Optimisasi dalam Pengelompokan Zona Bahaya setelah Bencana Gempa
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Date
2022Author
Bangun, Monica Natalia Br
Advisor(s)
Darnius, Open
Sutarman
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Show full item recordAbstract
There are a large number of approaches to clustering problems, including opti-
mization - based methods involving mathematical programming models to develop
efficient and meaningful clustering schemes. Grouping is one of the data labeling
techniques. K-means clustering is a partition clustering algorithm that starts by
selecting k representative points as the initial centroid. Each point is then as-
signed to the nearest centroid based on the selected specific proximity measure.
This writing is focused on the grouping of hazard zones after optimizing the Sum
of Square Error (SSE) using the elbow method. This study consists of five steps,
namely (1) data collection, (2) calculating the value of Sum of Square Error (SSE)
and (3) optimization using the elbow method (4) Performing a K-mean clustering
algorithm on 8 variables, namely magnitude (SR), depth, death toll, non-death
victim, heavy damage to public facilities, light damage to public facilities, affected
areas and less affected areas.
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