数据时间跨度对SLEUTH城市增长模型预测精度的影响

R. Peiman, K. Clarke
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引用次数: 9

摘要

用于模型输入数据的时间间隔是否会影响模型的后续校准,从而影响土地利用变化和城市增长的预测?本研究通过两个独立的时间尺度(1972 - 2006年vs. 2000 - 2006年)对意大利比萨省历史城市及其周边地区的SLEUTH城市增长和土地利用变化模型的性能进行了评估。进行两次校准的目的是研究SLEUTH预测对较长或较短校准时间线的敏感性,也就是说,在较长时间内校准模型是否会产生更好的模型拟合从而预测?然后将每个校准的最佳拟合参数用于预测该地区到2027年的城市增长。研究结果表明,该模型估算的空间增长受自然景观和道路网络的强烈影响。蒙特卡罗100次试验的预测结果反映了朝向现有道路和沿着现有道路新形成的独立住区的开始,即典型的城市蔓延。作者得出结论,与长期校准相比,短期校准是一个更好的模型拟合。然而,对短期校准的绝对偏好超过长期校准意味着校准的时间敏感性仍然是SLEUTH应用的一个挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Impact of Data Time Span on Forecast Accuracy through Calibrating the SLEUTH Urban Growth Model
Does the spacing of time intervals used for model input data have an impact on the model's subsequent calibration and so projections of land use change and urban growth? This study evaluated the performance of the SLEUTH urban growth and land use change model through two independent model calibrations with different temporal extents (1972 to 2006 vs. 2000 to 2006) for the historical Italian cities of Pisa Province and their surroundings. The goal in performing two calibrations was to investigate the sensitivity of SLEUTH forecasts to longer or shorter calibration timelines, that is does calibrating the model over a longer time period produce better model fits and therefore forecasts? The best fit parameters from each calibration were then used in forecasting urban growth in the area up to the year 2027. The authors findings show that the spatial growth estimated by the model was strongly influenced by the physical landscape and road networks. The forecast outputs over 100 Monte Carlo trials reflect the start of newly formed detached settlements towards and along existing roads, i.e., classic urban sprawl. The authors conclude that the short term calibration was a better model fit compared to the long term calibration. Nevertheless, the absolute preference for the short-term calibration over long-term implies that time-sensitivity in calibration remains a challenge for SLEUTH applications.
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