Title :
A massively parallel architecture for self-organizing feature maps
Author :
Porrmann, Mario ; Witkowski, Ulf ; Rückert, Ulrich
Author_Institution :
Heinz Nixdorf Inst., Paderborn Univ., Germany
Abstract :
A hardware accelerator for self-organizing feature maps is presented. We have developed a massively parallel architecture that, on the one hand, allows a resource-efficient implementation of small or medium-sized maps for embedded applications, requiring only small areas of silicon. On the other hand, large maps can be simulated with systems that consist of several integrated circuits that work in parallel. Apart from the learning and recall of self-organizing feature maps, the hardware accelerates data pre- and postprocessing. For the verification of our architectural concepts in a real-world environment, we have implemented an ASIC that is integrated into our heterogeneous multiprocessor system for neural applications. The performance of our system is analyzed for various simulation parameters. Additionally, the performance that can be achieved with future microelectronic technologies is estimated.
Keywords :
VLSI; parallel architectures; performance evaluation; self-organising feature maps; unsupervised learning; VLSI; data postprocessing; data preprocessing; hardware accelerator; heterogeneous multiprocessor system; learning; massively parallel architecture; performance evaluation; self-organizing feature maps; Acceleration; Analytical models; Application specific integrated circuits; Circuit simulation; Hardware; Microelectronics; Multiprocessing systems; Parallel architectures; Performance analysis; Silicon;
Journal_Title :
Neural Networks, IEEE Transactions on
DOI :
10.1109/TNN.2003.816368