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Modeling an Enhanced Modulation Classification Approach using Arithmetic Optimization with Deep Learning for MIMO-OFDM Systems 利用算术优化和深度学习为 MIMO-OFDM 系统建立增强型调制分类方法模型
IF 0.9 4区 工程技术 Q4 INSTRUMENTS & INSTRUMENTATION Pub Date : 2024-04-13 DOI: 10.2478/msr-2024-0007
M Venkatramanan, M Chinnadurai
In a Multiple-Input Multiple-Output Orthogonal Frequency Division Multiplexing (MIMO-OFDM) method, multiple antennas can be used on either the transmitter or receiver end to improve the system capacity, data throughput, and robustness. OFDM has been used as the modulation system that divides the data stream into multiple parallel low-rate subcarriers. MIMO enhances the system by utilizing spatial diversity and multiplexing abilities. Modulation classification in the MIMO-OFDM systems describes the process of recognizing the modulation scheme used by the communicated signals in a MIMO-OFDM communication system. This is a vital step in receiver design as it enables proper demodulation of the received signals. In this paper, an Enhanced Modulation Classification Approach using an Arithmetic Optimization Algorithm with Deep Learning (EMCA-AOADL) is developed for MIMO-OFDM systems. The goal of the presented EMCAAOADL technique is to detect and classify different types of modulation signals that exist in MIMO-OFDM systems. To accomplish this, the EMCA-AOADL technique performs a feature extraction process based on the Sevcik Fractal Dimension (SFD). For modulation classification, the EMCA-AOADL technique uses a Convolution Neural Network with Long Short-Term Memory (CNN-LSTM) approach. Finally, the hyperparameter values of the CNN-LSTM algorithm can be chosen by using AOA. To highlight the better recognition result of the EMCA-AOADL approach, a comprehensive range of simulations was performed. The simulation values illustrate the better results of the EMCA-AOADL algorithm.
在多输入多输出正交频分复用(MIMO-OFDM)方法中,可在发射端或接收端使用多个天线,以提高系统容量、数据吞吐量和鲁棒性。OFDM 被用作调制系统,将数据流分成多个并行的低速率子载波。多输入多输出(MIMO)利用空间分集和复用能力增强了系统。MIMO-OFDM 系统中的调制分类描述了识别 MIMO-OFDM 通信系统中通信信号所使用的调制方案的过程。这是接收器设计中至关重要的一步,因为它能对接收信号进行正确的解调。本文针对 MIMO-OFDM 系统开发了一种使用深度学习算术优化算法的增强型调制分类方法(EMCA-AOADL)。所提出的 EMCAAOADL 技术的目标是检测 MIMO-OFDM 系统中存在的不同类型的调制信号并对其进行分类。为此,EMCA-AOADL 技术根据塞夫西克分形维度(SFD)执行特征提取过程。在调制分类方面,EMCA-AOADL 技术采用了具有长短期记忆的卷积神经网络(CNN-LSTM)方法。最后,CNN-LSTM 算法的超参数值可通过 AOA 进行选择。为了突出 EMCA-AOADL 方法更好的识别效果,我们进行了一系列全面的模拟。模拟值表明,EMCA-AOADL 算法的识别效果更好。
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引用次数: 0
Comparative Performance Analysis of Metaheuristic Feature Selection Methods for Speech Emotion Recognition 用于语音情感识别的元启发式特征选择方法的性能比较分析
IF 0.9 4区 工程技术 Q4 INSTRUMENTS & INSTRUMENTATION Pub Date : 2024-04-13 DOI: 10.2478/msr-2024-0010
Turgut Ozseven, Mustafa Arpacioglu
Emotion recognition systems from speech signals are realized with the help of acoustic or spectral features. Acoustic analysis is the extraction of digital features from speech files using digital signal processing methods. Another method is the analysis of time-frequency images of speech using image processing. The size of the features obtained by acoustic analysis is in the thousands. Therefore, classification complexity increases and causes variation in classification accuracy. In feature selection, features unrelated to emotions are extracted from the feature space and are expected to contribute to the classifier performance. Traditional feature selection methods are mostly based on statistical analysis. Another feature selection method is the use of metaheuristic algorithms to detect and remove irrelevant features from the feature set. In this study, we compare the performance of metaheuristic feature selection algorithms for speech emotion recognition. For this purpose, a comparative analysis was performed on four different datasets, eight metaheuristics and three different classifiers. The results of the analysis show that the classification accuracy increases when the feature size is reduced. For all datasets, the highest accuracy was achieved with the support vector machine. The highest accuracy for the EMO-DB, EMOVA, eNTERFACE’05 and SAVEE datasets is 88.1%, 73.8%, 73.3% and 75.7%, respectively.
