Nonlinear Stochastic Analysis of Motorcycle Dynamics

Off-road and racing motorcycles require a particular setup of the suspension to improve the comfort and the safety of the rider. Further, due to ground unevenness, off-road motorcycle suspensions usually experience extreme and erratic excursions in performing their function. In this regard, the adop...

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Bibliographic Details
Main Author: Robledo Ricardo, Luis
Other Authors: Spanos, Pol D.
Format: Others
Language:English
Published: 2013
Subjects:
Online Access:http://hdl.handle.net/1911/72032
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spelling ndltd-RICE-oai-scholarship.rice.edu-1911-720322013-09-18T03:28:46ZNonlinear Stochastic Analysis of Motorcycle DynamicsRobledo Ricardo, LuisMotorcycle dynamicsNonlinear mechanicsStochastic dynamicsMonte Carlo simulationAuto-regressive filterStatistical linearizationMotorcycle modelingRoad roughnessOff-road and racing motorcycles require a particular setup of the suspension to improve the comfort and the safety of the rider. Further, due to ground unevenness, off-road motorcycle suspensions usually experience extreme and erratic excursions in performing their function. In this regard, the adoption of nonlinear devices, such as progressive springs and hydro pneumatic shock absorbers, can help limiting both the acceleration experienced by the sprung mass and the excursions of the suspensions. For dynamic analysis purposes, this option involves the solution of the nonlinear differential equations that govern the motion of the motorcycle, which is excited by the stochastic road ground profile. In this study a 4 degrees-of-freedom (4-DOF) nonlinear motorcycle model is considered. The model involves suspension elements with asymmetric behaviour. Further, it is assumed that the motorcycle is exposed to loading of a stochastic nature as it moves with a specified speed over a road profile defined by a particular power spectrum. It is shown that a meaningful analysis of the motorcycle response can be conducted by using the technique of statistical linearization. The validity of the proposed approach is established by comparison with results from pertinent Monte Carlo studies. In this context the applicability of auto-regressive (AR) filters for efficient implementation of the Monte Carlo simulation is pointed out. The advantages of these methods for the synthesis of excitation signals from a given power spectrum, are shown by comparison with other methods. It is shown that the statistical linearization method allows the analysis of multi-degree-of-freedom (M-DOF) systems that present strong nonlinearities, exceeding other nonlinear analysis methods in both accuracy and applicability. It is expected that the proposed approaches, can be used for a variety of parameter/ride quality studies and as preliminary design tool by the motorcycle industry.Spanos, Pol D.2013-09-16T16:36:39Z2013-09-16T16:36:43Z2013-09-16T16:36:39Z2013-09-16T16:36:43Z2013-052013-09-16May 20132013-09-16T16:36:43Zthesistextapplication/pdfhttp://hdl.handle.net/1911/72032123456789/ETD-2013-05-411eng
collection NDLTD
language English
format Others
sources NDLTD
topic Motorcycle dynamics
Nonlinear mechanics
Stochastic dynamics
Monte Carlo simulation
Auto-regressive filter
Statistical linearization
Motorcycle modeling
Road roughness
spellingShingle Motorcycle dynamics
Nonlinear mechanics
Stochastic dynamics
Monte Carlo simulation
Auto-regressive filter
Statistical linearization
Motorcycle modeling
Road roughness
Robledo Ricardo, Luis
Nonlinear Stochastic Analysis of Motorcycle Dynamics
description Off-road and racing motorcycles require a particular setup of the suspension to improve the comfort and the safety of the rider. Further, due to ground unevenness, off-road motorcycle suspensions usually experience extreme and erratic excursions in performing their function. In this regard, the adoption of nonlinear devices, such as progressive springs and hydro pneumatic shock absorbers, can help limiting both the acceleration experienced by the sprung mass and the excursions of the suspensions. For dynamic analysis purposes, this option involves the solution of the nonlinear differential equations that govern the motion of the motorcycle, which is excited by the stochastic road ground profile. In this study a 4 degrees-of-freedom (4-DOF) nonlinear motorcycle model is considered. The model involves suspension elements with asymmetric behaviour. Further, it is assumed that the motorcycle is exposed to loading of a stochastic nature as it moves with a specified speed over a road profile defined by a particular power spectrum. It is shown that a meaningful analysis of the motorcycle response can be conducted by using the technique of statistical linearization. The validity of the proposed approach is established by comparison with results from pertinent Monte Carlo studies. In this context the applicability of auto-regressive (AR) filters for efficient implementation of the Monte Carlo simulation is pointed out. The advantages of these methods for the synthesis of excitation signals from a given power spectrum, are shown by comparison with other methods. It is shown that the statistical linearization method allows the analysis of multi-degree-of-freedom (M-DOF) systems that present strong nonlinearities, exceeding other nonlinear analysis methods in both accuracy and applicability. It is expected that the proposed approaches, can be used for a variety of parameter/ride quality studies and as preliminary design tool by the motorcycle industry.
author2 Spanos, Pol D.
author_facet Spanos, Pol D.
Robledo Ricardo, Luis
author Robledo Ricardo, Luis
author_sort Robledo Ricardo, Luis
title Nonlinear Stochastic Analysis of Motorcycle Dynamics
title_short Nonlinear Stochastic Analysis of Motorcycle Dynamics
title_full Nonlinear Stochastic Analysis of Motorcycle Dynamics
title_fullStr Nonlinear Stochastic Analysis of Motorcycle Dynamics
title_full_unstemmed Nonlinear Stochastic Analysis of Motorcycle Dynamics
title_sort nonlinear stochastic analysis of motorcycle dynamics
publishDate 2013
url http://hdl.handle.net/1911/72032
work_keys_str_mv AT robledoricardoluis nonlinearstochasticanalysisofmotorcycledynamics
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