首页> 外文OA文献 >Modelling spatial and temporal urban growth
【2h】

Modelling spatial and temporal urban growth

机译:模拟空间和时间的城市增长

摘要

Summary ududIn an effort to better understand the complexity inherent in the urban growth process, the aim of this research was to develop a theoretical framework and methodology that focused on: ud? 1. Analysing the complexity of the urban growth system and evaluating the current methods available for modelling this complexity; ud? 2. Monitoring the urban growth of a fast growing city (Wuhan) in a rapidly developing country (P.R.China), based on remotely sensed imagery, and evaluating its structural and functional changes by modelling; ud? 3. Developing and demonstrating a quantitative method for the comparative measurement of long-term temporal urban growth; ud? 4. Developing and demonstrating an interpretable method for urban growth pattern modelling; ud? 5. Developing and demonstrating a spatially and temporally explicit method for understanding the urban growth process. udFirst, urban growth is defined as a system resulting from the complex dynamic interactions between the developable, developed and planned systems. udSecond, with remotely sensed imagery (SPOT and aerial photographs) and secondary sources, this research presents a methodology for monitoring and evaluating structural and functional changes in the last five decades. udThird, this research presents an innovative method for the temporal measurement of longterm urban growth for the purpose of comparing urban sprawl. By using the concept of relative space, the temporal complexity can be transformed into spatial complexity, indicated by the complex spatial interactions between urban sprawl and urban social and economic systems. udFourth, this research presents a preliminary multi-scale perspective for understanding spatial patterns based on spatial hierarchical theory. The spatial hierarchies comprise planning, analysis and data, which are interrelated. Multi-scale in analysis hierarchy refers to the probability of change (macro), the density of change (meso) and the intensity of change (micro). ud Fifth, this research presents an innovative method for understanding spatial processes and their temporal dynamics on two interrelated scales (municipality and project), using a multi-stage framework and dynamic weighting concept. The multi-stage framework aims to model local spatial processes and global temporal dynamics by incorporating explicit decision-making processes. udFinally, this research has found that complexity theories such as hierarchy theory and selforganising theory are very helpful in conceptually and methodologically understanding the specific complexity of a complex system. Spatial and temporal modelling based on complexity methods such as cellular automata can improve the analytical functions of GIS with the aid of remotely sensed imagery. ud Summary ududIn an effort to better understand the complexity inherent in the urban growth process, the aim of this research was to develop a theoretical framework and methodology that focused on: ud? 1. Analysing the complexity of the urban growth system and evaluating the current methods available for modelling this complexity; ud? 2. Monitoring the urban growth of a fast growing city (Wuhan) in a rapidly developing country (P.R.China), based on remotely sensed imagery, and evaluating its structural and functional changes by modelling; ud? 3. Developing and demonstrating a quantitative method for the comparative measurement of long-term temporal urban growth; ud? 4. Developing and demonstrating an