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Predictive Energy Management Strategies in Virtual Driving Tests: Early Evaluation of Networked Controller Functions in Realistic Use Cases

机译:虚拟驾驶测试中的预测性能源管理策略:实际使用案例中对网络控制器功能的早期评估

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Research and/or Engineering Questions/Objective The evaluation of vehicle characteristics at an early phase of functional development is a key task in the definition of a viable system and function architecture. Today this is complicated by the fact that full vehicle characteristics, in particular those of modern hybrid and electric vehicles, are dependent on a broad range of electrical, mechanical, thermal and control-related partial aspects. In addition to the current driving status and information on the environment, modern energy management systems (e.g. control systems, range, charging and thermal management) also require predictive information on the driving route to be expected. This includes, for example, uphill road grades, curve radii, speed limits, number of lanes, urban and residential areas, intersections and traffic lights. All together, the intelligent fusion of this information provides for increased safety and energy efficiency. Methodology These additional functions however result in additional complexity in the development process, which must be controlled. Nevertheless many questions already arise in a very early phase of development, in particular in the interaction with the actual utilization profile, such as route, driver and environment characteristics in the various target regions of the future vehicle. This article shows new ways and methods of how the functions and total vehicle characteristics can be evaluated in virtual driving tests in the early phase of development. The method provides a major support for the development and evaluation of energy management systems in the complete vehicle environment with corresponding system interactions: The evaluation of energy states, losses and fuel consumptions in realistic utilization profiles, such as route, driver and environment characteristics in the various target regions of the future vehicle. Results In addition to the evaluation of the individual target functions in a broad range of different scenarios, the correct designs of the individual system components in the complete vehicle can also be verified. The performance and robustness of the operating strategy, as well as the corresponding fuel consumption or CO_2 emission values in the range of worldwide conditions of use can also be predicted with the different choice of route and driver types and the amount of traffic typical for the region. Limitations of this study Furthermore, positive fuel consumption effects are identified in the virtual driving test which cannot be recognized due to the insufficient repetitive accuracy in actual traffic. During this, the method can be consistently and uniformly used in the x-in-the-loop development process. As soon as hardware components like the engine, drive train or battery are available, these actual components can already be tested in the virtual driving test in combination with the virtual vehicle in accordance with the principles described. Conclusion As a result, the system and functional architecture can already be comprehensively evaluated in a very early development phase and the degree of integration maturity in the later, actual integration levels can be raised to a considerably higher standard, minimizing time-consuming, expensive development loops.
机译:研究和/或工程问题/目的在功能开发的早期阶段评估车辆特性是定义可行的系统和功能架构的关键任务。如今,由于整车特性(尤其是现代混合动力和电动车的特性)取决于广泛的电气,机械,热和控制相关的部分方面,这一事实使情况变得更加复杂。除了当前的驾驶状态和有关环境的信息外,现代能源管理系统(例如控制系统,范围,充电和热管理)还需要有关预期驾驶路线的预测信息。例如,这包括上坡道路坡度,弯道半径,速度限制,车道数量,城市和居民区,十字路口和交通信号灯。总之,此信息的智能融合可提高安全性和能源效率。方法论然而,这些额外的功能导致开发过程中额外的复杂性,必须加以控制。然而,在开发的非常早期阶段就已经出现了许多问题,特别是在与实际使用情况的交互中,例如未来车辆各个目标区域中的路线,驾驶员和环境特征。本文介绍了在开发的早期阶段如何在虚拟驾驶测试中评估功能和总体车辆特性的新方法。该方法为具有相应系统交互作用的完整车辆环境中的能源管理系统的开发和评估提供了主要支持:评估实际使用情况下的能量状态,损耗和燃料消耗,例如道路,驾驶员和环境特征。未来车辆的各个目标区域。结果除了在广泛的不同场景下评估单个目标功能外,还可以验证整车中各个系统组件的正确设计。还可以通过选择不同的路线和驾驶员类型以及该地区典型的交通量来预测运营策略的性能和可靠性,以及在全球使用条件范围内的相应燃料消耗或CO_2排放值。该研究的局限性此外,在虚拟驾驶测试中确定了积极的油耗效果,由于实际交通中的重复精度不足,因此无法识别。在此期间,该方法可以在循环开发过程中一致且统一地使用。一旦提供了诸如发动机,传动系统或电池之类的硬件组件,就可以根据所述原理在虚拟驾驶测试中结合虚拟车辆对这些实际组件进行测试。结论因此,可以在非常早期的开发阶段就对系统和功能体系结构进行全面评估,而在后期的集成成熟度方面,可以将实际的集成水平提高到相当高的标准,从而最大程度地减少耗时,昂贵的开发循环。

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