Bayesian Sensitivity Analysis to Quantifying Uncertainty in a Dendroclimatology Model

M. Hassan
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引用次数: 4

Abstract

A nonlinear forward model named VSLite is used to simulate tree ring-width growth from climate data. There is always uncertainty in such data inputs, which might influence the uncertainty of the model outputs. The present work performs a Bayesian sensitivity analysis (BSA) to the VSLite model using a Gaussian process emulator. BSA aims to understand and quantify the uncertainty of the model’s outputs due to a change in its inputs. The model was successfully implemented at different geographical locations around the world. To examine the accuracy of the model, we first compared real tree-ring data at different locations with those simulated from VSLite. The variability in the model output was then explored and quantified via BSA. Results show that BSA has successfully classified model parameters in terms of their influences on the model output variation.
树状气候模式不确定性量化的贝叶斯敏感性分析
利用非线性正演模型VSLite模拟了树木年轮宽度的变化。这些数据输入总是存在不确定性,这可能会影响模型输出的不确定性。本文利用高斯过程仿真器对VSLite模型进行贝叶斯灵敏度分析(BSA)。BSA旨在理解和量化由于输入变化而导致的模型输出的不确定性。该模型已在世界各地的不同地理位置成功实施。为了检验模型的准确性,我们首先将不同地点的真实树木年轮数据与VSLite模拟的数据进行了比较。然后通过BSA对模型输出的可变性进行了探索和量化。结果表明,BSA根据模型参数对模型输出变化的影响成功地对模型参数进行了分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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