Sains Malaysiana 50(9)(2021): 2791-2817
http://doi.org/10.17576/jsm-2021-5009-24
Diversification of Agricultural
Areas in Indonesia using Dynamic Copula Modeling and K-Means Clustering
(Pempelbagaian Kawasan Pertanian di Indonesia menggunakan Pemodelan Copula Dinamik dan Pengelompokan K-Min)
ATINA
AHDIKA1*, MUJIATI DWI KARTIKASARI1, SEKTI KARTIKA DINI1 & INTAN RAMADHANI2,3
1Department of Statistics, Faculty of Mathematics
and Natural Sciences, Universitas Islam Indonesia,
Yogyakarta, Indonesia
2Alumnus of Department of Statistics, Faculty of
Mathematics and Natural Sciences, Universitas Islam
Indonesia, Yogyakarta, Indonesia
3PT Sigma Cipta Caraka (TelkomSigma), Tangerang, Indonesia
Diserahkan: 20 Julai 2020/Diterima: 15 Januari 2021
ABSTRACT
Agriculture
is one of the main pillars of economic growth in Indonesia. Failure in this
sector can result in faltering economic stability of the country. Thus, to
minimize these failures, mapping of areas with particular commodity potential
is needed. One of the main factors affecting the growth of crops is rainfall.
Therefore, this paper aims to model the potential distribution of commodity
growth based on rainfall precipitation using dynamic copula. The modeling
results are then used as a basis for grouping the potential of food crop
commodities in Indonesia. The determination of the group was carried out using
the k-means clustering method. We expect that the result of the modeling can
provide an overview for farmers or the government to make policies related to
the optimization of Indonesia's agricultural sector. This result will enable
the government to offer facilities that can minimize agricultural losses, such
as superior seeds that are resistant to weather changes and the provision of
training for enhancing farming skills. In addition, it is also suggested to
diversify farm areas to reduce the failures due to dependence on a single
agricultural product.
Keywords:
Agriculture; diversification; dynamic copula; k-means clustering
ABSTRAK
Pertanian adalah satu daripada tonggak utama yang mendorong ekonomi di Indonesia. Kegagalan dalam sektor ini boleh mengakibatkan kestabilan ekonomi di negara ini merosot. Oleh sebab itu, untuk mengurangkan kegagalan ini, diperlukan pemetaan kawasan dengan potensi komoditi tertentu. Satu daripada faktor utama yang mempengaruhi pertumbuhan tanaman adalah hujan. Oleh sebab itu, makalah ini bertujuan untuk memodelkan potensi penyebaran pertumbuhan komoditi berdasarkan curahan hujan menggunakan model copula dinamik. Hasil pemodelan kemudian digunakan sebagai dasar untuk mengelompokkan potensi komoditi tanaman makanan di Indonesia. Penentuan kelompok dilakukan dengan kaedah pengelompokan k-min. Penulis mengharapkan hasil pemodelan dapat memberikan gambaran umum kepada petani atau kerajaan untuk membuat polisi yang berkaitan dengan pengoptimuman sektor pertanian Indonesia. Kerajaan dapat menawarkan kemudahan yang dapat meminimumkan kerugian dalam pertanian, seperti benih unggul yang tahan terhadap perubahan cuaca dan pemberian latihan kepada petani untuk meningkatkan kemahiran mereka. Sebagai tambahan, dicadangkan juga supaya petani mempelbagaikan kawasan pertanian untuk mengurangkan kegagalan akibat kebergantungan pada satu produk pertanian sahaja.
Kata kunci: Copula dinamik; pempelbagaian; pengelompokan k-min; pertanian
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*Pengarang untuk surat-menyurat; email:
atina.a@uii.ac.id
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