Zobrazit minimální záznam

dc.contributor.advisorMišák, Stanislav
dc.contributor.authorJahan, Ibrahim Salem
dc.date.accessioned2021-07-15T10:45:42Z
dc.date.available2021-07-15T10:45:42Z
dc.date.issued2021
dc.identifier.otherOSD002
dc.identifier.urihttp://hdl.handle.net/10084/145016
dc.description.abstractModern electrical and electronic devices are very sensitive to the power supply and require steady and stable electric power. Factories may also need electric power within a specific standard range of voltage, frequency, and current to avoid defects in the production. For these reasons electric power utilities must produce an electric power of a specific standard of power quality parameters [EN50160]. Nowadays, renewable energy sources, such as wind energy and solar energy are used to generate electric power as free and clean power sources as well to reduce fuel consumption and environmental pollution as much as possible. Renewable energy, e.g. wind speed or solar irradiance, are not stable or not constant energies over the time. Therefore smart control systems (SCSs) are needed for operate the power system in optimal way which help for producing a power with good quality from renewable sources. The forecasting and prediction models play a main role in these issues and contribute as the important part of the smart control system (SCS). The main task of the SCS is to keep the generated power equal to the consumed power as well as to consider standard levels of power quality parameters as much as possible. Some of previous studies have focused on forecasting power quality parameters, power load, wind speed and solar irradiance using machine learning models as neural networks, support vector machines, fuzzy sets, and neuro fuzzy. This thesis proposes designing forecasting systems using machine learning techniques in order to be use in control and operate an electrical power system. In this study, design and tested forecasting systems related to the power and renewable energies. These systems include wind speed forecasting, power load forecasting and power quality parameters forecasting. The main part of this thesis is focus in power quality parameters forecasting in short-term, these parameters are: power frequency, magnitude of the supply voltage, total harmonic distortion of voltage (THDu), total harmonic distortion of current (THDi), and short term flicker severity (Pst) according to the definition in [EN50160]. The output of the forecasting models of power quality parameters can be used in shifting the load to run in switch time which will help for correct and optimize the quality of the power.en
dc.description.abstractModern electrical and electronic devices are very sensitive to the power supply and require steady and stable electric power. Factories may also need electric power within a specific standard range of voltage, frequency, and current to avoid defects in the production. For these reasons electric power utilities must produce an electric power of a specific standard of power quality parameters [EN50160]. Nowadays, renewable energy sources, such as wind energy and solar energy are used to generate electric power as free and clean power sources as well to reduce fuel consumption and environmental pollution as much as possible. Renewable energy, e.g. wind speed or solar irradiance, are not stable or not constant energies over the time. Therefore smart control systems (SCSs) are needed for operate the power system in optimal way which help for producing a power with good quality from renewable sources. The forecasting and prediction models play a main role in these issues and contribute as the important part of the smart control system (SCS). The main task of the SCS is to keep the generated power equal to the consumed power as well as to consider standard levels of power quality parameters as much as possible. Some of previous studies have focused on forecasting power quality parameters, power load, wind speed and solar irradiance using machine learning models as neural networks, support vector machines, fuzzy sets, and neuro fuzzy. This thesis proposes designing forecasting systems using machine learning techniques in order to be use in control and operate an electrical power system. In this study, design and tested forecasting systems related to the power and renewable energies. These systems include wind speed forecasting, power load forecasting and power quality parameters forecasting. The main part of this thesis is focus in power quality parameters forecasting in short-term, these parameters are: power frequency, magnitude of the supply voltage, total harmonic distortion of voltage (THDu), total harmonic distortion of current (THDi), and short term flicker severity (Pst) according to the definition in [EN50160]. The output of the forecasting models of power quality parameters can be used in shifting the load to run in switch time which will help for correct and optimize the quality of the power.cs
dc.format54 listy : ilustrace
dc.format.extent1942975 bytes
dc.format.mimetypeapplication/pdf
dc.language.isoen
dc.publisherVysoká škola báňská – Technická univerzita Ostravacs
dc.subjectSmart power griden
dc.subjectpower quality parametersen
dc.subjectpower loaden
dc.subjectrenewable energiesen
dc.subjectweather dataen
dc.subjectdecision treeen
dc.subjectneural networksen
dc.subjectlinear regressionen
dc.subjectsupport vector machineen
dc.subjectforecasting systemen
dc.subjectSmart power gridcs
dc.subjectpower quality parameterscs
dc.subjectpower loadcs
dc.subjectrenewable energiescs
dc.subjectweather datacs
dc.subjectdecision treecs
dc.subjectneural networkscs
dc.subjectlinear regressioncs
dc.subjectsupport vector machinecs
dc.subjectforecasting systemcs
dc.titleControl System for Electrical Power Grids with Renewables using Artificial Intelligence Methodsen
dc.title.alternativeControl System for Electrical Power Grids with Renewables using Artificial Intelligence Methodscs
dc.typeDisertační prácecs
dc.identifier.signature202200023
dc.identifier.locationÚK/Sklad diplomových prací
dc.contributor.refereeProkop, Lukáš
dc.contributor.refereeStacho, Břetislav
dc.contributor.refereeBraciník, Peter
dc.date.accepted2021-06-16
dc.thesis.degree-namePh.D.
dc.thesis.degree-levelDoktorský studijní programcs
dc.thesis.degree-grantorVysoká škola báňská – Technická univerzita Ostrava. Fakulta elektrotechniky a informatikycs
dc.description.department410 - Katedra elektroenergetikycs
dc.thesis.degree-programElektrotechnikacs
dc.thesis.degree-branchElektroenergetikacs
dc.description.resultvyhovělcs
dc.identifier.senderS2724
dc.identifier.thesisSAL0043_FEI_P2649_3907V001_2021
dc.rights.accessopenAccess


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