Design, Management and Optimization of a Distributed Energy Storage System with the presence of micro generation in a smart house

The owners of a house in today’s society do not know in real-time how much electricity they use. It could be beneficial for any residential consumer to have more control and overview in real-time over the electricity consumption. This could be done possible with a system that monitors the consumptio...

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Main Author: Eliasstam, Hannes
Format: Others
Language:English
Published: Linköpings universitet, Institutionen för systemteknik 2012
Subjects:
ANN
Online Access:http://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-86818
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spelling ndltd-UPSALLA1-oai-DiVA.org-liu-868182013-01-08T13:46:06ZDesign, Management and Optimization of a Distributed Energy Storage System with the presence of micro generation in a smart houseengEliasstam, HannesLinköpings universitet, Institutionen för systemteknikLinköpings universitet, Tekniska högskolan2012ForecastingANNModellingOptimizationControlEnergyMicro renewablesStorage devicesElectric VehicleThe owners of a house in today’s society do not know in real-time how much electricity they use. It could be beneficial for any residential consumer to have more control and overview in real-time over the electricity consumption. This could be done possible with a system that monitors the consumptions, micro renewables and the electricity prices from the grid and then makes a decision to either use or sell electricity to reduce the monthly electricity cost for the household and living a "Greener" life to reduce carbon emissions. In this thesis, estimations are made based on artificial neural network (ANN). The predictions are made for air temperature, solar insolation and wind speed in order to know how much energy will be produced in the next 24 hours from the solar panel and from the wind turbine. The predictions are made for electricity consumption in order to know how much energy the house will consume. These predictions are then used as an input to the system. The system has 3 controls, one to control the amount of sell or buy the energy, one to control the amount of energy to charge or discharge the fixed battery and one to control the amount of energy to charge or discharge the electric vehicle (EV). The output from the system will be the decision for the next 10 minutes for each of the 3 controls. To study the reliability of the ANN estimations, the ANN estimations (SANN) are compared with the real data (Sreal ) and other estimation based on the mean values (Smean) of the previous week. The simulation during a day in January gave that the expenses are 0.6285 € if using SANN, 0.7788 € if using Smean and 0.5974 € if using Sreal. Further, 3 different cases are considered to calculate the savings based on the ANN estimations. The first case is to have the system connected with fixed storage device and EV (Scon;batt ). The second and third cases are to have the system disconnected (without fixed battery) using micro generation (Sdiscon;micro) and not using micro generation (Sdiscon) along with the EV. The savings are calculated as a difference between Scon;batt and Sdiscon, also between Sdiscon;micro and Sdiscon. The saving are 788.68 € during a year if Scon;batt is used and 593.90 € during a year if Sdiscon;micro is used. With the calculated savings and the cost for the equipment, the pay-back period is 15.3 years for Scon;batt and 4.5 years for Sdiscon;micro. It is profitable to only use micro generation, but then the owner of the household loses the opportunity to be part of helping the society to become "Greener".  Student thesisinfo:eu-repo/semantics/bachelorThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-86818application/pdfinfo:eu-repo/semantics/openAccess
collection NDLTD
language English
format Others
sources NDLTD
topic Forecasting
ANN
Modelling
Optimization
Control
Energy
Micro renewables
Storage devices
Electric Vehicle
spellingShingle Forecasting
ANN
Modelling
Optimization
Control
Energy
Micro renewables
Storage devices
Electric Vehicle
Eliasstam, Hannes
Design, Management and Optimization of a Distributed Energy Storage System with the presence of micro generation in a smart house
description The owners of a house in today’s society do not know in real-time how much electricity they use. It could be beneficial for any residential consumer to have more control and overview in real-time over the electricity consumption. This could be done possible with a system that monitors the consumptions, micro renewables and the electricity prices from the grid and then makes a decision to either use or sell electricity to reduce the monthly electricity cost for the household and living a "Greener" life to reduce carbon emissions. In this thesis, estimations are made based on artificial neural network (ANN). The predictions are made for air temperature, solar insolation and wind speed in order to know how much energy will be produced in the next 24 hours from the solar panel and from the wind turbine. The predictions are made for electricity consumption in order to know how much energy the house will consume. These predictions are then used as an input to the system. The system has 3 controls, one to control the amount of sell or buy the energy, one to control the amount of energy to charge or discharge the fixed battery and one to control the amount of energy to charge or discharge the electric vehicle (EV). The output from the system will be the decision for the next 10 minutes for each of the 3 controls. To study the reliability of the ANN estimations, the ANN estimations (SANN) are compared with the real data (Sreal ) and other estimation based on the mean values (Smean) of the previous week. The simulation during a day in January gave that the expenses are 0.6285 € if using SANN, 0.7788 € if using Smean and 0.5974 € if using Sreal. Further, 3 different cases are considered to calculate the savings based on the ANN estimations. The first case is to have the system connected with fixed storage device and EV (Scon;batt ). The second and third cases are to have the system disconnected (without fixed battery) using micro generation (Sdiscon;micro) and not using micro generation (Sdiscon) along with the EV. The savings are calculated as a difference between Scon;batt and Sdiscon, also between Sdiscon;micro and Sdiscon. The saving are 788.68 € during a year if Scon;batt is used and 593.90 € during a year if Sdiscon;micro is used. With the calculated savings and the cost for the equipment, the pay-back period is 15.3 years for Scon;batt and 4.5 years for Sdiscon;micro. It is profitable to only use micro generation, but then the owner of the household loses the opportunity to be part of helping the society to become "Greener". 
author Eliasstam, Hannes
author_facet Eliasstam, Hannes
author_sort Eliasstam, Hannes
title Design, Management and Optimization of a Distributed Energy Storage System with the presence of micro generation in a smart house
title_short Design, Management and Optimization of a Distributed Energy Storage System with the presence of micro generation in a smart house
title_full Design, Management and Optimization of a Distributed Energy Storage System with the presence of micro generation in a smart house
title_fullStr Design, Management and Optimization of a Distributed Energy Storage System with the presence of micro generation in a smart house
title_full_unstemmed Design, Management and Optimization of a Distributed Energy Storage System with the presence of micro generation in a smart house
title_sort design, management and optimization of a distributed energy storage system with the presence of micro generation in a smart house
publisher Linköpings universitet, Institutionen för systemteknik
publishDate 2012
url http://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-86818
work_keys_str_mv AT eliasstamhannes designmanagementandoptimizationofadistributedenergystoragesystemwiththepresenceofmicrogenerationinasmarthouse
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