Abstract

In complex engineering models, various uncertain parameters affect the computational results. Most of them can only be estimated or assumed quite generally. In such a context, measurements are interesting to determine the most decisive parameters accurately. While measurements can reduce parameters’ variance, structural monitoring might improve general assumptions on distributions and their characteristics. The decision on variables being measured often relies on experts’ practical experience. This paper introduces a method to stochastically estimate the potential benefits of measurements by modified sensitivity indices. They extend the established variance-based sensitivity indices originally suggested by Sobol’. They do not quantify the importance of a variable but the importance of its variance reduction. The numerical computation is presented and exemplified on a reference structure, a 50-year-old pre-stressed concrete bridge in Germany, where the prediction of the fatigue lifetime of the pre-stressing steel is of concern. Sensitivity evaluation yields six important parameters (e.g., shape of the S–N curve, temperature loads, creep, and shrinkage). However, taking into account individual monitoring measures and suited measurements identified by the modified sensitivity indices, creep and shrinkage, temperature loads, and the residual pre-strain of the tendons turn out to be most efficient. They grant the highest gains of accuracy with respect to the lifetime prediction.

Highlights

  • Engineers use mathematical models to describe the bearing behavior of structures or to predict their residual lifetime [1]

  • They document a prognosis result when scatter of one single parameter reduced by monitoring

  • The table contains 16 sets of lognormal distribution is reduced by monitoring

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Summary

Introduction

Engineers use mathematical models to describe the bearing behavior of structures or to predict their residual lifetime [1]. Sensitivity analyses (SA) are well established to investigate and analyze analytical or numerical computational models [10,11] They help to improve the knowledge on the model’s behavior and to assess the impact of all parameters to the variability of the model output [12]. The variance-based sensitivity indices by Sobol’ [18] involve substantial computational costs and provide the most sophisticated information in model analysis by quantitative results [11]. They assess a parameter’s direct influence, as well as its influence induced by correlation to others—referred to as parameter interaction. A combination of screening and quantitative methods is possible [19]

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