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LOST: A Location Estimator Scheme for PM2.5 Pollution Sources in Sparse Sensors Network

机译:丢失:稀疏传感器网络中PM2.5污染源的位置估计方案

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To protect people from hazardous pollution exposure, mainly Particulate Matter of diameter 2.5 microns or less (PM2.5), countries continuously monitors the air quality via air quality monitors and internet of things based sensors. However, these monitors and sensors are deployed at sparse locations that pose the challenge of estimating the location of the PM2.5 pollution sources. To cope with this challenge, we propose a location estimator (LOST) scheme, which locates PM2.5 pollution sources in a sparsely deployed sensors environment. LOST efficiently models the spatio-temporal dispersion of PM2.5 of each pollution source, which enables LOST to compute the strength of the surrounding sensors based on the wind direction and sensors-source proximity. LOST utilizes a robust approach to backtrack the PM2.5 pollution sources via the weighted spatiotemporal strength of sensors' PM2.5 concentration. Compared to the state-of-the-art estimation schemes for source location, LOST shows improved performance. Our experiments show that, on average, LOST, attains higher closeness and lower failure ratio by more than 16.2% and 6.5%, respectively.
机译:为了保护人们免受有害污染曝光,直径为2.5微米或更小(PM2.5)的主要颗粒物,国家连续监测通过空气质量监测和基于物联网的传感器的空气质量。但是,这些显示器和传感器在该姿势估计的PM2.5污染源的位置的挑战稀疏位置部署。为了应对这一挑战,我们提出了一个位置估计(LOST)方案,它座落在一个人烟稀少部署的传感器环境PM2.5污染源。有效地LOST模型各污染源,这使得能够LOST来计算基于所述风向和传感器源接近周边传感器的强度的PM2.5的时空分散体。 LOST利用可靠的方法通过传感器PM2.5浓度的加权时空强度回溯PM2.5的污染源。相比为源位置的状态的最先进的估计方案,LOST显示改进的性能。我们的实验显示,平均而言,LOST,获更高亲密和由分别大于16.2%和6.5%,降低故障率。

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