一种基于监督自适应神经网络的光伏组件发电功率估计与监测方法

S. Brofferio, A. Antonini, G. Galimberti, Dario Galeri
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引用次数: 5

摘要

由于涉及许多变量,例如天气条件和建筑参数,光伏系统的能源生产的估计和随后的监测是一个困难的问题。通常使用的数学模型不能以最优的方式描述光伏组件的实际行为,因为它们没有考虑所有可能涉及的变量。这种方法会导致估计误差,从而需要改进所使用的数学模型。考虑到识别和测量除太阳辐射和环境温度外的其他变量非常困难,我们提出使用自适应神经网络理论优化数学模型。我们的目标是在实验数据的基础上创造一种更好的跟踪光伏组件真实行为的估计方法。我们使用SART(监督自适应共振理论)神经网络来修正单二极管模型(ODM)的功率估计。为此,我们提出了一个估计模型(EM),用于估计和监测光伏板的最大功率输出,该模型可以考虑到系统的非线性特性。我们通过Matlab实现了该系统,并对特定类型光伏组件的大量实际数据样本进行了性能评估。实验结果表明,该方法可以改进估计,并可用于光伏系统的监测过程中,以识别特定故障。最后,我们提出了一个可能的光伏组件输出功率估计和监测系统的方案。
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A method for estimating and monitoring the power generated by a photovoltaic module based on supervised adaptive neural networks
The estimate and the subsequent monitoring of the energy production of a photovoltaic system is a difficult issue because of the many variables involved, such as weather conditions and construction parameters. The mathematical models usually used do not describe, in an optimal way, the actual behavior of the photovoltaic module as they do not consider all the possible variables involved. This approach leads to an estimation error, from which arises the need to improve the mathematical model used. Given the extreme difficulty in identifying and measuring variables other than solar radiation and ambient temperature, we proposed to optimize the mathematical model using the theory of adaptive neural networks. We aim to create a better estimation method that pursues the real behavior of the PV module based on experimental data. We used a SART (Supervised Adaptive Resonance Theory) neural network to correct the power estimates of the one diode model (ODM). For this purpose, we presented an Estimation Model (EM) for estimating and monitoring the maximum power output of a photovoltaic panel that can take into account the non-linear characteristics of the system. We implemented this system via Matlab and evaluated the performance on a significant sample of actual data for a specific type of PV module. The experimental results show that we can improve the estimation and that this method can then be also used in the monitoring process of the PV system in order to identify specific faults. Finally we proposed a scheme of a possible system for estimating and monitoring the output power of a PV module.
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