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Estimating Predictive Variance for Statistical Gas Distribution Modelling

机译:估算统计气体分布建模的预测方差

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Recent publications in statistical gas distribution modelling have proposed algorithms that model mean and variance of a distribution. This paper argues that estimating the predictive concentration variance entails not only a gradual improvement but is rather a significant step to advance the field. This is, first, since the models much better fit the particular structure of gas distributions, which exhibit strong luctuations with considerable spatial variations as a result of the intermittent character of gas dispersal. Second, because estimating the predictive variance allows to evaluate the model quality in terms of the data likelihood. This offers a solution to the problem of ground truth evaluation, which has always been a critical issue for gas distribution modelling. It also enables solid comparisons of different modelling approaches, and provides the means to learn meta parameters of the model, to determine when the model should be updated or re-initialised, or to suggest new measurement locations based on the current model. We also point out directions of related ongoing or potential future research work.
机译:统计气体分布建模中最近的出版物已经提出了模型的算法和分布的差异。本文认为,预测浓度方差估计不仅需要逐步改进,而且是推进领域的重要步骤。这首先是,由于模型更好地符合气体分布的特定结构,这表现出具有相当大的空间变化的强的阻能,因此由于气体分散的间歇性。其次,因为估计预测方差允许在数据似然方面评估模型质量。这提供了解决实际评估问题的解决方案,这始终是气体分配建模的关键问题。它还可以实现不同建模方法的实体比较,并提供了学习模型的元参数的方法,以确定何时应更新或重新初始化模型,或者根据当前模型建议新的测量位置。我们还指出了相关的持续或潜在的未来研究工作的指示。

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