Forecasting Crude Palm Oil Prices Using Fuzzy Rule-Based Time Series Method

Rahim, N.F. and Othman, M. and Sokkalingam, R. and Abdul Kadir, E. (2018) Forecasting Crude Palm Oil Prices Using Fuzzy Rule-Based Time Series Method. IEEE Access, 6 . pp. 32216-32224.

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Oil palm can be reflected as the main contributor to capital investment, technology, foreign workers' employment, and knowledge management. There are risks and uncertainties arising from instability of crude palm oil (CPO) prices. Therefore, this research develops a new CPO price forecasting method using weighted subsethood-based algorithm in order to generate fuzzy rules of forecasting. The concept of fuzzy rule-based systems was embedded in fuzzy time series application to generate fuzzy IF-THEN rules. This paper aims to enhance the efficacy of time-series forecasting, which would in turn increase the accuracy of the predictions. The CPO prices data set was used for validation purposes. The accuracy of forecasting of the proposed method was compared with previous methods. The numerical results are comparable with the previous methods. The outcomes of the proposed method have shown an increase in the accuracies of the CPO price forecasts. As such, the above-mentioned method can be utilized for the creation of a new set of fuzzy rules to better predict CPO prices. © 2013 IEEE.

Item Type:Article
Impact Factor:cited By 0
Uncontrolled Keywords:Costs; Embedded systems; Forecasting; Fuzzy rules; Human resource management; Investments; Knowledge management; Numerical methods; Oil shale; Palm oil; Time series, Capital investment; Fuzzy if-then rules; Fuzzy time series; Numerical results; Risks and uncertainties; Subsethood; Time series forecasting; Time series method, Fuzzy inference
ID Code:21496
Deposited By: Ahmad Suhairi
Deposited On:01 Aug 2018 03:15
Last Modified:01 Aug 2018 03:15

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