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首页> 外文期刊>Transportation Research Procedia >Preliminary Study on Runway Pavement Friction Decay Using Data Mining
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Preliminary Study on Runway Pavement Friction Decay Using Data Mining

机译:基于数据挖掘的跑道路面摩擦力衰减的初步研究

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Surfaces of airport pavements are subject to the friction decay phenomenon. A recurrent problem for the runways is represented by the deposits of vulcanized rubber of aircraft tires. This happens mainly in the touch-down areas during landing operations, and the loss of grip compromises the safety of both take-off and landing operations. This study moves from the International Civil Aviation Organization and the Italian Civil Aviation Authority provisions concerning runway friction measurement and reporting to a better way to analyze friction data. Being data mining the computational process of discovering patterns in a large data sets, data mining techniques are very helpful to reach this target. Unsupervised and supervised classification methods to analyze friction data detected by Grip Tester Trailer were employed. First,K-meansandSubtractive Clusteringwere applied to divide data into a certain number of clusters representing the different areas of consumption. In a second time two differentClassification and Regression Treesmodels,CARTandGCHAID, were employed to split the data points of the runway into nodes. At the end of the process scatterplots were built and better visualized through non-linear regressions. The decay curves obtained were of service to compare the results achieved using data mining techniques versus the International Civil Aviation Organization and the Italian Civil Aviation Authority provisions in order to find out the best way to analyze friction data. The final goals are to assure an optimum scheduling of the Airport Pavement Management System, as well as users safety.
机译:机场人行道的表面容易产生摩擦衰减现象。跑道的一个经常性问题是飞机轮胎的硫化橡胶沉积。这种情况主要发生在着陆操作过程中的着陆区域,失去抓地力会损害起飞和着陆操作的安全性。这项研究从国际民航组织和意大利民航局关于跑道摩擦测量和报告的规定出发,转向了一种更好的分析摩擦数据的方法。作为数据挖掘的过程,它是发现大型数据集中模式的计算过程,数据挖掘技术对于实现此目标非常有帮助。采用无监督和有监督的分类方法来分析由Grip Tester Trailer检测到的摩擦数据。首先,应用K-均值和减法聚类将数据划分为代表不同消耗区域的一定数量的聚类。第二次,使用了两个不同的分类和回归树模型CART和GCHAID将跑道的数据点划分为节点。在过程的最后,通过非线性回归建立了散点图,并使其可视化效果更好。获得的衰减曲线有助于比较使用数据挖掘技术与国际民航组织和意大利民航局的规定所获得的结果,以便找出分析摩擦数据的最佳方法。最终目标是确保机场道路管理系统的最佳调度以及用户安全。

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