A study and Analysis of Energy Consumption of batteries on Embedded Softwares
|International Journal of Computer Science and Engineering|
|© 2017 by SSRG - IJCSE Journal|
|Volume 4 Issue 6|
|Year of Publication : 2017|
|Authors : Y. ShebbirAli|
How to Cite?
Y. ShebbirAli, "A study and Analysis of Energy Consumption of batteries on Embedded Softwares," SSRG International Journal of Computer Science and Engineering , vol. 4, no. 6, pp. 30-35, 2017. Crossref, https://doi.org/10.14445/23488387/IJCSE-V4I6P106
The battery performance is important need in mobile systems and its life has become important constraint. Embedded devices are deploying in critical systems and make sure that energy constraints are satisfied or not with timing constraints also. The battery should not dry before the task completes execution.so to get performance is efficiency the worst-case execution time and energy of task is also important. So here our study is conducting various analysis techniques to estimate the worst-case energy consumption and producing the comparative result analysis.
So here our study is conducting various analysis techniques to estimate the worst-case energy consumption and producing the comparative result analysis.
 V. Tiwari, S. Malik, and A. Wolfe, “Power analysis of embedded software:A first step towards software power minimization,” IEEE Trans. VeryLarge Scale Integr. (VLSI) Syst., vol. 2, no. 4, pp. 437–445, Dec. 1994.
 N. Kavvadias, P. Neofotistos, S. Nikolaidis, K. Kosmatopoulos, andT. Laopoulos, “Measurement analysis of the software-related power consumptionin microprocessors,” IEEE Trans. Instrum. Meas., vol. 53, no. 4,pp. 1106–1112, Aug. 2004.
 T. Laopoulos, P. Neofotistos, K. Kosmatopoulos, and S. Nikolaidis, “Measurementof current variations for the estimation of software-related powerconsumption,” IEEE Trans. Instrum. Meas., vol. 52, no. 4, pp. 1206–1212,Aug. 2003.
 K. Zotos, A. Litke, A. Chatzigeorgiou, S. Nikolaidis, and G. Stephanides,“Energy complexity of software in embedded systems,” in Proc. IASTEDInt. Conf. Autom., Control Appl. (ACIT-ACA), Novosibirsk, Russia,Jun. 20–24, 2005.
 A. Chatzigeorgiou and G. Stephanides, “Energy metric for softwaresystems,” Softw. Qual. J., vol. 10, no. 4, pp. 355– 371, Dec. 2002.
 S. Nikolaidis, N. Kavvadias, T. Laopoulos, L. Bisdounis, and S. Blionas,“Instruction level energy modeling for pipelined processors,” J. Embed.Comput., vol. 1, no. 3, pp. 317–324, Aug. 2005.
 V. Konstantakos, K. Kosmatopoulos, S. Nikolaidis, and T. Laopoulos,“In-chip configuration for monitoring power consumption in microprocessingsystems,” in Proc. IEEE Int. Workshop Intell. Data AcquisitionAdv.Comput. Syst.: Technol. Appl., Sep. 2005, pp. 156–161.
 V. Konstantakos, A. Chatzigeorgiou, S. Nikolaidis, and T. Laopoulos,“Energy consumption estimation in embedded systems,” in Proc. Instrum.Meas. Technol. Conf., Sorrento, Italy, Apr. 2006, pp. 235–238.
 C. Seo, S. Malek, and N. Medvidovic, “A generic approach for estimatingthe energy consumption of component-based distributed systems,”Univ. Southern California, Center Softw. Eng., Los Angeles, CA,Tech. Rep. USC-CSE-2005- 506, Apr. 2005.
 A.-F. Wang, X. Li, T. Lei, and X.-H. Zhou, “Study on methodology ofalgorithms for energy,” Comput. Eng. Appl., vol. 42, no. 29, pp. 100–102,2006. 106.
 A. Muttreja and A. Raghunathan, “Automated energy/performancemacromodeling of embedded software,” IEEE Trans. Comput.-AidedDesignIntegr. Circuits Syst., vol. 26, no. 3, pp. 542–552, Mar. 2007.
 V. S. P. Rapaka and D. Marculescu, “Pre-characterization free, efficient power/performance analysis of embedded and general-purpose softwareapplications,” in Proc. Des., Autom. Test Eur. Conf., Mar. 2003,pp. 504–509.
 F. Menichelli, M. Olivieri, L. Benini, M. Donno, and L. Bisdounis, “Asimulation-based power-aware architecture exploration of a multiprocessorsystem-on-chip design,” in Proc. Des., Autom. Test Eur. Conf. Exhib.,Paris, France, Feb. 2004, vol. 3, pp. 312–317.
 A. Mohsen and R. Hofmann, “Characterizing power consumption anddelay of functional/library components for hardware/software co-designof embedded systems,” in Proc. 15th IEEE Int. Workshop Rapid Syst.Prototyping, Jun. 2004, pp. 45–52.
 L. Sawalha et al. Phase-guided scheduling on single- ISAheterogeneous multicore processors.pages 736 –745, DSD ‟11.
 D. Shelepov et al. HASS: a scheduler for heterogeneous multicoresystems. SIGOPS Oper. Syst. Rev., 43:66–75, 2009.
 T. Sondag and H. Rajan.Phase-based tuning for better utilization ofperformance-asymmetric multicore processors.CGO ‟11, pages11–20.
 S. Srinivasan et al. Heteroscouts: hardware assist for os scheduling inheterogeneouscmps. SIGMETRICS Perform. Eval. Rev., 39:341–342,2011.
 C. Lively, X. Wu, V. Taylor, S. Moore, H.-C. Chang, C.- Y.Su, and K. Cameron, “Power-aware predictive models of hybrid (MPI/OpenMP) scientific applications on multicore systems,” Comput. Sci.-Res. Develop., vol. 27, no. 4, pp. 245–253, 2012.
 Y. Hotta, M. Sato, H. Kimura, S. Matsuoka, T. Boku, and D. Takahashi, “Profile-based optimization of power.