Title :
Piriform model execution on a neurocomputer
Author :
Means, Eric ; Hammerstrom, Dan
Author_Institution :
Adaptive Solutions Inc., Beaverton, OR, USA
Abstract :
The Lynch-Granger model of olfactory/piriform cortex (the piriform model) has been shown to perform a useful signal processing operation known as vector quantization. The piriform model utilizes a layered architecture to achieve this hierarchically, with successive layers (subnets) producing increasingly refined input categorizations. Researchers have developed alternate forms of the basic piriform model and have implemented these on a commercial neurocomputer system. The piriform model was implemented on the connected network of adaptive processors (CNAPS) architecture. This architecture is based on an SIMD model, and it features a linear array of homogeneous processors. The example networks studied were scaled to the dimension of networks that will be required for real-time speech processing applications. The model performance is discussed, CNAPS 256 parallel processors, high local memory bandwidth, and hardware-assisted maximization techniques significantly reduce the execution time required for the piriform algorithm. However, those portions of the piriform algorithm that require serial execution or global communication of locally stored data remain execution bottlenecks. This is reflected in overall network performance
Keywords :
neural nets; parallel architectures; performance evaluation; CNAPS 256 parallel processors; CNAPS architecture; Lynch-Granger model; connected network of adaptive processors; execution bottlenecks; execution time; global communication; hardware-assisted maximization techniques; homogeneous processors; increasingly refined input categorizations; layered architecture; linear array; local memory bandwidth; neurocomputer system; olfactory; overall network performance; piriform cortex; piriform model; serial execution; signal processing; vector quantization; Adaptive systems; Bandwidth; Brain modeling; Global communication; Olfactory; Refining; Signal processing; Signal processing algorithms; Speech processing; Vector quantization;
Conference_Titel :
Neural Networks, 1991., IJCNN-91-Seattle International Joint Conference on
Conference_Location :
Seattle, WA
Print_ISBN :
0-7803-0164-1
DOI :
10.1109/IJCNN.1991.155241