Optimal Multi-type Sensor Placements in Gaussian Spatial Fields for Environmental Monitoring

Chenxi Sun, Yangwen Yu, V. Li, J. Lam
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引用次数: 4

Abstract

As citizens are increasingly concerned about the surrounding environment, it is important for modern cities to provide sufficient and accurate environmental information to the public for decision making in the era of smart cities. Due to limited budget, we often need to optimize the sensor placement in order to maximize the overall information gain according to certain criteria. Existing work is primarily concerned with single-type sensor placement; however, the environment usually requires accurate measurements of multiple type of environment characteristics. In this paper, we focus on the optimal multi-type sensor placement in Gaussian spatial field for environmental monitoring. We study two representative cases: the one-with-all case when each station is equipped with all types of sensors and the general case when each station is equipped with at least one type of sensor. We propose two greedy algorithms accordingly, each with a provable approximation guarantee. We evaluate the proposed approach via an application in air quality monitoring scenario in Hong Kong and experiment results demonstrate the effectiveness of the proposed approach.
环境监测高斯空间场中多类型传感器的最优配置
随着市民对周围环境的日益关注,在智慧城市时代,为公众提供充足、准确的环境信息以供决策是现代城市的重要组成部分。由于预算有限,我们经常需要根据一定的标准优化传感器的放置,以最大化整体信息增益。现有的工作主要涉及单一类型的传感器放置;然而,环境通常需要对多种类型的环境特征进行精确测量。本文主要研究高斯空间场环境监测中多类型传感器的最优放置。我们研究了两种具有代表性的情况:一种是每个站点配备所有类型的传感器,一种是每个站点至少配备一种类型的传感器。我们提出了两个贪婪算法,每个算法都有一个可证明的近似保证。我们以香港的空气质素监测为例,对建议的方法进行评估,实验结果显示建议的方法是有效的。
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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