Gharaibeh Anne, Shaamala Abdulrazzaq, Obeidat Rasha, Al-Kofahi Salman
Department of City Planning and Design, College of Architecture and Design, Jordan University of Science and Technology, Irbid, 22110 Jordan.
Department of Computer Science, College of Computer Information Technology, Jordan University of Science and Technology, Irbid, 22110 Jordan.
Heliyon. 2020 Sep 29;6(9):e05092. doi: 10.1016/j.heliyon.2020.e05092. eCollection 2020 Sep.
Urban growth and land-use change are a few of many puzzling factors affecting our future cities. Creating a precise simulation for future land change is a challenging process that requires temporal and spatial modeling. Many recent studies developed and trained models to predict urban expansion patterns using Artificial Intelligence (AI). This study aims to enhance the simulation capability of Cellular Automata Markov Chain (CA-MC) model in predicting changes in land-use. This study integrates the Artificial Neural Network (ANN) into CA-MC to incorporate several driving forces that highly impact land-use change. The research utilizes different socio-economic, spatial, and environmental variables (slope, distance to road, distance to urban centers, distance to commercial, density, elevation, and land fertility) to generate potential transition maps using ANN Data-driven model. The generated maps are fed to CA-MC as additional inputs. We calibrated the original CA-MC and our models for 2015 cross-comparing simulated maps and actual maps obtained for Irbid city, Jordan in 2015. Validation of our model was assessed and compared to the CA-MC model using Kappa indices including the agreement in terms of quantity and location. The results elucidated that our model with an accuracy of 90.04% substantially outperforms CA-MC (86.29%) model. The improvement we obtained from integrating ANN with CA-MC suggested that the influence imposed by the driving force was necessary to be taken into account for more accurate prediction. In addition to the improved model prediction, the predicted maps of Irbid for the years 2021 and 2027 will guide local authorities in the development of management strategies that balance urban expansion and protect agricultural regions. This will play a vital role in sustaining Jordan's food security.
城市增长和土地利用变化是影响我们未来城市的众多令人困惑的因素中的一部分。为未来土地变化创建精确的模拟是一个具有挑战性的过程,需要进行时空建模。最近的许多研究开发并训练了使用人工智能(AI)来预测城市扩张模式的模型。本研究旨在提高元胞自动机马尔可夫链(CA-MC)模型在预测土地利用变化方面的模拟能力。本研究将人工神经网络(ANN)集成到CA-MC中,以纳入对土地利用变化有重大影响的几个驱动力。该研究利用不同的社会经济、空间和环境变量(坡度、到道路的距离、到城市中心的距离、到商业区的距离、密度、海拔和土地肥力),使用基于人工神经网络的数据驱动模型生成潜在的转移地图。生成的地图作为额外输入提供给CA-MC。我们校准了原始的CA-MC和我们的模型,以2015年为基准,将模拟地图与从约旦伊尔比德市获得的2015年实际地图进行交叉比较。使用包括数量和位置一致性在内的卡帕指数对我们模型的验证进行了评估,并与CA-MC模型进行了比较。结果表明,我们的模型准确率为90.04%,大大优于CA-MC(86.29%)模型。我们通过将人工神经网络与CA-MC集成所获得的改进表明,为了进行更准确的预测,必须考虑驱动力所施加的影响。除了改进模型预测外,伊尔比德市2021年和2027年的预测地图将指导地方当局制定平衡城市扩张和保护农业区域的管理策略。这将对维持约旦的粮食安全发挥至关重要的作用。