Adaptive approach in handling human inactivity in computer power management
Human inactivity is handled by adapting the behavioral changes of the users.Human inactivity refers to as unpredictable workload of a complex system that is caused by increments of amount in power consumption and it can be handled automatically without the need to set a fixed time for changing the c...
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Universiti Teknikal Malaysia Melaka
2016
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my.uum.repo.205002017-01-03T03:30:43Z http://repo.uum.edu.my/20500/ Adaptive approach in handling human inactivity in computer power management Candrawati, Ria Hashim, Nor Laily QA75 Electronic computers. Computer science Human inactivity is handled by adapting the behavioral changes of the users.Human inactivity refers to as unpredictable workload of a complex system that is caused by increments of amount in power consumption and it can be handled automatically without the need to set a fixed time for changing the computer state.This is happens due to lack of knowledge in a software system and the software self-adaptation is one approach in dealing with this source of uncertainty. This paper observes human inactivity and Power management policy through the application of reinforcement learning approach in the computer usage and finds that computer power usage can be reduced if the idle period can be intelligently sensed from the user activities. This study introduces Control, Learn and Knowledge model that adapts the Monitor, Analyze, Planning, Execute control loop integrates with Q Learning algorithm to learn human inactivity period to minimize the computer power consumption.An experiment to evaluate this model was conducted using three case studies with same activities. The result show that the proposed model obtained those 5 out of 12 activities shows the power decreasing compared to others Universiti Teknikal Malaysia Melaka 2016 Article PeerReviewed application/pdf en cc_by http://repo.uum.edu.my/20500/1/JTEC%208%208%202016%2065%2069.pdf Candrawati, Ria and Hashim, Nor Laily (2016) Adaptive approach in handling human inactivity in computer power management. Journal of Telecommunication, Electronic and Computer Engineering, 8 (8). pp. 65-69. ISSN 2180-1843 http://journal.utem.edu.my/index.php/jtec/article/view/1321 |
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QA75 Electronic computers. Computer science Candrawati, Ria Hashim, Nor Laily Adaptive approach in handling human inactivity in computer power management |
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Human inactivity is handled by adapting the behavioral changes of the users.Human inactivity refers to as unpredictable workload of a complex system that is caused by increments of amount in power consumption and it can be handled automatically without the need to set a fixed time for changing the computer state.This is happens due to lack of knowledge in a software system and the software self-adaptation is one approach in dealing with this source of uncertainty. This paper observes human inactivity and Power management policy through the application of reinforcement learning approach in the computer usage and finds that computer power usage can be reduced if the idle period can be intelligently sensed from the user activities. This study introduces Control, Learn and Knowledge model that adapts the Monitor, Analyze, Planning, Execute control loop integrates with Q Learning algorithm to learn human inactivity period to minimize the computer power consumption.An experiment to evaluate this model was conducted using three case studies with same activities. The result show that the proposed model obtained those 5 out of 12 activities shows the power decreasing compared to others |
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Article |
author |
Candrawati, Ria Hashim, Nor Laily |
author_facet |
Candrawati, Ria Hashim, Nor Laily |
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Candrawati, Ria |
title |
Adaptive approach in handling human inactivity in computer power management |
title_short |
Adaptive approach in handling human inactivity in computer power management |
title_full |
Adaptive approach in handling human inactivity in computer power management |
title_fullStr |
Adaptive approach in handling human inactivity in computer power management |
title_full_unstemmed |
Adaptive approach in handling human inactivity in computer power management |
title_sort |
adaptive approach in handling human inactivity in computer power management |
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Universiti Teknikal Malaysia Melaka |
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2016 |
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http://repo.uum.edu.my/20500/1/JTEC%208%208%202016%2065%2069.pdf http://repo.uum.edu.my/20500/ http://journal.utem.edu.my/index.php/jtec/article/view/1321 |
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