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A Novel Approach of Optimal Signal Streaming Analysis Implicated Supervised Feedforward Neural Networks 隐含监督前馈神经网络的优化信号流分析新方法
IF 1.1 4区 工程技术 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2024-10-01 DOI: 10.1049/2024/2819057
Farhan Ali, He Yigang

The analysis and interpretation of enormous amounts of data generated by 5G networks present several challenges related to noise, precision, and feasibility validation. Therefore, this study aims to evaluate the effectiveness of channel equalisation in the network and enhance it by distributing signals over all subcarriers and symbols. The error-free signal received ensures the reliable transmission of signals in the network connection. These simulations were undertaken to fulfil the needs of and adapt the transmission properties according to the specific conditions of the channel. The dataset consists of artificially generated radio waves to train signals through neural networks (NNs) and machine learning algorithms to detect errors properly. The primary objective is to achieve optimal signal performance. In this regard, an artificial neural network (ANN) was initially employed, explicitly utilising the back-propagation technique and a feedforward multilayer perceptron (MLP). In addition, the signals were subjected to train using a real-time simulator, employing feedforward neural network and support vector machine (SVM) to validate the proposed methodology. Feedforward MLP achieved the highest performance in simulations compared to SVM. The scheme is promising to achieve optimal signal performance in real-time.

对 5G 网络产生的海量数据进行分析和解读,面临着与噪声、精度和可行性验证有关的若干挑战。因此,本研究旨在评估网络中信道均衡的有效性,并通过在所有子载波和符号上分配信号来增强信道均衡。接收到的无差错信号可确保信号在网络连接中的可靠传输。进行这些模拟是为了满足传输特性的需要,并根据信道的具体条件调整传输特性。数据集由人工生成的无线电波组成,通过神经网络(NN)和机器学习算法训练信号,以正确检测错误。主要目标是实现最佳信号性能。为此,最初采用了人工神经网络(ANN),明确利用了反向传播技术和前馈多层感知器(MLP)。此外,还使用实时模拟器对信号进行训练,采用前馈神经网络和支持向量机(SVM)来验证所提出的方法。与 SVM 相比,前馈 MLP 的模拟性能最高。该方案有望实现最佳的实时信号性能。
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引用次数: 0
Energy Sharing and Performance Bounds in MIMO DFRC Systems: A Trade-Off Analysis MIMO DFRC 系统中的能量共享和性能界限:权衡分析
IF 1.1 4区 工程技术 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2024-09-20 DOI: 10.1049/2024/8852387
Ziheng Zheng, Xiang Liu, Tianyao Huang, Yimin Liu, Yonina C. Eldar

It is a fundamental problem to analyze the performance bound of multiple-input multiple-output dual-functional radar-communication systems. To this end, we derive a performance bound on the communication function under a constraint on radar performance. To facilitate the analysis, in this paper, we consider a simplified situation where there is only one downlink user and one radar target. We analyze the properties of the performance bound and the corresponding waveform design strategy to achieve the bound. When the downlink user and the radar target meet certain conditions, we obtain analytical expressions for the bound and the corresponding waveform design strategy. The results reveal a tradeoff between communication and radar performance, which is essentially caused by the energy sharing and allocation between radar and communication functions of the system.

分析多输入多输出双功能雷达通信系统的性能约束是一个基本问题。为此,我们推导了雷达性能约束下的通信功能性能约束。为便于分析,本文考虑了只有一个下行用户和一个雷达目标的简化情况。我们分析了性能约束的特性以及实现约束的相应波形设计策略。当下行链路用户和雷达目标满足特定条件时,我们就能得到性能约束和相应波形设计策略的解析表达式。结果揭示了通信和雷达性能之间的权衡,这主要是由系统中雷达和通信功能之间的能量共享和分配引起的。
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引用次数: 0
A Labeled Multi-Bernoulli Filter Based on Maximum Likelihood Recursive Updating 基于最大似然递归更新的标记多贝努利过滤器
IF 1.1 4区 工程技术 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2024-09-11 DOI: 10.1049/2024/1994552
Yuhan Song, Han Shen-Tu, Junhao Lin, Yizhen Wei, Yunfei Guo

