Implementation of Fuzzy Rule Based Expert System in Determining The Major Selection for The Student of Raksana Senior High School  
  Authors : Hartono; Tiarma Simanihuruk

 

High school students of Class X in Indonesia who were in the second half which will enter eleventh grade is often confusion when choosing majors whether to select majoring in science or social studies. Generally it can be done by seeing if students have higher grades in science studies of class X then majored in science and students who have a higher in social studies of class X majored IPS. Problems arise when there are students who have a value of science and social studies are equally good or when there are students with higher grades social studies wishing to enter science major or otherwise. It can be its own difficulties for the school. To help the school in this case is Raksana Senior High School that is in Medan City that has two departments namely majoring in science and social studies department, then the way to do is to use a rule-based expert system using fuzzy logic (Fuzzy Rule Based Expert System). Fuzzy logic was developed to provide functions and mathematical rules that allow input in the form of natural language. Input-used consisted of: the value of Mathematics, Indonesian, English, science subjects group value, and the value of social studies group of students at the time the student is studying in Class X Semester II, and then the system will provide the output of the possibility of the average value of the National Examination in Science Studies and the possibility of the average value of the National Examination in Social Studies.

 

Published In : IJCAT Journal Volume 2, Issue 11

Date of Publication : November 2015

Pages : 442 - 447

Figures :09

Tables : 01

Publication Link :Implementation of Fuzzy Rule Based Expert System in Determining The Major Selection for The Student of Raksana Senior High School

 

 

 

Hartono : received the Master degree in 2010 from the University of Putra Indonesia “YPTK” Padang, Indonesia in Computer Science and Bachelor Degree in 2008 from STMIK IBBI Medan, Indonesia in Computer Science. He is a lecturer at STMIK IBBI Medan. His current interests are in data mining and artificial intelligence. Nowadays, He Is a Student in a Doctoral Program in Computer Science at University of Sumatera Utara

Tiarma Simanihuruk : received the Master Degree in 2013 from the University of Sumatera Utara, Indonesia in Industrial Engineering, and Bachelor Degree in 2000 from Universitas Atma Jaya Yogyakarta, Indonesia in Industrial Engineering. She is an Analyst System in many company in Medan. Her current interests are in information system and software engineering.

 

 

 

 

 

 

 

Fuzzy Logic

Rule Based Expert System

Fuzzy Rule Based Expet System

The conclusion that can be drawn from this study are as follows. 1. Implementation of Fuzzy Rule Based Expert System can be used in Major Selection for the student of Raksana Senior High School. 2. For getting the better result, we can increase the number of rule that used in knowledge based of fuzzy logic.

 

 

 

 

 

 

 

 

 

[1] Negnevitsky. 2005. Artificial Intelligence A Guid to Intelligent System. Pearson Education Limited: London [2] Jang, Jhy Shing Roger, Sun, Chuen Tsai and Mizutani, Eiji. 1997. Neuro Fuzzy and Soft Computing. Prentice Hall: New Jersey [3] Boullart, A.M. 1992. An Introduction to Expert Systems, Intelligent Knowledge Base System. John Wiley: New York. [4] Keller, R. 1988. Expert System Technology Development and Application [5] Folorunso, I.O, O.C. Abikoye, R.G. Jimoh, K.S. Raji. 2012. A Rule-Based Expert System for Mineral Identification. Journal of Emerging Trends in Computing and Information Sciences3(2): 205-210 [6] M. Schneider, G. Langholz, A. Kandel, and G. Chew. 1996. Fuzzy Expert System Tools. John Wiley & Sons: USA [7] Meunier, Bernadette Bouchon, Dotoli, Mariagrazia, and Maione, Bruno. 2014. On the Choice of Membership Functions in A Mamdani-Type Fuzzy Controller. International Journal Politecnico Di Bari. [8] Vrusias, Bogdan L. 2006. Fuzzy Logic 3. Lecture Note University of Surrey [9] Han, Jiawei, Micheline Kamber and Jian Pei. 2012. Data Mining: Concepts and Techniques. Morgan Kaufmaan Publisher: USA [10] Saade, Jean J. And Diab, Hassan B. 2004. Defuzzification Methods and New Techniques for Fuzzy Controllers. Iranian Journal of Electrical and Computer Engineering3(2): pp. 161-174