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Design of active suspension controller for train cars based on sliding mode control, uncertainty observer and neuro-fuzzy system

机译:基于滑模控制,不确定性观测器和神经模糊系统的火车汽车有源悬架控制器设计

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This paper focuses on building a controller for active suspension system of train cars in the case that the sprung mass and model error are uncertainty parameters. The sprung mass is always varied due to many reasons such as changing of the passengers and load or impacting of wind on the operating train while an unknown difference between the suspension model used for survey and the real suspension system also always exists. The controller is built based on an adaptive neuro-fuzzy inference system (ANFIS), sliding mode control, uncertainty observer (NFSmUoC) and a magnetorheological damper (MRD) which can be seen as an actuator for applying active force. A nonlinear uncertainty observer (NUO), a sliding mode controller (SMC) together with an inverse model of the MRD are designed in order to calculate the current value by which the MRD creates the required active control force u(t). An ANFIS and measured MR-damper-dynamic-response data sets are used to identify the MRD as an inverse MRD model (ANFIS-I-MRD). Based on dynamic response of the suspension, firstly the active control force u(t) is calculated by NUO and SMC, in which the impact of the uncertainty load on the system is estimated by the NUO. The ANFIS-I-MRD is then used to estimate applied current for the MRD in order to create the calculated active control force to control vertical vibration status of the train cars. Simulation surveys are carried out to evaluate the effectiveness of the proposed method.
机译:本文重点介绍在弹簧质量和模型误差是不确定性参数的情况下构建火车车的主动悬架系统的控制器。由于许多原因,诸如改变乘客和负载或在运行列车上的风或冲击时,簧上质量始终变化,而用于调查的悬架模型和实际悬架系统之间的未知差异也总是存在。基于自适应神经模糊推理系统(ANFIS),滑模控制,不确定观察者(NFSMUOC)和磁流变器(MRD)构建控制器,其可以被视为用于施加主动力的致动器。设计了非线性不确定性观察者(Nuo),滑动模式控制器(SMC)与MRD的逆模型一起设计,以便计算MRD创建所需的主动控制力U(T)的当前值。 ANFIS和测量的MR-Damper-DAMMITY响应数据集用于将MRD标识为逆MRD模型(ANFIS-I-MRD)。基于悬架的动态响应,首先,Nuo和SMC计算有源控制力U(T),其中Nuo估计了系统对系统的不确定性负荷的影响。然后使用ANFIS-I-MRD来估计MRD的应用电流,以便创建计算的主动控制力以控制火车车的垂直振动状态。进行仿真调查以评估所提出的方法的有效性。

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