UWB

UWB
  • 文章类型: Journal Article
    非视距(NLOS)误差显著影响超宽带(UWB)室内定位精度,构成其进步的主要障碍。这项研究解决了有效区分视线(LOS)和NLOS信号以提高UWB定位精度的挑战。与专注于优化深度学习网络结构的现有研究不同,我们的方法强调模型参数的优化。我们引入了混沌映射来初始化种群,并将基于减法-平均值的优化器与动态探索概率集成在一起,以增强Snake搜索算法(SSA)。这种改进的SSA优化了反向传播(BP)神经网络的初始权重和阈值,以进行信号分类。与BP的比较评估,粒子群优化算法-BP(PSO-BP),和SnakeOptimizer-PB(SO-BP)模型-使用三个性能指标执行-证明我们的LTSSO-BP模型具有出色的稳定性和准确性,具有分类准确性,召回,F1得分值为90%,91.41%,90.25%,分别。
    Non-line-of-sight (NLOS) errors significantly impact the accuracy of ultra-wideband (UWB) indoor positioning, posing a major barrier to its advancement. This study addresses the challenge of effectively distinguishing line-of-sight (LOS) from NLOS signals to enhance UWB positioning accuracy. Unlike existing research that focuses on optimizing deep learning network structures, our approach emphasizes the optimization of model parameters. We introduce a chaotic map for the initialization of the population and integrate a subtraction-average-based optimizer with a dynamic exploration probability to enhance the Snake Search Algorithm (SSA). This improved SSA optimizes the initial weights and thresholds of backpropagation (BP) neural networks for signal classification. Comparative evaluations with BP, Particle Swarm Optimizer-BP (PSO-BP), and Snake Optimizer-PB (SO-BP) models-performed using three performance metrics-demonstrate that our LTSSO-BP model achieves superior stability and accuracy, with classification accuracy, recall, and F1 score values of 90%, 91.41%, and 90.25%, respectively.
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  • 文章类型: Journal Article
    随着无线通信技术的发展,超宽带(UWB)已经成为室内定位的重要解决方案。在复杂的室内环境中,非视距(NLOS)因素的影响导致定位误差增加。提高定位精度,引入模糊迭代自组织数据分析聚类算法(ISODATA)对大量UWB数据进行处理,并将定位误差稳定在2厘米以内,提高了定位系统的精度。为了进一步提高算法的运行效率,FPGA用于加速算法的关键计算部分,与在MATLAB平台上运行相比,速度提高了大约100倍,大大提高了算法的计算速度。
    With the development of wireless communication technology, Ultra-Wideband (UWB) has become an important solution for indoor positioning. In complex indoor environments, the influence of non-line-of-sight (NLOS) factors leads to increased positioning errors. To improve the positioning accuracy, fuzzy iterative self-organizing data analysis clustering algorithm (ISODATA) is introduced to process a large amount of UWB data to reduce the influence of NLOS factors, and to stabilize positioning error within 2 cm, enhances the accuracy of the positioning system. To further improve the running efficiency of the algorithm, FPGA is used to accelerate the key computational part of the algorithm, compared with running on the MATLAB platform, which improves the speed about 100 times, enhances the algorithm\'s computational speed dramatically.
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  • 文章类型: Journal Article
    此建议的设计提出了一种新颖的带通滤波器,采用Marchand巴伦来获得超宽带(UWB)性能,该性能从3.1扩展到10.7GHz,具有6.8GHz的中心频率和110%的FBW。由于平面Marchandbalun的不同输入/输出阻抗,可以调整UWB带通滤波器的分数带宽。这种适应性是通过连续连接两个平面Marchandbalun来实现的,利用横向滤波器思想和多层LCP技术的概念,分别导致0.3dB和12dB的插入和回波损耗。结合了UWB带通滤波器的配方和合成的深入指南。
    This proposed design presents a novel bandpass filter employing a Marchand balun to attain ultra-wideband (UWB) performance extending from 3.1 to 10.7 GHz with 6.8 GHz central frequency and 110% FBW. The UWB bandpass filter\'s fractional bandwidth can be tailored owing to the diverse input/output impedances of the planar Marchand balun. This adaptability is accomplished by connecting two planar Marchand baluns consecutively, leveraging the concepts of transversal filter ideas and multilayer LCP technology resulting in 0.3 dB and 12 dB insertion and return losses respectively. In-depth guidelines for the formulation and synthesis of the UWB bandpass filter are incorporated.
