论文标题

Plumenet:使用卷积LSTM网络进行大规模空气质量预测

PlumeNet: Large-Scale Air Quality Forecasting Using A Convolutional LSTM Network

论文作者

Alléon, Antoine, Jauvion, Grégoire, Quennehen, Boris, Lissmyr, David

论文摘要

本文介绍了能够共同预测损害人们健康的主要污染物浓度的发动机:氮二氧化碳(NO2),臭氧(O3)和颗粒物(PM2.5和PM10)分别是其直径分别低于2.5 UM和10 UM的颗粒)。 预测是在常规网格上进行的(论文中呈现的结果是在欧洲和美国的0.5°分辨率网格中产生的),其架构包括卷积LSTM块。该发动机以最新的空气质量监测站措施,天气预报以及空气质量物理和化学模型(AQPCM)输出供应。该发动机可用于产生长时间范围内的空气质量预测,本文提出的实验表明,4天的预测击败了非常简单的基准。 引擎的一个宝贵优势是它不需要太多的计算能力:预测可以在标准GPU上几分钟内构建。因此,一旦提供了新的空气质量措施(通常每小时),就可以非常频繁地更新它们,这不是AQPCMS传统上用于空气质量预测的情况。 本文所描述的引擎依赖于与羽流实验室在多种产品中部署和使用的预测引擎相同的原理,旨在为个人和企业提供空气质量数据。

This paper presents an engine able to forecast jointly the concentrations of the main pollutants harming people's health: nitrogen dioxyde (NO2), ozone (O3) and particulate matter (PM2.5 and PM10, which are respectively the particles whose diameters are below 2.5 um and 10 um respectively). The forecasts are performed on a regular grid (the results presented in the paper are produced with a 0.5° resolution grid over Europe and the United States) with a neural network whose architecture includes convolutional LSTM blocks. The engine is fed with the most recent air quality monitoring stations measures available, weather forecasts as well as air quality physical and chemical model (AQPCM) outputs. The engine can be used to produce air quality forecasts with long time horizons, and the experiments presented in this paper show that the 4 days forecasts beat very significantly simple benchmarks. A valuable advantage of the engine is that it does not need much computing power: the forecasts can be built in a few minutes on a standard GPU. Thus, they can be updated very frequently, as soon as new air quality measures are available (generally every hour), which is not the case of AQPCMs traditionally used for air quality forecasting. The engine described in this paper relies on the same principles as a prediction engine deployed and used by Plume Labs in several products aiming at providing air quality data to individuals and businesses.

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