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预算约束下移动人群感知中的覆盖平衡用户选择

Coverage-Balancing User Selection in Mobile Crowd Sensing with Budget Constraint.

作者信息

Wang Yanan, Sun Guodong, Ding Xingjian

机构信息

School of Information Science and Technology, Beijing Forestry University, Beijing 100083, China.

Department of Computer Science, Renmin University, Beijing 100072, China.

出版信息

Sensors (Basel). 2019 May 23;19(10):2371. doi: 10.3390/s19102371.

Abstract

Mobile crowd sensing (MCS) is a new computing paradigm for the internet of things, and it is widely accepted as a powerful means to achieve urban-scale sensing and data collection. In the MCS campaign, the smart mobilephone users can detect their surrounding environments with their on-phone sensors and return the sensing data to the MCS organizer. In this paper, we focus on the coverage-balancing user selection (CBUS) problem with a budget constraint. Solving the CBUS problem aims to select a proper subset of users such that their sensing coverage is as large and balancing as possible, yet without violating the budget specified by the MCS campaign. We first propose a novel coverage balance-based sensing utility model, which effectively captures the joint requirement of the MCS requester for coverage area and coverage balance. We then formally define the CBUS problem under the proposed sensing utility model. Because of the NP-hardness of the CBUS problem, we design a heuristic-based algorithm, called MIA, which tactfully employs the maximum independent set model to determine a preliminary subset of users from all the available users and then adjusts this user subset to improve the budget implementation. MIA also includes a fast approach to calculating the area of the union coverage with any complicated boundaries, which is also applicable to any MCS scenarios that are set up with the coverage area-based sensing utility. The extensive numeric experiments show the efficacy of our designs both in coverage balance and in the total coverage area.

摘要

移动人群感知(MCS)是物联网的一种新的计算范式,被广泛认为是实现城市规模感知和数据收集的有力手段。在MCS活动中,智能移动电话用户可以使用手机上的传感器检测周围环境,并将感知数据返回给MCS组织者。在本文中,我们关注具有预算约束的覆盖平衡用户选择(CBUS)问题。解决CBUS问题旨在选择适当的用户子集,使其感知覆盖范围尽可能大且平衡,同时不违反MCS活动指定的预算。我们首先提出了一种基于覆盖平衡的新型感知效用模型,该模型有效地捕捉了MCS请求者对覆盖区域和覆盖平衡的联合需求。然后,我们在所提出的感知效用模型下正式定义了CBUS问题。由于CBUS问题的NP难性,我们设计了一种基于启发式的算法,称为MIA,该算法巧妙地采用最大独立集模型从所有可用用户中确定用户的初步子集,然后调整该用户子集以提高预算执行情况。MIA还包括一种快速方法来计算具有任何复杂边界的联合覆盖区域的面积,这也适用于任何基于覆盖区域的感知效用设置的MCS场景。广泛的数值实验表明了我们的设计在覆盖平衡和总覆盖区域方面的有效性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/47b4/6566162/b48fa09b106d/sensors-19-02371-g001.jpg

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