Abstract

Airborne particulate matter 2.5 (PM2.5) can have a profound effect on the health of the population. Many researchers have been reporting highly accurate numerical predictions based on raw PM2.5 data imported directly into deep learning models; however, there is still considerable room for improvement in terms of implementation costs due to heavy computational overhead. From the perspective of environmental science, PM2.5 values in a given location can be attributed to local sources as well as external sources. Local sources tend to have a dramatic short-term impact on PM2.5 values, whereas external sources tend to have more subtle but longer-lasting effects. In the presence of PM2.5 from both sources at the same time, this combination of effects can undermine the predictive accuracy of the model. This paper presents a novel combinational Hammerstein recurrent neural network (CHRNN) to enhance predictive accuracy and overcome the heavy computational and monetary burden imposed by deep learning models. The CHRNN comprises a based-neural network tasked with learning gradual (long-term) fluctuations in conjunction with add-on neural networks to deal with dramatic (short-term) fluctuations. The CHRNN can be coupled with a random forest model to determine the degree to which short-term effects influence long-term outcomes. We also developed novel feature selection and normalization methods to enhance prediction accuracy. Using real-world measurement data of air quality and PM2.5 datasets from Taiwan, the precision of the proposed system in the numerical prediction of PM2.5 levels was comparable to that of state-of-the-art deep learning models, such as deep recurrent neural networks and long short-term memory, despite far lower implementation costs and computational overhead.

Highlights

  • Airborne particulate matter (PM) can have a profound effect on the health of the population.This type of pollution is generally divided into PM2.5 and PM10, based on the diameter of the particles, where PM2.5 indicates a maximum size of 2.5 μm and PM10 indicates a maximum size of 10 μm

  • We anticipate that the combinational Hammerstein recurrent neural network (CHRNN) will improve the accuracy and lower the costs of PM2.5 predictions

  • This chapter is divided into four sections: (1) An introduction to the experiment parameters and settings, (2) the features and time-delay terms extracted using modified false nearest neighbor method (MFNNM), (3) the establishment and discussion of the UCENormalization parameters, and (4) a performance comparison of four types of CHRNNs and other deep learning models

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Summary

Introduction

Airborne particulate matter (PM) can have a profound effect on the health of the population.This type of pollution is generally divided into PM2.5 and PM10, based on the diameter of the particles, where PM2.5 indicates a maximum size of 2.5 μm and PM10 indicates a maximum size of 10 μm. PM2.5 tends to remain in the atmosphere for much longer, it tends to be carried far greater distances, and is small enough to penetrate deep within tissue, often leading to serious respiratory disorders It is for this reason that most research on particulate matter pollution focuses on PM2.5–related issues. The threshold values of the features are set for 4, meaning that the MFNNM chooses four of the most helpful features from the meteorological data for prediction. In UCENormalization, the developed program tested seven abnormal threshold values. It includes 0.5, 1, 1.5, 2, 2.5, 3 and. All performance experiments in this study were performed using Python and operated on an Intel Xeon E5-2603v4 CPU at 1.70 GHz and an Nvidia GTX 1070ti GPU with 32 GB memory and the Windows 10 operating system

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