interpretable method for urban growth pattern modelling; ud? 5. Developing and demonstrating a spatially and temporally explicit method for understanding the urban growth process. udFirst, urban growth is defined as a system resulting from the complex dynamic interactions between the developable, developed and planned systems. udSecond, with remotely sensed imagery (SPOT and aerial photographs) and secondary sources, this research presents a methodology for monitoring and evaluating structural and functional changes in the last five decades. udThird, this research presents an innovative method for the temporal measurement of longterm urban growth for the purpose of comparing urban sprawl. By using the concept of relative space, the temporal complexity can be transformed into spatial complexity, indicated by the complex spatial interactions between urban sprawl and urban social and economic systems. udFourth, this research presents a preliminary multi-scale perspective for understanding spatial patterns based on spatial hierarchical theory. The spatial hierarchies comprise planning, analysis and data, which are interrelated. Multi-scale in analysis hierarchy refers to the probability of change (macro), the density of change (meso) and the intensity of change (micro). ud Fifth, this research presents an innovative method for understanding spatial processes and their temporal dynamics on two interrelated scales (municipality and project), using a multi-stage framework and dynamic weighting concept. The multi-stage framework aims to model local spatial processes and global temporal dynamics by incorporating explicit decision-making processes. udFinally, this research has found that complexity theories such as hierarchy theory and selforganising theory are very helpful in conceptually and methodologically understanding the specific complexity of a complex system. Spatial and temporal modelling based on complexity methods such as cellular automata can improve the analytical functions of GIS with the aid of remotely sensed imagery. ud Summary ududIn an effort to better understand the complexity inherent in the urban growth process, the aim of this research was to develop a theoretical framework and methodology that focused on: ud? 1. Analysing the complexity of the urban growth system and evaluating the current methods available for modelling this complexity; ud? 2. Monitoring the urban growth of a fast growing city (Wuhan) in a rapidly developing country (P.R.China), based on remotely sensed imagery, and evaluating its structural and functional changes by modelling; ud? 3. Developing and demonstrating a quantitative method for the comparative measurement of long-term temporal urban growth; ud? 4. Developing and demonstrating an interpretable method for urban growth pattern modelling; ud? 5. Developing and demonstrating a spatially and temporally explicit method for understanding the urban growth process. udFirst, urban growth is defined as a system resulting from the complex dynamic interactions between the developable, developed and planned systems. udSecond, with remotely sensed imagery (SPOT and aerial photographs) and secondary sources, this research presents a methodology for monitoring and evaluating structural and functional changes in the last five decades. udThird, this research presents an innovative method for the temporal measurement of longterm urban growth for the purpose of comparing urban sprawl. By using the concept of relative space, the temporal complexity can be transformed into spatial complexity, indicated by the complex spatial