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A Simultaneous Visible Light Positioning and LED Database Construction Scheme 可见光定位与 LED 数据库同步构建方案
Canran Shi;Kehan Zhang;Bingcheng Zhu;Zaichen Zhang
Visible light positioning (VLP) is endowed with high accuracy in indoor scenarios. However, the positioning algorithms require plenty of beacon light-emitting diode (LED) coordinates stored in databases, which are expensive to obtain by manual measurements. To circumvent such laborious efforts, we propose a two-step automatic scheme for simultaneous VLP and LED database construction. Specifically, in the first step, a receiver with a photodiode (PD) array samples the optical signals from few benchmark LEDs to locate itself. In the second step, the receiver estimates the unknown beacon LED coordinates through its own locations and the beacon LED signals. For the proposed two-step scheme, we derive closed-form error expressions for the beacon LED coordinates to evaluate the benchmark LEDs’ arrangement and the sampling places. Simulation results agree with the analytical error expressions and reveal that the proposed scheme can achieve centimeter-level accuracy with reasonable transmit powers. Experimental results from the hardware platform verify the feasibility of the scheme. The proposed scheme can circumvent laborious manual measurements and allow the LED database to “grow” while the receivers wander and more receivers enter.
可见光定位(VLP)在室内场景中具有很高的精确度。然而,定位算法需要大量存储在数据库中的信标发光二极管(LED)坐标,而人工测量获取这些坐标的成本很高。为了避免这种费力的工作,我们提出了一种分两步同时构建 VLP 和 LED 数据库的自动方案。具体来说,在第一步中,带有光电二极管(PD)阵列的接收器对来自少数基准 LED 的光信号进行采样,以确定自己的位置。第二步,接收器通过自身位置和信标 LED 信号估算未知信标 LED 坐标。对于建议的两步方案,我们推导出信标 LED 坐标的闭式误差表达式,以评估基准 LED 的排列和采样位置。仿真结果与分析误差表达式一致,并揭示了所提出的方案可以在合理的发射功率下实现厘米级精度。硬件平台的实验结果验证了该方案的可行性。建议的方案可以避免费力的人工测量,并允许 LED 数据库 "增长",同时接收器也在不断变化,并有更多的接收器进入。
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引用次数: 0
Eye-Beam: A mmWave 5G-Compliant Platform for Integrated Communications and Sensing Enabling AI-Based Object Recognition Eye-Beam:符合毫米波 5G 标准的集成通信和传感平台,实现基于人工智能的物体识别
Arun Paidimarri;Asaf Tzadok;Sara Garcia Sanchez;Atsutse Kludze;Alexandra Gallyas-Sanhueza;Alberto Valdes-Garcia
We present Eye-Beam, a programmable platform for integrated communication and sensing. Eye-Beam leverages the hardware and processing required for standard millimeter-wave (mmWave) 5G directional communications to enable sensing functions. Specifically, our platform (1) receives and synchronizes to the data frame of broadcast 5G signals, (2) extracts directional communication features, creating a tensor of spatial information, and (3) utilizes this data as input to a DNN that infers the presence of specific objects in the propagation environment. Eye-Beam includes a programmable 28 GHz 64-element phased array, an SDR, and custom FPGA-based firmware. Eye-Beam’s key capabilities and metrics include (i) synchronization of I/Q data (up to 200 MSPS) with beam steering (among 9,601 beams) with 10 ns accuracy; (ii) a signal processing pipeline that extracts communication features such as the SNR and channel response from received 5G waveforms; and (iii) system orchestration that synchronizes the receiver (RX) to the 5G frame structure of the base station (gNodeB) and maintains it within a worst-case OFDM cyclic prefix of $0.29~mu $ s. Eye-Beam is also able to emulate gNodeB transmissions. We demonstrate Eye-Beam’s performance by showcasing its communication capability (decoding up to 64-QAM), as well as its performance as a channel sounder (extracting detailed directional 5G features in 2,401 beam directions within just 20 ms). We then, for the first time, demonstrate AI-based object classification only using the directional communication features derived by Eye-Beam from ambient mmWave 5G signals transmitted by a gNodeB. Six object classes, including 4 distinct objects concealed in a backpack, are classified with 98% accuracy in an indoor environment.
