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Substructuring-based accurate beam section characterization from finite element analysis Comput. Struct. (IF 4.4) Pub Date : 2025-03-05 Pierangelo Masarati, Claudio Caccia, Marco Morandini
The elastic characterization of beam sections is a complex problem, especially for non-homogeneous beams composed of anisotropic materials. Over the past four decades, several viable solutions have been proposed to address this important scientific and engineering challenge. These solutions either require a dedicated formulation for section discretization or, if based on conventional finite element
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Simultaneous sizing and topology optimization of extruded elastic thin-walled beams Comput. Struct. (IF 4.4) Pub Date : 2025-03-05 Ameer Marzok
This paper presents a novel approach for optimizing extruded thin-walled beams. The main idea of the proposed approach is to formulate the problem’s design variables as line segments with unknown thicknesses. This is attained by viewing the beam’s cross-section as a set of connected line segments, representing the flat folded plates that form its geometry. The design space is defined based on the ground
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A comprehensive transplanting of black-box adversarial attacks from multi-class to multi-label models Complex Intell. Syst. (IF 5.0) Pub Date : 2025-03-04 Zhijian Chen, Qi Zhou, Yujiang Liu, Wenjian Luo
Adversarial examples generated by perturbing raw data with carefully designed, imperceptible noise have emerged as a primary security threat to artificial intelligence systems. In particular, black-box adversarial attack algorithms, which only rely on model input and output to generate adversarial examples, are easy to implement in real scenarios. However, previous research on black-box attacks has
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Enhancing geometric modeling in convolutional neural networks: limit deformable convolution Complex Intell. Syst. (IF 5.0) Pub Date : 2025-03-04 Wei Wang, Yuanze Meng, Han Li, Guiyong Chang, Shun Li, Chenghong Zhang
Convolutional neural networks (CNNs) are constrained in their capacity to model geometric transformations due to their fixed geometric structure. To overcome this problem, researchers introduce deformable convolution, which allows the convolution kernel to be deformable on the feature map. However, deformable convolution may introduce irrelevant contextual information during the learning process and
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Discounted Inverse Reinforcement Learning for Linear Quadratic Control IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-03-04 Han Wu, Qinglei Hu, Jianying Zheng, Fei Dong, Zhenchao Ouyang, Dongyu Li
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An approximate method for natural frequency analysis of variable-pitch vertical axis wind turbine blades Comput. Struct. (IF 4.4) Pub Date : 2025-03-04 Cong Xiong, Liang Li, Yuting Chen, Jingyi Cao, Weidong Zhu, Long Wang, Jianguo Cui, Changguo Xue, Yinghui Li
This study aims to enhance the operational stability and efficiency of flexible blades in variable-pitch vertical-axis wind turbines, providing significant engineering applications. Currently, research on blade dynamic behavior often simplifies blades to slender beam models, yet this approach has limitations in analyzing blades of small and medium-sized vertical-axis wind turbines, particularly for
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A bond-based peridynamic model for geometrically exact beams Comput. Struct. (IF 4.4) Pub Date : 2025-03-04 Lu Han, Hongzhi Zhong
A bond-based peridynamic model is established for geometrically exact beams under Simo-Reissner hypothesis. In the framework of the special Euclidean group, a set of nonlocal deformation measures are obtained from the relative position of two cross-sectional centroids and the relative rotation of cross-sectional frames. These measures capture the tension, shearing, bending and torsion of the bond,
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Decentralized non-convex online optimization with adaptive momentum estimation and quantized communication Complex Intell. Syst. (IF 5.0) Pub Date : 2025-03-03 Yunshan Lv, Hailing Xiong, Fuqing Zhang, Shengying Dong, Xiangguang Dai
In this work, we consider the decentralized non-convex online optimization problem over an undirected network. To solve the problem over a communication-efficient manner, we propose a novel quantized decentralized adaptive momentum gradient descent algorithm based on the adaptive momentum estimation methods, where quantified information is exchanged between agents. The proposed algorithm not only can
