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Modeling Historical Land Use Changes at A Regional Scale: Applying Quantity and Locational Error Metrics to Assess Performance of An Artificial Neural Network-Based Back-Cast Model

机译:在区域尺度上对历史土地利用变化进行建模:应用数量和位置误差度量来评估基于人工神经网络的回播模型的性能

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Land-use legacies, the effects of past land use changes (LUCs) on current social and biophysical processes, can persist for hundreds to thousands of years. Although spatial and temporal data are currently available at a continental scale, they are limited for investigating LUC legacies. The limitations of historical data include a lack of temporal coverage, inaccessibility at coarse resolution, availability only for few land use classes and accessibility for only specific regions. Despite the limitation in data availability, there is an urgent need to develop a data-intensive model that can back-cast multiple historic LUCs at regional scales. We developed a back-cast model for generating historic land use maps with multiple land use classes at a regional scale using a high performance computing (HPC) platform. We trained and tested the model using Retrofit Land Cover Change data between 2001 and 1992 in a backward manner at 1 km resolution for three land use categories (urban, forest and agriculture) in the Ohio River Basin (ORB) of United States. We also developed a calibration metric to assess quantity and locational errors for multiple LUCs simultaneously. Results showed that the range that the model underestimated and overestimated the quantity of LUCs was -0.05% to +0.11%. The persistence (over 95%) and location (over 80%) accuracies of multiple LUCs were quantified. We then simulated multiple LUCs annually between 2001 and 1980 using 2001 as the base year across the ORB. We describe how the output of our back-cast model can be coupled with other environmental models to assess the impact of land use change on ecosystem services.
机译:土地使用的遗产,即过去土地使用变化(LUC)对当前社会和生物物理过程的影响,可以持续数百到数千年。尽管目前可以在大陆范围内获得时空数据,但是它们在调查LUC遗留物方面受到限制。历史数据的局限性包括缺乏时间覆盖性,无法以较粗略的分辨率访问,仅针对少数土地使用类别的可用性以及仅针对特定区域的可用性。尽管数据可用性受到限制,但是迫切需要开发一种数据密集型模型,该模型可以在区域范围内反向传输多个历史LUC。我们开发了一种反向模型,可以使用高性能计算(HPC)平台在区域范围内生成具有多个土地利用类别的历史土地利用图。我们使用2001年至1992年之间的翻新土地覆被变化数据以1 km的分辨率向后对美国俄亥俄州河流域(ORB)的三种土地利用类别(城市,森林和农业)进行了训练和测试。我们还开发了一种校准指标,可以同时评估多个LUC的数量和位置误差。结果表明,模型低估和高估了LUC数量的范围是-0.05%至+ 0.11%。量化了多个LUC的持久性(超过95%)和位置(超过80%)准确性。然后,我们以2001年为ORB的基准年,在2001年至1980年之间每年模拟多个LUC。我们描述了我们的后推模型的输出如何与其他环境模型结合起来,以评估土地利用变化对生态系统服务的影响。

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