Next Article in Journal
Influence of 30–60 Days Intraseasonal Oscillation of East Asian Summer Monsoon on Precipitation in Southwest China
Next Article in Special Issue
Towards On-Site Implementation of Multi-Step Air Pollutant Index Prediction in Malaysia Industrial Area: Comparing the NARX Neural Network and Support Vector Regression
Previous Article in Journal
Assessment of Temperature and Precipitation Forecasts of the WRF Model in the Bahía de Banderas Region (Mexico)
Previous Article in Special Issue
PM2.5 Air Pollution Prediction through Deep Learning Using Multisource Meteorological, Wildfire, and Heat Data
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Prediction of Monthly PM2.5 Concentration in Liaocheng in China Employing Artificial Neural Network

1
School of Geography and Environment, Liaocheng University, Liaocheng 252000, China
2
State Key Laboratory of Urban and Regional Ecology, Research Center for Eco-Environmental Sciences, Chinese Academy of Sciences, Beijing 100085, China
3
State Key Laboratory of Loess and Quaternary Geology, Institute of Earth Environment, Chinese Academy of Sciences, Xi’an 710061, China
4
National Ecosystem Science Data Center, Key Laboratory of Ecosystem Network Observation and Modeling, Institute of Geographic Sciences and Natural Resources Research, Chinese Academy of Sciences, Beijing 100101, China
*
Authors to whom correspondence should be addressed.
Atmosphere 2022, 13(8), 1221; https://doi.org/10.3390/atmos13081221
Submission received: 30 June 2022 / Revised: 27 July 2022 / Accepted: 1 August 2022 / Published: 2 August 2022

Abstract

:
Fine particulate matter (PM2.5) affects climate change and human health. Therefore, the prediction of PM2.5 level is particularly important for regulatory planning. The main objective of the study is to predict PM2.5 concentration employing an artificial neural network (ANN). The annual change in PM2.5 in Liaocheng from 2014 to 2021 shows a gradual decreasing trend. The air quality in Liaocheng during lockdown and after lockdown periods in 2020 was obviously improved compared with the same periods of 2019. The ANN employed in the study contains a hidden layer with 6 neurons, an input layer with 11 parameters, and an output layer. First, the ANN is used with 80% of data for training, then with 10% of data for verification. The value of correlation coefficient (R) for the training and validation data is 0.9472 and 0.9834, respectively. In the forecast period, it is demonstrated that the ANN model with Bayesian regularization (BR) algorithm (trainbr) obtained the best forecasting performance in terms of R (0.9570), mean absolute error (4.6 μg/m3), and root mean square error (6.6 μg/m3), respectively. The ANN model has produced accurate results. These results prove that the ANN is effective in monthly PM2.5 concentration predicting due to the fact that it can identify nonlinear relationships between the input and output variables.

1. Introduction

Air pollution has a significant impact on climate change, ecosystems, and human health. Exposure to air pollution in 2019 caused 7 million premature deaths worldwide and led to the loss of millions of healthy life years [1]. In 2019, a PM2.5 exposure level of 86% of the global urban population exceeded the world health organization (WHO) standard, resulting in 1.8 million deaths [2]. The risk of premature death attributable to PM2.5 in China increased from 1.73 million in 2002 to 2.26 million in 2012, and then decreased slightly to 2.12 million in 2017. From 2002 to 2017, PM2.5 in China caused an increase in deaths of more than 0.39 million. However, emission control policies and technologies prevented 0.87 million premature deaths during the same period [3]. PM2.5 inhalation may increase the risk of premature death due to cardiovascular diseases, respiratory diseases, lung cancer, lower respiratory tract infections, brain diseases, and nervous system damage [4]. Therefore, it is necessary to accurately predict air pollution to provide people with travel patterns.
Artificial intelligence (AI) is widely used in air pollution prediction [5]. The Backwards Propagation (BP) neural network algorithm is used to predict the quality of PM2.5 in Chongqing, which indicates that it is feasible to use a neural network to predict air quality [6]. The artificial neural network (ANN) is used to forecast PM2.5 concentration with 80% of data for training then with 90% of data for training in Ahvaz. The value of R for the data validation of these two networks was 0.80 and 0.83, respectively [7]. A backpropagation artificial neural network (BPANN) combined with an adaptive multi-objective particle swarm optimizer (AMOPSO) algorithm based on computational fluid dynamics (CFD) is used to predict indoor PM2.5 concentrations. The proposed optimization algorithm reduces PM2.5 concentrations by as much as 77.1% [8]. Four modeling techniques, including time-integrated activity, Monte Carlo simulation, ANN, and principal component analysis (PCA), are utilized to predict exposure values of PM2.5. The results of a time-weighted activity model display the lowest correlation with measured values. For Monte Carlo simulation, high correlation is obtained. Compared with the simple ANN models, the PCA-ANN exports the most accurate results [9]. To summarize, numerous studies show that ANN can be used to define functional relationships between dependent and independent variables.
Deep learning displays prodigious potential in fitting nonlinear complex relationships between the influencing factors and the pollution concentrations [10], and includes the convolutional neural network (CNN) [11] and recurrent neural network (RNN) [12]. A convolutional neural network (CNN) can learn the characteristics of data by directly inputting the original image, which has been widely used in recent years. A deep learning-based response surface model (deepRSM) is established based on the deep learning method, which uses artificial intelligence to achieve more accurate response surface fitting, solves the problem of rapid prediction of pollution control effects, and significantly improves the applicability and effectiveness of the response surface model (RSM) for decision-making assistance [10]. The CNN model on the air quality dataset is utilized to detect patterns for future prediction modeling in India [11]. Nonetheless, the accuracy of the CNN model is measured to determine the applicability of algorithm. The multi-directional temporal convolutional artificial neural network (MTCAN) model maintains the temporal correlation within the features’ measurement and meteorological and pollutant variables to impute and forecast PM2.5 missing values [13]. A novel machine learning-based model (MCNN-BP) is proposed by multiple convolutional neural networks (MCNN) and backpropagation neural networks for making spatiotemporal PM2.5 prediction at 74 stations in Taiwan [14].
A long short-term memory (LSTM) neural network is a RNN with long-term and short-term memory. The LSTM approach is also used for predicting O3, PM2.5, NOx, and CO concentrations at a location in NCT-Delhi [15]. Geo-LSTM for predicting PM2.5 has an RMSE of 0.0437, and performs almost 60.13% better than IDW [16]. The LSTM model outperformed random forest (RF) and Cubist approaches for predicting PM2.5 because of its RNN structure that can capture time dependence and nonlinear relationships among PM2.5 concentrations and other independent variables, and exhibited a stable accuracy with an R2 of 0.83 [17]. A workflow of future PM2.5 concentrations prediction was developed based on an LSTM model. Using ground-based station PM2.5 data in 2014–2018, the 1 km MAIAC AOD product and other auxiliary data were used to predict PM2.5 concentrations in the next year and generate a national PM2.5 spatial map in China [17]. A novel hybrid prediction model was constructed by combining the empirical mode decomposition (EMD), sample entropy (SE), and bidirectional long- and short-term memory neural network (LSTM) to predict PM2.5 concentrations [18]. A new PM2.5 prediction method based on a hybrid model of complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN) and bi-directional long short-term memory (BiLSTM) is presented. The CEEMDAN-FE can effectively reduce the instability and high volatility of the original PM2.5 data, overcome data noise, and prominently enhance the model’s performance in forecasting PM2.5 concentration [19]. The CNN-LSTM model is also proposed to predict air quality, and both the CNN-LSTM and the LSTM generally have better performance than the CNN and the BPNN [20]. The advanced deep predictive convolutional LSTM (ConvLSTM) model paired with the cutting-edge graph convolutional network (GCN) architecture is used to predict hourly PM2.5 in the Los Angeles area. The RMSE and NRMSE of the model show significant improvement over existing research in predicting PM2.5 concentration [21]. Although the deep learning model can improve the prediction ability to some extent, it requires massive data for training, and it has its scope of application, which leads to different prediction performance of PM2.5 concentration time series in different ranges.
The sudden outbreak of COVID-19 has not only seriously impacted global economic activities, but also profoundly affected people’s living patterns [22]. Up to 30 June 2022 globally, over 6,332,963 people have died, and 544,324,069 have been infected with COVID-19 (WHO). In response to the epidemic, large measures such as shutdown and home isolation have been taken all over the world, with unprecedented intensity and duration, which provides a unique natural experimental condition for exploring the potential of global air pollution reduction. This scenario provides an opportunity to understand and study air pollution control and emission reduction measures. During COVID-19, the NO concentrations decreased by 58–70% in two towns in Paraiba Valley: São José dos Campos and Guaratinguetá, Brazil [23]. PM2.5, NO2, and CO were reduced during COVID-19 in 2020 in Chicago, IL, USA [24]. Brazil’s air quality improved due to mobility restrictions imposed by COVID-19 [25]. After the lockdown, the PM2.5 pollution load throughout the whole area in Lodz, Poland, and across its central parts in particular, decreased dramatically [26]. Car transportation was limited due to the COVID-19 lockdown in Poland. Car transportation in Krakow is responsible for up to 20% of the PM10 carbon fraction concentration [27]. During the lockdown period, CO, NO, NO2, SO2, and PM2.5 decreased by 64%, 1.5%, 75%, 24%, and 54%, respectively, compared to concentrations of these pollutants in 2019 in Bishkek, Kyrgyz Republic [28]. NOx emission in China in the lockdown period was 53.4% lower than the same period in 2019 [29]. The concentrations of atmospheric components in many countries and regions have also experienced a process of sharp decline, low-level maintenance, and slow recovery. Air pollution mainly comes from traffic, industry, and power plant emissions. Therefore, the change in air pollution can well reflect the change in social and economic activities during the epidemic. By studying the air pollution observation data, the spatial and temporal change pattern of air pollution during the COVID-19 epidemic was revealed [29].
Many artificial intelligence techniques have been utilized to forecast PM2.5 concentration. Nevertheless, there are many challenges for precise prediction by diverse methods. It is very difficult to cultivate precise artificial intelligence techniques with small PM2.5 datasets. Deep learning methods are successful owing to big training data which can be used to predict PM2.5 concentration. It is difficult to pitch appropriate architectures and parameters for deep learning methods with small PM2.5 datasets.
An artificial neural network (ANN) has the advantage of processing small data. Therefore, we use an ANN to predict the monthly air pollution in Liaocheng City. Liaocheng is a typical air pollution city in northern China. In this article, PM2.5 in Liaocheng in Shandong Province, China, from 2014 to 2022 was investigated. Moreover, seasonal and annual changes in PM2.5 concentration have been analyzed in this study. If the PM2.5 time series to be modeled is sufficiently auto-correlated, the time series prediction model is developed using an artificial neural network, and then the performance of the different algorithms is tested. For different combinations of input variables, the different parameters are compared, including input variables, hidden layer neurons, and transfer functions. We also calculate the periodicity of the PM2.5 time series and evaluate the generalization ability and the parameter uncertainty of the model development model. Overall, despite the limited PM2.5 data used in this study, the developed ANN model is capable of predicting monthly PM2.5 concentration over the study area reasonably well.
The remainder of this paper is as follows. Section 2 is devoted to artificial neural network and air pollution data in Liaocheng. In Section 3, we analyze long-term changes in the air quality in Liaocheng, predict the PM2.5 concentration in Liaocheng, and compare with existing models. We discuss the topologies of the ANN. In Section 4, we summarize the paper and put forward the future prospects of air pollution prediction.