语音信号的情感识别系统是在声学或频谱特征的帮助下实现的。声学分析是利用数字信号处理方法从语音文件中提取数字特征。另一种方法是利用图像处理对语音的时频图像进行分析。通过声学分析获得的特征大小以千计。因此,分类的复杂性会增加,并导致分类准确性的变化。在特征选择中,与情感无关的特征会从特征空间中提取出来,并有望对分类器的性能做出贡献。传统的特征选择方法大多基于统计分析。另一种特征选择方法是使用元启发式算法来检测和去除特征集中的无关特征。在本研究中,我们比较了元启发式特征选择算法在语音情感识别中的性能。为此,我们对四个不同的数据集、八种元启发式算法和三种不同的分类器进行了比较分析。分析结果表明,当特征大小减小时,分类准确率就会提高。在所有数据集中,支持向量机的分类准确率最高。EMO-DB、EMOVA、eNTERFACE'05 和 SAVEE 数据集的最高准确率分别为 88.1%、73.8%、73.3% 和 75.7%。
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引用次数: 0
Quadrature Response Spectra Deep Neural Based Behavioral Pattern Analytics for Epileptic Seizure Identification 基于正交响应谱深度神经的行为模式分析用于癫痫发作识别
IF 0.9 4区 工程技术 Q4 INSTRUMENTS & INSTRUMENTATION Pub Date : 2024-04-13 DOI: 10.2478/msr-2024-0009
R Vishalakshi, S Mangai, C Sharmila, S Kamalraj
The brain’s Electroencephalogram (EEG) signals contain essential information about the brain and are widely used to support the analysis of epilepsy. By analyzing brain behavioral patterns, an accurate classification of different epileptic states can be made. The behavioral pattern analysis using EEG signals has become increasingly important in recent years. EEG signals are boisterous and non-linear, and it is a demanding mission to design accurate methods for classifying different epileptic states. In this work, a method called Quadrature Response Spectra-based Gaussian Kullback Deep Neural (QRS-GKDN) Behavioral Pattern Analytics for epileptic seizures is introduced. QRS-GKDN is divided into three processes. First, the EEG signals are preprocessed using the Quadrature Mirror Filter (QMF) and the Power Frequency Spectral (PFS) and Response Spectra (RS)-based Feature Extraction is applied for Behavioral Pattern Analytics. The QMF function is applied to the preprocessed EEG input signals. Then, relevant features for behavioral pattern analysis are extracted from the processed EEG signals using the PFS and RS function. Finally, Gaussian Kullback–Leibler Deep Neural Classification (GKDN) is implemented for epileptic seizure identification. Furthermore, the proposed method is analyzed and compared with dissimilar samples. The results of the Proposed method have superior prediction in a computationally efficient manner for identifying epileptic seizure based on the analyzed behavioral patterns with less error and validation time.
