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A novel adaptive discrete grey model with time-varying parameters for long-term photovoltaic power generation forecasting

机译:一种新型自适应离散灰度模型,具有长期光伏发电预测的时变参数

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摘要

The rapidly growing photovoltaic power generation (PPG) instigates stochastic volatility of electricity supply that may compromise the power grid's stability and increase the grid imbalance cost. Therefore, accurate predictions of long-term PPG are of essential importance for the capacity deployment, plan improvement, consumption enhancement, and grid balance in systems with high penetration levels of PPG. Artificial neuron networks (ANNs) have been widely utilized to forecast the short-term PPG due to their strong nonlinear fitting competence that corresponds to the prerequisite for handling PPG samples characterized by volatility and nonlinearity. However, under the circumstances of the large time span, the insufficient data samples, and the periodicity existing in the long-term PPG datasets, the ANNs are easily stuck in overfitting and generate large forecasting deviations. Given this situation, a novel discrete grey model with time-varying parameters is initially designed to deal with various PPG time series featured with nonlinearity, periodicity, and volatility, which widely exist in the long-term PPG sequences. To be specific, improvements in this proposed model lie in the following aspects: first, the time-power item and periodic item are designated to compose the time-varying parameters to capture the nonlinear, periodic, and fluctuant developing trends of various time series. Second, owing to the complex nonlinear relationships between the above parameters and forecasting errors, the genetic algorithm applies shortcuts to seek optimum solutions and thereby enhances the prediction precision. Third, several practical properties of the proposed model are elaborated to further interpret the feasibility and adaptability of the proposed model. In experiments, a range of machine learning methods, autoregression models, and grey models are involved for comparisons to validate the feasibility and efficacy of the novel model, through the observations of the PPG in America and China. Finally, a superlative performance of the proposed model with the highest forecasting precision, small volatility of empirical results, and generalizability are confirmed by the aforementioned cases.
机译:快速增长的光伏发电(PPG)煽动电力供应随机波动,这可能会损害电网的稳定性并提高电网不平衡成本。因此,长期PPG的准确预测对于具有高渗透水平的PPG的系统中的能力部署,计划改进,消费增强和电网平衡至关重要。人造神经元网络(ANNS)已被广泛用于预测由于其强烈的非线性拟合能力,其对应于处理具有挥发性和非线性特征的PPG样品的先决条件,以预测短期PPG。然而,在大时间跨度的情况下,数据样本不足,以及长期PPG数据集中存在的周期性,ANNS很容易陷入过度拟合并产生大的预测偏差。鉴于这种情况,最初设计具有时变参数的新型离散灰度模型,以处理具有非线性,周期性和挥发性的各种PPG时间序列,其广泛存在于长期ppg序列中。具体而言,在此提出的模型中的改进位于以下方面:首先,指定时间功率项目和周期性项目以构成时变参数以捕获各个时间序列的非线性,周期性和波动的发展趋势。其次,由于上述参数与预测误差之间的复杂非线性关系,遗传算法应用快捷方式来寻求最佳解决方案,从而提高预测精度。第三,阐述了所提出的模型的若干实际特性,以进一步解释所提出的模型的可行性和适应性。在实验中,一系列机器学习方法,自向商标和灰色模型参与了通过美国和中国PPG的观察来验证新型模型的可行性和功效的比较。最后,通过上述情况确认了具有最高预测精度,具有较小挥发性的拟议模型的高度性能,并且通过上述情况确认了普遍性的情况。

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