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Multivariate global sensitivity analysis for dynamic models based on wavelet analysis

机译:基于小波分析的动态模型多元全局灵敏度分析

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Dynamic models with time-dependent output are widely used in engineering for risk assessment and decision making. Global sensitivity analysis for these models is very useful for simplifying the model, improving the model performance, etc. The existent covariance decomposition based global sensitivity analysis method combines the variance based sensitivity analysis results of the model output at all the instants, which just utilizes the information of the time-dependent output in time domain. However, many significant features of time-dependent output may not be obtained from the time domain. Thus, performing global sensitivity analysis for dynamic models just with the information in time domain may be incomplete. In this paper, a new kind of sensitivity indices based on wavelet analysis is proposed. The energy distribution of model output over different frequency bands is extracted as a quantitative feature of the time-dependent output, and it contains the information of model output in both time and frequency domains. Then, a vector projection method is utilized to measure the effects of input variables on the energy distribution of model output. An efficient algorithm is also proposed to estimate the new sensitivity indices. The numerical examples show the difference between the new sensitivity indices and the covariance decomposition based sensitivity indices. Finally, the new sensitivity indices are applied to an environmental model to tell the relative importance of the input variables; which can be useful for improving the model performance. (C) 2017 Elsevier Ltd. All rights reserved.
机译:具有随时间变化的输出的动态模型在工程中广泛用于风险评估和决策。这些模型的全局敏感度分析对于简化模型,改善模型性能等非常有用。现有的基于协方差分解的全局敏感度分析方法结合了所有时刻模型输出的基于方差的敏感度分析结果,仅利用了时域中与时间有关的输出的信息。但是,可能无法从时域获得与时间相关的输出的许多重要功能。因此,仅使用时域信息对动态模型进行全局敏感性分析可能是不完整的。本文提出了一种基于小波分析的新型灵敏度指标。提取模型输出在不同频带上的能量分布作为时间相关输出的定量特征,并且包含模型输出在时域和频域中的信息。然后,利用向量投影方法来测量输入变量对模型输出能量分布的影响。还提出了一种有效的算法来估计新的灵敏度指标。数值示例显示了新的灵敏度指标和基于协方差分解的灵敏度指标之间的差异。最后,将新的灵敏度指标应用于环境模型,以说明输入变量的相对重要性。这对于改善模型性能很有用。 (C)2017 Elsevier Ltd.保留所有权利。

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