Abstract
Abstract. Displacement monitoring is a critical control for risks associated with potentially sudden slope failures. Instrument measurements are, however,
obscured by the presence of scatter. Data filtering methods aim to reduce the scatter and therefore enhance the performance of early warning systems
(EWSs). The effectiveness of EWSs depends on the lag time between the onset of acceleration and its detection by the monitoring system such that a
timely warning is issued for the implementation of consequence mitigation strategies. This paper evaluates the performance of three filtering
methods (simple moving average, Gaussian-weighted moving average, and Savitzky–Golay) and considers their comparative advantages and
disadvantages. The evaluation utilized six levels of randomly generated scatter on synthetic data, as well as high-frequency global navigation
satellite system (GNSS) displacement measurements at the Ten-mile landslide in British Columbia, Canada. The simple moving average method exhibited
significant disadvantages compared to the Gaussian-weighted moving average and Savitzky–Golay approaches. This paper presents a framework to
evaluate the adequacy of different algorithms for minimizing monitoring data scatter.
Funder
Natural Sciences and Engineering Research Council of Canada
Subject
General Earth and Planetary Sciences
Reference69 articles.
1. Atzeni, C., Barla, M., Pieraccini, M., and Antolini, F.:
Early warning monitoring of natural and engineered slopes with ground-based synthetic-aperture radar,
Rock Mech. Rock Eng.,
48, 235–246, https://doi.org/10.1007/s00603-014-0554-4, 2015.
2. Benoit, L., Briole, P., Martin, O., and Thom, C.:
Real-time deformation monitoring by a wireless network of a low-cost GPS,
J. Appl. Geodesy,
8, 119–128, 2014.
3. Benoit, L., Briole, P., Martin, O., Thom, C., Malet, J. P., and Ulrich, P.:
Monitoring landslide displacements with the Geocube wireless network of low-cost GPS,
Eng. Geol.,
195, 111–121, 2015.
4. BGC Engineering Inc.: CN Lillooet Sub. M. 167.7 (Fountain Slide) September 2015 Drilling and Instrumentation,
Project report to Canadian National Railway, 2015.
5. BGC Engineering Inc.: CN Lillooet Sub. M. 167.7 (Ten Mile Slide) April 2016 Drilling and Instrumentation,
Project report to Canadian National Railway, 2016.
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