首页> 外文会议>Asian conference on remote sensing;ACRS 2007 >PREDICTING THE POTENTIAL DISTRIBUTION OF SIREX NOCTILIO INFESTATIONS IN KWAZULU-NATAL, SOUTH AFRICA: COMPARISONS BETWEEN CLASSIFICATION TREES AND RANDOM FOREST CLASSIFERS
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PREDICTING THE POTENTIAL DISTRIBUTION OF SIREX NOCTILIO INFESTATIONS IN KWAZULU-NATAL, SOUTH AFRICA: COMPARISONS BETWEEN CLASSIFICATION TREES AND RANDOM FOREST CLASSIFERS

机译:预测南非夸祖鲁-纳塔尔地区Sirex夜蛾感染的可能分布:分类树与随机森林分类器的比较

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Reducing the impact of the siricid wasp, Sirex noctilio is crucial for the future productivity and sustainability of commercial pine resources in South Africa. In this study we present an alternative modeling framework that accurately identifies existing commercial pine forests that are susceptible to S.noctilio infestation. Using maps that show the potential distribution of S.noctilio infestations, forest managers can now adopt the most appropriate course of intervention before the wasp population reaches epidemic proportions. Two machine learning methods were used to predict the potential geographical distribution of S.noctilio infestations and to examine the relationship between the siricid and its environment. More specifically, classification trees (CT) and the random forest classifier (RF) were used to examine the relationship between 1301 pine forest compartments (showing the absence or presence of S.noctilio) and 72 environmental variables (consisting of historical climatic and topographic datasets). The results obtained from this study are very encouraging and show that RF was the most accurate predictive model and had several advantages over CT. The overall model accuracy (kappa statistic) was 0.71 for CT whereas RF produced accuracies of 0.77. Additionally, accuracy assessments by an independent dataset might be unnecessary as RF provides a reliable internal estimate of accuracy as determine by the out of bag error estimate. The highest ranked environmental variables as determined by RF were the median rainfall for February followed by the evapotranspiration during August and September. The results concur with previous studies and indicate that pine forests that are experiencing some form of stress are more susceptible to S.noctilio attack. The RF prediction model when used in conjunction with geographical information systems provides a useful and robust tool that can assist with current forest pest management initiatives.
机译:降低Siricid黄蜂的影响,Sirex noctilio对于南非商业松树资源的未来生产力和可持续性至关重要。在这项研究中,我们提出了一个替代的建模框架,可以准确地识别易受链球菌侵染的现有商业松树林。通过使用显示夜蛾疫病潜在分布的地图,森林管理者现在可以在黄蜂种群达到流行比例之前采取最适当的干预措施。两种机器学习方法被用来预测夜蛾链球菌侵染的潜在地理分布,并检验硅藻及其环境之间的关系。更具体地说,使用分类树(CT)和随机森林分类器(RF)来检查1301个松树林区(表明是否存在S.noctilio)与72个环境变量(包括历史气候和地形数据集)之间的关系)。这项研究获得的结果令人鼓舞,表明RF是最准确的预测模型,与CT相比具有多个优势。 CT的整体模型准确性(kappa统计量)为0.71,而RF产生的精度为0.77。另外,由于RF提供了可靠的内部准确度估计,由独立数据集进行的准确度评估可能是不必要的,而准确度内部估计由袋外误差估计确定。由RF确定的最高环境变量是2月的降雨中位数,然后是8月和9月的蒸散量。该结果与先前的研究一致,并表明遭受某种形式的压力的松树林更容易受到链球菌的侵袭。当与地理信息系统结合使用时,RF预测模型提供了一个有用且强大的工具,可以协助当前的森林有害生物管理计划。

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