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Application of interacting multiple model in integrated positioning system of vehicle
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作者 WEI Wen jun GAO Xue ze +1 位作者 GE Li rain GAO Zhong jun 《Journal of Measurement Science and Instrumentation》 CAS CSCD 2018年第3期279-285,共7页
To solve low precision and poor stability of the extended Kalman filter (EKF) in the vehicle integrated positioning system owing to acceleration, deceleration and turning (hereinafter referred to as maneuvering) ,... To solve low precision and poor stability of the extended Kalman filter (EKF) in the vehicle integrated positioning system owing to acceleration, deceleration and turning (hereinafter referred to as maneuvering) , the paper presents an adaptive filter algorithm that combines interacting multiple model (IMM) and non linear Kalman filter. The algorithm describes the motion mode of vehicle by using three state spacemode]s. At first, the parallel filter of each model is realized by using multiple nonlinear filters. Then the weight integration of filtering result is carried out by using the model matching likelihood function so as to get the system positioning information. The method has advantages of nonlinear system filter and overcomes disadvantages of single model of filtering algorithm that has poor effects on positioning the maneuvering target. At last, the paper uses IMM and EKF methods to simulate the global positioning system (OPS)/inertial navigation system (INS)/dead reckoning (DR) integrated positioning system, respectively. The results indicate that the IMM algorithm is obviously superior to EKF filter used in the integrated positioning system at present. Moreover, it can greatly enhance the stability and positioning precision of integrated positioning system. 展开更多
关键词 VEHICLE integrated positioning system information fusion algorithm extended Kalman filter (kef) interacting multiple model (IMM)
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中型锂电池组管理系统研究
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作者 邵勇 顾金鑫 张钰婷 《工业控制计算机》 2016年第11期54-56,共3页
针对当前BMS中存在的电池电量估算不准、电池组不易均衡等关键技术问题。利用扩展卡尔曼滤波(EKF)在Thevenin电池模型上对SOC(电池剩余电量)初值进行了修正,并使用改进的安时法(增加了自恢复因子)对SOC进行估算,提高了SOC估算的精度。... 针对当前BMS中存在的电池电量估算不准、电池组不易均衡等关键技术问题。利用扩展卡尔曼滤波(EKF)在Thevenin电池模型上对SOC(电池剩余电量)初值进行了修正,并使用改进的安时法(增加了自恢复因子)对SOC进行估算,提高了SOC估算的精度。在传统旁路均衡法的基础上,提出了低耗能自动均衡法,该方法能够对电池组自动均衡,且对电压、电流、温度进行实时监控,在减少能量耗散的同时,大大提高了系统的安全。以设计的BMS为平台来对电池组进行了充放电及均衡实验,实验结果表明该BMS能够较好地对电池组进行管理,满足中型锂离子电池组管理的需求。 展开更多
关键词 锂电池电池组 BMS AD7280A SOC EKF
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