AI-IoT low-cost pollution-monitoring sensor network to assist citizens with respiratory problems

Abstract

The proliferation and great variety of low-cost air quality (AQ) sensors, combined with their flexibility and energy efficiency, gives an opportunity to integrate them into Wireless Sensor Networks (WSN). However, with these sensors, AQ monitoring poses a significant challenge, as the data collection and analysis process is complex and prone to errors. Although these sensors do not meet the performance requirements for reference regulatory-equivalent monitoring, they can provide informative measurements and more if we can adjust and add further processing to their raw measurements. Therefore, the integration of these sensors aims to facilitate real-time monitoring and achieve a higher spatial and temporal sampling density, particularly in urban areas, where there is a strong interest in providing AQ surveillance services since there is an increase in respiratory/allergic issues among the population. Leveraging a network of low-cost sensors, supported by 5G communications in combination with Artificial Intelligence (AI) techniques (using Convolutional and Deep Neural Networks (CNN and DNN)) to predict 24-h-ahead readings is the goal of this article in order to be able to provide early warnings to the populations of hazards areas. We have evaluated four different neural network architectures: Multi-Linear prediction (with a dense Multi-Linear Neural Network (NN)), Multi-Dense network prediction, Multi-Convolutional network prediction, and Multi-Long Short-Term Memory (LSTM) network prediction. To perform the training of the prediction of the readings, we have prepared a significant dataset that is analyzed and processed for training and testing, achieving an estimation error for most of the predicted parameters of around 7.2% on average, with the best option being the Multi-LSTM network in the forthcoming 24 h. It is worth mentioning that some pollutants achieved lower estimation errors, such as CO2 with 0.1%, PM10 with 2.4% (as well as PM2.5 and PM1.0), and NO2 with 6.7%.

Publication DOI: https://doi.org/10.3390/s23239585
Divisions: College of Engineering & Physical Sciences
College of Engineering & Physical Sciences > School of Computer Science and Digital Technologies
Aston University (General)
Funding Information: This paper is partially funded by Grant PID2021-126823OB-I00, funded by MCIN/AEI/ 10.13039/501100011033; by ERDF, a way of making Europe and the Grant TED2021-131040B-C33, funded by MCIN/AEI/ 10.13039/501100011033 and the European Union NextGenerationEU/P
Additional Information: Copyright © 2023 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Uncontrolled Keywords: air pollution,artificial intelligence,forecasting,IoT,low-cost sensors,LSTM,neural networks,WSN
Publication ISSN: 1424-8220
Last Modified: 18 Apr 2025 07:25
Date Deposited: 11 Apr 2025 09:57
Full Text Link:
Related URLs: https://www.mdp ... 8220/23/23/9585 (Publisher URL)
PURE Output Type: Article
Published Date: 2023-12-03
Accepted Date: 2023-12-01
Authors: Felici-Castell, Santiago
Segura-Garcia, Jaume
Perez-Solano, Juan J.
Fayos-Jordan, Rafael
Soriano-Asensi, Antonio
Alcaraz-Calero, Jose M. (ORCID Profile 0000-0002-2654-7595)

Download

[img]

Version: Published Version

License: Creative Commons Attribution


Export / Share Citation


Statistics

Additional statistics for this record