Title :
On brain-inspired hierarchical network topologies
Author :
Beiu, Valeriu ; Madappuram, Basheer A M ; Kelly, Peter M. ; McDaid, Liam J.
Author_Institution :
Coll. of Inf. Technol., UAE Univ., Al Ain, United Arab Emirates
Abstract :
In this paper our aim is to identify layered hierarchical generic network topologies which could closely mimic brain´s connectivity. Recent analyses have compared the brain´s connectivity (based both on a cortical-equivalent Rent´s rule and on neurological data) with well-known network topologies used in supercomputers and massively parallel computers (using two different interpretations of Rent´s rule). These have revealed that all the well-known computer network topologies fall short of being strong contenders for mimicking the brain´s connectivity. That is why in this paper we perform a high-level analysis of two-layer hierarchical generic networks. The range of granularities (i.e., number of gates/cores/neurons) as well as the fan-ins and the particular combinations of the two generic networks which would make such a mimicking achievable are identified and discussed.
Keywords :
brain; multiprocessor interconnection networks; network topology; Rents rule; brain connectivity mimicking; brain-inspired hierarchical network topologies; generic network topologies; two-layer hierarchical generic networks; Computer networks; Concurrent computing; Educational institutions; Hypercubes; Information technology; Network topology; Neurons; Parallel processing; Performance analysis; Supercomputers; Connectivity; Rent´s rule; brain; nano-architecture; network topology; network-on-chip; neural networks;
Conference_Titel :
Nanotechnology, 2009. IEEE-NANO 2009. 9th IEEE Conference on
Conference_Location :
Genoa
Print_ISBN :
978-1-4244-4832-6
Electronic_ISBN :
1944-9399