Data Acquisition for Real-Time Decision-Making under Freshness Constraints

Shaohan Hu, Shuochao Yao, Haiming Jin, Yiran Zhao, Yitao Hu, Xiaochen Liu, Nooreddin Naghibolhosseini, Shen Li, Akash Kapoor, William Dron, Lu Su, A. Bar-Noy, Pedro A. Szekely, R. Govindan, Reginald L. Hobbs, T. Abdelzaher
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引用次数: 31

Abstract

The paper describes a novel algorithm for timely sensor data retrieval in resource-poor environments under freshness constraints. Consider a civil unrest, national security, or disaster management scenario, where a dynamic situation evolves and a decision-maker must decide on a course of action in view of latest data. Since the situation changes, so is the best course of action. The scenario offers two interesting constraints. First, one should be able to successfully compute the course of action within some appropriate time window, which we call the decision deadline. Second, at the time the course of action is computed, the data it is based on must be fresh (i.e., within some corresponding validity interval). We call it the freshness constraint. These constraints create an interesting novel problem of timely data retrieval. We address this problem in resource-scarce environments, where network resource limitations require that data objects (e.g., pictures and other sensor measurements pertinent to the decision) generally remain at the sources. Hence, one must decide on (i) which objects to retrieve and (ii) in what order, such that the cost of deciding on a valid course of action is minimized while meeting data freshness and decision deadline constraints. Such an algorithm is reported in this paper. The algorithm is shown in simulation to reduce the cost of data retrieval compared to a host of baselines that consider time or resource constraints. It is applied in the context of minimizing cost of finding unobstructed routes between specified locations in a disaster zone by retrieving data on the health of individual route segments.
基于新鲜度约束的实时决策数据采集
本文提出了一种在新鲜度约束下资源贫乏环境下传感器数据及时检索的新算法。考虑一个内乱、国家安全或灾难管理的场景,其中动态情况不断发展,决策者必须根据最新数据决定行动方针。既然形势在变化,最好的做法也是如此。这个场景提供了两个有趣的约束。首先,人们应该能够在适当的时间窗口内成功地计算出行动的过程,我们称之为决策截止日期。其次,在计算动作过程时,它所基于的数据必须是新鲜的(即,在某个相应的有效间隔内)。我们称之为新鲜度限制。这些约束产生了一个有趣的、新颖的及时数据检索问题。我们在资源稀缺的环境中解决这个问题,其中网络资源限制要求数据对象(例如,图片和其他与决策相关的传感器测量)通常留在源处。因此,必须决定(i)检索哪些对象和(ii)以什么顺序检索,以便在满足数据新鲜度和决策截止日期约束的同时,将决定有效操作过程的成本降至最低。本文报道了这样一种算法。与考虑时间或资源限制的一系列基线相比,该算法在模拟中显示了降低数据检索成本的效果。它适用于通过检索有关单个路线段健康状况的数据,最大限度地减少在灾区指定地点之间查找畅通路线的成本。
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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