Automatic High-Level Data-Flow Synthesis and Optimization of Polynomial Datapaths Using Functional Decomposition

Computers, IEEE Transactions(2015)

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摘要
This paper concentrates on high-level data-flow optimization and synthesis techniques for datapath intensive designs such as those in Digital Signal Processing (DSP), computer graphics and embedded systems applications, which are modeled as polynomial computations over Z2n1 x Z2n2x . . . x Z2nd to Z2m. Our main contribution in this paper is proposing an optimization method based on functional decomposition of multivariate polynomial in the form of f(x) = g(x) o h(x) + f0 = g(h(x)) + f0 to obtain good building blocks, and vanishing polynomials over Z2m to add/delete redundancy to/from given polynomial functions to extract further common sub-expressions. Experimental results for combinational implementation of the designs have shown an average saving of 38.85 and 18.85 percent in the number of gates and critical path delay, respectively, compared with the state-of-the-art techniques. Regarding the comparison with our previous works, the area and delay are improved by 10.87 and 11.22 percent, respectively. Furthermore, experimental results of sequential implementations have shown an average saving of 39.26 and 34.70 percent in the area and the latency, respectively, compared with the state-of-the-art techniques.
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关键词
data flow computing,mathematics computing,polynomials,dsp,automatic high-level data-flow optimization,automatic high-level data-flow synthesis,computer graphics,datapath intensive designs,digital signal processing,embedded systems applications,functional decomposition,multivariate polynomial,polynomial computations,polynomial datapaths,polynomial functions,high-level synthesis,modulo optimization,polynomial datapath,vanishing polynomial,high level synthesis,algebra,adders
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