2. Materials and Methods

Liaocheng City is located in the west of Shandong Province in China (Figure 1), facing Handan City and Xingtai City in Hebei Province across the Zhangwei River in the west, and adjacent to Tai’an City and Jinan City and Henan Province across the Jindi River and the Yellow River in the south and southeast. Liaocheng is on a Yellow River alluvial plain, high in the southwest and low in the northeast, with an altitude of 22.6–49.0 m. Liaocheng covers a total area of 8628 square kilometers. By the end of 2021, Liaocheng had a permanent population of 5.9279 million. In 2021, Liaocheng achieved a regional GDP of CNY 264.252 billion. It has a semi-arid continental climate. The annual average temperature of Liaocheng City is 13.5 °C, the average temperature of January is −1.8 °C, and the average temperature of July is 26.8 °C. The annual average precipitation is 540.4 mm, and the annual mean wind speed is 2.3 m/s.
As shown in Table 1, the most recent Chinese ambient air quality standards (CAAQS) (GB3095-2012) were published in 2012, when PM2.5 and O3-8h were added for the first time [30]. In 2012, a ‘Technical Regulation on Ambient Air Quality Index’ (HJ 633-2012) released by the Chinese Ministry of Ecology and Environment (MEE) (https://www.mee.gov.cn/, accessed on 1 January 2021) replaced the air pollution index (API) with AQI and divided air quality into six levels (Table 2) [30].
CO is measured utilizing the non-dispersive infrared absorption method, PM2.5 and PM10 are measured utilizing the micro-oscillating balance method and the β absorption method, and SO2, NO2, and O3 are measured by the fluorescence method, the chemiluminescence method, and the UV-spectrophotometry method, respectively [31].
Backpropagation artificial neural network (BPANN) model topology includes an input layer, an output layer, and a hidden layer. Each layer for BPANN has a particular number of nodes depending on the complexity of the question. Each node in the input and hidden layer is connected to each of the nodes in the coming layer (hidden or output) by a weight factor and a bias value. The BPANN is a training algorithm and its learning rule is to utilize the steepest descent method to continuously adjust the weights and bias of the neural network by utilizing the backpropagation of the error [32]. To avoid overfitting and to validate the stability of the ANN model, we use 80% of the data for training and 10% of the data for examining. B(1)…B(n) are the data of monthly PM2.5 concentration as the input variable, and B(n + 1) is PM2.5 predicted for +1 month (Figure 2). Bi is the node input, s expresses the node output, and Wji expresses the weight, where P expresses the node excitation threshold, and a and t express the basic and activation functions, respectively. A node assesses the weighted summation of the inputs as:
a = ( W j i B i ) + P
The activation function appraises output by:
s = t ( a )
The properties of the ANN model are appraised using three norms containing: correlation coefficient (R), root mean square error (RMSE), and mean absolute error (MAE). The R values are used to determine the model precision, and the RMSE values are used to determine the residuals between predictions and actual PM2.5 values [33].
R M S E = ( F k H k ) 2 Q
R = ( F k F ) ( H k H ) ( F k F ) 2 ( H k H ) 2
M A E = 1 Q | F k H k |
F k denotes the actual PM2.5 concentration, H k denotes the predicted PM2.5 concentration, F is the mean of the actual PM2.5 concentration, and H is the mean of the predicted PM2.5 concentration.
The software we use is matlabR2010a, which was created by Little J. and Moler C., and it is from MathWorks Inc, Natick, MA, USA [34]. The values of air quality index (AQI), PM10, PM2.5, NO2, SO2, CO, and O3 in Liaocheng from January 2014 to May 2022 are investigated (http://www.aqistudy.cn/, accessed on 1 June 2022), and these data are divided into three parts: training period (January 2014 to September 2020); verification period (October 2020 to July 2021); prediction period (August 2021 to May 2022) (Figure 3).
The average concentrations of the air pollutants during 2014–2021 in Liaocheng are analyzed. SO2 (2014–2021) and NO2 (2019–2021) concentrations in Liaocheng meet the national Grade I or Grade II for annual mean ambient air quality. NO2 (2014–2018), PM2.5 (2014–2021), and PM10 (2014–2021) concentrations in Liaocheng exceed the national Grade II for annual mean ambient air quality. AQI values (2020–2021) meet national Level II, but AQI values (2014–2019) exceed national Level II.

