scholarly journals Author response: Self-organization of modular network architecture by activity-dependent neuronal migration and outgrowth

2019 ◽  
Author(s):  
Samora Okujeni ◽  
Ulrich Egert
2020 ◽  
Vol 117 (24) ◽  
pp. 13227-13237 ◽  
Author(s):  
Rabiya Noori ◽  
Daniel Park ◽  
John D. Griffiths ◽  
Sonya Bells ◽  
Paul W. Frankland ◽  
...  

Communication and oscillatory synchrony between distributed neural populations are believed to play a key role in multiple cognitive and neural functions. These interactions are mediated by long-range myelinated axonal fiber bundles, collectively termed as white matter. While traditionally considered to be static after development, white matter properties have been shown to change in an activity-dependent way through learning and behavior—a phenomenon known as white matter plasticity. In the central nervous system, this plasticity stems from oligodendroglia, which form myelin sheaths to regulate the conduction of nerve impulses across the brain, hence critically impacting neural communication. We here shift the focus from neural to glial contribution to brain synchronization and examine the impact of adaptive, activity-dependent changes in conduction velocity on the large-scale phase synchronization of neural oscillators. Using a network model based on primate large-scale white matter neuroanatomy, our computational and mathematical results show that such plasticity endows white matter with self-organizing properties, where conduction delay statistics are autonomously adjusted to ensure efficient neural communication. Our analysis shows that this mechanism stabilizes oscillatory neural activity across a wide range of connectivity gain and frequency bands, making phase-locked states more resilient to damage as reflected by diffuse decreases in connectivity. Critically, our work suggests that adaptive myelination may be a mechanism that enables brain networks with a means of temporal self-organization, resilience, and homeostasis.


2020 ◽  
Author(s):  
Andrea Lewen ◽  
Thuy‐Truc Ta ◽  
Tiziana Cesetti ◽  
Jan‐Oliver Hollnagel ◽  
Ismini E. Papageorgiou ◽  
...  

Author(s):  
Mitsuharu Hayashi ◽  
◽  
Ken Nagasaka

Wind generation is one of the fastest growing resources among renewable energies worldwide including Japan. As Japan is an island country surrounded by ocean, the on-shore landscape topography suitable for wind generation is limited. Therefore, based on the wind map until the year 2030, it is expected that new off-shore wind generation installations will be more suitable. For this reason, it is very important to determine the wind characteristics of the candidate areas for installing wind generation; however, in most off-shore installation sites, availability of weather condition data is poor and significant time and cost are required to accurately measure pin-point wind/weather conditions data. In this study, our goal is to project the wind speed of an unseen area (where weather condition data are not available) by mapping the seen areas (where weather condition data are available) around the target area using a modularized Artificial Neural Network (ANN) referred to as a Self-Organization Map (SOM). By learning the correlation between modularized ANNs of seen and unseen areas, the result of this temporal and spatial projection is the prediction of wind speed of a target area. We believe that the proposed technique will significantly reduce the amount of time and cost involved in selection of off-shore installation sites. Moreover, it should contribute to accelerated development and implementation of off-shore wind power generation in the future.


2019 ◽  
Author(s):  
Martina Riva ◽  
Ioana Genescu ◽  
Chloé Habermacher ◽  
David Orduz ◽  
Fanny Ledonne ◽  
...  

2000 ◽  
Vol 55 (3-4) ◽  
pp. 282-291
Author(s):  
Christoph Bauer ◽  
Thomas Burger ◽  
Martin Stetter ◽  
Elmar W. Lang

Abstract A neural network model with incremental Hebbian learning of afferent and lateral synaptic couplings is proposed,which simulates the activity-dependent self-organization of grating cells in upper layers of striate cortex. These cells, found in areas V1 and V2 of the visual cortex of monkeys, respond vigorously and exclusively to bar gratings of a preferred orientation and periodicity. Response behavior to varying contrast and to an increasing number of bars in the grating show threshold and saturation effects. Their location with respect to the underlying orientation map and their nonlinear response behavior are investigated. The number of emerging grating cells is controlled in the model by the range and strength of the lateral coupling structure.


Author(s):  
Jaani Riordan

Overview. This chapter introduces the concept of an internet intermediary and situates their activities within the layered, modular network architecture of the internet. The services considered in this work take many forms, ranging from operators of network equipment to administrators of bulletin boards. Not all providers of internet services are properly described as ‘intermediaries’ as such, and are not necessarily to be treated comparably. Services may consist of different activities or contribute in different ways to wrongdoing. Some entities supply many distinct services which vary in their complexity, control, mental state, and degree of passivity. This makes it crucial to describe these activities accurately and with precision. As Arnold J has explained in the context of blocking injunctions, when considering questions of intermediary liability ‘it is important to consider the nature of the infringing act and its relationship with the service in question’.


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