TY - JOUR
T1 - A power optimization approach for mixed polarity Reed–Muller logic circuits based on multi-strategy fusion memetic algorithm
AU - Zhang, Mengyu
AU - He, Zhenxue
AU - Wang, Yijin
AU - Zhao, Xiaojun
AU - Zhang, Xiaodan
AU - Xiao, Limin
AU - Wang, Xiang
N1 - Publisher Copyright:
© Zhejiang University Press 2025.
PY - 2025/3
Y1 - 2025/3
N2 - The power optimization of mixed polarity Reed–Muller (MPRM) logic circuits is a classic combinatorial optimization problem. Existing optimization approaches often suffer from slow convergence and a propensity to converge to local optima, limiting their effectiveness in achieving optimal power efficiency. First, we propose a novel multi-strategy fusion memetic algorithm (MFMA). MFMA integrates global exploration via the chimp optimization algorithm with local exploration using the coati optimization algorithm based on the optimal position learning and adaptive weight factor (COA-OLA), complemented by population management through truncation selection. Second, leveraging MFMA, we propose a power optimization approach for MPRM logic circuits that searches for the best polarity configuration to minimize circuit power. Experimental results based on Microelectronics Center of North Carolina (MCNC) benchmark circuits demonstrate significant improvements over existing power optimization approaches. MFMA achieves a maximum power saving rate of 72.30% and an average optimization rate of 43.37%; it searches for solutions faster and with higher quality, validating its effectiveness and superiority in power optimization.
AB - The power optimization of mixed polarity Reed–Muller (MPRM) logic circuits is a classic combinatorial optimization problem. Existing optimization approaches often suffer from slow convergence and a propensity to converge to local optima, limiting their effectiveness in achieving optimal power efficiency. First, we propose a novel multi-strategy fusion memetic algorithm (MFMA). MFMA integrates global exploration via the chimp optimization algorithm with local exploration using the coati optimization algorithm based on the optimal position learning and adaptive weight factor (COA-OLA), complemented by population management through truncation selection. Second, leveraging MFMA, we propose a power optimization approach for MPRM logic circuits that searches for the best polarity configuration to minimize circuit power. Experimental results based on Microelectronics Center of North Carolina (MCNC) benchmark circuits demonstrate significant improvements over existing power optimization approaches. MFMA achieves a maximum power saving rate of 72.30% and an average optimization rate of 43.37%; it searches for solutions faster and with higher quality, validating its effectiveness and superiority in power optimization.
KW - Combinatorial optimization problem
KW - Mixed polarity Reed–Muller (MPRM)
KW - Multi-strategy fusion memetic algorithm (MFMA)
KW - Power optimization
KW - TP331.1
UR - https://www.scopus.com/pages/publications/105002897223
U2 - 10.1631/FITEE.2400513
DO - 10.1631/FITEE.2400513
M3 - 文章
AN - SCOPUS:105002897223
SN - 2095-9184
VL - 26
SP - 415
EP - 426
JO - Frontiers of Information Technology and Electronic Engineering
JF - Frontiers of Information Technology and Electronic Engineering
IS - 3
ER -