Title :
Neurogrid: A Mixed-Analog-Digital Multichip System for Large-Scale Neural Simulations
Author :
Benjamin, Ben Varkey ; Peiran Gao ; McQuinn, Emmett ; Choudhary, Swadesh ; Chandrasekaran, Anand R. ; Bussat, Jean-Marie ; Alvarez-Icaza, Rodrigo ; Arthur, John V. ; Merolla, Paul A. ; Boahen, Kwabena
Author_Institution :
Dept. of Electr. Eng., Stanford Univ., Stanford, CA, USA
Abstract :
In this paper, we describe the design of Neurogrid, a neuromorphic system for simulating large-scale neural models in real time. Neuromorphic systems realize the function of biological neural systems by emulating their structure. Designers of such systems face three major design choices: 1) whether to emulate the four neural elements-axonal arbor, synapse, dendritic tree, and soma-with dedicated or shared electronic circuits; 2) whether to implement these electronic circuits in an analog or digital manner; and 3) whether to interconnect arrays of these silicon neurons with a mesh or a tree network. The choices we made were: 1) we emulated all neural elements except the soma with shared electronic circuits; this choice maximized the number of synaptic connections; 2) we realized all electronic circuits except those for axonal arbors in an analog manner; this choice maximized energy efficiency; and 3) we interconnected neural arrays in a tree network; this choice maximized throughput. These three choices made it possible to simulate a million neurons with billions of synaptic connections in real time-for the first time-using 16 Neurocores integrated on a board that consumes three watts.
Keywords :
analogue circuits; biology computing; digital circuits; network theory (graphs); neurophysiology; trees (mathematics); Neurogrid system; axonal arbor element; biological neural systems; dendritic tree element; electronic circuits; large-scale neural simulations; mixed-analog-digital multichip system; neural elements; neuromorphic systems; soma element; synapse element; synaptic connections; tree network; Computer architecture; Electronic circuits; Integrated circuit modeling; Nerve fibers; Neural networks; Neuroscience; Random access memory; Synchronous digital hierarchy; Analog circuits; application specific integrated circuits; asynchronous circuits; brain modeling; computational neuroscience; interconnection networks; mixed analog-digital integrated circuits; neural network hardware; neuromorphic electronic systems;
Journal_Title :
Proceedings of the IEEE
DOI :
10.1109/JPROC.2014.2313565