脑电图(EEG)信号包含大脑的重要信息,被广泛用于支持癫痫分析。通过分析大脑行为模式,可以对不同的癫痫状态进行准确分类。近年来,利用脑电信号进行行为模式分析变得越来越重要。脑电信号嘈杂且非线性,如何设计出准确的方法对不同的癫痫状态进行分类是一项艰巨的任务。本文介绍了一种名为基于正交响应谱的高斯库尔贝克深度神经(QRS-GKDN)的癫痫发作行为模式分析方法。QRS-GKDN 分为三个过程。首先,使用正交镜像滤波器(QMF)对脑电信号进行预处理,然后应用基于功率频率谱(PFS)和响应谱(RS)的特征提取进行行为模式分析。QMF 函数应用于预处理后的脑电图输入信号。然后,使用 PFS 和 RS 函数从处理过的脑电信号中提取行为模式分析的相关特征。最后,采用高斯库尔巴克-莱伯勒深度神经分类法(GKDN)进行癫痫发作识别。此外,还对所提出的方法进行了分析,并与不同样本进行了比较。拟议方法的结果以一种计算高效的方式进行了卓越的预测,可根据分析的行为模式识别癫痫发作,误差和验证时间较少。
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引用次数: 0
Study on Oil-Water Two-phase Flow in the Invisible Measuring Pipeline of the Horizontal Tri-electrode Capacitive Sensor 水平三电极电容式传感器隐形测量管道中的油水两相流研究
IF 0.9 4区 工程技术 Q4 INSTRUMENTS & INSTRUMENTATION Pub Date : 2024-04-13 DOI: 10.2478/msr-2024-0008
Lei Li, Ming Wang, Dahai Wang, Xuewei Gao, Qianhui Zhu
Based on the well logging requirements of horizontal stripper wells, the flow characteristics of the oil-water two-phase flow in the invisible horizontal tri-electrode capacitive sensor (HTCS) measurement pipeline are studied. First, an experimental device and a numerical validation model of a horizontal 20 mm glass pipeline are established to study the flow characteristics of the oil-water two-phase flow. Then, the flow characteristics of the horizontal oil-water two-phase flow in the measurement pipeline under different horizontal inclination angles are studied and the flow patterns and inclination angles suitable for the new tri-electrode capacitive sensor are discussed. Finally, using the horizontal oil-water two-phase flow loop platform of the largest oil and gas testing center in China, the dynamic response of the new capacitive sensor is studied under different inclination angles, flow rates, and water-cut conditions, and the dynamic response law is analyzed based on the simulation results.
根据水平剥离井的测井要求,研究了隐形水平三电极电容式传感器(HTCS)测量管线中油水两相流的流动特性。首先,建立了 20 毫米水平玻璃管道的实验装置和数值验证模型,以研究油水两相流的流动特性。然后,研究了不同水平倾角下水平油水两相流在测量管道中的流动特性,并讨论了适合新型三电极电容式传感器的流动模式和倾角。最后,利用国内最大的油气测试中心的水平油水两相流环流平台,研究了新型电容式传感器在不同倾角、流速和断水条件下的动态响应,并根据模拟结果分析了其动态响应规律。
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引用次数: 0
A Cloud-Connected Digital System for Type-1 Diabetes Prediction using Time Series LSTM Model 利用时间序列 LSTM 模型预测 1 型糖尿病的云连接数字系统
IF 0.9 4区 工程技术 Q4 INSTRUMENTS & INSTRUMENTATION Pub Date : 2024-04-13 DOI: 10.2478/msr-2024-0011
K. Priyadarshini, Alanoud Al Mazroa, Mohammad Alamgeer, V. Subashree
Millions of people worldwide suffer from diabetes, a medical condition that is spreading at an accelerating pace. Numerous studies show that risk factors that may arise from diabetes can be avoided if the disease is detected early. The health-care monitoring system has benefited greatly from early diabetes prediction made possible by the integration of Deep Learning (DL) and Machine Learning (ML) algorithms. The objective of many early studies was to increase the prediction model accuracy. However, DL algorithms often cannot fully exploit the potential of the available datasets because they are too small. This study includes a very accurate DL model as well as a novel system that integrates cloud services and allows users to directly enhance an existing data set, which can increase the accuracy of DL techniques. Therefore, the Long Short-Term Memory (LSTM) model with controller is chosen for efficient type-1 diabetes prediction. Experimental validation of the proposed Nonlinear Model Predictive Control (NMPC)_LSTM algorithm method is compared with other conventional DL algorithms. The proposed controller method achieves excellent blood glucose set point tracking and the proposed algorithms achieves 98.95% accuracy for the obtained data. It outperforms other existing methods with an increase in percentage accuracy compared to the Benchmark Pima Indian Diabetes Datasets (PIDD).
