2026 No. 04

Publish Date:2026-04-06
ISSN:0258-7998
CN:11-2305/TN
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Special Column-Low-Altitude Technology and Engineering

A deep learning-based method for small target detection of inland river vessels oriented to UAVs

DOI:10.16157/j.issn.0258-7998.257615

Author:Li Yipeng,Yang Hua

Author Affilications:School of Information Engineering, Shanghai Maritime University

Abstract:In vessel detection from low-altitude UAV perspectives in inland rivers, traditional algorithms struggle to accurately detect small vessels due to issues such as small target size, vessel occlusion, complex backgrounds, light reflection, and wave disturbances. To address these problems, this study proposes an improved algorithm based on YOLOv11n—YOLO11-FFW (YOLO11—FEM FFM_Concat WIoUv2). To enhance the feature extraction ability for small vessel targets, the Feature Enhancement Module (FEM) is introduced, which expands the receptive field through multi-branch atrous convolution and integrates multi-scale contextual information. To improve multi-scale feature expression in complex backgrounds, the Feature Fusion Module Concat (FFM_Concat) is introduced, incorporating a learnable weight recalibration mechanism on top of the BiFPN structure, achieving adaptive fusion of high- and low-level features. To increase the model's robustness in scenarios with water surface reflection, occlusion, and dense targets, the loss function is improved to WIoUv2, dynamically balancing localization and classification losses. Experimental results show that compared to YOLOv11, YOLO11-FFW achieves a 1.4% increase in mAP@0.5, a 0.8% increase in precision, and a 2.4% increase in recall, which is verified to be effective in detecting small vessels in inland river scenarios from complex UAV perspectives.
Key word:
deep learning
YOLOv11
inland river vessel detection from UAV perspectives
small object detection
multi-scale feature fusion
WIoUv2

Lite-VAFNet: efficient multi-modal 3D object detection for UAV edge computing

DOI:10.16157/j.issn.0258-7998.267951

Author:Li Jiaxin1,Wang Yunhan1,2,Pan Guo1,Zhang Xiyu1

Author Affilications:1.National Computer System Enginering Research Institute of China;2.School of Cyber Science and Technology,Shandong University

Abstract:To address the conflict between the limited edge computing capacity of Unmanned Aerial Vehicles (UAVs) and the demand for high-precision multi-modal 3D detection, this paper proposes a lightweight detection network tailored for airborne platforms, termed Lite-VAFNet, building upon VAF-Net. A grid dimensionality-reduction detection head is constructed to compress the parameter volume by approximately 63%, thereby alleviating device storage constraints. A Linear-Bottleneck fusion module is designed to execute feature interaction with linear complexity, effectively eliminating the peak memory bottleneck. Furthermore, a collaborative acceleration framework integrating spatial resampling and logit distillation is introduced to overcome memory access limitations while compensating for the accuracy degradation induced by quantization. Experiments on the KITTI benchmark demonstrate that Lite-VAFNet achieves a 3D AP (Mod.) of 85.24% with merely 14.60 M parameters, significantly outperforming state-of-the-art models such as BEVFusion. This research strikes an optimal balance between accuracy and efficiency while substantially reducing resource consumption, exhibiting exceptional potential for edge deployment.
Key word:
drone perception
multimodal 3D object detection
model lightweighting
knowledge distillation
edge computing

Study on a comprehensive assessment framework for AI-empowered distributed generation orchestration

DOI:10.16157/j.issn.0258-7998.257690

Author:Guo Hao,Wang Chang,Xiao Lin

Author Affilications:State Grid Jibei Electric Power Company Limited Economic and Technological Research Institute

