La necesidad imperiosa por situar la ingeniería en un contexto de escasez obliga indirectamente cada vez más al ingeniero a plantear el diseño ya análisis de sistemas en un marco de incertidumbre. En este documento se plantea una metodología racional para el estudio de sistemas mecánicos sometidos a condicionantes ambientales en un contexto...
-
October 27, 2016 (v1)PublicationUploaded on: March 27, 2023
-
September 2, 2022 (v1)Publication
Microfluidic capacities for both recreating and monitoring cell cultures have opened the door to the use of Data Science and Machine Learning tools for understanding and simulating tumor evolution under controlled conditions. In this work, we show how these techniques could be applied to study Glioblastoma, the deadliest and most frequent...
Uploaded on: March 25, 2023 -
January 24, 2024 (v1)Publication
Data Science has burst into simulation-based engineering sciences with an impressive impulse. However, data are never uncertainty-free and a suitable approach is needed to face data measurement errors and their intrinsic randomness in problems with well-established physical constraints. As in previous works, this problem is here faced by...
Uploaded on: January 26, 2024 -
January 24, 2024 (v1)Publication
Data-driven methods are an innovative model-free approach for engineering and sciences, still in process of maturation. The idea behind is the combination of data analytics techniques, to handle the huge amount of data derived from continuous monitoring or experimental measurements, and of the constraints imposed by universal physical laws,...
Uploaded on: January 26, 2024 -
February 5, 2021 (v1)Publication
Modeling and simulation are essential tools for better understanding complex biological processes, such as cancer evolution. However, the resulting mathematical models are often highly non-linear and include many parameters, which, in many cases, are difficult to estimate and present strong correlations. Therefore, a proper parametric analysis...
Uploaded on: December 4, 2022 -
January 15, 2021 (v1)Publication
In silico models and computer simulation are invaluable tools to better understand complex biological processes such as cancer evolution. However, the complexity of the biological environment, with many cell mechanisms in response to changing physical and chemical external stimuli, makes the associated mathematical models highly non-linear and...
Uploaded on: March 27, 2023 -
January 22, 2024 (v1)Publication
The data-driven methodology with application to continuum mechanics relies upon two main pillars: (i) experimental characterization of stress–strain pairs associated to different loading states, and (ii) numerical elaboration of the elasticity equations as an optimization (searching) algorithm using compatibility and equilibrium as constraints....
Uploaded on: January 24, 2024