Smart home energy management based on deep reinforcement learning technology

This study framework designed to enhance home energy management systems (HEMS) in smart homes that incorporate renewable energy and electric vehicles (EVs). Leveraging real-world data within an advanced simulation platform, we delve into the interactions among diverse appliances, home batteries, pho...

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Main Author: Sun, Xinghao
Other Authors: Xu Yan
Format: Thesis-Master by Coursework
Language:English
Published: Nanyang Technological University 2024
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Online Access:https://hdl.handle.net/10356/175417
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Institution: Nanyang Technological University
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spelling sg-ntu-dr.10356-1754172024-04-26T16:00:29Z Smart home energy management based on deep reinforcement learning technology Sun, Xinghao Xu Yan School of Electrical and Electronic Engineering xuyan@ntu.edu.sg Engineering Smart home energy management system Deep reinforcement learning Deep Q network This study framework designed to enhance home energy management systems (HEMS) in smart homes that incorporate renewable energy and electric vehicles (EVs). Leveraging real-world data within an advanced simulation platform, we delve into the interactions among diverse appliances, home batteries, photovoltaic (PV) systems, and the smart grid. Developed using Python, this framework allows for detailed management of energy resources, including the strategic charging of home batteries and EVs, scheduling appliances, and optimizing air conditioning to boost energy efficiency andreduce costs. This study utilizes Deep-Q-Networks (DQN)-based Reinforcement.Learning (RL) to manage smart homes energy usage more wisely. The goal is tocut down on energy costs while keeping homes comfortable and making sure all the devices work as they should. This system can make decisions on its own, schedules when to turn appliances on or off, based on how much energy is available from solar panels and the cost of electricity from the grid. The simulations in this study are based on real-world PV and price datasets, demonstrating the how the proposed method used and stored energy. The renewable energy changes over time and actions of HEMS agent are compared. The results from these simulations show big benefits. The proposed HEMS method based DQN help reduce the need for electricity from the grid, make more use of clean energy from the solar PV, save money on energy bills, and make homes more self-sufficient. The results show how energy is used in homes and how different energy sources and appliances interact, pushing forward the development of smart homes and green energy. The system designed in this study can be adjusted and improved for future research, including testing more complex situations and using DQN methods to get better at managing home energy. Master's degree 2024-04-23T02:32:23Z 2024-04-23T02:32:23Z 2024 Thesis-Master by Coursework Sun, X. (2024). Smart home energy management based on deep reinforcement learning technology. Master's thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/175417 https://hdl.handle.net/10356/175417 en application/pdf Nanyang Technological University
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering
Smart home energy management system
Deep reinforcement learning
Deep Q network
spellingShingle Engineering
Smart home energy management system
Deep reinforcement learning
Deep Q network
Sun, Xinghao
Smart home energy management based on deep reinforcement learning technology
description This study framework designed to enhance home energy management systems (HEMS) in smart homes that incorporate renewable energy and electric vehicles (EVs). Leveraging real-world data within an advanced simulation platform, we delve into the interactions among diverse appliances, home batteries, photovoltaic (PV) systems, and the smart grid. Developed using Python, this framework allows for detailed management of energy resources, including the strategic charging of home batteries and EVs, scheduling appliances, and optimizing air conditioning to boost energy efficiency andreduce costs. This study utilizes Deep-Q-Networks (DQN)-based Reinforcement.Learning (RL) to manage smart homes energy usage more wisely. The goal is tocut down on energy costs while keeping homes comfortable and making sure all the devices work as they should. This system can make decisions on its own, schedules when to turn appliances on or off, based on how much energy is available from solar panels and the cost of electricity from the grid. The simulations in this study are based on real-world PV and price datasets, demonstrating the how the proposed method used and stored energy. The renewable energy changes over time and actions of HEMS agent are compared. The results from these simulations show big benefits. The proposed HEMS method based DQN help reduce the need for electricity from the grid, make more use of clean energy from the solar PV, save money on energy bills, and make homes more self-sufficient. The results show how energy is used in homes and how different energy sources and appliances interact, pushing forward the development of smart homes and green energy. The system designed in this study can be adjusted and improved for future research, including testing more complex situations and using DQN methods to get better at managing home energy.
author2 Xu Yan
author_facet Xu Yan
Sun, Xinghao
format Thesis-Master by Coursework
author Sun, Xinghao
author_sort Sun, Xinghao
title Smart home energy management based on deep reinforcement learning technology
title_short Smart home energy management based on deep reinforcement learning technology
title_full Smart home energy management based on deep reinforcement learning technology
title_fullStr Smart home energy management based on deep reinforcement learning technology
title_full_unstemmed Smart home energy management based on deep reinforcement learning technology
title_sort smart home energy management based on deep reinforcement learning technology
publisher Nanyang Technological University
publishDate 2024
url https://hdl.handle.net/10356/175417
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