Abstract

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.

Highlights

  • In the field of Radio Frequency Identification (RFID) technology, a tremendous variety of novelRFID sensor tags has emerged

  • In order to evaluate the effectiveness of the proposed method, and using ther measurement system represented in Figure 1, we conducted some simulations of the Kalman filter and the improved method with each sensor data of the multi-sensing environment

  • To compare the results of the common Kalman method and the improved Kalman filter, simulations were examined with an assumed measurement noise covariance

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Summary

Introduction

In the field of Radio Frequency Identification (RFID) technology, a tremendous variety of novel. The RFID sensor tags known as smart RFID tags are able to measure and compute data from the environmental such as temperature, humidity, oxygen concentration, pressure, tampering, shock, etc. These three functions of intelligent RFID tags: sensing, computation, and communication, can be combined into a single and small device. Smart RFID tags combined with multi sensors and attached on a box or package of diverse products can provide integrated information to managers and customers by combining various sensor data from its sensing materials. The improved method presented in this paper is applied to reduce measurement noise of empirical sensor data from a multi-sensing environment.

Multi-Sensing Environment
Improved Kalman Filter
The Kalman Filter
Improved Kalman Filter Using a Neural Network
Simulation Results
Simulations for the Kalman Filter
Simulations for Improved Kalman Filter
Experimental Results
Conclusions
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