Litcius/Paper detail

Adaptive Context-Aware Energy Optimization for Services on Mobile Devices with Use of Machine Learning

Piotr Nawrocki, Bartłomiej Śnieżyński

2020Wireless Personal Communications19 citationsDOIOpen Access PDF

Abstract

Abstract In this paper we present an original adaptive task scheduling system, which optimizes the energy consumption of mobile devices using machine learning mechanisms and context information. The system learns how to allocate resources appropriately: how to schedule services/tasks optimally between the device and the cloud, which is especially important in mobile systems. Decisions are made taking the context into account (e.g. network connection type, location, potential time and cost of executing the application or service). In this study, a supervised learning agent architecture and service selection algorithm are proposed to solve this problem. Adaptation is performed online, on a mobile device. Information about the context, task description, the decision made and its results such as power consumption are stored and constitute training data for a supervised learning algorithm, which updates the knowledge used to determine the optimal location for the execution of a given type of task. To verify the solution proposed, appropriate software has been developed and a series of experiments have been conducted. Results show that as a result of the experience gathered and the learning process performed, the decision module has become more efficient in assigning the task to either the mobile device or cloud resources.

Topics & Concepts

Computer scienceMobile deviceMachine learningScheduleArtificial intelligenceEnergy consumptionAdaptation (eye)Scheduling (production processes)Task (project management)Cloud computingContext (archaeology)Distributed computingOperating systemEcologyEconomicsOpticsBiologyPaleontologyManagementOperations managementPhysicsIoT and Edge/Fog ComputingContext-Aware Activity Recognition SystemsGreen IT and Sustainability