4.4 Article

LSTM auto-encoder based representative scenario generation method for hybrid hydro-PV power system

期刊

IET GENERATION TRANSMISSION & DISTRIBUTION
卷 14, 期 24, 页码 5935-5943

出版社

INST ENGINEERING TECHNOLOGY-IET
DOI: 10.1049/iet-gtd.2020.0757

关键词

time series; statistical analysis; photovoltaic power systems; hybrid power systems; hydroelectric power; recurrent neural nets; power engineering computing; LSTM encoder; scenario clustering; gap statistics method; reprehensive scenario reconstruction; LSTM decoder; LSTM auto-encoder; hybrid hydro-PV power system; renewable energy sources; complex uncertainties; power system planning; long short term memory; auto-encoder based approach; representative scenario generation; integrated hydro-photovoltaic power generation system; feature extraction; K-means plus plus; multivariate time-series data; temporal dimension; spatial dimension; southwest China

资金

  1. National Key R&D Program of China 'Research and application demonstration on complementary combined power generation technology for distributed photovoltaic and cascade hydropower' [2018YFB0905200]

向作者/读者索取更多资源

The increasing penetration of renewable energy sources causes complex uncertainties of the power system. To capture such uncertainties in power system planning, an important step is to generate representative scenarios. In this work, a long short term memory (LSTM) auto-encoder based approach is proposed to generate representative scenarios in an integrated hydro-photovoltaic (PV) power generation system, which consists of feature extraction by LSTM Encoder, scenario clustering in feature domain by combining gap statistics method and K-means++, and representative scenario reconstruction by using LSTM Decoder. Compared with traditional scenario selection and generation methods, the proposed method can better capture the patterns of multivariate time-series data in both temporal and spatial dimensions. A case study in southwest China is used to demonstrate the effectiveness of the proposed method, which outperforms other existing methods by achieving the lowest SSE and DBI indices of 0.89 and 0.12, respectively, and obtaining the best SIL and CHI scores of 0.93 and 2.30, respectively, In addition, the case study shows the proposed model setup works more stable for scenario generation.

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