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Uncertain spatial reasoning of environmental risks in GIS using genetic learning algorithms

机译:基于遗传学习算法的GIS环境风险的不确定空间推理

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摘要

Modeling the impact of air pollution is one of the most important approaches for managing damages to the ecosystem. This problem can be solved by sensing and modeling uncertain spatial behaviors, defining topological rules, and using inference and learning capabilities in a spatial reasoning system. Reasoning, which is the main component of such complex systems, requires that proper rules be defined through expert judgments in the knowledge-based part. Use of genetic fuzzy capabilities enables the algorithm to learn and be tuned to proper rules in a flexible manner and increases the preciseness and robustness of operations. The main objective of this paper was to design and evaluate a spatial genetic fuzzy system, with the goal of assessing environmental risks of air pollution due to oil well fires during the Persian Gulf War. Dynamic areas were extracted and monitored through images from NOAA, and the data were stored in an efficient spatial database. Initial spatial knowledge was determined by expert consideration of the application characteristics, and the inference engine was performed with genetic learning (GL) algorithms. Finally, GL (0.7 and 0.03), GL (0.7 and 0.08), GL (0.98 and 0.03), GL (0.98 and 0.08), and Cordon learning methods were evaluated with test and training data related to samples extracted from Landsat thematic mapper satellite images. Results of the implementation showed that GL (0.98, 0.03) was more precise than the other methods for learning and tuning rules in the concerned application.
机译:模拟空气污染的影响是管理对生态系统破坏的最重要方法之一。可以通过感测和建模不确定的空间行为,定义拓扑规则以及在空间推理系统中使用推理和学习功能来解决此问题。推理是这种复杂系统的主要组成部分,它要求通过基于知识的部分中的专家判断来定义适当的规则。遗传模糊功能的使用使算法能够灵活地学习和调整为适当的规则,并提高操作的准确性和鲁棒性。本文的主要目的是设计和评估空间遗传模糊系统,目的是评估波斯湾战争期间因油井大火而造成的空气污染的环境风险。通过NOAA的图像提取并监控动态区域,并将数据存储在有效的空间数据库中。最初的空间知识是由专家对应用程序特征的考虑决定的,并且推理引擎是通过遗传学习(GL)算法执行的。最后,对GL(0.7和0.03),GL(0.7和0.08),GL(0.98和0.03),GL(0.98和0.08)和Cordon学习方法进行了评估,并使用了与从Landsat专题制图卫星提取的样本相关的测试和训练数据图片。执行结果表明,GL(0.98,0.03)比有关应用程序中学习和调整规则的其他方法更为精确。

著录项

  • 来源
    《Environmental Monitoring and Assessment》 |2012年第10期|p.6307-6323|共17页
  • 作者

    Rouzbeh Shad; Arefeh Shad;

  • 作者单位

    Civil Department, Faculty of Engineering, Ferdowsi University, Mashad, Iran,Industrial Faculty, Amirkabir University of Technology, Tehran, Iran;

    Civil Department, Faculty of Engineering, Ferdowsi University, Mashad, Iran,Industrial Faculty, Amirkabir University of Technology, Tehran, Iran;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    genetic; fuzzy; learning; reasoning; GIS;

    机译:遗传模糊;学习;推理;地理信息系统;

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