Real Time Search Algorithm for Observation Outliers During Monitoring Engineering Constructions

IF 0.3 Q4 REMOTE SENSING Reports on Geodesy and Geoinformatics Pub Date : 2017-12-20 DOI:10.1515/rgg-2017-0019
D. Latos, Bogdan Kolanowski, W. Pachelski, R. Sołoducha
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Abstract

Abstract Real time monitoring of engineering structures in case of an emergency of disaster requires collection of a large amount of data to be processed by specific analytical techniques. A quick and accurate assessment of the state of the object is crucial for a probable rescue action. One of the more significant evaluation methods of large sets of data, either collected during a specified interval of time or permanently, is the time series analysis. In this paper presented is a search algorithm for those time series elements which deviate from their values expected during monitoring. Quick and proper detection of observations indicating anomalous behavior of the structure allows to take a variety of preventive actions. In the algorithm, the mathematical formulae used provide maximal sensitivity to detect even minimal changes in the object’s behavior. The sensitivity analyses were conducted for the algorithm of moving average as well as for the Douglas-Peucker algorithm used in generalization of linear objects in GIS. In addition to determining the size of deviations from the average it was used the so-called Hausdorff distance. The carried out simulation and verification of laboratory survey data showed that the approach provides sufficient sensitivity for automatic real time analysis of large amount of data obtained from different and various sensors (total stations, leveling, camera, radar).
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工程施工监测中观测异常点实时搜索算法
工程结构在灾害紧急情况下的实时监测需要收集大量的数据,并通过特定的分析技术进行处理。快速准确地评估物体的状态对于可能的救援行动至关重要。无论是在特定的时间间隔内收集的还是永久收集的大数据集,时间序列分析是比较重要的评估方法之一。本文提出了一种时间序列元素在监测过程中偏离期望值的搜索算法。快速和适当的检测表明结构的异常行为可以采取各种预防措施。在算法中,所使用的数学公式提供了最大的灵敏度,以检测物体行为的最小变化。对移动平均算法和用于GIS中线性对象泛化的Douglas-Peucker算法进行了敏感性分析。除了确定偏离平均值的大小外,还使用了所谓的豪斯多夫距离。对实验室测量数据的仿真验证表明,该方法对不同传感器(全站仪、水准仪、相机、雷达)获得的大量数据的自动实时分析具有足够的灵敏度。
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来源期刊
自引率
28.60%
发文量
5
审稿时长
12 weeks
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