{"title":"多光谱图像分析和污染物迁移建模","authors":"N. Becker, S. Brumby, N. David, J. Irvine","doi":"10.1109/AIPR.2002.1182257","DOIUrl":null,"url":null,"abstract":"A significant concern in the monitoring of hazardous waste is the potential for contaminants to migrate into locations where their presence poses greater environmental risks. The transport modeling performed in this study demonstrates the joint use of remotely sensed multispectral imagery and mathematical modeling to assess the surface migration of contaminants. KINEROS, an event-driven model of surface runoff and sediment transport, was used to assess uranium transport for various rain events. The model inputs include parameters related to the size and slope of watershed components, vegetation, and soil conditions. One distinct set of model inputs was derived from remotely sensed imagery data and another from site-specific knowledge. To derive the parameters of the KINEROS model from remotely sensed data, classification analysis was performed on IKONOS four-band multispectral imagery of the watershed. A system known as GENIE, developed by Los Alamos National Laboratory, employs genetic algorithms to evolve classifiers based on small, user-selected training samples. The classification analysis derived by employing GENIE provided insight into the correct KINEROS parameters for various sub-elements of the watershed. The model results offer valuable information about portions of the watershed that contributed the most to contaminant transport. These methods are applicable to numerous sites where possible transport of waste materials poses an environmental risk. Because the approach rests on the analysis of remote sensing data, the techniques can be used to monitor inaccessible waste sites, as well as reduce the amount of data that would need to be collected for model calibration.","PeriodicalId":379110,"journal":{"name":"Applied Imagery Pattern Recognition Workshop, 2002. Proceedings.","volume":"111 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2002-10-16","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Analysis of multispectral imagery and modeling contaminant transport\",\"authors\":\"N. Becker, S. Brumby, N. David, J. Irvine\",\"doi\":\"10.1109/AIPR.2002.1182257\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"A significant concern in the monitoring of hazardous waste is the potential for contaminants to migrate into locations where their presence poses greater environmental risks. 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引用次数: 0
摘要
监测危险废物的一个重大问题是污染物可能迁移到它们的存在造成更大环境风险的地方。本研究中进行的传输模型展示了遥感多光谱图像和数学模型的联合使用,以评估污染物的地表迁移。KINEROS是一个事件驱动的地表径流和沉积物运输模型,用于评估各种降雨事件的铀运输。模型输入包括与流域成分、植被和土壤条件的大小和坡度相关的参数。一组不同的模型输入来自遥感图像数据,另一组来自特定地点的知识。为了从遥感数据中得到KINEROS模型的参数,对流域的IKONOS四波段多光谱图像进行分类分析。洛斯阿拉莫斯国家实验室(Los Alamos National Laboratory)开发了一个名为GENIE的系统,该系统采用遗传算法,根据用户选择的小型训练样本来进化分类器。使用GENIE进行的分类分析提供了对流域各种子元素的KINEROS参数的正确见解。模型结果提供了有关对污染物迁移贡献最大的流域部分的宝贵信息。这些方法适用于可能造成环境风险的废物运输的许多地点。由于这种方法依赖于对遥感数据的分析,这些技术可用于监测无法进入的废物场址,并减少为模型校准而需要收集的数据量。
Analysis of multispectral imagery and modeling contaminant transport
A significant concern in the monitoring of hazardous waste is the potential for contaminants to migrate into locations where their presence poses greater environmental risks. The transport modeling performed in this study demonstrates the joint use of remotely sensed multispectral imagery and mathematical modeling to assess the surface migration of contaminants. KINEROS, an event-driven model of surface runoff and sediment transport, was used to assess uranium transport for various rain events. The model inputs include parameters related to the size and slope of watershed components, vegetation, and soil conditions. One distinct set of model inputs was derived from remotely sensed imagery data and another from site-specific knowledge. To derive the parameters of the KINEROS model from remotely sensed data, classification analysis was performed on IKONOS four-band multispectral imagery of the watershed. A system known as GENIE, developed by Los Alamos National Laboratory, employs genetic algorithms to evolve classifiers based on small, user-selected training samples. The classification analysis derived by employing GENIE provided insight into the correct KINEROS parameters for various sub-elements of the watershed. The model results offer valuable information about portions of the watershed that contributed the most to contaminant transport. These methods are applicable to numerous sites where possible transport of waste materials poses an environmental risk. Because the approach rests on the analysis of remote sensing data, the techniques can be used to monitor inaccessible waste sites, as well as reduce the amount of data that would need to be collected for model calibration.