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DOI10.1016/j.rser.2019.01.009
Universally deployable extreme learning machines integrated with remotely sensed MODIS satellite predictors over Australia to forecast global solar radiation: A new approach
Deo, Ravinesh C.1,2; Sahin, Mehmet3; Adamowski, Jan F.4; Mi, Jianchun5
发表日期2019
ISSN1364-0321
卷号104页码:235-261
英文摘要

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.


WOS研究方向Science & Technology - Other Topics ; Energy & Fuels
来源期刊RENEWABLE & SUSTAINABLE ENERGY REVIEWS
文献类型期刊论文
条目标识符http://gcip.llas.ac.cn/handle/2XKMVOVA/95286
作者单位1.Univ Southern Queensland, Inst Life Sci & Environm, Ctr Sustainable Agr Syst, Sch Agr Computat & Environm Sci, Springfield Cent, Qld 4300, Australia;
2.Univ Southern Queensland, Inst Life Sci & Environm, Ctr Appl Climate Sci, Springfield Cent, Qld 4300, Australia;
3.Siirt Univ, Dept Elect & Elect Engn, TR-56100 Siirt, Turkey;
4.McGill Univ, Fac Agr & Environm Sci, Dept Bioresource Engn, Montreal, PQ, Canada;
5.Peking Univ, Coll Engn, Dept Energy & Resources, Beijing, Peoples R China
推荐引用方式
GB/T 7714
Deo, Ravinesh C.,Sahin, Mehmet,Adamowski, Jan F.,et al. Universally deployable extreme learning machines integrated with remotely sensed MODIS satellite predictors over Australia to forecast global solar radiation: A new approach[J],2019,104:235-261.
APA Deo, Ravinesh C.,Sahin, Mehmet,Adamowski, Jan F.,&Mi, Jianchun.(2019).Universally deployable extreme learning machines integrated with remotely sensed MODIS satellite predictors over Australia to forecast global solar radiation: A new approach.RENEWABLE & SUSTAINABLE ENERGY REVIEWS,104,235-261.
MLA Deo, Ravinesh C.,et al."Universally deployable extreme learning machines integrated with remotely sensed MODIS satellite predictors over Australia to forecast global solar radiation: A new approach".RENEWABLE & SUSTAINABLE ENERGY REVIEWS 104(2019):235-261.
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