Many organizations are increasingly relying on design simulation rather than expensive and time-consuming prototype testing for product evaluation. However, uncertainties in analytical and computational methods need to be understood in order to improve confidence in their use, and models need to be validated. This paper presents a case study of a MacPherson strut automotive suspension analysis, and evaluates the uncertainties in the modelling of this complex dynamic problem using a simplified analytical model and a complex computational model. In both cases, variability in design variables is characterized using probabilistic design methods. As a first step, the model variables are described by assumed datasets, which are collated from seve...
This thesis describes the analysis of lower automobile suspension arm using stochastic design improv...
International audienceThe design of cars is mainly based on the use of computational models to analy...
Modelling of uncertainty increases trust in analysis tools by providing predictions with confidence ...
Mathematical models of a suspension strut such as an aircraft landing gear are utilized by engineers...
Mathematical models of a suspension strut such as an aircraft landing gear are utilized by engineers...
In the field of structural engineering, mathematical models are utilized to predict thedynamic respon...
Nowadays, mechanical industries operate in a highly competitive environment, therefore the process o...
Mathematical models of a suspension strut such as an aircraft landing gear are utilized by engineers...
In this paper, a modular spring-damper system that is integrated into a spacetruss structure is cons...
Different mathematical models can be developed to represent the dynamic behavior of structural syste...
The authors compare direct probability and non-probability parametric uncertainty analysis for decis...
The paper describes a study carried out by Dipartimento di Meccanica Politecnico di Milano, aimed at...
The automotive industry is moving towards shorter development cycles for new car generations. This m...
AbstractRoad vehicles are subject to random excitation by the unevenness of the road. For a dynamica...
Uncertainty is an important design constraint when configuring a dynamic mechanical system that is s...
This thesis describes the analysis of lower automobile suspension arm using stochastic design improv...
International audienceThe design of cars is mainly based on the use of computational models to analy...
Modelling of uncertainty increases trust in analysis tools by providing predictions with confidence ...
Mathematical models of a suspension strut such as an aircraft landing gear are utilized by engineers...
Mathematical models of a suspension strut such as an aircraft landing gear are utilized by engineers...
In the field of structural engineering, mathematical models are utilized to predict thedynamic respon...
Nowadays, mechanical industries operate in a highly competitive environment, therefore the process o...
Mathematical models of a suspension strut such as an aircraft landing gear are utilized by engineers...
In this paper, a modular spring-damper system that is integrated into a spacetruss structure is cons...
Different mathematical models can be developed to represent the dynamic behavior of structural syste...
The authors compare direct probability and non-probability parametric uncertainty analysis for decis...
The paper describes a study carried out by Dipartimento di Meccanica Politecnico di Milano, aimed at...
The automotive industry is moving towards shorter development cycles for new car generations. This m...
AbstractRoad vehicles are subject to random excitation by the unevenness of the road. For a dynamica...
Uncertainty is an important design constraint when configuring a dynamic mechanical system that is s...
This thesis describes the analysis of lower automobile suspension arm using stochastic design improv...
International audienceThe design of cars is mainly based on the use of computational models to analy...
Modelling of uncertainty increases trust in analysis tools by providing predictions with confidence ...