Affiliation:
1. Faculty of Engineering Science, Kansai University, Osaka 564-8680, Japan
Abstract
Self-organizing map (SOM) is a type of artificial neural network that provides a nonlinear mapping from a given high-dimensional input space to a low-dimensional map of neurons for clustering. The clustering of high-dimensional vectors is too slow for SOM when implemented in software. In such cases, an application-specific hardware SOM accelerator is highly desirable. Field-programmable gate array (FPGA) implementation is a popular platform to implement hardware SOM. In our previous work, a nested hardware SOM architecture, which has a homogeneous modular structure to enhance expandability, was proposed. This paper investigates the impact of the nested hardware SOM on FPGA implementation tools that perform logic synthesis, place, and route (PAR). Experiments revealed that the nested architecture provided better results in resource usage and performance. FPGA resource usage of the nested architecture was 97.2% of that of the flat design on average. Importantly, the nested architecture operated at 10% higher clock frequencies compared to flat SOM designs. In addition, the pipeline computation was improved by increasing the pipeline stages so that it operates with a higher clock frequency. The operable clock frequency was 81 MHz, which was 21 MHz higher than its predecessor.
Subject
Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering
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