All Days 2003
DOI: 10.2118/82014-ms
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Predicting Oil and Gas Spot Prices Using Chaos Time Series Analysis and Fuzzy Neural Network Model.

Abstract: The non-linear nature of historical oil and gas spot prices makes prediction very difficult. An evaluation of historical time series spot prices data with Fourier power spectrum analysis and autocorrelation function shows the likelihood of chaotic behavior. Characterization and identification of the data with the Lyapunov exponent suggest the existence of chaos. A chaos theory analysis is therefore used for the space phase reconstruction of the strange attractors in the oil and gas markets. The optimal embeddi… Show more

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Cited by 18 publications
(4 citation statements)
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“…Qualitative methods forecast the impact of infrequent cases, such as natural disasters and wars, on petroleum prices; these approaches have recently gained more popularity among petroleum price-estimating literature [35]. Even so, among various types of qualitative estimation methods, few have estimated petroleum prices, such as the Delphi method [36], belief networks [37], fuzzy logic, expert systems [38], and the web text mining method [39,40]. On the other hand, quantitative approaches show numerical and quantitative variables that affect petroleum prices; these include two groups of techniques: non-standard methods and econometric methods.…”
Section: Literature Reviewmentioning
confidence: 99%
“…Qualitative methods forecast the impact of infrequent cases, such as natural disasters and wars, on petroleum prices; these approaches have recently gained more popularity among petroleum price-estimating literature [35]. Even so, among various types of qualitative estimation methods, few have estimated petroleum prices, such as the Delphi method [36], belief networks [37], fuzzy logic, expert systems [38], and the web text mining method [39,40]. On the other hand, quantitative approaches show numerical and quantitative variables that affect petroleum prices; these include two groups of techniques: non-standard methods and econometric methods.…”
Section: Literature Reviewmentioning
confidence: 99%
“…The review of domestic and foreign [5][6][7][8][9][10] studies devoted to interpretation of the geological -geophysical data by neural networks, indicates researchers tendency to focus attention on the choice of an optimum mathematical training method of neural network, at preservation of the simplified triplex architecture. The present work offers quite different approach.…”
Section: Establishment Of Core-gis Dependence Forecasting Of Litholomentioning
confidence: 99%
“…In addition, we checked the reference lists of the identified papers [60]. Overall, 15 articles have been identified [2], [7], [45], [26], [28], [33], [8], [32], [29], [39], [31], [46], [47], [61], [36]. For the majority of articles, the topic of price prognosis is in the research focus.…”
Section: Decision Support In Natural Gas Tradingmentioning
confidence: 99%
“…For the majority of articles, the topic of price prognosis is in the research focus. For this purpose, time-series analysis based on regression equations are predominantly used [7], [28], but machine learning methods are represented as well [2], [8]. volatility to predict bigger price spikes by applying regression equations [28] and Markov chains [26].…”
Section: Decision Support In Natural Gas Tradingmentioning
confidence: 99%