Quest Motors电动汽车控制单元的人工智能速度轮廓算法

M. V. G. Aziz, Niko Questera, H. Hindersah
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引用次数: 0

摘要

市场上大多数电动汽车使用的油门杠杆直接连接到逆变器或电机控制器上。因此,它是不可能的骑手确定所需或所需的速度配置文件。可用的模式,如生态,城市和运动速度模式由电机控制器固件携带不是很不言自明。车辆控制单元(VCU)是一种可编程装置,旨在将油门杆数字化,并在油门杆与电机控制器之间架起沟通的桥梁。这就是我们,Quest Motors,开发VCU的硬件和软件。我们开发了一种基于人工智能的算法,该算法将根据道路概况、电池状况和驾驶者的驾驶风格动态改变驾驶特征,这是对单纯静态模式(生态、城市、运动)的重大升级。这不仅是为了进一步提高车辆的能耗,也是为了为驾驶员提供最佳的舒适驾驶体验。该方法的实现可以通过对速度分布、温度、电流和其他各种参数的调整,将电池组的功耗降低10%。最后但并非最不重要的是,电动汽车的速度曲线通常以线性曲线的形式出现,现在已经不再是这样了。该算法将不断学习接收到的数据,为特定骑手生成最佳速度曲线,例如指数曲线或对数曲线。
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Speed Profile Algorithm using Artificial Intelligence for Vehicle Control Unit on Quest Motors Electric Vehicles
The throttle levers used by the majority of the electric vehicles in the market are directly connected to the inverter or motor controller. As a result, it is impossible for the rider to determine the desired or required speed profile. The available modes, such as eco, urban, and sport speed modes carried by the motor controller firmware are not very self-explanatory. A Vehicle Control Unit (VCU) is a programmable device meant to digitize the throttle lever and bridge the communication between the throttle lever and the motor controller. Here we are, Quest Motors, developing both the hardware and software of the VCU. We have developed an artificial intelligence-based algorithm that will dynamically change the riding profiles based on the road profiles, the battery conditions, and the rider’s driving style, a major upgrade from the mere static modes (eco, urban, sport). This aims not only to further improve the vehicle’s energy consumption but also to provide the optimal comfortable driving experience for the drivers. The implementation of this method can reduce the battery pack’s power consumption by up to 10% through the adjustments of the speed profile, temperature, current, and various other parameters. Last but not least, the speed profile in electric vehicles which is usually in the form of a linear curve, is no longer the case. The algorithm will continuously learn the data it receives to generate the best speed profile for the particular rider, such as an exponential curve or a logarithmic curve.
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