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Spatial prediction of naturally occurring gamma radiation in Great Britain

机译:英国自然发生的伽马辐射的空间预测

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Gamma radiation from natural sources is an important component of background radiation, and correlates with childhood leukaemia risk in Great Britain. The geographic variation of indoor gamma radiation dose-rates in Great Britain is explored using various geo-statistical methods. A multi-resolution Gaussian-process model using radial basis functions with 2, 4, or 8 components, is fitted via maximum likelihood, and a non-spatial model is also used, fitted by ordinary least squares. Because of the dataset size (N = 10,199), four other parametric spatial models are fitted by variogram-fitting. A randomly selected 70:30 split is used for fitting:validation. The models are evaluated based on their predictive performance as measured by Mean Absolute Error, Mean Squared Error, as well as Pearson correlation and rank-correlation between predicted and actual dose-rates. Each of the four parametric models (Matern, Gaussian, Bessel, Spherical) fitted the empirical variogram well, and yielded similar predictions at >50 km separation, although with more substantial differences in predicted variograms at <50 km. The multi-resolution Gaussian-process model with 8 components had the best predictive accuracy among the models considered. The Spherical, Bessel, Matern, Gaussian and ordinary least squares models had progressively worse predictive performance, the ordinary least squares model being particularly poor in this respect. Published by Elsevier Ltd.
机译:来自自然源的伽马射线辐射是背景辐射的重要组成部分,并且与英国的儿童白血病风险相关。英国使用各种地理统计方法探索了室内伽马辐射剂量率的地理变化。通过最大似然拟合使用具有2、4,或8个分量的径向基函数的多分辨率高斯过程模型,并使用由普通最小二乘法拟合的非空间模型。由于数据集的大小(N = 10,199),通过变异函数拟合来拟合其他四个参数空间模型。随机选择的70:30分割用于fitting:validation。根据通过平均绝对误差,均方误差以及预测剂量率与实际剂量率之间的皮尔逊相关性和等级相关性所测得的模型的预测性能,对模型进行评估。四个参数模型(Matern,Gaussian,Bessel,Spherical)中的每一个都很好地拟合了经验方差图,并且在> 50 km距离处产生了相似的预测,尽管在<50 km时,预测方差的差异更大。在考虑的模型中,具有8个成分的多分辨率高斯过程模型具有最佳的预测精度。球形,贝塞尔(Bessel),马特恩(Matern),高斯(Gaussian)模型和普通最小二乘法模型的预测性能逐渐变差,普通最小二乘法模型在这方面特别差。由Elsevier Ltd.发布

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