3. Results and Discussion

In this section, we analyze the research results and discuss the structure of the artificial neural network. Firstly, the air quality in Liaocheng from 2014 to 2021 is analyzed, and the effects of the almost complete lockdown on air quality are analyzed. Finally, PM2.5 concentrations from January 2014 to May 2022, are simulated and predicted using the artificial neural network.

3.1. Long-Term Changes in the Air Quality in Liaocheng

As shown in Figure 3, the air quality in Liaocheng gradually improved year by year. The formula for calculating the reduction rate of air quality is as follows:
D = ( A i A j ) A i × 100 %
D is the reduction rate of air quality, and Ai and Aj are air quality.
Therefore, the reduction rates of AQI, PM2.5, PM10, SO2, CO, NO2, and O3 from 2014 to 2021 in Liaocheng were 27.1%, 56.2%, 56.3%, 74.0%, 63.7%, 32.5%, and −37.2%, respectively. Air quality in 2021 was sharply better than that in 2014. However, the concentration of O3 increased by 37.2%, and its change trend was different from that of other pollutants. Although the concentration of PM2.5 in Liaocheng has decreased significantly in recent years, there is still a big gap from the World Health Organization guidelines, and the ozone problem is becoming increasingly prominent. Clean air policies play an important role in reducing air pollution, and these policies include the action plan for the prevention and control of air pollution, the three-year action plan for the defense of the blue sky, the program for tackling key problems of air pollution in autumn and winter in key areas, and the “one city, one policy” for coordinated prevention and control of fine particulate matter and ozone pollution.
The concentration of PM2.5 in Liaocheng from 2014 to 2021 has obvious seasonal variation characteristics. The average concentration of PM2.5 in spring, summer, autumn, and winter was 61.6, 47.0, 67.0, and 106.5 (μg/m3), respectively. The seasonal average concentration of PM2.5 in Liaocheng is the lowest in summer and the highest in winter. The variation trend of the average concentration of PM2.5 in Liaocheng over four seasons is: summer < autumn < spring < winter.
As shown in Figure 4, the monthly average concentration of PM2.5 in Liaocheng from 2014 to 2021 also has obvious characteristics of monthly variation, and the average concentration of PM2.5 shows a “U” shape. For example, the concentration of PM2.5 in January is calculated by calculating PM2.5 concentration in January from January 2014 to January 2021. The average concentration of PM2.5 was the highest in January and the lowest in August.

3.2. Air Quality Changes before, during, and after the Lockdown Period

These data are divided into three parts: period I (before the lockdown) (1 January to 26 January 2019 and 2020); period II (during the lockdown) (27 January to 30 April 2020); period III (after the lockdown) (1 May to 20 July 2020). First, we make statistical analysis for air quality in Liaocheng, from 1 January to 20 July in 2020, and these results are shown in Figure 5. The reduction rates of AQI, PM2.5, PM10, SO2, CO, NO2, and O3 from period I to period II in Liaocheng were 53.9%, 64.1%, 51.1%, 26.0%, 61.6%, 52.7%, and −106.4%, respectively. Those from period II to period III in Liaocheng were, respectively, 21.9%, −30.3%, −11.3%, −6.2%, −8.5%, −12.8%, and 52.1%. These results indicate that the air quality during lockdown was obviously improved compared with before and after lockdown periods.
In the same period (before lockdown) of 2019, the average values of AQI, PM2.5, PM10, SO2, CO, NO2, and O3 were, respectively, 150.2, 112.1, 183.6, 25.6, 1.42, 63.4, and 49.8 (μg/m3 (CO (mg/m3))), which was a decline of 20.4%, 24.3%, −3.0%, −44.7%, 20.9%, − 11.1%, and 0.2%, compared with that of before lockdown 2020. However, in the same period (during lockdown) of 2019, those were, respectively, 110.7, 74.0, 134.8, 15.4, 0.89, 36.7, 106.3 (μg/m3 (CO (mg/m3))), which is a decline of −24.7%, −32.3%, −35.4%, −32.2%, −25.8%, −27.5%, and −3.2%, compared with that of during lockdown in 2020. Those were, respectively, 124.6, 35.1, 86.9, 14.7, 0.65, 26.4, and 184.6 (μg/m3 (CO (mg/m3))) in the same period (after lockdown) of 2019, which is a decline of −18.5%, −0.6%, −11.0%, −32.9%, −6.9%, −11.9%, and −15.2% compared with that of after lockdown in 2020. It is also worth noting that all the changes in air pollution during the lockdown period and after lockdown (2019–2020) are consistent. These results also indicate that the air quality in Liaocheng during lockdown and after lockdown periods in 2020 was obviously improved compared with the same periods of 2019. However, air quality in Liaocheng before lockdown in 2020 was worse than that of the same period of 2019.
As shown in Figure 6, in Liaocheng during January–June 2019, the monthly average PM2.5 concentrations were 107, 112, 59, 54, 37, and 34 (μg/m3), respectively, while those during January–June 2020 were 132, 56, 46, 41, 32, and 36 (μg/m3), respectively, which were 23.4%, −50.0%, −22.0%, −24.1%, −13.5%, and 5.9% higher than those during January–June 2019, respectively.

