基于LSTM的不同电压区光伏系统深度学习控制器设计与动态性能评估

IF 1.204 Q3 Energy
A. Rehail, B. Meghni, N. Boutasseta, M. Benghanem
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引用次数: 0

摘要

本文设计了一种深度学习长短期记忆(LSTM)控制器,该控制器采用在不同工作区域进行调谐的多个最优PI控制器。以前的文献已经显示了气候条件和异常运行条件对光伏(PV)系统功率转换效率的影响。光伏阵列的非线性特性曲线表现出额外的瞬态效应,影响最大功率点MPP的跟踪。光伏电源转换系统在恒流、恒电压和恒功率区域具有可变的开环瞬态响应特征,这三个区域是光伏阵列特性曲线的细分。为了在这些操作区域中对MPPT算法生成的参考进行最佳跟踪,使用在不同操作区域中调谐的多个PI控制器从闭环系统响应中进行输入/输出数据收集。然后,使用收集到的训练数据对LSTM控制器进行调优,这些训练数据是由来自所有操作区域的输入/输出数据拼接而成的。基于深度学习的LSTM控制器在不同仿真场景下的动态性能评估,包括参考阶跃变化、阶梯形参考变化和部分阴影跟踪,表明使用该控制器后发出的响应精度高,振荡小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Design and Dynamic Performance Evaluation of an LSTM Based Deep Learning Controller for PV Systems Operating in Different Voltage Regions

Design and Dynamic Performance Evaluation of an LSTM Based Deep Learning Controller for PV Systems Operating in Different Voltage Regions

In this paper, a deep learning Long Short Term Memory (LSTM) controller is designed using multiple optimal PI controllers tuned in different operating regions. It has been previously shown in the literature the impact of climatic conditions and abnormal operating conditions on the power conversion efficiency of photovoltaic (PV) systems. The nonlinear characteristic curve of PV arrays exhibits an additional transient effect that influences the tracking of the Maximum Power Point MPP. The PV power conversion system is characterized by a variable open-loop transient response in the constant current, voltage and power regions, which are subdivisions of the PV array characteristic curve. For the optimal tracking of the reference generated from the MPPT algorithm in these operating regions, an input/output data collection is carried out from the closed-loop system responses using multiple PI controllers tuned in different operating regions. Then, the LSTM controller is tuned using the collected training data constructed from the concatenation of input/output data issued from all operating regions. The dynamic performance evaluation of the deep learning-based LSTM controller for different simulation scenarios, including reference step changes, stair-shaped reference changes and partial shading tracking, shows the high precision and reduced oscillations of the responses issued after using the proposed controller.

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来源期刊
Applied Solar Energy
Applied Solar Energy Energy-Renewable Energy, Sustainability and the Environment
CiteScore
2.50
自引率
0.00%
发文量
0
期刊介绍: Applied Solar Energy  is an international peer reviewed journal covers various topics of research and development studies on solar energy conversion and use: photovoltaics, thermophotovoltaics, water heaters, passive solar heating systems, drying of agricultural production, water desalination, solar radiation condensers, operation of Big Solar Oven, combined use of solar energy and traditional energy sources, new semiconductors for solar cells and thermophotovoltaic system photocells, engines for autonomous solar stations.
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