Development of a long-term solar PV power forecasting model for power system planning

Jain Vinith P.R., Navin Sam K., V. T., Joseph Godfrey A., Venkadesan Arunachalam
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Abstract

Purpose This paper aims to Solar photovoltaic (PV) power can significantly impact the power system because of its intermittent nature. Hence, an accurate solar PV power forecasting model is required for appropriate power system planning. Design/methodology/approach In this paper, a long short-term memory (LSTM)-based double deep Q-learning (DDQL) neural network (NN) is proposed for forecasting solar PV power indirectly over the long-term horizon. The past solar irradiance, temperature and wind speed are used for forecasting the solar PV power for a place using the proposed forecasting model. Findings The LSTM-based DDQL NN reduces over- and underestimation and avoids gradient vanishing. Thus, the proposed model improves the forecasting accuracy of solar PV power using deep learning techniques (DLTs). In addition, the proposed model requires less training time and forecasts solar PV power with improved stability. Originality/value The proposed model is trained and validated for several places with different climatic patterns and seasons. The proposed model is also tested for a place with a temperate climatic pattern by constructing an experimental solar PV system. The training, validation and testing results have confirmed the practicality of the proposed solar PV power forecasting model using LSTM-based DDQL NN.
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为电力系统规划开发长期太阳能光伏发电预测模型
本文旨在研究太阳能光伏(PV)发电因其间歇性而对电力系统产生的重大影响。本文提出了一种基于长短期记忆(LSTM)的双深度 Q 学习(DDQL)神经网络(NN),用于间接预测长期范围内的太阳能光伏发电量。结果基于 LSTM 的 DDQL 神经网络减少了高估和低估,避免了梯度消失。因此,所提出的模型利用深度学习技术(DLT)提高了太阳能光伏发电的预测精度。此外,所提出的模型所需的训练时间更短,预测太阳能光伏发电量的稳定性更高。还通过构建一个实验性太阳能光伏系统,对温带气候模式下的一个地方进行了测试。训练、验证和测试结果证实了利用基于 LSTM 的 DDQL NN 所提出的太阳能光伏发电预测模型的实用性。
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