Penerapan Algoritma Genetika Dalam Efisiensi Persediaan Bahan Baku Mebel Di UD. Mebel Jati

  • Harminto Mulyo Unisnu Jepara
Keywords: GA, genetic algorithm, raw material efficiency

Abstract

Efficiency in determining the amount of inventory or raw material needs is an important issue for a company. Like other companies, furniture is also a company or industry that processes wood basic materials into household furniture such as cabinets, tables, chairs, and so on. The raw material for furniture is wood, and the availability of wood in the market is quite high and not always available. So furniture needs to be prepared by estimating the need for raw materials. With a good inventory system, furniture will get optimal profit. Genetic Algorithm is applied in optimizing the estimation of furniture raw materials to provide maximum profit by saving inventory costs. Genetic Algorithm used method of extended intermediate crossover, mutation, calculate the value of fitness and selection. In this study, there are 12 chromosomes which are furniture production data within a period of 12 months. The chromosome representation used is discrete decimal encoding. And each chromosome has genes 1-7 which is the product type. The optimal solution obtained from a population size of 100 populations, the combination of crossover and mutation is 1 and 1. With the highest fitness value of 45.00.

References

Asosiasi Mebel dan Kerajinan Indonesia (AMKRI). (2015). Roadmap Industri Mebel dan Kerajinan Indonesia “Target Pencapaian Ekspor 5 Milyar USD.”
Daud, M. N. (2017). Analisis Pengendalian Persediaan Bahan Baku Produksi Roti Wilton Kualasimpang. Jurnal Samudra Ekonomi dan Bisnis, 8(2), 760–774. https://doi.org/10.33059/jseb.v8i2.434
Haupt, R. L., & Haupt, S. E. (2003). Practical Genetic Algorithms. In Practical Genetic Algorithms (Second). John Wiley & Sons, Inc. https://doi.org/10.1002/0471671746
Mahmudy, W. F. (2013). Algoritma Evolusi. Malang: Universitas Barwijaya.
Munir, R., & Lidya, L. (2016). Algoritma dan Pemrograman Dalam Bahasa Pascal, C, dan C++ (Keenam). Penerbit Informatika.
Rachman, T. (2018). Penyelesaian Vehicle Routing Problem Menggunakan Metode Clarke and Wright Saving Heuristic. Seminar Nasional IENACO, 10–27.
Romy, M. R., Rengkung, M. M., & Makarau, V. H. (2015). Pengaruh Perkembangan Industri Mebel Terhadap Pola Pemanfaatan Lahan Di Desa Leilem Kecamatan Sonder. Spasial, 1(1), 1–10.
Sing’oei, L., & Wang, J. (2013). Data Mining Framework for Direct Marketing: A Case Study of Bank Marketing. IJCSI International Journal of Computer Science Issues, 10(2), 198–203. http://ijcsi.org/papers/IJCSI-10-2-2-198-203.pdf
Suyanto. (2011). Artificial Intelligence Searching Reasoning Planning and Learning. Informatika.
Trihudiyatmanto, M. (2017). Analisis Pengendalian Persediaan Bahan Baku Dengan Menggunakan Metode Economic Order Quantity ( Eoq ) (Studi Empiris Pada Cv. Jaya Gemilang Wonosobo). Jurnal Penelitian dan Pengabdian Kepada Masyarakat UNSIQ, 4(3), 220–234. https://doi.org/10.32699/ppkm.v4i3.427
Upessy, E. K. (2016). Desain Jembatan Kayu dengan Menggunakan Kayu Merbau di Kabupaten Sorong Provinsi Papua Barat. Skripsi Arsitektur UAJY, 6–7.
Wahono, R. S. (2015). Penerapan Algoritma Genetika untuk Optimasi Parameter pada Support Vector Machine untuk Meningkatkan Prediksi Pemasaran Langsung. Journal of Intelligent Systems, 1(2), 115–119.
Wintoro, P. B. (2016). Penerapan Algoritma Genetika Untuk Optimalisasi Jadwal Kuliah Di Stkip Muhammadiyah Kotabumi. Jurnal Informatika, 16(2), 200–214.
Published
2022-06-14
How to Cite
Mulyo, H. (2022). Penerapan Algoritma Genetika Dalam Efisiensi Persediaan Bahan Baku Mebel Di UD. Mebel Jati. Jurnal Rekognisi Akuntansi , 2(2), 155-165. https://doi.org/10.34001/jra.v2i2.249
Section
Articles