Mobility and Fault Aware Adaptive Task Offloading in Heterogeneous Mobile Cloud Environments

A. Lakhan, Xiaoping Li
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引用次数: 25

Abstract

Nowadays, Mobile Cloud Computing (MCC) has become a predominant prototype for fetching the benefits of cloud computing to mobile devices’ propinquity. Service availability in addition to performance enhancement and mobility features is a preliminary goal in MCC. This paper proposes a mobility aware adaptive offloading framework, known as Mob-Cloud, which includes a mobile device as a thick client, ad-hoc networking, cloudlet DC, and remote cloud services, to augment the performance and availability of the MCC services. However, the impact of dynamic changes in a mobile content (e.g., network status, bandwidth, latency, and location) for the task offloading model observes through proposing a mobility aware adaptive task offloading algorithm (MATOA), which makes a task offloading decision at runtime on selecting optimal wireless network channels and suitable resources for offloading. In this paper, we are formulating the decision problem, and it is well-known as an NP-hard problem. Nonetheless, MATOA has the following phases for the entire Mob-Cloud model: (i) adaptive offloading decision based on real-time information, (ii) workflow task scheduling phase, (iii) mobility model phase to motivate end-user invoke cloud services seamlessly while roaming, and (iv) faulttolerant phase to deal with failure (either network or node). We carry out actual real-life experiments at the implemented instruments to evaluate the overall performance of the MATOA algorithm. Evaluation results prove that MATOA adopts dynamic changes on offloading decision during run-time, and meet an enormous reduction in the total response time with the improved service availability whilst in comparison with the baseline task offloading strategies.
异构移动云环境下的移动性和故障感知自适应任务卸载
如今,移动云计算(MCC)已经成为将云计算的优势与移动设备结合的主要原型。除了性能增强和移动性特性之外,服务可用性是MCC的初步目标。本文提出了一种移动感知自适应卸载框架,称为Mob-Cloud,它包括作为厚客户端的移动设备、自组织网络、cloudlet DC和远程云服务,以提高MCC服务的性能和可用性。然而,通过提出一种移动感知自适应任务卸载算法(MATOA),观察了移动内容(如网络状态、带宽、延迟和位置)的动态变化对任务卸载模型的影响,该算法在运行时选择最优的无线网络信道和合适的资源进行任务卸载决策。在本文中,我们正在制定决策问题,这是众所周知的np困难问题。尽管如此,MATOA对于整个Mob-Cloud模型有以下阶段:(i)基于实时信息的自适应卸载决策,(ii)工作流任务调度阶段,(iii)移动性模型阶段,以激励最终用户在漫游时无缝调用云服务,以及(iv)容错阶段,以处理故障(网络或节点)。我们在实现的仪器上进行了实际的实验,以评估MATOA算法的整体性能。评估结果表明,与基准任务卸载策略相比,MATOA在运行时采用动态变化的卸载决策,在提高服务可用性的同时,大大缩短了总响应时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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