Javascript must be enabled to continue!
Forecasting crude oil prices volatility by reconstructing EEMD components using ARIMA and FFNN models
View through CrossRef
The energy sector which includes gas and oil is concerned to explore and develop refined oil and it’s a multitrillion business. As crude oil is a very important source of energy, and it has a very valuable impact on a country’s economic growth, national security, and social stability. Therefore, accurately predicting the crude oil price volatility is a very important topic of research and still, it is a challenge for researchers to accurately forecast crude oil prices. Therefore, this study is conducted to address the said problem significantly. This research presents a novel hybrid method for reconstructing EEMD IMFs that involves two steps. Visual analysis of Average Mutual Information (AMI) graphs were used to rebuild IMFs. EEMD IMFs were split into two components called stochastic and deterministic. In the proposed method, reconstruction of IMFs of EEMD was done at two stages to see if the stochastic components have more variation. Later, ARIMA and FFNN models were used to test the suggested method’s performance. For this purpose, Brent crude oil prices data was used, and the hybrid model EEMD-S2D1D2-ARIMA/FFNN outperformed the other existing hybrid model with minimum MAE = 0.2323, RMSE = 0.3058 and MAPE = 0.5273. A simulation study was also conducted to check the robustness of the proposed method for N = 50, 500, 1,000, 2000, 5,000, and 7,500. The simulation results also confirm that the unpredictability present in the reconstructed IMFs of the hybrid models EEMD-ARIMA/FFNN and EEMD-SD-ARIMA/FFNN has been reduced by the proposed hybrid models.
Title: Forecasting crude oil prices volatility by reconstructing EEMD components using ARIMA and FFNN models
Description:
The energy sector which includes gas and oil is concerned to explore and develop refined oil and it’s a multitrillion business.
As crude oil is a very important source of energy, and it has a very valuable impact on a country’s economic growth, national security, and social stability.
Therefore, accurately predicting the crude oil price volatility is a very important topic of research and still, it is a challenge for researchers to accurately forecast crude oil prices.
Therefore, this study is conducted to address the said problem significantly.
This research presents a novel hybrid method for reconstructing EEMD IMFs that involves two steps.
Visual analysis of Average Mutual Information (AMI) graphs were used to rebuild IMFs.
EEMD IMFs were split into two components called stochastic and deterministic.
In the proposed method, reconstruction of IMFs of EEMD was done at two stages to see if the stochastic components have more variation.
Later, ARIMA and FFNN models were used to test the suggested method’s performance.
For this purpose, Brent crude oil prices data was used, and the hybrid model EEMD-S2D1D2-ARIMA/FFNN outperformed the other existing hybrid model with minimum MAE = 0.
2323, RMSE = 0.
3058 and MAPE = 0.
5273.
A simulation study was also conducted to check the robustness of the proposed method for N = 50, 500, 1,000, 2000, 5,000, and 7,500.
The simulation results also confirm that the unpredictability present in the reconstructed IMFs of the hybrid models EEMD-ARIMA/FFNN and EEMD-SD-ARIMA/FFNN has been reduced by the proposed hybrid models.
Related Results
Peramalan Harga Saham BBRI Menggunakan Metode Hybrid ARIMA-SVR
Peramalan Harga Saham BBRI Menggunakan Metode Hybrid ARIMA-SVR
Abstract. PT Bank Rakyat Indonesia (BBRI) is one of the most popular investment instruments, but it has high stock price volatility due to global and domestic economic factors. Thi...
Crude Oil Characterization For Micellar Enhanced Oil Recovery
Crude Oil Characterization For Micellar Enhanced Oil Recovery
Abstract
Chemically enhanced oil recovery depends on the phase and interfacial properties of the crude phase and interfacial properties of the crude Oil-brine-sur...
Aplikasi Teknik Data Driven untuk Prediksi Debit Sungai Bulanan Studi Kasus Bendung Loning, Magelang
Aplikasi Teknik Data Driven untuk Prediksi Debit Sungai Bulanan Studi Kasus Bendung Loning, Magelang
Abstrak. Model prediksi debit sungai sangat penting dalam perencanaan, desain dan manajemen sumberdaya air. Penelitian ini bertujuan untuk membandingkan akurasi prediksi debit bula...
The Dynamic Relationship between Crude Oil Prices and Stock Market Price Volatility in Nigeria: A Cointegrated VAR-GARCH Model
The Dynamic Relationship between Crude Oil Prices and Stock Market Price Volatility in Nigeria: A Cointegrated VAR-GARCH Model
This study investigates the dynamic relationship between crude oil prices and stock market price volatility in Nigeria using cointegrated Vector Generalized Autoregressive conditio...
Comparison of ARIMA model, ARIMA-BPNN model and ARIMA-ERNN model in predicting incidence of dengue in China
Comparison of ARIMA model, ARIMA-BPNN model and ARIMA-ERNN model in predicting incidence of dengue in China
Abstract
Background
Dengue remains an enduring public health concern across tropical and subtropical regions of China, with a d...
Crude Oil and Crude Oil Derivatives Transactions by Oil and Gas Producers.
Crude Oil and Crude Oil Derivatives Transactions by Oil and Gas Producers.
This study attempts to resolve two important issues. First, it investigates the diversification benefit of crude oil for equities. Second, it examines whether or not crude oil deri...
Integration of Hybrid ARIMA Artificial Neural Networks for Accurate Platinum Price Prediction
Integration of Hybrid ARIMA Artificial Neural Networks for Accurate Platinum Price Prediction
Introduction: The autoregressive integrated moving average (ARIMA) has been a widely used linear model in time series forecasting for the last thirty years. Furthermore, as a poten...
Forecasting Volatility
Forecasting Volatility
This monograph puts together results from several lines of research that I have pursued over a period of years, on the general topic of volatility forecasting for option pricing ap...

