TY - GEN AB - This book is an introduction to the use of machine learning and data-driven approaches in fluid simulation and animation, as an alternative to traditional modeling techniques based on partial differential equations and numerical methods – and at a lower computational cost. This work starts with a brief review of computability theory, aimed to convince the reader – more specifically, researchers of more traditional areas of mathematical modeling – about the power of neural computing in fluid animations. In these initial chapters, fluid modeling through Navier-Stokes equations and numerical methods are also discussed. The following chapters explore the advantages of the neural networks approach and show the building blocks of neural networks for fluid simulation. They cover aspects related to training data, data augmentation, and testing. The volume completes with two case studies, one involving Lagrangian simulation of fluids using convolutional neural networks and the other using Generative Adversarial Networks (GANs) approaches. AU - Giraldi, Gilson Antonio, AU - Almeida, Liliane Rodrigues de, AU - Apolinário, Antonio Lopes, AU - Silva, Leandro Tavares da, CN - Q325.73 DO - 10.1007/978-3-031-42333-8 DO - doi ID - 1484494 KW - Apprentissage profond. KW - Mécanique des fluides KW - Deep learning (Machine learning) KW - Fluid mechanics LK - https://univsouthin.idm.oclc.org/login?url=https://link.springer.com/10.1007/978-3-031-42333-8 N2 - This book is an introduction to the use of machine learning and data-driven approaches in fluid simulation and animation, as an alternative to traditional modeling techniques based on partial differential equations and numerical methods – and at a lower computational cost. This work starts with a brief review of computability theory, aimed to convince the reader – more specifically, researchers of more traditional areas of mathematical modeling – about the power of neural computing in fluid animations. In these initial chapters, fluid modeling through Navier-Stokes equations and numerical methods are also discussed. The following chapters explore the advantages of the neural networks approach and show the building blocks of neural networks for fluid simulation. They cover aspects related to training data, data augmentation, and testing. The volume completes with two case studies, one involving Lagrangian simulation of fluids using convolutional neural networks and the other using Generative Adversarial Networks (GANs) approaches. SN - 9783031423338 SN - 303142333X T1 - Deep learning for fluid simulation and animation :fundamentals, modeling, and case studies / TI - Deep learning for fluid simulation and animation :fundamentals, modeling, and case studies / UR - https://univsouthin.idm.oclc.org/login?url=https://link.springer.com/10.1007/978-3-031-42333-8 ER -