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Modeling Transit Bus Fuel Consumption on the Basis of Cycle Properties

机译:基于循环特性的公交巴士油耗建模

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摘要

A method exists to predict heavy-duty vehicle fuel economy and emissions over an "unseen" cycle or during unseen on-road activity on the basis of fuel consumption and emissions data from measured chassis dynamometer test cycles and properties (statistical parameters) of those cycles. No regression is required for the method, which relies solely on the linear association of vehicle performance with cycle properties. This method has been advanced and examined using previously published heavy-duty truck data gathered using the West Virginia University heavy-duty chassis dynamometer with the trucks exercised over limited test cycles. In this study, data were available from a Washington Metropolitan Area Transit Authority emission testing program conducted in 2006. Chassis dynamometer data from two conventional diesel buses, two compressed natural gas buses, and one hybrid diesel bus were evaluated using an expanded driving cycle set of 16 or 17 different driving cycles. Cycle properties and vehicle fuel consumption measurements from three baseline cycles were selected to generate a linear model and then to predict unseen fuel consumption over the remaining 13 or 14 cycles. Average velocity, average positive acceleration, and number of stops per distance were found to be the desired cycle properties for use in the model. The methodology allowed for the prediction of fuel consumption with an average error of 8.5% from vehicles operating on a diverse set of chassis dynamometer cycles on the basis of relatively few experimental measurements. It was found that the data used for prediction should be acquired from a set that must include an idle cycle along with a relatively slow transient cycle and a relatively high speed cycle. The method was also applied to oxides of nitrogen prediction and was found to have less predictive capability than for fuel consumption with an average error of 20.4%.
机译:存在一种方法,其基于来自测量的底盘测功机测试周期的油耗和排放数据以及这些周期的特性(统计参数)来预测“看不见的”循环或在不可见的道路活动期间的重型车辆燃油经济性和排放。该方法不需要回归,它仅依赖于车辆性能与循环特性的线性关联。使用以前发布的重型卡车数据(使用西弗吉尼亚大学重型底盘测功机收集这些数据,并在有限的测试周期内进行测试)对这种方法进行了改进和检验。在这项研究中,数据可从2006年进行的华盛顿大都会运输管理局排放测试计划获得。使用扩展的驾驶循环套件对来自两辆常规柴油客车,两辆压缩天然气客车和一辆混合柴油客车的底盘测功机数据进行了评估。 16或17个不同的驾驶循环。选择三个基线循环的循环特性和车辆油耗测量值以生成线性模型,然后预测剩余的13或14个循环中看不见的油耗。发现平均速度,平均正加速度和每距离的停止次数是在模型中使用的理想循环特性。该方法可以在相对较少的实验测量基础上,预测以不同的底盘测功机周期运行的车辆的燃油消耗,平均误差为8.5%。已经发现,用于预测的数据应该从一组中获取,该组必须包括一个空闲周期以及一个相对较慢的瞬态周期和一个相对较高的周期。该方法还适用于氮氧化物的预测,并且发现其预测能力比燃料消耗的预测能力差,平均误差为20.4%。

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  • 来源
    《Journal of the air & waste management association》 |2011年第4期|p.443-452|共10页
  • 作者单位

    Me-chanical and Aerospace Engineering, College of Engineer-ing and Mineral Resources, ESB Evansdale Drive, Room G-70, Morgantown, WV 26506-6106;

    Center for Alternative Fuels, Engines and Emissions, Department of Mechanical and Aerospace Engineering, West Virginia University, Morgantown, WV;

    Center for Alternative Fuels, Engines and Emissions, Department of Mechanical and Aerospace Engineering, West Virginia University, Morgantown, WV;

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