832 research outputs found

    Power Consumption Analysis, Measurement, Management, and Issues:A State-of-the-Art Review of Smartphone Battery and Energy Usage

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    The advancement and popularity of smartphones have made it an essential and all-purpose device. But lack of advancement in battery technology has held back its optimum potential. Therefore, considering its scarcity, optimal use and efficient management of energy are crucial in a smartphone. For that, a fair understanding of a smartphone's energy consumption factors is necessary for both users and device manufacturers, along with other stakeholders in the smartphone ecosystem. It is important to assess how much of the device's energy is consumed by which components and under what circumstances. This paper provides a generalized, but detailed analysis of the power consumption causes (internal and external) of a smartphone and also offers suggestive measures to minimize the consumption for each factor. The main contribution of this paper is four comprehensive literature reviews on: 1) smartphone's power consumption assessment and estimation (including power consumption analysis and modelling); 2) power consumption management for smartphones (including energy-saving methods and techniques); 3) state-of-the-art of the research and commercial developments of smartphone batteries (including alternative power sources); and 4) mitigating the hazardous issues of smartphones' batteries (with a details explanation of the issues). The research works are further subcategorized based on different research and solution approaches. A good number of recent empirical research works are considered for this comprehensive review, and each of them is succinctly analysed and discussed

    Beyond 5G Networks: Integration of Communication, Computing, Caching, and Control

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    In recent years, the exponential proliferation of smart devices with their intelligent applications poses severe challenges on conventional cellular networks. Such challenges can be potentially overcome by integrating communication, computing, caching, and control (i4C) technologies. In this survey, we first give a snapshot of different aspects of the i4C, comprising background, motivation, leading technological enablers, potential applications, and use cases. Next, we describe different models of communication, computing, caching, and control (4C) to lay the foundation of the integration approach. We review current state-of-the-art research efforts related to the i4C, focusing on recent trends of both conventional and artificial intelligence (AI)-based integration approaches. We also highlight the need for intelligence in resources integration. Then, we discuss integration of sensing and communication (ISAC) and classify the integration approaches into various classes. Finally, we propose open challenges and present future research directions for beyond 5G networks, such as 6G.Comment: This article has been accepted for inclusion in a future issue of China Communications Journal in IEEE Xplor

