Expert System Based On Knowledge Extraction From A GIS

Ke Zhang
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引用次数: 7

Abstract

Expert systems (ES) have been shown to be useful in many areas of natural resource and environmental impact studies. However, the major obstacle in the development of expert system is difficult to extract expert’s knowledge into a knowledge base. An alternative approach that can overcome the obstacle is to extract domain knowledge from information system by machine learning. This study is the first experiment of knowledge extraction from geographic information system (KEGIS). Major effort in this study is to develop a landuse expert system with a knowledge base that is generated by learning from sample data of a geographic information system (GIS). In this study, 154 sample areas were selected from Wongnute County, Inner Mongolia, for knowledge base extraction. With the landuse knowledge base, an inference engine, and a user interface, a landuse expert system has been constructed for landuse consulting. In an accuracy test, The landuse expert system can provide 73% of correct siggestions. This result ;how& that the knowledge base created by KEGIS can closely represent the ’real world‘.
基于GIS知识抽取的专家系统
专家系统(ES)在自然资源和环境影响研究的许多领域已被证明是有用的。然而,专家系统开发的主要障碍是难以将专家知识提取到知识库中。克服这一障碍的另一种方法是通过机器学习从信息系统中提取领域知识。本研究是地理信息系统(KEGIS)知识提取的首次实验。本研究的主要工作是开发一个土地利用专家系统,该系统的知识库是通过从地理信息系统(GIS)的样本数据中学习而产生的。本研究选取内蒙古翁努特县154个样本区进行知识库提取。利用土地利用知识库、推理引擎和用户界面,构建了一个用于土地利用咨询的土地利用专家系统。在准确度测试中,土地利用专家系统提供了73%的正确率。这说明KEGIS所创建的知识库能够很好地反映“真实世界”。
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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