3.3. Model Design Employing the Artificial Neural Network Modal

The cycles of monthly PM2.5 concentration in Liaocheng were calculated using wavelet analysis (Figure 7). The wavelet variance can reflect the distribution of wave energy of a time series. It can be used to determine the main periods of monthly PM2.5 concentration. There are three obvious peaks in the wavelet variance chart, which correspond to the time scales of 10 months, 21 months, and 33 months (Figure 7). These are the cycles of monthly PM2.5 concentration. Among them, the maximum peak value corresponds to the 10 months, which means that the period oscillation of about 10 months is the strongest, and it is the first main cycle; the second peak corresponds to the 21 months, which is the second main cycle; the third peak value corresponds to 33 months. This shows that the fluctuation of the above three periods controls the variation characteristics of monthly PM2.5 concentration in Liaocheng.
The numbers of nodes in input and hidden layers are tested by trial and error. The performance of different numbers of nodes in the input layer (Table 3) and hidden layer (Table 4) is contrasted. Table 3 indicates the various input variables and Table 4 indicates different nodes in the hidden layer. Table 3 and Table 4 show simulation of PM2.5 during the training, verification, and predicting periods. Eleven variables were selected for the model input. We used the most recent 11 months from September 2020 to July 2021 during the predicting period. Furthermore, the number of neurons of the hidden layer was similarly six. Finally, network topologies of the ANN (11-6-1) were the best.
Training algorithms of the ANN are also selected by trial and error. Table 5 indicates the performances of training algorithms for forecasting PM2.5 concentration. Trainbr is an algorithm of Bayesian regularization (BR) backpropagation, and it is a network training function that updates weights and deviation values on the basis of Levenberg Marquardt optimization. It minimizes the combination of squared errors and weight values, and then defines the correct combination to generate a network with good generalization. Trainbr is the algorithm that best predicted the PM2.5 concentration. It showed the best performance in simulating PM2.5 during the training period, the verification period, and the prediction period. The simulated PM2.5 concentration was very close to the actual PM2.5 concentration. To avoid overfitting problems, a test experiment wad conducted. The ANN model has analogous R values, so consequently there were no overfitting problems with the ANN model. The RMSE value for the ANN employing trainbr for the training period is 10.9 μg/m3, and that for the verification period is 4.4 μg/m3. The R values for the ANN employing trainbr during the training and verification periods were 0.9472 and 0.9834, respectively. The MAE for the ANN using trainbr were 7.7 μg/m3 and 3.5 μg/m3, respectively.
Transfer functions of the ANN are picked by trial and error. Table 6 indicates that the transfer function logsig-poslin is better than others during training, verification, and predicting stages. Purelin is a linear transfer function and poslin is a positive linear transfer function. Tansig is a hyperbolic tangent sigmoid transfer function and logsig is a logarithmic sigmoid transfer function.

3.4. Prediction of the PM2.5 Concentration in Liaocheng and Comparison with Existing Models

In the forecast period, PM2.5 concentration in the next month is predicted employing the previous months’ PM2.5 concentration. Table 6 indicates the predicting performance employing trainbr for the designed ANN model. For PM2.5 concentration in Liaocheng during the predicting period, the R, RMSE, and MAE are 0.9570, 6.6 μg/m3, 4.6 μg/m3, respectively.
Figure 8 makes clear predicted PM2.5 concentration. The training and verification values are from January 2014 to July 2021. Then, we began to predict from August 2021 to May 2022. In both the training stage and the verification stage, the simulated values and the observed values are very close, especially in the simulated minimum value. In the 10 months, the forecasting PM2.5 concentration is similar to the actual PM2.5 concentration.
Different models for predicting PM2.5 concentration are evaluated in Table 7. In recent years, artificial neural networks have provided many applications for PM2.5 predicting. Moreover, researchers have begun using hybrid techniques to address complex air pollution problems for urban environments. Ten hidden neurons are used in the Bayesian regularized neural network (BRNN) and forward feature selection (FFS) (BRNN/FFS) estimation system to estimate PM2.5 concentration. MSE, RMSE, and MAE and R2 of the BRNN/FFS model are 7.4972 μg/m3, 2.7381 μg/m3, 2.3292 μg/m3, and 0.95 [35]. The backpropagation neural network of prediction of PM2.5 concentrations seems to perform better in southern China, achieving the best results in the Pearl River Delta (PRD) region. Compared with the cities in northern China, the cities in the PRD have smaller MAE (12–20 μg/m3 vs. 25–40 μg/m3) and RMSE (15–25 μg/m3 vs. 35–60 μg/m3) for different prediction time steps [36]. It is better to predict PM2.5 concentrations through ALSTM than to predict PM2.5 through LSTM, SVR, and GBTR. The ALSTM learns the weight of air pollutants in different areas more accurately. At the first hour in the future, the RMSE of all stations will be 3.94 μg/m3 and the MAE will be 2.94 μg/m3 [37]. The deep LSTM model 2 is a multivariate model using Dew alongside PM2.5 concentration in the Kathmandu valley. Model 2 with single-step prediction is the best-performing model, with RMSE of 13.04 μg/m3 and MAE of 10.81 μg/m3 [38]. The performance of the weighted bagging-based neural network (WBBNN) trained by fuzzy features is the best in the 12 cases, and its RMSE, R2, and MAE are 33.812 μg/m3, 0.8371, and 34.515 μg/m3, respectively [39]. As shown in Table 7, the R-square (R2), RMSE, and MAE ranges of different models are 0.74–0.961, 1.1064–24.22874 μg/m3, and 0.6561–34.515 μg/m3. Compared with the results of other models, our model is at the upper middle level. This is because our data volume is relatively small.

4. Conclusions

The time series prediction methods of PM2.5 concentration have the task of predicting future PM2.5 concentration based on historical PM2.5 data. The PM2.5 time series in Liaocheng shows regular upward and downward cyclic changes. There is autocorrelation in PM2.5 time series, which refers to the correlation between the current PM2.5 values and its previous PM2.5 values. Moreover, the relationship between inputs and PM2.5 concentration is nonlinear. The artificial neural network is very good at dealing with this nonlinear relationship. Table 3 shows the R, RMSE, and MAE between various input variables. The number of nodes of the input layer rises from 1 to 16 in the PM2.5 prediction model. The following observations can be made with raising the number of nodes of the input layer during the training, verification, and predicting period: the R values slowly increase and then decrease, but the RMSE and MAE values slowly descend and then rise. The change characteristics of the number of neurons in the hidden layer are similar to the above results (Table 4). Therefore, the best topology of the pattern for PM2.5 concentration prediction is identified as 11-6-1 for ANN.
The COVID-19 epidemic had a significant influence on the air pollution of Liaocheng in unprecedented ways. Air quality in Liaocheng during lockdown was obviously better than before lockdown and after lockdown. The possible reason is that during COVID-19 epidemic prevention, industrial production and transportation activities were prodigiously reduced, resulting in a quick reduction in air pollutant emissions.
We investigated the practicability of hiring AI with past months’ PM2.5 concentration as input variables to predict the coming month’s PM2.5 concentration. The performance of the ANN model was evaluated with three statistical indicators. A simple ANN model with the 11 past months’ PM2.5 concentration as input variables was distinguished. The precise forecasting capability of the ANN model was also demonstrated. These results prove that the ANN can grasp the complex nonlinear relationship between input and output variables. Since air pollution in Liaocheng is still very serious, we will further strengthen the research on PM2.5 prediction models. The prediction results of the ANN model can provide scientific basis for the prevention and control of air pollution.
The Chinese government has put forward the goals of carbon peaking and carbon neutralization, and formulated the implementation plan for the synergy of pollution reduction and carbon reduction. In this study, we only use artificial neural network for prediction, and consider the past PM2.5 data for time series analysis. In the future, in order to further improve PM2.5 prediction accuracy, we will use deep learning to predict the daily or hourly PM2.5 concentration, such as long short-term memory (LSTM), gated recurrent unit (GRU), convolutional neural network (CNN), deep Boltzmann machine (DBM), deep belief network (DBN), CNN-LSTM, and graph convolutional network (GCN), and consider climate change and air pollutant emissions.

Author Contributions

Conceptualization, Z.H. and Q.G.; methodology, Z.H. and Q.G.; formal analysis, Z.H., Z.W. and X.L.; data curation, Z.H., Z.W. and X.L.; supervision, Z.H., Z.W. and X.L.; writing—original draft preparation, Z.H. and Q.G.; writing—review and editing, Z.H. and Q.G. All authors have read and agreed to the published version of the manuscript.

Funding

This work was funded by the National Natural Science Foundation of China (41572150), Shandong Social Sciences Planning Research Program (18CKPJ34), Shandong Province Higher Educational Humanities and Social Science Program (J18RA196), and State Key Laboratory of Loess and Quaternary Geology Foundation (SKLLQG1907).

