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首页> 外文期刊>International Journal of Automotive Technology >Expanding transmission capacity of can systems using dual communication channels with kalman prediction
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Expanding transmission capacity of can systems using dual communication channels with kalman prediction

机译:使用带有卡尔曼预测的双通信通道扩展罐系统的传输容量

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摘要

The controller area network (CAN) protocol is widely used for in-vehicle network (IVN) systems, and many automotive companies also use the CAN in chassis network systems. However, the increasing number of electronic control units (ECUs) dictated by the need for more intelligent and fuel-efficient functions requires an IVN system with a greater transmission capacity and less network delay. Automotive companies have tried several approaches such as segmenting CAN systems and developing time-triggered protocols. This paper presents a practical method for increasing the transmission capacity and reducing the network delay in CAN systems using dual communication channels with a traffic-balancing algorithm based on Kalman prediction to forecast the traffic on each channel and allocate frames to the one that is most appropriate. An experimental testbed using commercial microcontrollers with two or more CAN protocol controllers was used to demonstrate the feasibility of the Kalman traffic-balancing algorithm. Experimental results show that the traffic-balancing CAN system with Kalman prediction reduced the transmission delay of all priority messages compared to that of a simple method, such as a channel-switching CAN, without sacrificing the performance for high-priority messages.
机译:控制器局域网(CAN)协议广泛用于车载网络(IVN)系统,许多汽车公司也将CAN用于底盘网络系统。但是,由于对更智能,更省油的功能的需求而导致的电子控制单元(ECU)数量的增加,要求IVN系统具有更大的传输能力和更少的网络延迟。汽车公司已经尝试了几种方法,例如,分割CAN系统和开发时间触发协议。本文提出了一种实用的方法,用于在双系统通信的CAN系统中使用基于Kalman预测的流量平衡算法来预测每个通道上的流量并将帧分配给最合适的帧,从而在使用双通信通道的CAN系统中增加传输容量并减少网络延迟。 。使用带有两个或多个CAN协议控制器的商用微控制器的实验测试台被用来证明Kalman流量平衡算法的可行性。实验结果表明,与简单的方法(例如通道切换CAN)相比,具有Kalman预测的流量平衡CAN系统减少了所有优先级消息的传输延迟,而不会牺牲高优先级消息的性能。

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