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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >A spatial and temporal analysis of forest dynamics using Landsat time-series
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A spatial and temporal analysis of forest dynamics using Landsat time-series

机译:利用Landsat时间系列的森林动力学的空间与时间分析

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Understanding forest dynamics at the landscape scale is critical given the demands of sustainable forest management and climate change mitigation. This study proposes an approach for holistically characterising and analysing forest dynamics across large areas and long-time periods using information derived from Landsat time series. To achieve this, we first developed a two-phase classification process to predictively map (1) disturbance and recovery levels and (2) disturbance causal agents for multiple detected disturbance events. The model explanatory data included a range of trajectory-based metrics derived from Landsat time-series, while model training and validation data were derived from a human-interpreted reference dataset. While previous studies have often described forest dynamics using some specific spectral change metrics, we demonstrated an ensemble approach to map disturbance and recovery trends (by treating them as a single metric) and to characterise not only abruptly occurring change events (e.g., clear-fell logging and wildfire) but also events of low severity (e.g., prescribed burning and selective logging). In addition, we adopted a space-time data cube concept to simultaneously report both newly detected disturbance events (detected disturbances) as well as events that have previously occurred but are ongoing (ongoing disturbances). This ongoing element of forest dynamics is often under-reported. The method was tested over 3.7 million ha of public land sclerophyll forests, where multiple disturbance events have occurred over the last 30 years (1987-2016). Our models of disturbance and recovery levels obtained overall accuracies of 78.6% and 72.3% for primary and secondary disturbance events, respectively. The overall accuracies for the models of disturbance causal agents were 80.7% and 73.0%, respectively. The data cube reported an average annual disturbance rate of 4.2% per year. This was dominated by newly detected disturbance (2.7% per year) as distinct from ongoing disturbance that was, however, considerable (1.5% per year). Our approach presented herein can improve the understanding of forest dynamics over long time periods and large areas and has potential for supporting land managers.
机译:鉴于可持续森林管理和气候变化缓解的需求,了解景观量表的森林动态至关重要。本研究提出了一种方法,用于使用源自Landsat时间序列的信息来全能地表征和分析森林动力学的森林动力学。为此,我们首先开发了一种两相分类过程,以预测地图(1)扰动和恢复水平和(2)对多种检测到的干扰事件的扰动因果剂。模型解释性数据包括一系列从Landsat时间序列导出的基于轨迹的度量,而模型训练和验证数据源自人类解释的参考数据集。虽然以前的研究经常使用一些特定的光谱变化度量描述森林动态,但是我们证明了一种映射干扰和恢复趋势的集合方法(通过将它们视为单个度量),并且不仅表征突然发生的变化事件(例如,清除伐木和野火),但也是低严重程度的事件(例如,规定的燃烧和选择性伐木)。此外,我们采用了一个时空数据立方体概念,同时报告新检测到的干扰事件(检测到的干扰)以及先前发生但正在进行的事件(持续干扰)。常见的是森林动力学的这种持续要素。该方法经测试了370万公顷的公共土地硬化林,在过去30年(1987-2016)中发生了多种干扰事件。我们的扰动和恢复水平的模型分别获得了78.6%的总体准确性,分别为初级和二级干扰事件72.3%。干扰因果剂模型的总体精度分别为80.7%和73.0%。数据立方体每年的平均年度干扰率为4.2%。这由新检测到的干扰(每年2.7%)如同持续扰动所统治,这一点相当大(每年1.5%)。我们在此呈现的方法可以改善对长期季节和大面积和大面积的森林动力学的理解,并具有支持土地管理人员的潜力。

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