Abstract:In response to the scheduling complexities introduced by the integration of distributed generation and the limitations of existing single-dimensional evaluation methods, this study constructs a comprehensive evaluation index system for Artificial Intelligence (AI)-enabled distributed power scheduling. The system encompasses three dimensions: economy, environmental friendliness, and stability. The research employs a combination of the Analytic Hierarchy Process (AHP) and the entropy method, based on cluster analysis, for comprehensive weighting. Additionally, a multi-task deep learning algorithm incorporating an attention mechanism is designed to synchronously predict multi-dimensional indicators. Simulation results demonstrate that, compared to traditional scheduling schemes, the AI-enabled scheduling approach based on this evaluation system achieves a better overall balance across key indicators such as total cost, clean energy penetration rate, and power supply reliability. This provides effective theoretical and methodological support for the coordinated optimization of economy, environmental protection, and stability in power systems.
Key word:
distributed generation
evaluation indicators
Analytic Hierarchy Process(AHP)
entropy method

A deep reinforcement learning-based trajectory optimization method and simulation for cellular-connected UAVs

DOI:10.16157/j.issn.0258-7998.257391

Author:Li Shengchang1,Zhang Zhenxia1,Wang Lehe1,Wu Jiahua2,Yu Guo2,Meng Xianglu2

Author Affilications:1.Computer Application Technology Research Institute of China North Industries Group Corporation Limited;2.Dalian University of Technology

Abstract:Cellular-connected unmanned aerial vehicles (UAVs) show great potential in 5G networks. To address the challenge of maintaining stable connections with ground base stations during communication tasks, this paper investigates an UAV trajectory optimization problem. The objective is to jointly minimize the task completion time and communication outage duration while maximizing communication throughput as the UAV travels from the starting point to the destination within a given area. Considering the non-convex nature of the problem, a multi-step learning-based Dueling Double Deep Q Network (D3QN) algorithm is adopted to achieve adaptive trajectory optimization through interactive learning between the UAV and ground base stations. Simulation results show that, compared with the direct flight strategy, this method reduces the task completion time by 28%, cuts down the communication outage duration by 42%, and increases the average system throughput by 35%, achieving significant improvements in task efficiency, communication stability and system throughput.
Key word:
unmanned aerial vehicle
cellular communications
deep reinforcement learning
trajectory optimization
dueling double deep Q-network

Research on UAV target recognition algorithm based on multi-scale feature fusion

DOI:10.16157/j.issn.0258-7998.257364

Author:Liu Fang,Chen Wenrui,Sha Zhengyu

Author Affilications:The 723rd Research Institute of China State Shipbuilding Corporation

Abstract:To address the problems of low target recognition accuracy and poor real-time performance of unmanned aerial vehicles (UAVs) in complex environments, this paper proposes a UAV target recognition algorithm based on adaptive neural networks and multi-scale feature fusion. The algorithm employs an improved convolutional neural network to extract multi-level features, combines attention mechanisms to adaptively adjust feature weights, and enhances target representation capability through multi-scale feature fusion. Experiments on the DroneCrowd dataset demonstrate that compared to algorithms such as ResNet-50, YOLOv11 and EfficientNet, the proposed method achieves an average recognition accuracy of 94.3%, representing an improvement of 8.7 percentage points over ResNet-50 and 2.0 percentage points over YOLOv11; an F1 score of 93.9%; and a processing speed of 61.0 FPS, representing a 35% improvement over ResNet-50. The method exhibits excellent robustness, providing an effective solution for UAV target recognition.
Key word:
drone recognition
deep learning
multi-scale features
attention mechanism
target detection

Airborne infrared small target detection algorithm based on instance migration

DOI:10.16157/j.issn.0258-7998.267733

Author:Liu Tong1,Song Jiale2,Li Zhihe1,Jiang Xiaoxu1,Gao Fang1,Hu Jinxi1

Author Affilications:1.Pinggao Group Smart Energy Technology Research Institute;2.Beijing Aerospace Unmanned Aerial Vehicle Systems Engineering Research Institute