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Data and methods used in the research have been presented in sufficient detail in the paper.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Fowler, D.; Pyle, J.A.; Sutton, M.A.; Williams, M.L. Global Air Quality, past present and future: An introduction. Philos. Trans. R. Soc. A Math. Phys. Eng. Sci. 2020, 378, 20190323. [Google Scholar] [CrossRef] [PubMed]
  2. Southerland, V.A.; Brauer, M.; Mohegh, A.; Hammer, M.S.; van Donkelaar, A.; Martin, R.V.; Apte, J.S.; Anenberg, S.C. Global urban temporal trends in fine particulate matter (PM2.5) and attributable health burdens: Estimates from global datasets. Lancet Planet. Health 2022, 6, e139–e146. [Google Scholar] [CrossRef]
  3. Geng, G.; Zheng, Y.; Zhang, Q.; Xue, T.; Zhao, H.; Tong, D.; Zheng, B.; Li, M.; Liu, F.; Hong, C.; et al. Drivers of PM2.5 air pollution deaths in China 2002–2017. Nat. Geosci. 2021, 14, 645–650. [Google Scholar] [CrossRef]
  4. Qi, Y.; Wei, S.; Xin, T.; Huang, C.; Pu, Y.; Ma, J.; Zhang, C.; Liu, Y.; Lynch, I.; Liu, S. Passage of exogeneous fine particles from the lung into the brain in humans and animals. Proc. Natl. Acad. Sci. USA 2022, 119, e2117083119. [Google Scholar] [CrossRef]
  5. Guo, Q.; He, Z.; Li, S.; Li, X.; Meng, J.; Hou, Z.; Liu, J.; Chen, Y. Air Pollution Forecasting Using Artificial and Wavelet Neural Networks with Meteorological Conditions. Aerosol Air Qual. Res. 2020, 20, 1429–1439. [Google Scholar] [CrossRef]
  6. Chen, Y. Prediction algorithm of PM2.5 mass concentration based on adaptive BP neural network. Computing 2018, 100, 825–838. [Google Scholar] [CrossRef]
  7. Goudarzi, G.; Hopke, P.K.; Yazdani, M. Forecasting PM2.5 concentration using artificial neural network and its health effects in Ahvaz, Iran. Chemosphere 2021, 283, 131285. [Google Scholar] [CrossRef]
  8. Li, L.; Fu, Y.; Fung, J.C.H.; Tse, K.T.; Lau, A.K.H. Development of a back-propagation neural network combined with an adaptive multi-objective particle swarm optimizer algorithm for predicting and optimizing indoor CO2 and PM2.5 concentrations. J. Build. Eng. 2022, 54, 104600. [Google Scholar] [CrossRef]
  9. Gao, S.; Zhao, H.; Bai, Z.; Han, B.; Xu, J.; Zhao, R.; Zhang, N.; Chen, L.; Lei, X.; Shi, W.; et al. Combined use of principal component analysis and artificial neural network approach to improve estimates of PM2.5 personal exposure: A case study on older adults. Sci. Total Environ. 2020, 726, 138533. [Google Scholar] [CrossRef] [PubMed]
  10. Xing, J.; Zheng, S.; Ding, D.; Kelly, J.T.; Wang, S.; Li, S.; Qin, T.; Ma, M.; Dong, Z.; Jang, C.; et al. Deep Learning for Prediction of the Air Quality Response to Emission Changes. Environ. Sci. Technol. 2020, 54, 8589–8600. [Google Scholar] [CrossRef]
  11. Chauhan, R.; Kaur, H.; Alankar, B. Air Quality Forecast using Convolutional Neural Network for Sustainable Development in Urban Environments. Sustain. Cities Soc. 2021, 75, 103239. [Google Scholar] [CrossRef]
  12. Chang-Hoi, H.; Park, I.; Oh, H.-R.; Gim, H.-J.; Hur, S.-K.; Kim, J.; Choi, D.-R. Development of a PM2.5 prediction model using a recurrent neural network algorithm for the Seoul metropolitan area, Republic of Korea. Atmos. Environ. 2021, 245, 118021. [Google Scholar] [CrossRef]
  13. Samal, K.K.R.; Babu, K.S.; Das, S.K. Multi-directional temporal convolutional artificial neural network for PM2.5 forecasting with missing values: A deep learning approach. Urban Clim. 2021, 36, 100800. [Google Scholar] [CrossRef]
  14. Kow, P.-Y.; Chang, L.-C.; Lin, C.-Y.; Chou, C.C.K.; Chang, F.-J. Deep neural networks for spatiotemporal PM2.5 forecasts based on atmospheric chemical transport model output and monitoring data. Environ. Pollut. 2022, 306, 119348. [Google Scholar] [CrossRef] [PubMed]
  15. Krishan, M.; Jha, S.; Das, J.; Singh, A.; Goyal, M.K.; Sekar, C. Air quality modelling using long short-term memory (LSTM) over NCT-Delhi, India. Air Qual. Atmos. Health 2019, 12, 899–908. [Google Scholar] [CrossRef]
  16. Ma, J.; Ding, Y.; Cheng, J.C.P.; Jiang, F.; Wan, Z. A temporal-spatial interpolation and extrapolation method based on geographic Long Short-Term Memory neural network for PM2.5. J. Clean. Prod. 2019, 237, 117729. [Google Scholar] [CrossRef]
  17. Wang, Z.; Zhou, Y.; Zhao, R.; Wang, N.; Biswas, A.; Shi, Z. High-resolution prediction of the spatial distribution of PM2.5 concentrations in China using a long short-term memory model. J. Clean. Prod. 2021, 297, 126493. [Google Scholar] [CrossRef]
  18. Teng, M.; Li, S.; Xing, J.; Song, G.; Yang, J.; Dong, J.; Zeng, X.; Qin, Y. 24-Hour prediction of PM2.5 concentrations by combining empirical mode decomposition and bidirectional long short-term memory neural network. Sci. Total Environ. 2022, 821, 153276. [Google Scholar] [CrossRef]
  19. Jiang, X.; Wei, P.; Luo, Y.; Li, Y. Air Pollutant Concentration Prediction Based on a CEEMDAN-FE-BiLSTM Model. Atmosphere 2021, 12, 1452. [Google Scholar] [CrossRef]
  20. Yan, R.; Liao, J.; Yang, J.; Sun, W.; Nong, M.; Li, F. Multi-hour and multi-site air quality index forecasting in Beijing using CNN, LSTM, CNN-LSTM, and spatiotemporal clustering. Expert Syst. Appl. 2021, 169, 114513. [Google Scholar] [CrossRef]
  21. Muthukumar, P.; Nagrecha, K.; Comer, D.; Calvert, C.F.; Amini, N.; Holm, J.; Pourhomayoun, M. PM2.5 Air Pollution Prediction through Deep Learning Using Multisource Meteorological, Wildfire, and Heat Data. Atmosphere 2022, 13, 822. [Google Scholar] [CrossRef]
  22. Guo, Q.; Wang, Z.; He, Z.; Li, X.; Meng, J.; Hou, Z.; Yang, J. Changes in Air Quality from the COVID to the Post-COVID Era in the Beijing-Tianjin-Tangshan Region in China. Aerosol Air Qual. Res. 2021, 21, 210270. [Google Scholar] [CrossRef]
  23. Conti, L.M.; Herdies, D.L.; Alvim, D.S.; Corrêa, S.M. Analysis of the Effect of the Truck Strike and COVID-19 on the concentration of NOx and O3 in the Metropolitan Region of the Vale do Paraiba, São Paulo, Brazil. Aerosol Air Qual. Res. 2022, 22, 210364. [Google Scholar] [CrossRef]
