2002
DOI: 10.1080/15325000290085398
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Next Day Load Curve Forecasting Using Wavelet Analysis with Neural Network

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Cited by 14 publications
(8 citation statements)
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“…Figure 1 shows the first-scale decomposition progress, as a result, time signal S(n) is decomposed into its detailed cD1(n) and smoothed cA1(n) signals ESN with wavelet in load forecasting using filter HiF_D and LoF_D, respectively. The decomposition procedure is repeated until a predefined decomposition level, which can produce a set of signals representing the original signal Kim et al, 2002;Senjyu et al, 2002). Suppose cðtÞ [ L 2 ðRÞ is a mother wavelet, a series of sub-wavelets can be developed though dilating and translating the cðtÞ:…”
Section: The Principle Of Wavelet Analysismentioning
confidence: 99%
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“…Figure 1 shows the first-scale decomposition progress, as a result, time signal S(n) is decomposed into its detailed cD1(n) and smoothed cA1(n) signals ESN with wavelet in load forecasting using filter HiF_D and LoF_D, respectively. The decomposition procedure is repeated until a predefined decomposition level, which can produce a set of signals representing the original signal Kim et al, 2002;Senjyu et al, 2002). Suppose cðtÞ [ L 2 ðRÞ is a mother wavelet, a series of sub-wavelets can be developed though dilating and translating the cðtÞ:…”
Section: The Principle Of Wavelet Analysismentioning
confidence: 99%
“…using filter HiF_D and LoF_D, respectively. The decomposition procedure is repeated until a predefined decomposition level, which can produce a set of signals representing the original signal (An et al, 2011;Kim et al, 2002;Senjyu et al, 2002).…”
Section: Esn With Wavelet In Load Forecastingmentioning
confidence: 99%
“…Another approach for STWSF based on fuzzy ARTMAP (FA) technique has been explored by Haque and Meng (2011). A method based on wavelet transform (WT) has shown an excellent performance in nonstationary signal analysis and nonlinear function modelling, as reported in other forecasting applications such as wind power forecasting , electricity price forecasting (Conejo et al 2005), and load curve forecasting (Senjyu et al 2002). In spite of a significant body of research in this area, wind speed forecasting is a complex process to model and predict because wind speed is highly volatile, nonlinear, and exhibits ill-behaved time-series.…”
Section: Introductionmentioning
confidence: 99%
“…Avdakovic et al ( ) used both linear regression and WTC to study the properties of UK power consumption and found that the WTC approach provides insight into the properties of the impact of the main factors on power consumption [9]. Furthermore, Khoa et al ( ); Senjyu et al ( ); Zhang et al ( ) successfully apply the wavelet analysis in conjunction with neural networks to forecast the electricity consumption [10][11][12]. Hence, in this study, we applied the WTC of examining the relationship between the electricity demand and the weather variables such as air temperature, relative humidity, solar radiation, and wind speed in Niamey.…”
Section: Introductionmentioning
confidence: 99%