我们展示了用于集成通信和传感的可编程平台 Eye-Beam。Eye-Beam 利用标准毫米波(mmWave)5G 定向通信所需的硬件和处理来实现传感功能。具体来说,我们的平台(1)接收并同步广播 5G 信号的数据帧;(2)提取定向通信特征,创建空间信息张量;(3)将这些数据作为 DNN 的输入,推断传播环境中特定物体的存在。Eye-Beam 包括一个可编程的 28 GHz 64 元相控阵、一个 SDR 和基于 FPGA 的定制固件。Eye-Beam 的主要功能和指标包括:(i) I/Q 数据同步(高达 200 MSPS)与波束转向(在 9,601 个波束中),精度为 10 ns;(ii) 信号处理流水线,可从接收到的 5G 波形中提取 SNR 和信道响应等通信特征;(iii) 系统协调,可将接收器(RX)同步到基站(gNodeB)的 5G 帧结构,并将其保持在 0 美元的最坏情况 OFDM 循环前缀内。Eye-Beam 还能模拟 gNodeB 传输。我们通过展示Eye-Beam的通信能力(解码高达64-QAM)及其作为信道探测仪的性能(在短短20毫秒内提取2401个波束方向的详细定向5G特征)来证明Eye-Beam的性能。然后,我们首次仅使用 Eye-Beam 从 gNodeB 发送的环境毫米波 5G 信号中提取的定向通信特征,演示了基于人工智能的物体分类。在室内环境中,我们以 98% 的准确率对六类物体进行了分类,其中包括隐藏在背包中的 4 个不同物体。
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引用次数: 0
WiDRa: Enabling Millimeter-Level Differential Ranging Accuracy in Wi-Fi Using Carrier Phase WiDRa:利用载波相位在 Wi-Fi 中实现毫米级差分测距精度
Vishnu V. Ratnam;Bilal Sadiq;Hao Chen;Wei Sun;Shunyao Wu;Boon Loong Ng;Jianzhong Zhang
Although Wi-Fi is an ideal technology for many ranging applications, the performance of current methods is limited by the system bandwidth, leading to low accuracy of ~1 m. For many applications, measuring differential range, viz., the change in the range between adjacent measurements, is sufficient. Correspondingly, this work proposes WiDRa - a Wi-Fi based Differential Ranging solution that provides differential range estimates by using the sum-carrier-phase information. The proposed method is not limited by system bandwidth and can track range changes even smaller than the carrier wavelength. The proposed method is first theoretically justified, while taking into consideration the various hardware impairments affecting Wi-Fi chips. In the process, methods to isolate the sum-carrier phase from the hardware impairments are proposed. Extensive simulation results show that WiDRa can achieve a differential range estimation root-mean-square-error (RMSE) of $approx 1$ mm in channels with a Rician-factor $geq 7$ (a $100 times $ improvement to existing methods). The proposed methods are also validated on off-the-shelf Wi-Fi hardware to demonstrate feasibility, where they achieve an RMSE of <1 mm in the differential range. Finally, limitations of current investigation and future directions of exploration are suggested, to further tap into the potential of WiDRa.