Abstract:In recent years, airborne infrared small target detection technology has become a research hotspot in the military and civilian fields. However, in practical applications, the influence of factors such as complex background and low signal-to-noise ratio still make infrared small target detection a challenge. Therefore, this paper proposes an improved airborne infrared small target detection algorithm AIR-YOLOv7, and uses the example transfer learning method to analyze the characteristics of small infrared targets, expand the data set, and further improve the performance of the algorithm. The experimental results show that the AIR-YOLOv7 algorithm has a better performance in infrared small target detection in airborne complex scenes, with a mAP value of 97.09% and an FPS of 102.09. With only a small amount of expansion of the data set in this paper, the instance migration method increases the mAP value of the algorithm by 0.96 percentage points, which provides a theoretical basis for the subsequent hardware platform edge computing transplantation.
Key word:
small target detection
transfer learning
airborne complex scene
infrared image

Integrated Circuits and Its Applications

Research on the impact of interconnect delay on test time

DOI:10.16157/j.issn.0258-7998.257193

Author:Lin Xiaohui1,Chen Yuxuan1,Song Guodong1,Tao Kaiqiang2

Author Affilications:1.China Electronics Technology Group Corporation No.58 Research Institute;2.Unit 95937 of the People’s Liberation Army

Abstract:In the mass production testing of FPGA devices, the internal interconnection resources consume a significant amount of testing time. How to reduce testing time and save testing costs has been a major challenge for mass production. To address this issue, taking the XCKU5P FPGA as a verification example, we used Vivado to perform timing simulation on the tested interconnection paths, and based on the actual measurements from the ATE, we obtained the transmission delay of the interconnection lines, which was consistent with the simulation results. Furthermore, we studied the interconnection line delay under different test temperatures and identified the reasonable and stable delay wait time for ATE testing of FPGA interconnection functions. Through validation, adding 100 ns to the minimum delay wait time required for low-temperature functional testing can meet the stability requirements of three-temperature testing, effectively reducing the unnecessary redundant wait time set based on experience, thus improving testing efficiency and reducing testing costs.
Key word:
interconnect line
FPGA
transmission delay
automatic test equipment
test optimization

Research and practice on black-box testing methodology for FPGA software based on code review

DOI:10.16157/j.issn.0258-7998.257068

Author:Song Xiaojing,Liu Shiyu,Su Mingyue,Li Dongfang

Author Affilications:Beijing Institute of Computer Technology and Application

Abstract:In recent years, Field-Programmable Gate Arrays (FPGAs) have been increasingly adopted in critical domains such as high-performance computing, aerospace, and communication systems, with their functionalities becoming ever more vital. As a result, the importance of FPGA software testing has grown significantly. However, insufficient testing of Intellectual Property (IP) cores remains a persistent challenge. This paper proposes a code review-based black-box testing approach that integrates static code analysis with black-box testing to enhance test adequacy. We begin by reviewing the current landscape of FPGA software testing, analyzing the limitations of both dynamic and static analysis techniques, and underscoring the essential role of black-box testing in IP core validation. A black-box testing framework based on code review is then constructed, featuring two core components: rule checking and configuration checking, which aim to identify and resolve potential design issues. Case studies on the missing reset signal in a PLL IP core and impedance mismatch in RS422 interface LVDS primitives demonstrate the practical effectiveness of this method in FPGA testing projects.
Key word:
FPGA software testing
black-box testing
code review
IP core validation

Micro-current detection system for electron beam equipment

DOI:10.16157/j.issn.0258-7998.257399

Author:Han Ao,Tan Xiaolin,Wu Shikun,Chen Zhanglong,Gong Xiaoliang

Author Affilications:The 48th Research Institute of China Electronics Technology Group Corporation

