首页> 外文期刊>Journal of Cleaner Production >Global solar radiation prediction by ANN integrated with European Centre for medium range weather forecast fields in solar rich cities of Queensland Australia
【24h】

Global solar radiation prediction by ANN integrated with European Centre for medium range weather forecast fields in solar rich cities of Queensland Australia

机译:由ANN与欧洲中心整合的全球太阳辐射预测,用于澳大利亚昆士兰州太阳能资源丰富的城市的中程天气预报领域

获取原文
获取原文并翻译 | 示例
       

摘要

To support alternative forms of energy resources, the prediction of global incident solar radiation (Irad) is critical to establish the efficacy of solar energy resources as a free and clean energy, and to identify and screen solar powered sites. Solar radiation data for construction of energy feasibility studies are not available in many locations due to the absence of meteorological stations, especially in remote or regional sites. To surmount the challenge in solar energy site identification, the universally gridded data integrated into predictive models used to generate reliable Irad forecasts can be considered as a viable medium for future energy utilization. The objective of this paper is to review, develop and evaluate a suite of machine learning (ML) models based on the artificial neural network (ANN) versus several other kinds of data-driven models such as support vector regression (SVR), Gaussian process machine learning (GPML) and genetic programming (GP) models for the prediction of daily Irad generated through the European Centre for Medium Range Weather Forecasting (ECMWF) Reanalysis fields. The performance of the ML models are benchmarked against several statistical tools: auto regressive moving integrated average (ARIMA), Temperature Model (TM), Time series and Fourier Series (TSFS) models. To train these models, 87 different predictor variables from the ERA-Interim reanalysis dataset (01-January-1979 to 31 December -2015) were extracted for 5 solar-rich metropolitan sites (i.e., Brisbane, Gold Coast, Sunshine Coast, Ipswich and Toowoomba, Australia) targeted against surface level Irad available from the measured Scientific Information for Land Owners dataset. For daily forecast models, a total of the 20 most important predictors related to the Irad dataset were screened with nearest component analysis: "fsrnca" feature selection, and partitioned into training (70%), validation (15%) and testing (15%) sets for model design. To benchmark the ANN, TSFS and TM models were developed with Fourier series and regression analysis, respectively and the statistical performance was benchmarked with root mean square error (RMSE), mean absolute error (MAE), Nash-Sutcliffe efficiency (ENS), Willmott's Index (WI), Mean Bias error (MBE), Legates and McCabe Index (El), and relative MAE, RMSE and diagnostic plots. The performance of ANN was significantly better than the other models (SVR, GPML, GP, TM), resulting in lower RMSE (1.715 2.27 MJM-2/day relative to 2.14-5.90 MJrn-2/day), relative RMSE (9.07-12.47 vs 10.98-29.15), relative RMAE (7.97-11.74 vs 9.27-33.96) and larger WI, ENS and E1 (0.938-0.967 vs. 0.462-0.955, 0.935-0.872 vs. 0.355-0.915, 0.672-0.783 vs. 0.252-0.740). Additionally, models assessed with predictors grouped into El Nino, La Nina and the positive, negative and neutral periods of Indian Ocean Dipole, affirmed the merits of ANN model (RRMSE 11%). Seasonal analysis showed that ANN was an elite tool over SVR. GPML and GP for Irad prediction. The study concludes that an ANN approach integrated with ECMWF fields, incorporating physical interactions of Ira with atmospheric data, is an efficacious alternative to forecast solar energy and assist with energy modelling for solar-rich sites that have diverse climatic conditions to further support clean energy utilization. (C) 2019 Elsevier Ltd. All rights reserved.
机译:为了支持其他形式的能源,对全球入射太阳辐射(Irad)的预测对于确立太阳能资源作为一种免费和清洁能源的功效以及识别和屏蔽太阳能发电站点至关重要。由于没有气象站,因此在许多地方无法获得用于进行能源可行性研究的太阳辐射数据,尤其是在偏远或区域性站点。为了克服太阳能站点识别方面的挑战,可以将集成到用于生成可靠Irad预测的预测模型中的通用网格数据视为未来能源利用的可行媒介。本文的目的是回顾,开发和评估一套基于人工神经网络(ANN)的机器学习(ML)模型,以及其他几种数据驱动模型,例如支持向量回归(SVR),高斯过程机器学习(GPML)和遗传编程(GP)模型,用于预测通过欧洲中距离天气预报中心(ECMWF)重新分析字段产生的每日Irad。 ML模型的性能以几种统计工具为基准:自动回归移动平均(ARIMA),温度模型(TM),时间序列和傅里叶级数(TSFS)模型。为了训练这些模型,从ERA中期再分析数据集中(1979年1月1日至2015年12月31日)提取了87个不同的预测变量,用于5个太阳能资源丰富的大都市区(即布里斯班,黄金海岸,阳光海岸,伊普斯威奇和Toowoomba,澳大利亚)针对地表水准Irad的目标,可从测得的土地所有者科学信息数据集中获得。对于每日预测模型,使用最近的成分分析筛选了与Irad数据集相关的20个最重要的预测变量:“ fsrnca”特征选择,然后分为训练(70%),验证(15%)和测试( 15%)用于模型设计的集合。为了对ANN进行基准测试,分别通过傅里叶级数和回归分析开发了TSFS和TM模型,并用均方根误差(RMSE),平均绝对误差(MAE),纳什-苏特克利夫效率(ENS)和Willmott's指数(WI),平均偏差误差(MBE),Legates和McCabe指数(El)以及相对MAE,RMSE和诊断图。 ANN的性能明显优于其他模型(SVR,GPML,GP,TM),从而导致相对于RMSE(9.07-)的RMSE较低(1.715 2.27 MJM-2 /天,相对于2.14-5.90 MJrn-2 /天) 12.47比10.98-29.15),相对RMAE(7.97-11.74比9.27-33.96)和更大的WI,ENS和E1(0.938-0.967比0.462-0.955、0.935-0.872比0.355-0.915、0.672-0.783比0.252 -0.740)。此外,将预测因子分为El Nino,La Nina和印度洋偶极子的正,负和中性时期进行评估的模型肯定了ANN模型的优点(RRMSE <11%)。季节性分析表明,ANN是SVR的精英工具。 GPML和GP用于Irad预测。该研究得出的结论是,结合ECMWF领域的ANN方法(结合了Ira与大气数据的物理相互作用)是一种有效的替代方案,可以预测太阳能并为气候条件多样的富太阳能站点提供能量建模,以进一步支持清洁能源的利用。 (C)2019 Elsevier Ltd.保留所有权利。

著录项

相似文献

  • 外文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号