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Forecasting of Henry Hub Natural Gas Spot Price by using ARIMA<br />

Model With and Without Discrete Wavelet Transform<br />

Tan Pui Man<br />

Supervisor: Dr. Hassilah Binti Salleh<br />

Bachelor of Science (Financial Mathematics)<br />

School of Informatics and Applied Mathematics<br />

Natural gas, as the cleanest burning fossil fuel leads to increasingly importance of its<br />

price forecasting due to growing concern about pollution. Hence, combination of wavelet<br />

approach and time series forecasting are tested in this research to predict natural gas<br />

price. ARIMA is implemented as the forecasting model but it can be easily affected by the<br />

noise in time series without pre-processing the original data. Therefore, discrete wavelet<br />

transform (DWT) is used as a pre-processing technique for denoising. DWT decomposes<br />

the original signal into series of approximation and detail components then reconstructed<br />

them by filtering of threshold value. The Henry Hub natural gas (HHNG) weekly spot price<br />

as a benchmark for US market, are used for this study. The forecasted results of ARIMA<br />

with and without DWT are compared. Finally, the result indicates that the employment of<br />

DWT is capable in improving the performance of HHNG weekly spot price forecasting.<br />

896 | UMT UNDERGRADUATE RESEARCH DAY 2018

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