A labeled multi-Bernoulli filter is used to obtain estimates of the identities and states of targets in complex environments. However, when tracking multiple targets in dense clutters, the computational complexity of the traditional labeled multi-Bernoulli filter will increase exponentially. A labeled multi-Bernoulli tracking algorithm based on maximum likelihood recursive update is proposed, which can reduce the computational scale while maintaining tracking accuracy. Specifically, when performing posterior estimation, a maximum likelihood recursive update method is proposed to replace the complete enumeration, truncated enumeration, or sampling enumeration methods used in many traditional methods. Furthermore, combined with the Gaussian mixture technique, a maximum likelihood recursive updating labeled multi-Bernoulli tracking algorithm is constructed. Simulation results demonstrated that the proposed filter obtained a good balance between the tracking accuracy and computational efficiency.

标注多贝努利滤波器用于获取复杂环境中目标的身份和状态的估计值。然而,当在密集杂波中跟踪多个目标时,传统的标注多重伯努利滤波器的计算复杂度将呈指数级增长。本文提出了一种基于最大似然递归更新的标注多贝努利跟踪算法,它能在保持跟踪精度的同时降低计算规模。具体来说,在进行后验估计时,提出了一种最大似然递归更新方法,以取代许多传统方法中使用的完全枚举法、截断枚举法或抽样枚举法。此外,结合高斯混合技术,还构建了一种最大似然递归更新标记多伯努利跟踪算法。仿真结果表明,所提出的滤波器在跟踪精度和计算效率之间取得了良好的平衡。
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引用次数: 0
Robust Fractional Low-Order Multiple Window STFT for Infinite Variance Process Environment 针对无限方差过程环境的鲁棒分数低阶多窗 STFT
IF 1.1 4区 工程技术 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2024-08-27 DOI: 10.1049/2024/7605121
Haibin Wang, Changshou Deng, Junbo Long, Youxue Zhou

Mechanical fault vibration signal is a typical non-Gaussian process, they can be characterized by the infinite variance process, and the noise within these signals may also be the process in complex environments. The performance of the traditional cross-term reduction algorithm is compromised, sometimes yielding incorrect results under the infinite variance process environment. Several robust fractional lower order time–frequency representation methods are proposed including fractional low-order smoothed pseudo Wigner (FLOSPW), fractional low-order multi-windowed short-time Fourier transform (FLOMWSTFT), and improved fractional low-order multi-windowed short-time Fourier transform (IFLOMWSTFT) utilizing fractional low-order statistics and short-time Fourier transform (STFT) to mitigate cross-terms, enhance time–frequency resolution, and accommodate the infinite variance process environment. When compared to traditional methods, simulation results indicate that they effectively suppress the pulse noise and function effectively in lower mixed signal noise ratio (MSNR) in an infinite variance process environment. The efficacy of the proposed time–frequency algorithm is validated through its application to mechanical bearing outer ring fault vibration signals contaminated with Gaussian noise and subjected to an α infinite variance process.

