School of Civil Engineering, Engineering Campus, Universiti Sains Malaysia, 14300, Nibong Tebal, Penang, Malaysia.
Department of Civil Engineering College of Engineering, University of Kirkuk, Kirkuk, Iraq.
Environ Monit Assess. 2019 Mar 5;191(4):205. doi: 10.1007/s10661-019-7330-6.
Spatio-temporal land-use change modeling, simulation, and prediction have become one of the critical issues in the last three decades due to uncertainty, structure, flexibility, accuracy, the ability for improvement, and the capability for integration of available models. Therefore, many types of models such as dynamic, statistical, and machine learning (ML) models have been used in the geographic information system (GIS) environment to fulfill the high-performance requirements of land-use modeling. This paper provides a literature review on models for modeling, simulating, and predicting land-use change to determine the best approach that can realistically simulate land-use changes. Therefore, the general characteristics of conventional and ML models for land-use change are described, and the different techniques used in the design of these models are classified. The strengths and weaknesses of the various dynamic, statistical, and ML models are determined according to the analysis and discussion of the characteristics of these models. The results of the review confirm that ML models are the most powerful models for simulating land-use change because they can include all driving forces of land-use change in the simulation process and simulate linear and non-linear phenomena, which dynamic models and statistical models are unable to do. However, ML models also have limitations. For instance, some ML models are complex, the simulation rules cannot be changed, and it is difficult to understand how ML models work in a system. However, this can be solved via the use of programming languages such as Python, which in turn improve the simulation capabilities of the ML models.
由于不确定性、结构、灵活性、准确性、可改进性和现有模型的集成能力等原因,时空土地利用变化建模、模拟和预测在过去三十年中成为一个关键问题。因此,许多类型的模型,如动态、统计和机器学习 (ML) 模型,已在地理信息系统 (GIS) 环境中用于满足土地利用建模的高性能要求。本文对土地利用变化建模、模拟和预测模型进行了文献综述,以确定能够真实模拟土地利用变化的最佳方法。因此,描述了土地利用变化的常规和 ML 模型的一般特征,并对这些模型设计中使用的不同技术进行了分类。根据对这些模型特征的分析和讨论,确定了各种动态、统计和 ML 模型的优缺点。综述结果证实,ML 模型是模拟土地利用变化最强大的模型,因为它们可以在模拟过程中包含土地利用变化的所有驱动力,并模拟动态模型和统计模型无法模拟的线性和非线性现象。然而,ML 模型也有其局限性。例如,一些 ML 模型比较复杂,模拟规则无法更改,并且很难理解 ML 模型在系统中的工作方式。然而,这可以通过使用 Python 等编程语言来解决,从而提高 ML 模型的模拟能力。