    A Framework for Energy-efficient Mobile Cloud Offloading

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    Esilekerkivad nutitelefonide tehnoloogiad on kogenud geomeetrilist kasvu ja on praegu veel tĂ”usuteel. Inimesed kasutavad nutitelefone oma igapĂ€evastes tegevustes nagu e-maili saatmine, fotode ja videode jagamine lĂ€bi erinevate peer-to-peersotsiaalvĂ”rgustiku jaoturite ja nii edasi. Viimastel aastatel on nutitelefonid kogenud suuri tehnoloogilisi edusamme ja innovatsiooni seoses töötlusvĂ”imekusega ja saab nĂŒĂŒd kasutada keerukate ja ressursimahukate ĂŒlesannete tĂ€itmiseks rakendustes, nĂ€iteks videode monteerimine ja töötlemine ning objekti Ă€ratundmine. Kuigi enamus nutitelefone on oluliselt tĂ€iustatud, et hakkama saada suurendatud rakendustega, millel on keerukad arvutusvajadused, piiravad neid ikkagi nende energiavarud, nĂ€iteks aku kestvus. Akutehnoloogia ei ole arenenud nii kiirelt kui teised nutitelefoni valdkonnad ja seega arvutusintensiivsete ĂŒlesannete lĂ€biviimine pĂ”hjustaks selle kiire kahanemise; tĂ”estuseks vajadus pidevalt laadida seadme akut. Mitmeid meetodeid on pakutud vĂ€lja energiasÀÀstu maksimeerimiseks mobiilsetel seadmetel. MĂ”ned neist aeglustavad keskprotsessor vĂ”i lĂŒlitavad ekraani vĂ€lja, kui on tegevusetud. Nende hulgast kĂ”ige mĂ€rkimisvÀÀrsem tehnika nutitelefoni energia sÀÀstmiseks on arvutusvĂ”imsuse koormuse jaotamine. See hĂ”lmab teatud ĂŒlesannete töötluse ĂŒleviimist piiratud ressurssidega nutitelefonist kaugesse ressursirikkasse seadmesse hĂ”lbustades seega nutitelefoni energia tarbimist. See on kĂŒllaltki lai uurimisvaldkond ja on hulganisti panustatud selle ala arendamiseks. Sellele vaatamata on veel palju tööd vaja teha seoses energia sÀÀstmisega lĂ€bi arvutusvĂ”imsuse koormuse jaotamise korduva ressursimahuka töötlemise ajal. Selles teadusuuringus on me eesmĂ€rk vĂ€hendada energia tarbimist korduva energiamahuka töötlemise ajal. Me arvestame konteksti teadlikkust pakkudes vĂ€lja plaanuri mudelit, mis saaks vĂ€hendada mobiilse seadme energia kiiret vĂ€henemist seega saavutades meie eesmĂ€rgi. Pakume teenusele orienteeritud raamistikku eesmĂ€rgiga vĂ”imaldada energiatĂ”husa ĂŒlesande tĂ€itmist mobiilsel seadmel plaanuri kĂ€itumisalgoritmi abil. Me arendame kontseptsiooni tĂ”estuse prototĂŒĂŒpi Android seadmel, et demonstreerida ja hinnata raamistiku energiasÀÀstu vĂ”imekust.Emerging smartphone technologies has experienced a geometric increase and is currently still on the rise. People use the smartphone for their day-to-day activities such as sending emails, sharing photos and videos through various peer-to-peer social network hubs and so on. In the last few years, the smartphone has experienced massive technological advancements and innovation with respect to its processing capabilities and can now be used to perform complex, resource-intensive tasks in advanced applications like video editing and processing, and object recognition. Although most smartphones have been greatly augmented to handle advanced applications with complex computational needs, they are still limited in terms of their energy resources i.e. battery life. Battery technology has not evolved as rapidly as other areas of the smartphone and so the execution of computational-intensive tasks would cause its rapid depletion; evidenced by the need to constantly charge the device battery. Many techniques have been proffered to maximize energy conservation on mobile devices. Some of which are slowing down the CPU, or shutting off the screen when idle. Among these, the most notable technique for conserving smartphone energy is computation offloading. This basically involves the transfer of the processing of certain tasks from a resource-constrained smartphone to a remote, resource-rich device thereby facilitating energy conservation on the smartphone. This is a fairly large research area and numerous contributions have been made towards advancement in this field. However, much work is yet to be done with regards to energy conservation through offloading during recurrent resource-intensive processing. In this research study we aim to reduce energy consumption during continuous, energy-intensive processing. We consider context-awareness in proposing a scheduling model that could potentially minimize the speedy depletion of mobile device energy thus achieving our aim. We propose a service-oriented framework towards enabling energy-optimal task execution through a task scheduling offload algorithm. We develop a proof-of-concept prototype on an Android device to demonstrate and evaluate the framework’s energy conserving capabilities

    Multisite adaptive computation offloading for mobile cloud applications

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    The sheer amount of mobile devices and their fast adaptability have contributed to the proliferation of modern advanced mobile applications. These applications have characteristics such as latency-critical and demand high availability. Also, these kinds of applications often require intensive computation resources and excessive energy consumption for processing, a mobile device has limited computation and energy capacity because of the physical size constraints. The heterogeneous mobile cloud environment consists of different computing resources such as remote cloud servers in faraway data centres, cloudlets whose goal is to bring the cloud closer to the users, and nearby mobile devices that can be utilised to offload mobile tasks. Heterogeneity in mobile devices and the different sites include software, hardware, and technology variations. Resource-constrained mobile devices can leverage the shared resource environment to offload their intensive tasks to conserve battery life and improve the overall application performance. However, with such a loosely coupled and mobile device dominating network, new challenges and problems such as how to seamlessly leverage mobile devices with all the offloading sites, how to simplify deploying runtime environment for serving offloading requests from mobile devices, how to identify which parts of the mobile application to offload and how to decide whether to offload them and how to select the most optimal candidate offloading site among others. To overcome the aforementioned challenges, this research work contributes the design and implementation of MAMoC, a loosely coupled end-to-end mobile computation offloading framework. Mobile applications can be adapted to the client library of the framework while the server components are deployed to the offloading sites for serving offloading requests. The evaluation of the offloading decision engine demonstrates the viability of the proposed solution for managing seamless and transparent offloading in distributed and dynamic mobile cloud environments. All the implemented components of this work are publicly available at the following URL: https://github.com/mamoc-repo

