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A middleware framework for application-aware and user-specific energy optimization in smart mobile devices
Affiliation:1. Colorado State University, Fort Collins, CO 80523, USA;2. U.S. Department of the Air Force, Roy, UT 84067, UT 84067, USA;3. Woodward, Inc., Fort Collins, CO 80525, USA;1. Institute of Information Science and Technologies (ISTI) of the National Research Council (CNR), via Moruzzi 1, 56124 Pisa, Italy;2. Department of Computer Science, University of Pisa, Largo Pontecorvo 2, 56127 Pisa, Italy;1. State Key Laboratory for Novel Software Technology, Nanjing University, Nanjing, China;2. Department of Computing, The Hong Kong Polytechnic University, Hongkong, China;1. MIS/SIME, ENSIAS, Mohammed V University of Rabat, Morocco;2. MIS/MobiTic, ENSIAS, Mohammed V University of Rabat, Morocco;3. RTSE Research Group, ENSEM/MobiTic, Hassan II University, Casablanca, Morocco;4. L2TI, University of Paris 13, France
Abstract:Mobile battery-operated devices are becoming an essential instrument for business, communication, and social interaction. In addition to the demand for an acceptable level of performance and a comprehensive set of features, users often desire extended battery lifetime. In fact, limited battery lifetime is one of the biggest obstacles facing the current utility and future growth of increasingly sophisticated “smart” mobile devices. This paper proposes a novel application-aware and user-interaction aware energy optimization middleware framework (AURA) for pervasive mobile devices. AURA optimizes CPU and screen backlight energy consumption while maintaining a minimum acceptable level of performance. The proposed framework employs a novel Bayesian application classifier and management strategies based on Markov Decision Processes and Q-Learning to achieve energy savings. Real-world user evaluation studies on Google Android based HTC Dream and Google Nexus One smartphones running the AURA framework demonstrate promising results, with up to 29% energy savings compared to the baseline device manager, and up to 5×savings over prior work on CPU and backlight energy co-optimization.
Keywords:Energy optimization  Smart mobile systems  Pervasive computing  Machine learning  Middleware
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