Implementasi Principal Component Analysis (PCA) pada K-Means untuk Klasterisasi Data Kelapa Sawit Berdasarkan Variabel Karakteristik Lingkungan
Implementation of Principal Component Analysis (PCA) in K-Means for Clustering Oil Palm Data Based on Environmental Characteristics Variables
Abstract
This research aims to cluster oil palm data based on environmental characteristics
using Principal Component Analysis (PCA) and the K-Means algorithm. PCA is
employed to reduce the dimensionality of environmental data into simpler principal
components. The reduced data is then used for clustering purposes with K-Means.
Standard mutations from non-yielding to yielding oil palms are relatively rare. In
other words, the development of these standards is still limited, and this study is
expected to provide additional insights into the management and development of
such standards. The research results indicate that the combination of PCA and KMeans
is effective in identifying significant clusters in oil palm data based on
environmental variables, which can offer valuable insights for more efficient oil
palm land management. This research contributes significantly to the field of data
analysis and environmental management in the agricultural sector.
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- Diploma Papers [144]