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  • 文章类型: Journal Article
    本文提出了分析,设计,以及针对基于M序列的UWB应用的特定应用AD转换器的低成本实现,以最小化和集成整个UWB传感器系统。因此,本文的主要目标是将AD转换器自己的设计与UWB模拟部分集成到系统级封装(SiP)或直接集成到系统级芯片(SoC)中,不能用商用AD转换器实现,或者会不成比例地昂贵。根据目前使用的UWB传感器系统的要求,为了在拟议的半导体技术中实现最大可能的带宽,本文设计并介绍了一种并联变换器结构。此外,5位和4位并行闪存AD转换器最初被设计为用于特定应用的UWBM序列雷达系统的研究和设计的一部分,并在本文中进行了简要介绍。根据从这些初始设计中获得的知识,建立了新提出的特定UWBM序列系统的要求。在对这些特定UWBM序列系统的早期提出的AD转换器的概念进行全面测试和评估之后,设计了一个新的AD转换器。在根据特定应用的UWBM序列系统的要求确认足够的特性之后,采用AMS低成本0.35µmSiGeBiCMOS技术设计了7位AD转换器,制作,并在本文中介绍。建议的7位AD转换器实现以下参数:ENOB=6.4位,SINAD=38dB,SFDR=42dBc,INL=±2位LSB,DNL=±1.5LSB。最大采样率达到1.4Gs/s,20Ms/s时的功耗为1050mW,在1.4Gs/s时为1290mW,电源为-3.3V。
    The article presents the analysis, design, and low-cost implementation of application-specific AD converters for M-sequence-based UWB applications to minimize and integrate the whole UWB sensor system. Therefore, the main goal of this article is to integrate the AD converter\'s own design with the UWB analog part into the system-in-package (SiP) or directly into the system-on-a-chip (SoC), which cannot be implemented with commercial AD converters, or which would be disproportionately expensive. Based on the current and used UWB sensor system requirements, to achieve the maximum possible bandwidth in the proposed semiconductor technology, a parallel converter structure is designed and presented in this article. Moreover, 5-bit and 4-bit parallel flash AD converters were initially designed as part of the research and design of UWB M-sequence radar systems for specific applications, and are briefly introduced in this article. The requirements of the newly proposed specific UWB M-sequence systems were established based on the knowledge gained from these initial designs. After thorough testing and evaluation of the concept of the early proposed AD converters for these specific UWB M-sequence systems, the design of a new AD converter was initiated. After confirming sufficient characteristics based on the requirements of UWB M-sequence systems for specific applications, a 7-bit AD converter in low-cost 0.35 µm SiGe BiCMOS technology from AMS was designed, fabricated, and presented in this article. The proposed 7-bit AD converter achieves the following parameters: ENOB = 6.4 bits, SINAD = 38 dB, SFDR = 42 dBc, INL = ±2-bit LSB, and DNL = ±1.5 LSB. The maximum sampling rate reaches 1.4 Gs/s, the power consumption at 20 Ms/s is 1050 mW, and at 1.4 Gs/s is 1290 mW, with a power supply of -3.3 V.
