首页|面向虚拟地理环境构建的地理分析模型集成应用方法进展

面向虚拟地理环境构建的地理分析模型集成应用方法进展

扫码查看
地理分析模型作为求解地理问题、模拟地理环境、支撑决策分析的重要资源,在虚拟地理环境(或数字孪生地理环境)的构建中发挥着重要作用.集成多领域具备不同模拟能力的地理分析模型,能够更加全面的表达现实地理环境,支撑构建可视、可用、可分析、可交互的虚拟地理环境.针对地理分析模型的集成应用方法,本文系统性梳理了当前的研究进展,从地理分析模型的演进特征、支撑虚拟地理环境构建的途径、多模型的集成方法和地理信息服务的相关支撑技术等方面进行了综述.总结发现,通过多模型集成来解决复杂地理问题已经成为广泛认可的研究途径,自然—人文相结合、融合大数据与深度学习的集成建模也越来越受到关注.然而,现有模型集成方法仍然面临个案化的局限,在处理异构模型的兼容性方面难以形成持续可复用的集成成果,导致模型集成容易陷入到重复的技术改造工作中.借鉴信息服务领域的容器化理念,本文提出了"地理分析模型容器"的思路并进行了方法实现.通过设计柔性装配结构的信息交互通道和事件响应机制的功能计算通道,构建了能够持续积累和提升模型集成复用能力的容器,并基于此种模型容器来进行配置式的模型集成应用.
Progresses in integrated application methods of geographic analysis models for virtual geographic environment construction
Geographic analysis models serve as crucial resources for tackling geo-problems,simulating geographic environments,and supporting decision-making analysis.They play a key role in constructing virtual geographic environments(also known as digital twin geographic environments).Integrating geographic analysis models with diverse simulation capabilities from various fields enables a comprehensive representation of real geographical environments.This integration supports the development of visual,usable,analyzable,and interactive virtual geographic environments.This study systematically examines the current research progress in the integration methods of geographic analysis models.In general,integrating physical and social processes and merging big data with deep learning have gained increased attention in recent years.Compared with using a single model,multimodel integration enhances the understanding of the objective geographical world by integrating multiple elements and processes.Integrating models within a single domain or across domains ultimately involves basic execution links,such as combining,nesting,and connecting multiple models in a specific computing environment.In response to this,customized integration and modular integration are the main approaches to current geographical analysis model integration research.Customized integration offers tailored solutions for specific models considering cognitive and technical characteristics.However,it is heavily influenced by individual model characteristics and may become unsustainable during the integration of numerous models,leading to frequent revision activities.Modular integration relies on standardized components with clear association logic and supports component replacement.However,it faces strong technical dependencies and constraints,such as those that involve programming language,data structure,and operating environment.In practice,current model integration research often varies between customization and modularity,with the former lacking sustainability and the latter being limited by compatibility issues.In this study,the idea of a"geographic analysis model container"is proposed,and the methods are implemented to address the problems mentioned.With the assistance of the concept of containerization,the data,programs,and computing resources upon which geographical models rely are loaded into a"container."Then,the model is developed in a customized manner within the container,while the modular model integration work occurs outside the container.Striking a balance between customized and modular approaches is anticipated to enhance the overall effectiveness of geographic modeling and simulation efforts.Conducting a multilevel,multigranularity,and multiscale integration across elements,processes,and functional relationships is necessary for addressing specific geographical problems.The development of"geographic analysis model containers"tailored to express geographical system evolution laws and driving mechanisms has become crucial.Accumulating and improving model integration capabilities based on containers is expected to establish an effective bridge between model construction,transformation,and integration.This advancement can promote geographical models from experimental tools to essential components of social service infrastructure.Decision-making analysis,solution simulation,and customized planning capabilities can be provided for various digital twin geographical scenarios(such as digital twin cities,digital twin river basins,and digital twin water conservancies)by integrating geographical analysis models.This integration drives advancements in digital twins,metaverses,and digital human technology,spanning visual experiences,operation,and maintenance management.It also incorporates geographical knowledge,enhances interactive functions,and promotes a comprehensive understanding.

remote sensinggeographical analysis modelsvirtual geographic environmentdigital twin geographic environmentmodel integrationgeographical analysis model container

乐松山、闾国年、温永宁、陈旻

展开 >

南京师范大学地理科学学院,南京 210023

虚拟地理环境教育部重点实验室(南京师范大学),南京 210023

江苏省地理信息资源开发与利用协同创新中心,南京 210023

遥感 地理分析模型 虚拟地理环境 数字孪生地理环境 模型集成 地理分析模型容器

国家自然科学基金国家自然科学基金国家自然科学基金国家自然科学基金国家重点研发计划

419306484217140642071363420713612021YFB3900901

2024

遥感学报
中国地理学会环境遥感分会 中国科学院遥感应用研究所

遥感学报

CSTPCD北大核心
影响因子:2.921
ISSN:1007-4619
年,卷(期):2024.28(5)
  • 155