  24. Khan, S.; Dahu, B.M.; Scott, G.J. A Spatio-temporal Study of Changes in Air Quality from Pre-COVID Era to Post-COVID Era in Chicago, USA. Aerosol Air Qual. Res. 2022, 22, 220053. [Google Scholar] [CrossRef]
  25. Rudke, A.P.; de Almeida, D.S.; Alves, R.A.; Beal, A.; Martins, L.D.; Martins, J.A.; Hallak, R.; de Almeida Albuquerque, T.T. Impacts of Strategic Mobility Restrictions Policies during 2020 COVID-19 Outbreak on Brazil’s Regional Air Quality. Aerosol Air Qual. Res. 2022, 22, 210351. [Google Scholar] [CrossRef]
  26. Borowska-Stefańska, M.; Kowalski, M.; Kurzyk, P.; Sahebgharani, A.; Wiśniewski, S. The Effect of COVID-19 Pandemic on Emitted PM2.5 in Urban Road Networks: Using Loop Data and Kriging Method for Passenger Cars in the Central Part of the City of Lodz. Aerosol Air Qual. Res. 2022, 22, 210313. [Google Scholar] [CrossRef]
  27. Zaręba, M.; Danek, T. Analysis of Air Pollution Migration during COVID-19 Lockdown in Krakow, Poland. Aerosol Air Qual. Res. 2022, 22, 210275. [Google Scholar] [CrossRef]
  28. Isaev, E.; Ajikeev, B.; Shamyrkanov, U.; Kalnur, K.-u.; Maisalbek, K.; Sidle, R.C. Impact of Climate Change and Air Pollution Forecasting Using Machine Learning Techniques in Bishkek. Aerosol Air Qual. Res. 2022, 22, 210336. [Google Scholar] [CrossRef]
  29. Zhang, Q.; Pan, Y.; He, Y.; Walters, W.W.; Ni, Q.; Liu, X.; Xu, G.; Shao, J.; Jiang, C. Substantial nitrogen oxides emission reduction from China due to COVID-19 and its impact on surface ozone and aerosol pollution. Sci. Total Environ. 2021, 753, 142238. [Google Scholar] [CrossRef]
  30. Chen, Y.; Bai, Y.; Liu, H.; Alatalo, J.M.; Jiang, B. Temporal variations in ambient air quality indicators in Shanghai municipality, China. Sci. Rep. 2020, 10, 11350. [Google Scholar] [CrossRef] [PubMed]
  31. He, J.; Gong, S.; Yu, Y.; Yu, L.; Wu, L.; Mao, H.; Song, C.; Zhao, S.; Liu, H.; Li, X.; et al. Air pollution characteristics and their relation to meteorological conditions during 2014–2015 in major Chinese cities. Environ. Pollut. 2017, 223, 484–496. [Google Scholar] [CrossRef] [PubMed]
  32. He, Z.; Zhang, Y.; Guo, Q.; Zhao, X. Comparative Study of Artificial Neural Networks and Wavelet Artificial Neural Networks for Groundwater Depth Data Forecasting with Various Curve Fractal Dimensions. Water Resour. Manag. 2014, 28, 5297–5317. [Google Scholar] [CrossRef]
  33. Guo, Q.; He, Z. Prediction of the confirmed cases and deaths of global COVID-19 using artificial intelligence. Environ. Sci. Pollut. Res. 2021, 28, 11672–11682. [Google Scholar] [CrossRef] [PubMed]
  34. Little, J.; Moler, C. Appendix-MATLAB introduction and basic commands. In Stochastic Modeling; Bonakdari, H., Zeynoddin, M., Eds.; Elsevier: Amsterdam, The Netherlands, 2022; pp. 321–352. [Google Scholar] [CrossRef]
  35. Balram, D.; Lian, K.-Y.; Sebastian, N. Air quality warning system based on a localized PM2.5 soft sensor using a novel approach of Bayesian regularized neural network via forward feature selection. Ecotoxicol. Environ. Saf. 2019, 182, 109386. [Google Scholar] [CrossRef] [PubMed]
  36. Mao, X.; Shen, T.; Feng, X. Prediction of hourly ground-level PM2.5 concentrations 3 days in advance using neural networks with satellite data in eastern China. Atmos. Pollut. Res. 2017, 8, 1005–1015. [Google Scholar] [CrossRef]
  37. Chang, Y.-S.; Chiao, H.-T.; Abimannan, S.; Huang, Y.-P.; Tsai, Y.-T.; Lin, K.-M. An LSTM-based aggregated model for air pollution forecasting. Atmos. Pollut. Res. 2020, 11, 1451–1463. [Google Scholar] [CrossRef]
  38. Dhakal, S.; Gautam, Y.; Bhattarai, A. Exploring a deep LSTM neural network to forecast daily PM2.5 concentration using meteorological parameters in Kathmandu Valley, Nepal. Air Qual. Atmos. Health 2021, 14, 83–96. [Google Scholar] [CrossRef]
  39. Qiao, J.; He, Z.; Du, S. Prediction of PM2.5 concentration based on weighted bagging and image contrast-sensitive features. Stoch. Environ. Res. Risk Assess. 2020, 34, 561–573. [Google Scholar] [CrossRef]
  40. Ni, X.Y.; Huang, H.; Du, W.P. Relevance analysis and short-term prediction of PM2.5 concentrations in Beijing based on multi-source data. Atmos. Environ. 2017, 150, 146–161. [Google Scholar] [CrossRef]
  41. Agarwal, S.; Sharma, S.; Suresh, R.; Rahman, M.H.; Vranckx, S.; Maiheu, B.; Blyth, L.; Janssen, S.; Gargava, P.; Shukla, V.K.; et al. Air quality forecasting using artificial neural networks with real time dynamic error correction in highly polluted regions. Sci. Total Environ. 2020, 735, 139454. [Google Scholar] [CrossRef] [PubMed]
  42. Jida, S.N.; Hetet, J.-F.; Chesse, P.; Guadie, A. Roadside vehicle particulate matter concentration estimation using artificial neural network model in Addis Ababa, Ethiopia. J. Environ. Sci. 2021, 101, 428–439. [Google Scholar] [CrossRef] [PubMed]
  43. Li, X.; Peng, L.; Yao, X.; Cui, S.; Hu, Y.; You, C.; Chi, T. Long short-term memory neural network for air pollutant concentration predictions: Method development and evaluation. Environ. Pollut. 2017, 231, 997–1004. [Google Scholar] [CrossRef] [PubMed]
  44. Huang, C.-J.; Kuo, P.-H. A Deep CNN-LSTM Model for Particulate Matter (PM2.5) Forecasting in Smart Cities. Sensors 2018, 18, 2220. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  45. Park, Y.; Kwon, B.; Heo, J.; Hu, X.; Liu, Y.; Moon, T. Estimating PM2.5 concentration of the conterminous United States via interpretable convolutional neural networks. Environ. Pollut. 2020, 256, 113395. [Google Scholar] [CrossRef] [PubMed]
  46. Faraji, M.; Nadi, S.; Ghaffarpasand, O.; Homayoni, S.; Downey, K. An integrated 3D CNN-GRU deep learning method for short-term prediction of PM2.5 concentration in urban environment. Sci. Total Environ. 2022, 834, 155324. [Google Scholar] [CrossRef]