Abstract: A micro-current detection system is designed in this paper, it can be used to detect the weak current signal of electron beam equipment from picoampere level to nanoampere level. The design uses a transimpedance amplifier I/V conversion circuit structure, considering device selection, circuit cascade amplification, pure power supply, filter noise reduction, embedded computing, shielding and grounding, etc., the picoampere-level micro-current is amplified. At the same time, a dual-range selection circuit is designed to expand the measurement range to the hundred-nana level, and the amplified electrical signal is collected and optimized by the MCU microprocessor. Experiments show that the system can realize the measurement of weak current signal, and can be adjusted to a large range, and the measurement error is less than 0.5%, and the linearity is excellent and the response is fast.
Key word:
micro-current detection
transimpedance amplification
I/V conversion
bipolar power supply
multi-range measurement

The design of Hall type wheel speed sensor circuit

DOI:10.16157/j.issn.0258-7998.257168

Author:Wang Xiangjiu,Song Shuxiang,Cai Chaobo,Jiang Pinqun

Author Affilications:1.School of Electronics and Information Engineering/School of Integrated Circuits, Guangxi Normal University;2.Guangxi Key Laboratory of Brain-Inspired Computing and Intelligent Chips, Guangxi Normal University;3.Key Laboratory of Integrated Circuits and Microsystems, Guangxi Normal University;4.Optoelectronic Information Technology Engineering Research Center, Guangxi Normal University

Abstract:This paper addresses the issues of poor anti-interference capability and unstable output in magnetic-electric wheel speed sensor circuits. Based on the principle of Hall-effect wheel speed sensors, a Hall-type wheel speed sensor circuit was designed using a 0.18 μm BCD process. The circuit includes functional modules such as an amplifier, a bandpass filter, and a hysteresis voltage comparator. To mitigate the offset voltage inherent in Hall devices, a voltage bias orthogonalization method employing four Hall elements was adopted. Simulations conducted with Cadence Virtuoso demonstrate that the proposed Hall sensor circuit exhibits strong anti-interference performance. It consistently outputs square wave signals with stable amplitude across an input voltage range of 4.5 V to 30 V and an operating temperature range of -40 ℃ to 125 ℃, enabling accurate measurement of vehicle speed.
Key word:
Hall effect
wheel speed sensor
amplifier
bandpass filter
hysteresis voltage comparator

Analysis of the impact of scanning circuit performance on images in SEM

DOI:10.16157/j.issn.0258-7998.257241

Author:Huang Yu,Wang Weiwei,Kang Lei,Gong Xiaoliang,Chen Long

Author Affilications:The 48th Research Institute of China Electronics Technology Group Corporation

Abstract:The image quality of the Scanning Electron Microscope (SEM) is highly dependent on the accuracy and stability of the output signals from its scanning circuitry. However, the impact of scanning signals on image quality remains insufficiently explored in existing research. To address this, a transmission mechanism from scanning signals to image quality was established, and the influence of scanning signal performance metrics on the image was analyzed. Using high-precision digital multimeters and oscilloscopes, actual scanning signals were accurately measured. Data processed via the endpoint fitting method enabled quantification of error levels in both field and line scanning signals under a 512×512 pixel mode. Furthermore, MATLAB was employed to simulate the impact of various errors on a standard grid image, and measured signal data were imported to evaluate their effect in practical imaging. The results indicate that the scanning signals exhibit good overall linear performance, with an average error of 1.884 pixels in the central region, superior to the 2.749 pixels observed in the peripheral region.
Key word:
scanning electron microscope(SEM)
scanning circuitry
linearity error
differential nonlinearity(DNL)
integral nonlinearity (INL)
image quality evaluation

Communication and Network

Recognition of abnormal human behavior in intelligent security monitoring of power plants based on time attention enhancement

DOI:10.16157/j.issn.0258-7998.257046

Author:Zhang Wei,Xu Hu,Shang Zhiqiang

Author Affilications:Hebei International Zhangjiakou Thermal Power Co.,Ltd.

