Title :
Neural networks perspectives and potentials
Author_Institution :
AT&T Bell Lab., Murray Hill, NJ, USA
fDate :
3/1/1990 12:00:00 AM
Abstract :
The evolution of machine-based signal processing exploits the controllable complexity properties of the available physical vehicles. Contemporary integrated electronic device-array complexity appears to have reached the critical size where the functional behavior of some bioneural array networks can be emulated directly. Such nonnumeric analog token model methods were in common use before the digital computer era. Beyond a revitalization and broadening of analog model and circuit knowledge, the present neural network flurry may result in human-sense-like circuit functions of designable levels of sophistication where the analog feature complexity approaches that of the real thing. Candidates for eased-in growth are application-specific integrated circuits, where one can combine and evolve the inherent strength of analog and digital design methods. Technology deployment appears so far to be nonrevolutionary and well within the existing and diverse analog circuit capabilities.<>
Keywords :
application specific integrated circuits; computerised signal processing; neural nets; application-specific integrated circuits; computerised signal processing; digital design; integrated electronic device-array; machine-based signal processing; neural nets; nonnumeric analog token model methods; Analog circuits; Analog computers; Application specific integrated circuits; Array signal processing; Biomedical signal processing; Design methodology; Integrated circuit technology; Neural networks; Process control; Vehicles;
Journal_Title :
Aerospace and Electronic Systems Magazine, IEEE