  47. Jiang, F.; Zhang, C.; Sun, S.; Sun, J. Forecasting hourly PM2.5 based on deep temporal convolutional neural network and decomposition method. Appl. Soft Comput. 2021, 113, 107988. [Google Scholar] [CrossRef]
  48. Luo, Z.; Huang, F.; Liu, H. PM2.5 concentration estimation using convolutional neural network and gradient boosting machine. J. Environ. Sci. 2020, 98, 85–93. [Google Scholar] [CrossRef]
  49. Menares, C.; Perez, P.; Parraguez, S.; Fleming, Z.L. Forecasting PM2.5 levels in Santiago de Chile using deep learning neural networks. Urban Clim. 2021, 38, 100906. [Google Scholar] [CrossRef]
  50. Yang, Q.; Yuan, Q.; Li, T. Ultrahigh-resolution PM2.5 estimation from top-of-atmosphere reflectance with machine learning: Theories, methods, and applications. Environ. Pollut. 2022, 306, 119347. [Google Scholar] [CrossRef]
  51. Tian, J.; Liu, Y.; Zheng, W.; Yin, L. Smog prediction based on the deep belief-BP neural network model (DBN-BP). Urban Clim. 2022, 41, 101078. [Google Scholar] [CrossRef]
  52. Guo, X.; Wang, Y.; Mei, S.; Shi, C.; Liu, Y.; Pan, L.; Li, K.; Zhang, B.; Wang, J.; Zhong, Z.; et al. Monitoring and modelling of PM2.5 concentration at subway station construction based on IoT and LSTM algorithm optimization. J. Clean. Prod. 2022, 360, 132179. [Google Scholar] [CrossRef]
  53. Kow, P.-Y.; Wang, Y.-S.; Zhou, Y.; Kao, I.F.; Issermann, M.; Chang, L.-C.; Chang, F.-J. Seamless integration of convolutional and back-propagation neural networks for regional multi-step-ahead PM2.5 forecasting. J. Clean. Prod. 2020, 261, 121285. [Google Scholar] [CrossRef]
  54. Ma, J.; Ding, Y.; Cheng, J.C.P.; Jiang, F.; Gan, V.J.L.; Xu, Z. A Lag-FLSTM deep learning network based on Bayesian Optimization for multi-sequential-variant PM2.5 prediction. Sustain. Cities Soc. 2020, 60, 102237. [Google Scholar] [CrossRef]
  55. Wang, Z.; Li, R.; Chen, Z.; Yao, Q.; Gao, B.; Xu, M.; Yang, L.; Li, M.; Zhou, C. The estimation of hourly PM2.5 concentrations across China based on a Spatial and Temporal Weighted Continuous Deep Neural Network (STWC-DNN). ISPRS J. Photogramm. Remote Sens. 2022, 190, 38–55. [Google Scholar] [CrossRef]
  56. Zheng, G.; Liu, H.; Yu, C.; Li, Y.; Cao, Z. A new PM2.5 forecasting model based on data preprocessing, reinforcement learning and gated recurrent unit network. Atmos. Pollut. Res. 2022, 13, 101475. [Google Scholar] [CrossRef]
  57. Li, J.; Xu, G.; Cheng, X. Combining spatial pyramid pooling and long short-term memory network to predict PM2.5 concentration. Atmos. Pollut. Res. 2022, 13, 101309. [Google Scholar] [CrossRef]
  58. Yu, F.; Mohebbi, A.; Cai, S.; Akbariyeh, S.; Russo, B.J.; Smaglik, E.J. The Influence of Seasonal Meteorology on Vehicle Exhaust PM2.5 in the State of California: A Hybrid Approach Based on Artificial Neural Network and Spatial Analysis. Environments 2020, 7, 102. [Google Scholar] [CrossRef]
  59. Zhang, J.; Peng, Y.; Ren, B.; Li, T. PM2.5 Concentration Prediction Based on CNN-BiLSTM and Attention Mechanism. Algorithms 2021, 14, 208. [Google Scholar] [CrossRef]
Figure 1. Location of Liaocheng in Shandong Province, China. (a) The location of Liaocheng in China, (b) The location of Liaocheng in Shandong Province.
Figure 1. Location of Liaocheng in Shandong Province, China. (a) The location of Liaocheng in China, (b) The location of Liaocheng in Shandong Province.
Atmosphere 13 01221 g001
Figure 2. The architecture of the artificial neural network predicting PM2.5 concentration.
Figure 2. The architecture of the artificial neural network predicting PM2.5 concentration.
Atmosphere 13 01221 g002
Figure 3. Annual change in air quality in Liaocheng City from 2014 to 2021.
Figure 3. Annual change in air quality in Liaocheng City from 2014 to 2021.
Atmosphere 13 01221 g003
Figure 4. Monthly variation in PM2.5 concentration in Liaocheng City from 2014 to 2021.
Figure 4. Monthly variation in PM2.5 concentration in Liaocheng City from 2014 to 2021.
Atmosphere 13 01221 g004
Figure 5. Air quality changes before, during, and after lockdown in 2020 (and the same period in 2019) (unit: μg/m3 (CO (mg/m3)).
Figure 5. Air quality changes before, during, and after lockdown in 2020 (and the same period in 2019) (unit: μg/m3 (CO (mg/m3)).
Atmosphere 13 01221 g005
Figure 6. Comparison of the monthly average PM2.5 concentration in Liaocheng City from January to June 2019 and 2020.
Figure 6. Comparison of the monthly average PM2.5 concentration in Liaocheng City from January to June 2019 and 2020.
Atmosphere 13 01221 g006
Figure 7. The cycles of monthly PM2.5 concentration in Liaocheng City from 2014 to 2021.
Figure 7. The cycles of monthly PM2.5 concentration in Liaocheng City from 2014 to 2021.
Atmosphere 13 01221 g007
Figure 8. Training, verification, and prediction of monthly average PM2.5 concentration in Liaocheng from 2014 to 2022.
Figure 8. Training, verification, and prediction of monthly average PM2.5 concentration in Liaocheng from 2014 to 2022.
Atmosphere 13 01221 g008
Table 1. Chinese ambient air quality standards.
Table 1. Chinese ambient air quality standards.
Air PollutantsIndexGrade I ValueGrade II Value
PM2.5 (μg/m3)Annual average1535
24 h average3575
PM10 (μg/m3)Annual average4070
24 h average50150
O3 (μg/m3)Maximum of daily 8 h moving average100160
NO2 (μg/m3)Annual average4040
24 h average8080
SO2 (μg/m3)Annual average2060
24 h average50150
CO (mg/m3)24 h average44
Table 2. AQI scope and air quality category.
Table 2. AQI scope and air quality category.
AQI ValueLevelCategoryColor Indication
0–50IExcellentGreen
51–100IIGoodYellow
101–150IIIMild pollutionOrange
151–200IVModerate pollutionRed
201–300VHeavy pollutionPurple
>300VISerious pollutionMaroon
Table 3. Comparison of R, RMSE(μg/m3), and MAE (μg/m3) between various input variables.
Table 3. Comparison of R, RMSE(μg/m3), and MAE (μg/m3) between various input variables.
VariablesR RMSE MAE
TrainingVerificationPredictingTrainingVerificationPredictingTrainingVerificationPredicting
