Skip to main content
Extreme Statistics
XSTAT
Extreme Statistics
Main navigation
Home
People
All Profiles
Principal Investigators
Postdoctoral Fellows
Students
Alumni
Former Members
Events
All Events
Events Calendar
News
About
Contact Us
Publications
Teaching
Stochastiic Variability
Simulation of Neuronal Signal Processing - 2020-03-05
Gabriel Wittum, Professor (former), Applied Mathematics and Computational Science
Mar 5, 12:00
-
13:00
B9 L2 R2322
Neuronal ensembles
Stochastiic Variability
neuroscience
In the lecture we present a three dimensional mdoel for the simulation of signal processing in neurons. To handle problems of this complexity, new mathematical methods and software tools are required. In recent years, new approaches such as parallel adaptive multigrid methods and corresponding software tools have been developed allowing to treat problems of huge complexity. Part of this approach is a method to reconstruct the geometric structure of neurons from data measured by 2-photon microscopy. Being able to reconstruct neural geometries and network connectivities from measured data is the basis of understanding coding of motoric perceptions and long term plasticity which is one of the main topics of neuroscience. Other issues are compartment models and upscaling.