关于使用人工智能作为提高日照预测精度以实现PV利用率优化的要求

M. Ghiassi, A. Skumanich
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摘要

随着数据的增加,复杂数据的挑战以及提高日照精度的财务影响,有必要将有针对性的人工智能和机器学习(AI/ML)纳入日照预测。预测是将可变的可再生资源纳入电力系统的一种重要的、具有成本效益的工具。准确预测辐照度的能力将通过减少间歇性中断和更好地利用光伏发电,直接帮助减少碳能源,从而促进光伏发电在电网中的采用。太阳预报中的一个关键问题是云覆盖的间歇性,它通常表现为分形特性,仍然具有挑战性,并对太阳能发电场的输出管理产生不利影响。覆盖天气的物理模式只能提供一定程度的预测准确性,尤其受到云预报的挑战。关键的挑战是:物理模型的局限性,海量的数据,需要进行大量的简化估计。我们提出了一种方法和方法,可以增强基于并利用一种“捆绑”方法的预测能力,该方法既考虑了物理模型,也考虑了由AI/ML确定的经验模式,并利用了传感器和卫星输入。新颖的方面是扩展AI/ML经验维度,以实现改进的预测,其中“非物理模型”模式提供了大量输入。我们概述了具体的方法,它与当前模式的不同之处,以及它如何改善日照预测。将提供具体的例子并讨论其好处。
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On the use of AI as a requirement for improved insolation forecasting accuracy to achieve optimized PV utilization
With the increase in data, the challenges of complex data, and the financial implications of improved insolation accuracy, it has become necessary to include targeted Artificial Intelligence & Machine Learning (AI/ML) for insolation forecasting. Forecasting is a crucial and cost-effective tool for integrating variable renewable resources into power systems. The ability to accurately forecast irradiance will facilitate increased PV adoption on the grid by making the intermittency less disrupting and allowing for better PV utilization, directly assisting in reduction of carbon energy sources.A key problem in solar forecasting is the intermittency of cloud cover, which often exhibits fractal properties and is still challenging to predict and adversely impacts solar farm output management. The physical models which cover weather can only provide a certain level of predictive accuracy and are particularly challenged by cloud forecasting. The key challenges are: limitations in the physical models, massive data, the need to make substantial simplifying estimations.We propose an approach and methodology which can enhance the predictive capabilities of insolation forecasting based on, and leveraging, a type of "bundled" approach which takes into account both the physical models, as well as the empirical mode determined by AI/ML, and exploiting sensor and satellite inputs. The novel aspect is to expand the AI/ML empirical dimension to achieve improved forecasting where the "non-physical-model" modes provide substantial input. We outline the specific methodology, how this is different from current modes, and how it can improve insolation forecasting. Specific examples will be provided and the benefits discussed.
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