Low Area and Low Power FPGA Implementation of a DBSCAN-Based RF Modulation Classifier

Bill Gavin;Tiantai Deng;Edward Ball
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Abstract

This paper presents a new low-area and low-power Field Programmable Gate Array (FPGA) implementation of a Radio Frequency (RF) modulation classifier based on the Density-Based Spatial Clustering of Applications with Noise (DBSCAN) algorithm, known as DBCLASS. The proposed architecture demonstrates a novel approach for the efficient hardware realisation of the DBSCAN algorithm by utilising parallelism, a bespoke sorting algorithm, and eliminating memory access. The design achieves 100% classification accuracy with lab-captured RF data above 8 dB signal-to-noise ratio(SNR) whilst exhibiting an improvement of latency in comparison to the next quickest design by a factor of 7.5, a reduction in terms of total FPGA resources used in comparison to the next smallest complete system by a factor of 3.65, and a reduction in power consumption over the next most efficient by a factor of 4.75. The proposed design is well suited for resource-constrained applications, such as mobile cognitive radios and spectrum monitoring systems.
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基于 DBSCAN 的射频调制分类器的低面积、低功耗 FPGA 实现
本文介绍了一种新的低面积、低功耗现场可编程门阵列(FPGA)实现方法,该方法基于基于密度的带噪声应用空间聚类(DBSCAN)算法(即 DBCLASS),是一种射频(RF)调制分类器。所提出的架构通过利用并行性、定制排序算法和消除内存访问,展示了一种高效硬件实现 DBSCAN 算法的新方法。该设计在实验室捕获的信噪比(SNR)超过 8 dB 的射频数据中实现了 100% 的分类准确率,同时与下一个最快的设计相比,延迟时间缩短了 7.5 倍,与下一个最小的完整系统相比,所使用的 FPGA 总资源减少了 3.65 倍,与下一个最高效的设计相比,功耗降低了 4.75 倍。所提出的设计非常适合资源受限的应用,如移动认知无线电和频谱监测系统。
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