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Combining Kalman Filter and RLS-Algorithm to Improve a Textile based Sensor System in the Presence of Linear Time-Varying Parameters

机译:结合卡尔曼滤波器和RLS算法在存在线性时变参数的情况下改进基于纺织传感器系统

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This paper presents an adaptive Kalman filter used as an observer in combination with a scaled least squares (LS) technique to improve a textile based sensor fusion. The focus of the application is to detect and monitor workplace particulate pollution. To control the sensor system around a reference current, a robust proportional-integral (PI) controller is used. In context of temperature variation, the sensor parameters resistance R and inductance L change in a linear way which is based on the linear range of the sensor characteristic. The adaption is performed with the help of an output-error (OE) model. The identification technique is based on the recursive least squares (RLS) method, which is used to estimate the parameters of the textile based model using input-output scaling factors. Through this proposed technique, a broader sampling rate and an input signal with low frequency can be used to identify the nano parameters characterizing the linear model. The simulation results emphasize that the proposed algorithm is effective and robust.
机译:本文介绍了一种用作观察者的自适应卡尔曼滤波器,与缩放最小二乘(LS)技术结合使用,以改善基于纺织的传感器融合。申请的重点是检测和监控工作场所颗粒污染。为了控制参考电流周围的传感器系统,使用鲁棒比例积分(PI)控制器。在温度变化的背景下,传感器参数电阻R和电感L以基于传感器特性的线性范围的线性方式改变。在输出误差(OE)模型的帮助下执行自适应。识别技术基于递归最小二乘(RLS)方法,其用于使用输入输出缩放因子来估计基于纺织模型的参数。通过这种提出的技术,可以使用更广泛的采样率和低频率的输入信号来识别表征线性模型的纳米参数。模拟结果强调所提出的算法是有效且鲁棒的。

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