Forecasting household monthly electricity consumption using the similar pattern algorithm

This article discusses forecasting the monthly electricity consumption time series of household subscribers using the similar pattern algorithm, which uses each subscriber’s unique consumption pattern. The primary goal of forecasting the monthly consumption of household subscribers is to...

Full description

Saved in:
Bibliographic Details
Main Author: Bistoon Hosseini
Format: Article
Language:English
Published: Academia.edu Journals 2025-02-01
Series:Academia Green Energy
Online Access:https://www.academia.edu/127585251/Forecasting_household_monthly_electricity_consumption_using_the_similar_pattern_algorithm
Tags: Add Tag
No Tags, Be the first to tag this record!
Description
Summary:This article discusses forecasting the monthly electricity consumption time series of household subscribers using the similar pattern algorithm, which uses each subscriber’s unique consumption pattern. The primary goal of forecasting the monthly consumption of household subscribers is to issue monthly bills and cluster subscribers for consumption management planning. The study’s results demonstrate the efficiency of the proposed algorithm compared to traditional statistics and machine learning methods. Out of the 72,000 predictions made using the proposed algorithm, the mean absolute percentage error is 16.9%. This shows that the algorithm successfully forecasts the monthly consumption of subscribers. The similar pattern algorithm maximizes the use of information in the billing database and takes advantage of expert opinions, which play a crucial role in avoiding unusual forecasts. The household subscribers involved in this study are located in two climatic regions: temperate and tropical. As this study has shown a significant dependency of household electricity consumption on the two major climate types, the obtained results have the potential to be generalized to other climatic regions as well.
ISSN:2998-3665