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A PV generation data reconstruction method based on improved super-resolution generative adversarial network

机译:一种基于改进超分辨率的经常性对抗网络的光伏生成数据重构方法

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With the growing penetration of solar photovoltaic (PV) generation, advanced data analysis methods have been applied to the smart grid operation. However, the low-temporal-resolution PV generation data limits the utilization of the data analysis methods, because the low-temporal-resolution PV generation data contains too little information. On the other hand, the existing data reconstruction methods are less than satisfactory in reconstructing high-temporal-resolution PV generation data from low-temporal-resolution data, since most of them cannot fully capture the characteristics of PV generation data. To address this issue, a PV generation data reconstruction method based on improved super-resolution generative adversarial network is proposed in this paper. First, a data-image construction method is proposed to encode the PV generation data into the so-called data-images. Furthermore, we develop a data-image super-resolution generative adversarial network (DISRGAN) model, and the data-images are used to train the DISRGAN model. Finally, based on the trained DISRGAN model, a general framework is developed to reconstruct high-temporal-resolution PV generation data from lowtemporal-resolution data. Numerical experiments have been carried out based on PV generation data from the State Grid Corporation of China, to reconstruct the high-temporal-resolution data from low-temporal-resolution data. The results demonstrate the superior performance of the proposed framework compared with a series of state-of-the-art methods.
机译:随着太阳能光伏(PV)生成的不断增长的渗透,已经应用了先进的数据分析方法对智能电网操作。然而,低时间分辨率的PV生成数据限制了数据分析方法的利用率,因为低时间分辨率的PV生成数据包含太少的信息。另一方面,现有数据重建方法在重建从低时间分辨率数据中重建高时分辨率PV生成数据时令人满意,因为大多数人不能完全捕获PV生成数据的特性。为了解决这个问题,本文提出了一种基于改进的超分辨率生成对抗网络的PV生成数据重建方法。首先,提出数据图像构造方法以将PV生成数据编码为所谓的数据图像。此外,我们开发了一种数据图像超分辨率生成的对冲网络(播出)模型,数据图像用于训练逻辑模型。最后,基于训练有素的惠载模型,开发了一般框架来重建来自LedTemporation数据的高时间分辨率PV生成数据。根据来自中国国家电网公司的PV生成数据进行了数值实验,从而从低时间分辨率数据重建高时分辨率数据。结果表明,与一系列最先进的方法相比,所提出的框架的卓越性能。

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