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  • 文章类型: Journal Article
    在本文中,提出了一种基于相对距离和惯性测量的多架无人机协同相对定位算法。在这个算法中,针对能在空间上形成三角形的每组3个无人机建立相对运动估计模型。每个组成员估计其他组成员的相对位置和航向角,并与其他组成员共享估计结果。当成员在其估计的相对位置向量中满足三角形定律时,他们可以更准确地估计。在分析了所提出模型的可观测性之后,还给出了可观测性的必要条件,与以前的方法相比,限制较少。然后,将所提出的方法与分散的基于一致性的卡尔曼滤波方法进行了比较。在存在噪声和干扰的情况下分析两种方法的结果,在成员之间断开的情况下。
    In this paper, a novel algorithm for cooperative relative localization of multiple Unmanned Aerial Vehicles (UAVs) is proposed based on relative range and inertial measurements. In this algorithm, a relative motion estimation model is established for each group of three UAVs that can form a triangle in space. Each group member estimates the relative position and heading angle of the other group members and shares the estimation results with the other group members. When members satisfy the triangle law among their estimated relative position vectors, they can estimate more accurately. After analyzing the observability of the presented model, the necessary conditions for observability are also given, which are less restrictive compared to previous methods. Then, the presented method is compared with the decentralized consensus-based Kalman filter approach. The results of both methods are analyzed in the presence of noise and disturbances, and under the condition of disconnection between the members.
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  • 文章类型: Journal Article
    在其他方法中,已经为工业室内定位系统建立了基于UWB的多锚定位系统。然而,多锚系统具有高成本和安装工作量。利用UWB信号的多径传播,基础设施和因此传统系统的成本可以降低。我们的UWB单锚定位系统(SALOS)成功地采用了这种方法。这个想法是创建一个具有复杂信号建模的定位系统。因此,测量参考,比如指纹识别或训练,位置估计不需要。尽管SALOS已经在具有多径传播的户外场景中成功实施和测试,尚未在具有挑战性且难以预测的多径传播的室内环境中对其进行评估。为此,我们为现有的硬件开发了新的算法,主要是任意空间几何的三维统计多径传播模型。在路径长度和复值接收幅度中对锚和标签位置的预定义候选点之间的信号传播进行建模。对于位置估计,将这些建模的信号组合成多个集合,并通过相似性度量与UWB测量进行比较。最后,执行多个位置估计的多数决策。为了评估,我们以模块化的方式实现我们的定位系统,并将系统安装在建筑物中。对于20个位置的固定网格,根据位置精度来评估定位。该系统对于超过73%的测量结果产生正确的位置估计。
    Among other methods, UWB-based multi-anchor localization systems have been established for industrial indoor localization systems. However, multi-anchor systems have high costs and installation effort. By exploiting the multipath propagation of the UWB signal, the infrastructure and thus the costs of conventional systems can be reduced. Our UWB Single-Anchor Localization System (SALOS) successfully pursues this approach. The idea is to create a localization system with sophisticated signal modeling. Therefore, measured reference, like fingerprinting or training, is not required for position estimation. Although SALOS has already been implemented and tested successfully in an outdoor scenario with multipath propagation, it has not yet been evaluated in an indoor environment with challenging and hardly predictable multipath propagation. For this purpose, we have developed new algorithms for the existing hardware, mainly a three-dimensional statistical multipath propagation model for arbitrary spatial geometries. The signal propagation between the anchor and predefined candidate points for the tag position is modeled in path length and complex-valued receive amplitudes. For position estimation, these modeled signals are combined to multiple sets and compared to UWB measurements via a similarity metric. Finally, a majority decision of multiple position estimates is performed. For evaluation, we implement our localization system in a modular fashion and install the system in a building. For a fixed grid of 20 positions, the localization is evaluated in terms of position accuracy. The system results in correct position estimations for more than 73% of the measurements.