机械故障振动信号是一种典型的非高斯过程,它们可以用无限方差过程来表征,这些信号内部的噪声也可能是复杂环境中的过程。在无限方差过程环境下,传统的交叉项还原算法的性能会受到影响,有时会产生错误的结果。本文提出了几种稳健的分数低阶时频表示方法,包括分数低阶平滑伪 Wigner(FLOSPW)、分数低阶多窗口短时傅里叶变换(FLOMWSTFT)和改进的分数低阶多窗口短时傅里叶变换(IFLOMWSTFT),利用分数低阶统计和短时傅里叶变换(STFT)来减少交叉项、提高时频分辨率并适应无限方差过程环境。与传统方法相比,仿真结果表明,它们能有效抑制脉冲噪声,并在无限方差过程环境中有效降低混合信号噪声比(MSNR)。通过将所提出的时频算法应用于受到高斯噪声污染并处于 α 无限方差过程中的机械轴承外圈故障振动信号,验证了该算法的有效性。
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引用次数: 0
Energy-Efficiency Maximization in Backscatter Communication-Based Non-Orthogonal Multiple Access System: Dinkelbach and Successive Convex Approximation Approaches 基于反向散射通信的非正交多址系统中的能效最大化:丁克巴赫法和连续凸近似法
IF 1.1 4区 工程技术 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2024-08-22 DOI: 10.1049/2024/4107801
Dingjia Lin, Tianqi Wang, Kaidi Wang, Zhiguo Ding

This paper investigates a backscatter communication (BackCom) based non-orthogonal multiple access (NOMA) system in a multiple-input and single-output (MISO) scenario, where two decoding methods are deployed, including the sum-capacity approach and QR decomposition. The goal is to maximize energy efficiency (EE) through the optimization of the beamforming matrix and the reflection coefficient of the BackCom devices. Two algorithms, Dinkelbach based on penalty semidefinite relaxation (SDR) and successive convex approximation (SCA), are proposed as high-performance and low-complexity solutions, respectively. Simulation results indicate that the combination of the sum-capacity approach and Dinkelbach yields the best performance, though at the highest complexity, while the amalgamation of QR decomposition and SCA offers the lowest performance but with minimal complexity.

本文研究了多入单出(MISO)场景下基于反向散射通信(BackCom)的非正交多址(NOMA)系统,其中采用了两种解码方法,包括总和容量法和 QR 分解法。目标是通过优化波束成形矩阵和 BackCom 设备的反射系数,最大限度地提高能效 (EE)。本文提出了两种算法,即基于惩罚半定松弛的 Dinkelbach 算法(SDR)和连续凸近似算法(SCA),分别作为高性能和低复杂度的解决方案。仿真结果表明,总和容量法与 Dinkelbach 的组合性能最佳,但复杂度最高;QR 分解与 SCA 的组合性能最低,但复杂度最小。
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引用次数: 0
Extended Infrared Target Filtering via Random Finite Set and Low-Rank Matrix Decomposition 通过随机有限集和低秩矩阵分解实现扩展红外目标过滤
IF 1.1 4区 工程技术 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2024-08-21 DOI: 10.1049/2024/9914774
Jian Su, Haiyin Zhou, Qi Yu, Jubo Zhu, Jiying Liu

Target detection in infrared remote sensing images has important practical applications. Among the current high-performance methods, the deep learning-based methods require training samples, and their generalization ability is also limited by the training set. The separation of low-rank and sparse matrix requires joint processing of multiple images with high computational complexity. The track-before-detect algorithms based on particle filtering also have high computational complexity. In this paper, the low-rank and sparse matrix of a single image are proposed for target detection, and a differentiable objective function is used in the separation. At the same time, an extended multitarget tracking algorithm based on random sets is used for target filtering between frames, and the design of the filters adopts the conjugate distribution under the Bayesian framework. Finally, the practical infrared sequence images containing multiple targets and complex backgrounds were employed to verify the performance of the proposed algorithms by comparing them with state-of-the-art algorithms.

