Advanced predictive analytics for solar power generation

Solar power generation have been gaining ground as a result of improved generating efficiency, reduced installation cost as well as a global focus towards renewable energy. However solar power generation still faces a number of limitations that prevents it from being used on a larger scale. One solu...

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Detalhes bibliográficos
Autor principal: See, Han Xiang
Outros Autores: Wen Changyun
Formato: Final Year Project (FYP)
Idioma:English
Publicado em: 2016
Assuntos:
Acesso em linha:http://hdl.handle.net/10356/67710
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author See, Han Xiang
author2 Wen Changyun
author_facet Wen Changyun
See, Han Xiang
author_sort See, Han Xiang
collection NTU
description Solar power generation have been gaining ground as a result of improved generating efficiency, reduced installation cost as well as a global focus towards renewable energy. However solar power generation still faces a number of limitations that prevents it from being used on a larger scale. One solution to the problem is an accurate forecast of electricity load demand. With an accurate forecast, wastage of energy will be prevented and this is critical to the stability of the power system. In this final year project, the main objective is to study the viability of using various techniques to forecast electrical load to aid solar power generation in Singapore. First, literature review was conducted on the subject. Two techniques, the Auto Regressive Integrated Moving Average (ARIMA) and Multi-Layer Perceptron (MLP), were chosen to forecast half-hourly electrical load in Singapore. The two techniques were then developed and tested on real load data of Singapore’s electric utility. The test results displayed that the MLP technique is better suited for an electrical load forecasting application. The forecasting errors were smaller than with an ARIMA model as MLP takes into account weather factors and human’s energy consumption habits. The work suggests that an on-line testing of the model is required before an opinion on its applicability can be formed.
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spelling ntu-10356/677102023-07-07T16:55:51Z Advanced predictive analytics for solar power generation See, Han Xiang Wen Changyun School of Electrical and Electronic Engineering A*STAR DRNTU::Engineering Solar power generation have been gaining ground as a result of improved generating efficiency, reduced installation cost as well as a global focus towards renewable energy. However solar power generation still faces a number of limitations that prevents it from being used on a larger scale. One solution to the problem is an accurate forecast of electricity load demand. With an accurate forecast, wastage of energy will be prevented and this is critical to the stability of the power system. In this final year project, the main objective is to study the viability of using various techniques to forecast electrical load to aid solar power generation in Singapore. First, literature review was conducted on the subject. Two techniques, the Auto Regressive Integrated Moving Average (ARIMA) and Multi-Layer Perceptron (MLP), were chosen to forecast half-hourly electrical load in Singapore. The two techniques were then developed and tested on real load data of Singapore’s electric utility. The test results displayed that the MLP technique is better suited for an electrical load forecasting application. The forecasting errors were smaller than with an ARIMA model as MLP takes into account weather factors and human’s energy consumption habits. The work suggests that an on-line testing of the model is required before an opinion on its applicability can be formed. Bachelor of Engineering 2016-05-19T06:43:09Z 2016-05-19T06:43:09Z 2016 Final Year Project (FYP) http://hdl.handle.net/10356/67710 en Nanyang Technological University 70 p. application/pdf
spellingShingle DRNTU::Engineering
See, Han Xiang
Advanced predictive analytics for solar power generation
title Advanced predictive analytics for solar power generation
title_full Advanced predictive analytics for solar power generation
title_fullStr Advanced predictive analytics for solar power generation
title_full_unstemmed Advanced predictive analytics for solar power generation
title_short Advanced predictive analytics for solar power generation
title_sort advanced predictive analytics for solar power generation
topic DRNTU::Engineering
url http://hdl.handle.net/10356/67710
work_keys_str_mv AT seehanxiang advancedpredictiveanalyticsforsolarpowergeneration