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  • 文章类型: Journal Article
    为了降低公路施工和养护中的事故风险,本文提出了一种基于无绳实时定位系统(RTLS)的道路工人安全的新解决方案。该系统使用超宽带(UWB)技术实时跟踪工人的位置,并指示他们是否处于预定义的危险区域,其中预定义的安全区域由安全锥界定。与以前通过检测进入工作区的车辆来关注道路工人安全的工作不同,我们的建议解决了分心工人离开安全区的问题。本文介绍了一种易于部署的安全系统。我们的UWB锚不需要任何电缆供电,同步,或数据传输。锚放在安全锥里面,这些已经在建筑工地上可用。最后,由于一种新颖的自定位方法,无需手动测量锚点的位置并将其引入系统。我们的提议,除了自动估计锚的位置,还定义了安全和危险区域的界限。这些特征显著地减少了所提出的安全系统的部署时间。此外,测量表明,所有建议的简化都以97%的精度获得。
    In order to reduce the accident risk in road construction and maintenance, this paper proposes a novel solution for road-worker safety based on an untethered real-time locating system (RTLS). This system tracks the location of workers in real time using ultra-wideband (UWB) technology and indicates if they are in a predefined danger zone or not, where the predefined safe zone is delimited by safety cones. Unlike previous works that focus on road-worker safety by detecting vehicles that enter into the working zone, our proposal solves the problem of distracted workers leaving the safe zone. This paper presents a simple-to-deploy safety system. Our UWB anchors do not need any cables for powering, synchronisation, or data transfer. The anchors are placed inside safety cones, which are already available in construction sites. Finally, there is no need to manually measure the positions of anchors and introduce them to the system thanks to a novel self-positioning approach. Our proposal, apart from automatically estimating the anchors\' positions, also defines the limits of safe and danger zones. These features notably reduce the deployment time of the proposed safety system. Moreover, measurements show that all the proposed simplifications are obtained with an accuracy of 97%.
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  • 文章类型: Journal Article
    超宽带(UWB)在GPS拒绝的环境中为机器人提供实时定位已引起越来越多的兴趣。让机器人根据这些信息采取行动,它也需要它的方向。这是,然而,不是由UWB提供。为了克服这一点,或者使用多个标签来创建连接到机器人的本地参考系,或者将单个标签与来自里程计或惯性测量单元(IMU)测量的自我运动估计相结合。里程计和IMU都会受到漂移的影响,通常使用磁力计来校正航向上的漂移;但是,在典型的GPS拒绝环境中,磁力计往往变得不可靠。为了克服这一点,设计了一个轻量级的粒子滤波器来实时运行。粒子滤波器在移动的地平线时间帧上使用UWB测量来校正自我运动航向和位置漂移。使用从包含视线(LOS)和非视线条件的地面机器人收集的数据集对算法进行离线评估。在LOS条件下用四个锚实现13cm和0.12(rad)的RMSE。还表明,它可用于为机器人提供实时位置和航向信息,以便机器人在LOS条件下对其采取行动,并且在两种实验条件下都显示出鲁棒性。
    Ultra-wideband (UWB) has gained increasing interest for providing real-time positioning to robots in GPS-denied environments. For a robot to act on this information, it also requires its heading. This is, however, not provided by UWB. To overcome this, either multiple tags are used to create a local reference frame connected to the robot or a single tag is combined with ego-motion estimation from odometry or Inertial Measurement Unit (IMU) measurements. Both odometry and the IMU suffer from drift, and it is common to use a magnetometer to correct the drift on the heading; however, magnetometers tend to become unreliable in typical GPS-denied environments. To overcome this, a lightweight particle filter was designed to run in real time. The particle filter corrects the ego-motion heading and location drift using the UWB measurements over a moving horizon time frame. The algorithm was evaluated offline using data sets collected from a ground robot that contains line-of-sight (LOS) and non-line-of-sight conditions. An RMSE of 13 cm and 0.12 (rad) was achieved with four anchors in the LOS condition. It is also shown that it can be used to provide the robot with real-time position and heading information for the robot to act on it in LOS conditions, and it is shown to be robust in both experimental conditions.
