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Rock-slope Activity Index (RAI): a lidar-derived process-based rock-slope assessment system

机译:岩坡活动指数(RAI):基于激光雷达的基于过程的岩坡评估系统

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摘要

Inventory of unstable highway slopes is an immense challenge for Departments of Transportation (DOTs) due to the geographic dispersion of problematic slopes as well as the variable nature and speed of erosional processes. Due to advancements in lidar technology, acquisition of high resolution spatial data to map and monitor these slopes is becoming simpler, less expensive, and more widely available. Further, the collected data can be used for wide array of applications in addition to the slope inventory, enabling new discoveries for a variety of applications. However, several challenges remain in using lidar for slope assessment. One key problem is the amount of data collected requires significant data processing, a steep learning curve, and can be labor and computationally intensive. To reduce this bottleneck an automated classification system for characterizing rock slopes and calculating their likelihood of failure from lidar data has been developed. This algorithm quickly extracts morphological indices and evaluates them to determine the likelihood of failure throughout the entire face of each rock outcrop. To test this algorithm, a series of terrestrial lidar scans have been completed for several road cuts located adjacent to the Glenn and Parks Highways in Alaska over a three year period. Areas screened as highly unstable are being compared to erosion estimates obtained from the time series lidar data for validation. DOTs can then use this method directly with traffic information for risk assessment, improving safety and enabling them to efficiently determine how to allocate limited resources for road and slope improvements.
机译:由于问题斜坡的地理分布以及侵蚀过程的可变性质和速度,不稳定的公路斜坡的清单对于交通运输部(DOT)来说是一项巨大的挑战。由于激光雷达技术的进步,获取高分辨率的空间数据以映射和监视这些斜率正变得更加简单,便宜,并且可广泛使用。此外,除了坡度清单外,收集的数据还可以用于广泛的应用程序中,从而为各种应用程序带来新发现。但是,在使用激光雷达进行坡度评估时仍然存在一些挑战。一个关键问题是收集的数据量需要大量的数据处理,陡峭的学习曲线,并且可能需要大量人力和计算量。为了减少这一瓶颈,已经开发了一种自动分类系统,用于表征岩石坡度并根据激光雷达数据计算其失效可能性。该算法可快速提取形态学指标并对其进行评估,以确定在每个岩石露头整个面上破坏的可能性。为了测试该算法,在三年的时间内,完成了对阿拉斯加Glenn和Parks Highways附近的几条道路切割的一系列地面激光雷达扫描。将筛选为高度不稳定的区域与从时间序列激光雷达数据获得的侵蚀估计值进行比较,以进行验证。然后,DOT可以将这种方法与交通信息直接用于风险评估,从而提高安全性,并使他们能够有效地确定如何分配有限的资源来改善道路和斜坡。

著录项

  • 作者

    Dunham, Lisa Ann.;

  • 作者单位

    University of Washington.;

  • 授予单位 University of Washington.;
  • 学科 Civil engineering.;Geomorphology.;Geological engineering.
  • 学位 Masters
  • 年度 2015
  • 页码 160 p.
  • 总页数 160
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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