Abstract:The switching of strong light or the interweaving of shadows within the power plant area can affect the stability of feature points, causing the temporal information to break during the processing of high frame rate video streams. It is difficult to obtain the change direction of human feature points in continuous video frames, resulting in a relatively high average EER for behavior recognition. For this purpose, research on the recognition of abnormal human behaviors in intelligent security monitoring of power plants based on temporal attention enhancement has been carried out. The temporal attention enhancement module is introduced to enhance the short-distance and long-distance temporal features of surveillance videos. After fusion, a joint feature spanning multiple video segments is output to correlate the information of the segmented video frames. The distance-rotation angle representation method is used to calculate the change direction of human feature points in consecutive video frames, and abnormal behaviors are identified based on the direction relationship. On the test dataset, the design method outputs human feature information spanning multiple video segments. The AUC for its abnormal behavior recognition reached 0.92, and the mean EER was stable within 0.15, which was at a relatively low level.
Key word:
time attention enhancement
security monitoring
abnormal human behavior
short distance temporal feature enhancement
long distance temporal feature enhancement
distance corner representation method
feature points

Research of path planning for UAV-enabled WRSNs based on energy efficiency

DOI:10.16157/j.issn.0258-7998.256988

Author:Yang Jing1,Yan Ruirui2

Author Affilications:1.Xi'an Aeronautical Polytechnic Institute;2.State Grid Shanxi Electric Power Company

Abstract:Utilizing unmanned aerial vehicles (UAVs) to charge energy-constrained sensor nodes can effectively mitigate the problem of service interruption caused by node energy depletion. However, due to the limited energy capacity of UAVs, minimizing the mission time while ensuring complete charging of sensor nodes is crucial for reducing UAV energy consumption. To address this challenge, this paper formulates an optimization problem aimed at minimizing UAV mission time, based on the UAV energy consumption model, the sensor node energy harvesting model, and the remaining energy levels of the nodes. Furthermore, a UAV scheduling algorithm is proposed, which transforms the optimization problem into a classic Traveling Salesman Problem (TSP) through node clustering and anchor point selection methods, and employs a genetic algorithm for path planning. Simulation experiments using synthetic data are conducted to evaluate the proposed algorithm. The results demonstrate that the proposed UAV flight strategy effectively reduces mission time under the same energy consumption conditions.
Key word:
residual energy
path planning
genetic algorithm
wireless charge
UAV mission time

Computer Technology

NeRF-based 3D reconstruction with multi-scale feature fusion

DOI:10.16157/j.issn.0258-7998.256786

Author:Chen Defeng1,2,3,Hu Junguo1,Liu Zhengfeng1,2,3,Zhu Chao1

Author Affilications:1.College of Mathematics and Computer Science, Zhejiang A & F University;2.Key Laboratory of Forestry Perception Technology and Intelligent Equipment of the State Forestry and Grassland Administration;3.Lin'an Agricultural Information Center Practice Base

Abstract:3D reconstruction plays a critical role in various fields, including computer vision and artificial intelligence, medical imaging, architecture, and urban planning. To address the inefficiency of traditional manual modeling methods, this paper proposes a method based on Neural Radiance Fields(NeRF) that incorporates multi-scale fusion and attention mechanisms. The approach introduces a multi-scale feature module combined with graph convolutional networks to enhance the network's understanding of spatial structures, allowing for more accurate capture of both local and global geometric relationships. The multi-scale feature module extracts information at different levels, improving the accuracy and comprehensiveness of detail reconstruction, which in turn enhances overall reconstruction quality.Additionally, to further improve the model's robustness and precision, a feature pyramid network is introduced to ensure the network can effectively capture important information across different scales, particularly in complex scenes where details might otherwise be lost. The integration of the Squeeze-and-Excitation attention mechanism allows the model to adaptively focus on key regions in the image, enhancing the representation of important features and improving reconstruction performance in challenging environments.Experimental results demonstrate that the proposed method outperforms the NeRF model on a self-built building dataset, achieving SSIM, PSNR and LPIPS of 0.784, 25.42 and 0.183, respectively. These metrics show improvements of 4.39%, 3.29% and 15.84% over the NeRF model, indicating better handling of complex reconstruction tasks. This method provides a new approach for 3D reconstruction in various application domains.
Key word:
3D reconstruction
graph convolutional network
feature pyramid network
NeRF
SE attention

Research and application of Web page generation method based on nested combinatorial model

DOI:10.16157/j.issn.0258-7998.256790

Author:Peng Longjiang1,2

Author Affilications:1.Software Development Department, Shanghai SIPAI Intelligent Systems Co.,Ltd.;2.Shanghai Institute of Process Automation & Instrumentation Co.,Ltd.