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Small sample smart contract vulnerability detection method based on multi-layer feature fusion Complex Intell. Syst. (IF 5.0) Pub Date : 2025-03-03 Jinlin Fan, Yaqiong He, Huaiguang Wu
The identification of vulnerabilities in smart contracts is necessary for ensuring their security. As a pre-trained language model, BERT has been employed in the detection of smart contract vulnerabilities, exhibiting high accuracy in tasks. However, it has certain limitations. Existing methods solely depend on features extracted from the final layer, thereby disregarding the potential contribution
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A local search with chain search path strategy for real-world many-objective vehicle routing problem Complex Intell. Syst. (IF 5.0) Pub Date : 2025-03-03 Ying Zhou, Lingjing Kong, Hui Wang, Yiqiao Cai, Shaopeng Liu
This article focuses on a new application-oriented variant of vehicle routing problem. This problem comes from the daily distribution scenarios of a real-world logistics company. It is a large-scale (with customer sizes up to 2000), many-objective (with six objective functions) NP-hard problem with six constraints. Then, a local search with chain search path strategy (LS-CSP) is proposed to effectively
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CycleGuardian: a framework for automatic respiratory sound classification based on improved deep clustering and contrastive learning Complex Intell. Syst. (IF 5.0) Pub Date : 2025-03-03 Yun Chu, Qiuhao Wang, Enze Zhou, Ling Fu, Qian Liu, Gang Zheng
Auscultation plays a pivotal role in early respiratory and pulmonary disease diagnosis. Despite the emergence of deep learning-based methods for automatic respiratory sound classification post-Covid-19, limited datasets impede performance enhancement. Distinguishing between normal and abnormal respiratory sounds poses challenges due to the coexistence of normal respiratory components and noise components
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Symbolic deep learning-based method for modeling complex rate-independent hysteresis Comput. Struct. (IF 4.4) Pub Date : 2025-03-01 Tianyu Wang, Mohammad Noori, Gang Wang, Zhishen Wu
Many hysteresis models have been proposed and applied in engineering practices to describe and predict complex hysteretic behaviors observed in various engineering systems. However, selection of suitable hysteresis model usually costs extra time. In this paper, a symbolic deep learning (SDL) based method is proposed to fully describe the complex hysteresis behavior of structural systems and generate
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A model of feature extraction for well logging data based on graph regularized non-negative matrix factorization with optimal estimation Complex Intell. Syst. (IF 5.0) Pub Date : 2025-02-28 Kehong Yuan, Youlin Shang, Haixiang Guo, Yongsheng Dong, Zhonghua Liu
Reservoir oil-bearing recognition is the process of predicting reservoir types based on well logging data, which determines the accuracy of recognition. However, the original well logging data is multidimensional and contains potential noise, which can influence the performance of sequent processing, such as clustering and classification. It is crucial to obtain key low-dimensional features and study
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ConvNeXt embedded U-Net for semantic segmentation in urban scenes of multi-scale targets Complex Intell. Syst. (IF 5.0) Pub Date : 2025-02-28 Yanyan Wu, Qian Li
Semantic segmentation of urban scenes is essential in urban traffic analysis and road condition information acquisition. The semantic segmentation model with good performance is the key to applying high-resolution urban locations. However, the types of these images are diverse, and the spatial relationships are complex. It is greatly affected by weather and light. Objects of different scales pose significant
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Design of weighted based divided-search enhanced Karnik–Mendel algorithms for type reduction of general type-2 fuzzy logic systems Complex Intell. Syst. (IF 5.0) Pub Date : 2025-02-28 Yang Chen
General type-2 fuzzy logic systems (GT2 FLSs) based on the \(\alpha\)-planes representation of general T2 fuzzy sets (FSs) have become more accessible to FL investigators in recent years. Type reduction (TR) is the most important block for GT2 FLSs. Here the weighted type-reduction algorithms based on the Newton and Cotes quadrature formulas of numerical methods of integration technique are first given
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BSAformer: bidirectional sequence splitting aggregation attention mechanism for long term series forecasting Complex Intell. Syst. (IF 5.0) Pub Date : 2025-02-28 QingBo Zhu, JiaLin Han, Sheng Yang, ZhiQiang Xie, Bo Tian, HaiBo Wan, Kai Chai
