DocumentCode :
1525996
Title :
The GRD chip: genetic reconfiguration of DSPs for neural network processing
Author :
Murakawa, Masahiro ; Yoshizawa, Shuji ; Kajitani, Isamu ; Yao, Xin ; Kajihara, Nobuki ; Iwata, Masaya ; Higuchi, Tetsuya
Author_Institution :
Div. of Comput. Sci., Electrotech. Lab., Ibaraki, Japan
Volume :
48
Issue :
6
fYear :
1999
fDate :
6/1/1999 12:00:00 AM
Firstpage :
628
Lastpage :
639
Abstract :
This paper describes the GRD (Genetic Reconfiguration of DSPs) chip, which is evolvable hardware designed for neural network applications. The GRD chip is a building block for the configuration of a scalable neural network hardware system. Both the topology and the hidden layer node functions of a neural network mapped on the GRD chips are dynamically reconfigured using a genetic algorithm (GA). Thus, the most desirable network topology and choice of node functions (e.g., Gaussian or sigmoid function) for a given application can be determined adaptively. This approach is particularly suited to applications requiring the ability to cope with time-varying problems and real-time constraints. The GRD chip consists of a 100 MHz 32-bit RISC processor and 15 33 MHz 16-bit DSPs connected in a binary-tree network. The RISC processor is the NEC V830 which executes mainly the GA. According to chromosomes obtained by the GA, DSP functions and the interconnection among them are dynamically reconfigured. The GRD chip does not need a host machine for this reconfiguration. This is desirable for embedded systems in practical industrial applications. Simulation results on chaotic time series prediction are two orders of magnitude faster than on a Sun Ultra 2
Keywords :
digital signal processing chips; embedded systems; neural nets; reconfigurable architectures; reduced instruction set computing; time series; 32-bit RISC processor; DSPs; GRD chip; NEC V830; Sun Ultra 2; chaotic time series; chromosomes; embedded systems; evolvable hardware; genetic reconfiguration; hidden layer node functions; neural network processing; real-time constraints; simulation results; time-varying problems; Biological cells; Digital signal processing chips; Embedded system; Genetic algorithms; National electric code; Network topology; Neural network hardware; Neural networks; Predictive models; Reduced instruction set computing;
fLanguage :
English
Journal_Title :
Computers, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9340
Type :
jour
DOI :
10.1109/12.773799
Filename :
773799
Link To Document :
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