全世界有数百万人患有糖尿病,这种疾病正在加速蔓延。大量研究表明,如果能及早发现糖尿病,就可以避免可能引发糖尿病的风险因素。深度学习(DL)和机器学习(ML)算法的整合使早期糖尿病预测成为可能,这让医疗保健监测系统受益匪浅。许多早期研究的目标是提高预测模型的准确性。然而,由于可用数据集太小,DL 算法往往无法充分挖掘其潜力。这项研究包括一个非常精确的 DL 模型以及一个新颖的系统,该系统整合了云服务,允许用户直接增强现有数据集,从而提高 DL 技术的准确性。因此,我们选择了带有控制器的长短期记忆(LSTM)模型,用于高效预测 1 型糖尿病。实验验证了所提出的非线性模型预测控制(NMPC)_LSTM 算法方法与其他传统 DL 算法的比较。所提出的控制器方法实现了出色的血糖设定点跟踪,所提出的算法对所获得数据的准确率达到了 98.95%。与基准皮马印度糖尿病数据集(PIDD)相比,该算法的准确率提高了,优于其他现有方法。
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引用次数: 0
A High-Performance Method Based on Features Fusion of EEG Brain Signal and MRI-Imaging Data for Epilepsy Classification 基于脑电图脑信号和核磁共振成像数据特征融合的高性能癫痫分类方法
IF 0.9 4区 工程技术 Q4 INSTRUMENTS & INSTRUMENTATION Pub Date : 2024-03-07 DOI: 10.2478/msr-2024-0001
Fatma Demirezen Yağmur, Ahmet Sertbaş
A 1-dimensional (1D) and 2-dimensional (2D) biomedical signal analysis based on the Discrete Cosine Transform (DCT) feature extraction method was performed to diagnose epilepsy disorders with high accuracy. For this purpose, Electroencephalogram (EEG) data were used for 1D signal analysis and Magnetic Resonance Imaging (MRI) data were used for 2D signal analysis. The feature vectors were obtained by applying 1D DCT together with statistical methods such as mean, variance, standard deviation, kurtosis, and skewness for EEG data and by applying 2D DCT together with the statistical method of mean for MRI data. The most useful features were selected by applying Principal Component Analysis (PCA), Linear Discriminant Analysis (LDA), Forward Selection and Backward Selection methods to the obtained feature vectors. Using EEG stand-alone features, MRI stand-alone features and EEG-MRI fused features, the classification of healthy and epileptic subjects was performed in the form of two clusters. The result of epilepsy classification in this work is 96% success of 1D EEG data by using the features selected by the PCA method, 94% success of 2D MRI data using the selected features by applying the Forward Method, 100% classification accuracy of 1D EEG and 2D MRI datasets by LDA method using the obtained fused features . The article shows that the fused features of EEG-MRI can be used very effectively for the diagnosis of epilepsy.