Time series forecasting plays a crucial role across various sectors, including energy, transportation, meteorology, and epidemiology. However, existing models often struggle with capturing long-term dependencies and managing computational efficiency when handling complex and extensive time series data. To address these challenges, this paper introduces the BSAformer model, which leverages a unique
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SDGANets: a semantically enhanced dual graph-aware network for affine and registration of remote sensing images Complex Intell. Syst. (IF 5.0) Pub Date : 2025-02-28 Xie Zhuli, Wan Gang, Liu Jia, Bu Dongdong
Remote sensing image pairs of different time phases have complex and changeable semantic contents, and traditional convolutional registration methods are challenging in modeling subtle local changes and global large-scale deformation differences in detail. This results in poor registration performance and poor feature representation. To address these problems, a semantically enhanced dual-graph perception
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A new representation in genetic programming with hybrid feature ranking criterion for high-dimensional feature selection Complex Intell. Syst. (IF 5.0) Pub Date : 2025-02-28 Jiayi Li, Fan Zhang, Jianbin Ma
Feature selection is a common method for improving classification performance. Selecting features for high-dimensional data is challenging due to the large search space. Traditional feature ranking methods that search for top-ranked features cannot remove redundant and irrelevant features and may also ignore interrelated features. Evolutionary computation (EC) techniques are widely used in feature
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KeyBoxGAN: enhancing 2D object detection through annotated and editable image synthesis Complex Intell. Syst. (IF 5.0) Pub Date : 2025-02-28 Yashuo Bai, Yong Song, Fei Dong, Xu Li, Ya Zhou, Yizhao Liao, Jinxiang Huang, Xin Yang
Sample augmentation, especially sample generation is conducive for addressing the challenge of training robust image and video object detection models based on the deep learning. Still, the existing methods lack sample editing capability and suffer from annotation work. This paper proposes an image sample generation method based on key box points detection and Generative adversarial network (GAN),
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Exact particle flow Daum-Huang filters for mobile robot localization in occupancy grid maps Complex Intell. Syst. (IF 5.0) Pub Date : 2025-02-28 Domonkos Csuzdi, Tamás Bécsi, Péter Gáspár, Olivér Törő
In this paper, we present a novel localization algorithm for mobile robots navigating in complex planar environments, a critical capability for various real-world applications such as autonomous driving, robotic assistance, and industrial automation. Although traditional methods such as particle filters and extended Kalman filters have been widely used, there is still room for assessing the capabilities
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Pattern mining-based evolutionary multi-objective algorithm for beam angle optimization in intensity-modulated radiotherapy Complex Intell. Syst. (IF 5.0) Pub Date : 2025-02-28 Ruifen Cao, Wei Chen, Tielu Zhang, Langchun Si, Xi Pei, Xingyi Zhang
Evolutionary multi-objective algorithms have been applied to beam angle optimization (called BAO) for generating diverse trade-off radiotherapy treatment plans. However, their performance is not so effective due to the ignorance of using the specific clinical knowledge that can be obtain intuitively by clinical physicist. To address this issue, we suggest a pattern mining based evolutionary multi-objective
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Multimodal multilevel attention for semi-supervised skeleton-based gesture recognition Complex Intell. Syst. (IF 5.0) Pub Date : 2025-02-28 Jinting Liu, Minggang Gan, Yuxuan He, Jia Guo, Kang Hu
Although skeleton-based gesture recognition using supervised learning has achieved promising results, the reliance on extensive annotated data poses significant costs. This paper addresses the challenge of semi-supervised skeleton-based gesture recognition, to effectively learn feature representations from labeled and unlabeled data. To resolve this problem, we propose a novel multimodal multilevel
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A novel robust multi-objective evolutionary optimization algorithm based on surviving rate Complex Intell. Syst. (IF 5.0) Pub Date : 2025-02-28 Wenxiang Jiang, Kai Gao, Shuwei Zhu, Lihong Xu
