Department of Electronic Engineering, Dongguk University, 26, Pil-dong 3-ga, Jung-gu, 100-715, Seoul, Korea.
Sensors (Basel). 2011;11(11):10266-82. doi: 10.3390/s111110266. Epub 2011 Oct 28.
Recently, the range of available radio frequency identification (RFID) tags has been widened to include smart RFID tags which can monitor their varying surroundings. One of the most important factors for better performance of smart RFID system is accurate measurement from various sensors. In the multi-sensing environment, some noisy signals are obtained because of the changing surroundings. We propose in this paper an improved Kalman filter method to reduce noise and obtain correct data. Performance of Kalman filter is determined by a measurement and system noise covariance which are usually called the R and Q variables in the Kalman filter algorithm. Choosing a correct R and Q variable is one of the most important design factors for better performance of the Kalman filter. For this reason, we proposed an improved Kalman filter to advance an ability of noise reduction of the Kalman filter. The measurement noise covariance was only considered because the system architecture is simple and can be adjusted by the neural network. With this method, more accurate data can be obtained with smart RFID tags. In a simulation the proposed improved Kalman filter has 40.1%, 60.4% and 87.5% less mean squared error (MSE) than the conventional Kalman filter method for a temperature sensor, humidity sensor and oxygen sensor, respectively. The performance of the proposed method was also verified with some experiments.
最近,可用的射频识别 (RFID) 标签范围已经扩大到包括可以监测其变化环境的智能 RFID 标签。智能 RFID 系统性能更好的一个最重要因素是来自各种传感器的精确测量。在多传感器环境中,由于环境变化,会获得一些噪声信号。我们在本文中提出了一种改进的卡尔曼滤波方法来减少噪声并获得正确的数据。卡尔曼滤波的性能由测量和系统噪声协方差决定,这两个变量通常在卡尔曼滤波算法中称为 R 和 Q 变量。选择正确的 R 和 Q 变量是提高卡尔曼滤波性能的最重要设计因素之一。为此,我们提出了一种改进的卡尔曼滤波方法来提高卡尔曼滤波的降噪能力。由于系统结构简单,可以通过神经网络进行调整,因此仅考虑测量噪声协方差。使用这种方法,智能 RFID 标签可以获得更准确的数据。在仿真中,所提出的改进的卡尔曼滤波器对于温度传感器、湿度传感器和氧气传感器,分别比传统的卡尔曼滤波器方法具有 40.1%、60.4%和 87.5%的平均均方误差 (MSE) 降低。还通过一些实验验证了该方法的性能。