电力系统运行与控制:数据驱动方法

Parvaiz Ahmad Ahangar, S. A. Lone, Neeraj Gupta
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引用次数: 0

摘要

可再生能源在全球变得越来越受欢迎,特别是具有数据接口和物联网传感器的风能和太阳能光伏(SPV)系统,这些系统会产生大量数据。这些设备提供的数据除了作为监控设备外,还可以通过提供实时数据来提高系统的可靠性和效率。与传统的基于模型的运行相比,基于数据驱动的可再生能源优化运行是一种新兴的确保电力系统无故障运行的方法。数据驱动方法是研究快速分布式发电系统集成对公用电力系统运行影响的有效方法。在数据驱动方法中,机器学习(ML)是解决电力系统网络最佳功能的新兴技术。数据驱动的运行分布式能源(DER)通过合适的预测方法为我们的可靠电力供应提供实时管理,从而产生了智能电网的思想。在这项工作中,我们的目标是将基于数据驱动的策略应用于智能电网,以确保公用事业和可再生能源电力系统的平稳运行和控制。
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Power System Operation and Control: A Data-Driven Approach
Renewable energy is becoming more popular around the world, especially wind power and solar photovoltaic (SPV) systems with data interfaces and IoT sensors that generate significant volumes of data. In addition to serving as a monitoring device, the data provided by such devices can be used to improve system reliability and efficiency by providing real-time data. When compared to traditional model-based operation, data-driven based optimal renewable power operation is an emerging method for ensuring trouble-free power system operation. The data-driven method is effective for studying the impact of rapid distributed generation systems integration on utility power system functioning. In data-driven approach, Machine-learning (ML) is an emerging technology for addressing the optimal functioning power system networks. Data-driven operated distributed energy resources (DER) provide real-time management of our dependable power supply through suitable forecasting methods and hence give rise to the smart grid idea. In this proposed work, our objective is to apply a data-driven based strategy to the smart grid in order to ensure the smooth operation and control of both utility and renewable-rich power system.
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