Hybrid Heuristics for Optimizing Energy Consumption in Embedded Systems
نویسندگان
چکیده
Memory energy reduction becomes crucial for many embedded systems designers. In this paper, we propose Hybrid Heuristics for memory management which are, to the best of our knowledge, new original alternatives to the best known existing heuristic (BEH ). Our Hybrid Heuristics outperform BEH. In fact, our Hybrid Heuristics manage to consume nearly from 76% up to 98% less memory energy than BEH in different configurations. In addition our Hybrid Heuristics are easy to implement and do not require list sorting (contrary to BEH).
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