红外遥感图像中的目标检测具有重要的实际应用价值。在目前的高性能方法中,基于深度学习的方法需要训练样本,其泛化能力也受到训练集的限制。低秩和稀疏矩阵的分离需要对多幅图像进行联合处理,计算复杂度较高。基于粒子滤波的先跟踪后检测算法的计算复杂度也很高。本文提出了单幅图像的低秩和稀疏矩阵目标检测方法,并在分离过程中使用了可微目标函数。同时,基于随机集的扩展多目标跟踪算法用于帧间目标滤波,滤波器的设计采用贝叶斯框架下的共轭分布。最后,利用包含多个目标和复杂背景的实际红外序列图像,通过与最先进算法的比较,验证了所提算法的性能。
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引用次数: 0
An Improved Jaccard Coefficient-Based Clustering Approach with Application to Diagnosis and RUL Estimation 基于 Jaccard 系数的改进聚类方法在诊断和 RUL 估算中的应用
IF 1.1 4区 工程技术 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2024-08-07 DOI: 10.1049/2024/6586622
Xiaoqing Li, Hao Tang, Hai Wang, Gangzhong Miao, Mingang Cheng

Sample clustering techniques play a crucial role in the data-driven state evaluation of electromechanical equipment, and selecting an appropriate similarity measurement method for sample sets helps improve the clustering performance. The Jaccard coefficient is a commonly employed indicator of similarity for scalar set-type samples. In this paper, we propose an incremental clustering algorithm for matrix-type samples by defining an improved Jaccard coefficient. First, a new binary relation is formulated to derive a relationship matrix between samples. Second, an undirected graph is given by using the relationship matrix, and an improved pruning operation is provided to simplify the graph by eliminating redundant edges. Then, a new relationship matrix is generated according to the modified graph, which enables the calculation of the improved Jaccard coefficient. By using the improved Jaccard coefficient, the improved incremental clustering algorithm updates cluster centers by selecting a particular sample to maximize the sum of similarities between the selected sample and other samples within the same cluster. Finally, the effectiveness of the proposed incremental clustering algorithm is demonstrated in fault diagnosis and remaining useful life estimation application scenarios, respectively. The experimental results indicate that the improved algorithm outperforms traditional clustering methods.

样本聚类技术在机电设备的数据驱动状态评估中起着至关重要的作用,为样本集选择合适的相似性测量方法有助于提高聚类性能。Jaccard 系数是标量集合型样本常用的相似性指标。本文通过定义改进的 Jaccard 系数,提出了一种针对矩阵型样本的增量聚类算法。首先,我们提出了一种新的二元关系,以推导出样本之间的关系矩阵。其次,利用关系矩阵给出无向图,并提供改进的剪枝操作,通过消除多余的边来简化图。然后,根据修改后的图生成新的关系矩阵,从而计算出改进的 Jaccard 系数。通过使用改进的 Jaccard 系数,改进的增量聚类算法通过选择特定样本来更新聚类中心,从而最大化所选样本与同一聚类中其他样本之间的相似性总和。最后,分别在故障诊断和剩余使用寿命估计应用场景中演示了所提出的增量聚类算法的有效性。实验结果表明,改进后的算法优于传统聚类方法。
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引用次数: 0
Asynchronous Wireless Signal Modulation Recognition Based on In-Phase Quadrature Histogram 基于同相正交直方图的异步无线信号调制识别
IF 1.1 4区 工程技术 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2024-08-01 DOI: 10.1049/2024/9589239
Xu Zhang, Xi Hui, Pengwu Wan, Tengfei Hui, Xiongfei Li

Automatic modulation recognition is a key technology in the field of signal processing. Conventional recognition methods suffer from low recognition accuracy at low signal-to-noise ratios (SNR), and when the signal frequency is unstable or there is asynchronous sampling, the performance of conventional recognition methods will deteriorate or even fail. To address these challenges, deep learning-based modulation mode recognition technique is investigated in this paper for low-speed asynchronous sampled signals under channel conditions with varying SNR and delay. Firstly, the low-speed asynchronous sampled signals are modeled, and their in-phase quadrature components are used to generate a two-dimensional asynchronous in-phase quadrature histogram. Then, the feature parameters of this 2D image are extracted by radial basis function neural network (RBFNN) to complete the recognition of the modulation mode of the input signal. Finally, the accuracy of the method for seven modulation methods is verified by extensive simulations. The experimental results show that under the channel model of additive white Gaussian noise (AWGN), when the SNR of the input signal with low-speed asynchronous sampling is 6 dB, more than 95% of the average recognition accuracy can be achieved, and the effectiveness and robustness of the proposed scheme are verified by comparative experiments.

