Physics-informed neural network (PINN) has achieved success in many science and engineering disciplines by encoding physical laws into the loss functions of the neural network. Compared with traditional numerical method, PINN transformed the problem of solving differential equations into the optimization of loss functions by automatic differentiation. In this work, PINN is apply to solve the coal gasification chemical kinetic problems of gas-solid reactions in the form of the unreacted-core shrinking model with governing ordinary differential equations (ODEs). The results show that the prediction performance of the developed PINN is comparable with that of the widely-used Runge-Kutta method, and thus it opens the possibility for the applica...
Compositional simulation is computationally intensive for high-fidelity models due to thermodynamic ...
This article corresponds to chapter 5 of Ph.D: Experimental and mathematical modelling of biowaste g...
A deep learning-based model reduction (DeePMR) method for simplifying chemical kinetics is proposed ...
Physics-Informed Neural Networks (PINNs) are hybrid models that incorporate differential equations i...
This is an annual technical report for the work done over the last year (period ending 9/30/2004) on...
International audienceA chemistry reduction approach based on machine learning is proposed and appli...
International audienceA novel chemistry reduction strategy based on convolutional neural networks (C...
This work aims at accurately solve a thermal creep flow in a plane channel problem, as a class of ra...
The optimal operation of chemical processes provides the foundation for optimization problems to det...
This work presents a recently developed approach based on physics-informed neural networks (PINNs) f...
Physics-Informed Neural Networks (PINN) are neural networks (NNs) that encode model equations, like ...
Coal extraction at great depths and high Output faces lead to more and more elevated and irregulär f...
Abstract: The attempt to replace traditional chemical kinetics model calculations with new ones base...
Particle aggregation and breakage phenomena are widely found in various industries such as chemical,...
Global warming caused by the use of fossil fuels is a common concern of the world today. It is of pr...
Compositional simulation is computationally intensive for high-fidelity models due to thermodynamic ...
This article corresponds to chapter 5 of Ph.D: Experimental and mathematical modelling of biowaste g...
A deep learning-based model reduction (DeePMR) method for simplifying chemical kinetics is proposed ...
Physics-Informed Neural Networks (PINNs) are hybrid models that incorporate differential equations i...
This is an annual technical report for the work done over the last year (period ending 9/30/2004) on...
International audienceA chemistry reduction approach based on machine learning is proposed and appli...
International audienceA novel chemistry reduction strategy based on convolutional neural networks (C...
This work aims at accurately solve a thermal creep flow in a plane channel problem, as a class of ra...
The optimal operation of chemical processes provides the foundation for optimization problems to det...
This work presents a recently developed approach based on physics-informed neural networks (PINNs) f...
Physics-Informed Neural Networks (PINN) are neural networks (NNs) that encode model equations, like ...
Coal extraction at great depths and high Output faces lead to more and more elevated and irregulär f...
Abstract: The attempt to replace traditional chemical kinetics model calculations with new ones base...
Particle aggregation and breakage phenomena are widely found in various industries such as chemical,...
Global warming caused by the use of fossil fuels is a common concern of the world today. It is of pr...
Compositional simulation is computationally intensive for high-fidelity models due to thermodynamic ...
This article corresponds to chapter 5 of Ph.D: Experimental and mathematical modelling of biowaste g...
A deep learning-based model reduction (DeePMR) method for simplifying chemical kinetics is proposed ...