A Hybrid Approach Towards Improved Artificial Neural Network Training for Short-Term Load Forecasting

The power of artificial neural networks to form predictive models for phenomenon that exhibit non-linear relationships is a given fact. Despite this advantage, artificial neural networks are known to suffer drawbacks such as long training times and computational intensity. The researchers propose a...

Full description

Saved in:
Bibliographic Details
Main Authors: Olegario, Cielito C, Coronel, Andrei D, Medina, Ruji P, Gerardo, Bobby D
Format: text
Published: Archīum Ateneo 2018
Subjects:
Online Access:https://archium.ateneo.edu/discs-faculty-pubs/294
https://dl.acm.org/doi/abs/10.1145/3239283.3239306
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Ateneo De Manila University
id ph-ateneo-arc.discs-faculty-pubs-1305
record_format eprints
spelling ph-ateneo-arc.discs-faculty-pubs-13052022-04-28T05:56:35Z A Hybrid Approach Towards Improved Artificial Neural Network Training for Short-Term Load Forecasting Olegario, Cielito C Coronel, Andrei D Medina, Ruji P Gerardo, Bobby D The power of artificial neural networks to form predictive models for phenomenon that exhibit non-linear relationships is a given fact. Despite this advantage, artificial neural networks are known to suffer drawbacks such as long training times and computational intensity. The researchers propose a two-tiered approach to enhance the learning performance of artificial neural networks for phenomenon with time series where data exhibits predictable changes that occur every calendar year. This paper focuses on the initial results of the first phase of the proposed algorithm which incorporates clustering and classification prior to application of the backpropagation algorithm. The 2016--2017 zonal load data of France is used as the data set. K-means is chosen as the clustering algorithm and a comparison is made between Naïve Bayes and k-Nearest Neighbors to determine the better classifier for this data set. The initial results show that electrical load behavior is not necessarily reflective of calendar clustering even without using the min-max temperature recorded during the inclusive months. Simulating the day-type classification process using one cluster, initial results show that the k-nearest neighbors outperforms the Naïve Bayes classifier for this data set and that the best feature to be used for classification into day type is the daily min-max load. These classified load data is expected to reduce training time and improve the overall performance of short-term load demand predictive models in a future paper. 2018-07-20T07:00:00Z text https://archium.ateneo.edu/discs-faculty-pubs/294 https://dl.acm.org/doi/abs/10.1145/3239283.3239306 Department of Information Systems & Computer Science Faculty Publications Archīum Ateneo Computer Sciences Databases and Information Systems Theory and Algorithms
institution Ateneo De Manila University
building Ateneo De Manila University Library
continent Asia
country Philippines
Philippines
content_provider Ateneo De Manila University Library
collection archium.Ateneo Institutional Repository
topic Computer Sciences
Databases and Information Systems
Theory and Algorithms
spellingShingle Computer Sciences
Databases and Information Systems
Theory and Algorithms
Olegario, Cielito C
Coronel, Andrei D
Medina, Ruji P
Gerardo, Bobby D
A Hybrid Approach Towards Improved Artificial Neural Network Training for Short-Term Load Forecasting
description The power of artificial neural networks to form predictive models for phenomenon that exhibit non-linear relationships is a given fact. Despite this advantage, artificial neural networks are known to suffer drawbacks such as long training times and computational intensity. The researchers propose a two-tiered approach to enhance the learning performance of artificial neural networks for phenomenon with time series where data exhibits predictable changes that occur every calendar year. This paper focuses on the initial results of the first phase of the proposed algorithm which incorporates clustering and classification prior to application of the backpropagation algorithm. The 2016--2017 zonal load data of France is used as the data set. K-means is chosen as the clustering algorithm and a comparison is made between Naïve Bayes and k-Nearest Neighbors to determine the better classifier for this data set. The initial results show that electrical load behavior is not necessarily reflective of calendar clustering even without using the min-max temperature recorded during the inclusive months. Simulating the day-type classification process using one cluster, initial results show that the k-nearest neighbors outperforms the Naïve Bayes classifier for this data set and that the best feature to be used for classification into day type is the daily min-max load. These classified load data is expected to reduce training time and improve the overall performance of short-term load demand predictive models in a future paper.
format text
author Olegario, Cielito C
Coronel, Andrei D
Medina, Ruji P
Gerardo, Bobby D
author_facet Olegario, Cielito C
Coronel, Andrei D
Medina, Ruji P
Gerardo, Bobby D
author_sort Olegario, Cielito C
title A Hybrid Approach Towards Improved Artificial Neural Network Training for Short-Term Load Forecasting
title_short A Hybrid Approach Towards Improved Artificial Neural Network Training for Short-Term Load Forecasting
title_full A Hybrid Approach Towards Improved Artificial Neural Network Training for Short-Term Load Forecasting
title_fullStr A Hybrid Approach Towards Improved Artificial Neural Network Training for Short-Term Load Forecasting
title_full_unstemmed A Hybrid Approach Towards Improved Artificial Neural Network Training for Short-Term Load Forecasting
title_sort hybrid approach towards improved artificial neural network training for short-term load forecasting
publisher Archīum Ateneo
publishDate 2018
url https://archium.ateneo.edu/discs-faculty-pubs/294
https://dl.acm.org/doi/abs/10.1145/3239283.3239306
_version_ 1733052859437547520