Scenario-based probabilistic forecasting models have been explored extensively in the literature in recent years. The performance of such models evidently depends to a large extent on how different input (temperature) scenarios are being generated. This paper proposes a generic framework for probabilistic load forecasting using an ensemble of regression trees. A major distinction of the current work is in using matrices as an alternative representation for quasi-periodic time series data. The singular value decomposition (SVD) technique is then used herein to generate temperature scenarios in a robust and timely manner. The strength of our proposed method lies in its simplicity and robustness, in terms of the training window size, with no n...
Abstract: Medium term load forecasting, using recursive time- series prediction strat-egy with Suppo...
The electricity consumption by industrial customers in the society accounts for a significant propor...
This thesis investigates the applications of non-parametric approaches for probabilistic demand fore...
Scenario-based probabilistic forecasting models have been explored extensively in the literature in ...
This paper discusses the use of ensembles of regression trees as a straightforward but versatile met...
In smart grid era, electric load is becoming more stochastic and less predictable in short horizons ...
Load forecasting models are of great importance in Electricity Markets and a wide range of technique...
This work brings together and applies a large representation of the most novel forecasting technique...
Probabilistic forecasting of electricity demand (load) facilitates the efficient management and oper...
Machine learning plays a vital role in several modern economic and industrial fields, and selecting ...
Understanding how, why and when energy consumption changes provides a tool for decision makers throu...
Probabilistic load forecasting is gaining growing interest by researchers and practitioners. Multi-s...
The general objective of this work is to provide power system dispatchers with an accurate and conve...
Traditional forecasting approaches forecast the total system load directly without considering the i...
The aim of this study is to develop novel forecasting methodologies. The applications of our propose...
Abstract: Medium term load forecasting, using recursive time- series prediction strat-egy with Suppo...
The electricity consumption by industrial customers in the society accounts for a significant propor...
This thesis investigates the applications of non-parametric approaches for probabilistic demand fore...
Scenario-based probabilistic forecasting models have been explored extensively in the literature in ...
This paper discusses the use of ensembles of regression trees as a straightforward but versatile met...
In smart grid era, electric load is becoming more stochastic and less predictable in short horizons ...
Load forecasting models are of great importance in Electricity Markets and a wide range of technique...
This work brings together and applies a large representation of the most novel forecasting technique...
Probabilistic forecasting of electricity demand (load) facilitates the efficient management and oper...
Machine learning plays a vital role in several modern economic and industrial fields, and selecting ...
Understanding how, why and when energy consumption changes provides a tool for decision makers throu...
Probabilistic load forecasting is gaining growing interest by researchers and practitioners. Multi-s...
The general objective of this work is to provide power system dispatchers with an accurate and conve...
Traditional forecasting approaches forecast the total system load directly without considering the i...
The aim of this study is to develop novel forecasting methodologies. The applications of our propose...
Abstract: Medium term load forecasting, using recursive time- series prediction strat-egy with Suppo...
The electricity consumption by industrial customers in the society accounts for a significant propor...
This thesis investigates the applications of non-parametric approaches for probabilistic demand fore...