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首页> 外文期刊>Current Journal of Applied Science and Technology >The Convergence of Normalized VehicularRolling Friction Coefficient (Crr) by DynamicHigh-Speed Imaging and Least SquareOptimization Techniques
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The Convergence of Normalized VehicularRolling Friction Coefficient (Crr) by DynamicHigh-Speed Imaging and Least SquareOptimization Techniques

机译:动态高速成像和最小二乘优化技术对归一化车辆滚动摩擦系数(Crr)的收敛

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The paper describes a simple, small scale and low cost yet comprehensive approach to quantifying the Coefficient of Rolling Resistance/Friction ( Crr ) also known as the Rolling Resistance Coefficient in automobiles. Crr is usually defined as the amount of force required to overcome the hysteresis of the material during tire rotation, where reduced Crr tires can save 1.5–4.5% of automotive fuel consumption. Automotive Standards from the Society of Automotive Engineers use to quantify Crr namely SAE J2452 and SAE J1269 were briefly introduced. Methods of coast down and speed trap tests were conducted under varying body weighted conditions to find the coefficient value, where a high speed camera monitored the motion of the vehicle. The experiment produced different equations of motion which were then solved analytically by numerical analysis techniques to converge on the rolling friction coefficient. A scaled model was used to run dynamic tests and the Reynolds Number (Re) was used to establish a relationship between model and full scale vehicle velocities. Initial guesses in the least square optimization iterations provided coefficient values where drag forces were normalized by assuming constant drag coefficient ( C _( D ) of 0.40) and then neglecting its contribution during vehicle motion due to the test model size, resulting in a mean Crr of 0.0116. The study results were compared with 3 studies and also against an automotive Crr model. Schmidt 2010 Dynatest Green Road report shares a high 43% error, while the National Academy of Sciences, 2006 and Gillespie, 1992 yielded errors of 10.5% and 7.2%. The recent mathematical model of Ehsani 2009 yielded an average Crr value error of 2.3% (with individual test averages of 0.80%). Direct scaling and multiplying abilities were attributed for quantifying the normalized value in the study.
机译:本文介绍了一种简单,小规模且低成本的综合方法来量化滚动阻力/摩擦系数(Crr),也称为汽车滚动阻力系数。通常将Crr定义为克服轮胎旋转过程中材料滞后所需要的力的大小,减少Crr轮胎可以节省1.5%至4.5%的汽车燃料消耗。简要介绍了汽车工程师协会的汽车标准来量化Crr,即SAE J2452和SAE J1269。在不同的体重条件下进行滑行下降和速度陷阱测试的方法,以找到系数值,高速摄像机在其中监视车辆的运动。实验产生了不同的运动方程,然后通过数值分析技术对其进行求解,以收敛于滚动摩擦系数。比例模型用于运行动态测试,雷诺数(Re)用于建立模型与全尺寸车辆速度之间的关系。最小二乘优化迭代中的初步猜测提供了系数值,在该系数值中,通过假定恒定的阻力系数(C _(D)为0.40)对阻力进行了归一化,然后由于测试模型的大小而忽略了其在车辆运动过程中的贡献,从而得出平均Crr为0.0116。将研究结果与3项研究进行了比较,并与汽车Crr模型进行了比较。施密特(Schmidt)2010年Dynatest Green Road报告的错误率高达43%,而2006年美国国家科学院和1992年的吉莱斯皮(Gillespie)的错误率分别为10.5%和7.2%。 Ehsani 2009的最新数学模型产生的平均Crr值误差为2.3%(单个测试平均值为0.80%)。直接缩放和乘法能力归因于量化研究中的标准化值。

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