虽然 Wi-Fi 是许多测距应用的理想技术,但当前方法的性能受到系统带宽的限制,导致精度低至 ~1 m。因此,本研究提出了基于 Wi-Fi 的差分测距解决方案 WiDRa,通过使用载波相位总和信息提供差分测距估计。所提出的方法不受系统带宽的限制,甚至可以跟踪比载波波长更小的测距变化。建议的方法首先从理论上进行了论证,同时考虑了影响 Wi-Fi 芯片的各种硬件损伤。在此过程中,还提出了将载波相位总和与硬件损伤隔离开来的方法。广泛的仿真结果表明,WiDRa能在里彦系数为7的信道中实现1毫米左右的差分范围估计均方根误差(RMSE)(与现有方法相比提高了100美元)。我们还在现成的 Wi-Fi 硬件上验证了拟议方法的可行性,在差分范围内,这些方法的 RMSE 值小于 1 mm。最后,提出了当前研究的局限性和未来的探索方向,以进一步挖掘 WiDRa 的潜力。
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引用次数: 0
Millimeter-Wave Radio SLAM: End-to-End Processing Methods and Experimental Validation 毫米波无线电 SLAM:端到端处理方法与实验验证
Elizaveta Rastorgueva-Foi;Ossi Kaltiokallio;Yu Ge;Matias Turunen;Jukka Talvitie;Bo Tan;Musa Furkan Keskin;Henk Wymeersch;Mikko Valkama
In this article, we address the timely topic of cellular bistatic simultaneous localization and mapping (SLAM) with specific focus on end-to-end processing solutions, from raw I/Q samples, via channel parameter estimation to user equipment (UE) and landmark location information in millimeter-wave (mmWave) networks, with minimal prior knowledge. Firstly, we propose a new multipath channel parameter estimation solution that operates directly with beam reference signal received power (BRSRP) measurements, alleviating the need to know the true antenna beampatterns or the underlying beamforming weights. Additionally, the method has built-in robustness against unavoidable antenna sidelobes. Secondly, we propose new snapshot SLAM algorithms that have increased robustness and identifiability compared to prior art, in practical built environments with complex clutter and multi-bounce propagation scenarios, and do not rely on any a priori motion model. The performance of the proposed methods is assessed at the 60GHz mmWave band, via both realistic ray-tracing evaluations as well as true experimental measurements, in an indoor environment. A wide set of offered results demonstrate the improved performance, compared to the relevant prior art, in terms of the channel parameter estimation as well as the end-to-end SLAM performance. Finally, the article provides the measured 60GHz data openly available for the research community, facilitating results reproducibility as well as further algorithm development.
在本文中,我们探讨了蜂窝双稳态同步定位和映射(SLAM)这一适时的主题,特别关注端到端处理解决方案,从原始 I/Q 样本到信道参数估计,再到毫米波(mmWave)网络中的用户设备(UE)和地标位置信息,都只需要最少的先验知识。首先,我们提出了一种新的多径信道参数估计解决方案,该方案可直接利用波束参考信号接收功率(BRSRP)测量值进行操作,无需了解真实的天线波束赋形或基本波束成形权重。此外,该方法还具有内置鲁棒性,可抵御不可避免的天线侧扰。其次,我们提出了新的快照 SLAM 算法,与现有技术相比,该算法在具有复杂杂波和多弹跳传播场景的实际建筑环境中具有更高的鲁棒性和可识别性,并且不依赖任何先验运动模型。在 60GHz 毫米波频段,通过现实光线追踪评估以及室内环境中的真实实验测量,对所提方法的性能进行了评估。提供的大量结果表明,与相关的现有技术相比,该方法在信道参数估计和端到端 SLAM 性能方面都有所改进。最后,文章为研究界提供了公开的 60GHz 测量数据,促进了结果的可重复性以及进一步的算法开发。
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引用次数: 0
Maximizing the Value of Service Provisioning in Multi-User ISAC Systems Through Fairness Guaranteed Collaborative Resource Allocation 通过保证公平的协作资源分配实现多用户 ISAC 系统中服务供应的价值最大化
Biwei Li;Xianbin Wang;Fang Fang
The proliferation of wireless-enabled industrial applications highlights the growing importance of Integrated Sensing and Communication (ISAC) for concurrent provisioning of environment sensing and data transmission capabilities. However, the resource-hungry nature of sensing processes, coupled with competing demands from coexisting users, poses the fundamental challenge of effective and fair resource allocation in multi-user ISAC systems. To address this challenge, we propose a value of service (VoS)-oriented resource allocation scheme for concurrent heterogeneous service provisioning in a multi-user collaborative ISAC system. Specifically, a performance indicator VoS is utilized to guide system-wide effective resource allocation while guaranteeing fairness among all ISAC users. Specifically, we formulate the multi-user resource allocation problem as a bargaining game-based model and tackle it with an iterative algorithm to attain the Nash equilibrium. In each iteration, the allocation of power and bandwidth resources is optimized by solving the Lagrangian dual problem. Numerical simulations are performed under varying resource conditions, service demands, and channel states. The results demonstrate the superiority of the proposed scheme over non-collaborative alternatives and the other two benchmark schemes.
