Bayesian Inference Based Parameter Calibration of the LuGre-Friction Model

被引:0
作者
C.M. Gehb
S. Atamturktur
R. Platz
T. Melz
机构
[1] Technische Universität Darmstadt,System Reliability, Adaptive Structures, and Machine Acoustics SAM
[2] The Pennsylvania State University,Head of the Department of Architectural Engineering
[3] Fraunhofer Institute for Structural Durability and System Reliability LBF,undefined
来源
Experimental Techniques | 2020年 / 44卷
关键词
friction model; Uncertainty quantification; inference; Parameter calibration;
D O I
暂无
中图分类号
学科分类号
摘要
Load redistribution in smart load bearing mechanical structures can be used to reduce negative effects of damage or to prevent further damage if predefined load paths become unsuitable. Using controlled friction brakes in joints of kinematic links can be a suitable way to add dynamic functionality for desired load path redistribution. Therefore, adequate friction models are needed to predict the friction behavior. Possible models that can be used to model friction vary from simple static to complex dynamic models with increasing sophistication in the representation of friction phenomena. The LuGre-model is a widely used dynamic friction model for friction compensation in high precision control systems. It needs six parameters for describing the friction behavior. These parameters are coupled to an unmeasurable internal state variable, therefore, parameter identification is challenging. Conventionally, optimization algorithms are used to identify the LuGre-parameters deterministically. In this paper, the parameter identification and calibration is formulated to achieve model prediction that is statistically consistent with the experimental data. By use of the R2 sensitivity analysis, the most influential parameters are selected for calibration. Subsequently, the Bayesian inference based calibration procedure using experimental data is performed. Uncertainty represented in former wide parameter ranges can be reduced and, thus, model prediction accuracy can be increased.
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页码:369 / 382
页数:13
相关论文
共 62 条
[1]  
Freidovich L(2010)Lugre-model-based friction compensation IEEE Trans Control Syst Technol 18 194-200
[2]  
Robertsson A(2000)An integrated friction model structure with improved presliding behavior for accurate friction compensation IEEE Trans Autom Control 45 675-686
[3]  
Shiriaev A(2001)The role of friction in mechanical joints Appl Mech Rev 54 93-195
[4]  
Johansson R(1998)Friction models and friction compensation Europ J Control 4 176-100
[5]  
Swevers J(2014)Dahl and Lugre dynamic friction models — the analysis of selected properties Mech Mach Theory 73 91-86
[6]  
Al-Bender F(1999)Efficient simulation of motions involving coulomb friction J Guid Control Dyn 22 78-114
[7]  
Ganseman CG(2008)Revisiting the Lugre friction model IEEE Control Syst 28 101-8
[8]  
Projogo T(2016)Dynamic friction parameter identification method with Lugre model for direct-drive rotary torque motor Math Probl Eng 2016 1-583
[9]  
Gaul L(2008)Computer model calibration using high-dimensional output J Am Stat Assoc 103 570-234
[10]  
Nitsche R(2012)Uncertainty quantification in model verification and validation as applied to large scale historic masonry monuments Eng Struct 43 221-710