JURNAL ILMIAH INFORMATIKA
Vol 10 No 01 (2022): Jurnal Ilmiah Informatika (JIF)

SISTEM DIAGNOSA PENYAKIT IKAN MENGGUNAKAN METODE CASE BASED REASONING DENGAN ALGORITMA SIMILARITAS SORGENFREI DAN K-NEAREST NEIGHBOR

Gilang Fadhillah Ramadhan (Universitas Stikubank)
Edy Winarno (Universitas Stikubank)



Article Info

Publish Date
01 Mar 2022

Abstract

The increasing interest in betta fish lately has triggered many people to cultivate betta fish, and the prospects for the future are quite promising every year because they always increase profits. But behind that, betta fish care is not easy because betta fish are animals that are susceptible to disease. To improve the quality of Betta fish and reduce mortality due to disease, experienced fishery experts are needed. Many cultivators are still confused in dealing with betta fish that are attacked by diseases, for that a system was created that can help betta fish farmers recognize betta fish diseases by creating an expert system. The method used is Case-Based Reasoning using the similarity algorithm Sorgenfrei and coupled with K-Nearest Neighbor. This second method and algorithm can be used to diagnose the disease from the symptoms in the database. Based on the research that has been carried out, the results of consultation by the user by selecting some of the symptoms experienced produce a similarity value of 0.8695 and the system will provide a solution according to the disease.

Copyrights © 2022






Journal Info

Abbrev

jif

Publisher

Subject

Computer Science & IT

Description

Jurnal Teknologi Informatika dan Sistem Informasi Fakultas Teknik dan Komputer UPB, telah menerbitkan publikasi ilmiah dengan topik yang mencakup tentang Information System, Geographical Information System, Remote Sensing, Cryptography,artificial intelligence, Computer Network, Security dan ...