interactions between urban sprawl and urban social and economic systems. udFourth, this research presents a preliminary multi-scale perspective for understanding spatial patterns based on spatial hierarchical theory. The spatial hierarchies comprise planning, analysis and data, which are interrelated. Multi-scale in analysis hierarchy refers to the probability of change (macro), the density of change (meso) and the intensity of change (micro). ud Fifth, this research presents an innovative method for understanding spatial processes and their temporal dynamics on two interrelated scales (municipality and project), using a multi-stage framework and dynamic weighting concept. The multi-stage framework aims to model local spatial processes and global temporal dynamics by incorporating explicit decision-making processes. udFinally, this research has found that complexity theories such as hierarchy theory and selforganising theory are very helpful in conceptually and methodologically understanding the specific complexity of a complex system. Spatial and temporal modelling based on complexity methods such as cellular automata can improve the analytical functions of GIS with the aid of remotely sensed imagery. ud udududSummary ududIn an effort to better understand the complexity inherent in the urban growth process, the aim of this research was to develop a theoretical framework and methodology that focused on: ud? 1. Analysing the complexity of the urban growth system and evaluating the current methods available for modelling this complexity; ud? 2. Monitoring the urban growth of a fast growing city (Wuhan) in a rapidly developing country (P.R.China), based on remotely sensed imagery, and evaluating its structural and functional changes by modelling; ud? 3. Developing and demonstrating a quantitative method for the comparative measurement of long-term temporal urban growth; ud? 4. Developing and demonstrating an interpretable method for urban growth pattern modelling; ud? 5. Developing and demonstrating a spatially and temporally explicit method for understanding the urban growth process. udFirst, urban growth is defined as a system resulting from the complex dynamic interactions between the developable, developed and planned systems. udSecond, with remotely sensed imagery (SPOT and aerial photographs) and secondary sources, this research presents a methodology for monitoring and evaluating structural and functional changes in the last five decades. udThird, this research presents an innovative method for the temporal measurement of longterm urban growth for the purpose of comparing urban sprawl. By using the concept of relative space, the temporal complexity can be transformed into spatial complexity, indicated by the complex spatial interactions between urban sprawl and urban social and economic systems. udFourth, this research presents a preliminary multi-scale perspective for understanding spatial patterns based on spatial hierarchical theory. The spatial hierarchies comprise planning, analysis and data, which are interrelated. Multi-scale in analysis hierarchy refers to the probability of change (macro), the density of change (meso) and the intensity of change (micro). ud Fifth, this research presents an innovative method for understanding spatial processes and their temporal dynamics on two interrelated scales (municipality and project), using a multi-stage framework and dynamic weighting concept. The multi-stage framework aims to model local spatial processes and global temporal dynamics by incorporating explicit decision-making processes. udFinally, this