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首页> 外文期刊>Systems, Man and Cybernetics, IEEE Transactions on >Simultaneous Input and State Estimation for Integrated Motor-Transmission Systems in a Controller Area Network Environment via an Adaptive Unscented Kalman Filter
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Simultaneous Input and State Estimation for Integrated Motor-Transmission Systems in a Controller Area Network Environment via an Adaptive Unscented Kalman Filter

机译:通过自适应Uncented Kalman滤波器同时输入和状态估计控制器区域网络环境中的集成电动机传输系统

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As the requirements on powertrain efficiency of electric vehicles (EVs) are increasing, integrated motor-transmission (IMT) powertrain systems for EVs are becoming a promising solution. For the integration of IMT powertrain systems, the system state information and the actuator status are usually required for the closed-loop controller design or the on-board fault diagnosis. Embracing the demands, an observer for simultaneous estimation of input and system state of an IMT powertrain system is studied in this paper. It is well-known that controller area network (CAN) has been dominant in the vehicle network, which is used to communicate among controllers, sensors, and actuators. However, the CAN bus always induces time-varying delays when there are a number of communication nodes on the bus. The CAN-bus induced delay would result in vibrations in the vehicle powertrain or even deterioration of the entire closed-loop system. To deal with the CAN-bus induced delay in the estimation work for IMT powertrain systems, the potential random delays are considered in a three-state nonlinear model which represents the behavior of an IMT system. To estimate the input and state simultaneously, an adaptive unscented Kalman filter (AUKF) is adopted. As we know, the adopted AUKF has the benefits of dealing with system nonlinearities and calculating the noise covariance matrix automatically. Simulations and comparisons are carried out. We can see from the results that the proposed observer estimates the input and system state well. Moreover, the resulting estimation error is smaller comparing with the estimation error of the observer based on extended Kalman filter algorithm.
机译:随着电动车辆动力总成(EVS)的要求增加,用于EVS的集成电动机(IMT)动力总成系统正在成为一个有前途的解决方案。对于IMT动力总成系统的集成,通常需要系统状态信息和执行器状态,以便闭环控制器设计或车载故障诊断所需的。本文研究了对需求的要求,同时估计IMT动力总成系统的输入和系统状态的观察者。众所周知,控制器区域网络(CAN)在车辆网络中占主导地位,用于在控制器,传感器和执行器之间进行通信。然而,当总线上有许多通信节点时,CAN总线总是引起时变延迟。 CAN总线引起的延迟将导致车辆动力总成甚至整个闭环系统的劣化导致振动。为了处理IMT动力总成系统的估计工作中的CAN总线感应延迟,在三态非线性模型中考虑了潜在的随机延迟,该模型表示IMT系统的行为。为了同时估计输入和状态,采用自适应uncented卡尔曼滤波器(AUKF)。众所周知,采用的Aukf具有处理系统非线性并自动计算噪声协方差矩阵的益处。进行模拟和比较。我们可以从结果看出,所提出的观察者估计输入和系统状态良好。此外,与基于扩展卡尔曼滤波算法的观察者的估计误差相比,得到的估计误差较小。

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