基于离散余弦变换(DCT)特征提取方法进行了一维(1D)和二维(2D)生物医学信号分析,以高精度诊断癫痫疾病。为此,脑电图(EEG)数据用于一维信号分析,磁共振成像(MRI)数据用于二维信号分析。对于脑电图数据,通过应用一维 DCT 以及平均值、方差、标准差、峰度和偏度等统计方法获得特征向量;对于磁共振成像数据,通过应用二维 DCT 以及平均值统计方法获得特征向量。通过对获得的特征向量应用主成分分析(PCA)、线性判别分析(LDA)、前向选择和后向选择方法,筛选出最有用的特征。利用脑电图独立特征、磁共振成像独立特征和脑电图-磁共振成像融合特征,以两个聚类的形式对健康受试者和癫痫受试者进行了分类。这项工作的癫痫分类结果是:使用 PCA 方法选择的特征,1D EEG 数据的成功率为 96%;使用前向方法选择的特征,2D MRI 数据的成功率为 94%;使用获得的融合特征,通过 LDA 方法,1D EEG 和 2D MRI 数据集的分类准确率为 100%。文章表明,EEG-MRI 的融合特征可非常有效地用于癫痫诊断。
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引用次数: 0
Optimization of Component Assembly in Automotive Industry 优化汽车行业的部件组装
IF 0.9 4区 工程技术 Q4 INSTRUMENTS & INSTRUMENTATION Pub Date : 2024-03-07 DOI: 10.2478/msr-2024-0005
Jaromír Křepelka, Petr Schovánek, Pavel Tuček, Miroslav Hrabovský, František Jáně
This article is devoted to the positioning of glued parts by robots in the process of manufacturing automotive headlights, with the possibility of generalization to the mutual positioning of any 3D object. The authors focused on the description of the mathematical method that leads to the optimization of the robot arm setting and ensures the closest contact of the glued parts. The contact surfaces of the two joined parts are, in the ideal case, identical in shape and their optimal alignment is considered to best align the position of the nominal points on the base part with the position of the control (measured) points on the part manipulated by the robot.
这篇文章专门讨论了在制造汽车前大灯的过程中机器人对涂胶部件的定位,并有可能推广到任何三维物体的相互定位。作者重点描述了数学方法,该方法可优化机器人手臂的设置,并确保涂胶部件的最紧密接触。在理想情况下,两个连接部件的接触面形状完全相同,它们的最佳对齐方式被认为是将基本部件上的标称点位置与机器人所操纵部件上的控制(测量)点位置进行最佳对齐。
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引用次数: 0
Design of Calibration System for Multi-Channel Thermostatic Metal Bath 多通道恒温金属浴校准系统的设计
IF 0.9 4区 工程技术 Q4 INSTRUMENTS & INSTRUMENTATION Pub Date : 2024-03-07 DOI: 10.2478/msr-2024-0004
Hua Zhuo, Yan Xu, Weihu Zhou, Feng Li, Yikun Zhao
The use of the thermostatic metal bath is becoming more and more extensive and the requirements for its precision and reliability are also increasing. To meet the needs of the metal bath calibration, a 12-channel thermostatic metal bath temperature field calibration system based on a four-wire PT100 has been designed. The system design includes a front-end temperature measurement component, which consists of a four-wire PT100 and a thermostatic block, and a signal processing component, which consists of a bidirectional constant current source excitation unit, a signal conditioning unit and a high-precision acquisition unit. The STM32f407 is used as the main control chip, and the analog channel selector is used for 12-channel selection. The constant current source is used for signal excitation, the proportional method is used to measure the PT100 resistance, and an acquisition circuit with a high-precision 32-bit ADS1263 analog-to-digital converter is used to amplify, filter and convert the analog signal. After piecewise linear fitting and system calibration, the temperature measurement accuracy can reach 0.4 mK, which meets the calibration requirements of the thermostatic metal bath.
恒温金属浴的应用越来越广泛,对其精度和可靠性的要求也越来越高。为了满足金属浴校准的需要,我们设计了一种基于四线 PT100 的 12 通道恒温金属浴温度现场校准系统。系统设计包括前端温度测量组件(由四线 PT100 和恒温块组成)和信号处理组件(由双向恒流源激励单元、信号调理单元和高精度采集单元组成)。STM32f407 用作主控芯片,模拟通道选择器用于 12 通道选择。恒流源用于信号激励,比例法用于测量 PT100 电阻,带有高精度 32 位 ADS1263 模数转换器的采集电路用于放大、滤波和转换模拟信号。经过分片线性拟合和系统校准后,温度测量精度可达 0.4 mK,满足恒温金属浴的校准要求。
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引用次数: 0
Measurement Approach to Evaluation of Ultra-Low-Voltage Amplifier ASICs 评估超低电压放大器 ASIC 的测量方法
IF 0.9 4区 工程技术 Q4 INSTRUMENTS & INSTRUMENTATION Pub Date : 2024-03-07 DOI: 10.2478/msr-2024-0002
Richard Ravasz, Miroslav Potočný, Daniel Arbet, Martin Kováč, David Maljar, Lukáš Nagy, Viera Stopjaková
This article presents measurement circuits and a test board developed for the experimental evaluation of prototype chip samples of the Fully Differential Difference Amplifier (FDDA). The Device Under Test (DUT) is an ultra low-voltage, high performance integrated FDDA designed and fabricated in 130nm CMOS technology. The power supply voltage of the FDDA is 400mV. The measurement circuits were implemented on the test board with the fabricated FDDA chip to evaluate its main parameters and properties. In this work, we focus on evaluation of the following parameters: the input offset voltage, the common-mode rejection ratio, and the power supply rejection ratio. The test board was developed and verified. The test board error was measured to be 38.73mV. The offset voltage of the FDDA was −0.66mV. The measured FDDA gain and gain bandwidth were 48dB and 550kHz, respectively. In addition to the measurement board, a graphical user interface was also developed to simplify the control of the device under test during measurements.
