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Electric Vehicle Charging Management Based on Deep Reinforcement Learning 被引量:6
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作者 Sichen Li Weihao Hu +4 位作者 Di Cao tomislav dragicevic Qi Huang Zhe Chen Frede Blaabjerg 《Journal of Modern Power Systems and Clean Energy》 SCIE EI CSCD 2022年第3期719-730,共12页
A time-variable time-of-use electricity price can be used to reduce the charging costs for electric vehicle(EV)owners.Considering the uncertainty of price fluctuation and the randomness of EV owner’s commuting behavi... A time-variable time-of-use electricity price can be used to reduce the charging costs for electric vehicle(EV)owners.Considering the uncertainty of price fluctuation and the randomness of EV owner’s commuting behavior,we propose a deep reinforcement learning based method for the minimization of individual EV charging cost.The charging problem is first formulated as a Markov decision process(MDP),which has unknown transition probability.A modified long short-term memory(LSTM)neural network is used as the representation layer to extract temporal features from the electricity price signal.The deep deterministic policy gradient(DDPG)algorithm,which has continuous action spaces,is used to solve the MDP.The proposed method can automatically adjust the charging strategy according to electricity price to reduce the charging cost of the EV owner.Several other methods to solve the charging problem are also implemented and quantitatively compared with the proposed method which can reduce the charging cost up to 70.2%compared with other benchmark methods. 展开更多
关键词 Deep reinforcement learning data-driven control UNCERTAINTY electric vehicles(EVs)
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Neural Network aided PMSM multi-objective design and optimization for more-electric aircraft applications
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作者 Yuan GAO Tao YANG +3 位作者 Serhiy BOZHKO Pat WHEELER tomislav dragicevic Chris GERADA 《Chinese Journal of Aeronautics》 SCIE EI CAS CSCD 2022年第10期233-246,共14页
This study uses the Neural Network(NN)technique to optimize design of surfacemounted Permanent Magnet Synchronous Motors(PMSMs)for More-Electric Aircraft(MEA)applications.The key role of NN is to provide dedicated cor... This study uses the Neural Network(NN)technique to optimize design of surfacemounted Permanent Magnet Synchronous Motors(PMSMs)for More-Electric Aircraft(MEA)applications.The key role of NN is to provide dedicated correction factors for the analytical PMSM mass and loss estimation within the entire design space.Based on that,a globally optimal design can be quickly obtained.Matching the analytical estimation with Finite-Element Analysis(FEA)is the main research target of training the NN.Conventional analytical formulae serve as the basis of this study,but they are prone to loss accuracy(especially for a large design space)due to their assumptions and simplifications.With the help of the trained NNs,the analytical motor model can give an estimation as accurate as the FEA but with super less time during the optimization process.The Average Correction Factor(ACF)approach is regarded as the comparison method to demonstrate the excellent performance of the proposed NN model.Furthermore,a NN aided three-stage-sevenstep optimization methodology is proposed.Finally,a Pole-10-Slot-12 PMSM case study is given to demonstrate the feasibility and gain of the NN aided multi-objective optimization approach.In this case,the NN aided analytical model can generate one motor design in 0.04 s while it takes more than 1 min for the used FEA model. 展开更多
关键词 Design and optimization Loss estimation Mean Length per Turn(MLT) More-Electric Aircraft(MEA) Neural Network(NN) Permanent Magnet Synchronous Motor(PMSM)
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Distributed and Decentralized Control Architectures for Converter-Interfaced Microgrids
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作者 tomislav dragicevic Dan Wu +1 位作者 Qobad Shafiee Lexuan Meng 《Chinese Journal of Electrical Engineering》 CSCD 2017年第2期41-52,共12页
This paper gives a summary on recently available technologies for decentralized and distributed control of microgrids.They can be classified into two general categories:1)power line communication based architectures a... This paper gives a summary on recently available technologies for decentralized and distributed control of microgrids.They can be classified into two general categories:1)power line communication based architectures and 2)multi-agent based architectures.The essential control methods and information sharing algorithms applied in these architectures are reviewed and examined in a hierarchical manner,in order to point out benefits they will bring to future microgrid applications.The paper is concluded with a summary on existing methods and a discussion on future development trends. 展开更多
关键词 Decentralized control distributed bus signaling distributed control MICROGRIDS multi-agent systems power line communication
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