Novel Regression and Least Square Support Vector Machine Learning Technique for Air Pollution Forecasting

Novel Regression and Least Square Support Vector Machine Learning Technique for Air Pollution Forecasting

  IJETT-book-cover           
  
© 2023 by IJETT Journal
Volume-71 Issue-4
Year of Publication : 2023
Author : M. Dhanalakshmi, V. Radha
DOI : 10.14445/22315381/IJETT-V71I4P214

How to Cite?

M. Dhanalakshmi, V. Radha , "Novel Regression and Least Square Support Vector Machine Learning Technique for Air Pollution Forecasting," International Journal of Engineering Trends and Technology, vol. 71, no. 4, pp. 147-158, 2023. Crossref, https://doi.org/10.14445/22315381/IJETT-V71I4P214

Abstract
Air pollution is the origination of particulate matter, chemicals, or biological substances that brings pain to either humans or other living creatures or instigates discomfort to the natural habitat and the airspace. Hence, air pollution remains one of the paramount environmental issues as far as metropolitan cities are concerned. Several air pollution benchmarks are even said to have a negative influence on human health. Also, improper detection of air pollution benchmarks results in severe complications for humans and living creatures. To address this aspect, a novel technique called, Discretized Regression and Least Square Support Vector (DR-LSSV) based air pollution forecasting is proposed. The results indicate that the proposed DR-LSSV Technique can efficiently enhance air pollution forecasting performance and outperforms the conventional machine learning methods in terms of air pollution forecasting accuracy, air pollution forecasting time, and false positive rate.

Keywords
Air pollution monitoring, Discretized hartley transformation, Constrained maximum likelihood, Linear regression, SVM, Air pollution forecasting, Novel machine learning algorithms.

