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Towards the Development of a Rule-Based Drought Early Warning Expert Systems Using Indigenous Knowledge

机译:利用土著知识开发基于规则的干旱预警专家系统

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Drought forecasting and prediction is a complicated process due to the complexity and scalability of the environmental parameters involved. Hence, it required a high level of expertise to predict. In this paper, we describe the research and development of a rule-based drought early warning expert systems (RB-DEWES) for forecasting drought using local indigenous knowledge obtained from domain experts. The system generates inference by using rule set and provides drought advisory information with attributed certainty factor (CF) based on the user's input. The system is believed to be the first expert system for drought forecasting to use local indigenous knowledge on drought. The architecture and components such as knowledge base, JESS inference engine and model base of the system and their functions are presented.
机译:由于涉及的环境参数的复杂性和可扩展性,干旱预报和预报是一个复杂的过程。因此,它需要高水平的专业知识才能进行预测。在本文中,我们描述了基于规则的干旱预警专家系统(RB-DEWES)的研究和开发,该系统使用从领域专家那里获得的本地本地知识来预测干旱。该系统通过使用规则集生成推论,并根据用户输入提供具有确定性因子(CF)的干旱咨询信息。该系统被认为是第一个使用当地土著干旱知识进行干旱预报的专家系统。介绍了系统的知识库,JESS推理引擎和模型库等体系结构和组件及其功能。

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