Journal of Data Insights
Vol 4 No 1 (2026): Journal of Data Insights

A Hybrid Decision Support System for Rice Plant Disease Diagnosis and Treatment Recommendation Using Dempster-Shafer, AHP-TOPSIS, and Fuzzy SAW: Sistem Pendukung Keputusan Hibrida untuk Diagnosis Penyakit Tanaman Padi dan Rekomendasi Pengobatan Menggunakan Dempster-Shafer, AHP-TOPSIS, dan Fuzzy SAW

Hendik Dwi Nur Cahyono (Universitas Pertahanan)
Cahya Kusuma (Politeknik Angkatan Laut)
Maulana Muhammad Jogo Samodro (Universitas Safin Pati)
Hariyanto Hariyanto (Sekolah Tinggi Teknologi Ronggolawe)



Article Info

Publish Date
30 Jun 2026

Abstract

Rice diseases — blast (Magnaporthe oryzae), bacterial leaf blight (Xanthomonas oryzae pv. oryzae), and sheath blight (Rhizoctonia solani)—cause annual global yield losses of 10–100%, resulting in billions of U.S. dollars in economic damage. Smallholder farmers in remote regions often lack access to agronomy experts and face difficulties using image-based diagnostic systems on low-capacity devices. This study proposes and evaluates a hybrid three-module Decision Support System (DSS) framework based on non-image tabular data to address these challenges. The framework integrates: (1) Dempster–Shafer Theory for probabilistic disease diagnosis using 48 structured clinical symptom parameters from ESforRPD2; (2) a hybrid AHP–TOPSIS module with CRITIC-based objective weight verification for multicriteria treatment ranking; and (3) an adaptive Fuzzy SAW module employing dynamic weights based on crop growth stages derived from Paddy Doctor Metadata. Experimental results show that the Dempster–Shafer module achieved 88.9% accuracy, a macro F1-score of 0.877, and a macro AUC-ROC of 0.939, outperforming Certainty Factor (82.4%), Random Forest (85.7%), and XGBoost (86.1%). The AHP model produced a valid Consistency Ratio (CR = 0.030), while CRITIC analysis revealed substantial differences between expert-assigned and data-driven weights. The adaptive Fuzzy SAW module achieved 100% agreement with agronomy expert recommendations (Spearman’s rho = 0.941), surpassing static SAW (25%, rho = 0.487) and standalone TOPSIS (0%, rho = 0.412). The framework operates without image input and provides recommendations in under two seconds, making it suitable for low-capacity devices and remote agricultural environment

Copyrights © 2026






Journal Info

Abbrev

jodi

Publisher

Subject

Computer Science & IT Mathematics

Description

The Journal of Data Insights is an open access publication for peer-reviewed scholarly journals. The Journal of Data Insights focuses on the processing, analysis and interpretation of data for data-driven decisions and solutions in industry, hospitals, government and universities. All articles ...