混凝土建筑、监测数据与贝叶斯认识论

M. Pozzi, B. Glisic, D. Zonta, D. Inaudi
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引用次数: 0

摘要

结构健康监测(SHM)在土木工程中广泛应用的一个重要挑战是创建和实现自动可靠检测结构异常行为的算法。Branko是这篇论文的主要作者和第二作者,他负责了一座19层高楼的数据分析。多年来,对仪器数据的观察使布兰科确信,其中一根基柱正在发生不同的沉降,这与他最初的预期明显相反。这个结论逐渐成熟,不仅是监测结果的结果,而且是基于从设计工程师那里得到的口头信息。因此,除了监测系统提供的定量数据,包括在数据分析算法中,工程师的知识和经验也很有价值。在这项研究中,我们提出了一种基于贝叶斯逻辑的方法,作为一种有效的工具,允许这种领域知识和SHM结果的混合。我们展示了Branko所遵循的整个认知过程是如何用贝叶斯逻辑恰当地再现的。特别地,我们讨论了先验知识和潜在的检查证据可以在多大程度上改变基于SHM数据的建筑行为感知。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
"Concrete Building, Monitoring Data and Bayesian Epistemology"
An important challenge for widespread application of structural health monitoring (SHM) in civil engineering is the creation and implementation of algorithms for automatic and reliable detection of unusual structural behavior. Branko, the lead role and the second author of this paper has been in charge of data analysis of a 19storey tall building. Observation of the data from the instrumentation has over the years, convinced Branko that there is an ongoing differential settlement of one of the base columns, in apparent contrast with his initial expectations. This conclusion matured gradually not only as a consequence of the monitoring results, but also based on verbal information received from a design engineer. Thus, besides the quantitative data provided by the monitoring system, including in the data analysis algorithms the engineer’s knowledge and experience has also been of value. In this study we propose an approach based on Bayesian logic as an effective tool to allow such a blend of field knowledge and SHM results. We show how the whole cognitive process followed by Branko can be suitably reproduced using Bayesian logic. In particular, we discuss to what extent the prior knowledge and potential evidence from inspection, can alter a perception of building behavior based on SHM data alone.
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