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首页> 外文期刊>Canadian Journal of Forest Research >Data assimilation in stand-level forest inventories
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Data assimilation in stand-level forest inventories

机译:常规森林清单中的数据同化

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The development of remote sensing methods through research and large-scale application nowadays makes it possible to obtain stand-level estimates of forest variables at short intervals and at low cost. This offers substantial possibilities to forestry practitioners, but it also poses challenges regarding how cost-efficient data acquisition strategies should be developed. For example, should cheap but low-quality data be acquired and discarded whenever new data become available or should investments be made in high-quality data that are continuously updated to last over a longer period of time? We suggest that the solution could be to establish data assimilation (DA) procedures linked to forest inventories to make appropriate use of data from several sources. With DA, old information is updated through growth forecasts and when new information becomes available it is assimilated with the old information; the different sources of information are made use of to the extent motivated by their accuracy. In this study we made a general assessment of the usefulness of DA in connection with stand-level forest inventories and we compared two different methodological approaches, the extended Kalman filter and the Bayesian method. Not surprisingly, the relative advantage of DA was found to be largest for cases where low-precision estimates of growing stock volume were obtained at short intervals and forecasts were made with accurate growth prediction models. The methodological comparison revealed a tendency of the extended Kalman filter to underestimate the variance of the estimates.
机译:如今,通过研究和大规模应用的发展,遥感方法的发展使得有可能以较短的时间间隔和低成本获得森林变量的标准估计值。这为林业从业者提供了巨大的可能性,但是也给如何开发具有成本效益的数据采集策略带来了挑战。例如,是否应该在获取新数据时获取并丢弃廉价但质量低劣的数据,还是应该对持续更新以持续较长时间的高质量数据进行投资?我们建议解决方案可能是建立与森林清单相关的数据同化(DA)程序,以适当利用来自多个来源的数据。使用DA时,旧信息会通过增长预测进行更新,而当有新信息可用时,旧信息会与旧信息同化;在准确性的基础上,充分利用了不同的信息来源。在这项研究中,我们对与林分级森林清单相关的DA的有用性进行了总体评估,并比较了两种不同的方法学方法:扩展卡尔曼滤波和贝叶斯方法。毫不奇怪,发现DA的相对优势最大,这种情况是在很短的时间间隔内获得生长种群数量的低精度估计,并使用准确的增长预测模型进行预测。方法上的比较表明,扩展卡尔曼滤波器有可能低估估计值的方差。

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