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Quantifying and reducing curve-fitting uncertainty in Isc

机译:量化和减少Isc中的曲线拟合不确定性

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Current-voltage (I-V) curve measurements of photovoltaic (PV) devices are used to determine performance parameters and to establish traceable calibration chains. Measurement standards specify localized curve fitting methods, e.g., straight-line interpolation/extrapolation of the I-V curve points near short-circuit current, I. By considering such fits as statistical linear regressions, uncertainties in the performance parameters are readily quantified. However, the legitimacy of such a computed uncertainty requires that the model be a valid (local) representation of the I-V curve and that the noise be sufficiently well characterized. Using more data points often has the advantage of lowering the uncertainty. However, more data points can make the uncertainty in the fit arbitrarily small, and this fit uncertainty misses the dominant residual uncertainty due to so-called model discrepancy. Using objective Bayesian linear regression for straight-line fits for I, we investigate an evidence-based method to automatically choose data windows of I-V points with reduced model discrepancy. We also investigate noise effects. Uncertainties, aligned with the Guide to the Expression of Uncertainty in Measurement (GUM), are quantified throughout.
机译:光伏(PV)设备的电流-电压(I-V)曲线测量用于确定性能参数并建立可追溯的校准链。测量标准指定了局部曲线拟合方法,例如,对短路电流I附近的I-V曲线点进行直线内插/外推。通过考虑统计线性回归等拟合,可以轻松量化性能参数中的不确定性。但是,这种计算出的不确定性的合法性要求模型必须是I-V曲线的有效(局部)表示,并且必须对噪声进行充分良好的表征。使用更多数据点通常具有降低不确定性的优势。但是,更多的数据点可以使拟合的不确定性任意小,并且由于所谓的模型差异,该拟合不确定性错过了主要的残余不确定性。使用客观贝叶斯线性回归进行I的直线拟合,我们研究了一种基于证据的方法,可以自动选择具有较小模型差异的I-V点的数据窗口。我们还将研究噪声影响。不确定性与《不确定性表示指南》(GUM)一致,在全文中进行了量化。

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