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Short-Term Load Forecasting 2019



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Autore: Gabaldón Antonio Visualizza persona
Titolo: Short-Term Load Forecasting 2019 Visualizza cluster
Pubblicazione: Basel, Switzerland, : MDPI - Multidisciplinary Digital Publishing Institute, 2021
Descrizione fisica: 1 electronic resource (324 p.)
Soggetto topico: History of engineering & technology
Soggetto non controllato: short-term load forecasting
demand-side management
pattern similarity
hierarchical short-term load forecasting
feature selection
weather station selection
load forecasting
special days
regressive models
electric load forecasting
data preprocessing technique
multiobjective optimization algorithm
combined model
Nordic electricity market
electricity demand
component estimation method
univariate and multivariate time series analysis
modeling and forecasting
deep learning
wavenet
long short-term memory
demand response
hybrid energy system
data augmentation
convolution neural network
residential load forecasting
forecasting
time series
cubic splines
real-time electricity load
seasonal patterns
Load forecasting
VSTLF
bus load forecasting
DBN
PSR
distributed energy resources
prosumers
building electric energy consumption forecasting
cold-start problem
transfer learning
multivariate random forests
random forest
electricity consumption
lasso
Tikhonov regularization
load metering
preliminary load
short term load forecasting
performance criteria
power systems
cost analysis
day ahead
feature extraction
deep residual neural network
multiple sources
electricity
Persona (resp. second.): Ruiz-AbellónDr. María Carmen
Fernández-JiménezLuis Alfredo
GabaldónAntonio
Sommario/riassunto: Short-term load forecasting (STLF) plays a key role in the formulation of economic, reliable, and secure operating strategies (planning, scheduling, maintenance, and control processes, among others) for a power system and will be significant in the future. However, there is still much to do in these research areas. The deployment of enabling technologies (e.g., smart meters) has made high-granularity data available for many customer segments and to approach many issues, for instance, to make forecasting tasks feasible at several demand aggregation levels. The first challenge is the improvement of STLF models and their performance at new aggregation levels. Moreover, the mix of renewables in the power system, and the necessity to include more flexibility through demand response initiatives have introduced greater uncertainties, which means new challenges for STLF in a more dynamic power system in the 2030–50 horizon. Many techniques have been proposed and applied for STLF, including traditional statistical models and AI techniques. Besides, distribution planning needs, as well as grid modernization, have initiated the development of hierarchical load forecasting. Analogously, the need to face new sources of uncertainty in the power system is giving more importance to probabilistic load forecasting. This Special Issue deals with both fundamental research and practical application research on STLF methodologies to face the challenges of a more distributed and customer-centered power system.
Titolo autorizzato: Short-Term Load Forecasting 2019  Visualizza cluster
Formato: Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione: Inglese
Record Nr.: 9910557494303321
Lo trovi qui: Univ. Federico II
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