自动调制识别是信号处理领域的一项关键技术。传统的识别方法在信噪比(SNR)较低的情况下识别准确率较低,当信号频率不稳定或存在异步采样时,传统识别方法的性能会下降甚至失效。针对这些挑战,本文研究了在信噪比和时延变化的信道条件下,基于深度学习的低速异步采样信号的调制模式识别技术。首先,对低速异步采样信号进行建模,并利用其同相正交分量生成二维异步同相正交直方图。然后,通过径向基函数神经网络(RBFNN)提取该二维图像的特征参数,完成对输入信号调制模式的识别。最后,通过大量仿真验证了该方法对七种调制方式的准确性。实验结果表明,在加性白高斯噪声(AWGN)信道模型下,当低速异步采样的输入信号信噪比为 6 dB 时,平均识别准确率可达 95% 以上,并通过对比实验验证了所提方案的有效性和鲁棒性。
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引用次数: 0
No-Reference High Dynamic Range Omnidirectional Image Quality Metric: From the Perspective of Global and Local Statistical Characteristics 无参考高动态范围全向图像质量度量:从全局和局部统计特征的角度看图像质量
IF 1.1 4区 工程技术 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2024-07-29 DOI: 10.1049/2024/5653845
Rongyao Yu, Fang Yang, Yi Liu, Jianghui He, Qingjiang Pang, Yang Song

High dynamic range omnidirectional image (HOI) can provide more real and immersive watching experience for viewers, thus has become an important presentation of virtual reality technology. However, both the system processing and the characteristics of HOI make the design of HOI quality metric (HOIQM) a challenging issue. In this work, considering the difference between whole field of view (FoV) and viewer-selected viewport, distortion features from both global and local perspectives are extracted, and a blind HOIQM is proposed. Specifically, because different regions have different projections in SSP projection, we have constructed the optimal bivariate response pair in the equatorial region and bipolar region according to their projection direction, and parameters in the BGGD based-spatial oriented correlation model are extracted as global statistical features. Meanwhile, combined with the visual perception for HOI, the key blocks are determined in equatorial region, and the local statistical characteristics of the key blocks are extracted by analyzing the distribution of multiscale structure information. Finally, the global and local features are regressed by SVR to obtain the final HOI quality. Experimental results on NBU-HOID database demonstrate that the proposed quality metric is outperformed the existing representative quality metrics and is more consistent with human visual perception for HOI.

高动态范围全向图像(HOI)能为观众提供更真实、更身临其境的观看体验,因此已成为虚拟现实技术的重要表现形式。然而,无论是系统处理还是 HOI 的特性,都使得 HOI 质量度量(HOIQM)的设计成为一个具有挑战性的问题。在这项工作中,考虑到整个视场(FoV)和观众选择的视口之间的差异,提取了全局和局部视角的失真特征,并提出了一种盲 HOIQM。具体来说,由于不同区域在 SSP 投影中的投影方向不同,我们根据其投影方向在赤道区和双极区构建了最优双变量响应对,并提取了基于 BGGD 的空间定向相关模型中的参数作为全局统计特征。同时,结合 HOI 的视觉感知,确定赤道区的关键区块,并通过分析多尺度结构信息的分布,提取关键区块的局部统计特征。最后,通过 SVR 对全局和局部特征进行回归,得到最终的 HOI 质量。在 NBU-HOID 数据库上的实验结果表明,所提出的质量度量优于现有的代表性质量度量,并且更符合人类对 HOI 的视觉感知。
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引用次数: 0
Gated Spatial–Temporal Merged Transformer Inspired by Multimask and Dual Branch for Traffic Forecasting 受多任务和双分支启发的门控时空合并变换器用于交通预测
IF 1.1 4区 工程技术 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2024-07-24 DOI: 10.1049/2024/8639981
Yongpeng Yang, Zhenzhen Yang, Zhen Yang