Multi-objective evolutionary optimization is widely utilized in industrial design. Despite the success of multi-objective evolutionary optimization algorithms in addressing complex optimization problems, research focusing on input disturbances remains limited. In many manufacturing processes, design parameters are vulnerable to random input disturbances, resulting in products that often perform less
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Trust-aware privacy-preserving QoS prediction with graph neural collaborative filtering for internet of things services Complex Intell. Syst. (IF 5.0) Pub Date : 2025-02-28 Weiwei Wang, Wenping Ma, Kun Yan
The booming development of the Internet of Things (IoT) has led to an explosion of web services, making it more inconvenient for users to choose satisfactory services among numerous options. Therefore, ensuring quality of service (QoS) in a service-oriented IoT environment is crucial, highlighting QoS prediction as a prominent research focus. However, issues related to information credibility, user
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ADWTune: an adaptive dynamic workload tuning system with deep reinforcement learning Complex Intell. Syst. (IF 5.0) Pub Date : 2025-02-28 Cuixia Li, Junhai Wang, Jiahao Shi, Liqiang Liu, Shuyan Zhang
In order to reduce the burden of DBA, the knob tuning method based on reinforcement learning has been proposed and achieved good results in some cases. However, the performance of these solutions is not ideal as the workload features are not considered enough. To address these issues, we propose a database tuning system called ADWTune. In this model, ADWTune employs the idea of multiple sampling to
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Unsupervised random walk manifold contrastive hashing for multimedia retrieval Complex Intell. Syst. (IF 5.0) Pub Date : 2025-02-28 Yunfei Chen, Yitian Long, Zhan Yang, Jun Long
With the rapid growth in both the variety and volume of data on networks, especially within social networks containing vast multimedia data such as text, images, and video, there is an urgent need for efficient methods to retrieve helpful information quickly. Due to their high computational efficiency and low storage costs, unsupervised deep cross-modal hashing methods have become the primary method
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Demonstration and offset augmented meta reinforcement learning with sparse rewards Complex Intell. Syst. (IF 5.0) Pub Date : 2025-02-28 Haorui Li, Jiaqi Liang, Xiaoxuan Wang, Chengzhi Jiang, Linjing Li, Daniel Zeng
This paper introduces DOAMRL, a novel meta-reinforcement learning (meta-RL) method that extends the Model-Agnostic Meta-Learning (MAML) framework. The method addresses a key limitation of existing meta-RL approaches, which struggle to effectively use suboptimal demonstrations to guide training in sparse reward environments. DOAMRL effectively combines reinforcement learning (RL) and imitation learning
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Spatiotemporal decoupling attention transformer for 3D skeleton-based driver action recognition Complex Intell. Syst. (IF 5.0) Pub Date : 2025-02-28 Zhuoyan Xu, Jingke Xu
Driver action recognition is crucial for in-vehicle safety. We argue that the following factors limit the related research. First, spatial constraints and obstructions in the vehicle restrict the range of motion, resulting in similar action patterns and difficulty collecting the full body posture. Second, in skeleton-based action recognition, establishing the joint dependencies by the self-attention
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$$\text {H}^2\text {CAN}$$ : heterogeneous hypergraph attention network with counterfactual learning for multimodal sentiment analysis Complex Intell. Syst. (IF 5.0) Pub Date : 2025-02-28 Changqin Huang, Zhenheng Lin, Qionghao Huang, Xiaodi Huang, Fan Jiang, Jili Chen
Multimodal sentiment analysis (MSA) has garnered significant attention for its immense potential in human-computer interaction. While cross-modality attention mechanisms are widely used in MSA to capture inter-modality interactions, existing methods are limited to pairwise interactions between two modalities. Additionally, these methods can not utilize the causal relationship to guide attention learning
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HATNet: EEG-Based Hybrid Attention Transfer Learning Network for Train Driver State Detection IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-02-28 Shuxiang Lin, Chaojie Fan, Demin Han, Ziyu Jia, Yong Peng, Sam Kwong
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Reinforcement Learning for H ∞ Optimal Control of Unknown Continuous-Time Linear Systems IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-02-28 Hongyang Li, Qinglai Wei, Xiangmin Tan
