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AI Data-Driven Models for Short-Term Load Forecasting

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thesis
posted on 2024-06-04, 01:24 authored by CHARYA MAHASEN SENDANAYAKE
The thesis aims to evaluate the use of modern deep learning models with attention mechanisms which have not been explored thoroughly for use in load forecasting in the past, to predict how much energy a building uses, twenty-four hours in advance. Two modern models were compared to traditional methods of load forecasting, a transformer model and a one-dimensional convolutional neural network. Local data was collected and used in this thesis to ensure that the models take local trends into account. It was found that the modern models are able to make more accurate predictions than the traditionally used models.

History

Campus location

Malaysia

Principal supervisor

Mohammed Ayoub Juman

Additional supervisor 1

Tan Wen Shan

Additional supervisor 2

Tan Chee Pin

Year of Award

2024

Department, School or Centre

School of Engineering (Monash University Malaysia)

Course

Master of Engineering Science (Research)

Degree Type

RESEARCH_MASTERS

Faculty

Faculty of Engineering

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