Expert System for Detecting Diseases of Potatoes of Granola Varieties Using Certainty Factor Method

B. Indriyono, Moch. Sjamsul Hidajat, Tri Esti Rahayuningtyas, Zudha Pratama, Iffah Irdinawati, Evita Citra Yustiqomah
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引用次数: 1

Abstract

The low productivity of potatoes is caused by many factors, including the very low quality of the seeds used, poor storage, climate, capital, limited farmer knowledge, and attacks by plant-disturbing organisms, especially diseases. Not only that, many farmers are still unfamiliar with the various diseases that can attack potato plants, or their knowledge about potato plant diseases is incomplete. This study aims to design and develop an expert system web-based application technology using the Certainty Factor (CF) method to detect potato disease symptoms. The CF method defines a measure of the capacity of a fact or provision to express the level of an expert's belief in a matter experienced by the concept of belief or trust and distrust or uncertainty contained in the certainty factor. The results showed that the CF method could function optimally in detecting potato plant diseases which can help farmers based on the symptoms that appear with an accuracy value of 94%.
确定因子法检测格兰诺拉燕麦品种马铃薯病害的专家系统
马铃薯的低产量是由许多因素造成的,包括使用的种子质量很低,储存不良,气候,资本,农民知识有限,以及植物干扰生物的攻击,特别是疾病。不仅如此,许多农民仍然不熟悉可以侵袭马铃薯植株的各种病害,或者他们对马铃薯植株病害的认识不完整。本研究旨在设计和开发一种基于web的专家系统应用技术,利用确定性因子(CF)方法检测马铃薯病害症状。CF方法定义了一种衡量事实或条款表达专家对某一问题的信念水平的能力,这种信念或信任的概念和确定性因素中包含的不信任或不确定性。结果表明,CF法能较好地检测马铃薯植物病害,根据出现的症状为农民提供帮助,准确率达94%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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