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Predictive uncertainty in environmental modelling.

机译:环境建模中的预测不确定性。

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摘要

Artificial neural networks have proved an attractive approach to non-linear regression problems arising in environmental modelling, such as statistical downscaling, short-term forecasting of atmospheric pollutant concentrations and rainfall run-off modelling. However, environmental datasets are frequently very noisy and characterized by a noise process that may be heteroscedastic (having input dependent variance) and/or non-Gaussian. The aim of this paper is to review existing methodologies for estimating predictive uncertainty in such situations and, more importantly, to illustrate how a model of the predictive distribution may be exploited in assessing the possible impacts of climate change and to improve current decision making processes. The results of the WCCI-2006 predictive uncertainty in environmental modelling challenge are also reviewed, suggesting a number of areas where further research may provide significant benefits.
机译:人工神经网络已证明是解决环境建模中出现的非线性回归问题的一种有吸引力的方法,例如统计缩减,大气污染物浓度的短期预测和降雨径流建模。但是,环境数据集通常非常嘈杂,其噪声过程的特征可能是异方差的(具有与输入有关的方差)和/或非高斯的。本文的目的是审查在这种情况下估计预测不确定性的现有方法,更重要的是说明如何在评估气候变化的可能影响时利用预测分布的模型并改善当前的决策过程。还回顾了WCCI-2006在环境建模挑战中的预测不确定性的结果,指出了许多领域,进一步的研究可能会带来明显的好处。

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