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首页> 外文期刊>Applied Energy >Using portable emissions measurement systems (PEMS) to derive more accurate estimates of fuel use and nitrogen oxides emissions from modern Euro 6 passenger cars under real-world driving conditions
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Using portable emissions measurement systems (PEMS) to derive more accurate estimates of fuel use and nitrogen oxides emissions from modern Euro 6 passenger cars under real-world driving conditions

机译:使用便携式排放测量系统(PEMS)在现实驾驶条件下从现代Euro 6乘用车中得出更准确的燃料使用和氮氧化物排放估算

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Data from portable emissions measurement systems (PEMS) and other sources have allowed the discrepancy between type approval and real-world fuel economy and nitrogen oxides (NOx) emissions to be both identified and quantified. However, a gap in the knowledge persists because identifying this discrepancy does not allow us to predict real-world fuel economy and emissions accurately. We address this gap in the knowledge using a bottom-up approach: a PEMS is used across a range of Euro 6 petrol and diesel vehicles, from which internally consistent powertrain models are derived. These training vehicles are simulated over 20 real-world and regulated driving cycles. 26 metrics representing driving, vehicle and ambient characteristics are used to develop quantile regression (QR) models for three vehicle groups: direct-injection petrol vehicles with three way catalysts; diesel vehicles with selective catalytic reduction; and diesel vehicles with lean NO, traps. 95% prediction intervals are used to assess the predictive accuracy of the QR models from a set of validation vehicles. Across the vehicle groups, QR models for both fuel economy and NO emissions depended on the dynamics of the driving cycles more than the engine characteristics or ambient conditions. The 95% prediction interval for fuel economy enclosed most of the observed values from the PEMS test, with similar prediction error to COPERT in most cases. The benefits of the QR approach were more pronounced for NO emissions, where the majority of PEMS observed data was enclosed in the 95% PI and median prediction error was up to two times lower than COPERT.
机译:来自便携式排放物测量系统(PEMS)和其他来源的数据使类型认可与实际燃油经济性和氮氧化物(NOx)排放之间的差异得以识别和量化。但是,知识上的差距仍然存在,因为识别这种差异并不能使我们准确地预测现实世界的燃油经济性和排放量。我们使用自下而上的方法来解决知识方面的这一空白:在一系列Euro 6汽油和柴油车辆上使用PEMS,从中得出内部一致的动力总成模型。这些训练车在20个真实世界中进行了模拟,并具有受控的行驶周期。使用代表驾驶,车辆和环境特征的26个度量标准来为三个车辆组开发分位数回归(QR)模型:具有三元催化剂的直喷汽油车;选择性催化还原柴油车;和带有稀薄NO的柴油车辆,疏水阀。 95%的预测间隔用于评估来自一组验证工具的QR模型的预测准确性。在所有车辆组中,燃油经济性和NO排放的QR模型不仅取决于发动机特性或环境条件,还更多地取决于行驶循环的动力学。燃油经济性的95%预测间隔包含了来自PEMS测试的大部分观察值,在大多数情况下,其预测误差与COPERT类似。 QR方法的优势对于NO排放更为明显,其中大多数PEMS观测数据都包含在95%PI中,并且中值预测误差比COPERT低了两倍。

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