research has found that complexity theories such as hierarchy theory and selforganising theory are very helpful in conceptually and methodologically understanding the specific complexity of a complex system. Spatial and temporal modelling based on complexity methods such as cellular automata can improve the analytical functions of GIS with the aid of remotely sensed imagery. ud In an effort to better understand the complexity inherent in the urban growth process, the aim of this research was to develop a theoretical framework and methodology that focused on: ud1. Analysing the complexity of the urban growth system and evaluating the current methods available for modelling this complexity; ud2. Monitoring the urban growth of a fast growing city (Wuhan) in a rapidly developing country (P.R.China), based on remotely sensed imagery, and evaluating its structural and functional changes by modelling; ud3. Developing and demonstrating a quantitative method for the comparative measurement of long-term temporal urban growth; ud4. Developing and demonstrating an interpretable method for urban growth pattern modelling; ud5. Developing and demonstrating a spatially and temporally explicit method for understanding the urban growth process. udFirst, urban growth is defined as a system resulting from the complex dynamic interactions between the developable, developed and planned systems. udSecond, with remotely sensed imagery (SPOT and aerial photographs) and secondary sources, this research presents a methodology for monitoring and evaluating structural and functional changes in the last five decades. udThird, this research presents an innovative method for the temporal measurement of longterm urban growth for the purpose of comparing urban sprawl. By using the concept of relative space, the temporal complexity can be transformed into spatial complexity, indicated by the complex spatial interactions between urban sprawl and urban social and economic systems. udFourth, this research presents a preliminary multi-scale perspective for understanding spatial patterns based on spatial hierarchical theory. The spatial hierarchies comprise planning, analysis and data, which are interrelated. Multi-scale in analysis hierarchy refers to the probability of change (macro), the density of change (meso) and the intensity of change (micro). ud Fifth, this research presents an innovative method for understanding spatial processes and their temporal dynamics on two interrelated scales (municipality and project), using a multi-stage framework and dynamic weighting concept. The multi-stage framework aims to model local spatial processes and global temporal dynamics by incorporating explicit decision-making processes. udFinally, this research has found that complexity theories such as hierarchy theory and selforganising theory are very helpful in conceptually and methodologically understanding the specific complexity of a complex system. Spatial and temporal modelling based on complexity methods such as cellular automata can improve the analytical functions of GIS with the aid of remotely sensed imagery.
