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Support vector machine–based driving cycle recognition for dynamic equivalent fuel consumption minimization strategy with hybrid electric vehicle:

机译:基于支持向量机的驾驶循环识别,用于混合动力电动汽车的动态等效油耗最小化策略:

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For a great influence on the fuel economy and exhaust, driving cycle recognition is becoming more and more widely used in hybrid electric vehicles. The purpose of this study is to develop a method to identify the type of driving cycle in real time with better accuracy and apply the driving cycle recognition to minimize the fuel consumption with dynamic equivalent fuel consumption minimization strategy. The support vector machine optimized by the particle swarm algorithm is created for building driving cycle recognition model. Furthermore,the influence of the two parameters of window width and window moving velocity on the accuracy is also analyzed in online application. A case study of driving cycle in a medium-sized city is introduced based on collecting four typical driving cycle data in real vehicle test. A series of characteristic parameters are defined and principal component analysis is used for data processing. Finally, the driving cycle recognition model is used for equivalent fuel consumption min...
机译:为了对燃油经济性和排气产生巨大影响,驾驶循环识别正越来越广泛地用于混合动力电动汽车中。本研究的目的是开发一种方法,以更高的精度实时识别驾驶循环的类型,并应用驾驶循环识别功能以动态等效油耗最小化策略将油耗最小化。创建了通过粒子群算法优化的支持向量机,用于建立行驶周期识别模型。此外,在在线应用中还分析了窗口宽度和窗口移动速度这两个参数对精度的影响。在实际车辆测试中,通过收集四个典型的驾驶循环数据,介绍了一个中等城市的驾驶循环的案例研究。定义了一系列特征参数,并将主成分分析用于数据处理。最后,将驾驶循环识别模型用于等效油耗最小...

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