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Shift control of vehicle automatic transmission based on traffic congestion identification

机译:基于交通拥堵识别的车辆自动变速器的换档控制

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摘要

This work builds a T-S fuzzy neural network that identifies traffic congestion conditions by using average vehicle speed, average throttle opening and frequency of brake pedal actuation as evaluation factors. A strategy that controls the shift of vehicle automatic transmission based on the identified congestion conditions is also devised. This strategy divides the vehicle automatic transmission system into the upper identification and decision-making layer and the lower shift execution layer. Simulation and real vehicle tests are performed to verify the effectiveness of the proposed strategy. The results show that congestion conditions can be accurately identified by using the T-S fuzzy neural network and that the proposed layered correction shift control strategy can prevent the frequent changing of gears under congestion conditions, thereby reducing the wear of the shift execution parts and the braking system.
机译:这项工作建立了一种T-S模糊神经网络,通过使用平均车速,平均节气门打开和制动踏板驱动频率作为评估因子来识别交通拥堵条件。 还设计了一种控制车辆自动变速器换档的策略,也设计了基于所识别的拥塞条件。 该策略将车辆自动变速器系统划分为上识别和决策层和下换档执行层。 进行仿真和实际车辆测试以验证所提出的策略的有效性。 结果表明,通过使用TS模糊神经网络可以准确地识别拥塞条件,并且所提出的分层校正换档控制策略可以防止在拥塞条件下频繁地改变齿轮,从而减少换档执行部件和制动系统的磨损 。

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