Abstract

In this article, we are initiating the hypothesis that improvements in short term energy load forecasting may rely on inclusion of data from new information sources generated outside the power grid and weather related systems. Other relevant domains of data include scheduled activities on a grid, large events and conventions in the area, equipment duty cycle schedule, data from call centers, real-time traffic, Facebook, Twitter, and other social networks feeds, and variety of city or region websites. All these distributed data sources pose information collection, integration and analysis challenges. Our approach is concentrated on complex non-cyclic events detection where detected events have a human crowd magnitude that is influencing power requirements. The proposed methodology deals with computation, transformation, modeling, and patterns detection over large volumes of partially ordered, internet based streaming multimedia signals or text messages. We are claiming that traditional approaches can be complemented and enhanced by new streaming data inclusion and analyses, where complex event detection combined with Webbased technologies improves short term load forecasting. Some preliminary experimental results, using Gowalla social network dataset, confirmed our hypothesis as a proof-of-concept, and they paved the way for further improvements by giving new dimensions of short term load forecasting process in a smart grid.

Highlights

  • A smart grid is an advanced electricity transmission and distribution network that utilizes information, communication and control technologies to improve economy, efficiency, and security of the grid [1] [2]

  • Short term load forecasting (STLF) is a difficult task because energy consumption is influenced by many factors such as weather conditions, daily, weekly or seasonal cyclic characteristics, special events, economy status, patterns of behavior for different consumer types, and habits of individual customers

  • Traditional approaches in short term load forecasting (STLF) are based on so-called “the similar day method”, where the task is to find a day in the history that is similar to the forecasted day

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Summary

Introduction

A smart grid is an advanced electricity transmission and distribution network that utilizes information, communication and control technologies to improve economy, efficiency, and security of the grid [1] [2]. Data generation in smart grids has grown exponentially, and new challenges in organizing and analyzing these big data are to be faced to efficiently optimize smart grids These data include production levels, loads, price information and others, and they are collected at regular short time intervals (usually up to half an hour intervals). Traditional energy forecasting systems dispose with other types of data which are influencing consumption or production of electrical energy Such data include outdoor temperature, humidity, social events, geographical differences, demographic information, traffic intensity and day of the week. Short term load forecasting (STLF) is a difficult task because energy consumption is influenced by many factors such as weather conditions, daily, weekly or seasonal cyclic characteristics, special events, economy status, patterns of behavior for different consumer types, and habits of individual customers. They could significantly improve short term load forecasting especially in the situation where the emphasis is on peak load detection

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