Abstract:In order to meet the needs of diverse user roles, heterogeneous data, and complex and changing page display requirements in the production, operation and management system platforms of different industries, a Web page generation method based on nested combinatorial model is proposed. By adopting a unified modeling language and object-oriented programming technology, combined with Vue.js and Nuxt.js frameworks, flexible configuration and efficient rendering of page elements are achieved. The proposed method has demonstrated satisfactory application results in different engineering projects, significantly reducing the configuration complexity and maintenance costs while enhancing the user experience, and it has high value for practical promotion.
Key word:
nested
combinatorial
Web page generation method
multi-source heterogeneous data
configurable pages

YJJFA: a data-driven high-performance regular expression matching algorithm

DOI:10.16157/j.issn.0258-7998.256942

Author:Yang Jiajia

Author Affilications:The Sixth Research Institute of China Electronics Corporation

Abstract:Under the background of the artificial intelligence era, regular expression matching technology plays a crucial role, particularly in data cleansing and data extraction domains, where it provides technical support for high-quality data processing required by large language model training. However, traditional regular expression matching algorithms suffer from performance bottlenecks that limit their application scope. To address this challenge, this paper proposes a data-driven high-performance regular expression matching algorithm, denoted as YJJFA algorithm. The algorithm reduces the number of input characters that need to be processed in the state transition table by partitioning it into optimal trusted regions and untrusted regions, while leveraging non-memory-access vector comparisons of the untrusted character set (UBCS) to achieve low-time-cost processing of trusted characters. Experimental results show that the YJJFA algorithm achieves a throughput rate of 17.88~53.81 Gb/s on L7filter rules, representing an order-of-magnitude performance improvement over conventional DFA implementations.
Key word:
regular expression matching
trusted zones
high-performance
data cleansing

Circuits and Systems

Design and implementation of a TDLAS methane detection system based on FPGA

DOI:10.16157/j.issn.0258-7998.257175

Author:Zhang Yanqun1,2,Jing Wanyang1,2,Su Dianqiang1,2,Ji Zhonghua1,2,Ma Weiguang1,2,Zhao Yanting1,2

Author Affilications:1.State Key Laboratory of Quantum Optics Technologies and Devices, Institute of Laser Spectroscopy, Shanxi Universitya;2.Collaborative Innovation Center of Extreme Optics, Shanxi University

Abstract:Tunable Diode Laser Absorption Spectroscopy (TDLAS) is widely applied in gas concentration measurements due to its high sensitivity. However, its detection performance is often limited by laser stability and the signal processing capability of the lock-in amplifier. In order to address this issue, this paper proposes a methane detection system based on FPGA. The system integrates the laser driver, which realizes accurate adjustment of injection current and stable maintenance of temperature, and the lock-in amplifier module for signal demodulation. The experimental results indicate that when the laser current is 62.5 mA, current fluctuation is ±1.5 μA, and the stability of temperature regulation module is ±0.0063 ℃ at 30 ℃. Methane absorption tests are carried out at a concentration of 2 to 20 μmol/mol over an optical path length of 15 m. At 20 μmol/mol, signal-to-noise ratio of the second harmonic signal is 42.66 dB, calculating detection limit is 146.98 nmol/mol. Continuous measurements below20 μmol/mol show an optimal averaging time of about 249 s and the Allan deviation is 17.25 nmol/mol. The comprehensive results indicate that the circuit system can meet the high sensitivity requirements in gas detection.
Key word:
TDLAS
voltage-controlled current source
temperature control
lock-in amplifier

Improved Huffman coding for process-level network message: a bypassable dictionary approach and hardware realization

DOI:10.16157/j.issn.0258-7998.256855

Author:Xu Zhengyu,Wang Feng,Li Yan

Author Affilications:NR Electric Co., Ltd.

