Forecasting Models of Electricity Prices / / Javier Contreras.

The electric power industry has been in transition, from a centralized, towards a deregulated, production scheme since the early 1980s. Previous centralized schemes were based on electricity tariffs that were paid by the customers as a function of the aggregate cost of production. In the new unbundl...

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Place / Publishing House:Basel, Switzerland : : MDPI - Multidisciplinary Digital Publishing Institute,, 2017.
Year of Publication:2017
Language:English
Physical Description:1 online resource (258 pages)
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spelling Contreras, Javier, author.
Forecasting Models of Electricity Prices / Javier Contreras.
Basel, Switzerland : MDPI - Multidisciplinary Digital Publishing Institute, 2017.
1 online resource (258 pages)
text txt rdacontent
computer c rdamedia
online resource cr rdacarrier
Description based on publisher supplied metadata and other sources.
The electric power industry has been in transition, from a centralized, towards a deregulated, production scheme since the early 1980s. Previous centralized schemes were based on electricity tariffs that were paid by the customers as a function of the aggregate cost of production. In the new unbundled scheme, price forecasting has become an important tool for electric companies and customers to decide on their production offers and demand bids and for regulators to characterize the degree of competition of the market. Electricity prices have unique features that are not observed in other markets, such as weekly and daily seasonalities, on-peak vs. off-peak hours, price spikes, etc. The fact that electricity is not easily storable and the requirement of meeting the demand at all times makes the development of forecasting techniques a challenging issue. This Special Issue will include the most important forecasting techniques applied to the forecasting of electricity prices, such as: Statistical time series models: auto regression models, GARCH, Fourier and wavelet transform models, Fundamental or structural econometric models, Regime-switching models: Markov, jump diffusion, Multi-agent and game theoretic equilibrium models: Nash-Cournot, supply function equilibrium, agent-based methods, etc., Artificial intelligence models: Neural networks, fuzzy logic, support vector machines, etc. In this Special Issue, we invite submissions exploring cutting-edge research and recent advances in the field of electricity price forecasting.
Forecasting.
Electricity.
Prices.
3-03842-415-3
language English
format eBook
author Contreras, Javier,
spellingShingle Contreras, Javier,
Forecasting Models of Electricity Prices /
author_facet Contreras, Javier,
author_variant j c jc
author_role VerfasserIn
author_sort Contreras, Javier,
title Forecasting Models of Electricity Prices /
title_full Forecasting Models of Electricity Prices / Javier Contreras.
title_fullStr Forecasting Models of Electricity Prices / Javier Contreras.
title_full_unstemmed Forecasting Models of Electricity Prices / Javier Contreras.
title_auth Forecasting Models of Electricity Prices /
title_new Forecasting Models of Electricity Prices /
title_sort forecasting models of electricity prices /
publisher MDPI - Multidisciplinary Digital Publishing Institute,
publishDate 2017
physical 1 online resource (258 pages)
isbn 3-03842-415-3
callnumber-first C - Historical Sciences
callnumber-subject CB - History of Civilization
callnumber-label CB158
callnumber-sort CB 3158 C668 42017
illustrated Not Illustrated
dewey-hundreds 300 - Social sciences
dewey-tens 300 - Social sciences, sociology & anthropology
dewey-ones 303 - Social processes
dewey-full 303.49
dewey-sort 3303.49
dewey-raw 303.49
dewey-search 303.49
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