An Analysis of Sea Level Spatial Variability by Topological Indicators and k-means Clustering Algorithm

Abstract

The time-series data of sea level rise and fall contains crucial information on the variability of sea level patterns. Traditional k-means clustering is commonly used for categorizing regional variability of sea level, however, its results are not robust against a number of factors. This study analyzed fourteen datasets of monthly sea level in fourteen shoreline regions of Peninsular Malaysia. We applied a hybridization of clustering technique to analyze data categorization and topological data analysis method to enhance the performance of our clustering analysis. Specifically, our approach utilized the persistent homology and k-means/k-means++ clustering. The fourteen data sets from fourteen tide gauge stations were categorized in classes based on a prior categorization that was determined by topological information, and the probability of data points that belong to certain groups that is yielded by k-means/k-means++ clustering. Our results demonstrated that our method significantly improves the performance of traditional clustering techniques.

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