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Multi-Mode Driving Control of a Parallel Hybrid Electric Vehicle Using Driving Pattern Recognition

机译:基于驾驶模式识别的并联混合动力汽车多模式驾驶控制

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Vehicle performance such as fuel consumption and catalyst-out emissions is affected by a driving pattern, which is defined as a driving cycle with grades in this study. To optimize the vehicle performances on a temporary driving pattern, we developed a multi-mode driving control algorithm using driving pattern recognition and applied it to a parallel hybrid electric vehicle (parallel HEV). The multi-mode driving control is defined as the control strategy which switches a current driving control algorithm to the algorithm optimized in a recognized driving pattern. For this purpose, first, we selected six representative driving patterns, which are composed of three urban driving patterns, one expressway driving pattern, and two suburban driving patterns. A total of 24 parameters such as average cycle velocity, positive acceleration kinetic energy, stop time/total time, average acceleration, and average grade are chosen to characterize the driving patterns. Second, in each representative driving pattern, control parameters of a parallel HEV are optimized by Taguchi method though the fuel-consumption and emissions simulations. And these results are compared with those by parametric study. There are seven control parameters, six of them are weighting factors of performance measures for deciding the ratio of engine power to required power from driving load. And the other is the charging/discharging method of battery. Finally, in driving, a neural network (the Hamming network) decides periodically which representative driving pattern is closest to a current driving pattern by comparing the correlation related to 24 characteristic parameters. And then the current driving control algorithm is switched to the optimal one, assuming the driving pattern does not change in the next period.
机译:诸如油耗和催化剂排放等车辆性能受行驶模式的影响,在本研究中行驶模式被定义为具有等级的行驶周期。为了在临时驾驶模式下优化车辆性能,我们开发了一种使用驾驶模式识别的多模式驾驶控制算法,并将其应用于并行混合动力电动汽车(并行HEV)。多模式行驶控制被定义为将当前的行驶控制算法切换为以识别的行驶模式优化的算法的控制策略。为此,首先,我们选择了六个有代表性的驾驶模式,这些模式由三种城市驾驶模式,一种高速公路驾驶模式和两种郊区驾驶模式组成。总共选择了24个参数(例如平均循环速度,正加速度动能,停止时间/总时间,平均加速度和平均坡度)来表征驾驶模式。其次,在每个代表性的驾驶模式中,通过燃料消耗和排放模拟,通过田口方法对并联混合动力汽车的控制参数进行了优化。并将这些结果与参数研究相比较。有七个控制参数,其中六个是性能度量的加权因子,用于确定发动机功率与来自驱动负载的所需功率之比。另一种是电池的充电/放电方法。最后,在驾驶中,神经网络(汉明网络)通过比较与24个特征参数有关的相关性,周期性地确定哪个代表驾驶模式最接近当前驾驶模式。然后,假设驱动模式在下一个周期中不发生变化,则当前的驱动控制算法将切换到最佳算法。

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