Toward Improved Site-Adaptation for Direct Normal Irradiance: Exploiting Sky-Condition Classification for Improved Regression-Based, Quantile-Based, and Neural Network Models

IF 2.2 4区 地球科学 Q3 METEOROLOGY & ATMOSPHERIC SCIENCES Asia-Pacific Journal of Atmospheric Sciences Pub Date : 2024-01-10 DOI:10.1007/s13143-023-00350-4
Elvina Faustina Dhata, Chang Ki Kim, Myeongchan Oh, Hyun-Goo Kim
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Abstract

Site adaptation has become a necessary step in resource assessment for ensuring the bankability of a renewable energy project. The process involves collecting short-term observation data to correct the long-term dataset available from the satellite-derived models, which could thus provide a more accurate estimate of the solar resource data. This study aims to enhance the site-adaptation of direct normal irradiance, as its correction remains notably challenging in comparison to global horizontal irradiance due to its larger error, which is often attributed to the complexity of cloud modeling. A new methodology for site-adaptation is proposed that exploits the use of a new indicator variable that describes the correctness of sky-condition classification by the clear-sky index. This variable has dual applications within the context of site adaptation: firstly, it is employed in the two-step binning procedure subsequent to the conventional clear-sky binning during preprocessing, and secondly, it serves as an additional input feature in machine-learning-based site adaptation. The results show that the former method can reduce the mean bias error to a mere 0.4%, while the latter is better for reducing large discrepancies as shown by the lower root mean squared error.

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改进直接法线辐照的场地适应:利用天空条件分类改进回归模型、定量模型和神经网络模型
为确保可再生能源项目的银行可担保性,场地调整已成为资源评估的必要步骤。这一过程包括收集短期观测数据,以校正从卫星衍生模型中获得的长期数据集,从而提供更准确的太阳能资源数据估算。本研究旨在加强直接法线辐照度的场地适应性,因为与全球水平辐照度相比,直接法线辐照度的校正仍具有显著的挑战性,因为其误差较大,而误差通常归因于云建模的复杂性。本文提出了一种新的站点适应方法,利用一个新的指标变量来描述晴空指数对天空条件分类的正确性。该变量在站点适应中具有双重用途:首先,它被用于预处理过程中传统晴空分选之后的两步分选程序中;其次,它可作为基于机器学习的站点适应中的额外输入特征。结果表明,前一种方法可以将平均偏差误差降低到仅 0.4%,而后一种方法则能更好地减少较大的偏差,这体现在较低的均方根误差上。
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来源期刊
Asia-Pacific Journal of Atmospheric Sciences
Asia-Pacific Journal of Atmospheric Sciences 地学-气象与大气科学
CiteScore
5.50
自引率
4.30%
发文量
34
审稿时长
>12 weeks
期刊介绍: The Asia-Pacific Journal of Atmospheric Sciences (APJAS) is an international journal of the Korean Meteorological Society (KMS), published fully in English. It has started from 2008 by succeeding the KMS'' former journal, the Journal of the Korean Meteorological Society (JKMS), which published a total of 47 volumes as of 2011, in its time-honored tradition since 1965. Since 2008, the APJAS is included in the journal list of Thomson Reuters’ SCIE (Science Citation Index Expanded) and also in SCOPUS, the Elsevier Bibliographic Database, indicating the increased awareness and quality of the journal.
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