无线工业应用的激增凸显了综合传感与通信(ISAC)在同时提供环境传感和数据传输能力方面日益增长的重要性。然而,传感过程对资源的苛刻要求,加上共存用户的竞争性需求,给多用户 ISAC 系统的有效和公平资源分配带来了根本性的挑战。为了应对这一挑战,我们提出了一种面向服务价值(VoS)的资源分配方案,用于多用户协作 ISAC 系统中的并发异构服务供应。具体来说,我们利用性能指标 VoS 来指导全系统的有效资源分配,同时保证所有 ISAC 用户之间的公平性。具体来说,我们将多用户资源分配问题表述为一个基于讨价还价博弈的模型,并通过迭代算法来实现纳什均衡。在每次迭代中,通过求解拉格朗日对偶问题来优化功率和带宽资源的分配。在不同的资源条件、服务需求和信道状态下进行了数值模拟。结果表明,建议的方案优于非协作方案和其他两个基准方案。
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引用次数: 0
Non-Line-of-Sight Ultraviolet Positioning Using Linearly-Arrayed Photon-Counting Receivers 使用线性排列光子计数接收器进行非视距紫外线定位
Renzhi Yuan;Siming Wang;Gang Liu;Mugen Peng
Traditional optical positioning techniques employing visible light signals or infrared light signals require line-of-sight links between transmitters and receivers. The wireless positioning techniques using ultraviolet (UV) signals can enjoy both non-line-of-sight (NLOS) positioning ability and immunity to electromagnetic jamming. In this work, we focus on NLOS UV positioning techniques using linearly-arrayed photon-counting receivers. We first derive the geometrical and physical constrains for the NLOS UV positioning using linearly-arrayed receivers. We then derive the analytical relation between location parameters and pointing parameters of unknown transmitter and propose a NLOS UV positioning method with acceptable computational complexity. We further derive the Cramér-Rao bounds for the positioning method when the separate distance between adjacent receivers equals zero. Numerical results demonstrate that the proposed NLOS UV positioning methods using photon-counting receivers can achieve a distance error less than 2 m when the transmitting elevation angle is greater than 30 degrees and the separate distance is greater than 2 m. Besides, we demonstrate that at least three receivers are required to avoid multiple solution problem; and three receivers are enough for achieving an acceptable positioning error for NLOS UV positioning using photon-counting receivers.
