LGMLApr 9, 2014

Power System Parameters Forecasting Using Hilbert-Huang Transform and Machine Learning

arXiv:1404.2353v12 citations
Originality Incremental advance
AI Analysis

This addresses forecasting challenges in power systems, but it is incremental as it builds on existing methods with a hybrid approach.

The paper tackles short-term forecasting of power system parameters like active power flow, electricity prices, and wind speed/direction by developing a hybrid approach combining Hilbert-Huang transform and machine learning, achieving improved efficiency for non-stationary time-series.

A novel hybrid data-driven approach is developed for forecasting power system parameters with the goal of increasing the efficiency of short-term forecasting studies for non-stationary time-series. The proposed approach is based on mode decomposition and a feature analysis of initial retrospective data using the Hilbert-Huang transform and machine learning algorithms. The random forests and gradient boosting trees learning techniques were examined. The decision tree techniques were used to rank the importance of variables employed in the forecasting models. The Mean Decrease Gini index is employed as an impurity function. The resulting hybrid forecasting models employ the radial basis function neural network and support vector regression. Apart from introduction and references the paper is organized as follows. The section 2 presents the background and the review of several approaches for short-term forecasting of power system parameters. In the third section a hybrid machine learning-based algorithm using Hilbert-Huang transform is developed for short-term forecasting of power system parameters. Fourth section describes the decision tree learning algorithms used for the issue of variables importance. Finally in section six the experimental results in the following electric power problems are presented: active power flow forecasting, electricity price forecasting and for the wind speed and direction forecasting.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes