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DOA estimation of wideband signals based on iterative spectral reconstruction
Shun He, Zhiwei Yang, and Guisheng Liao
Journal of Systems Engineering and Electronics    2017, 28 (6): 1039-1045.   DOI: 10.21629/JSEE.2017.06.01
Abstract740)      PDF(pc) (445KB)(769)       Save

In order to solve the problem of coherent signal subspace method (CSSM) depending on the estimated accuracy of signal subspace, a new direction of arrival (DOA) estimation method of wideband source, which is based on iterative adaptive spectral reconstruction, is proposed. Firstly, the wideband signals are divided into several narrowband signals of different frequency bins by discrete Fourier transformation (DFT). Then, the signal matched power spectrum in referenced frequency bins is computed, which can form the initial covariance matrix. Finally, the linear restrained minimum variance spectral (Capon spectral) of signals in other frequency bins are reconstructed using sequential iterative means, so the DOA can be estimated by the locations of spectral peaks. Theoretical analysis and simulation results show the proposed method based on the iterative spectral reconstruction for the covariance matrices of all sub-bands can avoid the problem of determining the signal subspace accurately with the coherent signal subspace method under the conditions of small samples and low signal to noise ratio (SNR), and it can also realize full dimensional focusing of different sub-band data, which can be applied to coherent sources and can significantly improve the accuracy of DOA estimation. 

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Earth observation satellite scheduling for emergency tasks
Haiquan SUN, Wei XIA, Xiaoxuan HU, Chongyan XU
Journal of Systems Engineering and Electronics    2019, 30 (5): 931-945.   DOI: 10.21629/JSEE.2019.05.11
Abstract711)   HTML4)    PDF(pc) (1102KB)(688)       Save

The earth observation satellites (EOSs) scheduling problem for emergency tasks often presents many challenges. For example, the scheduling calculation should be completed in seconds, the scheduled task rate is supposed to be as high as possible, the disturbance measure of the scheme should be as low as possible, which may lead to the loss of important observation opportunities and data transmission delays. Existing scheduling algorithms are not designed for these requirements. Consequently, we propose a rolling horizon strategy (RHS) based on event triggering as well as a heuristic algorithm based on direct insertion, shifting, backtracking, deletion, and reinsertion (ISBDR). In the RHS, the driven scheduling mode based on the emergency task arrival and control station time window events are designed to transform the long-term, large-scale problem into a short-term, small-scale problem, which can improve the schedulability of the original scheduling scheme and emergency response sensiti-vity. In the ISBDR algorithm, the shifting rule with breadth search capability and backtracking rule with depth search capability are established to realize the rapid adjustment of the original plan and improve the overall benefit of the plan and early completion of emergency tasks. Simultaneously, two heuristic factors, namely the emergency task urgency degree and task conflict degree, are constructed to improve the emergency task scheduling guidance and algorithm efficiency. Finally, we conduct extensive experiments by means of simulations to compare the algorithms based on ISBDR and direct insertion, shifting, deletion, and reinsertion (ISDR). The results demonstrate that the proposed algorithm can improve the timeliness of emergency tasks and scheduling performance, and decrease the disturbance measure of the scheme, therefore, it is more suitable for emergency task scheduling.

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The brief self-attention module for lightweight convolution neural networks
Jie YAN, Yingmei WEI, Yuxiang XIE, Quanzhi GONG, Shiwei ZOU, Xidao LUAN
Journal of Systems Engineering and Electronics    2025, 36 (6): 1389-1397.   DOI: 10.23919/JSEE.2025.000051
Abstract170)   HTML19)    PDF(pc) (7330KB)(213)       Save

Lightweight convolutional neural networks (CNNs) have simple structures but struggle to comprehensively and accurately extract important semantic information from images. While attention mechanisms can enhance CNNs by learning distinctive representations, most existing spatial and hybrid attention methods focus on local regions with extensive parameters, making them unsuitable for lightweight CNNs. In this paper, we propose a self-attention mechanism tailored for lightweight networks, namely the brief self-attention module (BSAM). BSAM consists of the brief spatial attention (BSA) and advanced channel attention blocks. Unlike conventional self-attention methods with many parameters, our BSA block improves the performance of lightweight networks by effectively learning global semantic representations. Moreover, BSAM can be seamlessly integrated into lightweight CNNs for end-to-end training, maintaining the network’s lightweight and mobile characteristics. We validate the effectiveness of the proposed method on image classification tasks using the Food-101, Caltech-256, and Mini-ImageNet datasets.

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Complex systems and network science: a survey
Kewei YANG, Jichao LI, Maidi LIU, Tianyang LEI, Xueming XU, Hongqian WU, Jiaping CAO, Gaoxin QI
Journal of Systems Engineering and Electronics    2023, 34 (3): 543-573.   DOI: 10.23919/JSEE.2023.000080
Abstract747)   HTML29)    PDF(pc) (8641KB)(646)       Save

Complex systems widely exist in nature and human society. There are complex interactions between system elements in a complex system, and systems show complex features at the macro level, such as emergence, self-organization, uncertainty, and dynamics. These complex features make it difficult to understand the internal operation mechanism of complex systems. Networked modeling of complex systems is a favorable means of understanding complex systems. It not only represents complex interactions but also reflects essential attributes of complex systems. This paper summarizes the research progress of complex systems modeling and analysis from the perspective of network science, including networked modeling, vital node analysis, network invulnerability analysis, network disintegration analysis, resilience analysis, complex network link prediction, and the attacker-defender game in complex networks. In addition, this paper presents some points of view on the trend and focus of future research on network analysis of complex systems.

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Image decomposition and staircase effect reduction based on total generalized variation
Jianlou Xu, Xiangchu Feng, Yan Hao, and Yu Han
Journal of Systems Engineering and Electronics    2014, 25 (1): 168-174.   DOI: 10.1109/JSEE.2014.00020
Abstract758)      PDF(pc) (1441KB)(740)       Save

Total variation (TV) is widely applied in image processing. The assumption of TV is that an image consists of piecewise constants, however, it suffers from the so-called staircase effect. In order to reduce the staircase effect and preserve the edges when textures of image are extracted, a new image decomposition model is proposed in this paper. The proposed model is based on the total generalized variation method which involves and balances the higher order of the structure. We also derive a numerical algorithm based on a primal-dual formulation that can be effectively implemented. Numerical experiments show that the proposed method
can achieve a better trade-off between noise removal and texture extraction, while avoiding the staircase effect efficiently.

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3D face registration based on principal axis analysis and labeled regions orientation
Guo Zhe, Zhang Yanning, Lin Zenggang & Liu Yantong
Journal of Systems Engineering and Electronics    2009, 20 (6): 1324-1331.  
Abstract920)      PDF(pc) (456KB)(639)       Save

A novel multi-view 3D face registration method based on principal axis analysis and labeled regions orientation called local orientation registration is proposed. The pre-registration is achieved by transforming the multi-pose models to the standard frontal model’s reference frame using the principal axis analysis algorithm. Some significant feature regions, such as inner and outer canthus, nose tip vertices, are then located by using geometrical distribution characteristics. These regions are subsequently employed to compute the conversion parameters using the improved iterative closest point algorithm, and the optimal parameters are applied to complete the final registration. Experimental results implemented on the proper database demonstrate that the proposed method significantly outperforms others by achieving 1.249 and 1.910 mean root-mean-square measure with slight and large view variation models, respectively.

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Modified constriction particle swarm optimization algorithm
Zhe Zhang, Limin Jia, and Yong Qin
Journal of Systems Engineering and Electronics    DOI: 10.1109/JSEE.2015.00120
Design and implementation of automatic gain control algorithm for Ocean 4A scatterometer
Yongqing LIU, Peng LIU, Limin ZHAI, Shuyi LIU, Yan JIA, Xiangkun ZHANG
Journal of Systems Engineering and Electronics    2025, 36 (2): 344-352.   DOI: 10.23919/JSEE.2024.000094
Abstract406)   HTML5)    PDF(pc) (1833KB)(195)       Save

The Ocean 4A scatterometer, expected to be launched in 2024, is poised to be the world’s first spaceborne microwave scatterometer utilizing a digital beamforming system. To ensure high-precision measurements and performance stability across diverse environments, stringent requirements are placed on the dynamic range of its receiving system. This paper provides a detailed exposition of a field-programmable gate array (FPGA)-based automatic gain control (AGC) design for the spaceborne scatterometer. Implemented on an FPGA, the algorithm harnesses its parallel processing capabilities and high-speed performance to monitor the received echo signals in real time. Employing an adaptive AGC algorithm, the system generates gain control codes applicable to the intermediate frequency variable attenuator, enabling rapid and stable adjustment of signal amplitudes from the intermediate frequency amplifier to an optimal range. By adopting a purely digital processing approach, experimental results demonstrate that the AGC algorithm exhibits several advantages, including fast convergence, strong flexibility, high precision, and outstanding stability. This innovative design lays a solid foundation for the high-precision measurements of the Ocean 4A scatterometer, with potential implications for the future of spaceborne microwave scatterometers.

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Multiple-target tracking with adaptive sampling intervals for phased-array radar
Zhenkai Zhang, Jianjiang Zhou, Fei Wang, Weiqiang Liu, and Hongbing Yang
Journal of Systems Engineering and Electronics    2011, 22 (5): 760-766.   DOI: 10.3969/j.issn.1004-4132.2011.05.006
Abstract1244)      PDF(pc) (899KB)(1691)       Save
A novel adaptive sampling interval algorithm for multitarget tracking is presented. This algorithm which is based on interacting multiple models incorporates the grey relational grade (GRG) into the particle swarm optimization (PSO). Firstly, the desired tracking accuracy is set for each target. Secondly, sampling intervals are selected as particles, and then the advantage of the GRG is taken as the measurement function for resource management. Meanwhile, the fitness value of the PSO is used to measure the difference between desired tracking accuracy and estimated tracking accuracy. Finally, it is suggested that the radar should track the target whose prediction value of the next sampling interval is the smallest. Simulations show that the proposed method improves both the tracking accuracy and tracking efficiency of the phased-array radar.
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A goal-based approach for modeling and simulation of different types of system-of-systems
Yimin FENG, Chenchu ZHOU, Qiang ZOU, Yusheng LIU, Jiyuan LYU, Xinfeng WU
Journal of Systems Engineering and Electronics    2023, 34 (3): 627-640.   DOI: 10.23919/JSEE.2023.000084
Abstract442)   HTML5)    PDF(pc) (1326KB)(387)       Save

A system of systems (SoS) composes a set of independent constituent systems (CSs), where the degree of authority to control the independence of CSs varies, depending on different SoS types. Key researchers describe four SoS types with descending levels of central authority: directed, acknowledged, collaborative and virtual. Although the definitions have been recognized in SoS engineering, what is challenging is the difficulty of translating these definitions into models and simulation environments. Thus, we provide a goal-based method including a mathematical baseline to translate these definitions into more effective agent-based modeling and simulations. First, we construct the theoretical models of CS and SoS. Based on the theoretical models, we analyze the degree of authority influenced by SoS characteristics. Next, we propose a definition of SoS types by quantitatively explaining the degree of authority. Finally, we recognize the differences between acknowledged SoS and collaborative SoS using a migrating waterfowl flock by an agent-based model (ABM) simulation. This paper contributes to the SoS body of knowledge by increasing our understanding of the degree of authority in an SoS, so we may identify suitable SoS types to achieve SoS goals by modeling and simulation.

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Predictive cruise control for heavy trucks based on slope information under cloud control system
Shuyan LI, Keke WAN, Bolin GAO, Rui LI, Yue WANG, Keqiang LI
Journal of Systems Engineering and Electronics    2022, 33 (4): 812-826.   DOI: 10.23919/JSEE.2022.000081
Abstract511)   HTML7)    PDF(pc) (9771KB)(180)       Save

With the advantage of fast calculation and map resources on cloud control system (CCS), cloud-based predictive cruise control (CPCC) for heavy trucks has great potential to improve energy efficiency, which is significant to achieve the goal of national carbon neutrality. However, most investigations focus on the on-board predictive cruise control (PCC) system, lack of research on CPCC architecture under CCS. Besides, the current PCC algorithms have the problems of a single control target and high computational complexity, which hinders the improvement of the control effect. In this paper, a layered architecture based on CCS is proposed to effectively address the real-time computing of CPCC system and the deployment of its algorithm on vehicle-cloud. In addition, based on the dynamic programming principle and the proposed road point segmentation method (RPSM), a PCC algorithm is designed to optimize the speed and gear of heavy trucks with slope information. Simulation results show that the CPCC system can adaptively control vehicle driving through the slope prediction, with fuel-saving rate of 6.17% in comparison with the constant cruise control. Also, compared with other similar algorithms, the PCC algorithm can make the engine operate more in the efficient zone by cooperatively optimizing the gear and speed. Moreover, the RPSM algorithm can reconfigure the road in advance, with a 91% roadpoint reduction rate, significantly reducing algorithm complexity. Therefore, this study has essential research significance for the economic driving of heavy trucks and the promotion of the CPCC system.

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Improved power inversion algorithm based on derivative constraint
Runnan WANG, Hongchang LIU, Siyuan JIANG, Shuai LIU
Journal of Systems Engineering and Electronics    2025, 36 (6): 1398-1406.   DOI: 10.23919/JSEE.2025.000105
Abstract104)   HTML2)    PDF(pc) (5126KB)(76)       Save

The power inversion (PI) algorithm lacks specific constraints on desired signals. Thus, the beampattern has fluctuation in all directions other than the jamming sources. This phenomenon will damage the reception of desired signals. In high signal-to-noise ratio (SNR) application, the desired signal is inevitably suppressed by the PI algorithm, resulting in a deterioration to the out signal-to-interference-and-noise ratio (SINR). This paper proposes an improved PI algorithm based on derivative constraint. Firstly, the proposed method uses subspace projection to extract jamming-free data, the derivative constraint is imposed to the non-jamming data, and subsequently the Lagrange multiplier can be used to calculate the array weight vector. Simulation results demonstrate that, the proposed algorithm in this paper has a higher output SNR, flat gains in non-jamming directions, and applicability of high SINR than the PI algorithm, thus verifying the effectiveness of the algorithm.

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A novel multi-feature extraction based automatic modulation classification
Peng SHANG, Lishu GUO, Decai ZOU, Xue WANG, Shuaihe GAO, Pengfei LIU
Journal of Systems Engineering and Electronics    2025, 36 (6): 1407-1427.   DOI: 10.23919/JSEE.2025.000032
Abstract87)   HTML6)    PDF(pc) (9676KB)(74)       Save

Automatic modulation classification(AMC) is an essential technique in both civil and military applications. While deep learning has surpassed traditional methods in accuracy, distinguishing high-order modulations remain challenging. Current efforts prioritize complex network designs, neglecting the integration of deep features and tailored feature engineering to reslove high-order ambiguities. Therefore, a multi-feature extraction framework is proposed, which directly concatenates the deep feature extracted by a newly designed lightweight neural network and the proposed spectrum secondary features or de-noised high-order statistical features. The proposed features and lightweight network both demonstrate superior overall accuracy than other competing features or networks. Furthermore, the effectiveness of the feature extraction framework is also validated. The average classification accuracy on high-order modulation sets reaches 67.39% on the RadioML2018.01A dataset, increasing more than 2% compared with the other competitive networks under the framework. The results indicate the effectiveness of the proposed feature extraction framework for its representational ability by combing the deep features with the proposed domain features.

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Human activity recognition based on HMM by improved PSO and event probability sequence
Hanju Li, Yang Yi, Xiaoxing Li, and Zixin Guo
Journal of Systems Engineering and Electronics    2013, 24 (3): 545-.   DOI: 10.1109/JSEE.2013.00063
Abstract1052)      PDF(pc) (773KB)(567)       Save

This paper proposes a hybrid approach for recognizing human activities from trajectories. First, an improved hidden Markov model (HMM) parameter learning algorithm, HMM-PSO, is proposed, which achieves a better balance between the global and local exploitation by the nonlinear update strategy and repulsion operation. Then, the event probability sequence (EPS) which consists of a series of events is computed to describe the unique characteristic of human activities. The analysis on EPS indicates that it is robust to the changes in viewing direction and contributes to improving the recognition rate. Finally, the effectiveness of the proposed approach is evaluated by data experiments on current popular datasets.

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Distributed attitude consensus of spacecraft formation flying
Xinsheng Wang, Jingxin Wu, and Xiaoli Wang
Journal of Systems Engineering and Electronics    2013, 24 (2): 296-302.   DOI: 10.1109/JSEE.2013.00037
Abstract994)      PDF(pc) (452KB)(816)       Save

The consensus problem of the distributed attitude synchronization in the spacecraft formation flying is considered. Firstly, the attitude dynamics of a rigid body spacecraft is described by modified Rodriguez parameters (MRPs). Then global stable distributed cooperative attitude control laws are proposed for different cases. In the first case, the control law guarantees the state consensus during the attitude synchronization. In the second case, the control law ensures both the attitudes synchronizing to a desired constant attitude and the angular velocities converging at zero. In the third case, an attitude consensus control law with bounded control input is proposed. Finally, the effectiveness and validity of the control laws are demonstrated by simulations of six rigid bodies formation flying.

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Mission reliability modeling and evaluation for reconfigurable unmanned weapon system-of-systems based on effective operation loop
Zhiwei CHEN, Ziming ZHOU, Luogeng ZHANG, Chaowei CUI, Jilong ZHONG
Journal of Systems Engineering and Electronics    2023, 34 (3): 588-597.   DOI: 10.23919/JSEE.2023.000082
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The concept of unmanned weapon system-of-systems (UWSoS) involves a collection of various unmanned systems to achieve or accomplish a specific goal or mission. The mission reliability of UWSoS is represented by its ability to finish a required mission above the baselines of a given mission. However, issues with heterogeneity, cooperation between systems, and the emergence of UWSoS cannot be effectively solved by traditional system reliability methods. This study proposes an effective operation-loop-based mission reliability evaluation method for UWSoS by analyzing dynamic reconfiguration. First, we present a new connotation of an effective operation loop by considering the allocation of operational entities and physical resource constraints. Then, we propose an effective operation-loop-based mission reliability model for a heterogeneous UWSoS according to the mission baseline. Moreover, a mission reliability evaluation algorithm is proposed under random external shocks and topology reconfiguration, revealing the evolution law of the effective operation loop and mission reliability. Finally, a typical 60-unmanned-aerial-vehicle-swarm is taken as an example to demonstrate the proposed models and methods. The mission reliability is achieved by considering external shocks, which can serve as a reference for evaluating and improving the effectiveness of UWSoS.

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Active disturbance rejection control based on cascade high-order extended state observer for systems with time-varying disturbances and measurement noise
Bin FENG, Weihua FAN, Yang GAO, Qingwei CHEN
Journal of Systems Engineering and Electronics    2025, 36 (6): 1679-1691.   DOI: 10.23919/JSEE.2025.000094
Abstract74)   HTML1)    PDF(pc) (7651KB)(44)       Save

This paper investigates the high-performance control issues of systems affected by time-varying disturbances and measurement noise. Conventionally, active disturbance rejection control (ADRC) is a favorable control strategy to reject unknown disturbances and uncertainties. However, its control performance is limited because standard extended state observer (ESO) struggles to effectively estimate time-varying disturbances. The emergence of high-order ESO (HESO) alleviates the limitation. Unfortunately, it deteriorates the noise suppression capability when the disturbance rejection is enhanced. To tackle this challenge, an improved ADRC with cascade HESO (CHESO) is proposed. A comprehensive theoretical analysis associated with the performance of HESO is given for the first time. The presented analyses provide an intuitive understanding of the performance of HESO. Then, a novel CHESO is developed. The convergence of CHESO is proved via input-to-state stable theory. Extensive frequency domain analyses indicate that CHESO has stronger disturbance rejection and high-frequency noise attenuation performance than ESO and HESO without increasing the observer bandwidth. Comparative simulations conducted on a servo control system validate the effectiveness and preponderance of the proposed method.

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Learning Bayesian network parameters under new monotonic constraints#br#
Ruohai Di, Xiaoguang Gao, and Zhigao Guo
Journal of Systems Engineering and Electronics    2017, 28 (6): 1248-1255.   DOI: 10.21629/JSEE.2017.06.22
Abstract513)      PDF(pc) (453KB)(675)       Save
When the training data are insufficient, especially when only a small sample size of data is available, domain knowledge will be taken into the process of learning parameters to improve the performance of the Bayesian networks. In this paper, a new monotonic constraint model is proposed to represent a type of common domain knowledge. And then, the monotonic constraint estimation algorithm is proposed to learn the parameters with the monotonic constraint model. In order to demonstrate the superiority of the proposed algorithm, series of experiments are carried out. The experiment results show that the proposed algorithm is able to obtain more accurate parameters compared to some existing algorithms while the complexity is not the highest. 
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Realization of 3D coordinate estimation for spaceborne interferometric antenna
Wangjie CHEN, Weiqiang ZHU, Zhenhong FAN, Qin MA, Jian YANG, Li WU
Journal of Systems Engineering and Electronics    2025, 36 (6): 1428-1442.   DOI: 10.23919/JSEE.2025.000055
Abstract75)   HTML3)    PDF(pc) (7891KB)(53)       Save

This paper introduces a hybrid configuration design to enhance the precision of satellite antenna position measurement. By fixing the circular array antenna on the antenna mounting surface and integrating coordinate system transformation relationships with interferometric direction finding (DF) and positioning technology, accurate estimation of the antenna position is ensured. This method optimizes the quality and stability of data fusion by integrating pulse parameter characteristics, satellite orbit and attitude information, as well as the field of view information from observation stations, using techniques such as maximum-ratio-combining (MRC) and orbit extrapolation. Specifically, the sampling-importance resampling particle-filtering and Kalman-filtering (SIR-PF-KF) hybrid filtering prediction technology is employed to precisely predict and correct the three-dimensional (3D) position errors of the L-array antenna. Through data processing of five to nine orbits, accurate estimation of the antenna’s 3D position is achieved, achieving an estimation accuracy of 3 μm, significantly improving the accuracy of on-orbit rapid calibration. Experimental results show that the interferometer positioning accuracy is improved from 7.9 km before antenna position correction to within 0.2 km after correction, verifying the effectiveness and practicability of this method, which aims to address issues with positioning accuracy.

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Recent progress on space-borne microwave sounder pre-launch calibration technologies in China
Nian Feng, Yang Yujie, Chen Yunmei, Xu Dezhong & Wang Wei
Journal of Systems Engineering and Electronics    2008, 19 (4): 643-651.  
Abstract579)      PDF(pc) (235KB)(556)       Save

The development processes and the application achievements of space-borne microwave sounder prelaunch calibration technologies in China are introduced briefly. Then, the general project plan for pre-launch calibration, the latest research achievements on the optimization and development of the microwave wide band calibration targets, emissivity measurement technologies and the system level uncertainty analysis of the laboratory, and the thermal/vacuum microwave sounder calibration system for “FY-3” meteorological satellite are reported, respectively. Finally, the key technological problems of the calibration technologies under researching are analyzed predictively.

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Adaptive partition intuitionistic fuzzy time series forecasting model
Xiaoshi Fan, Yingjie Lei, and Yanan Wang
Systems Engineering and Electronics    DOI: 10.21629/JSEE.2017.03.18
Reduced bit low power VLSI architectures for motion estimation
Shahrukh Agha, Shahid Khan, Shahzad Malik, and Raja Riaz
Journal of Systems Engineering and Electronics    2013, 24 (3): 382-.   DOI: 10.1109/JSEE.2013.00047
Abstract1126)      PDF(pc) (777KB)(556)       Save

Low power and real time very large scale integration (VLSI) architectures of motion estimation (ME) algorithms for mobile devices and applications are presented. The power reduction is achieved by devising a novel correction recovery mechanism based on algorithms which allow the use of reduced bit sum of absolute difference (RBSAD) metric for calculating matching error and conversion to full resolution sum of absolute difference (SAD) metric whenever necessary. Parallel and pipelined architectures for high throughput of full search ME corresponding to both the full resolution SAD and the generalized RBSAD algorithm are synthesized using Xilinx Synthesis Tools (XST), where the ME designs based on reduced bit (RB) algorithms demonstrate the reduction in power consumption up to 45% and/or the reduction in area up to 38%.

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Infrared image segmentation method based on 2D histogram shape modification and optimal objective function
Songtao Liu, Donghua Gao, and Fuliang Yin
Journal of Systems Engineering and Electronics    2013, 24 (3): 528-.   DOI: 10.1109/JSEE.2013.00061
Abstract1128)      PDF(pc) (1089KB)(561)       Save

In the methods of image thresholding segmentation, such methods based on two-dimensional (2D) histogram and optimal objective functions are important. However, when they are used for infrared image segmentation, they are weak in suppressing background noises and worse in segmenting targets with non-uniform gray level. The concept of 2D histogram shape modification is proposed, which is realized by target information prior restraint after enhancing target information using plateau histogram equalization. The formula of 2D minimum Renyi entropy is deduced for image segmentation, then the shape-modified 2D histogram is combined with four optimal objective functions (i.e., maximum between-class variance, maximum entropy, maximum correlation and minimum Renyi entropy) respectively for the application of infrared image segmentation. Simultaneously, F-measure is introduced to evaluate the segmentation effects objectively. The experimental results show that F-measure is an effective evaluation index for image segmentation since its value is fully consistent with the subjective evaluation, and after 2D histogram shape modification, the methods of optimal objective functions can overcome their original forms’ deficiency and their segmentation effects are more or less improvements, where the best one is the maximum entropy method based on 2D histogram shape modification.

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Adaptive fault-tolerant controller design for airbreathing hypersonic vehicle with input saturation
Haibin Sun, Shihua Li, and Changyin Sun
Journal of Systems Engineering and Electronics    2013, 24 (3): 488-.   DOI: 10.1109/JSEE.2013.00057
Abstract1102)      PDF(pc) (1324KB)(572)       Save

The problem of fault-tolerant control is discussed for the longitudinalmodel of an airbreathing hypersonic vehicle (AHV) with actuator faults and external disturbances. Firstly, a fault-tolerant control strategy is presented for the longitudinal model of an AHV, which guarantees that velocity and altitude track their reference trajectories at an exponential convergence rate. However, this method needs to know the minimum value of the actuator efficiency factor and the upper bound of the external disturbances, which makes it not easy to implement. Then an improved adaptive fault-tolerant control scheme is proposed, where two adaptive laws are employed to estimate the upper bound of the external disturbances and the minimum value of the actuator efficiency factor, respectively. Secondly, the problem of designing a control scheme with control constraints is further considered, and a new adaptive fault-tolerant control strategy with input saturation is designed to guarantee that velocity and altitude track their reference trajectories. Finally, simulation results are given to show the effectiveness of the proposed methods.

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UAV cooperative air combat maneuver decision based on multi-agent reinforcement learning
Jiandong ZHANG, Qiming YANG, Guoqing SHI, Yi LU, Yong WU
Journal of Systems Engineering and Electronics    2021, 32 (6): 1421-1438.   DOI: 10.23919/JSEE.2021.000121
Abstract469)   HTML18)    PDF(pc) (10661KB)(208)       Save

In order to improve the autonomous ability of unmanned aerial vehicles (UAV) to implement air combat mission, many artificial intelligence-based autonomous air combat maneuver decision-making studies have been carried out, but these studies are often aimed at individual decision-making in 1v1 scenarios which rarely happen in actual air combat. Based on the research of the 1v1 autonomous air combat maneuver decision, this paper builds a multi-UAV cooperative air combat maneuver decision model based on multi-agent reinforcement learning. Firstly, a bidirectional recurrent neural network (BRNN) is used to achieve communication between UAV individuals, and the multi-UAV cooperative air combat maneuver decision model under the actor-critic architecture is established. Secondly, through combining with target allocation and air combat situation assessment, the tactical goal of the formation is merged with the reinforcement learning goal of every UAV, and a cooperative tactical maneuver policy is generated. The simulation results prove that the multi-UAV cooperative air combat maneuver decision model established in this paper can obtain the cooperative maneuver policy through reinforcement learning, the cooperative maneuver policy can guide UAVs to obtain the overall situational advantage and defeat the opponents under tactical cooperation.

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Combining sum-difference and auxiliary beams for adaptive monopulse in jamming
Rongfeng Li, Can Rao, Lingyan Dai, and Yongliang Wang
Journal of Systems Engineering and Electronics    2013, 24 (3): 372-.   DOI: 10.1109/JSEE.2013.00046
Abstract1222)      PDF(pc) (8078KB)(608)       Save

Only in the presence of sidelobe jamming (SLJ), can the conventional adaptive monopulse technique null the jamming effectively and maintain the monopulse angle estimation accuracy simultaneously. While mainlobe jamming (MLJ) exists, the mainlobe of adaptive pattern will subject to serious distortion, which results in a failure of detecting and tracking targets by monopulse technique. Therefore, a monopulse angle estimation algorithm based on combining sum-difference beam and auxiliary beam is
presented. This algorithm utilizes both high gain difference beams and high gain auxiliary beams for cancelling the mainlobe jammer and multiple sidelobe jammers (SLJs) while keeping an adaptive monopulse ratio. Theoretical analysis and simulation results indicate that the serious invalidation of monopulse technique in MLJ and SLJs scenarios is resolved well, which improves the monopulse angle accuracy greatly. Furthermore, the proposed algorithm is of simple implementation and low computational complexity.

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Optimal search for moving targets with sensing capabilities using multiple UAVs
Xiaoxuan Hu, Yanhong Liu, and Guoqiang Wang
Systems Engineering and Electronics    DOI: 10.21629/JSEE.2017.03.12
Modeling mechanism and extension of GM (1, 1)
Xinping Xiao, Yichen Hu, and Huan Guo
Journal of Systems Engineering and Electronics    2013, 24 (3): 445-.   DOI: 10.1109/JSEE.2013.00053
Abstract1100)      PDF(pc) (255KB)(496)       Save

Firstly, the research progress of grey model GM (1,1) is summarized, which is divided into three development stages: assimilation, alienation and melting stages. Then, the matrix analysis theory is used to study the modeling mechanism of GM (1,1), which decomposes the modeling data matrix into raw data transformation matrix, accumulated generating operation matrix and background value selection matrix. The changes of these three matrices are the essential reasons affecting the modeling and the accuracy of GM (1,1). Finally, the paper proposes a generalization grey model GGM (1,1), which is a extended form of GM (1,1) and also a unified form of model GM (1,1), model GM (1,1,α), stage grey model, hopping grey model, generalized accumulated model, strengthening operator model, weakening operator model and unequal interval model. And the theory and practical significance of the extended model is analyzed.

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Fault detection and diagnosis for data incomplete industrial systems with new Bayesian network approach
Zhengdao Zhang, Jinlin Zhu, and Feng Pan
Journal of Systems Engineering and Electronics    2013, 24 (3): 500-.   DOI: 10.1109/JSEE.2013.00058
Abstract1117)      PDF(pc) (412KB)(565)       Save

For the fault detection and diagnosis problem in largescale industrial systems, there are two important issues: the missing data samples and the non-Gaussian property of the data. However, most of the existing data-driven methods cannot be able to handle both of them. Thus, a new Bayesian network classifier based fault detection and diagnosis method is proposed. At first, a non-imputation method is presented to handle the data incomplete samples, with the property of the proposed Bayesian network classifier, and the missing values can be marginalized in an elegant manner. Furthermore, the Gaussian mixture model is used to approximate the non-Gaussian data with a linear combinationof finite Gaussian mixtures, so that the Bayesian network can process the non-Gaussian data in an effective way. Therefore, the entire fault detection and diagnosis method can deal with the high-dimensional incomplete process samples in an efficient and robust way. The diagnosis results are expressed in the manner of probability with the reliability scores. The proposed approach is evaluated with a benchmark problem called the Tennessee Eastman process. The simulation results show the effectiveness and robustness of the proposed method in fault detection and diagnosis for large-scale systems with missing measurements.

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Optimal fault detection for a class of discrete-time switched linear systems
Yueyang Li and Maiying Zhong
Journal of Systems Engineering and Electronics    2013, 24 (3): 512-.   DOI: 10.1109/JSEE.2013.00059
Abstract1016)      PDF(pc) (520KB)(503)       Save

This paper deals with the problem of optimal fault detection filter (FDF) design for a class of discrete-time switched linear systems under arbitrary switching. By using an observer-based FDF as a residual generator, the design of the FDF is formulated into an optimization problem through maximizing the H−/H∞ or H∞/H∞ performance index. With the aid of an operator optimization method, it is shown that a mode-dependent unified optimal solution can be derived by solving a coupled Riccati equation. A numerical example is given to show the effectiveness of the proposed method.

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BFGS quasi-Newton location algorithm using TDOAs and GROAs
Benjian Hao and Zan Li
Journal of Systems Engineering and Electronics    2013, 24 (3): 341-.   DOI: 10.1109/JSEE.2013.00043
Abstract1265)      PDF(pc) (428KB)(655)       Save

With the emergence of location-based applications in various fields, the higher accuracy of positioning is demanded. By utilizing the time differences of arrival (TDOAs) and gain ratios of arrival (GROAs), an efficient algorithm for estimating the position is proposed, which exploits the Broyden-Fletcher-Goldfarb-Shanno (BFGS) quasi-Newton method to solve nonlinear equations at the source location under the additive measurement error. Although the accuracy of two-step weighted-least-square (WLS) method based on TDOAs and GROAs is very high, this method has a high computational complexity. While the proposed approach can achieve the same accuracy and bias with the lower computational complexity when the signal-to-noise ratio (SNR) is high, especially it can achieve better accuracy and smaller bias at a lower SNR. The proposed algorithm can be applied to the actual environment due to its real-time property and good robust performance. Simulation results show that with a good initial guess to begin with, the proposed estimator converges to the true solution and achieves the Cramer-Rao lower bound (CRLB) accuracy for both near-field and far-field sources.

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Optimal replacement policy of products with repair-cost threshold after the extended warranty
Lijun Shang and Zhiqiang Cai
Systems Engineering and Electronics    DOI: 10.21629/JSEE.2017.04.12
Damage effectiveness assessment method for anti-ship missiles based on double hierarchy linguistic term sets and evidence theory
Tianle YAO, Weili WANG, Run MIAO, Jun DONG, Xuefei YAN
Journal of Systems Engineering and Electronics    2022, 33 (2): 393-405.   DOI: 10.23919/JSEE.2022.000041
Abstract441)   HTML10)    PDF(pc) (1119KB)(125)       Save

The research on the damage effectiveness assessment of anti-ship missiles involves system science and weapon science, and has essential strategic research significance. With comprehensive analysis of the specific process of the damage assessment process of anti-missile against ships, a synthetic damage effectiveness assessment process is proposed based on the double hierarchy linguistic term set and the evidence theory. In order to improve the accuracy of the expert’s assessment information, double hierarchy linguistic terms are used to describe the assessment opinions of experts. In order to avoid the loss of experts’ original information caused by information fusion rules, the evidence theory is used to fuse the assessment information of various experts on each case. Good stability of the assessment process can be reflected through sensitivity analysis, and the fluctuation of a certain parameter does not have an excessive influence on the assessment results. The assessment process is accurate enough to be reflected through comparative analysis and it has a good advantage in damage effectiveness assessment.

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Direction and polarization estimation for coherent sources using vector sensors
Jun Liu, Zheng Liu, and Qin Liu
Journal of Systems Engineering and Electronics    2013, 24 (4): 600-605.   DOI: 10.1109/JSEE.2013.00070
Abstract919)      PDF(pc) (321KB)(482)       Save

A two-dimensional direction-of-arrival (DOA) and polarization estimation algorithm for coherent sources using a linear vector-sensor array is presented. Two matrices are first constructed by the receiving data. The ranks of the two matrices are only related to the DOAs of the sources and independent of their coherency. Then the source’s elevation is resolved via the matrix pencil (MP) method, and the singular value decomposition (SVD) is used to reduce the noise effect. Finally, the source’s steering vector is estimated, and the analytics solutions of the source’s azimuth and polarization parameter can be directly computed by using a vector cross-product estimator. Moreover, the proposed algorithm can achieve the unambiguous direction estimates, even if the space between adjacent sensors is larger than a half-wavelength. Theoretical and numerical simulations show the effectiveness of the proposed algorithm.

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Enhanced minimum attribute reduction based on quantum-inspired shuffled frog leaping algorithm
Weiping Ding, Jiandong Wang, Zhijin Guan, and Quan Shi
Journal of Systems Engineering and Electronics    2013, 24 (3): 426-.   DOI: 10.1109/JSEE.2013.00051
Abstract1055)      PDF(pc) (603KB)(500)       Save

Attribute reduction in the rough set theory is an important feature selection method, but finding a minimum attribute reduction has been proven to be a non-deterministic polynomial (NP)-hard problem. Therefore, it is necessary to investigate some fast and effective approximate algorithms. A novel and enhanced quantum-inspired shuffled frog leaping based minimum attribute reduction algorithm (QSFLAR) is proposed. Evolutionary frogs are represented by multi-state quantum bits, and both quantum rotation gate and quantum mutation operators are used to exploit the mechanisms of frog population diversity and convergence to the global optimum. The decomposed attribute subsets are co-evolved by the elitist frogs with a quantum-inspired shuffled frog leaping algorithm. The experimental results validate the better feasibility and effectiveness of QSFLAR, comparing with some representative algorithms. Therefore, QSFLAR can be considered as a more competitive algorithm on the efficiency and accuracy for minimum attribute reduction.

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Liveness evaluation of multi-living agent system
Shengheng Liu, Tao Shan, Ran Tao, and Yue Wang
Journal of Systems Engineering and Electronics    2013, 24 (3): 435-.   DOI: 10.1109/JSEE.2013.00052
Abstract1129)      PDF(pc) (749KB)(618)       Save

Multi-living agent system (MLAS) is a new concept in the field of complex system research, which is peculiarly suitable for the design and analysis of a complex information system in a serious confrontation and tight constraint environment. However, the universal method to quantitatively measure the living degree of an MLAS remains uncertain, which is critical to the self-organizing process. Therefore, a novel analytic hierarchy process (AHP) based method with dependent pairwise comparison matrix (PCM) for the evaluation of living degree of the MLAS is proposed, which eliminates the shortcoming of fixed PCM in traditional process. Furthermore, to avoid the annoying procedure of the consistency validation, the PCMs are appropriately reconstructed. Through an illustration of the netted radar system, the calculation detail is explicitly presented. Altogether, the advanced evaluation method successfully accomplishes the preset objective and promotes the development of the MLAS theory and AHP as well.

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Distributed stereoscopic rotating formation control of networks of second-order agents
Li Song, Qinghe Wu, Di Yu, and Yinqiu Wang
Journal of Systems Engineering and Electronics    2013, 24 (3): 480-.   DOI: 10.1109/JSEE.2013.00056
Abstract1097)      PDF(pc) (810KB)(554)       Save

Distributed stereoscopic rotating formation control of networks of second-order agents is investigated. A distributed control protocol is proposed to enable all agents to form a stereoscopic formation and surround a common axis. Due to the existence of the rotating mode, the desired relative position between every two agents is time-varying, and a Lyapunov-based approach is employed to solve the rotating formation control problem. Finally, simulation results are provided to illustrate the effectiveness of the theoretical results.

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New criteria on delayed state feedback stabilization for stochastic systems with time-varying delay
Shiguo Peng
Journal of Systems Engineering and Electronics    2013, 24 (3): 519-.   DOI: 10.1109/JSEE.2013.00060
Abstract998)      PDF(pc) (233KB)(512)       Save

The problems of robust exponential stability in mean square and delayed state feedback stabilization for uncertain stochastic systems with time-varying delay are studied. By using Jensen’s integral inequality and combining with the free weighting matrix approach, new delay-dependent stability conditions and delayed state feedback stabilization criteria are obtained in terms of linear matrix inequalities. Meanwhile, the proposed delayed state feedback stabilization criteria are more convenient in application than the existing ones since fewer tuning parameters are involved. Numerical examples are given to illustrate the effectiveness of the proposed methods.

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Adaptive dynamic surface control for air-breathing hypersonic vehicle
Li Zhou and Shumin Fei
Journal of Systems Engineering and Electronics    2013, 24 (3): 463-.   DOI: 10.1109/JSEE.2013.00055
Abstract1035)      PDF(pc) (935KB)(543)       Save

This paper describes an adaptive control approach for an air-breathing hypersonic vehicle. The control objective is to provide robust altitudes and velocity tracking in the presence of model uncertainties and varying disturbances. A fuzzy-neural disturbance observer is developed to estimate uncertainties and disturbances, and the adaptive controller is synthesized by the dynamic surface approach combing with the observer. The tracking error at the steady state can be guaranteed to converge to inside of a small residue set which the size of the set can be an arbitrary small value. Simulation results demonstrate the effectiveness of the presented approach.

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Vector tracking loops in GNSS receivers for dynamic weak signals
Jing Liu, Xiaowei Cui, Mingquan Lu, and Zhenming Feng
Journal of Systems Engineering and Electronics    2013, 24 (3): 349-.   DOI: 10.1109/JSEE.2013.00044
Abstract1266)      PDF(pc) (1150KB)(870)       Save

Vehicle positioning with the global navigation satellite system (GNSS) in urban environments faces two problems which are attenuation and dynamic. For traditional GNSS receivers hardly able to track dynamic weak signals, the coupling between all visible satellite signals is ignored in the absence of navigation state feedback, and thermal noise error and dynamic stress threshold are contradictory due to non-coherent discriminators. The vector delay/ frequency locked loop (VDFLL) with navigation state feedback and the joint vector tracking loop (JVTL) with coherent discriminator which is a synchronization parameter tracking loop based on maximum likelihood estimation (MLE) are proposed to improve the tracking sensitivity of GNSS receiver in dynamic weak signal environments. A joint vector position tracking loop (JVPTL) directly tracking user position and velocity is proposed to further improve tracking sensitivity. The coherent navigation parameter discriminator of JVPTL, being able to ease the contradiction between thermal noise error and dynamic stress threshold, is based on MLE according to the navigation parameter based linear model of received baseband signals. Simulation results show that JVPTL, which combines the advantages of both VDFLL and JVTL, performs better than both VDFLL and JVTL in dynamic weak signal environments.

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