Abstract

Abstract. Sandy coasts are constantly changing environments governed by complex, interacting processes. Permanent laser scanning is a promising technique to monitor such coastal areas and to support analysis of geomorphological deformation processes. This novel technique delivers 3-D representations of the coast at hourly temporal and centimetre spatial resolution and allows us to observe small-scale changes in elevation over extended periods of time. These observations have the potential to improve understanding and modelling of coastal deformation processes. However, to be of use to coastal researchers and coastal management, an efficient way to find and extract deformation processes from the large spatiotemporal data set is needed. To enable automated data mining, we extract time series of surface elevation and use unsupervised learning algorithms to derive a partitioning of the observed area according to change patterns. We compare three well-known clustering algorithms (k-means clustering, agglomerative clustering and density-based spatial clustering of applications with noise; DBSCAN), apply them on the set of time series and identify areas that undergo similar evolution during 1 month. We test if these algorithms fulfil our criteria for suitable clustering on our exemplary data set. The three clustering methods are applied to time series over 30 d extracted from a data set of daily scans covering about 2 km of coast in Kijkduin, the Netherlands. A small section of the beach, where a pile of sand was accumulated by a bulldozer, is used to evaluate the performance of the algorithms against a ground truth. The k-means algorithm and agglomerative clustering deliver similar clusters, and both allow us to identify a fixed number of dominant deformation processes in sandy coastal areas, such as sand accumulation by a bulldozer or erosion in the intertidal area. The level of detail found with these algorithms depends on the choice of the number of clusters k. The DBSCAN algorithm finds clusters for only about 44 % of the area and turns out to be more suitable for the detection of outliers, caused, for example, by temporary objects on the beach. Our study provides a methodology to efficiently mine a spatiotemporal data set for predominant deformation patterns with the associated regions where they occur.

Highlights

  • Coasts are constantly changing environments that are essential to the protection of the hinterland from the effects of climate change and, at the same time, belong to the areas that are most affected by it

  • For the k-means algorithm and agglomerative clustering, we consider two different values (k = 6 and k = 10), which are exemplary for a smaller number of clusters and a higher number of clusters

  • We compared three different clustering algorithms (k-means clustering, agglomerative clustering and density-based spatial clustering of applications with noise (DBSCAN)) on a subset of a large time series data set from permanent laser scanning on a sandy urban beach

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Summary

Introduction

Coasts are constantly changing environments that are essential to the protection of the hinterland from the effects of climate change and, at the same time, belong to the areas that are most affected by it. Long-term and smallscale processes prove difficult to monitor but can have large impacts (Aarninkhof et al, 2019). To improve coastal monitoring and knowledge of coastal deformation processes, a new technique called permanent laser scanning (PLS) ( called continuous laser scanning) based on light detection and ranging (lidar) measurements is available. For this purpose, a laser scanner is mounted on a high building close to the coast in a fixed location acquiring a 3-D scan every hour during several months up to years. The high temporal resolution and long duration of data acquisition in combination with high spatial resolution

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