基于UFIR滤波的rfid环境下三轮全向机器人定位

Jorge A. Ortega-Contreras, Y. Shmaliy, J. Andrade-Lucio
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引用次数: 2

摘要

基于射频识别(RFID)标签的系统因其低成本、低(或零)能耗和宽距离范围而吸引了许多消费者的兴趣,使其成为室内物体导航和跟踪的标准[1]-[8]。在移动机器人导航系统的实际设计中,人们发现了各种有效的混合解决方案,例如结合基于RFID标签的网络和其他传感器的信息的定位方案。文献[9]提出了一种新的定位方法,将基于RFID标签的数据与基于激光的测量相结合。文献[10]提出了一种可变功率RFID模型,用于复杂环境下无源超高频(UHF) RFID标签网的定位。在[11]中,设计了一个定位系统,将两种RFID标签生成的信号与逻辑分类策略结合在一起,并使用基于贝叶斯滤波器的算法(BFA)进行集成。BFA的目标是计算一个动态系统状态的后验分布,给定一个带噪声的观测函数。这种方法有很多优点,但更值得注意的是,它能够表示复杂的分布,而不需要关于状态空间模型或状态分布的信息,尽管计算成本很高。状态估计问题[12],[13]可以使用卡尔曼滤波器(KF)解决线性高斯过程和观测,以及使用扩展KF (EKF)或unscented KF (UKF)解决非线性模型。另一种方法是无偏有限脉冲响应(UFIR)滤波器[14],也可以应用于线性模型和非线性模型[15],如[16]所述。该算法的优点是不需要噪声统计量,具有较好的鲁棒性。在RFID标签网上的导航通常是在有色测量噪声(CMN)存在的情况下进行的[17]-[19]。为了估计CMN下的机器人状态,可以使用Bryson等人在[20],[21]和Petovello等人在[22]中开发的两种知名方法。在Bryson算法中,CMN的滤波分两个阶段进行:平滑和滤波。在Petovello算法中,只需要一个阶段(滤波)。Shmaliy等人发现了另一种解决方案,利用状态差分处理彩色过程噪声[23],Zhou等人利用第二信息矩[24],Ding等人利用自回归移动平均(ARMA)噪声模型将基于最小二乘的迭代参数估计应用于动态系统[25]。在本文中,我们在CMN下应用[26]中修改的KF和UFIR滤波器来提供RFID标签网络上的精确机器人导航。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Three-Wheeled Omnidirectional Robot Localization in RFID-Tag Environments using UFIR Filtering
cation (RFID) tag-based systems have attracted the interest of many consumers due to low cost and low (or zero) energy consumption and a wide distance range that made them standard for indoor object navigation and tracking [1]–[8]. In practical designs of mobile robot navigation systems, one finds various efficient hybrid solutions, such as the localization scheme combining information available from the RFID tag-based networks and other sensors. In [9], a novel localization method is proposed to combine the RFID tag-based data with laserbased measurements. In [10], a variable power RFID model is proposed for the localization over passive ultra-high frequency (UHF) RFID tag nets in complex environments. In [11], a location system is designed to combines two types of the RFID tag-generated signals with a logical classification strategy and the integration is provided using the Bayesian filter-based algorithms (BFA). The objective of the BFA is to compute the posterior distributions of the states of a dynamic system, given an observation function with noise. This method has many advantages, but the more remarkable is the capability to represent a complex distribution without requiring information about the state-space model or the state distributions, although with a high computational cost. The state estimation problem [12], [13] can be solved for linear Gaussian processes and observations using the Kalman Filter (KF) and for non-linear models using the Extended KF (EKF) or unscented KF (UKF). Another approach is the unbiased finite impulse response (UFIR) filter [14], which can also be applied to linear models and nonlinear models [15] as described in [16]. An advantage is that the UFIR algorithm does not require the noise statistics and has a better robustness. Navigation over the RFID tag nets is typically provided in the presence of the colored measurement noise (CMN) [17]–[19]. To estimate the robot state under CMN, there can be used two well-known approaches developed by Bryson et al. in [20], [21] and Petovello et al. in [22]. In the Bryson algorithm, the CMN is filtered out in two phases: smoothing and filtering. In the Petovello algorithm, only one stage (filtering) is needed. Another solutions were found by Shmaliy et al. to deal with the colored process noise using state differencing [23], Zhou et al. by using the second moment of information [24], and Ding et al. by applying the least squaresbased iterative parameter estimation to dynamical systems with the autoregressive moving average (ARMA) noise model [25]. In this paper, we apply the KF and UFIR filter modified in [26] under CMN to provide an accurate robot navigation over RFID tag networks.
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