    Extending the battery life of mobile device by computation offloading

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    Doctor of PhilosophyComputing and Information SciencesDaniel A. AndresenThe need for increased performance of mobile device directly conflicts with the desire for longer battery life. Offloading computation to resourceful servers is an effective method to reduce energy consumption and enhance performance for mobile applications. Today, most mobile devices have fast wireless link such as 4G and Wi-Fi, making computation offloading a reasonable solution to extend battery life of mobile device. Android provides mechanisms for creating mobile applications but lacks a native scheduling system for determining where code should be executed. We present Jade, a system that adds sophisticated energy-aware computation offloading capabilities to Android applications. Jade monitors device and application status and automatically decides where code should be executed. Jade dynamically adjusts offloading strategy by adapting to workload variation, communication costs, and device status. Jade minimizes the burden on developers to build applications with computation offloading ability by providing easy-to-use Jade API. Evaluation shows that Jade can effectively reduce up to 37% of average power consumption for mobile device while improving application performance

    Teenustele orienteeritud ja tÔendite-teadlik mobiilne pilvearvutus

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    Arvutiteaduses on kaks kĂ”ige suuremat jĂ”udu: mobiili- ja pilvearvutus. Kui pilvetehnoloogia pakub kasutajale keerukate ĂŒlesannete lahendamiseks salvestus- ning arvutusplatvormi, siis nutitelefon vĂ”imaldab lihtsamate ĂŒlesannete lahendamist mistahes asukohas ja mistahes ajal. TĂ€psemalt on mobiilseadmetel vĂ”imalik pilve vĂ”imalusi Ă€ra kasutades energiat sÀÀsta ning jagu saada kasvavast jĂ”udluse ja ruumi vajadusest. Sellest tulenevalt on kĂ€esoleva töö peamiseks kĂŒsimuseks kuidas tuua pilveinfrastruktuur mobiilikasutajale lĂ€hemale? Antud töös uurisime kuidas mobiiltelefoni pilveteenust saab mobiilirakendustesse integreerida. Saime teada, et töö delegeerimine pilve eeldab mitmete pilve aspektide kaalumist ja integreerimist, nagu nĂ€iteks ressursimahukas töötlemine, asĂŒnkroonne suhtlus kliendiga, programmaatiline ressursside varustamine (Web APIs) ja pilvedevaheline kommunikatsioon. Nende puuduste ĂŒletamiseks lĂ”ime Mobiilse pilve vahevara Mobile Cloud Middleware (Mobile Cloud Middleware - MCM) raamistiku, mis kasutab deklaratiivset teenuste komponeerimist, et delegeerida töid mobiililt mitmetele pilvedele kasutades minimaalset andmeedastust. Teisest kĂŒljest on nĂ€idatud, et koodi teisaldamine on peamisi strateegiaid seadme energiatarbimise vĂ€hendamiseks ning jĂ”udluse suurendamiseks. Sellegipoolest on koodi teisaldamisel miinuseid, mis takistavad selle laialdast kasutuselevĂ”ttu. Selles töös uurime lisaks, mis takistab koodi mahalaadimise kasutuselevĂ”ttu ja pakume lahendusena vĂ€lja raamistiku EMCO, mis kogub seadmetelt infot koodi jooksutamise kohta erinevates kontekstides. Neid andmeid analĂŒĂŒsides teeb EMCO kindlaks, mis on sobivad tingimused koodi maha laadimiseks. VĂ”rreldes kogutud andmeid, suudab EMCO jĂ€reldada, millal tuleks mahalaadimine teostada. EMCO modelleerib kogutud andmeid jaotuse mÀÀra jĂ€rgi lokaalsete- ning pilvejuhtude korral. Neid jaotusi vĂ”rreldes tuletab EMCO tĂ€psed atribuudid, mille korral mobiilirakendus peaks koodi maha laadima. VĂ”rreldes EMCO-t teiste nĂŒĂŒdisaegsete mahalaadimisraamistikega, tĂ”useb EMCO efektiivsuse poolest esile. LĂ”puks uurisime kuidas arvutuste maha laadimist Ă€ra kasutada, et tĂ€iustada kasutaja kogemust pideval mobiilirakenduse kasutamisel. Meie peamiseks motivatsiooniks, et sellist adaptiivset tööde tĂ€itmise kiirendamist pakkuda, on tagada kasutuskvaliteet (QoE), mis muutub vastavalt kasutajale, aidates seelĂ€bi suurendada mobiilirakenduse eluiga.Mobile and cloud computing are two of the biggest forces in computer science. While the cloud provides to the user the ubiquitous computational and storage platform to process any complex tasks, the smartphone grants to the user the mobility features to process simple tasks, anytime and anywhere. Smartphones, driven by their need for processing power, storage space and energy saving are looking towards remote cloud infrastructure in order to solve these problems. As a result, the main research question of this work is how to bring the cloud infrastructure closer to the mobile user? In this thesis, we investigated how mobile cloud services can be integrated within the mobile apps. We found out that outsourcing a task to cloud requires to integrate and consider multiple aspects of the clouds, such as resource-intensive processing, asynchronous communication with the client, programmatically provisioning of resources (Web APIs) and cloud intercommunication. Hence, we proposed a Mobile Cloud Middleware (MCM) framework that uses declarative service composition to outsource tasks from the mobile to multiple clouds with minimal data transfer. On the other hand, it has been demonstrated that computational offloading is a key strategy to extend the battery life of the device and improves the performance of the mobile apps. We also investigated the issues that prevent the adoption of computational offloading, and proposed a framework, namely Evidence-aware Mobile Computational Offloading (EMCO), which uses a community of devices to capture all the possible context of code execution as evidence. By analyzing the evidence, EMCO aims to determine the suitable conditions to offload. EMCO models the evidence in terms of distributions rates for both local and remote cases. By comparing those distributions, EMCO infers the right properties to offload. EMCO shows to be more effective in comparison with other computational offloading frameworks explored in the state of the art. Finally, we investigated how computational offloading can be utilized to enhance the perception that the user has towards an app. Our main motivation behind accelerating the perception at multiple response time levels is to provide adaptive quality-of-experience (QoE), which can be used as mean of engagement strategy that increases the lifetime of a mobile app

