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Uncertainty associated with model predictions of surface and crown fire rates of spread

机译:与扩散的表面和树冠射速有关的模型预测的不确定性

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The degree of accuracy in model predictions of rate of spread in wildland fires is dependent on the model's applicability to a given situation, the validity of the model's relationships, and the reliability of the model input data. On the basis of a compilation of 49 fire spread model evaluation datasets involving 1278 observations in seven different fuel type groups, the limits on the predictability of current operational models are examined. Only 3% of the predictions (i.e. 35 out of 1278) were considered to be exact predictions according to the criteria used in this study. Mean percent error varied between 20 and 310% and was homogeneous across fuel type groups. Slightly more than half of the evaluation datasets had mean errors between 51 and 75%. Under-prediction bias was prevalent in 75% of the 49 datasets analysed. A case is made for suggesting that a ±35% error interval (i.e. approximately one standard deviation) would constitute a reasonable standard for model performance in predicting a wildland fire's forward or heading rate of spread. We also found that empirical-based fire behaviour models developed from a solid foundation of field observations and well accepted functional forms adequately predicted rates of fire spread far outside of the bounds of the original dataset used in their development.
机译:在模型中预测野火蔓延速率的准确性取决于模型在给定情况下的适用性,模型关系的有效性以及模型输入数据的可靠性。在对49个火警蔓延模型评估数据集进行汇总的基础上,涉及七个不同燃料类型组的1278个观测值,检查了当前运行模型的可预测性限制。根据这项研究中使用的标准,只有3%的预测(即1278个预测中的35个)被认为是准确的预测。平均误差百分比在20%至310%之间变化,并且在所有燃料类型组中均等。略多于一半的评估数据集的平均误差在51%到75%之间。在分析的49个数据集中,有75%的人存在预测不足偏差。提出了一个理由,即±35%的误差区间(即大约一个标准偏差)将构成模型性能在预测野火的前进或前进方向时的合理标准。我们还发现,基于实证的火灾行为模型是通过实地观察和公认的功能形式的坚实基础开发的,可以充分预测火灾的蔓延速度,这些火灾的蔓延速度远远超出了其开发所使用的原始数据集的范围。

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