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Prediction of the level of air pollution using adaptive neuro-fuzzy inference system

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Abstract

Air pollution is a severe environmental issue that has garnered international attention. Air pollution forecasting is critical for daily health monitoring and government decision-making. Current study methodologies, on the other hand, have been unable to adequately separate the geographical features of air pollution concentration data, resulting in fast changes in long-term accuracy and air quality. Many techniques of air pollution detection are available which developed by researchers. However, these techniques are not achieved efficient accuracy. Hence, in this paperis develop a hybrid adaptive neuro-fuzzy inference system (ANFIS) and a recurrent neural network (RNN). The RNN technique used to calculate pollution load has a direct influence on quantifying pollution’s impact on air quality and on the overall assessment results. As a result, the weight of each assessment criteria must be determined in a convoluted and thorough manner. This Fuzzy is engaged in air pollution assessments for CO, NO2, O3, PM2.5 and PM10. In five types of hybrid model investigations, the suggested system’s similarity was utilized to separate the three most acceptable climatic factors from six typical climatic characteristics (atmospheric pressure, relative humidity, air temperature, wind speed, wind direction, and total precipitation). The selected form, which included humidity, wind speed, and wind direction, provided high forecast accuracy. For each level of CO, NO2, O3, PM2.5 and PM10, we also presented the accuracy, sensitivity, specificity, accuracy, susceptibility, and F1 scores to assess the ANFIS-RNN prediction outcomes. On Python platforms, design and deploy unique air pollution coding systems. Simultaneously, comparative investigations revealed that ANFIS-RNN outperforms ANN and RNN samples. The collected findings indicate the efficacy of air pollution forecast analysis for an effective air quality forecast.

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References

  1. Athira V, Geetha P, Vinayakumar R, Soman KP (2018) Deepairnet: applying recurrent networks for air quality prediction. Proc Comput Sci 132:1394–1403

    Article  Google Scholar 

  2. Chen W, Panahi M, Khosravi K, Pourghasemi HR, Rezaie F, Parvinnezhad D (2019) Spatial prediction of groundwater potentiality using ANFIS ensembled with teaching-learning-based and biogeography-based optimization. J Hydrol 572:435–448

    Article  Google Scholar 

  3. Dincer NG, Akkuş O (2018) A new fuzzy time series model based on robust clustering for forecasting of air pollution. Ecol Inform 43:157–164

    Article  Google Scholar 

  4. Fan C, Wang J, Gang W, Li S (2019) Assessment of deep recurrent neural network-based strategies for short-term building energy predictions. Appl Energy 236:700–710

    Article  Google Scholar 

  5. Fan J, Wu L, Zhang F, Cai H, Wang X, Lu X, Xiang Y (2018) Evaluating the effect of air pollution on global and diffuse solar radiation prediction using support vector machine modeling based on sunshine duration and air temperature. Renew Sustain Energy Rev 94:732–747

    Article  Google Scholar 

  6. Fan H, Zhao C, Yang Y (2020) A comprehensive analysis of the spatio-temporal variation of urban air pollution in China during 2014–2018. Atmos Environ 220:117066

    Article  Google Scholar 

  7. Gu K, Qiao J, Lin W (2018) Recurrent air quality predictor based on meteorology-and pollution-related factors. IEEE Trans Industr Inform 14(9):3946–3955

    Article  Google Scholar 

  8. Hao Y, Tian C (2019) The study and application of a novel hybrid system for air quality early-warning. Appl Soft Comput 74:729–746

    Article  MathSciNet  Google Scholar 

  9. Jiang P, Li C, Li R, Yang H (2019) An innovative hybrid air pollution early-warning system based on pollutants forecasting and Extenics evaluation. Knowl-Based Syst 164:174–192

    Article  Google Scholar 

  10. Larkin A, Hystad P (2017) Towards personal exposures: how technology is changing air pollution and health research. Curr Environ Health Rep 4(4):463–471

    Article  Google Scholar 

  11. Li R, Dong Y, Zhu Z, Li C, Yang H (2015) A dynamic evaluation framework for ambient air pollution monitoring. Appl Math Model 65:52–71

    Article  Google Scholar 

  12. Li X, Qiao Y, Zhu J, Shi L, Wang Y (2017) The “APEC blue” endeavor: causal effects of air pollution regulation on air quality in China. J Clean Prod 168:1381–1388

    Article  Google Scholar 

  13. Li H, Wang J, Li R, Lu H (2019) Novel analysis–forecast system based on multi-objective optimization for air quality index. J Clean Prod 208:1365–1383

