Multiplier-less and table-less linear approximation for square and square-root

I. Park, Tae-Hwan Kim
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引用次数: 14

Abstract

Square and square-root are widely used in digital signal processing and digital communication algorithms, and their efficient realizations are commonly required to reduce the hardware complexity. In the implementation point of view, approximate realizations are often desired if they do not degrade performance significantly. In this paper, we propose new linear approximations for the square and square-root functions. The traditional linear approximations need multipliers to calculate slope offsets and tables to store initial offset values and slope values, whereas the proposed approximations exploit the inherent properties of square-related functions to linearly interpolate with only simple operations, such as shift, concatenation and addition, which are usually supported in modern VLSI systems. Regardless of the bit-width of the number system, more importantly, the maximum relative errors of the proposed approximations are bounded to 6.25% and 3.13% for square and square-root functions, respectively.
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平方和平方根的无乘数和无表线性近似
平方根和平方根在数字信号处理和数字通信算法中有着广泛的应用,为了降低硬件复杂度,通常需要它们的高效实现。从实现的角度来看,如果近似实现不会显著降低性能,则通常需要近似实现。在本文中,我们提出了新的平方根和平方根函数的线性近似。传统的线性近似需要乘法器来计算斜率偏移量,并需要表格来存储初始偏移值和斜率值,而所提出的近似利用了平方相关函数的固有特性,只需简单的操作就可以进行线性插值,例如移位、连接和加法,这些操作通常在现代VLSI系统中得到支持。不管数字系统的位宽如何,更重要的是,对于平方根函数和平方根函数,所提出的近似的最大相对误差分别被限制在6.25%和3.13%。
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