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A study of airport pavement-aircraft interaction using wavelet analysis.

机译:基于小波分析的机场人行道与飞机相互作用研究。

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摘要

This study investigates airport pavement roughness and aircraft-pavement interaction in order to identify those pavement roughness attributes affecting aircraft response and to examine whether traditional roughness indices adequately capture these roughness attributes. The methodology for accomplishing these objectives is briefly outlined below.; Five runway profiles from various geographic locations are used as input for the analysis and range in length from approximately 2,200 to 3,700 m. The Federal Aviation Administration's software program ProFAA is used to calculate five traditional roughness indices (the Straightedge Index, Boeing Bump Index, International Roughness Index, Profile Index, and RMS Bandpass Filter) for each of the profiles. These traditional indices are calculated for both full runway lengths as well as various distinct pavement profile subsections.; Computer simulation through the proprietary software APRas(c) is used to predict the response of a Boeing 737 travelling at constants speeds of both 20 and 45 knots for each of the five runway profiles. The aircraft responses considered are vertical acceleration at the pilot station and center of gravity as well as the pavement load at the nose and main landing gears. These responses are output in the distance domain and are entered into the commercially available MATLABRTM software for performing wavelet analysis. Peak dynamic aircraft response is also used for analysis and is considered as the 95th percentile of the total aircraft response.; Wavelet theory is currently used in signal processing but is gaining popularity in the field of pavements. Pavement profiles and simulated aircraft responses plotted in the distance domain resemble signals and can be analyzed using wavelet decomposition. In this study, each of the five runway profiles and associated B737 aircraft response "signals" are decomposed. The results from the twelve-level wavelet decomposition allow for the computation of energy, which is a quantification of signal variation. The energy values are normalized for each profile by the runway length and number of sampling points.; The runway profile and dynamic aircraft response normalized energy values are statistically compared through Pearson correlations to the traditional roughness indices for both full runway lengths and runway subsections. In addition, peak aircraft responses are compared to peak roughness indices through Pearson correlation. Overall, the traditional roughness indices appear to adequately capture roughness events over the smaller pavement subsections, while poorly capturing roughness events over the full runway lengths.
机译:这项研究调查了机场路面的粗糙度和飞机-路面的相互作用,以识别影响飞机响应的那些路面粗糙度属性,并检查传统的粗糙度指数是否能充分捕获这些粗糙度属性。下面简要概述了实现这些目标的方法。来自不同地理位置的五个跑道剖面被用作分析的输入,长度范围从大约2,200到3,700 m。联邦航空局的软件程序ProFAA用于为每个轮廓计算五个传统的粗糙度指数(直线度指数,波音凹凸指数,国际粗糙度指数,轮廓指数和RMS带通滤波器)。这些传统指标是为整个跑道长度以及各种不同的路面剖面分段计算的。通过专有软件APRas(c)进行的计算机仿真可用于预测波音737飞机在五个跑道剖面中均以20节和45节的恒定速度行驶的响应。所考虑的飞机响应是飞行员站和重心处的垂直加速度,以及机头和主要起落架处的路面载荷。这些响应在距离域中输出,并输入到市售的MATLABRTM软件中以执行小波分析。高峰动态飞机响应也用于分析,被认为是飞机总响应的第95个百分位。小波理论目前用于信号处理中,但在人行道领域越来越流行。距离域中绘制的路面轮廓和模拟飞机响应类似于信号,可以使用小波分解进行分析。在这项研究中,五个跑道剖面和相关的B737飞机响应“信号”均被分解。十二级小波分解的结果允许计算能量,这是对信号变化的量化。能量值通过跑道长度和采样点数量归一化。通过皮尔逊相关性将跑道轮廓和动态飞机响应归一化能量值通过Pearson相关性与整个跑道长度和跑道分段的传统粗糙度指数进行统计比较。另外,通过皮尔逊相关性将飞机的峰值响应与峰值粗糙度指数进行比较。总的来说,传统的粗糙度指数似乎可以充分捕获较小路面部分的粗糙度事件,而不能很好地捕获整个跑道长度上的粗糙度事件。

著录项

  • 作者

    Woods, Jessica E.;

  • 作者单位

    The University of Texas at San Antonio.$bCivil & Environmental Engineering.;

  • 授予单位 The University of Texas at San Antonio.$bCivil & Environmental Engineering.;
  • 学科 Engineering Civil.
  • 学位 M.S.
  • 年度 2008
  • 页码 222 p.
  • 总页数 222
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 建筑科学;
  • 关键词

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