Application Of Fuzzy Logic In The Measurement System Of Student Satisfaction Level Towards Lecturers Based On The Fuzzy Infrence Analysis Of The Mamdani, Sugeno And Tsukatomo Method System

  • Yuda Perwira STMIK Pelita Nusantara, Medan, Indonesia
  • Risa Kartika Lubis STMIK Pelita Nusantara
Keywords: Fuzzy Logic, Fuzzy Infrence System, Mamdani, Sugeno, Tsukamoto

Abstract

Service to students is an important aspect for the comfort of students at universities in undergoing study process, one of the services that need to be considered is student satisfaction with lecturers, especially in private universities, student satisfaction with lecturers is very influential because it can have an impact on the absorption of knowledge provided to achievement. for students, it is necessary for the right method to measure the level of student satisfaction with lecturers, the purpose of this study is to perform a comparative analysis of the fuzzy Inference system of the Mamdani, Sugeno, and Tsukamoto methods to be able to measure the level of student satisfaction with lecturers accurately and with the right method, The stages of this research method are data collection from STMIK Pelita Nusantara, data identification as the basis for fuzzification formation, fuzzy inference system process with Mamdani, Sugeno, and Tsukamoto methods, then analysis of the three t-methods is carried out. This is to select which method is the most accurate, then carry out system development and system implementation. The results obtained in this study are the Fuzzy Inference System has been successfully created and can be applied to this research, and from the comparison of the 3 methods, it is known for level measurement research. student satisfaction with lecturers, the best method is the Sugeno method, in addition to its high accuracy, determining the constants to be values that match the criteria for the assessment range and also the calculations are not so complicated.

Downloads

Download data is not yet available.

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] Apriani, W. . ., & Perwira, Y. (2021). Application of Fuzzy Infrence System Mamdani Method to Determine the Amount of Durian Pancake Production. Jurnal Mantik, 5(2), 1413-1423
[3] 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
[4] 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.
[5] Kusumadewi, Sri dan Purnomo Hari. (2010), “Aplikasi Logika Fuzzy”, Cetakan Pertama, Graham Ilmu, Yogyakarta
[6] 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
[7] 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.
[8] Sihaloho, T. P. (n.d.). Analisis Inferensi Fuzzy Tsukamoto dalam Menilai Tingkat Kepuasan Mahasiswa Terhadap Dosen. Departemen Teknologi Informasi Tesis Magister Universitas Sumatera Utara.
http://repositori.usu.ac.id/handle/123456789/22551
[9] 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.
[10] Sukandy, D. M., Basuki, A. T., & Puspasari, S. (2014). Penerapan Metode Fuzzy Mamdani Untuk Memprediksi Jumlah Produksi Minyak Sawit Berdasarkan Data Persediaan Dan Jumlah Permintaan (Studi Kasus Pt Perkebunan Mitra Ogan Baturaja).
[11] 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.
Published
2021-12-01
How to Cite
Perwira, Y., & Risa Kartika Lubis. (2021). Application Of Fuzzy Logic In The Measurement System Of Student Satisfaction Level Towards Lecturers Based On The Fuzzy Infrence Analysis Of The Mamdani, Sugeno And Tsukatomo Method System. INFOKUM, 10(1), 91-104. Retrieved from http://seaninstitute.org/infor/index.php/infokum/article/view/227