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Inverse finite element methodology for high-resolution mode shape reconstruction of plates and shells under random excitation Comput. Struct. (IF 4.4) Pub Date : 2025-02-28 M.Yavuz Belur, M.H. Bilgin, Spilios D. Fassois, Adnan Kefal
This study introduces a novel implementation of the inverse finite element method (iFEM) for full-field mode shape reconstruction of plate and shell structures under random vibration. The proposed methodology, termed iFEM-MoRe (Mode Reconstruction), seamlessly integrates classical iFEM with Fourier transformation using Welch’s estimation method. By processing dynamic strain measurements, iFEM-MoRe
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Buckling prediction and structural optimization of sandwich plates with negative Poisson’s ratio core Comput. Struct. (IF 4.4) Pub Date : 2025-02-28 L. Han, Y.S. Li, E. Pan, J.G. Sun
Negative Poisson’s ratio (NPR) materials are attractive for their unique mechanical properties. Especially lightweight structures made of NPR materials have potential application in the aviation industry. The purpose of this study is to propose a lightweight structure with NPR materials and optimize it with its performance and mass as the objectives. In this study, buckling prediction and structural
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Data-driven method for real-time reconstruction of antenna element displacement Comput. Struct. (IF 4.4) Pub Date : 2025-02-28 Jin Kang, Peng Gaoliang, Zhang Wei, Li Zhixiong, Wang Jinghan, Yuan Hao
Real-time reconstruction of antenna element displacements using limited strain data is essential for mitigating the degradation of phased array radar systems’ electrical performance caused by antenna deformations. This study presents a data-driven framework for efficiently and accurately reconstructing antenna element displacements. The proposed approach combines finite element simulations with a multilayer
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Nonlocal stress and J-integral approaches for cohesive crack growth within enhanced DodeQuad virtual element Comput. Struct. (IF 4.4) Pub Date : 2025-02-28 Elisabetta Monaldo, Sonia Marfia, Elio Sacco
The aim of this paper is to present a numerical procedure for reproducing the crack growth in two-dimensional (2D) cohesive solids. Two approaches are proposed to determine the direction of crack propagation. One approach is based on the evaluation of the nonlocal stress around the tip of the fracture, while the other on the computation of the J-integral. Once the direction of crack propagation has
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Metalinguist: enhancing hate speech detection with cross-lingual meta-learning Complex Intell. Syst. (IF 5.0) Pub Date : 2025-02-27 Ehtesham Hashmi, Sule Yildirim Yayilgan, Mohamed Abomhara
The rise of social media has led to an increase in hate speech. Hate speech is generally described as a deliberate act of aggression aimed at a particular group, intended to harm or marginalize them based on specific attributes of their identity. While positive interactions in diverse communities can greatly enhance confidence, it is important to acknowledge that negative remarks such as hate speech
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Evolutionary Multitask Optimization for Multiform Feature Selection in Classification IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-02-27 Qi-Te Yang, Xin-Xin Xu, Zhi-Hui Zhan, Jinghui Zhong, Sam Kwong, Jun Zhang
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A computational method to find the optimal driving-path for stable state transformation of multistable tensegrity Comput. Struct. (IF 4.4) Pub Date : 2025-02-27 Zhiyin Xu, Jinyu Lu, Jiarong Wu, Jilei Liu, Xun Gu, Na Li
This paper introduces a computational approach for identifying the optimal driving-path for stable state transformations (SST) of multistable tensegrity structures. In order to capture the morphological changes of the tensegrity structure when the driving-nodes are actuated along arbitrary driving-path, a tracking method is firstly introduced. Then, the concept of segmenting-nodes is introduced to
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Multi-layered shell finite element with interlayer slips Comput. Struct. (IF 4.4) Pub Date : 2025-02-27 Seunghwan Park, Juneho Lee, Phill-Seung Lee
In this study, we develop a multi-layered shell finite element model capable of incorporating interlayer slips for both linear and nonlinear analyses. We derive the total Lagrangian formulation of the shell element to allow for large displacements and large rotations. The shell element effectively represents in-plane interlayer slips within the shell kinematics framework, allowing straightforward modeling