采用可见光信号或红外光信号的传统光学定位技术需要在发射器和接收器之间建立视距链路。而使用紫外线(UV)信号的无线定位技术既能实现非视距(NLOS)定位,又能抵御电磁干扰。在这项工作中,我们重点研究使用线性阵列光子计数接收器的非视距紫外线定位技术。我们首先推导出使用线性阵列接收器进行 NLOS UV 定位的几何和物理约束条件。然后,我们推导出未知发射机的位置参数和指向参数之间的分析关系,并提出了一种计算复杂度可接受的 NLOS 紫外定位方法。当相邻接收器之间的独立距离等于零时,我们进一步推导出定位方法的克拉梅尔-拉奥(Cramér-Rao)边界。数值结果表明,当发射仰角大于 30 度且分离距离大于 2 米时,使用光子计数接收器的 NLOS 紫外定位方法可实现小于 2 米的距离误差。此外,我们还证明了至少需要三个接收器才能避免多解问题;而使用光子计数接收器的 NLOS 紫外定位方法要实现可接受的定位误差,三个接收器就足够了。
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引用次数: 0
Minimum Description Feature Selection for Complexity Reduction in Machine Learning-Based Wireless Positioning 在基于机器学习的无线定位中选择最小描述特征以降低复杂性
Myeung Suk Oh;Anindya Bijoy Das;Taejoon Kim;David J. Love;Christopher G. Brinton
Recently, deep learning approaches have provided solutions to difficult problems in wireless positioning (WP). Although these WP algorithms have attained excellent and consistent performance against complex channel environments, the computational complexity coming from processing high-dimensional features can be prohibitive for mobile applications. In this work, we design a novel positioning neural network (P-NN) that utilizes the minimum description features to substantially reduce the complexity of deep learning-based WP. P-NN’s feature selection strategy is based on maximum power measurements and their temporal locations to convey information needed to conduct WP. We improve P-NN’s learning ability by intelligently processing two different types of inputs: sparse image and measurement matrices. Specifically, we implement a self-attention layer to reinforce the training ability of our network. We also develop a technique to adapt feature space size, optimizing over the expected information gain and the classification capability quantified with information-theoretic measures on signal bin selection. Numerical results show that P-NN achieves a significant advantage in performance-complexity tradeoff over deep learning baselines that leverage the full power delay profile (PDP). In particular, we find that P-NN achieves a large improvement in performance for low SNR, as unnecessary measurements are discarded in our minimum description features.
最近,深度学习方法为无线定位(WP)中的难题提供了解决方案。虽然这些无线定位算法在复杂的信道环境中取得了卓越而稳定的性能,但处理高维特征所带来的计算复杂性可能会让移动应用望而却步。在这项工作中,我们设计了一种新型定位神经网络(P-NN),利用最小描述特征来大幅降低基于深度学习的无线定位的复杂性。P-NN 的特征选择策略基于最大功率测量及其时间位置,以传递进行 WP 所需的信息。我们通过智能处理两种不同类型的输入来提高 P-NN 的学习能力:稀疏图像和测量矩阵。具体来说,我们实施了一个自我注意层来加强网络的训练能力。我们还开发了一种调整特征空间大小的技术,对预期信息增益和分类能力进行了优化,并用信息论方法量化了信号仓选择。数值结果表明,与利用全功率延迟曲线(PDP)的深度学习基线相比,P-NN 在性能-复杂性权衡方面具有显著优势。特别是,我们发现 P-NN 在低信噪比的情况下实现了性能的大幅提升,因为在我们的最小描述特征中放弃了不必要的测量。
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引用次数: 0
FM-Based Positioning via Deep Learning 通过深度学习进行基于调频的定位
Shilian Zheng;Jiacheng Hu;Luxin Zhang;Kunfeng Qiu;Jie Chen;Peihan Qi;Zhijin Zhao;Xiaoniu Yang
Frequency Modulation (FM) broadcast signals, regarded as opportunistic signals, hold significant potential for indoor and outdoor positioning applications. The existing FM-based positioning methods primarily rely on Received Signal Strength (RSS) for positioning, the accuracy of which needs improvement. In this paper, we introduce FM-Pnet, an end-to-end FM-based positioning method that leverages deep learning. This method utilizes the time-frequency representation of FM signals as network input, enabling automatically learning of deep features for positioning. We also propose two strategies, noise injection and enriching training samples, to enhance the model’s generalization performance over long time spans. We construct datasets for both indoor and outdoor scenarios and conduct extensive experiments to validate the performance of our proposed method. Experimental results demonstrate that FM-Pnet significantly outperforms traditional RSS-based positioning methods in terms of both positioning accuracy and stability.
