Producción CientíficaThis work proposes a quantile regression neural network based on a novel constrained weighted quantile loss (CWQLoss) and its application to probabilistic short and medium-term electric-load forecasting of special interest for smart grids operations. The method allows any point forecast neural network based on a multivariate multi-output regression model to be expanded to become a quantile regression model. CWQLoss extends the pinball loss to more than one quantile by creating a weighted average for all predictions in the forecast window and across all quantiles. The pinball loss for each quantile is evaluated separately. The proposed method imposes additional constraints on the quantile values and their associat...
Probabilistic load forecasting (PLF) is necessary for power system operations and control as it assi...
For the day-ahead density forecasting of electricity load, this paper proposes the combination of th...
The complexity and level of uncertainty present in operation of power systems have significantly gro...
The establishment of smart grids and the introduction of distributed generation posed new challenges...
Abstract Compared to traditional point load forecasting, probabilistic load forecasting (PLF) has gr...
Residential load forecasting is important for many entities in the electricity market, but the load ...
In this paper we present a simple and intuitive method for fitting a non-linear Bayesian regression ...
Recently, a hot research topic has been time series forecasting via randomized neural networks and i...
In this paper we propose a Quantile Regression Deep Neural Network capable of forecasting multiple q...
© © 2020 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for...
Short-term load forecasting is typically used byelectricity market participants to optimize their tr...
© 2020 Elsevier Ltd Compared with traditional deterministic load forecasting, probabilistic load for...
This paper presents the results obtained in the development of probabilistic short-term forecasting ...
The electricity consumption forecasting is a challenging task, because the predictive accuracy is ea...
Electric load forecasting has gained much attention in electricity production due to its important r...
Probabilistic load forecasting (PLF) is necessary for power system operations and control as it assi...
For the day-ahead density forecasting of electricity load, this paper proposes the combination of th...
The complexity and level of uncertainty present in operation of power systems have significantly gro...
The establishment of smart grids and the introduction of distributed generation posed new challenges...
Abstract Compared to traditional point load forecasting, probabilistic load forecasting (PLF) has gr...
Residential load forecasting is important for many entities in the electricity market, but the load ...
In this paper we present a simple and intuitive method for fitting a non-linear Bayesian regression ...
Recently, a hot research topic has been time series forecasting via randomized neural networks and i...
In this paper we propose a Quantile Regression Deep Neural Network capable of forecasting multiple q...
© © 2020 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for...
Short-term load forecasting is typically used byelectricity market participants to optimize their tr...
© 2020 Elsevier Ltd Compared with traditional deterministic load forecasting, probabilistic load for...
This paper presents the results obtained in the development of probabilistic short-term forecasting ...
The electricity consumption forecasting is a challenging task, because the predictive accuracy is ea...
Electric load forecasting has gained much attention in electricity production due to its important r...
Probabilistic load forecasting (PLF) is necessary for power system operations and control as it assi...
For the day-ahead density forecasting of electricity load, this paper proposes the combination of th...
The complexity and level of uncertainty present in operation of power systems have significantly gro...