A Fair Task Assignment Strategy for Minimizing Cost in Mobile Crowdsensing

Yujun Liu, Yongjian Yang, E. Wang, Wenbin Liu, Dongming Luan, Xiaoying Sun, Jie Wu
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引用次数: 3

Abstract

Mobile CrowdSensing (MCS) is a promising paradigm that recruits mobile users to cooperatively perform various sensing tasks. When assigning tasks to users, most existing works only consider the fairness of users, i.e., the user's processing ability, with the goal of minimizing the assignment cost. However, in this paper, we argue that it is necessary to not only give full use of all the users' ability to process the tasks (e.g., not exceeding the maximum capacity of each user while also not letting any user idle too long), but also satisfy the assignment frequency of all corresponding tasks (e.g., how many times each task should be assigned within the whole system time) to ensure a long-term, double-fair and stable participatory sensing system. Hence, to solve the task assignment problem which aims to reasonably assign tasks to users with limited task processing ability while ensuring the assignment frequency, we first model the two fairness constraints simultaneously by converting them to user processing queues and task virtual queues, respectively. Then, we propose a Fair Task Assignment Strategy (FTAS) utilizing Lyapunov optimization and we provide the proof of the optimality for the proposed assignment strategy to ensure that there is an upper bound to the total assignment cost and queue backlog. Finally, extensive simulations have been conducted over three real-life mobility traces: Changchun/taxi, Epfl/mobility, and Feeder. The simulation results prove that the proposed strategy can achieve a trade-off between the objective of minimizing the cost and the fairness of tasks and users compared with other baseline approaches.
移动众测中成本最小化的公平任务分配策略
移动群体感知(MCS)是一种很有前途的模式,它招募移动用户合作执行各种感知任务。现有的大多数作品在分配任务给用户时,只考虑用户的公平性,即用户的处理能力,以最小化分配成本为目标。然而,在本文中,我们认为不仅需要充分利用所有用户处理任务的能力(例如,不超过每个用户的最大容量,也不让任何用户空闲太久),而且需要满足所有相应任务的分配频率(例如,每个任务在整个系统时间内应该分配多少次),以确保长期、双公平和稳定的参与式感知系统。因此,为了解决任务分配问题,即在保证分配频率的同时,合理地将任务分配给任务处理能力有限的用户,我们首先将两个公平性约束同时建模,分别将其转化为用户处理队列和任务虚拟队列。然后,我们提出了一种利用Lyapunov优化的公平任务分配策略(FTAS),并提供了所提出的分配策略的最优性证明,以确保总分配成本和队列积压有上界。最后,对三个现实生活中的交通轨迹进行了广泛的模拟:长春/出租车、Epfl/交通和Feeder。仿真结果表明,与其他基准方法相比,该策略能够在成本最小化目标与任务和用户公平性之间实现平衡。
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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