Robust estimation of global horizontal irradiance with modified fuzzy regression functions with a noise cluster in Australia

IF 7.1 Q1 ENERGY & FUELS Energy Conversion and Management-X Pub Date : 2024-07-01 DOI:10.1016/j.ecmx.2024.100677
Srinivas Chakravarty , Haydar Demirhan , Furkan Baser
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Abstract

The utilization of solar energy is picking up speed to counter climate change. New large-scale photovoltaic power stations are being constructed to increase solar utilization in the energy mix. A critical input of site selection for solar farms is the solar energy generation potential at a given location. Various physical and satellite-based inversion models are proposed to estimate the solar irradiation reaching the ground at potential locations, based on the meteorological features. However, the meteorological features generally contain outlier observations that distract the solar irradiation estimation models. To address this challenge, this study employs a robust fuzzy regression functions framework against the outliers to estimate the global horizontal irradiance (GHI) in Australia. Our framework is benchmarked with support vector machines, deep neural networks, and an adaptive network-based fuzzy inference system, and better GHI estimation performance is observed. The proposed framework provides 24 %, 18 %, and 23 % gain over the second-best method in terms of the rescaled mean absolute error, absolute percentage bias and rescaled root-mean-squared error. Monthly and annual GHI maps are created for Australia and compared to those from NASA POWER GHI estimates and Solargis annual GHI estimates. Our framework has an error range between 0.075 % and 2.9 % when validated against ground measurements. It provides at least an average of 40% lower monthly and annual error rates than POWER. This rate of gain rises to 69% when compared to Solargis. Our maps are not impacted by terrestrial characteristics and clear-sky conditions. This study’s results are beneficial in site selection and construction of high-precision GHI estimation models for practitioners.

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在澳大利亚利用带噪声群的修正模糊回归函数对全球水平辐照度进行鲁棒估计
为应对气候变化,太阳能的利用正在加速。新的大型光伏发电站正在建设之中,以提高太阳能在能源组合中的利用率。太阳能发电场选址的一个关键因素是特定地点的太阳能发电潜力。人们提出了各种基于物理和卫星的反演模型,以根据气象特征估算到达潜在地点地面的太阳辐照度。然而,气象特征通常包含离群观测值,会分散太阳辐照度估算模型的注意力。为了应对这一挑战,本研究采用了一种稳健的模糊回归函数框架来估计澳大利亚的全球水平辐照度(GHI)。我们的框架以支持向量机、深度神经网络和基于自适应网络的模糊推理系统为基准,观察到了更好的全球水平辐照度估计性能。在重标定平均绝对误差、绝对百分比偏差和重标定均方根误差方面,所提出的框架比第二好的方法分别提高了 24%、18% 和 23%。为澳大利亚绘制了月度和年度全球暖气指数图,并与美国国家航空航天局 POWER 全球暖气指数估算值和 Solargis 年度全球暖气指数估算值进行了比较。在与地面测量数据进行验证时,我们的框架误差范围在 0.075 % 到 2.9 % 之间。与 POWER 相比,它的月误差率和年误差率至少平均降低了 40%。与 Solargis 相比,误差率提高了 69%。我们的地图不受地面特征和晴空条件的影响。这项研究的结果有助于为实践者选址和构建高精度的 GHI 估算模型。
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来源期刊
CiteScore
8.80
自引率
3.20%
发文量
180
审稿时长
58 days
期刊介绍: Energy Conversion and Management: X is the open access extension of the reputable journal Energy Conversion and Management, serving as a platform for interdisciplinary research on a wide array of critical energy subjects. The journal is dedicated to publishing original contributions and in-depth technical review articles that present groundbreaking research on topics spanning energy generation, utilization, conversion, storage, transmission, conservation, management, and sustainability. The scope of Energy Conversion and Management: X encompasses various forms of energy, including mechanical, thermal, nuclear, chemical, electromagnetic, magnetic, and electric energy. It addresses all known energy resources, highlighting both conventional sources like fossil fuels and nuclear power, as well as renewable resources such as solar, biomass, hydro, wind, geothermal, and ocean energy.
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