Title :
Robust neural networks using motes
Author :
Hereford, James M. ; Kuyucu, Tuze
Author_Institution :
Dept. of Phys. & Eng., Murray State Univ., KY, USA
fDate :
29 June-1 July 2005
Abstract :
The goal of this research is to derive circuits that can recover from component failure. Our approach is to replace a single monolithic computing element with a system of simple, redundant, interconnected processing nodes such as a neural net. Each node will be a hardware device called a mote that can sense data, do simple processing and wirelessly transmit and receive data from its neighbors. The neural net is trained using an evolutionary algorithm called particle swarm optimization (PSO). This paper discusses the PSO algorithm, simulated results using the algorithm, and its application to the mote-based neural net. We also describe and show results for a new algorithm called dispersive PSO, which is useful when a neural net needs to be retrained to a different function or when a neural net needs to be retrained due to a node failure.
Keywords :
evolutionary computation; fault tolerant computing; neural chips; particle swarm optimisation; circuit recovery; component failure; data sensor; dispersive PSO; evolutionary algorithm; hardware device; monolithic computing element; mote-based neural net; neural net retraining; particle swarm optimization; redundant interconnected processing node; wireless transmission; Biological neural networks; Evolutionary computation; Fault tolerance; Field programmable analog arrays; Integrated circuit interconnections; Neural network hardware; Neural networks; Redundancy; Robustness; Sensor arrays;
Conference_Titel :
Evolvable Hardware, 2005. Proceedings. 2005 NASA/DoD Conference on
Print_ISBN :
0-7695-2399-4