    Article  Google Scholar 

  14. Ma J, Ding Y, Cheng JC, Jiang F, Tan Y, Gan VJ, Wan Z (2020) Identification of high impact factors of air quality on a national scale using big data and machine learning techniques. J Clean Prod 244:118955

    Article  Google Scholar 

  15. Mao W, Wang W, Jiao L, Zhao S, Liu A (2021) Modeling air quality prediction using a deep learning approach: Method optimization and evaluation. Sustain Cities Soc 65:102567

    Article  Google Scholar 

  16. Qi Z, Wang T, Song G, Hu W, Li X, Zhang Z (2018) Deep air learning: interpolation, prediction, and feature analysis of fine-grained air quality. IEEE Trans Knowl Data Eng 30(12):2285–2297

    Article  Google Scholar 

  17. Shaddick G, Thomas ML, Green A, Brauer M, van Donkelaar A, Burnett R, Chang HH, Cohen A, Van Dingenen R, Dora C, Gumy S (2018) Data integration model for air quality: a hierarchical approach to the global estimation of exposures to ambient air pollution. J R Stat Soc: Ser C: Appl Stat 67(1):231–253

    Article  MathSciNet  Google Scholar 

  18. Sun D, Fang J, Sun J (2018) Health-related benefits of air quality improvement from coal control in China: Evidence from the Jing-Jin-Ji region. Resour Conserv Recycl 129:416–423

    Article  Google Scholar 

  19. Sun W, Sun J (2017) Daily PM2. 5 concentration prediction based on principal component analysis and LSSVM optimized by cuckoo search algorithm. J Environ Manag 188:144–152

    Article  Google Scholar 

  20. Wang J, Li H, Lu H (2018) Application of a novel early warning system based on fuzzy time series in urban air quality forecasting in China. Appl Soft Comput 71:783–799

    Article  Google Scholar 

  21. Wang J, Song G (2018) A deep spatial-temporal ensemble model for air quality prediction. Neurocomputing 314:198–206

    Article  Google Scholar 

  22. Wang J, Zhang X, Guo Z, Lu H (2017) Developing an early-warning system for air quality prediction and assessment of cities in China. Expert Syst Appl 84:102–116

    Article  Google Scholar 

  23. Wu L, Li N, Yang Y (2018) Prediction of air quality indicators for the Beijing-Tianjin-Hebei region. J Clean Prod 196:682–687

    Article  Google Scholar 

  24. Wu Q, Lin H (2019) A novel optimal-hybrid model for daily air quality index prediction considering air pollutant factors. Sci Total Environ 683:808–821

    Article  Google Scholar 

  25. Yang Z, Wang J (2017) A new air quality monitoring and early warning system: Air quality assessment and air pollutant concentration prediction. Environ Res 158:105–117

    Article  Google Scholar 

  26. Ye J, Dalle J, Nezami R, Hasanipanah M, Armaghani (2020) Stochastic fractal search-tuned ANFIS model to predict blast-induced air overpressure. Eng Comput pp 1–15

  27. Yu W, Kim Y II, Mechefske C (2019) Remaining useful life estimation using a bidirectional recurrent neural network based autoencoder scheme. Mech Syst Signal Process 129:764–780

    Article  Google Scholar 

  28. Yu M, Zhu Y, Lin C-J, Wang S, Xing J, Jang C, Huang J, Huang J, Jin J, Yu L (2019) Effects of air pollution control measures on air quality improvement in Guangzhou, China. J Environ Manag 244:127–137

    Article  Google Scholar 

  29. Zhang Y, Zhang R, Ma Q, Wang Y (2020) A feature selection and multi-model fusion-based approach of predicting air quality. ISA Trans 100:210–220

    Article  Google Scholar 

  30. Zhao G, Huang G, He H, He H, Ren J (2019) Regional spatiotemporal collaborative prediction model for air quality. IEEE Access 7:134903–134919

    Article  Google Scholar 

  31. Zhou Y, Chang F-J, Chang L-C, Kao I-F, Wang Y-S (2019) Explore a deep learning multi-output neural network for regional multi-step-ahead air quality forecasts. J Clean Prod 209:134–145

    Article  Google Scholar 

Download references

Acknowledgements

This article has been written with the financial Support of RUSA-Phase 2.0 grant sanctioned vide Letter NO.F,24-51/2014-U,Policy (TN Multi-Gen),Dept of Edn. Govt of India, Dt. 09.10.2018.

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Correspondence to S. Suganya.

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Suganya, S., Meyyappan, T. Prediction of the level of air pollution using adaptive neuro-fuzzy inference system. Multimed Tools Appl 82, 37131–37150 (2023). https://doi.org/10.1007/s11042-023-15046-0

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