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

06/14/2020
by   Antoine Alléon, et al.
10

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.

READ FULL TEXT

page 2

page 6

research
10/06/2021

PlumeCityNet: Multi-Resolution Air Quality Forecasting

This paper presents an engine able to forecast jointly the concentration...
research
02/14/2020

DeepPlume: Very High Resolution Real-Time Air Quality Mapping

This paper presents an engine able to predict jointly the real-time conc...
research
03/23/2023

Forecast-Aware Model Driven LSTM

Poor air quality can have a significant impact on human health. The Nati...
research
09/23/2020

Dense Forecasting of Wildfire Smoke Particulate Matter Using Sparsity Invariant Convolutional Neural Networks

Accurate forecasts of fine particulate matter (PM 2.5) from wildfire smo...
research
12/06/2019

A Model-driven and Data-driven Fusion Framework for Accurate Air Quality Prediction

Air quality is closely related to public health. Health issues such as c...
research
01/05/2021

Adversarially trained LSTMs on reduced order models of urban air pollution simulations

This paper presents an approach to improve computational fluid dynamics ...
research
08/04/2022

Tokyo Kion-On: Query-Based Generative Sonification of Atmospheric Data

Amid growing environmental concerns, interactive displays of data consti...

Please sign up or login with your details

Forgot password? Click here to reset