频率调制(FM)广播信号被视为机会信号,在室内外定位应用中具有巨大潜力。现有的基于调频的定位方法主要依靠接收信号强度(RSS)进行定位,其精度有待提高。本文介绍了一种利用深度学习的端到端基于调频的定位方法 FM-Pnet。该方法利用调频信号的时频表示作为网络输入,可自动学习用于定位的深度特征。我们还提出了噪声注入和丰富训练样本两种策略,以提高模型在长时间跨度内的泛化性能。我们构建了室内和室外场景的数据集,并进行了广泛的实验来验证我们提出的方法的性能。实验结果表明,FM-Pnet 在定位精度和稳定性方面明显优于传统的基于 RSS 的定位方法。
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引用次数: 0
On the View-and-Channel Aggregation Gain in Integrated Sensing and Edge AI 论综合传感与边缘人工智能中的视图与信道聚合增益
Xu Chen;Khaled B. Letaief;Kaibin Huang
Sensing and edge artificial intelligence (AI) are two key features of the sixth-generation (6G) mobile networks. Their natural integration, termed Integrated sensing and edge AI (ISEA), is envisioned to automate wide-ranging Internet-of-Ting (IoT) applications. To achieve a high sensing accuracy, features of multiple sensor views are uploaded to an edge server for aggregation and inference using a large-scale AI model. The view aggregation is realized efficiently using over-the-air computing (AirComp), which also aggregates channels to suppress channel noise. As ISEA is at its nascent stage, there still lacks an analytical framework for quantifying the fundamental performance gains from view-and-channel aggregation, which motivates this work. Our framework is based on a well-established distribution model of multi-view sensing data where the classic Gaussian-mixture model is modified by adding sub-spaces matrices to represent individual sensor observation perspectives. Based on the model and linear classification, we study the End-to-End sensing (inference) uncertainty, a popular measure of inference accuracy, of the said ISEA system by a novel, tractable approach involving designing a scaling-tight uncertainty surrogate function, global discriminant gain, distribution of receive Signal-to-Noise Ratio (SNR), and channel induced discriminant loss. As a result, we prove that the E2E sensing uncertainty diminishes at an exponential rate as the number of views/sensors grows, where the rate is proportional to global discriminant gain. Given AirComp and channel distortion, we further show that the exponential scaling remains but the rate is reduced by a linear factor representing the channel induced discriminant loss. Furthermore, in the case of many spatial degrees of freedom, we benchmark AirComp against equally fast, traditional analog orthogonal access. The comparative performance analysis reveals a sensing-accuracy crossing point between the schemes corresponding to equal receive array size and sensor number. This leads to the proposal of a scheme for adaptive access-mode switching to enhance ISEA performance. Last, the insights from our framework are validated by experiments using a convolutional neural network model and real-world dataset.
