首页> 外文会议>SAE World Congress Experience >Online Optimization based Predictive Energy Management Functionality of Plug-In Hybrid Powertrain using Trajectory Planning Methods
【24h】

Online Optimization based Predictive Energy Management Functionality of Plug-In Hybrid Powertrain using Trajectory Planning Methods

机译:基于在线优化使用轨迹规划方法的插件混合动力总成的预测能源管理功能

获取原文

摘要

Powertrain systems exploiting information from vehicle connectivity have widened the system boundary resulting in additional degrees-of-freedom for predictive trajectory planning. Heuristic methods based on component characteristics are currently widely used for Energy Management (EM) functionality of hybridized powertrains. Despite their better usability, increased calibration effort and sensitivity to synthetic calibration scenarios are drawbacks of such control methods. Availability of predictive data, better computing power and challenges posed by various scenarios in real driving, have led to interest in online-optimizing EM functionality. Equivalent Consumption Minimization Strategy (ECMS) approaches based on Indirect optimal control /Pontryagin Minimum principle have difficulty in handling inequality state constraints. Extensions of ECMS make use of modifications to the equivalence factor/co-state, based on prediction of driving conditions. The proposed method uses limited time horizon prediction data to optimize engine on/off state and torque split among the energy converters using direct optimal control. Along with its ability to handle inequality constraints on the system states directly, the proposed method does not require an explicit model of additional dynamics. Further, the developed EM functionality adapts in real-time based on situation-aware prediction along with offering possibility to tune online the optimization process using heuristics on constraint-limits. These advantages along with this real-time capability and flexibility to handle change of control objectives as well as variation of control weighting reduces calibration effort. Results of the functionality shall be compared with predictive ECMS method. The functionalities developed along with their real-time capability will be demonstrated using the Combustion Engine Assist (CEA) concept.
机译:动力总成系统利用车辆连接信息已经扩大了系统边界,从而导致预测轨迹规划的额外自由度。基于组件特性的启发式方法目前广泛用于杂交动力的能量管理(EM)功能。尽管有了更好的可用性,但对合成校准方案的校准工作增加和敏感性是这种控制方法的缺点。可用性数据,在实际驾驶中的各种场景所带来的更好的计算能力和挑战,导致在线优化EM功能感兴趣。基于间接最佳控制/ Pontryagin最小原则的等效消费最小化策略(ECMS)方法难以处理不等式状态约束。 ECMS的扩展基于预测驾驶条件的预测,ECMS利用修改对等效系数/共同。该方法使用有限的时间范围预测数据来优化发动机开/关状态,并使用直接最佳控制在能量转换器之间分离扭矩。随着它直接处理系统状态的不等式约束的能力,所提出的方法不需要明确的额外动态模型。此外,开发的EM功能基于情况感知预测,以及提供使用启发式对约束限制的启发式来调整优化过程的可能性。这些优点随着这种实时能力和灵活性地处理控制目标的变化以及控制权力的变化降低了校准工作。应与预测ECMS方法进行比较功能的结果。使用燃烧发动机辅助(CEA)概念来证明与其实时能力一起开发的功能。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号