2018
DOI: 10.3390/en11082093
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The Financial Effect of the Electricity Price Forecasts’ Inaccuracy on a Hydro-Based Generation Company

Abstract: Electricity price forecasting has a paramount effect on generation companies (GenCos) due to the scheduling of the electricity generation scheme according to electricity price forecasts. Inaccurate electricity price forecasts could cause important loss of profits to the suppliers. In this paper, the financial effect of inaccurate electricity price forecasts on a hydro-based GenCo is examined. Electricity price forecasts of five individual and four hybrid forecast models and the ex-post actual prices are used t… Show more

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Cited by 19 publications
(12 citation statements)
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“…The Diebold and Mariano (2002) (DM) test is widely applied in the EPF literature (e.g. , Ziel and Weron (2018) and Ugurlu et al (2018)). It considers whether the loss differential series of two models exhibits an expected value of zero and is usually considered in its multivariate one-sided version (e.g.…”
Section: Testing Literaturementioning
confidence: 99%
“…The Diebold and Mariano (2002) (DM) test is widely applied in the EPF literature (e.g. , Ziel and Weron (2018) and Ugurlu et al (2018)). It considers whether the loss differential series of two models exhibits an expected value of zero and is usually considered in its multivariate one-sided version (e.g.…”
Section: Testing Literaturementioning
confidence: 99%
“…The studies that followed in 2018 focused on one of three topics: 1) evaluating the performance of different deep recurrent networks [13,23,37,78]; 2) proposing new hybrid methods based on CNNs and LSTMs [14,44,79,80]; or 3) employing regular DNN models [23]. Independently of the focus, they were all more limited than the first and the third studies [12,59] as they failed to compare the new DL models with state-of-the-art statistical methods and/or to employ long enough datasets to derive strong conclusions.…”
Section: Deep Learningmentioning
confidence: 99%
“…This can be achieved because of the existing memory in the gates. LSTM can pass information that has been captured in the early stages and keep that information for a long time, which enable the LSTM to generate the long-distance dependencies (Ugurlu, Tas, Kaya, & Oksuz, 2018), (Chung, Gulcehre, Cho, & Bengio, 2014).…”
Section: Long Short Term Memory (Lstm)mentioning
confidence: 99%