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Universally deployable extreme learning machines integrated with remotely sensed MODIS satellite predictors over Australia to forecast global solar radiation: A new approach

机译:通用部署的极限学习机,与遥感MODIS卫星预报器在澳大利亚集成在一起,可预测全球太阳辐射:一种新方法

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摘要

Global advocacy to mitigate climate change impacts on pristine environments, wildlife, ecology, and health has led scientists to design technologies that harness solar energy with remotely sensed, freely available data. This paper presents a study that designed a regionally adaptable and predictively efficient extreme learning machine (ELM) model to forecast long-term incident solar radiation (ISR) over Australia. The relevant satellite-based input data extracted from the Moderate Resolution Imaging Spectroradiometer (i.e., normalized vegetation index, land-surface temperature, cloud top pressure, cloud top temperature, cloud effective emissivity, cloud height, ozone and near infrared-clear water vapour), enriched by geo-temporal input variables (i.e., periodicity, latitude, longitude and elevation) are applied for a total of 41 study sites distributed approximately uniformly and paired with ground-based ISR (target). Of the 41 sites, 26 are incorporated in an ELM algorithm for the design of a universal model, and the remainder are used for model cross-validation. A universally-trained ELM (with training data as a global input matrix) is constructed, and the spatially-deployable model is applied at 15 test sites. The optimal ELM model is attained by trial and error to optimize the hidden layer activation functions for feature extraction and is benchmarked with competitive artificial intelligence algorithms: random forest (RF), M5 Tree, and multivariate adaptive regression spline (MARS). Statistical metrics show that the universally-trained ELM model has very good accuracy and outperforms RF, M5 Tree, and MARS models. With a distinct geographic signature, the ELM model registers a Legates & McCabe's Index of 0.555-0.896 vs. 0.411-0.858 (RF), 0.434-0.811 (M5 Tree), and 0.113-0.868 (MARS). The relative root-mean-square (RMS) error of ELM is low, ranging from approximately 3.715-7.191% vs. 4.907-10.784% (RF), 7.111-11.169% (M5 Tree) and 4.591-18.344% (MARS). Taylor diagrams that illustrate model preciseness in terms of RMS centred difference, error analysis, and boxplots of forecasted vs. observed ISR also confirmed the versatility of the ELM in generating forecasts over heterogeneous, remote spatial sites. This study ascertains that the proposed methodology has practical implications for regional energy modelling, particularly at national scales by utilizing remotely-sensed satellite data, and thus, may be useful for energy feasibility studies at future solar-powered sites. The approach is also important for renewable energy exploration in data-sparse or remote regions with no established measurement infrastructure but with a rich and viable satellite footprint.
机译:全球减轻气候变化对原始环境,野生动植物,生态和健康的影响的倡导促使科学家们设计了利用太阳能和遥感免费数据的技术。本文提出了一项研究,该研究设计了区域适应性强且可预测性强的极限学习机(ELM)模型,以预测澳大利亚的长期入射太阳辐射(ISR)。从中等分辨率成像光谱仪中提取的有关卫星的输入数据(即归一化植被指数,地表温度,云顶压力,云顶温度,云有效发射率,云高度,臭氧和近红外净水蒸气) ,由地时输入变量(即周期性,纬度,经度和海拔)丰富的,被应用于总共41个大致均匀分布并与地面ISR(目标)配对的研究地点。在这41个站点中,有26个站点并入了ELM算法中,用于设计通用模型,其余站点用于模型交叉验证。构建了通用训练的ELM(以训练数据作为全局输入矩阵),并且在15个测试位置应用了可空间部署的模型。最佳的ELM模型是通过反复试验获得的,以优化用于特征提取的隐藏层激活函数,并以竞争性人工智能算法为基准:随机森林(RF),M5树和多元自适应回归样条(MARS)。统计指标表明,经过通用训练的ELM模型具有非常好的准确性,并且优于RF,M5 Tree和MARS模型。具有独特的地理特征的ELM模型记录的Legates&McCabe's Index为0.555-0.896与0.411-0.858(RF),0.434-0.811(M5 Tree)和0.113-0.868(MARS)。 ELM的相对均方根(RMS)误差很低,介于3.715-7.191%与4.907-10.784%(RF),7.111-11.169%(M5 Tree)和4.591-18.344%(MARS)之间。泰勒图以RMS中心差,误差分析以及ISR预测值与观察到的ISR的箱形图的形式说明了模型的精确性,也证实了ELM在异类,偏远空间站点上生成预测的多功能性。这项研究确定了所提出的方法对区域能源建模具有实际意义,特别是在国家尺度上,利用遥感卫星数据,因此可能对未来太阳能电站的能源可行性研究有用。该方法对于数据稀疏或偏远地区可再生能源勘探也很重要,因为它没有成熟的测量基础设施,但拥有丰富而可行的卫星覆盖区。

著录项

  • 来源
    《Renewable & Sustainable Energy Reviews》 |2019年第4期|235-261|共27页
  • 作者单位

    Univ Southern Queensland, Inst Life Sci & Environm, Ctr Sustainable Agr Syst, Sch Agr Computat & Environm Sci, Springfield Cent, Qld 4300, Australia|Univ Southern Queensland, Inst Life Sci & Environm, Ctr Appl Climate Sci, Springfield Cent, Qld 4300, Australia;

    Siirt Univ, Dept Elect & Elect Engn, TR-56100 Siirt, Turkey;

    McGill Univ, Fac Agr & Environm Sci, Dept Bioresource Engn, Montreal, PQ, Canada;

    Peking Univ, Coll Engn, Dept Energy & Resources, Beijing, Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Satellite solar model; Remote sensing; Extreme learning machine; Spatial forecasting;

    机译:卫星太阳模型;遥感;极端学习机;空间预测;
  • 入库时间 2022-08-18 03:53:09

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