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  • 文章类型: Journal Article
    宽带高频和微波信号的放大是每个高频电路和设备中的基本要素。超宽带(UWB)传感器应用使用为其特定应用而设计的电路。本文提出了分析,设计,并实现了基于M序列的UWB应用的超宽带差分放大器。设计的差分放大器基于Cherry-Hooper结构,并以低成本0.35µmSiGeBiCMOS半导体工艺实现。本文介绍了几种设计的分析和实现,重点是对Cherry-Hooper放大器结构的不同修改。所提出的放大器修改集中于在一个主要参数的性能中实现最佳结果。通过电容峰值修改放大器设计以实现最大带宽,具有尽可能低的噪声系数的放大器,描述了专注于实现最高共模抑制比(CMRR)的设计。创建了差分放大器的布局,并制造了芯片并将其引线接合到QFN封装。出于评估目的,设计了一款高频PCB板。原理图模拟,布局后模拟,并对所设计放大器的各个参数进行了测量。设计和制造的超宽带差分放大器具有以下参数:在-3.3V或3.3V时为100-160mA的电源电流,带宽从6到12GHz,增益(在1GHz)从12到16dB,从7到13dB的噪声系数,和高达70dB的共模抑制比。
    Amplification of wideband high-frequency and microwave signals is a fundamental element within every high-frequency circuit and device. Ultra-wideband (UWB) sensor applications use circuits designed for their specific application. The article presents the analysis, design, and implementation of ultra-wideband differential amplifiers for M-sequence-based UWB applications. The designed differential amplifiers are based on the Cherry-Hooper structure and are implemented in a low-cost 0.35 µm SiGe BiCMOS semiconductor process. The article presents an analysis and realization of several designs focused on different modifications of the Cherry-Hooper amplifier structure. The proposed amplifier modifications are focused on achieving the best result in one main parameter\'s performance. Amplifier designs modified by capacitive peaking to achieve the largest bandwidth, amplifiers with the lowest possible noise figure, and designs focused on achieving the highest common mode rejection ratio (CMRR) are described. The layout of the differential amplifiers was created and the chip was manufactured and wire-bonded to the QFN package. For evaluation purposes, a high-frequency PCB board was designed. Schematic simulations, post-layout simulations, and measurements of the individual parameters of the designed amplifiers were performed. The designed and fabricated ultra-wideband differential amplifiers have the following parameters: a supply current of 100-160 mA at -3.3 V or 3.3 V, bandwidth from 6 to 12 GHz, gain (at 1 GHz) from 12 to 16 dB, noise figure from 7 to 13 dB, and a common mode rejection ratio of up to 70 dB.
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  • 文章类型: Journal Article
    在本文中,提出了使用深度学习方法在超宽带(UWB)体外无线体域网(WBAN)通信中检测用户相对于天线几何形状的位置的问题。要测量通道的脉冲响应,开发了由EVB1000设备和DW1000无线电模块组成的测量台,并进行了室内静态测量方案。事实证明,对于面向用户的二元分类,神经网络的准确度比众所周知的阈值方法高9%以上.此外,分析了用户相对于参考节点的位置角度的分类。事实证明,使用提出的深度学习方法和通道脉冲响应,可以估计用户位置相对于天线几何形状的角度。在两种测试场景中,大约85%的情况下,卷积神经网络的绝对用户取向角误差约为4-7°,多层感知器的绝对用户取向角误差约为14-15°。
    In this paper, the issue of detecting a user\'s position in relation to the antenna geometry in ultra-wideband (UWB) off-body wireless body area network (WBAN) communication using deep learning methods is presented. To measure the impulse response of the channel, a measurement stand consisting of EVB1000 devices and DW1000 radio modules was developed and indoor static measurement scenarios were performed. It was proven that for the binary classification of user orientation, neural networks achieved accuracy that was more than 9% higher than that for the well-known threshold method. In addition, the classification of user position angles relative to the reference node was analyzed. It was proven that, using the proposed deep learning approach and the channel impulse response, it was possible to estimate the angle of the user\'s position in relation to the antenna geometry. Absolute user orientation angle errors of about 4-7° for convolutional neural networks and of about 14-15° for multilayer perceptrons were achieved in approximately 85% of the cases in both tested scenarios.
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