We present a data-driven framework for optimal scenario selection in stochastic optimization with applications in power markets. The proposed methodology relies in the existence of auxiliary information and the use of machine learning techniques to narrow the set of possible realizations (scenarios) of the variables of interest. In particular, we implement a novel validation algorithm that allows optimizing each machine learning hyperparameter to further improve the prescriptive power of the resulting set of scenarios. Supervised machine learning techniques are examined, including kNN and decision trees, and the validation process is adapted to work with time-dependent datasets. Moreover, we extend the proposed methodology to work with unsu...
In this paper machine learning models are estimated to predict electricity prices. As it is well kno...
As mature electricity markets, the Italian spot ones provide substantial liquidity of the electrical...
This document presents a tool able to automatically gather data provided by real energy markets and...
We present a data-driven framework for optimal scenario selection in stochastic optimization with ap...
We present a data-driven framework for optimal scenario selection in stochastic optimization with ap...
Decision-making in the presence of contextual information is a ubiquitous problem in modern power sy...
Considering the dynamics of the economic environment and the amount of data generated every second, ...
International audienceDeriving decisions from data typically involves a sequential process with two ...
In the retail electricity market, consumers can subscribe a contract with a conventional retailer or...
In recent years, energy prices have become increasingly volatile, making it more challenging to pred...
This research provides benchmark accuracies for forecasting of an aggregated price of the Dutch intr...
The objective of this research assignment was to forecast electricity prices in the Spanish electric...
The world is right now in a global transition from a fossil fuel dependency towards an electrified s...
The openness of the electricity retail market results in the power retailers facing fierce competiti...
Multi-stage stochastic programming can support large consumers in developing electricity portfolios ...
In this paper machine learning models are estimated to predict electricity prices. As it is well kno...
As mature electricity markets, the Italian spot ones provide substantial liquidity of the electrical...
This document presents a tool able to automatically gather data provided by real energy markets and...
We present a data-driven framework for optimal scenario selection in stochastic optimization with ap...
We present a data-driven framework for optimal scenario selection in stochastic optimization with ap...
Decision-making in the presence of contextual information is a ubiquitous problem in modern power sy...
Considering the dynamics of the economic environment and the amount of data generated every second, ...
International audienceDeriving decisions from data typically involves a sequential process with two ...
In the retail electricity market, consumers can subscribe a contract with a conventional retailer or...
In recent years, energy prices have become increasingly volatile, making it more challenging to pred...
This research provides benchmark accuracies for forecasting of an aggregated price of the Dutch intr...
The objective of this research assignment was to forecast electricity prices in the Spanish electric...
The world is right now in a global transition from a fossil fuel dependency towards an electrified s...
The openness of the electricity retail market results in the power retailers facing fierce competiti...
Multi-stage stochastic programming can support large consumers in developing electricity portfolios ...
In this paper machine learning models are estimated to predict electricity prices. As it is well kno...
As mature electricity markets, the Italian spot ones provide substantial liquidity of the electrical...
This document presents a tool able to automatically gather data provided by real energy markets and...