Abstract:Lossless compression algorithms work as the core algorithms for information processing and storage in the process-level networks of smart substations. The Huffman algorithm, a universal lossless compression method, is applied in communication networks of power system. Based on the general Huffman coding compression method and the scenario characteristics of smart substation process-level networks, this paper proposes an improved Huffman coding compression method incorporating dictionary computation which can be bypassed. This method demonstrates advantages in computational latency. Furthermore, this paper presents the implementation based on Field-Programmable Gate Array (FPGA) devices, providing a detailed analysis of the design methodology for key modules, along with simulation, verification, and result analysis.
Key word:
smart substation
process-level network
information processing
data compression
field-programmable gate array (FPGA)

Design and implementation of a high-power interleaved buck converter for aerospace applications

DOI:10.16157/j.issn.0258-7998.257103

Author:Wu Linyu,Kang Duangang,Wang Xusheng

Author Affilications:Lanzhou Institute of Physics

Abstract:A high-power interleaved parallel buck converter suitable for a low-temperature refrigeration unit in a certain space was designed to meet the requirements of high power density, high efficiency, and high reliability for DC-DC converters. This article elaborates on the design process of the interleaved parallel buck converter and successfully develops a product with a rated power of 800 W. It achieves a conversion efficiency of 95% at peak power, achieving the design goal of high efficiency and verifying the correctness of theoretical analysis and methods. The circuit has been tested and verified to meet the performance requirements, and has been successfully applied to model flight missions, providing reference for the design of subsequent high-power converters.
Key word:
high-power converter
buck converter
interleaved parallel connection
high efficiency

Efficient FPGA implementation of SM4 algorithm

DOI:10.16157/j.issn.0258-7998.256868

Author:Zhu Xiantao1,Li Yue2,Zhao Xiongwei1

Author Affilications:1.Jiayuan Science and Technology Co.,Ltd.;2.Hangzhou Dianzi University

Abstract:With the increasing demand for information security and data privacy, the domestic SM4 block cipher algorithm has demonstrated significant application value in information transmission fields such as government affairs and commerce. To address the performance bottlenecks of the SM4 algorithm in FPGA implementations, this paper proposes an efficient fully pipelined hardware architecture. By optimizing the hardware implementation of the S-box, the number of S-boxes per round iteration is reduced from four to one, and fast substitution is achieved using combinational logic, significantly lowering resource consumption. Additionally, a 32-stage fully pipelined encryption or decryption module is designed to enable parallel processing of multiple data blocks, compressing the encryption or decryption throughput to a single clock cycle. Experimental results on the Xilinx Zynq7045 platform show that the proposed design achieves a working frequency of 412 MHz and a throughput of 52.7 Gb/s without relying on additional memory resources, with a 20% improvement in throughput per unit area compared to existing solutions.
Key word:
SM4 algorithm
FPGA
pipelined design
S-box optimization

Radar and Navigation

Radar anti-active jamming signal processing algorithm based on sparse reconstruction and deep learning

DOI:10.16157/j.issn.0258-7998.256987

Author:Chen Wenrui,Liu Fang,Dai Guangzhao

Author Affilications:The 723rd Research Institute of China State Shipbuilding Corporation

