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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
11

Modellierung dynamischer Prozesse mit radialen Basisfunktionen / Modeling of dynamical processes using radial basis functions

Dittmar, Jörg 20 August 2010 (has links)
No description available.
12

Local- and Cluster Weighted Modeling for Prediction and State Estimation of Nonlinear Dynamical Systems / Lokale- und Cluster-Weighted-Modellierung zur Vorhersage und Zustandsschätzung nichtlinearer dynamischer Systeme

Engster, David 24 August 2010 (has links)
No description available.
13

Synchronization, Neuronal Excitability, and Information Flow in Networks of Neuronal Oscillators / Synchronisation, Neuronale Erregbarkeit und Informations-Fluss in Netzwerken Neuronaler Oszillatoren

Kirst, Christoph 28 September 2011 (has links)
No description available.
14

Topological Optimization in Network Dynamical Systems / Topologieoptimierung in Netzwerke Dynamische Systeme

Van Bussel, Frank 25 August 2010 (has links)
No description available.
15

Universal Computation and Memory by Neural Switching / Universalcomputer und Speicher mittels neuronaler Schaltvorgänge

Schittler Neves, Fabio 28 October 2010 (has links)
No description available.
16

Chaotic Dynamics in Networks of Spiking Neurons in the Balanced State / Chaotische Dynamik in Netzwerken feuernder Neurone im Balanced State

Monteforte, Michael 19 May 2011 (has links)
No description available.
17

Information Processing in Neural Networks: Learning of Structural Connectivity and Dynamics of Functional Activation

Finger, Holger Ewald 16 March 2017 (has links)
Adaptability and flexibility are some of the most important human characteristics. Learning based on new experiences enables adaptation by changing the structural connectivity of the brain through plasticity mechanisms. But the human brain can also adapt to new tasks and situations in a matter of milliseconds by dynamic coordination of functional activation. To understand how this flexibility can be achieved in the computations performed by neural networks, we have to understand how the relatively fixed structural backbone interacts with the functional dynamics. In this thesis, I will analyze these interactions between the structural network connectivity and functional activations and their dynamic interactions on different levels of abstraction and spatial and temporal scales. One of the big questions in neuroscience is how functional interactions in the brain can adapt instantly to different tasks while the brain structure remains almost static. To improve our knowledge of the neural mechanisms involved, I will first analyze how dynamics in functional brain activations can be simulated based on the structural brain connectivity obtained with diffusion tensor imaging. In particular, I will show that a dynamic model of functional connectivity in the human cortex is more predictive of empirically measured functional connectivity than a stationary model of functional dynamics. More specifically, the simulations of a coupled oscillator model predict 54\% of the variance in the empirically measured EEG functional connectivity. Hypotheses of temporal coding have been proposed for the computational role of these dynamic oscillatory interactions on fast timescales. These oscillatory interactions play a role in the dynamic coordination between brain areas as well as between cortical columns or individual cells. Here I will extend neural network models, which learn unsupervised from statistics of natural stimuli, with phase variables that allow temporal coding in distributed representations. The analysis shows that synchronization of these phase variables provides a useful mechanism for binding of activated neurons, contextual coding, and figure ground segregation. Importantly, these results could also provide new insights for improvements of deep learning methods for machine learning tasks. The dynamic coordination in neural networks has also large influences on behavior and cognition. In a behavioral experiment, we analyzed multisensory integration between a native and an augmented sense. The participants were blindfolded and had to estimate their rotation angle based on their native vestibular input and the augmented information. Our results show that subjects alternate in the use between these modalities, indicating that subjects dynamically coordinate the information transfer of the involved brain regions. Dynamic coordination is also highly relevant for the consolidation and retrieval of associative memories. In this regard, I investigated the beneficial effects of sleep for memory consolidation in an electroencephalography (EEG) study. Importantly, the results demonstrate that sleep leads to reduced event-related theta and gamma power in the cortical EEG during the retrieval of associative memories, which could indicate the consolidation of information from hippocampal to neocortical networks. This highlights that cognitive flexibility comprises both dynamic organization on fast timescales and structural changes on slow timescales. Overall, the computational and empirical experiments demonstrate how the brain evolved to a system that can flexibly adapt to any situation in a matter of milliseconds. This flexibility in information processing is enabled by an effective interplay between the structure of the neural network, the functional activations, and the dynamic interactions on fast time scales.
18

Chaos and Chaos Control in Network Dynamical Systems / Chaos und dessen Kontrolle in Dynamik von Netzwerken

Bick, Christian 29 November 2012 (has links)
No description available.
19

Scale-free Fluctuations in in Bose-Einstein Condensates, Quantum Dots and Music Rhythms / Skalenfreie Fluktuationen in Bose-Einstein Kondensaten, Quantenpunkten und Musikrhythmen

Hennig, Holger 27 May 2009 (has links)
No description available.
20

Partikelmodellierung der Strukturbildung akustischer Kavitationsblasen in Wechselwirkung mit dem Schalldruckfeld / Particle modeling of acoustic cavitation bubble structure formation and interaction with the acoustic pressure field

Koch, Philipp 29 August 2006 (has links)
No description available.

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