RM
R. Mihail
1 records found
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Activation function trade-offs for training efficiency of Physics-Informed Neural Networks used in solving 1D Burgers’ Equation
Analyzing the impact of the choice of adaptive activation function on the speed and accuracy of generating PDE solutions using PINNs
Physics-Informed Neural Networks(PINNs) have emerged as a potent, versatile solution to solving both forward and inverse problems regarding partial differential equations(PDEs), accomplished through integrating laws of physics into the learning process. The applications of this n
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