微电网
可再生能源
计算机科学
可靠性(半导体)
网格
电力系统
控制工程
控制器(灌溉)
可靠性工程
工程类
功率(物理)
电气工程
物理
几何学
生物
量子力学
数学
农学
作者
Abhishek Saxena,Ravi Shankar,Ehab F. El‐Saadany,Manish Kumar,Omar Al Zaabi,Khalifa Al Hosani,Utkal Ranjan Muduli
标识
DOI:10.1109/tia.2024.3436471
摘要
The integration of Renewable Energy Resources (RERs) into electrical grids introduces significant challenges concerning the reliability and stability of the grid. This paper focuses on these challenges, particularly the issues of real-time load forecasting and adaptive inertia control in renewable integrated grids. A data-driven, deep learning-based approach is proposed to dynamically forecast real-time load and renewable energy generation, using the New England IEEE 39-Bus Power System as a case study. To enhance the dynamic performance of the microgrid, the paper introduces an enhanced fractional extended state observer-based linear active disturbance rejection control mechanism coupled with a feedback architecture. This control scheme aims to provide adaptive inertia to the system, thus improving its ability to handle fluctuations and intermittencies inherent in RERs. The effectiveness of the proposed controller is rigorously compared with existing approaches through simulation studies, validating its superior performance for the IEEE 39-Bus Power System under examination. To further substantiate the findings, a hardware-in-loop real-time experimental analysis is conducted using OPAL-RT hardware. This hardware-based analysis serves as a functional validation of the proposed data-driven forecasting algorithm confirming its viability to improve the grid reliability.
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