Abstract:In order to solve the problem of digital RF signal duplication interference and broadband noise interference threatening radar target detection, this paper proposes an interference suppression algorithm that combines sparse reconstruction and deep learning. The algorithm first uses deep learning to extract interference features and detect the interference type and location, and then adopts a space-time adaptive processing strategy based on sparse representation to suppress interference in the space and time domains. Simulation experiments show that compared with traditional methods, this algorithm significantly improves the target detection probability and output signal-to-interference-noise ratio under strong interference background, and can effectively suppress main lobe simulation interference and broadband noise interference, providing a new idea for radar interference suppression and having engineering application value.
Key word:
active signal interference
space-time adaptive processing
sparse reconstruction
deep learning

Positioning and identification of foreign substances in cotton based on RFID tag arrays

DOI:10.16157/j.issn.0258-7998.256927

Author:Li Yanxu,Zhu Yuecheng

Author Affilications:College of Electrical and Information Engineering,Jiangsu University

Abstract:In this paper, an RFID tag array layout in 3D space is adopted to perceive the quantity, location and type of foreign objects in cotton. Taking the received signal strength (RSS) and phase of the tag as characteristic quantities, the Euclidean distance ratio algorithm and the least square method are proposed to improve the positioning success rate. Based on the differentiated influence of different foreign objects on signal characteristics, a decision tree model is constructed to achieve the perception of foreign object types. Experimental verification shows that the positioning error is controlled within 5% after optimization, and it can accurately identify four types of foreign substances in cotton, demonstrating excellent perception and recognition performance.
Key word:
RFID tag array
positioning
decision tree model
identification

Low-Altitude Technology and Engineering

Key Technologies of 5G-A and 6G

High Performance Computing

Analysis and Application of Marine Target Characteristics

FPGA and Artificial Intelligence

Key Radio Frequency Technologies in Radio Transceiver

Industrial Software and New Quality Productive Forces

5G-Advanced and 6G

High Speed Wired Communication Chip

Information Flow and Energy Flow in Industrial Digital Transformation

Special Antenna and Radio Frequency Front End

Radar Target Tracking Technology

Key Technologies of 5G-A and 6G

Key Technologies of 5G and Its Evolution

Key Technologies of 5G and Its Evolution

Processing and Application of Marine Target Characteristic Data

Smart Power

Antenna Technology and Its Applications

5G-Advanced and 6G

Smart Agriculture

5G Vertical Industry Application

Microelectronics in Medical and Healthcare

Application of Edge Computing in IIoT

Key Technologies for 6G

Deep Learning and Image Recognization

6G Microwave Millimeter-wave Technology

Radar Processing Technology and Evaluation

Space-Ground Integrated Technology

Industrial Ethernet Network

5G Vertical Industry Application

FPGA and Artificial Intelligence

Innovation and Application of PKS System

5G Network Construction and Optimization

RF and Microwave

Edge Computing

Network and Business Requirements for 6G

5G and Intelligent Transportation

5G R16 Core Network Evolution Technology

Satellite Nevigation Technology

5G R16 Evolution Technology

5G Wireless Network Evolution Technology

5G Network Planning Technology

5G Indoor Coverage Technology

5G MEC and Its Applications

5G Co-construction and Sharing Technology

Expert Forum

5G and Emergency Communication

5G Slicing Technology and Its Applications

Industrial Internet

5G Terminal Key Realization Technology

5G and Artificial Intelligence

5G and Internet of Vehicles

Terahertz Technology and Its Application

Signal and Information Processing

Artificial Intelligence

5G Communication

Internet of Things and the Industrial Big Data

Electronic Techniques of UAV System

Power Electronic Technology

Medical Electronics

Aerospace Electronic Technology

Robot and Industrial Automation

ADAS Technique and Its Implementation

Heterogeneous Computing

2016 IEEE International Conference on Integrated Circuits and Microsystems

ARINC859 Bus Technology

FC Network Technology

Measurement and Control Technology of Bus Network

GJB288A Bus

Key Techniques of 5G and Algorthm Implement

IEEE-1394 Bus

Signal Conditioning Technology of Sensors

AFDX Network Technology

Discrete Signal Processing

Energy-Efficient Computing

Motor control

2012 Altera Electronic Design Article Contest