    Design Space Exploration and Resource Management of Multi/Many-Core Systems

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    The increasing demand of processing a higher number of applications and related data on computing platforms has resulted in reliance on multi-/many-core chips as they facilitate parallel processing. However, there is a desire for these platforms to be energy-efficient and reliable, and they need to perform secure computations for the interest of the whole community. This book provides perspectives on the aforementioned aspects from leading researchers in terms of state-of-the-art contributions and upcoming trends

    Resource Management for Edge Computing in Internet of Things (IoT)

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    Die große Anzahl an GerĂ€ten im Internet der Dinge (IoT) und deren kontinuierliche Datensammlungen fĂŒhren zu einem rapiden Wachstum der gesammelten Datenmenge. Die Daten komplett mittels zentraler Cloud Server zu verarbeiten ist ineffizient und zum Teil sogar unmöglich oder unnötig. Darum wird die Datenverarbeitung an den Rand des Netzwerks verschoben, was zu den Konzepten des Edge Computings gefĂŒhrt hat. Informationsverarbeitung nahe an der Datenquelle (z.B. auf Gateways und Edge GerĂ€ten) reduziert nicht nur die hohe Arbeitslast zentraler Server und Netzwerke, sondern verringer auch die Latenz fĂŒr Echtzeitanwendungen, da die potentiell unzuverlĂ€ssige Kommunikation zu Cloud Servern mit ihrer unvorhersehbaren Netzwerklatenz vermieden wird. Aktuelle IoT Architekturen verwenden Gateways, um anwendungsspezifische Verbindungen zu IoT GerĂ€ten herzustellen. In typischen Konfigurationen teilen sich mehrere IoT Edge GerĂ€te ein IoT Gateway. Wegen der begrenzten verfĂŒgbaren Bandbreite und RechenkapazitĂ€t eines IoT Gateways muss die ServicequalitĂ€t (SQ) der verbundenen IoT Edge GerĂ€te ĂŒber die Zeit angepasst werden. Nicht nur um die Anforderungen der einzelnen Nutzer der IoT GerĂ€te zu erfĂŒllen, sondern auch um die SQBedĂŒrfnisse der anderen IoT Edge GerĂ€te desselben Gateways zu tolerieren. Diese Arbeit untersucht zuerst essentielle Technologien fĂŒr IoT und existierende Trends. Dabei werden charakteristische Eigenschaften von IoT fĂŒr die Embedded DomĂ€ne, sowie eine umfassende IoT Perspektive fĂŒr Eingebettete Systeme vorgestellt. Mehrere Anwendungen aus dem Gesundheitsbereich werden untersucht und implementiert, um ein Model fĂŒr deren Datenverarbeitungssoftware abzuleiten. Dieses Anwendungsmodell hilft bei der Identifikation verschiedener Betriebsmodi. IoT Systeme erwarten von den Edge GerĂ€ten, dass sie mehrere Betriebsmodi unterstĂŒtzen, um sich wĂ€hrend des Betriebs an wechselnde Szenarien anpassen zu können. Z.B. Energiesparmodi bei geringen Batteriereserven trotz gleichzeitiger Aufrechterhaltung der kritischen FunktionalitĂ€t oder einen Modus, um die