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An artificial neural network based deep collocation method for the solution of transient linear and nonlinear partial differential equations
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作者 Abhishek MISHRA Cosmin ANITESCU +3 位作者 Pattabhi Ramaiah BUDARAPU Sundararajan NATARAJAN pandu rang vundavilli Timon RABCZUK 《Frontiers of Structural and Civil Engineering》 SCIE EI 2024年第8期1296-1310,共15页
A combined deep machine learning(DML)and collocation based approach to solve the partial differential equations using artificial neural networks is proposed.The developed method is applied to solve problems governed b... A combined deep machine learning(DML)and collocation based approach to solve the partial differential equations using artificial neural networks is proposed.The developed method is applied to solve problems governed by the Sine–Gordon equation(SGE),the scalar wave equation and elasto-dynamics.Two methods are studied:one is a space-time formulation and the other is a semi-discrete method based on an implicit Runge–Kutta(RK)time integration.The methodology is implemented using the Tensorflow framework and it is tested on several numerical examples.Based on the results,the relative normalized error was observed to be less than 5%in all cases. 展开更多
关键词 collocation method artificial neural networks deep machine learning Sine-Gordon equation transient wave equation dynamic scalar and elasto-dynamic equation Runge-Kutta method
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