Bus-Based Sensor Deployment for Intelligent Sensing Coverage and k-Hop Calibration

IF 2.1 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Hassan Zarrar, Vladimir Dyo
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引用次数: 0

Abstract

Drive-by sensing is a promising concept that employs public transport as a mobile sensing platform to achieve high spatio-temporal coverage for urban sensing tasks. At the same time, the low-cost nature of mobile IoT sensors necessitates their more frequent calibration to ensure data accuracy and reliability. Manual or lab-based calibration of a large number of mobile sensors may no longer be feasible and thus new approaches for automatic calibration are needed. Most prior work on optimal mobile sensor deployment focuses on coverage aspect without considering the sensor calibration. In this study, we present a joint approach for optimising the placement of bus-based sensors for maximising the total unique sensing area and combining the optimal reference sensors geo-placement for maximising k-hop calibrate requirements on the selected routes. A metric-based system developed in our model uses geographical set operations which includes both spatial and temporal joins to quantify the contribution of each bus route and rank them accordingly. We formulate the coverage optimisation problem as a mixed integer linear program (MILP) solve it with a greedy algorithm, and demonstrate this method’s potential using real-world bus-transit data from Toronto, Canada and Manchester, UK. Our approach involves a metric-based system which quantifies each bus route unique coverage contribution for determining an optimal set of bus routes and bus stops for bus-based and reference sensor deployment, to minimise sensor network costs and maximise spatio-temporal coverage. The comparison with a random baseline algorithm indicates that our method outperforms in terms of deployment and coverage efficiency. Our results also include the potential of our weighted method in improving drive-by sensing for air quality monitoring by comparing it with a separate benchmark scheme with different criteria.

基于总线的智能传感覆盖和k-Hop校准传感器部署
行车感应是一个很有前途的概念,它利用公共交通作为移动传感平台,实现城市传感任务的高时空覆盖。同时,移动物联网传感器的低成本特性需要更频繁的校准,以确保数据的准确性和可靠性。大量移动传感器的手动或基于实验室的校准可能不再可行,因此需要新的自动校准方法。以往关于移动传感器优化部署的研究大多集中在覆盖方面,而没有考虑传感器的标定问题。在本研究中,我们提出了一种联合方法来优化基于总线的传感器的放置,以最大限度地提高总唯一传感面积,并结合最佳参考传感器的地理位置,以最大限度地提高所选路线上的k-hop校准要求。在我们的模型中开发的基于度量的系统使用地理集合操作,其中包括空间和时间连接,以量化每条公交路线的贡献并相应地对其进行排名。我们将覆盖优化问题表述为一个混合整数线性规划(MILP),用贪婪算法解决它,并使用来自加拿大多伦多和英国曼彻斯特的真实公交数据证明了这种方法的潜力。我们的方法包括一个基于度量的系统,该系统量化每条公交路线的独特覆盖贡献,以确定一组最佳的公交路线和公交站点,用于基于公交和参考传感器的部署,以最大限度地降低传感器网络成本并最大化时空覆盖。与随机基线算法的比较表明,该方法在部署和覆盖效率方面优于随机基线算法。我们的结果还包括,通过将加权方法与具有不同标准的单独基准方案进行比较,我们的加权方法在改善空气质量监测的驾驶感应方面的潜力。
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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来源期刊
IET Smart Cities
IET Smart Cities Social Sciences-Urban Studies
CiteScore
7.70
自引率
3.20%
发文量
25
审稿时长
21 weeks
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