Pengembangan Aplikasi Berbasis Kecerdasan Buatan untuk Diagnostik Penyakit dan Optimalisasi Ekosistem Akuarium

Authors

DOI:

https://doi.org/10.30998/yb3rc731

Keywords:

Ornamental fish, Disease Diagnosis, Aquarium Ecosystem, Fishco, Artificial Intelligence

Abstract

Indonesia boasts a high diversity of ornamental fish species, both freshwater and marine, making it a significant commodity in the global market. However, the high mortality rate of ornamental fish due to a lack of knowledge about disease diagnosis and aquarium ecosystem management remains a major challenge. To address this issue, FishCo was developed as an AI-based application designed to assist ornamental fish owners, particularly beginners, in diagnosing diseases and managing aquarium ecosystems. FishCo offers features such as disease diagnosis using Convolutional Neural Network (CNN) technology, ecosystem setup recommendations tailored to specific fish species, and consultations via FishBot. The application is built as a cross-platform solution, with a backend powered by Laravel and a mobile application developed in Android Studio using the Java programming language. Testing has shown that FishCo can accurately identify diseases, provide appropriate recommendations, and receive positive feedback from users. This application is expected to enhance the success rate of ornamental fish care, reduce mortality rates, and contribute to the preservation of Indonesia’s aquatic biodiversity.

Downloads

Download data is not yet available.

References

Dini Nurul Azizah, Raisa Mutia Thahir, Luthfi Dika Chandra, Muhammad Naufal Ardhani, Aditya Wicaksono, & Mindara, G. P. (2025). Implementation of the Waterfall Method in the Lalungguh Ecoprint Website. JURNAL TEKNOLOGI DAN OPEN SOURCE, 8(1), 337–351. https://doi.org/10.36378/jtos.v8i1.4412

Fendjalang, S. N. M., Wattimena, M. L., & Pasanea, K. (2024). Pengenalan jenis ikan hias dan sistem budidaya kepada masyarakat di Negeri Latuhalat Kota Ambon. HIRONO: Jurnal Pengabdian Masyarakat, 4(1), 14.

Froese, R., & Pauly, D. (2022). Fishbase. Fishbase. https://www.scirp.org/reference/referencespapers?referenceid= 3523638

Hardika, B., Kurniawan, M. D., Adzka, M., Prastowiyono, D., Banyubasa, A., Wicaksono, A., & Nasir, M. (2024). Pengujian Blackbox Testing Website Garuda Farm Menggunakan Teknik Equivalence Partitioning. JURNAL KRIDATAMA SAINS DAN TEKNOLOGI, 6(02), 740–753. https://doi.org/10.53863/kst.v6i02.1420

Khoironi, F. E., & Saskara, I. A. N. (2017). Analisis Pengaruh Kurs Dollar, Inflasi, Dan Produksi Terhadap Ekspor Ikan Hias Di Provinsi Bali. 3.

Kusumah, R. V., Prasetio, A. B., Sinansari, S., & Solichah, L. (2017). Status Dan Potensi Bisnis Ikan Hias Indonesia.

Maulid, E., & Maulana, U. I. (2019). Sistem Pakar Diagnosa Penyakit Ikan Hias Menggunakan Metode Certainty Factor. SENTINEL, 2(2), 198–205. https://doi.org/10.56622/sentineljournal.v2i2.17

Nurlifa, A., Dewi, A. M., & Haryoko, A. (2023). Perancangan UI/UX Aplikasi Fishline Menggunakan Metode Design Thinking. 7(6).

Pratama, R. A., & Waluyo, A. F. (n.d.). Implementasi Sistem E-Commerce Berbasis Mobile Android Menggunakan Rest Api Dan Web Service Pada Perusahaan Percetakan. Journal of Information Technology and Computer Science.

Rahayu, Y., S., Saputra, Y., & Irawan, D. (2024). Implementasi metode waterfall pada pengembangan sistem informasi mobile e-Disarpus. ZONAsi: Jurnal Sistem Informasi, 6(2).

Samudra, B., H., & Umniati, N. (2023). Penerapan metode waterfall dalam membangun aplikasi untuk pengujian jalur dan bangunan prasarana kereta api. Jurnal Ilmiah Teknologi Dan Rekayasa, 28(1), 1–15.

Santoso, M. P., Kemala, S. A., & Wulan, R. (2021). Aplikasi Sistem Pakar Untuk Diagnosis Jenis Penyakit Pada Ikan Cupang Di Gubuk Cupang Hias. JRKT (Jurnal Rekayasa Komputasi Terapan), 1(3).

Wulandari, A., Andryana, S., & Gunaryati, A. (2019). Pengenalan ikan hias laut pada anak usia 3 tahun dengan metode marker-based tracking berbasis augmented reality. Jurnal Teknologi & Manajemen Informatika, 5(1).

Downloads

Published

2026-01-15

How to Cite

Harahap, Z. P. P., Irfan, M., Hakim, F., Andi, A. F., Wicaksono, A., Mindara, G. P., Novianty, I., Fathonah, L., & Purnama Giri, E. (2026). Pengembangan Aplikasi Berbasis Kecerdasan Buatan untuk Diagnostik Penyakit dan Optimalisasi Ekosistem Akuarium. Jurnal Riset Dan Aplikasi Mahasiswa Informatika (JRAMI), 7(01), 29-38. https://doi.org/10.30998/yb3rc731