Hybrid integration of multilayer perceptrons and parametric models for reliability forecasting in the smart grid

10/03/2018
by   Longfei Wei, et al.
0

The reliable power system operation is a major goal for electric utilities, which requires the accurate reliability forecasting to minimize the duration of power interruptions. Since weather conditions are usually the leading causes for power interruptions in the smart grid, especially for its distribution networks, this paper comprehensively investigates the combined effect of various weather parameters on the reliability performance of distribution networks. Specially, a multilayer perceptron (MLP) based framework is proposed to forecast the daily numbers of sustained and momentary power interruptions in one distribution management area using time series of common weather data. First, the parametric regression models are implemented to analyze the relationship between the daily numbers of power interruptions and various common weather parameters, such as temperature, precipitation, air pressure, wind speed, and lightning. The selected weather parameters and corresponding parametric models are then integrated as inputs to formulate a MLP neural network model to predict the daily numbers of power interruptions. A modified extreme learning machine (ELM) based hierarchical learning algorithm is introduced for training the formulated model using realtime reliability data from an electric utility in Florida and common weather data from National Climatic Data Center (NCDC). In addition, the sensitivity analysis is implemented to determine the various impacts of different weather parameters on the daily numbers of power interruptions.

READ FULL TEXT

page 6

page 9

research
11/17/2019

Weather event severity prediction using buoy data and machine learning

In this paper, we predict severity of extreme weather events (tropical s...
research
07/03/2022

Comparative Analysis of Time Series Forecasting Approaches for Household Electricity Consumption Prediction

As a result of increasing population and globalization, the demand for e...
research
04/27/2019

PowerNet: Neural Power Demand Forecasting in Smart Grid

Power demand forecasting is a critical task for achieving efficiency and...
research
11/22/2017

SolarisNet: A Deep Regression Network for Solar Radiation Prediction

Effective utilization of photovoltaic (PV) plants requires weather varia...
research
06/30/2019

Improving LSTM Neural Networks for Better Short-Term Wind Power Predictions

This paper introduces an improved method of wind power prediction via we...
research
09/04/2023

Importance of overnight parameters to predict Sea Breeze on Long Island

The sea breeze is a phenomenon frequently impacting Long Island, New Yor...
research
09/07/2022

Forecasting overhead distribution line failures using weather data and gradient-boosted location, scale, and shape models

Overhead distribution lines play a vital role in distributing electricit...

Please sign up or login with your details

Forgot password? Click here to reset