Deep Neural Network based Forecasting of Short-Term Solar Photovoltaic Power output

Sravankumar Jogunuri, F. T. Josh
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Abstract

Renewable energy integration to the conventional power grid is a challenge and requires an accurate forecasting of power output from the renewable energy sources for ensuring the reliability and grid stability. Many forecasting techniques for different time horizons were developed using different machine learning techniques. In the recent past mostly forecasting techniques based on artificial neural networks were developed. But, looking at the environmental parameters like insolation, temperature, sky clearness index and cloud cover etc., and its variable behavior makes the forecasting more complex. To address., complex and non-linearity issues in many applications, deep neural networks were proved effective and hence an attempt made in this paper forecasting power from solar photovoltaic plant for very short-term durations through deep neural networks model and compared the same with ANN model with only one hidden layer and found significant improved accuracy in deep neural networks.
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基于深度神经网络的太阳能光伏发电短期输出预测
可再生能源与传统电网的并网是一项挑战,需要对可再生能源的输出功率进行准确预测,以确保电网的可靠性和稳定性。使用不同的机器学习技术开发了许多不同时间范围的预测技术。近年来,主要发展了基于人工神经网络的预测技术。但是,考虑到日晒、温度、晴空指数和云量等环境参数及其变化行为,使得预测更加复杂。去解决。由于在许多应用中存在复杂和非线性的问题,深度神经网络被证明是有效的,因此本文尝试通过深度神经网络模型预测太阳能光伏电站的极短持续时间的功率,并将其与只有一个隐藏层的人工神经网络模型进行比较,发现深度神经网络的精度显着提高。
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