[1] NIELSEN L S, NIESSEN C, SPARSO J, et al. Low-power operation using self-timed circuits and adaptive scaling of the supply voltage[J]. IEEE Transactions on Very Large Scale Integration Systems, 1994, 2(4):391-397. [2] BURD T D, PERING T A, STRATAKOS A J, et al. A dynamic voltage scaled microprocessor system[J]. IEEE Journal of Solid-State Circuits, 2000, 35(11):1571-1580. [3] NOWKA K J, CARPENTER G D, MACDONALD E W, et al. A 32-bit powerpc system-on-a-chip with support for dynamic voltage scaling and dynamic frequency scaling[J]. IEEE Journal of Solid-State Circuits, 2002, 37(11):1441-1447. [4] SEO E, JEONG J, PARK S, et al. Energy efficient scheduling of real-time tasks on multicore processors[J]. IEEE Transactions on Parallel and Distributed Systems, 2008, 19(11):1540-1552. [5] LI K. Performance analysis of power-aware task scheduling algorithms on multiprocessor computers with dynamic voltage and speed[J]. IEEE Transactions on Parallel and Distributed Systems, 2008, 19(11):1484-1497. [6] MANUMACHU R R, LASTOVETSKY A. Bi-objective optimization of data-parallel applications on homogeneous multicore clusters for performance and energy[J]. IEEE Transactions on Computers, 2018, 67(2):160-177. [7] LI Y, NIU J, ATIQUZZAMAN M, et al. Energy-aware scheduling on heterogeneous multi-core systems with guaranteed probability[J]. Journal of Parallel and Distributed Computing, 2017, 103:64-76. [8] PAGANI S, PATHANIA A, SHAFIQUE M, et al. Energy efficiency for clustered heterogeneous multicores[J]. IEEE Transactions on Parallel and Distributed Systems, 2017, 28(5):1315-1330. [9] CHENG D, ZHOU X, LAMA P, et al. Energy efficiency aware task assignment with DVFS in heterogeneous Hadoop clusters[J]. IEEE Transactions on Parallel and Distributed Systems, 2018, 29(1):70-82. [10] ZHOU J, YAN J, CAO K, et al. Thermal-aware correlated two-level scheduling of real-time tasks with reduced processor energy on heterogeneous MPSoCs[J]. Journal of Systems Architecture, 2018, 82:1-11. [11] SUN W, SUGAWARA T. Heuristics and evaluations of energy-aware task mapping on heterogeneous multiprocessors[C]//Proceedings of the 2011 IEEE International Symposium on Parallel and Distributed Processing Workshops and PhD Forum. Piscataway:IEEE, 2011:599-607. [12] IZAKIAN H, ABRAHAM A, SNASEL V. Comparison of heuristics for scheduling independent tasks on heterogeneous distributed environments[C]//Proceedings of the 2009 International Joint Conference on Computational Sciences and Optimization. Piscataway:IEEE, 2009:8-12. [13] XU C, XIAO J, ZENG L, et al. An energy-aware dynamic algorithm based on variable interval DVFS technology[J]. Advanced Materials Research, 2014, 950:185-195. [14] THAMMAWICHAI M, KERRIGAN E C. Energy-efficient real-time scheduling for two-type heterogeneous multiprocessors[J]. Real-Time Systems, 2018, 54(1):132-165. [15] LI D, WU J. Minimizing energy consumption for frame-based tasks on heterogeneous multiprocessor platforms[J]. IEEE Transactions on Parallel and Distributed Systems, 2015, 26(3):810-823. [16] ALBERS S, ANTONIADIS A, GREINER G. On multi-processor speed scaling with migration[J]. Journal of Computer and System Sciences, 2015, 81(7):1194-1209. [17] ANGEL E, BAMPIS E, KACEM F, et al. Speed scaling on parallel processors with migration[C]//Proceedings of the 18th International Conference of Parallel Processing, LNCS 7484. Berlin:Springer, 2012:128-140. [18] KHAN A A, ALI A, ZAKARYA M, et al. A migration aware scheduling technique for real-time aperiodic tasks over multiprocessor systems[J]. IEEE Access, 2019, 7:27856-27873. |