本文介绍了为全差分放大器(FDDA)原型芯片样品的实验评估而开发的测量电路和测试板。被测设备(DUT)是一种超低电压、高性能集成 FDDA,采用 130nm CMOS 技术设计和制造。FDDA 的电源电压为 400mV。测量电路是在测试板上用制作好的 FDDA 芯片实现的,以评估其主要参数和性能。在这项工作中,我们重点评估了以下参数:输入失调电压、共模抑制比和电源抑制比。我们开发并验证了测试板。经测量,测试板误差为 38.73mV。FDDA 的偏移电压为 -0.66mV。测得的 FDDA 增益和增益带宽分别为 48dB 和 550kHz。除测量板外,还开发了一个图形用户界面,以简化测量期间对被测设备的控制。
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引用次数: 0
Analysis of Coupled Vibration Characteristics of Linear-Angular and Parameter Identification 线性-角耦合振动特性分析与参数识别
IF 0.9 4区 工程技术 Q4 INSTRUMENTS & INSTRUMENTATION Pub Date : 2024-03-07 DOI: 10.2478/msr-2024-0003
Bo Tang, Jiangen Yang, Wei Chen, Xu Ming
A steady-state sinusoidal and distortion-free excitation source is very important for the accuracy and consistency of the calibration parameters of micro-electro-mechanical systems (MEMS) inertial sensors. To solve the problem that the current MEMS inertial measurement unit (IMU) calibration device is unable to reproduce the spatial motion of linear and angular vibration coupling, research topics on the coupling vibration characteristics and parameter identification for an electromagnetic linear-angular vibration exciter are proposed. This research paper used Ampere’s law and Lorentz force to establish the analytical expressions for the electromagnetic force and electromagnetic torque of the electromagnetic linear-angular vibration exciter. Then, the main purpose of this paper is to establish uniaxial and coupled vibration electromechanical analogy models containing mechanical parameters based on the admittance-type electromechanical analogy principle, and the parameter identification model is also obtained by combining the impedance formula with the additional mass method. Finally, the validity of the coupling vibration characteristics and the parameter identification model are verified by the frequency response simulation and the additional mass method, and the relative error of each parameter identification is within 5% in this paper.
稳态正弦无畸变激励源对于微机电系统(MEMS)惯性传感器校准参数的准确性和一致性非常重要。为解决目前 MEMS 惯性测量单元(IMU)校准装置无法再现线性和角振动耦合空间运动的问题,提出了电磁线性-角振动激振器耦合振动特性和参数识别的研究课题。本文利用安培定则和洛伦兹力建立了电磁线-角振动激振器的电磁力和电磁转矩的解析表达式。然后,本文的主要目的是根据导纳型机电类比原理,建立包含机械参数的单轴和耦合振动机电类比模型,并结合阻抗公式和附加质量法得到参数识别模型。最后,本文通过频率响应仿真和附加质量法验证了耦合振动特性和参数识别模型的有效性,各参数识别的相对误差均在 5%以内。
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引用次数: 0
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Measurement Science Review
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