传感和边缘人工智能(AI)是第六代(6G)移动网络的两大关键特征。它们的自然融合被称为 "综合传感和边缘人工智能(ISEA)",旨在实现广泛的物联网(IoT)应用自动化。为实现高感知精度,多个传感器视图的特征被上传到边缘服务器,以便使用大规模人工智能模型进行聚合和推理。视图聚合是通过空中计算(AirComp)高效实现的,它还能聚合信道以抑制信道噪声。由于 ISEA 尚处于起步阶段,因此仍然缺乏一个分析框架来量化视图和信道聚合带来的基本性能提升,这也是这项工作的动机所在。我们的框架基于一个成熟的多视角传感数据分布模型,通过添加子空间矩阵来代表单个传感器的观测视角,对经典的高斯混合模型进行了修改。基于该模型和线性分类,我们研究了上述 ISEA 系统的端到端传感(推理)不确定性(推理准确性的常用衡量标准),研究采用了一种新颖、可操作的方法,包括设计一个缩放严密的不确定性代理函数、全局判别增益、接收信噪比(SNR)分布和信道诱导判别损失。因此,我们证明,随着视图/传感器数量的增加,E2E 感知的不确定性会以指数速度降低,而这一速度与全局判别增益成正比。考虑到 AirComp 和信道失真,我们进一步证明,指数缩放仍然存在,但速率会因代表信道诱导的判别损失的线性因子而降低。此外,在许多空间自由度的情况下,我们将 AirComp 与同样快速的传统模拟正交接入进行了比较。性能对比分析表明,在接收阵列大小和传感器数量相等的情况下,这两种方案的传感精度存在交叉点。因此,我们提出了一种自适应接入模式切换方案,以提高 ISEA 性能。最后,通过使用卷积神经网络模型和真实世界数据集进行实验,验证了我们的框架所得出的见解。
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引用次数: 0
Coverage and Rate Analysis for Integrated Sensing and Communication Networks 综合传感与通信网络的覆盖范围和速率分析
Xu Gan;Chongwen Huang;Zhaohui Yang;Xiaoming Chen;Jiguang He;Zhaoyang Zhang;Chau Yuen;Yong Liang Guan;Mérouane Debbah
Integrated sensing and communication (ISAC) is increasingly recognized as a pivotal technology for next-generation cellular networks, offering mutual benefits in both sensing and communication capabilities. This advancement necessitates a re-examination of the fundamental limits within networks where these two functions coexist via shared spectrum and infrastructures. However, traditional stochastic geometry-based performance analyses are confined to either communication or sensing networks separately. This paper bridges this gap by introducing a generalized stochastic geometry framework in ISAC networks. Based on this framework, we define and calculate the coverage and ergodic rate of sensing and communication performance under resource constraints. Then, we shed light on the fundamental limits of ISAC networks by presenting theoretical results for the coverage rate of the unified performance, taking into account the coupling effects of dual functions in coexistence networks. Further, we obtain the analytical formulations for evaluating the ergodic sensing rate constrained by the maximum communication rate, and the ergodic communication rate constrained by the maximum sensing rate. Extensive numerical results validate the accuracy of all theoretical derivations, and also indicate that denser networks significantly enhance ISAC coverage. Specifically, increasing the base station density from $1~text {km}^{-2}$ to $10~text {km}^{-2}$ can boost the ISAC coverage rate from 1.4% to 39.8%. Further, results also reveal that with the increase of the constrained sensing rate, the ergodic communication rate improves significantly, but the reverse is not obvious.
综合传感与通信(ISAC)被越来越多的人认为是下一代蜂窝网络的关键技术,在传感和通信能力方面互惠互利。这一进步要求我们重新审视通过共享频谱和基础设施实现这两种功能共存的网络中的基本限制。然而,传统的基于随机几何的性能分析仅限于通信网络或传感网络。本文在 ISAC 网络中引入了广义随机几何框架,弥补了这一不足。在此框架基础上,我们定义并计算了资源约束条件下传感和通信性能的覆盖率和遍历率。然后,考虑到共存网络中双重功能的耦合效应,我们提出了统一性能覆盖率的理论结果,从而揭示了 ISAC 网络的基本限制。此外,我们还获得了评估受最大通信速率约束的遍历感知速率和受最大感知速率约束的遍历通信速率的解析公式。广泛的数值结果验证了所有理论推导的准确性,并表明更密集的网络能显著增强 ISAC 的覆盖范围。具体来说,将基站密度从$1~text {km}^{-2}$增加到$10~text {km}^{-2}$可将ISAC覆盖率从1.4%提高到39.8%。此外,结果还显示,随着受限感知率的增加,遍历通信速率也会显著提高,但反之则不明显。
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引用次数: 0
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