References
[1] Qi Zhang et al., “Deep-AIR: A Hybrid CNN-LSTM Framework for Fine-Grained Air Pollution Estimation and Forecast in Metropolitan Cities,” IEEE Access, vol. 10, pp. 55818-55841, 2022.
[CrossRef] [Google Scholar] [Publisher Link]
[2] Abdelkader Dairi et al., “Integrated Multiple Directed Attention-Based Deep Learning for Improved Air Pollution Forecasting,” IEEE Transactions on Instrumentation and Measurement, vol. 70, pp. 1-15, 2021.
[CrossRef] [Google Scholar] [Publisher Link]
[3] Baowei Wang et al., “Air Quality Forecasting Based on Gated Recurrent Long Short Term Memory Model in Internet of Things,” IEEE Access, vol. 7, pp. 69524-69534, 2019.
[CrossRef] [Google Scholar] [Publisher Link]
[4] Shengdong Du et al., “Deep Air Quality Forecasting Using Hybrid Deep Learning Framework,” IEEE Transactions on Knowledge and Data Engineering, vol. 33, no. 6, pp. 2412-2424, 2021.
[CrossRef] [Google Scholar] [Publisher Link]
[5] Abdellatif Bekkar et al., “Air‑Pollution Prediction in Smart City, Deep Learning Approach,” Journal of Big Data, 2021.
[CrossRef] [Google Scholar] [Publisher Link]
[6] Shreya Kusrey, Avinash Rai, and Dr. Vineeta (Nigam) Saxena, "Zigbee Based Air Pollution Monitoring and Control System Using WSN," SSRG International Journal of Electronics and Communication Engineering, vol. 4, No. 6, Pp. 7-11, 2017.
[CrossRef] [Google Scholar] [Publisher Link]
[7] Yuting Yang, Gang Mei, and Stefano Izzo, “Revealing Influence of Meteorological Conditions on Air Quality Prediction Using Explainable Deep Learning,” IEEE Access, vol. 10, pp. 50755-50773, 2022.
[CrossRef] [Google Scholar] [Publisher Link]
[8] Qing Tao et al., “Air Pollution Forecasting Using a Deep Learning Model Based on 1D Convnets and Bidirectional GRU,” IEEE Access, vol. 7, pp. 76690-76698, 2019.
[CrossRef] [Google Scholar] [Publisher Link]
[9] Ekta Sharma et al., “Deep Air Quality Forecasts: Suspended Particulate Matter Modeling with Convolutional Neural and Long Short-Term Memory Networks,” IEEE Access, vol. 8, pp. 209503-209516, 2020.
[CrossRef] [Google Scholar] [Publisher Link]
[10] Mrs.A.Bharathi Lakshmi, Dr.D.Christopher Durairaj, and Mrs.T.Veiluvanthal, "PSNR Based Optimization Applied to Maximum Likelihood Expectation Maximization for Image Reconstruction on a Multi-Core System," SSRG International Journal of Computer Science and Engineering , vol. 7, no. 2, pp. 28-41, 2020.
[CrossRef] [Publisher Link]
[11] Raquel Espinosa et al., “A Time Series Forecasting Based Multi-Criteria Methodology for Air Quality Prediction,” Applied Soft Computing, vol. 113, 2021.
[CrossRef] [Google Scholar] [Publisher Link]
[12] M. Dhanalakshmi, and V. Radha, "Discretized Linear Regression and Multiclass Support Vector Based Air Pollution Forecasting Technique," International Journal of Engineering Trends and Technology, vol. 70, No. 11, Pp. 315-323, 2022.
[CrossRef] [Google Scholar] [Publisher Link]
[13] K. Kumar, and B. P. Pande, “Air Pollution Prediction with Machine Learning: A Case Study of Indian Cities,” International Journal of Environmental Science and Technology, 2022.
[CrossRef] [Google Scholar] [Publisher Link]
[14] Priscilla Whitin, and V. Jayasankar, "A Novel Deep Learning-Based System for Real-Time Temperature Monitoring of Bone Hyperthermia," SSRG International Journal of Electrical and Electronics Engineering, vol. 10, no. 1, pp. 187-196, 2023.
[CrossRef] [Publisher Link]
[15] Azim Heydari et al., “Air Pollution Forecasting Application Based on Deep Learning Model and Optimization Algorithm,” Clean Technologies and Environmental Policy, 2022.
[CrossRef] [Google Scholar] [Publisher Link]
[16] Ying Zhang et al., “A Feature Selection and Multi-Model Fusion-Based Approach of Predicting Air Quality,” ISA Transactions, vol. 100, pp. 210-220, 2020.
[CrossRef] [Google Scholar] [Publisher Link]
[17] Yue-Shan Chang et al., “An LSTM-Based Aggregated Model for Air Pollution Forecasting,” Atmospheric Pollution Research, vol. 11, no. 8, pp. 1451-1463, 2020.
[CrossRef] [Google Scholar] [Publisher Link]
[18] Shakti Chourasiya, and Suvrat Jain, "A Study Review on Supervised Machine Learning Algorithms," SSRG International Journal of Computer Science and Engineering, vol. 6, no. 8, pp. 16-20, 2019.
[CrossRef] [Publisher Link]
[19] Ichrak Mokhtari et al., “Uncertainty-Aware Deep Learning Architectures for Highly Dynamic Air Quality Prediction,” IEEE Access, vol. 9, pp. 14765-14778, 2021.
[CrossRef] [Google Scholar] [Publisher Link]
[20] Hongqian Chen, Mengxi Guan, and Hui Li, “Air Quality Prediction Based on Integrated Dual LSTM Model,” IEEE Access, vol. 9, pp. 93285-93297, 2021.
[CrossRef] [Google Scholar] [Publisher Link]
[21] Saba Gul, Gul Muhammad Khan, and Sohail Yousaf, “Multi‑Step Short‑Term PM 2.5 Forecasting for Enactment of Proactive Environmental Regulation Strategies,” Environmental Monitoring and Assessment, 2022.
[CrossRef] [Google Scholar] [Publisher Link]
[22] Canyang Guo, Genggeng Liu, and Chi-Hua Chen, “Air Pollution Concentration Forecast Method Based on the Deep Ensemble Neural Network,” Wireless Communications and Mobile Computing, vol. 2020, p.13, 2020.
[CrossRef] [Google Scholar] [Publisher Link]
[23] Junjuan Xia et al., “Urban Ecological Monitoring and Prediction Based on Deep Learning,” Wireless Communications and Mobile Computing, vol. 2022, 2022.
[CrossRef] [Google Scholar] [Publisher Link]
[24] Qingchun Guo et al., “Air Pollution Forecasting Using Artificial and Wavelet Neural Networks with Meteorological Conditions,” Aerosol and Air Quality Research, vol. 20, no. 6, 2020.
[CrossRef] [Google Scholar] [Publisher Link]