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@MASTERSTHESIS{Kempter:943468,
author = {Kempter, Miriam},
title = {{I}mplementation of a {S}piking {N}eural {N}etwork {M}odel
with {B}iologically {P}lausible {C}onnectivity
{C}haracteristics for {N}euromorphic {B}enchmarking},
school = {RWTH Aachen},
type = {Bachelorarbeit},
reportid = {FZJ-2023-01037},
pages = {65 p.},
year = {2022},
note = {Bachelorarbeit, RWTH Aachen, 2022},
abstract = {The cortex exhibits a complex connectivity structure,
containing spatially clustered connectivity patterns. Those,
so-called patchy connections, are often neglected in studies
concerning neural networks. However, they perform an
important role in the efficiency of the cortex. The goal of
neuromorphic hardware systems is, to imitate the highly
efficient cortex structure, and perform faster-than-realtime
calculations. In order to benchmark the performance of such
systems, it is important to have realistic neural network
models available. Here, such a benchmark model will be
presented. Focusing on connectivity, the restrains on all
other network aspects are kept to a minimum. It respects the
biological distant dependent connectivity patterns,
including spatial structure and patchy connectivity. Three
different variations of the model, with slightly different
spatially clustering approaches, are constructed.
Additionally the model will provide benchmarking features. A
fourth model, without spatial clustering is included to
serve as a comparison.},
pnm = {ACA - Advanced Computing Architectures (SO-092) / SLNS -
SimLab Neuroscience (Helmholtz-SLNS) / 899 - ohne Topic
(POF4-899)},
pid = {G:(DE-HGF)SO-092 / G:(DE-Juel1)Helmholtz-SLNS /
G:(DE-HGF)POF4-899},
typ = {PUB:(DE-HGF)2},
url = {https://juser.fz-juelich.de/record/943468},
}