Main Article Content

Wira Apriani
Yuda Perwira

Abstract

UMKM is one of the drivers of the economy in the village so that its existence is very important and important to pay attention to so that it can still produce and employ people in rural areas. and on the part of the owner who has not applied technology to their business, one of which is the production plan, at this time the production plan is only based on estimates, so it often happens that there is too much stock left or until the sales stock runs out. The purpose of this study was to make a determination system of production with fuzzy logic in the hope this system can help SMEs pancake durian determine the number of correct production in order to minimize inventory items left or run out of inventory. The data material used is the supply of and demand for visits supply demand from the lowest to the medium and the highest so that the range can be concluded and processed using the Mamdani fuzzy method so that the calculation of the amount of production can be determined precisely.

Downloads

Download data is not yet available.

Article Details

How to Cite
Apriani, W. . . and Perwira, Y. (2021) “Application of Fuzzy Infrence System Mamdani Method to Determine the Amount of Durian Pancake Production”, Jurnal Mantik, 5(2), pp. 1413-1423. Available at: https://iocscience.org/ejournal/index.php/mantik/article/view/1580 (Accessed: 10June2026).
References
[1] Agustin, a. H., gandhiadi, g. K., & oka, t. B. (2016). Penerapan metode fuzzy sugeno untuk menentukan harga jual sepeda motor bekas. E-jurnal matematika, 5(4), 176. Https://doi.org/10.24843/mtk.2016.v05.i04.p138
[2] Ayuningtias, l. P., irfan, m., & jumadi, j. (2017). Analisa perbandingan logic fuzzy metode tsukamoto, sugeno, dan mamdani (studi kasus : prediksi jumlah pendaftar mahasiswa baru fakultas sains dan teknologi universitas islam negeri sunan gunung djati bandung). Jurnal teknik informatika, 10(1).
https://doi.org/10.15408/jti.v10i1.5610
[3] Joshi, a. K., & kumar v. (2020). Fuzzy logic controller based dstatcom for voltage sag mitigation. International journal of technical research & science, 5(2020), 15-20.
[4] Haditama, i., slamet, c., & fauzy, d. (2016). Implementasi algoritma fisher-yates dan fuzzy tsukamoto dalam game kuis tebak nada sunda berbasis android. Jurnal online informatika, 1(1), 51-58.
[5] Ula, m. (2014). Implementasi logika fuzzy dalam optimasi jumlah pengadaan barang menggunakan metode tsukamoto (studi kasus: toko kain my text). Jurnal ecotipe (electronic, control, telecommunication, information, and power engineering), 1(2), 36-46.
[6] Kurniati, n. I., mubarok, h., & reinaldi, a. (2017). Rancang bangun sistem pakar diagnosa tingkat depresi pada mahasiswa tingkat akhir menggunakan metode fuzzy tsukamoto (studi kasus: universitas siliwangi). Jurnal online informatika, 2(1), 49-55.
[7] Perwira, y. (2019). Sistem pendukung keputusan penentuan paket wisata traveling pada pt. Tritura jaya travel menggunakan metode fuzzy tsukamoto. Jurnal mantik penusa, 3(2,des), 145-158. Retrieved from http://e-jurnal.pelitanusantara.ac.id/index.php/mantik/article/view/724.
[8] Rahakbauw, d. L. (2015). Penerapan logika fuzzy metode sugeno untuk menentukan jumlah produksi roti berdasarkan data persediaan dan jumlah permintaan. Barekeng: jurnal ilmu matematika dan terapan, 9(2), 121-134. Https://doi.org/10.30598/barekengvol9iss2pp121-134
[9] Santoso, t. B. (2018). Analisa komparasi metode mamdani, sugeno dan tsukamoto pada fuzzy inference sistem untuk pengurangan konsumsi energi listrik mesin cuci. Prosiding seminar nasional inovasi teknologi – snitek 2017, 208-216. Http://repositori.usu.ac.id/handle/123456789/22551
[10] Situmorang, e., & riandari, f. (2019). Decision support system for selection of the best doctors in sari mutiara hospital using fuzzy tsukamoto method. Jurnal teknik informatika c.i.t, 45-50.
[11] Sihaloho, t. P. (n.d.). Analisis inferensi fuzzy tsukamoto dalam menilai tingkat kepuasan mahasiswa terhadap dosen. Departemen teknologi informasi tesis magister universitas sumatera utara .