...
首页> 外文期刊>International Journal of Environmental Science and Technology >Identification of air pollution patterns using a modified fuzzy co-occurrence pattern mining method
【24h】

Identification of air pollution patterns using a modified fuzzy co-occurrence pattern mining method

机译:改进的模糊共现模式挖掘方法识别空气污染模式

获取原文
获取原文并翻译 | 示例
           

摘要

Spatio-temporal co-occurrence patterns represent subsets of object types which are located together in both space and time. Discovering spatio-temporal co-occurrence patterns is an important task having many application domains. There are a number of developed methods to mine co-occurrence patterns; however, using them needs a unique parameter to define the neighborhood. Identification of a unique optimum k-value or neighborhood radius is a challenging issue in different application domains. The developed method of this research defines a new fuzzy neighborhood and new fuzzy metrics to be applicable for real applications such as air pollution, especially when the researchers have no comprehensive knowledge regarding the application domain; in addition, it mines patterns based on the fuzzy nature of environmental phenomena. The new method mines patterns locally without localization step to speed up the mining process and considers all feature types (point, line and polygon) to handle all applications. Subsequently, it is applied to a real data set of Tehran city for air pollution to discover significant co-occurrence patterns of air pollution and influencing environmental parameters such as meteorological, topography and traffic. The case study results showed seven meaningful patterns among air pollution classes 2 and 3 and wind speed class 1, topography class 1 and traffic classes 1 and 2. The evaluation confirmed the accuracy and applicability of the new developed method for air pollution case. Furthermore, two performance tests for the method itself and a performance test against a crisp method were done, where the results exhibited an efficient computational performance.
机译:时空共现模式表示对象类型的子集,它们在空间和时间上都位于同一位置。发现时空共生模式是具有许多应用程序域的重要任务。有很多发达的方法可以挖掘共现模式。但是,使用它们需要一个唯一的参数来定义邻域。在不同的应用领域中,唯一的最佳k值或邻域半径的​​确定是一个具有挑战性的问题。这项研究的发展方法定义了一种新的模糊邻域和新的模糊度量,适用于诸如空气污染的实际应用,尤其是当研究人员对应用领域没有全面的了解时;此外,它基于环境现象的模糊性质来挖掘模式。新方法无需局部化即可在本地进行模式挖掘,以加快挖掘过程,并考虑所有要素类型(点,线和面)来处理所有应用程序。随后,将其应用到德黑兰市的真实空气污染数据集,以发现空气污染的重大共现模式,并影响诸如气象,地形和交​​通等环境参数。案例研究结果表明,在空气污染2级和3级,风速1级,地形1级和交通1级和2级之间有7种有意义的模式。评估结果证实了新开发的空气污染案例方法的准确性和适用性。此外,还对该方法本身进行了两次性能测试,并针对脆性方法进行了性能测试,结果显示出有效的计算性能。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号