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DeMAS: An Efficient Design Methodology for Building Approximate Adders for FPGA-Based Systems

机译:DEMAS:一种高效的设计方法,用于建立基于FPGA的系统的近似添加剂

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The current state-of-the-art approximate adders are mostly ASIC-based, i.e., they focus solely on gate and/or transistor level approximations (e.g., through circuit simplification or truncation) to achieve area, latency, power and/or energy savings at the cost of accuracy loss. However, when these designs are synthesized for FPGA-based systems, they do not offer similar reductions in area, latency and power/energy due to the underlying architectural differences between ASICs and FPGAs. In this paper, we present a novel generic design methodology to synthesize and implement approximate adders for any FPGA-based system by considering the underlying resources and architectural differences. Using our methodology, we have designed, analyzed and presented eight different multi-bit adder architectures. Compared to the 16-bit accurate adder, our designs are successful in achieving area, latency and power-delay product gains of 50%, 38%, and 53%, respectively. We also compare our approximate adders to state-of-the-art approximate adders specialized for ASIC and FPGA fabrics and demonstrate the benefits of our approach. We will make the RTL and behavioral models of our and state-of-the-art designs open-source at https://sourceforge.net/projects/approxfpgas/ to further fuel the research and development in the FPGA community and to ensure reproducible research.
机译:当前的最先进的近似加法器主要是基于ASIC的,即,​​它们仅关注栅极和/或晶体管电平近似(例如,通过电路简化或截断)以实现面积,延迟,功率和/或能量节省精度损失的成本。然而,当这些设计被用于基于FPGA的系统时,由于ASIC和FPGA之间的潜在架构差异,它们不会提供相似的区域,延迟和功率/能量的降低。在本文中,我们通过考虑基础资源和架构差异,提出了一种新的通用设计方法,以综合任何基于FPGA的系统的近似添加剂。使用我们的方法,我们设计了,分析并呈现了八个不同的多位加法器架构。与16位准确的加法器相比,我们的设计成功地实现了50%,38%和53%的地区,延迟和功率延迟产品增益。我们还将我们的近似加入者与专门用于ASIC和FPGA面料专门的最先进的附加者,并展示了我们方法的好处。我们将使我们和最先进的设计的RTL和行为模型在https://sourceforge.net/projects/approxfpgas/进一步推动FPGA社区的研发,并确保可重复研究。

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