{"title":"用于估算南部非洲每小时直接正辐照度的新分解模型","authors":"F. Daniel-Durandt, A. J. Rix","doi":"10.3390/solar4020013","DOIUrl":null,"url":null,"abstract":"This research develops and validates new decomposition models for hourly direct Normal Irradiance (DNI) estimations for Southern African data. Localised models were developed using data collected from the Southern African Universities Radiometric Network (SAURAN). Clustered areas within Southern Africa were identified, and the developed cluster decomposition models highlighted the potential advantages of grouping data based on shared geographical and climatic attributes. This clustering approach could enhance decomposition model performance, particularly when local data are limited or when data are available from multiple nearby stations. Further, a regional Southern African decomposition model, which encompasses a wide spectrum of climatic regions and geographic locations, exhibited notable improvements over the baseline models despite occasional overestimation or underestimation. The results demonstrated improved DNI estimation accuracy compared to the baseline models across all testing and validation datasets. These outcomes suggest that utilising a localised model can significantly enhance DNI estimations for Southern Africa and potentially for developing similar models in diverse geographic regions worldwide. The overall metrics affirm the substantial advancement achieved with the regional model as an accurate decomposition model representing Southern Africa. Two stations were used as a validation study, as an application example where no localised model was available, and the cluster and regional models both outperformed the comparative decomposition models. This study focused on validating the model for hourly DNI in Southern Africa within a range of Kt-intervals from 0.175 to 0.875, and the range could be expanded and validated for future studies. Implementing accurate decomposition models in developing countries can accelerate the adoption of renewable energy sources, diminishing reliance on coal and fossil fuels.","PeriodicalId":517023,"journal":{"name":"Solar","volume":"17 13","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-05-14","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"New Decomposition Models for Hourly Direct Normal Irradiance Estimations for Southern Africa\",\"authors\":\"F. Daniel-Durandt, A. J. 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The results demonstrated improved DNI estimation accuracy compared to the baseline models across all testing and validation datasets. These outcomes suggest that utilising a localised model can significantly enhance DNI estimations for Southern Africa and potentially for developing similar models in diverse geographic regions worldwide. The overall metrics affirm the substantial advancement achieved with the regional model as an accurate decomposition model representing Southern Africa. Two stations were used as a validation study, as an application example where no localised model was available, and the cluster and regional models both outperformed the comparative decomposition models. This study focused on validating the model for hourly DNI in Southern Africa within a range of Kt-intervals from 0.175 to 0.875, and the range could be expanded and validated for future studies. 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引用次数: 0
摘要
这项研究为南部非洲数据的每小时直接法线辐照度(DNI)估算开发并验证了新的分解模型。利用从南部非洲大学辐射测量网络(SAURAN)收集的数据开发了本地化模型。确定了南部非洲的集群地区,开发的集群分解模型突出了根据共同的地理和气候属性对数据进行分组的潜在优势。这种分组方法可以提高分解模型的性能,特别是在当地数据有限或附近有多个站点提供数据的情况下。此外,南部非洲区域分解模型涵盖了广泛的气候区域和地理位置,尽管偶尔会出现高估或低估的情况,但与基线模型相比仍有明显改善。结果表明,在所有测试和验证数据集上,与基线模型相比,DNI 估算的准确性有所提高。这些结果表明,利用本地化模型可以显著提高南部非洲的 DNI 估算,并有可能在全球不同地理区域开发类似模型。总体指标表明,作为代表南部非洲的精确分解模型,区域模型取得了巨大进步。在没有本地化模型的情况下,将两个站点作为应用实例进行了验证研究,结果发现集群模型和区域模型的表现均优于比较分解模型。这项研究的重点是在 0.175 至 0.875 的 Kt 间隔范围内验证南部非洲每小时 DNI 的模型,未来的研究还可以扩大范围并进行验证。在发展中国家实施精确的分解模型可以加快可再生能源的采用,减少对煤炭和化石燃料的依赖。
New Decomposition Models for Hourly Direct Normal Irradiance Estimations for Southern Africa
This research develops and validates new decomposition models for hourly direct Normal Irradiance (DNI) estimations for Southern African data. Localised models were developed using data collected from the Southern African Universities Radiometric Network (SAURAN). Clustered areas within Southern Africa were identified, and the developed cluster decomposition models highlighted the potential advantages of grouping data based on shared geographical and climatic attributes. This clustering approach could enhance decomposition model performance, particularly when local data are limited or when data are available from multiple nearby stations. Further, a regional Southern African decomposition model, which encompasses a wide spectrum of climatic regions and geographic locations, exhibited notable improvements over the baseline models despite occasional overestimation or underestimation. The results demonstrated improved DNI estimation accuracy compared to the baseline models across all testing and validation datasets. These outcomes suggest that utilising a localised model can significantly enhance DNI estimations for Southern Africa and potentially for developing similar models in diverse geographic regions worldwide. The overall metrics affirm the substantial advancement achieved with the regional model as an accurate decomposition model representing Southern Africa. Two stations were used as a validation study, as an application example where no localised model was available, and the cluster and regional models both outperformed the comparative decomposition models. This study focused on validating the model for hourly DNI in Southern Africa within a range of Kt-intervals from 0.175 to 0.875, and the range could be expanded and validated for future studies. Implementing accurate decomposition models in developing countries can accelerate the adoption of renewable energy sources, diminishing reliance on coal and fossil fuels.