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ISBN: 9783800760138 , 3800760134
Language: English
Pages: 1 CD-ROM , Illustrationen , 58 g
DDC: 621.042
Keywords: Konferenzschrift 2022 ; Energietechnik ; Elektrische Energietechnik
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Associated Volumes
  • 2
    ISBN: 9783800760138
    Language: English
    Titel der Quelle: PESS + PELSS 2022 - Power and Energy Student Summit
    Publ. der Quelle: Berlin : VDE Verlag GMBH, 2023
    Angaben zur Quelle: (2023), Seite 13-18
    Angaben zur Quelle: year:2023
    Angaben zur Quelle: pages:13-18
    Abstract: Due to the increasing feed-in of renewable energies (RE) in the power grid, the number of power converters is increasing. This can lead to the destabilization of the system due to various factors, one of which is the control structure of the power converter and its control parameters. Therefore, parameterization and optimization of the controllers in the power converter are necessary and required. This paper addresses how the stability of a converter-dominated network in different states can be improved by parameterization using reinforcement learning (RL). To perform the parameterization, the adapted RL agent and hyperparameters are to be set according to the target. In this work, two parameterization methods are used. In the first method, an RL agent is structured with an artificial neural network so that it can behave like a PI controller. This optimizes the parameters of PI controllers immediately during training. In the second method, the RL agent can adaptively output the parameters for PI controllers according to different operating points of the power converter, which are the input of the RL agent. Root Mean Square Error (RMSE) is used to evaluate the deviation of power injection from the set point. As a result, the proposed parametrization method can improve the power system stability.
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  • 3
    ISBN: 9783800760138
    Language: English
    Titel der Quelle: PESS + PELSS 2022 - Power and Energy Student Summit
    Publ. der Quelle: Berlin : VDE Verlag GMBH, 2023
    Angaben zur Quelle: (2023), Seite 118-123
    Angaben zur Quelle: year:2023
    Angaben zur Quelle: pages:118-123
    Abstract: Renewable energies, such as wind and photovoltaic, are subject to natural fluctuations. However, electrical energy is grid-bound and, unlike other end-use energies, cannot be stored well. Therefore the large expansion of renewables calls for a more dynamic energy management to ensure grid stability and better integration of renewables. The basis for this are reliable and precise power predictions. Recent developments in machine learning give new opportunities to develop more accurate forecasts. This work therefore compares different artificial neural network architectures for short-term power prediction of photovoltaic plants based on various meteorological data. Overall this includes, a Multilayer Perceptron (MLP) model, a Long-Short-Term Memory (LSTM) model and two different architectures combining a Convolutional Neural Network and an LSTM model (CNN-LSTM). The work shows a significant advantage of the Recurrent Neural Networks (RNN) over simpler Neural Networks which do not use sequential time series data. Furthermore this study presents with the multi-head CNN-LSTM an alternative to the commonly used multi-channel CNN-LSTM model. Overall this paper shows that the more complex artificial neural network architectures offer greater accuracy and therefore are better for photovoltaic power predictions.
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  • 4
    E-Resource
    E-Resource
    In:  PESS + PELSS 2022 - Power and Energy Student Summit (2023), Seite 135-140 | year:2023 | pages:135-140
    ISBN: 9783800760138
    Language: English
    Titel der Quelle: PESS + PELSS 2022 - Power and Energy Student Summit
    Publ. der Quelle: Berlin : VDE Verlag GMBH, 2023
    Angaben zur Quelle: (2023), Seite 135-140
    Angaben zur Quelle: year:2023
    Angaben zur Quelle: pages:135-140
    Abstract: In the course of the energy transition, the share of power generation from renewable energy sources is steadily increasing. Whereas the generation of conventional power plants decreases until they will be shut down. To keep a stable operation in the power grid, the adjustment of the power grid operation in the new operating conditions is necessary. The power grid operation with voltage angle based control can be an alternative to the traditional power grid operation with load frequency control. In this work, a generic power grid with voltage angle based control is operated. A converter model with voltage angle based control is simulated in Matlab/Simulink. An eletromagnetic transient simulation during load change is performed.
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  • 5
    E-Resource
    E-Resource
    In:  PESS + PELSS 2022 - Power and Energy Student Summit (2023), Seite 55-60 | year:2023 | pages:55-60
    ISBN: 9783800760138
    Language: English
    Titel der Quelle: PESS + PELSS 2022 - Power and Energy Student Summit
    Publ. der Quelle: Berlin : VDE Verlag GMBH, 2023
    Angaben zur Quelle: (2023), Seite 55-60
    Angaben zur Quelle: year:2023
    Angaben zur Quelle: pages:55-60
    Abstract: The coupling of the electricity and gas sectors can provide degrees of freedom in the provision of CO2-minimal flexibilities, but also increases the complexity of investigating energy systems, due to different requirements and time constants. To study such a complex energy system, the implementation of a model on a real-time computer could be beneficial and provide advantages. Real-time simulators enable the investigation of state changes in real-time. By connecting hardware components such as generation units or loads, the effects on cross-sectoral system operation can be studied in real-time in the event of fluctuations in generation or load changes. The cross-sectoral implementation is presented by numerical case studies using the example of a region in Germany for 2 developed scenarios on the real-time simulator OPAL-RT.
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