10.76810.64410.52121.316.220.115.814.114.8
20.79290.70420.535420.215.421.214.312.514.3
30.79660.79850.631820.113.520.014.310.913.8
40.79950.76930.679720.015.019.914.212.513.8
50.84080.86780.633218.512.818.612.910.713.5
60.86270.86350.884417.312.112.712.09.810.4
70.81150.88150.857122.716.715.414.114.912.7
80.81660.89620.865121.119.218.314.216.915.7
90.73950.7860.772129.315.214.818.213.311.2
100.86120.84330.814619.012.513.212.110.610.4
110.94720.98340.95710.94.46.67.73.54.6
120.90550.97160.869114.47.311.19.35.89.5
130.90120.97090.872515.55.711.09.24.59.3
140.85340.72040.847419.915.516.812.012.013.0
150.8390.93140.822420.711.820.312.59.316.4
160.86320.89270.84919.611.917.711.58.014.1
Table 4. Comparison of R, RMSE(μg/m3), and MAE (μg/m3) between different nodes in the hidden layer.
Table 4. Comparison of R, RMSE(μg/m3), and MAE (μg/m3) between different nodes in the hidden layer.
NodesRRMSEMAE
TrainingVerificationPredictingTrainingVerificationPredictingTrainingVerificationPredicting
10.90360.92020.69214.58.615.410.27.612.3
20.9040.92140.692514.48.615.410.17.612.3
30.92090.94780.81113.17.512.68.75.99.4
40.92560.93510.817612.89.412.58.87.89.0
50.91670.95370.910614.28.39.19.67.37.4
60.94720.98340.95710.94.46.67.73.54.6
70.83870.95730.797822.513.919.814.813.216.9
80.77710.83860.78227.612.015.918.39.313.6
90.82520.83550.844123.419.519.416.117.116.9
100.86210.88020.84421.815.719.314.213.317.3
110.77720.86570.792229.814.215.519.512.812.8
120.81360.81480.813728.515.215.518.613.612.9
130.77680.89490.71227.913.217.718.012.414.2
140.83990.96160.852324.614.818.516.614.117.1
150.71050.81860.795433.114.016.621.711.413.0
160.80280.89660.828328.511.516.119.210.514.2
Table 5. Comparison of R, RMSE(μg/m3), and MAE (μg/m3) between various training algorithms.
Table 5. Comparison of R, RMSE(μg/m3), and MAE (μg/m3) between various training algorithms.
Training FunctionsR RMSE MAE
TrainingVerificationPredictingTrainingVerificationPredictingTrainingVerificationPredicting
trainbr0.94720.98340.957010.94.46.67.73.54.6
trainlm0.91580.90940.695213.59.315.39.36.911.8
traingdx0.73850.78060.602023.323.225.418.019.621.4
traingd0.64460.81030.715826.421.527.018.817.122.5
traingdm0.64690.80170.604226.119.025.619.615.019.7
trainrp0.40240.46600.671731.122.425.523.418.320.9
traincgp0.80720.71140.757620.521.624.614.616.019.7
traincgf0.70260.76860.445824.418.628.818.916.525.3
traincgb0.67220.53210.776725.628.822.319.024.717.7
trainscg0.86150.95180.844220.012.414.611.710.811.2
trainbfg0.65730.88050.723326.017.328.719.814.524.3
trainoss0.61980.64420.708126.822.424.320.618.421.3
Table 6. Comparison of R, RMSE(μg/m3), and MAE (μg/m3) between various transfer functions.
Table 6. Comparison of R, RMSE(μg/m3), and MAE (μg/m3) between various transfer functions.
Transfer FunctionR RMSE MAE
TrainingVerificationPredictingTrainingVerificationPredictingTrainingVerificationPredicting
tansig-purelin0.82400.89960.777122.713.020.013.910.016.2
tansig-logsig0.73260.86850.712931.012.616.120.210.711.9
tansig-tansig0.74310.88210.724730.511.315.219.69.311.0
logsig-purelin0.83430.90890.850122.911.516.414.29.614.9
logsig-tansig0.67200.75070.583736.915.418.125.011.913.7
logsig-logsig0.81660.90960.894324.212.713.215.210.611.1
purelin-tansig0.67120.78090.651537.316.318.425.713.114.7
purelin-logsig0.90420.92190.696914.48.615.310.17.512.1
purelin-purelin0.89800.97410.711514.85.215.210.34.412.2
tansig-poslin0.86640.96450.933821.55.27.812.14.56.1
logsig-poslin0.94720.98340.957010.94.46.67.73.54.6
poslin-poslin0.89800.97410.711514.85.215.210.44.512.2
purelin-poslin0.89360.97840.721025.912.720.319.811.214.9
Table 7. The difference between existing PM2.5 models and the proposed ANN model.
Table 7. The difference between existing PM2.5 models and the proposed ANN model.
LiteratureModelAreaR2RMSE (μg/m3)MAE (μg/m3)
[7]ANNAhvaz, Iran0.74
[35]BRNN/FFSKaohsiung, Taiwan, China0.952.73812.3292
[36]MLPEastern China, China 41.9731.11
[37]Aggregated LSTMTaiwan, China 3.942.94
[38]LSTMKathmandu valley, Nepal 13.0410.81
[39]WBBNNBeijing, China0.837133.81234.515
[40]BPNNBeijing, China 24.06
[41]ANNDelhi, India0.86
[42]ANNAddis Ababa, Ethiopia0.943
[43]LSTMEBeijing, China 12.65.46
[44]CNN-LSTMBeijing, China0.92157324.2287414.63446
[45]CNNUnited States0.842.551.56
[46]3D CNN-GRUThe great Tehran0.786.448.89
[47]CEEMDAN-DeepTCNBeijing, China 1.10640.6561
[48]CNN-GBMShanghai, China0.8510.023.56
[49]LSTMSantiago, Chile0.87
[50]DNNChina0.93
[51]DBN-BPChengdu, China 14.06
[52]LSTM-BayesTianjin, China0.9413.068.61
[53]CNN-BPTaiwan, China0.894.98
[54]Lag-FLSTMWayne County in Michigan 3.4821.85
[55]STWC-DNNChina0.9212.78.36
[56]WPD-SE-VMD-Q-GRUHarbin, Nanjing, Shijiazhuang 2.94372.2342
[57]CNN-SPP-LSTMShanghai, China0.9619.4856.009
[58]ANNCalifornia, United States0.9840.027
[59]CNN-BiLSTM-AttentionBeijing, China0.963.0952.366
This paperANNLiaocheng, China0.91596.6314.6245
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Share and Cite

MDPI and ACS Style

He, Z.; Guo, Q.; Wang, Z.; Li, X. Prediction of Monthly PM2.5 Concentration in Liaocheng in China Employing Artificial Neural Network. Atmosphere 2022, 13, 1221. https://doi.org/10.3390/atmos13081221

AMA Style

He Z, Guo Q, Wang Z, Li X. Prediction of Monthly PM2.5 Concentration in Liaocheng in China Employing Artificial Neural Network. Atmosphere. 2022; 13(8):1221. https://doi.org/10.3390/atmos13081221

Chicago/Turabian Style

He, Zhenfang, Qingchun Guo, Zhaosheng Wang, and Xinzhou Li. 2022. "Prediction of Monthly PM2.5 Concentration in Liaocheng in China Employing Artificial Neural Network" Atmosphere 13, no. 8: 1221. https://doi.org/10.3390/atmos13081221

APA Style

He, Z., Guo, Q., Wang, Z., & Li, X. (2022). Prediction of Monthly PM2.5 Concentration in Liaocheng in China Employing Artificial Neural Network. Atmosphere, 13(8), 1221. https://doi.org/10.3390/atmos13081221

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop