesis introduces a novel and generic m...
The second four-electron singlet in the Hubbard impurity model
The second four-electron singlet in the Hubbard impurity model
We consider the energy operator of four-electron systems in the Hubbard impurity model and investigate the structure of the essential spectrum and discrete spectra for the second s...
Use of causal claims in observational studies: a research on research study
Use of causal claims in observational studies: a research on research study
Abstract Objective To evaluate the consistency of causal statements in the abstracts of observational studies published in The ...
Minimasi Risiko Muskuloskeletal Disorders dan Beban Kerja Fisik pada Operator Proses Setting Di PT. Jaya Beton Indonesia
Minimasi Risiko Muskuloskeletal Disorders dan Beban Kerja Fisik pada Operator Proses Setting Di PT. Jaya Beton Indonesia
Intisari—Penelitian ini dilakukan pada PT.Jaya Beton Indonesia dimana ditemukannya indikasi beban kerja fisik yang berlebih dan postur kerja yang buruk pada operator proses setting...
ACM SIGCOMM computer communication review
ACM SIGCOMM computer communication review
At some point in the future, how far out we do not exactly know, wireless access to the Internet will outstrip all other forms of access bringing the freedom of mobility to the way...
Causal Deep Operator Networks for Data-Driven Modeling of Dynamical Systems
Causal Deep Operator Networks for Data-Driven Modeling of Dynamical Systems
<p>The deep operator network (DeepONet) architecture is a promising approach for learning functional operators, that can represent dynamical systems described by ordinary or ...
Implementation of Ergonomic Biomechanics on Harvest Management by Combined Harverter Machine
Implementation of Ergonomic Biomechanics on Harvest Management by Combined Harverter Machine
Abstract Biomechanics is performed to minimize fatigue and risk of muscle bone loss, in repetitive working conditions. So in the placement and operation of the controller must be e...

Back to Top