Kalman Filter for Noise Reducer on Sensor Readings

A. Ma’arif, I. Iswanto, Aninditya Anggari Nuryono, Rio Ikhsan Alfian
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引用次数: 16

Abstract

Most systems nowadays require high-sensitivity sensors to increase its system performances. However, high-sensitivity sensors, i.e. accelerometer and gyro, are very vulnerable to noise when reading data from environment. Noise on data-readings can be fatal since the real measured-data contribute to the performance of a controller, or the augmented system in general. The paper will discuss about designing the required equation and the parameter of modified Standard Kalman Filter for filtering or reducing the noise, disturbance and extremely varying of sensor data. The Kalman Filter equation will be theoretically analyzed and designed based on its component of equation. Also, some values of measurement and variance constants will be simulated in MATLAB and then the filtered result will be analyzed to obtain the best suitable parameter value. Then, the design will be implemented in real-time on Arduino to reduce the noise of IMU (Inertial Measurements Unit) sensor reading. Based on the simulation and real-time implementation result, the proposed Kalman filter equation is able to filter signal with noises especially if there is any extreme variation of data without any information available of noise frequency that may happen to sensor- reading. The recommended ratio of constants in Kalman Filter is 100 with measurement constant should be greater than process variance constant.
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卡尔曼滤波对传感器读数的降噪
目前大多数系统都需要高灵敏度传感器来提高系统性能。然而,高灵敏度传感器,即加速度计和陀螺仪,在从环境中读取数据时非常容易受到噪声的影响。数据读数上的噪声可能是致命的,因为实际测量的数据通常会影响控制器或增强系统的性能。本文将讨论改进标准卡尔曼滤波器所需方程和参数的设计,以滤波或降低传感器数据的噪声、干扰和极端变化。对卡尔曼滤波方程进行理论分析,并根据其组成部分进行设计。在MATLAB中模拟一些测量常数和方差常数的值,然后对滤波后的结果进行分析,得到最合适的参数值。然后,设计将在Arduino上实时实现,以降低IMU (Inertial Measurements Unit)传感器读数的噪声。仿真和实时实现结果表明,所提出的卡尔曼滤波方程能够很好地滤除含有噪声的信号,特别是在数据发生极端变化而传感器读取时无法获得噪声频率信息的情况下。建议卡尔曼滤波中各常数的比值为100,测量常数应大于过程方差常数。
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