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A distributed monitoring architecture for JointCloud computing Future Gener. Comput. Syst. (IF 6.2) Pub Date : 2025-02-26 Yadi Wu, Lina Wang, Rongwei Yu, Xiuwen Huang, Jiatong Liu
JointCloud computing supports large-scale resource consolidation and collaboration among multiple cloud service providers to provide users with powerful performance and adequate services. In the face of exponential scaling of resources, monitoring is an indispensable part of effective resource management. Monitoring provides methods for reviewing and managing the performance status of JointCloud resources
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Rare event probability evaluation for static and dynamic structures based on direct probability integral method Comput. Struct. (IF 4.4) Pub Date : 2025-02-26 Hui Li, Pengfei Gao, Xi Chen, Hongchao Guo, Dixiong Yang
Efficient and accurate evaluation of the rare event probability is a crucial yet challenging task for the design of static and dynamic structures with uncertainties. This study establishes a novel level-wise representative points increment strategy for direct probability integral method (DPIM), which calculates accurately rare event probabilities (less than 10−3). Firstly, the two advantages of partitioning
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Multiscale lattice discrete particle modeling of steel-concrete composite column bases under pull-out and cyclic loading conditions Comput. Struct. (IF 4.4) Pub Date : 2025-02-26 Yingbo Zhu, Ahmad Hassan, Amit Kanvinde, Alessandro Fascetti
Steel-Concrete Composite (SCC) connections in steel buildings are inherently complex in terms of internal stress distributions and failure modes that are important to characterize for effective design and performance assessment. In this context, numerical results obtained from a multiscale lattice discrete particle model are presented to examine its efficacy in characterizing the response of SCC connections
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A review on the applications of artificial neural network techniques for accelerating finite element analysis in the civil engineering domain Comput. Struct. (IF 4.4) Pub Date : 2025-02-26 S.C. Jayasinghe, M. Mahmoodian, A. Alavi, A. Sidiq, F. Shahrivar, Z. Sun, J. Thangarajah, S. Setunge
Finite element (FE) modelling is widely recognised as the most powerful and foremost computational technique for analysing complex structural systems due to its highly efficient modelling and simulation capabilities. Despite the strengths, its computational demands restrict its ability of performing instantaneous computations and present substantial challenges for achieving real-time analyses results
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RCM: A Neural Policy Model With Reconstruction Mechanism to Construct a Solution for the Agile Satellite Scheduling Problem IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-02-25 Ming Chen, Jie Chun, Witold Pedrycz, Yongming He, Xiaolu Liu, Guohua Wu
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Probabilistic Model-Based Fault-Tolerant Control for Uncertain Nonlinear Systems IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-02-25 Linhao Zhao, Guanghui Wen, Zhenyuan Guo, Song Zhu, Cheng Hu, Shiping Wen
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An optimal three-tier prioritization-based multiflow scheduling in cloud-assisted smart healthcare J. Netw. Comput. Appl. (IF 7.7) Pub Date : 2025-02-25 Sarthak, Anshul Verma, Pradeepika Verma
Internet of Things is significantly advancing the development of modern interconnected networks. Coordinated with cloud computing, this technology becomes even more powerful, cost-effective, and reliable. These advancements are rapidly being integrated into modern healthcare through innovations such as smart ambulances, remote monitoring systems, and smart hospitals, enhancing tracking, analysis, and
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Damage localization using a deep learning-based response modeling method Comput. Struct. (IF 4.4) Pub Date : 2025-02-25 Chengbin Chen, Liqun Tang, Qingkai Xiao, Licheng Zhou, Zejia Liu, Yiping Liu, Zhenyu Jiang, Bao Yang
Existing multi-damage localization methods usually need to be trained using labeled data obtained from various damage cases, and such methods can identify multiple damages with high accuracy. However, it’s extremely challenging to obtain labeled data from engineered structures under various damage states, especially in multiple damages case. Thus, damage localization methods that need to be trained
