An agglomerative hierarchical clustering with various distance measurements for ground level ozone clustering in Putrajaya, Malaysia

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Abstract

Ground level ozone is one of the common pollution issues that has a negative influence on human health. The key characteristic behind ozone level analysis lies on the complex representation of such data which can be shown by time series. Clustering is one of the common techniques that have been used for time series metrological and environmental data. The way that clustering technique groups the similar sequences relies on a distance or similarity criteria. Several distance measures have been integrated with various types of clustering techniques. However, identifying an appropriate distance measure for a particular field is a challenging task. Since the hierarchical clustering has been considered as the state of the art for metrological and climate change data, this paper proposes an agglomerative hierarchical clustering for ozone level analysis in Putrajaya, Malaysia using three distance measures i.e. Euclidean, Minkowski and Dynamic Time Warping. Results shows that Dynamic Time Warping has outperformed the other two distance measures.

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APA

Sammour, M., & Othman, Z. (2016). An agglomerative hierarchical clustering with various distance measurements for ground level ozone clustering in Putrajaya, Malaysia. International Journal on Advanced Science, Engineering and Information Technology, 6(6), 1127–1133. https://doi.org/10.18517/ijaseit.6.6.1482

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