Expert system for diagnosis pests and diseases of the rice plant using forward chaining and certainty factor method

Erlina Agustina, I. Pratomo, A. Wibawa, Sri Rahayu
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引用次数: 23

Abstract

Pests and diseases are one of the main factors that affect the low level of rice plant productivity. The symptoms in the infected rice plant are sometimes difficult to identify because they often shows the similar signs or characteristics so that only the experts who can identity them correctly. The infected rice plant actually can be identified since the beginning stage of planting until harvest time. So by knowing the symptoms in the early stage of the rice plant growth some preventif actions then can be done. Identifying pests and diseases of rice plant needs skills, experiences, and knowledge and should be done fast and accurate because the pests and diseases of rice plant can spread quickly and attack at all area of agriculture land. Since the number of experts in the pests and diseases of rice plant is limited, especially in a remote area, expert system then can be a smart solution for replacing the extensionist to decide what kind of pests or diseases that have attacked the rice plant. This paper presents a design and implementation of an expert system based on web application for diagnozing pests and diseases of the rice plant so that support system then still can be performed to provide the farmers with a correct decision. The knowledge representation model in this study used production rule and forward chaining based on symptoms or characteristics from attacked rice plant. The certainty factors method was used to define the expert confidence level for each symptom. This expert system testing was done by 15 person of non-extensionist of agriculture and 20 person of agriculture extensionist for observing 12 sample of images of the infected rice plant. The testing result showed that the accuracy level of this system is 73,81%. Meaning that this expert system can help farmers determining the pests or diseases of rice plant.
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采用前链法和确定性因子法的水稻病虫害诊断专家系统
病虫害是影响水稻生产力低下的主要因素之一。受感染水稻植株的症状有时难以识别,因为它们往往表现出相似的迹象或特征,因此只有能够正确识别它们的专家。受感染的水稻植株实际上可以从种植开始阶段直到收获时被识别出来。因此,通过了解水稻生长早期的症状,可以采取一些预防措施。水稻病虫害的识别需要技术、经验和知识,而且由于水稻病虫害的传播速度快,可以在农业用地的所有区域进行攻击,因此需要快速准确地进行识别。由于水稻病虫害专家的数量有限,特别是在偏远地区,专家系统可以代替推广人员来确定哪些病虫害袭击了水稻植株,这是一个智能的解决方案。本文提出了一个基于web应用的水稻病虫害诊断专家系统的设计与实现,以便为农户提供正确的决策支持系统。本研究的知识表示模型采用生产规则和基于病稻症状或特征的正向链。采用确定性因子法确定每个症状的专家置信度。该专家系统测试由15名非农业推广人员和20名农业推广人员对12个受感染水稻植株的图像样本进行观察。测试结果表明,该系统的准确率为73.81%。这意味着这个专家系统可以帮助农民确定水稻的病虫害。
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