ServicequalitĂ€t auf Wunsch des Nutzers zu erhöhen etc. Diese Modi verwenden entweder verschiedene Auslagerungsschemata (z.B. die ĂŒbertragung von Rohdaten, von partiell bearbeiteten Daten, oder nur des finalen Ergebnisses) oder verschiedene ServicequalitĂ€ten. Betriebsmodi unterscheiden sich in ihren Ressourcenanforderungen sowohl auf dem GerĂ€t (z.B. Energieverbrauch), wie auch auf dem Gateway (z.B. Kommunikationsbandbreite, Rechenleistung, Speicher etc.). Die Auswahl des besten Betriebsmodus fĂŒr Edge GerĂ€te ist eine Herausforderung in Anbetracht der begrenzten Ressourcen am Rand des Netzwerks (z.B. Bandbreite und Rechenleistung des gemeinsamen Gateways), diverser Randbedingungen der IoT Edge GerĂ€te (z.B. Batterielaufzeit, ServicequalitĂ€t etc.) und der LaufzeitvariabilitĂ€t am Rand der IoT Infrastruktur. In dieser Arbeit werden schnelle und effiziente Auswahltechniken fĂŒr Betriebsmodi entwickelt und prĂ€sentiert. Wenn sich IoT GerĂ€te in der Reichweite mehrerer Gateways befinden, ist die Verwaltung der gemeinsamen Ressourcen und die Auswahl der Betriebsmodi fĂŒr die IoT GerĂ€te sogar noch komplexer. In dieser Arbeit wird ein verteilter handelsorientierter GerĂ€teverwaltungsmechanismus fĂŒr IoT Systeme mit mehreren Gateways prĂ€sentiert. Dieser Mechanismus zielt auf das kombinierte Problem des Bindens (d.h. ein Gateway fĂŒr jedes IoT GerĂ€t bestimmen) und der Allokation (d.h. die zugewiesenen Ressourcen fĂŒr jedes GerĂ€t bestimmen) ab. Beginnend mit einer initialen Konfiguration verhandeln und kommunizieren die Gateways miteinander und migrieren IoT GerĂ€te zwischen den Gateways, wenn es den Nutzen fĂŒr das Gesamtsystem erhöht. In dieser Arbeit werden auch anwendungsspezifische Optimierungen fĂŒr IoT GerĂ€te vorgestellt. Drei Anwendungen fĂŒr den Gesundheitsbereich wurden realisiert und fĂŒr tragbare IoT GerĂ€te untersucht. Es wird auch eine neuartige Kompressionsmethode vorgestellt, die speziell fĂŒr IoT Anwendungen geeignet ist, die Bio-Signale fĂŒr GesundheitsĂŒberwachungen verarbeiten. Diese Technik reduziert die zu ĂŒbertragende Datenmenge des IoT GerĂ€tes, wodurch die Ressourcenauslastung auf dem GerĂ€t und dem gemeinsamen Gateway reduziert wird. Um die vorgeschlagenen Techniken und Mechanismen zu evaluieren, wurden einige Anwendungen auf IoT Plattformen untersucht, um ihre Parameter, wie die AusfĂŒhrungszeit und Ressourcennutzung, zu bestimmen. Diese Parameter wurden dann in einem Rahmenwerk verwendet, welches das IoT Netzwerk modelliert, die Interaktion zwischen GerĂ€ten und Gateway erfasst und den Kommunikationsoverhead sowie die erreichte Batterielebenszeit und ServicequalitĂ€t der GerĂ€te misst. Die Algorithmen zur Auswahl der Betriebsmodi wurden zusĂ€tzlich auf IoT Plattformen implementiert, um ihre Overheads bzgl. AusfĂŒhrungszeit und Speicherverbrauch zu messen
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