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How Tree Risk Assessment Methods Work: Sensitivity Anaiyses of Sixteen Methods Reveai the Vaiue of Quantification and the Impact of Inputs on Risk Ratings

机译:树风险评估方法如何工作:十六条方法的敏感性分析揭示了量化的价值和投入对风险评级的影响

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Sixteen tree risk assessment methods were subjected to sensitivity analysis to determine which factors most influenced the output of each method. The analyses indicate the relative influence that the input variables exert on the flnal risk value. Excel was used to create a simple ± 25% or+-1 rank change (depending on the method) for each criterion, with the change to the output recorded as a percentage. Palisade’s @Risk software was used to undertake a Monte Carlo (with Latin Hypercube sampling) simulation of 5000 iterations based on the input variables and output formula. From the simulation, multivariate stepwise regression was undertaken to determine the influence of each method’s input variables in determining the output values. Results fromthe sensitivity analysis indicate some clear and strong differences amongst the 16 methods, reflecting that the underlying mathematics, input categories, ranges, and scaling influence the way that different methods process and express risk. It is not surprising that methods perform differently in different circumstances and express risk level differently. The analyses demonstrated that most methods placed too great an emphasis on limited aspects of risk assessment. Most methods strongly focused on the hazard or defect aspects of assessment and the likelihood of failure rather than the consequence aspect of an assessment. While methods were uniquely different, they could be placed into 3 broad groups: Group 1 methods produced a normal distribution withmost values around the mean; Group 2 methods produced outputs at the lower end of the risk scale; and Group 3 methods produced outputs evenly if not continuously across the risk scale. Users of tree risk assessment should understand the strengths and weaknesses of any method used, as it could be relatively simple to challenge the results of a risk assessment based on limitations inherent in the underlying methodology.
机译:对十六棵树风险评估方法进行敏感性分析,以确定最严重的因素影响每种方法的输出。分析表明输入变量对Flnal风险值施加的相对影响。 Excel用于为每个标准创建简单±25%或+ -1级别(根据方法),随着记录为百分比的输出的变化。 PALISADE的@RISK软件用于基于输入变量和输出公式进行5000次迭代的蒙特卡罗(带拉丁超级采样)模拟。从模拟中,对多变量的逐步回归进行了多变量回归,以确定每个方法的输入变量在确定输出值时的影响。灵敏度分析结果表明了16种方法中的一些明显和强烈的差异,反映了潜在的数学,输入类别,范围和缩放影响不同方法过程和表达风险的方式。在不同的情况下,方法表现不同,表达风险水平并不令人惊讶。分析表明,大多数方法在风险评估的有限方面放置了太大的重点。大多数方法强烈关注评估的危害或缺陷方面以及失败的可能性而不是评估的后果方面。虽然方法是唯一的不同,但它们可以被置于3个宽组:第1组方法产生正常分布在平均值周围最大限度地分布;第2组方法在风险规模的下端产生输出;第3组方法如果不跨越风险尺度,则产生均匀的输出。树风险评估的用户应该了解所使用的任何方法的优势和弱点,因为挑战基于潜在方法中固有的局限性的风险评估的结果。

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