Design and implementation of the SARIMA–SVM time series analysis algorithm for the improvement of atmospheric environment forecast accuracy

With the recent increased interest in atmospheric pollutants in South Korea, studies on the analysis and forecast of atmospheric pollution using Internet-of-Things technology have been actively conducted. To forecast atmospheric pollution, a multiple regression analysis technique based on statistical techniques, data mining, and an analysis technique combining time series models have typically been used. In terms of accuracy, however, multiple regression analysis is insufficient for analyzing atmospheric environment data in South Korea. In addition, although the time series analysis technique is appropriate for analyzing linear data, it is inappropriate for analyzing atmospheric environment data in South Korea, where linear and nonlinear data are mixed. Therefore, this study proposes a seasonal auto regressive integrated moving average–support vector machine (SARIMA–SVM) time series analysis algorithm, combining time series analysis and nonlinear analysis, for data analysis of atmospheric environment information and improvement of pollution forecast accuracy. The proposed algorithm analyzes the seasonality in environmental contamination by using the SARIMA model, and succeeds in improving accuracy in the contamination forecast through an analysis of linear and nonlinear characteristics by applying an SVM nonlinear regression model. A comparative assessment with the existing atmospheric contamination forecast algorithm was conducted as well. The assessment results show that the forecast accuracy of the proposed algorithm improved by 20.81% for fine dust, and by 43.77% for ozone, compared to the performance of the existing models.

[1]  Rui Li,et al.  Based on a multi-agent system for multi-scale simulation and application of household's LUCC: a case study for Mengcha village, Mizhi county, Shaanxi province , 2013, SpringerPlus.

[2]  Fizazi Hadria,et al.  A Multi-Objective TRIBES/OC-SVM Approach for the Extraction of Areas of Interest from Satellite Images , 2017, J. Inf. Process. Syst..

[3]  Lelitha Vanajakshi,et al.  Short-term traffic flow prediction using seasonal ARIMA model with limited input data , 2015, European Transport Research Review.

[4]  Muhamad Taufik Abdullah,et al.  Region-Based Facial Expression Recognition in Still Images , 2013, J. Inf. Process. Syst..

[5]  Hristo Chervenkov,et al.  Modelled air pollution levels versus EC air quality legislation - results from high resolution simulation , 2013, SpringerPlus.

[6]  Mitsutaka Matsumoto,et al.  Examination of demand forecasting by time series analysis for auto parts remanufacturing , 2015 .

[7]  Yonghong Yan,et al.  Using SVM as Back-End Classifier for Language Identification , 2008, EURASIP J. Audio Speech Music. Process..

[8]  Hye-Lan Roh,et al.  A study about a convergence development plan of MOOCs based e-learning in university , 2015 .

[9]  Sang Jeen Hong,et al.  Fault Detection in the Semiconductor Etch Process Using the Seasonal Autoregressive Integrated Moving Average Modeling , 2014, J. Inf. Process. Syst..

[10]  Tetsuya Takiguchi,et al.  A robust SVM classification framework using PSM for multi-class recognition , 2015, EURASIP J. Image Video Process..

[11]  Seung Wan Han,et al.  A Hierarchical Text Rating System for Objectionable Documents , 2005, J. Inf. Process. Syst..

[12]  Xuan Thanh Nguyen,et al.  Spatial Interpolation and Assimilation Methods for Satellite and Ground Meteorological Data in Vietnam , 2015, J. Inf. Process. Syst..

[13]  Jia Liu,et al.  Homogenous ensemble phonotactic language recognition based on SVM supervector reconstruction , 2014, EURASIP J. Audio Speech Music. Process..

[14]  Lang Zhang,et al.  A credit risk assessment model based on SVM for small and medium enterprises in supply chain finance , 2015, Financial Innovation.

[15]  Ali Haidar,et al.  A novel approach for optimizing climate features and network parameters in rainfall forecasting , 2018, Soft Comput..

[16]  Mohamed Abdel Fattah,et al.  The Use of MSVM and HMM for Sentence Alignment , 2012, J. Inf. Process. Syst..

[17]  Mouad Zouina,et al.  A novel lightweight URL phishing detection system using SVM and similarity index , 2017, Human-centric Computing and Information Sciences.

[18]  Salvatore Sessa,et al.  Fuzzy transforms prediction in spatial analysis and its application to demographic balance data , 2017, Soft Computing.

[19]  Zhilu Wu,et al.  Hybrid radar emitter recognition based on rough k-means classifier and SVM , 2012, EURASIP Journal on Advances in Signal Processing.

[20]  Illuminating ARIMA model-based seasonal adjustment with three fundamental seasonal models , 2016 .