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A corrosion severity ranking methodology and a predictive model for corrosion growth based on environmental and corrosion growth data.

机译:基于环境和腐蚀增长数据的腐蚀严重性排名方法和腐蚀增长预测模型。

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摘要

This dissertation presents a new methodology for defining corrosion severity ranking by location for six operational air force bases, Hickam Air Force Base (AFB), Kadena Air Base (AB), Macdill AFB, Royal Air Force (RAF) Mildenhall, Pease Air National Guard Base (ANGB), and Seymour Johnson AFB. Three new corrosion growth predictive models are also presented so that a foundation for establishing a corrosion maintenance and inspection schedule of the C/KC-135 aircraft can be developed. The corrosion severity ranking scheme and the predictive growth models for the six operational air force bases will allow the United States Air Force (USAF) to concentrate their efforts on proactively inspecting aircraft for corrosion when deployed and operated at bases deemed as highly severe corrosion sites.; The method of principal component analysis (PCA) is used for the first time to analyze compositional data sets of atmospheric conditions (or thresholds) for defining corrosion severity ranking by locations (air force bases). The results show that the ranking for the six operational air bases from the most severe site to the least severe site is Hickam AFB, Kadena AB, Macdill AFB, Seymour Johnson AFB, RAF Mildenhall, and Pease ANGB.; In order to develop a more accurate corrosion growth predictive model, three corrosion growth predictive models are developed by modifying and combining the following existing growth models: the Gompertz growth and the logistic growth models (GL model), the Gompertz growth and the confined exponential growth models (GC model), and the logistic growth and the confined exponential growth models (CL model). The confined exponential growth model, the power law equation, and the three new models (i.e., GL, GC, and CL models) are compared through lack-of-fit tests and model adequacy checking (after performing weighted least square analysis). Corrosion growth data sets from four operational air bases (Hickam AFB, Kadena AB, RAF Mildenhall, and Seymour Johnson AFB) are used to perform the statistical tests. The results showed that the CL model provides the best fit for all corrosion growth data sets of the four operational air bases and dominates the other models in terms of weighted mean square error. The CL model also reveals that Hickam AFB is the most severe corrosion site and supports the results of the PCA analysis on corrosion severity ranking. Although other corrosion growth models exist, this research represents the first models based on corrosion growth data of alloys obtained from operational C/KC-135 aircraft.
机译:本文提出了一种新的方法,用于定义六个作战空军基地,希卡姆空军基地(AFB),卡德纳空军基地(AB),麦克迪空军基地,皇家空军(RAF)米尔登霍尔,豌豆航空国民警卫队的腐蚀严重程度等级基地(ANGB)和西摩·约翰逊空军基地。还提出了三个新的腐蚀增长预测模型,以便为建立C / KC-135飞机的腐蚀维护和检查计划奠定基础。六个作战空军基地的腐蚀严重性排名方案和可预测的增长模型将使美国空军(USAF)能够集中精力积极部署飞机,并在被认为是高度严重腐蚀场所的基地部署和操作时对飞机进行腐蚀检查。 ;主成分分析法(PCA)首次用于分析大气条件(或阈值)的组成数据集,以按位置(空军基地)定义腐蚀严重性等级。结果表明,从最严重到最不严重的六个空军基地的排名是希卡姆空军基地,卡德纳空军基地,麦迪尔空军基地,西摩约翰逊空军基地,皇家空军米尔登霍尔空军基地和皮斯空军基地。为了开发更准确的腐蚀增长预测模型,通过修改和组合以下现有的增长模型,开发了三种腐蚀增长预测模型:Gompertz生长和逻辑增长模型(GL模型),Gompertz生长和密指数增长模型(GC模型),以及逻辑增长和约束指数增长模型(CL模型)。通过缺乏拟合检验和模型充分性检查(在执行加权最小二乘分析之后)比较受限的指数增长模型,幂律方程和三个新模型(即GL,GC和CL模型)。来自四个运营空军基地(希卡姆空军基地,卡德纳空军基地,皇家空军米尔登霍尔和西摩约翰逊空军基地)的腐蚀增长数据集用于进行统计测试。结果表明,CL模型最适合四个作战空军基地的所有腐蚀增长数据集,并在加权均方误差方面主导了其他模型。 CL模型还显示,希卡姆空军基地是腐蚀最严重的地点,并支持PCA分析的腐蚀严重性等级的结果。尽管还存在其他腐蚀增长模型,但本研究还是基于从作战C / KC-135飞机获得的合金的腐蚀增长数据的第一个模型。

著录项

  • 作者

    Saikaew, Charnnarong.;

  • 作者单位

    The University of Oklahoma.;

  • 授予单位 The University of Oklahoma.;
  • 学科 Engineering Industrial.
  • 学位 Ph.D.
  • 年度 2003
  • 页码 172 p.
  • 总页数 172
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 一般工业技术;
  • 关键词

  • 入库时间 2022-08-17 11:45:53

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