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Prediction of global solar irradiance based on time series analysis: Application to solar thermal power plants energy production planning

机译:基于时间序列分析的全球太阳辐照度预测:在太阳能热电厂能源生产计划中的应用

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Due to strong increase of solar power generation, the predictions of incoming solar energy are acquiring more importance. Photovoltaic and solar thermal are the main sources of electricity generation from solar energy. In the case of solar thermal energy plants with storage energy system, its management and operation need reliable predictions of solar irradiance with the same temporal resolution as the temporal capacity of the back-up system. These plants can work like a conventional power plant and compete in the energy stock market avoiding intermittence in electricity production. This work presents a comparisons of statistical models based on time series applied to predict half daily values of global solar irradiance with a temporal horizon of 3 days. Half daily values consist of accumulated hourly global solar irradiance from solar raise to solar noon and from noon until dawn for each day. The dataset of ground solar radiation used belongs to stations of Spanish National Weather Service (AEMet). The models tested are autoregressive, neural networks and fuzzy logic models. Due to the fact that half daily solar irradiance time series is non-stationary, it has been necessary to transform it to two new stationary variables (clearness index and lost component) which are used as input of the predictive models. Improvement in terms of RMSD of the models essayed is compared against the model based on persistence. The validation process shows that all models essayed improve persistence. The best approach to forecast half daily values of solar irradiance is neural network models with lost component as input, except Lerida station where models based on clearness index have less uncertainty because this magnitude has a linear behaviour and it is easier to simulate by models.
机译:由于太阳能发电量的强劲增长,对进入太阳能的预测越来越重要。光伏和太阳热能是太阳能发电的主要来源。对于具有储能系统的太阳能热电厂,其管理和运行需要可靠的太阳能辐照度预测,且其时间分辨率与备用系统的时间容量相同。这些发电厂可以像常规发电厂一样工作,并在能源股票市场中竞争,从而避免了电力生产的间歇性。这项工作提出了基于时间序列的统计模型的比较,该时间序列用于预测3天时间范围内的全球太阳辐照度的每日半值。每日半值包括每天从太阳升起到太阳正午以及从正午到黎明的每小时累积全球太阳辐照度。所使用的地面太阳辐射数据集属于西班牙国家气象局(AEMet)的站。测试的模型是自回归,神经网络和模糊逻辑模型。由于一半的日照时间序列是不固定的,因此有必要将其转换为两个新的平稳变量(净度指数和损耗分量),以用作预测模型的输入。将所提出模型的RMSD改进与基于持久性的模型进行了比较。验证过程表明,提出的所有模型都提高了持久性。预测日照半日值的最佳方法是使用损失分量作为输入的神经网络模型,但莱里达站除外,在莱里达站中,基于净度指数的模型具有较小的不确定性,因为该幅度具有线性行为,并且更易于通过模型进行仿真。

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