Title |
Implementation and Optimization of Real-Time Fine-Grained Air Quality Sensing Networks in Smart City |
ID_Doc |
41974 |
Authors |
Hu, ZW; Bai, Z; Bian, KG; Wang, T; Song, LY |
Title |
Implementation and Optimization of Real-Time Fine-Grained Air Quality Sensing Networks in Smart City |
Year |
2019 |
Published |
|
DOI |
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Abstract |
Driven by the increasingly serious air pollution problem, the monitoring of air quality has gained much attention in both theoretical studies and practical implementations. In this paper, we present the implementation and optimization of our own air quality sensing system, which provides real-time and fine-grained air quality map of the monitored area. The objective of our optimization problem is to minimize the average joint error of the established real-time air quality map, which involves data inference for the unmeasured data values. A deep Q-learning solution has been proposed for the power control problem to reasonably plan the sensing tasks of the power-limited sensing devices online. A genetic algorithm has been designed for the location selection problem to efficiently find the suitable locations to deploy a limited number of sensing devices. The performance of the proposed solutions are evaluated by simulations, showing a significant performance gain when adopting both strategies. |
Author Keywords |
Air quality; power efficiency; reinforcement learning; genetic algorithm |
Index Keywords |
Index Keywords |
Document Type |
Other |
Open Access |
Open Access |
Source |
Conference Proceedings Citation Index - Science (CPCI-S) |
EID |
WOS:000492038802043 |
WoS Category |
Engineering, Electrical & Electronic; Telecommunications |
Research Area |
Engineering; Telecommunications |
PDF |
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