A new hybridization filtering-based linear-nonlinear models for time series forecasting

Joint Authors

Khashei, Mehdi
Ahmadi, Mehrnaz

Source

Journal of Engineering Research

Issue

Vol. 11, Issue 1 A (31 Mar. 2023), pp.371-399, 29 p.

Publisher

Kuwait University Academic Publication Council

Publication Date

2023-03-31

Country of Publication

Kuwait

No. of Pages

29

Main Subjects

Mechanical Engineering

Abstract EN

The prediction is one of the most influential factors in management and efficient utilization in various sciences as well as economic planning.

Since there is a direct relationship between the accuracy of predictions and the quality of the decisions made, today, despite the numerous prediction methods and the achievement of accurate predictions, most researchers still try to combine different methods in order to obtain more accurate results.

In order to improve the accuracy of predictions, the present study introduces a new parallel hybrid methodology based on trend-residual data preprocessing to time series predict.

In the proposed model, different patterns and structures of trend and residual as well as linear and nonlinear, are simultaneously modeled.

In the first stage of the proposed method, the data is analyzed by the Kalman filter (KF) method and divided into two groups of trend and residual patterns.

Then, the trend patterns from the previous step, with the original data, are simultaneously considered as input of the autoregressive integrated moving average with explanatory variable (ARIMAX) and multilayer perceptron (MLP), as linear and nonlinear forecasting models, respectively.

Then, this step is repeated for residual patterns.

In this way, the proposed model can model four types of patterns, including linear-trend, linear-residual, nonlinear-trend, and nonlinear-residual.

Finally, the results of these patterns, along with the Kalman trend, are combined together in a parallel hybridization process, and final forecasts of the proposed model are obtained.

Numerical results of 2 wind power and speed benchmarks indicate that the proposed model can approximately improve 41.73% and 42.14% the performance of its single linear and nonlinear components, respectively.

Furthermore, the proposed model can yield more accurate results than traditional series-based components combination hybrid models, parallel-based components combination hybrid models, Pre-processing-based linear models, and preprocessing-based nonlinear models by the same components.

The proposed method can roughly improve 16.35%, 24.39%, 36.09%, and 14.98% the performance of these hybrid models, respectively.

Therefore, the proposed model may be a suitable alternative for single as well as hybrid models for wind power forecasting, especially when more accurate results and/or more quality decisions are required.

American Psychological Association (APA)

Ahmadi, Mehrnaz& Khashei, Mehdi. 2023. A new hybridization filtering-based linear-nonlinear models for time series forecasting. Journal of Engineering Research،Vol. 11, no. 1 A, pp.371-399.
https://search.emarefa.net/detail/BIM-1494701

Modern Language Association (MLA)

Ahmadi, Mehrnaz& Khashei, Mehdi. A new hybridization filtering-based linear-nonlinear models for time series forecasting. Journal of Engineering Research Vol. 11, no. 1 A (Mar. 2023), pp.371-399.
https://search.emarefa.net/detail/BIM-1494701

American Medical Association (AMA)

Ahmadi, Mehrnaz& Khashei, Mehdi. A new hybridization filtering-based linear-nonlinear models for time series forecasting. Journal of Engineering Research. 2023. Vol. 11, no. 1 A, pp.371-399.
https://search.emarefa.net/detail/BIM-1494701

Data Type

Journal Articles

Language

English

Notes

Includes bibliographical references : p. 395-399

Record ID

BIM-1494701