Extending system dynamics modeling using simulation decomposition to improve the urban planning process

IF 2.4 Q3 ENVIRONMENTAL SCIENCES Frontiers in Sustainable Cities Pub Date : 2023-03-03 DOI:10.3389/frsc.2023.1129316
J. Yeomans, M. Kozlova
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Abstract

Urban planning often involves decision-making under highly uncertain circumstances. System dynamics and multi-agent modeling frameworks are commonly employed to model the social phenomena in this type of urban planning. However, because the outputs from these approaches are regularly characterized as a function of time, the majority of studies in this modeling domain lack appropriate sensitivity analysis. Consequently, important insights into model behavior are frequently overlooked. Monte Carlo simulation has been used to incorporate uncertain features in urban planning with the outputs displayed as probability distributions. Recently simulation decomposition (SimDec) has been used to enhance the visualization of the cause-effect relationships of multi-variable combinations of inputs on the corresponding simulated outputs. SimDec maps each output value of a Monte Carlo simulation on to the multivariable groups of inputs or scenarios from which it originated. By visually projecting the subdivided scenarios onto the overall output, SimDec can reveal previously unidentified influences between the various combinations of inputs on to the outputs. SimDec can be generalized to any Monte Carlo method with insignificant computational overhead and is, therefore, extendable to any simulated urban planning analysis. This study demonstrates the efficacy of adapting SimDec for the sensitivity analysis of urban dynamics modeling on a paradigmatic simplified version of Forrester's Urban Dynamics- URBAN1 model. SimDec reveals complexities in model behavior that are not, and can not be, captured by standard sensitivity analysis methods and highlights, in particular, the intricate joint effect of immigration and outmigration on system development.
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使用模拟分解扩展系统动力学建模以改进城市规划过程
城市规划往往涉及在高度不确定的情况下进行决策。系统动力学和多智能体建模框架通常用于对这类城市规划中的社会现象进行建模。然而,由于这些方法的输出通常被表征为时间的函数,因此该建模领域的大多数研究缺乏适当的敏感性分析。因此,对模型行为的重要见解经常被忽视。蒙特卡洛模拟已被用于将不确定性特征纳入城市规划,其输出显示为概率分布。最近,模拟分解(SimDec)已被用于增强输入的多变量组合对相应模拟输出的因果关系的可视化。SimDec将蒙特卡洛模拟的每个输出值映射到其产生的多变量输入组或场景。通过将细分场景直观地投影到整体输出上,SimDec可以揭示输入的各种组合对输出的先前未识别的影响。SimDec可以推广到任何计算开销较小的蒙特卡罗方法,因此可以扩展到任何模拟城市规划分析。这项研究证明了在Forrester的城市动力学-UURBAN1模型的示例简化版本上,将SimDec应用于城市动力学建模的敏感性分析的有效性。SimDec揭示了模型行为的复杂性,这些复杂性不是标准敏感性分析方法所能捕捉到的,也不可能捕捉到,并特别强调了移民和迁出对系统开发的复杂联合影响。
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来源期刊
CiteScore
4.00
自引率
7.10%
发文量
176
审稿时长
13 weeks
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