首页> 外文OA文献 >Reliability-Based Low Fatigue Life Analysis of Turbine Blisk with Generalized Regression Extreme Neural Network Method
【2h】

Reliability-Based Low Fatigue Life Analysis of Turbine Blisk with Generalized Regression Extreme Neural Network Method

机译:基于可靠性的汽轮机闪烁的低疲劳寿命分析极端神经网络方法

代理获取
本网站仅为用户提供外文OA文献查询和代理获取服务,本网站没有原文。下单后我们将采用程序或人工为您竭诚获取高质量的原文,但由于OA文献来源多样且变更频繁,仍可能出现获取不到、文献不完整或与标题不符等情况,如果获取不到我们将提供退款服务。请知悉。

摘要

Turbine blisk low cycle fatigue (LCF) is affected by various factors such as heat load, structural load, operation parameters and material parameters; it seriously influences the reliability and performance of the blisk and aeroengine. To study the influence of thermal-structural coupling on the reliability of blisk LCF life, the generalized regression extreme neural network (GRENN) method was proposed by integrating the basic thoughts of generalized regression neural network (GRNN) and the extreme response surface method (ERSM). The mathematical model of the developed GRENN method was first established in respect of the LCF life model and the ERSM model. The method and procedure for reliability and sensitivity analysis based on the GRENN model were discussed. Next, the reliability and sensitivity analyses of blisk LCF life were performed utilizing the GRENN method under a thermal-structural interaction by regarding the randomness of gas temperature, rotation speed, material parameters, LCF performance parameters and the minimum fatigue life point of the objective of study. The analytical results reveal that the reliability degree was 0.99848 and the fatigue life is 9419 cycles for blisk LCF life when the allowable value is 6000 cycles so that the blisk has some life margin relative to 4500 cycles in the deterministic analysis. In comparison with ERSM, the computing time and precision of the proposed GRENN under 10,000 simulations is 1.311 s and 99.95%. This is improved by 15.18% in computational efficiency and 1.39% in accuracy, respectively. Moreover, high efficiency and high precision of the developed GRENN become more obvious with the increasing number of simulations. In light of the sensitivity analysis, the fatigue ductility index and temperature are the key factors of determining blisk LCF life because their effect probabilities reach 41% and 26%, respectively. Material density, rotor speed, the fatigue ductility coefficient, the fatigue strength coefficient and the fatigue ductility index are also significant parameters for LCF life. Poisson’s ratio and elastic modulus of materials have little effect. The efforts of this paper validate the feasibility and validity of GRENN in the reliability analysis of blisk LCF life and give the influence degrees of various random parameters on blisk LCF life, which are promising to provide useful insights for the probabilistic optimization of turbine blisk LCF life.
机译:涡轮叶盘低循环疲劳(LCF)由各种因素如热负荷,结​​构载荷,操作参数和材料参数的影响;它严重影响了整体叶盘和航空发动机的可靠性和性能。为了研究热结构耦合的上叶盘LCF寿命的可靠性的影响,广义回归极端神经网络(GRENN)方法,提出了通过积分广义回归神经网络的(GRNN)的基本思想和极端响应面法(ERSM )。发达GRENN方法的数学模型,首先建立在尊重的LCF寿命模型和ERSM模型。讨论了基于所述GRENN模型的可靠性和灵敏度分析的方法和过程。接着,通过把气体的温度,旋转速度,材料参数,LCF性能参数和目标的最小疲劳寿命点的随机性进行叶盘LCF寿命的可靠性和灵敏度分析利用热结构性相互作用下GRENN方法学习。分析结果表明,该可靠度是0.99848和疲劳寿命为叶盘LCF寿命9419次循环时的允许值是如此6000次循环,所述叶盘具有一些相对于4500个周期在确定性分析生命余量。与ERSM,下万个模拟的计算时间和所提出的GRENN精度比较是1.311秒和99.95%。这是通过在计算效率15.18%和1.39%的精度分别改善。此外,高效率和开发GRENN高精度更加明显随着越来越多的模拟。在灵敏度分析中的光,疲劳延展性指数和温度是决定整体叶盘LCF寿命,因为它们的影响的概率达到41%和26%,分别的关键因素。材料的密度,转子速度,疲劳延性系数,疲劳强度系数和疲劳延性索引也可用于LCF寿命显著参数。泊松比和材料的弹性模量的影响不大。本文的努力,验证在整体叶盘低循环疲劳寿命的可靠性分析GRENN的可行性和有效性,并就整体叶盘LCF寿命的影响程度各随机参数,这是很有希望的涡轮叶盘LCF寿命的概率优化提供了有益的启示。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
代理获取

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号