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Computational forensics framework for material property identification of reinforced structures leveraging DIC-based FEM updating via metaheuristic optimization Comput. Struct. (IF 4.4) Pub Date : 2025-02-25 Tabish Ali, Robin Eunju Kim, Kun-Soo Kim
Identification of the material properties of reinforced concrete (RC) systems is a challenging but crucial part of the strength analysis and condition assessment. However, the heterogeneous nature of concrete poses complexities in determining its material properties accurately. A combination of finite element model updating with metaheuristic optimization algorithms has emerged as one method to determine
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Multiplayer Differential Games of Markov Jump Systems via Reinforcement Learning IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-02-24 Jiacheng Wu, Jing Wang, Hao Shen, Michael V. Basin
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Robust Time-Varying Formation Control of One-Sided Lipschitz Nonlinear Multiagent System With Delays via Optimization Algorithm IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-02-24 Xiao-Jie Peng, Yong He, Hongyi Li, Shengnan Tian
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Upgraded double tuned mass dampers for vibration control of structures under earthquakes Comput. Struct. (IF 4.4) Pub Date : 2025-02-24 Ngoc-An Tran, Van-Bao Hoang, Hai-Le Bui, Huong Quoc Cao
In this study, an upgraded version of a Double Tuned Mass Damper (UDTMD) is developed to mitigate the dynamic response of structures under earthquake loadings. This device is a passive vibration absorber combined by two masses, two springs and a dashpot. Like a Tuned Mass Damper (TMD) or Double Tuned Mass Damper (DTMD), the UDTMD has notable advantages such as stability, cost-effective and low maintenance
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Multi-agent deep reinforcement learning for resilience optimization of building structures considering utility interactions for functionality Comput. Struct. (IF 4.4) Pub Date : 2025-02-22 Ghazanfar Ali Anwar, Muhammad Zeshan Akber
The resilience optimization of the built environment under extreme events with building structures and interdependent physical infrastructure systems is inefficient due to the large action spaces of pre-hazard mitigation alternatives. Hence, a Multi-Agent Deep Deterministic Policy Gradient (MADDPG) based resilience optimization framework is proposed herein to enhance the resilience of the built environment
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Adaptive Neural Zeta-Backstepping With Predefined Damping Ratio. Application to DC Motors IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-02-21 Xiaolong Zheng, Han Wen, Xuebo Yang, Xinghu Yu, Juan J. Rodriguez-Andina
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Co-Training Broad Siamese-Like Network for Coupled-View Semi-Supervised Learning IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-02-21 Yikai Li, C. L. Philip Chen, Tong Zhang
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Collaborative Deep Learning and Information Fusion of Heterogeneous Latent Variable Models for Industrial Quality Prediction IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-02-21 Junhua Zheng, Zhiqiang Ge
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Inverse Reinforcement Learning for Discrete-Time Systems With Data Dropouts IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-02-21 Jialu Fan, Pengfei Shi, Wenqian Xue, Bosen Lian, Yunfang Cui, Frank L. Lewis
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Automated Cluster Elimination Guided by High-Density Points IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-02-21 Xianghui Hu, Yichuan Jiang, Witold Pedrycz, Zhaohong Deng, Jianwei Gao, Yiming Tang
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An Arbitrarily Predefined-Time Convergent RNN for Dynamic LMVE With Its Applications in UR3 Robotic Arm Control and Multiagent Systems IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-02-21 Boyu Zheng, Chunquan Li, Zhijun Zhang, Junzhi Yu, P. X. Liu
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Multiscale characterization of the mechanics of curved fibered structures with application to biological and engineered materials Comput. Struct. (IF 4.4) Pub Date : 2025-02-21 J.A. Sanz-Herrera, A. Apolinar-Fernandez, A. Jimenez-Aires, P. Perez-Alcantara, J. Dominguez, E. Reina-Romo
Curved fibered structures are ubiquitous in nature and the mechanical behavior of these materials is of pivotal importance in the biomechanics and mechanobiology fields. We develop a multiscale formulation to characterize the macroscopic mechanical nonlinear behavior from the microstructure of fibered matrices. From the analysis of the mechanics of a randomly curved single fiber, a fibered matrix model