Access the full text.
Sign up today, get DeepDyve free for 14 days.
X. He (2018)
Crude Oil Prices Forecasting: Time Series vs. SVR ModelsJournal of International Technology and Information Management
(2016)
prices”, Revista QUID
International Journal of Advance Research in Science and Engineering, 7
Spyros Makridakis, A. Andersen, R. Carbone, R. Fildes, M. Hibon, R. Lewandowski, J. Newton, E. Parzen, R. Winkler (1982)
The accuracy of extrapolation (time series) methods: Results of a forecasting competitionJournal of Forecasting, 1
Perry Sadorsky (2006)
Modeling and forecasting petroleum futures volatilityEnergy Economics, 28
(2016)
2016), “Analysis of global oil consumption based on grey prediction model
N. Gupta, S. Nigam (2020)
Crude Oil Price Prediction using Artificial Neural Network
Michael Ye, J. Zyren, J. Shore (2005)
A monthly crude oil spot price forecasting model using relative inventoriesInternational Journal of Forecasting, 21
S. Yaziz, Maizah Ahmad, Lee Nian, N. Muhammad (2011)
A comparative study on box-jenkins and garch models in forecasting crude oil pricesJournal of Applied Sciences, 11
E. Ziegel (2000)
Forecasting and Time Series: An Applied Approach
Gurudeo Tularam, T. Saeed (2016)
Oil-Price Forecasting Based on Various Univariate Time-Series ModelsAmerican Journal of Operations Research, 06
J. Deng (1989)
Introduction to Grey system theoryJournal of Grey System, 1
M. Ahmad (2011)
Modeling and Forecasting Oman Crude Oil Prices Using Box-Jenkins TechniquesAgricultural & Natural Resource Economics eJournal
A. Safari, M. Mohammadi (2017)
ASSESSING LINEAR AND NONLINEAR MODELS TO FORECAST OPEC OIL PRICES, 1
Y. Xiang, Zhuang Xiao (2013)
Application of ARIMA Model in Short-Term Prediction of International Crude Oil PriceAdvanced Materials Research, 798-799
Aimei Lin (2009)
Prediction of international crude oil futures price based on GM(1,1)2009 IEEE International Conference on Grey Systems and Intelligent Services (GSIS 2009)
Heng Lyu, Yuwen Chang (2017)
Research on International Crude Oil Price Forecasting Model, 1
Emmanuel Mensah (2015)
Box-Jenkins modelling and forecasting of Brent crude oil price
Fangping Yu, Yanqing Liu, Chenxi Zhang (2021)
Forecasting the Price of Fuel Oil: A STL-(ELM+ARIMA) Combination ApproachJournal of Physics: Conference Series, 1903
Niaz Behmiri, José Manso (2013)
Crude Oil Price Forecasting Techniques: A Comprehensive Review of LiteratureAgricultural & Natural Resource Economics eJournal
M. Aamir, A. Shabri (2015)
MODELLING AND FORECASTING MONTHLY CRUDE OIL PRICES OF PAKISTAN: A COMPARATIVE STUDY OF ARIMA, GARCH AND ARIMA- GARCH MODELS
(2016)
Analysis of global oil consumption based on grey prediction model ”
Chunlan Zhao, Bing Wang (2014)
Forecasting Crude Oil Price with an Autoregressive Integrated Moving Average (ARIMA) Model
Wen-Yi Peng, C. Chu (2009)
A comparison of univariate methods for forecasting container throughput volumesMath. Comput. Model., 50
(2010)
Research on China’s oil consumption demand forecast based on Grey System Theory
(1976)
Time Series Analysis, Forecasting and Control, 2nd ed
Benjamin Beckers, Samya Beidas-Strom (2015)
Forecasting the Nominal Brent Oil Price with VARs-One Model Fits All?Econometric Modeling: Capital Markets - Forecasting eJournal
J.Thomas Yokuma, J. Armstrong (1995)
Beyond Accuracy: Comparison of Criteria Used to Select Forecasting MethodsInternational Journal of Forecasting, 11
N. Norouzi, M. Fani (2020)
Black gold falls, black plague arise - An Opec crude oil price forecast using a gray prediction modelUpstream Oil and Gas Technology, 5
H. Duan, G. Lei, K. Shao (2018)
Forecasting Crude Oil Consumption in China Using a Grey Prediction Model with an Optimal Fractional-Order Accumulating OperatorComplex., 2018
C. Nwafor, Azeez Oyedele (2018)
Forecasting OPEC Oil Price: A Comparison of Parametric Stochastic ModelsEuropean Journal of Business and Management, 10
This paper aims to compare different univariate forecasting methods to provide a more accurate short-term forecasting model on the crude oil price for rendering a reference to manages.Design/methodology/approachSix different univariate methods, namely the classical decomposition model, the trigonometric regression model, the regression model with seasonal dummy variables, the grey forecast, the hybrid grey model and the seasonal autoregressive integrated moving average (SARIMA), have been used.FindingsThe authors found that the grey forecast is a reliable forecasting method for crude oil prices.Originality/valueThe contribution of this research study is using a small size of data and comparing the forecasting results of the six univariate methods. Three commonly used evaluation criteria, mean absolute error (MAE), root mean squared error (RMSE) and mean absolute percent error (MAPE), were adopted to evaluate the model performance. The outcome of this work can help predict the crude oil price.
Maritime Business Review – Emerald Publishing
Published: Mar 7, 2023
Keywords: Forecasting accuracy comparison; Univariate forecasting models; Crude oil price
Read and print from thousands of top scholarly journals.
Already have an account? Log in
Bookmark this article. You can see your Bookmarks on your DeepDyve Library.
To save an article, log in first, or sign up for a DeepDyve account if you don’t already have one.
Copy and paste the desired citation format or use the link below to download a file formatted for EndNote
Access the full text.
Sign up today, get DeepDyve free for 14 days.
All DeepDyve websites use cookies to improve your online experience. They were placed on your computer when you launched this website. You can change your cookie settings through your browser.