Department of Electrical and Computer Engineering, Clarkson University, Potsdam, NY 13699, USA.
School of Electrical Engineering and Computer Science, University of Ottawa, Ottawa, ON K1N 6N5, Canada.
Sensors (Basel). 2018 May 17;18(5):1593. doi: 10.3390/s18051593.
The Internet of Things (IoT) concept is aiming at being an integral part of the next generation networking services by introducing pervasiveness and ubiquitous interconnectivity of uniquely-identifiable objects. The massive availability of personalized smart devices such as smartphones and wearables enable their penetration into the IoT ecosystem with their built-in sensors, particularly in Mobile Crowd-Sensing (MCS) campaigns. The MCS systems achieve the objectives of the large-scale non-dedicated sensing concept in the IoT if a sufficient number of participants are engaged to the collaborative data acquisition process. Therefore, user recruitment is a key challenge in MCS, which requires effective incentivization of cooperative, truthful and trustworthy users. A grand concern for the participants is the battery drain on the mobile devices. It is a known fact that battery drain in a smartphone is a function of the user activity, which can be modeled under various contexts. With this in mind, we propose a new social activity-aware recruitment policy, namely Sociability-Oriented and Battery-Efficient Recruitment for Mobile Crowd-Sensing (SOBER-MCS). SOBER-MCS uses sociability and the residual power of the participant smartphones as two primary criteria in the selection of participating devices. The former is an indicator of the participant willingness toward sensing campaigns, whereas the latter is used to prioritize personal use over crowd-sensing under critical battery levels. We use sociability profiles that were obtained in our previous work and use those values to simulate the sociability behavior of a large pool of participants in an MCS environment. Through simulations, we show that SOBER-MCS is able to introduce battery savings up to 18.5% while improving user and platform utilities by 12% and 20%, respectively.
物联网 (IoT) 概念旨在通过引入可识别对象的普及性和无处不在的互联性,成为下一代网络服务的一个组成部分。大量个性化智能设备(如智能手机和可穿戴设备)的广泛应用,使它们能够通过内置传感器渗透到物联网生态系统中,特别是在移动众包感知 (MCS) 活动中。如果有足够数量的参与者参与到协作数据采集过程中,MCS 系统就可以实现物联网中大规模非专用感知概念的目标。因此,用户招募是 MCS 中的一个关键挑战,这需要对合作、真实和值得信赖的用户进行有效的激励。参与者非常关注移动设备的电池消耗。众所周知,智能手机的电池消耗是用户活动的一个函数,在各种情况下都可以对其进行建模。考虑到这一点,我们提出了一种新的社交活动感知招募策略,即面向社交性和电池效率的移动众包感知招募(SOBER-MCS)。SOBER-MCS 将社交性和参与者智能手机的剩余电量作为选择参与设备的两个主要标准。前者是参与者对感知活动的意愿的指标,而后者则用于在电池电量临界水平下优先考虑个人使用而不是众包感知。我们使用在之前的工作中获得的社交性配置文件,并使用这些值来模拟 MCS 环境中大量参与者的社交性行为。通过模拟,我们表明 SOBER-MCS 能够在提高用户和平台效用 12%和 20%的同时,节省 18.5%的电池电量。