机译:总结 ud ud为了更好地理解城市增长过程中固有的复杂性,本研究的目的是建立一个理论框架和方法论,重点在于: 1.分析城市增长系统的复杂性,并评估目前可用于对该复杂性进行建模的方法; ud? 2.根据遥感图像监测一个快速发展的国家(中国)的一个快速发展的城市(武汉)的城市发展,并通过建模评估其结构和功能的变化; ud? 3.开发和演示一种定量方法,用于比较长期的城市临时增长; ud? 4.开发和演示一种可解释的城市增长模式建模方法; ud? 5.开发和演示一种在空间和时间上明确的方法,以理解城市增长过程。 ud首先,城市增长被定义为一种系统,它是由可开发,已开发和计划中的系统之间复杂的动态交互作用产生的。第二,本研究利用遥感图像(SPOT和航拍照片)和辅助资源,提出了一种用于监视和评估过去五十年来结构和功能变化的方法。第三,本研究提出了一种创新的方法,用于对长期城市增长进行时间测量,目的是比较城市扩张。通过使用相对空间的概念,时间复杂性可以转化为空间复杂性,这由城市扩张与城市社会经济体系之间复杂的空间相互作用所表明。 ud第四,本研究提出了一种初步的多尺度视角,用于基于空间分层理论来理解空间模式。空间层次结构包括相互关联的规划,分析和数据。分析层次结构中的多尺度是指变化的概率(宏观),变化的密度(中观)和变化的强度(微观)。 ud第五,本研究提出了一种创新方法,该方法使用多阶段框架和动态加权概念在两个相互关联的尺度(市政和项目)上理解空间过程及其时间动态。多阶段框架旨在通过合并明确的决策过程来对局部空间过程和全局时间动力学建模。最后,这项研究发现,诸如层次结构理论和自组织理论之类的复杂性理论在概念和方法论上理解复杂系统的特定复杂性非常有帮助。基于复杂性方法(例如,细胞自动机)的时空建模可以借助遥感图像改善GIS的分析功能。 ud总结 ud ud为了更好地理解城市增长过程中固有的复杂性,本研究的目的是建立一个理论框架和方法论,重点在于: 1.分析城市增长系统的复杂性,并评估目前可用于对该复杂性进行建模的方法; ud? 2.根据遥感图像监测一个快速发展的国家(中国)的一个快速发展的城市(武汉)的城市发展,并通过建模评估其结构和功能的变化; ud? 3.开发和演示一种定量方法,用于比较长期的城市临时增长; ud? 4.开发和演示一种可解释的城市增长模式建模方法; ud? 5.开发和演示一种在空间和时间上明确的方法,以理解城市增长过程。 ud首先,城市增长被定义为一种系统,它是由可开发,已开发和计划中的系统之间复杂的动态交互作用产生的。第二,本研究利用遥感图像(SPOT和航拍照片)和辅助资源,提出了一种用于监视和评估过去五十年来结构和功能变化的方法。第三,本研究提出了一种创新的方法,用于对长期城市增长进行时间测量,目的是比较城市扩张。通过使用相对空间的概念,时间复杂性可以转化为空间复杂性,这由城市扩张与城市社会经济体系之间复杂的空间相互作用所表明。 ud第四,本研究提出了一种初步的多尺度视角,用于基于空间分层理论来理解空间模式。空间层次结构包括相互关联的规划,分析和数据。分析层次结构中的多尺度是指变化的概率(宏观),变化的密度(中观)和变化的强度(微观)。 ud第五,这项研究提出了一种创新的方法,用于在两个相互关联的尺度(市政和项目)上理解空间过程及其时间动态。,使用多阶段框架和动态加权概念。多阶段框架旨在通过合并明确的决策过程来对局部空间过程和全局时间动力学建模。最后,这项研究发现,诸如层次结构理论和自组织理论之类的复杂性理论在概念和方法论上理解复杂系统的特定复杂性非常有帮助。基于复杂性方法(例如,细胞自动机)的时空建模可以借助遥感图像改善GIS的分析功能。 ud总结 ud ud为了更好地理解城市增长过程中固有的复杂性,本研究的目的是建立一个理论框架和方法论,重点在于: 1.分析城市增长系统的复杂性,并评估目前可用于对该复杂性进行建模的方法; ud? 2.根据遥感图像监测一个快速发展的国家(中国)的一个快速发展的城市(武汉)的城市发展,并通过建模评估其结构和功能的变化; ud? 3.开发和演示一种定量方法,用于比较长期的城市临时增长; ud? 4.开发和演示一种可解释的城市增长模式建模方法; ud? 5.开发和演示一种在空间和时间上明确的方法,以理解城市增长过程。 ud首先,城市增长被定义为一种系统,它是由可开发,已开发和计划中的系统之间复杂的动态交互作用产生的。第二,本研究利用遥感图像(SPOT和航拍照片)和辅助资源,提出了一种用于监视和评估过去五十年来结构和功能变化的方法。第三,本研究提出了一种创新的方法,用于对长期城市增长进行时间测量,目的是比较城市扩张。通过使用相对空间的概念,时间复杂性可以转化为空间复杂性,这由城市扩张与城市社会经济体系之间复杂的空间相互作用所表明。 ud第四,本研究提出了一种初步的多尺度视角,用于基于空间分层理论来理解空间模式。空间层次结构包括相互关联的规划,分析和数据。分析层次结构中的多尺度是指变化的概率(宏观),变化的密度(中观)和变化的强度(微观)。 ud第五,本研究提出了一种创新方法,该方法使用多阶段框架和动态加权概念在两个相互关联的尺度(市政和项目)上理解空间过程及其时间动态。多阶段框架旨在通过合并明确的决策过程来对局部空间过程和全局时间动力学建模。最后,这项研究发现,诸如层次结构理论和自组织理论之类的复杂性理论在概念和方法论上理解复杂系统的特定复杂性非常有帮助。基于复杂性方法(例如,细胞自动机)的时空建模可以借助遥感图像改善GIS的分析功能。 ud ud ud ud摘要 ud ud为了更好地理解城市增长过程中固有的复杂性,本研究的目的是建立一个理论框架和方法论,重点在于: 1.分析城市增长系统的复杂性,并评估目前可用于对该复杂性进行建模的方法; ud? 2.根据遥感图像监测一个快速发展的国家(中国)的一个快速发展的城市(武汉)的城市发展,并通过建模评估其结构和功能的变化; ud? 3.开发和演示一种定量方法,用于比较长期的城市临时增长; ud? 4.开发和演示一种可解释的城市增长模式建模方法; ud? 5.开发和演示一种在空间和时间上明确的方法,以理解城市增长过程。 ud首先,城市增长被定义为一种系统,它是由可开发,已开发和计划中的系统之间复杂的动态交互作用产生的。第二,本研究利用遥感图像(SPOT和航拍照片)和辅助资源,提出了一种用于监视和评估过去五十年来结构和功能变化的方法。第三,本研究提出了一种创新的方法,用于对长期城市增长进行时间测量,目的是比较城市扩张。通过使用相对空间的概念,可以将时间复杂度转换为空间复杂度由城市扩张与城市社会和经济系统之间复杂的空间相互作用所表明。 ud第四,本研究提出了一种初步的多尺度视角,用于基于空间分层理论来理解空间模式。空间层次结构包括相互关联的规划,分析和数据。分析层次结构中的多尺度是指变化的概率(宏观),变化的密度(中观)和变化的强度(微观)。 ud第五,本研究提出了一种创新方法,该方法使用多阶段框架和动态加权概念在两个相互关联的尺度(市政和项目)上理解空间过程及其时间动态。多阶段框架旨在通过合并明确的决策过程来对局部空间过程和全局时间动力学建模。最后,这项研究发现,诸如层次结构理论和自组织理论之类的复杂性理论在概念和方法论上理解复杂系统的特定复杂性非常有帮助。基于复杂性方法(例如,细胞自动机)的时空建模可以借助遥感图像改善GIS的分析功能。 ud为了更好地理解城市增长过程中固有的复杂性,本研究的目的是开发一个专注于以下方面的理论框架和方法: ud1。分析城市增长系统的复杂性,并评估可用于对该复杂性进行建模的当前方法; ud2。根据遥感影像监测一个快速发展的国家(中国)的一个快速发展的城市(武汉)的城市发展情况,并通过建模评估其结构和功能的变化; ud3。开发和演示一种定量方法,用于比较长期的城市时间增长; ud4。开发和演示一种可解释的城市增长模式建模方法; ud5。开发和演示一种用于理解城市增长过程的时空明确方法。 ud首先,城市增长被定义为一种系统,它是由可开发,已开发和计划中的系统之间复杂的动态交互作用产生的。第二,本研究利用遥感图像(SPOT和航拍照片)和辅助资源,提出了一种用于监视和评估过去五十年来结构和功能变化的方法。第三,本研究提出了一种创新的方法,用于对长期城市增长进行时间测量,目的是比较城市扩张。通过使用相对空间的概念,时间复杂性可以转化为空间复杂性,这由城市扩张与城市社会经济体系之间复杂的空间相互作用所表明。 ud第四,本研究提出了一种初步的多尺度视角,用于基于空间分层理论来理解空间模式。空间层次结构包括相互关联的规划,分析和数据。分析层次结构中的多尺度是指变化的概率(宏观),变化的密度(中观)和变化的强度(微观)。 ud第五,本研究提出了一种创新方法,该方法使用多阶段框架和动态加权概念在两个相互关联的尺度(市政和项目)上理解空间过程及其时间动态。多阶段框架旨在通过合并明确的决策过程来对局部空间过程和全局时间动力学建模。最后,这项研究发现,诸如层次结构理论和自组织理论之类的复杂性理论在概念和方法论上理解复杂系统的特定复杂性非常有帮助。基于复杂性方法(例如,细胞自动机)的时空建模可以借助遥感图像改善GIS的分析功能。

著录项

  • 作者

    Cheng J. (Jianquan);

  • 作者单位
  • 年度 2003
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类

相似文献

  • 外文文献
  • 中文文献
  • 专利

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