6533b85ffe1ef96bd12c2623

RESEARCH PRODUCT

A novel hybrid model for air quality index forecasting based on two-phase decomposition technique and modified extreme learning machine.

Deyun WangDeyun WangShuai WeiChenqiang YueOlivier GrunderHongyuan Luo

subject

EngineeringEnvironmental Engineering010504 meteorology & atmospheric sciencesSeries (mathematics)business.industryMode (statistics)010501 environmental sciences01 natural sciencesPollutionHilbert–Huang transformTest caseDifferential evolutionStatisticsEnvironmental ChemistrybusinessWaste Management and DisposalAir quality indexAlgorithmRandomness0105 earth and related environmental sciencesExtreme learning machine

description

The randomness, non-stationarity and irregularity of air quality index (AQI) series bring the difficulty of AQI forecasting. To enhance forecast accuracy, a novel hybrid forecasting model combining two-phase decomposition technique and extreme learning machine (ELM) optimized by differential evolution (DE) algorithm is developed for AQI forecasting in this paper. In phase I, the complementary ensemble empirical mode decomposition (CEEMD) is utilized to decompose the AQI series into a set of intrinsic mode functions (IMFs) with different frequencies; in phase II, in order to further handle the high frequency IMFs which will increase the forecast difficulty, variational mode decomposition (VMD) is employed to decompose the high frequency IMFs into a number of variational modes (VMs). Then, the ELM model optimized by DE algorithm is applied to forecast all the IMFs and VMs. Finally, the forecast value of each high frequency IMF is obtained through adding up the forecast results of all corresponding VMs, and the forecast series of AQI is obtained by aggregating the forecast results of all IMFs. To verify and validate the proposed model, two daily AQI series from July 1, 2014 to June 30, 2016 collected from Beijing and Shanghai located in China are taken as the test cases to conduct the empirical study. The experimental results show that the proposed hybrid model based on two-phase decomposition technique is remarkably superior to all other considered models for its higher forecast accuracy.

10.1016/j.scitotenv.2016.12.018https://pubmed.ncbi.nlm.nih.gov/27989476