Application of Genetic Algorithms Method to Optimize the Energy and Economic Aspects of Cogeneration System

Optimization is done to obtain a better condition. One of the commonly used optimization methods is genetic algorithms. The use of genetic algorithms is very broad, including in energy conversion. Genetic algorithms have been widely used to obtain the optimum conditions of energy conversion syst...

Full description

Saved in:
Bibliographic Details
Main Author: Beltsazar Simbolon, Tota
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/43515
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:43515
spelling id-itb.:435152019-09-27T10:58:24ZApplication of Genetic Algorithms Method to Optimize the Energy and Economic Aspects of Cogeneration System Beltsazar Simbolon, Tota Indonesia Final Project genetic algorithm, cogeneration, optimization, multi-objective, sensitivity analysis. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/43515 Optimization is done to obtain a better condition. One of the commonly used optimization methods is genetic algorithms. The use of genetic algorithms is very broad, including in energy conversion. Genetic algorithms have been widely used to obtain the optimum conditions of energy conversion system’s components. In this study, genetic algorithms are used to optimize the cogeneration system. Cogeneration produces electricity and useful heat simlutaneusly. Product of cogeneration system is 30 MW electricity and 14 kg/s saturated steam. Objective of the optimization are total efficiency and rate of expenditure. Single objective optimization is done to analyze whether there is conflict between objectives. Multiple objective optimization is done to optimize both of the objectives simultaneously. Optimization was carried out with the help of MATLAB R2017b software. Sensitivity analysis was conducted to determine the effect of parameter changes on the optimization results. The result of a single objective optimization shows there is conflict between objectives, where at maximum system efficiency the system expenditure rate is high while at the minimum system expenditure rate the system efficiency is low. Simultaneous optimization of the two objectives provides a pareto optimality, which is a graph of the relationship between optimum total efficiency and optimum rate of expenditure of the cogeneration system. The higher the total efficiency, the higher the rate of expenditure. Sensitivity analysis shows that changes in air temperature entering the compressor, fuel prices, and interest rate are sensitive to the results of optimization. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Optimization is done to obtain a better condition. One of the commonly used optimization methods is genetic algorithms. The use of genetic algorithms is very broad, including in energy conversion. Genetic algorithms have been widely used to obtain the optimum conditions of energy conversion system’s components. In this study, genetic algorithms are used to optimize the cogeneration system. Cogeneration produces electricity and useful heat simlutaneusly. Product of cogeneration system is 30 MW electricity and 14 kg/s saturated steam. Objective of the optimization are total efficiency and rate of expenditure. Single objective optimization is done to analyze whether there is conflict between objectives. Multiple objective optimization is done to optimize both of the objectives simultaneously. Optimization was carried out with the help of MATLAB R2017b software. Sensitivity analysis was conducted to determine the effect of parameter changes on the optimization results. The result of a single objective optimization shows there is conflict between objectives, where at maximum system efficiency the system expenditure rate is high while at the minimum system expenditure rate the system efficiency is low. Simultaneous optimization of the two objectives provides a pareto optimality, which is a graph of the relationship between optimum total efficiency and optimum rate of expenditure of the cogeneration system. The higher the total efficiency, the higher the rate of expenditure. Sensitivity analysis shows that changes in air temperature entering the compressor, fuel prices, and interest rate are sensitive to the results of optimization.
format Final Project
author Beltsazar Simbolon, Tota
spellingShingle Beltsazar Simbolon, Tota
Application of Genetic Algorithms Method to Optimize the Energy and Economic Aspects of Cogeneration System
author_facet Beltsazar Simbolon, Tota
author_sort Beltsazar Simbolon, Tota
title Application of Genetic Algorithms Method to Optimize the Energy and Economic Aspects of Cogeneration System
title_short Application of Genetic Algorithms Method to Optimize the Energy and Economic Aspects of Cogeneration System
title_full Application of Genetic Algorithms Method to Optimize the Energy and Economic Aspects of Cogeneration System
title_fullStr Application of Genetic Algorithms Method to Optimize the Energy and Economic Aspects of Cogeneration System
title_full_unstemmed Application of Genetic Algorithms Method to Optimize the Energy and Economic Aspects of Cogeneration System
title_sort application of genetic algorithms method to optimize the energy and economic aspects of cogeneration system
url https://digilib.itb.ac.id/gdl/view/43515
_version_ 1822926600714321920