2019
DOI: 10.3390/en12081556
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Reactive Power Optimization for Transient Voltage Stability in Energy Internet via Deep Reinforcement Learning Approach

Abstract: The existence of high proportional distributed energy resources in energy Internet (EI) scenarios has a strong impact on the power supply-demand balance of the EI system. Decision-making optimization research that focuses on the transient voltage stability is of great significance for maintaining effective and safe operation of the EI. Within a typical EI scenario, this paper conducts a study of transient voltage stability analysis based on convolutional neural networks. Based on the judgment of transient volt… Show more

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Cited by 28 publications
(8 citation statements)
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References 38 publications
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“…The rest of the literature references demonstrate application. The aspects contain petroleum supply chain [10,11,[98][99][100][101][102][103][104][105][106][107], steel-making [108][109][110][111], electric power system [112][113][114][115][116][117][118][119], and wind power [120][121][122][123]. The aforementioned references were mostly searched from Google Scholar with related key words, such as "optimization", "combinatorial optimization problem", "machine learning", "supervised learning", "reinforcement learning", "game theory", "refinery scheduling", "steel-making", "electric power system", "wind power", etc.…”
Section: Copsmentioning
confidence: 99%
See 1 more Smart Citation
“…The rest of the literature references demonstrate application. The aspects contain petroleum supply chain [10,11,[98][99][100][101][102][103][104][105][106][107], steel-making [108][109][110][111], electric power system [112][113][114][115][116][117][118][119], and wind power [120][121][122][123]. The aforementioned references were mostly searched from Google Scholar with related key words, such as "optimization", "combinatorial optimization problem", "machine learning", "supervised learning", "reinforcement learning", "game theory", "refinery scheduling", "steel-making", "electric power system", "wind power", etc.…”
Section: Copsmentioning
confidence: 99%
“…Compared to the SARL algorithm, the training process can converge more stably. Aiming at transient voltage stability in energy internet (EI), Cao et al [114] proposed a deep RL algorithm based on CNN to improve decision-making optimization to balance the power supply-demand. This algorithm has a more accurate prediction compared to conventional ML algorithms, and it also satisfies the expectation of system stability.…”
Section: Electric Power Systemmentioning
confidence: 99%
“…e traditional methods include bootstrap method [63], support vector machine [64], and professional software simulation [65]. Reference [65] chose to build the simulation model of a real urban power grid in the power grid simulation software BPA (Bonneville power administration) to generate the simulation data and verified the optimization algorithm of the EI reactive power decision based on deep reinforcement learning on the simulation data.…”
Section: Application Of Gan In Eimentioning
confidence: 99%
“…Optimization studies with system stability as the research goal, such as transient voltage stability, are of great significance for maintaining the effective and safe operation of power systems [124]. Among many system control methods, distributed control can give consideration to remote data and minimize the requirements of communication.…”
Section: Distributed Control Based On Artificial Intelligence For System Stabilitymentioning
confidence: 99%