Diagnosis of Diseases in Rubber Stems Using the Dempster Shafer Method

Yudi Sukmono - Mulawarman University, Samarinda, Indonesia
Sinthya Ayu Pratiwi - Mulawarman University, Samarinda, Indonesia
Heliza Rahmania Hatta - Mulawarman University, Samarinda, Indonesia
Anindita Septiarini - Mulawarman University, Samarinda, Indonesia
Amin Padmo Azam Masa - Mulawarman University, Samarinda, Indonesia
Arini Wijayanti - University of California Santa Cruz, USA


Citation Format:



DOI: http://dx.doi.org/10.62527/joiv.8.4.3474

Abstract


Rubber (Hevea Brasiliensis) is a non-timber forest product originating from the Americas and is currently widely distributed worldwide, including in East Kalimantan, Indonesia. In their management in East Kalimantan, farmers often encounter diseases in rubber plants, especially diseases of the stems, which can cause plant death. This disease requires treatment, but if it is too severe, it can harm farmers economically and in production, so it is essential for farmers to recognize the symptoms of this disease early from changes in the rubber plant stems. This study aims to diagnose diseases of rubber stems using the Dempster Shafer method. Dempster Shafer is a relevant method for overcoming the uncertainty of symptoms and rules, enabling expert systems to generate conclusions with certainty. This method has advantages in solving various problems and simultaneously combining evidence (facts) from several sources. This research was conducted by analyzing a dataset of 80 data, covering 7 types of diseases and 27 different symptoms. The accuracy test results show that the research has an accuracy rate of 96.25%. The implications of this research are significant. It is hoped that it can significantly help rubber plantation farmers in East Kalimantan and also make a valuable contribution to agricultural and plantation extension agents in overcoming the challenges faced due to diseases in rubber plant stems. Thus, this research could increase the productivity and sustainability of the rubber plantation sector in this region.

Keywords


expert systems; dempster shafer method; rubber; stems

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References


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