ANALISIS CLUSTERING DAERAH PRODUKTIVITAS PADI DI KABUPATEN DELI SERDANG MENGGUNAKAN ALGORITMA ISOLATION FOREST
DOI:
https://doi.org/10.22373/jintech.v7i1.9617Keywords:
Padi, klastering, Isolation Forest, Deteksi anomali, Deli SerdangAbstract
Rice is a major food commodity that plays a vital role in national food security. However, differences in rice productivity levels between regions pose a challenge in formulating targeted agricultural policies. This study aims to analyze and cluster rice productivity areas in Deli Serdang Regency using the Isolation Forest algorithm. The data used are rice productivity data from all sub-districts in Deli Serdang Regency for the period 2020–2024, with variables of planted area, harvested area, production volume, and rice productivity. The analysis process is carried out through a web-based system using the Python programming language with the Streamlit framework. The Isolation Forest algorithm is used for clustering and anomaly detection, while cluster quality is evaluated using the Silhouette Score. The results of the 2024 data analysis show that 22 sub-districts in Deli Serdang Regency are divided into four clusters: a high-productivity cluster of 7 sub-districts (31.82%) with an average productivity above 6.2 tons/ha, a medium-productivity cluster of 4 sub-districts (18.18%) with a productivity of 6.0–6.1 tons/ha, a low-productivity cluster of 7 sub-districts (31.82%) with a productivity of around 5.9–6.0 tons/ha, and an anomalous cluster of 4 sub-districts (18.18%). The results of this clustering are expected to assist local governments in determining policies to increase rice productivity more effectively and based on data.
References
Badan Pusat Statistik Deli Serdang. (2022). Statistik daerah Kabupaten Deli Serdang 2022. BPS.
Barbariol, T., & Susto, G. A. (2021). TiWS-iForest: Isolation Forest in weakly supervised and Tiny ML scenarios. Information Sciences, 610. https://doi.org/10.1016/j.ins.2022.07.129
Chang, T.-T. (1985). The ethnobotany of rice in island Southeast Asia. Asian Perspectives, 26(1), 69–76.
Dewa, R., & Windarto, W. (2024). Deteksi anomali jaringan menggunakan Isolation Forest pada log Wazuh dengan pemberitahuan WhatsApp di PT XYZ. KRESNA: Jurnal Riset dan Pengabdian Masyarakat, 4(2), 208–216. https://doi.org/10.36080/kresna.v4i2.170
Food and Agriculture Organization. (2021). The state of food security and nutrition in the world 2021. Food and Agriculture Organization of the United Nations.
Harahap, L. M., Fuadi, W., Rosnita, L., Darnila, E., & Meiyanti, R. (2022). Klastering sayuran unggulan menggunakan algoritma K-Means. Jurnal Teknik Informatika dan Sistem Informasi, 8(3). https://doi.org/10.28932/jutisi.v8i3.5277
Kementerian Pertanian Republik Indonesia. (2023). Program intensifikasi pertanian 2023. Kementerian Pertanian RI.
Liu, F. T., Ting, K. M., & Zhou, Z. H. (2008). Isolation forest. Proceedings of the 2008 Eighth IEEE International Conference on Data Mining, 413–422.
Masdian, A. R., Bashit, N., & Hadi, F. (2023). Analisis Produktivitas Padi Menggunakan Algoritma Machine Learning Random Forest Di Kabupaten Batang Tahun 2018-2022. Elipsoida: Jurnal Geodesi dan Geomatika, 6(1), 43-51.
Nurdin, Bustami, Meiyanti, R., & Fahada, A. (2024). Clustering types of capture fisheries products using the K-Means clustering algorithm. Journal of Theoretical and Applied Information Technology, 15(17). www.jatit.org
Prasetyo, A., Wibowo, R., & Lestari, D. (2019). Clustering daerah produktivitas padi di Jawa Timur menggunakan algoritma K-Means. Jurnal Ilmu Komputer, 10(1), 23–34.
Prihatman, K. (2000). Budidaya Padi Pendayagunaan dan Pemasyarakatan Ilmu Pengetahuan dan Teknologi. Penebar Swadaya. Jakarta.
Sunarto, M., Kurniawan, D., Siswanto, E., & Huda, H. (2023). Deteksi anomali menggunakan Extended Isolation Forest (EIF). Teknik: Jurnal Ilmu Teknik dan Informatika, 1(2), 96–111. https://doi.org/10.51903/teknik.v1i2.324
Triana, O. (2024). Deteksi anomali jaringan menggunakan algoritma Isolation Forest. Jurnal Dunia Data, 1(5).
Wibawa, I., & Karyawati, A. (2023). Isolation Forest dengan exploratory data analysis pada anomaly detection untuk data transaksi. Jurnal Nasional Teknologi Informasi dan Aplikasinya, 1(3), 803–810. https://doi.org/10.24843/JNATIA.2023.v01.i03.p04
Wijayanto, A., Sugiharto, A., & Santoso, R. (2024). Identifikasi dini curah hujan berpotensi banjir menggunakan algoritma Long Short-Term Memory (LSTM) dan Isolation Forest. Jurnal Teknologi Informasi dan Ilmu Komputer, 11, 637–646. https://doi.org/10.25126/jtiik.938718
Zulfikar, A., Rahmani, F., & Azizah, N. (2023). Deteksi anomali menggunakan Isolation Forest belanja barang persediaan konsumsi pada Satuan Kerja Kepolisian Republik Indonesia. Jurnal Manajemen Perbendaharaan, 4(1), 1–15. https://doi.org/10.33105/jmp.v4i1.435
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