Leiyan Lv, Xuan Fang, Si Zhang, Xiang Ma, Yong Liu
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This reflects that the optimized model shows high performance on small datasets, and its performance benefits become more pronounced as the data volume increases. This feature is particularly significant because, in practical applications, power systems often need to process large amounts of data to achieve efficient voltage support. In simulation experiments, the optimized model demonstrates excellent performance in terms of response time, stability, robustness, and energy consumption. Moreover, this model effectively addresses various data challenges and uncertainties encountered in grid-connected voltage support technology for power systems, thereby providing robust support for stable and efficient voltage regulation. In light of the findings, this study offers substantial insights for advancing research in the realms of power systems and new energy technologies. The exploration into the application of deep learning and intelligent control strategies within power systems reveals significant potential for transforming grid optimization practices. This study accentuates how data-driven methodologies can revolutionize energy management, paving the way for smarter and more efficient energy systems. By enhancing both the responsiveness and operational efficiency of power grids, the study contributes to the acceleration of digital transformation within the energy sector, fostering innovation and laying a robust foundation for future advancements in energy informatics.</p></div>","PeriodicalId":538,"journal":{"name":"Energy Informatics","volume":"7 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-08-23","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://link.springer.com/content/pdf/10.1186/s42162-024-00382-8.pdf","citationCount":"0","resultStr":"{\"title\":\"Optimization of grid-connected voltage support technology and intelligent control strategies for new energy stations based on deep learning\",\"authors\":\"Leiyan Lv, Xuan Fang, Si Zhang, Xiang Ma, Yong Liu\",\"doi\":\"10.1186/s42162-024-00382-8\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p>To explore the optimization method of grid-connected voltage support technology in new energy stations, this study first analyzes and discusses this technology. 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引用次数: 0
摘要
为探索新能源电站并网电压支持技术的优化方法,本研究首先对该技术进行了分析和讨论。其次,本研究详细介绍了深度学习模型架构和特征选择,并确定了本文提出的优化模型所使用的框架。最后,研究了优化和控制策略的制定,并通过实验验证了优化模型的有效性。结果表明,在性能对比实验中,优化模型的准确率、精确度、召回率和 F1 分数均高于对比模型,分别达到 0.890、0.888、0.878 和 0.883 的最高值。这反映出优化模型在小数据集上表现出了较高的性能,而且随着数据量的增加,其性能优势更加明显。这一特点尤为重要,因为在实际应用中,电力系统往往需要处理大量数据才能实现有效的电压支持。在仿真实验中,优化后的模型在响应时间、稳定性、鲁棒性和能耗方面都表现出色。此外,该模型还能有效解决电力系统并网电压支持技术中遇到的各种数据挑战和不确定性,从而为稳定高效的电压调节提供强有力的支持。鉴于上述研究结果,本研究为推进电力系统和新能源技术领域的研究提供了重要启示。在电力系统中应用深度学习和智能控制策略的探索揭示了改变电网优化实践的巨大潜力。这项研究强调了数据驱动方法如何彻底改变能源管理,为更智能、更高效的能源系统铺平道路。通过提高电网的响应速度和运行效率,这项研究有助于加快能源行业的数字化转型,促进创新,并为未来能源信息学的进步奠定坚实的基础。
Optimization of grid-connected voltage support technology and intelligent control strategies for new energy stations based on deep learning
To explore the optimization method of grid-connected voltage support technology in new energy stations, this study first analyzes and discusses this technology. Second, this study describes the deep learning model architecture and feature selection in detail and determines the framework used for the optimization model proposed here. Lastly, the development of optimization and control strategies is investigated, and the optimized model’s effectiveness is verified through experiments. The results reveal that the optimized model's accuracy, precision, recall, and F1 score are higher than those of the comparison model in the performance comparison experiment, reaching the highest values of 0.890, 0.888, 0.878, and 0.883, respectively. This reflects that the optimized model shows high performance on small datasets, and its performance benefits become more pronounced as the data volume increases. This feature is particularly significant because, in practical applications, power systems often need to process large amounts of data to achieve efficient voltage support. In simulation experiments, the optimized model demonstrates excellent performance in terms of response time, stability, robustness, and energy consumption. Moreover, this model effectively addresses various data challenges and uncertainties encountered in grid-connected voltage support technology for power systems, thereby providing robust support for stable and efficient voltage regulation. In light of the findings, this study offers substantial insights for advancing research in the realms of power systems and new energy technologies. The exploration into the application of deep learning and intelligent control strategies within power systems reveals significant potential for transforming grid optimization practices. This study accentuates how data-driven methodologies can revolutionize energy management, paving the way for smarter and more efficient energy systems. By enhancing both the responsiveness and operational efficiency of power grids, the study contributes to the acceleration of digital transformation within the energy sector, fostering innovation and laying a robust foundation for future advancements in energy informatics.