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Design and implementation of Least Mean Square adaptive FIR filter using offset binary coding based Distributed Arithmetic

机译:最小二乘自适应FIR滤波器的设计与实现

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Distributed Arithmetic (DA) based architecture is an efficient technique to attain high throughput without hardware multiplier and also it is essential for bit serial operation. The DA based Finite Impulse Response (FIR) adaptive filter is well suited for hardware implementation in Field Programmable Gate Array (FPGA) device. In conventional DA the partial products of the filter coefficients have been pre-calculated and stored in Look up Table (LUT) which in turn will increase the logic elements and power. To overcome this problem DA based Least Mean Square (LMS) adaptive filter using offset binary coding (OBC) without LUT is proposed. The proposed method will reduce the logic elements by half when compared to the conventional DA based OBC filter. The Carry Save Accumulator (CSA) is used to carry out the operation of shift and accumulation. The proposed architecture is implemented in Quartus II 9.1 with the device as Stratix-EP2S15F484C3 which offers 13.72% high throughput, 56.92% reduction in logic elements, 42.84% reduction in power, 57.74% reduction in logical registers for N=16 and for N=32 the number of logical element is reduced to 80.87%, 66.66% reduction in power and 24.12% high throughput. (C) 2019 Elsevier B.V. All rights reserved.
机译:基于分布式算术(DA)的体系结构是一种无需硬件乘法器即可实现高吞吐量的有效技术,并且它对于位串行操作也是必不可少的。基于DA的有限冲激响应(FIR)自适应滤波器非常适合现场可编程门阵列(FPGA)设备中的硬件实现。在传统的DA中,滤波器系数的部分乘积已预先计算并存储在查找表(LUT)中,这反过来会增加逻辑单元和功耗。为了克服这个问题,提出了使用不带LUT的偏移二进制编码(OBC)的基于DA的最小均方(LMS)自适应滤波器。与传统的基于DA的OBC滤波器相比,所提出的方法将逻辑元件减少一半。随身携带累加器(CSA)用于执行移位和累加操作。拟议的架构是在Quartus II 9.1中实现的,器件为Stratix-EP2S15F484C3,在N = 16和N = 16时,可提供13.72%的高吞吐量,逻辑元件减少56.92%,功耗减少42.84%,逻辑寄存器减少57.74%。 32个逻辑元素的数量减少到80.87%,功率减少66.66%,高吞吐量减少24.12%。 (C)2019 Elsevier B.V.保留所有权利。

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