As an essential part of intelligent transportation system (ITS), traffic forecasting has provided crucial role for traffic management and risk assessment. However, complex spatial–temporal dependencies, heterogeneity, dynamicity, and periodicity of traffic data influence the traffic forecasting performance. Consequently, we propose a novel effective gated spatial–temporal merged transformer (GSTMT) inspired by multimask and dual branch for accurate traffic forecasting in this paper. Specifically, we first conduct a concatenation of gated spatial static mask transformer (GSSMT) and gated spatial dynamic mask transformer (GSDMT) with residual network. The GSSMT and GSDMT evolve from the traditional transformer by making preferable modifications that include gated linear unit (GLU), multimask mechanism including static mask matrix (SMM) and dynamic mask matrix (DMM), and spatial attention (SA). Among them, GLU is to promote the performance of capturing spatial dependency, dynamicity, and heterogeneity due to advanced performance for controlling information flow through layers. Additionally, by developing multimask mechanism including two novel SMM and DMM, the proposed GSTMT can precisely model the static and dynamic spatial structure for effectively highlighting static dependency and dynamicity. And SA is injected for enhancing the ability of capturing spatial dependency of GSSMT and GSDMT. Secondly, we develop a dual-branch gated temporal transformer (DBGTT) for capturing temporal dependency, heterogeneity, dynamicity, and periodicity via incorporating the GLU and mixed time series decomposition (MTD) into traditional transformer. Similarly, we also introduce the GLU for empowering DBGTT with capability of capturing temporal dependency, dynamicity, and heterogeneity. In addition, MTD, which brings dual-branch mechanism, can enhance the DBGTT for capturing more detailed temporal information via exploiting global and periodic profile of traffic data. At last, some experiments, which are performed on several real-world traffic datasets, demonstrate the better results over classic traffic forecasting methods.

作为智能交通系统(ITS)的重要组成部分,交通预测在交通管理和风险评估方面发挥着至关重要的作用。然而,交通数据复杂的时空依赖性、异质性、动态性和周期性影响了交通预测的性能。因此,我们在本文中受多任务和双分支的启发,提出了一种新型有效的门控时空合并变换器(GSTMT),用于准确的交通预测。具体来说,我们首先利用残差网络对选通空间静态掩码变换器(GSSMT)和选通空间动态掩码变换器(GSDMT)进行合并。GSSMT 和 GSDMT 在传统转换器的基础上进行了改进,包括门控线性单元(GLU)、包括静态掩模矩阵(SMM)和动态掩模矩阵(DMM)在内的多任务机制以及空间注意力(SA)。其中,门控线性单元(GLU)具有控制信息流通过各层的先进性能,可提高捕捉空间依赖性、动态性和异质性的性能。此外,通过开发包括两种新型 SMM 和 DMM 的多任务机制,所提出的 GSTMT 可以精确地模拟静态和动态空间结构,从而有效地突出静态依赖性和动态性。此外,我们还注入了 SA,以增强 GSSMT 和 GSDMT 捕获空间依赖性的能力。其次,我们开发了双分支门控时空变换器(DBGTT),通过在传统变换器中加入 GLU 和混合时间序列分解(MTD)来捕捉时空依赖性、异质性、动态性和周期性。同样,我们还引入了 GLU,使 DBGTT 具备捕捉时间依赖性、动态性和异质性的能力。此外,带来双分支机制的 MTD 可以增强 DBGTT 的功能,通过利用交通数据的全局性和周期性特征来捕捉更详细的时间信息。最后,在几个实际交通数据集上进行的一些实验证明,与传统交通预测方法相比,该方法具有更好的效果。
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引用次数: 0
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IET Signal Processing
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