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基于改进YOLOX-S视觉检测算法的轨道交通车辆自动识别研究
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作者 邢国栋 刘东凯 刘晓龙 《机械设计与制造工程》 2026年第2期102-106,共5页
提出了一种基于改进YOLOX-S视觉检测算法的轨道交通车辆自动识别方法,通过优化网络结构和学习率策略,基于梯度差自适应学习率对YOLOX-S视觉检测算法进行改进,引入注意力机制和Transformer模块,增强YOLOX-S视觉检测算法对轨道交通车辆复... 提出了一种基于改进YOLOX-S视觉检测算法的轨道交通车辆自动识别方法,通过优化网络结构和学习率策略,基于梯度差自适应学习率对YOLOX-S视觉检测算法进行改进,引入注意力机制和Transformer模块,增强YOLOX-S视觉检测算法对轨道交通车辆复杂特征的捕捉能力。实验结果表明,改进后的YOLOX-S视觉检测算法其检测精度均值达93.20%,算法体积减小至15 MB,检测速度提升至28.90帧/s,检测延迟减至80.90 ms,为轨道交通车辆智能化监测和管理提供了技术支持。 展开更多
关键词 yolox-s视觉检测算法 算法压缩 轨道交通 车辆自动识别 视觉检测
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基于改进YOLOX-S算法的雾天图像目标检测
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作者 唐亮 《机械设计与制造工程》 2025年第5期104-108,共5页
为了改善雾天场景下目标的检测效果,为自动驾驶、智能监控等实际应用提供可靠的解决方案,提出了基于改进YOLOX-S算法的雾天图像目标检测算法。将双边滤波器引入到Retinex算法中,增强雾天图像质量;基于改进YOLOX-S构建雾天图像目标检测结... 为了改善雾天场景下目标的检测效果,为自动驾驶、智能监控等实际应用提供可靠的解决方案,提出了基于改进YOLOX-S算法的雾天图像目标检测算法。将双边滤波器引入到Retinex算法中,增强雾天图像质量;基于改进YOLOX-S构建雾天图像目标检测结构,由CSPDarknet主干网络提取多尺度特征图及其权重;在下采样阶段引入深度可分离卷积改进Neck-FPN网络,提取目标感兴趣区域特征图,实现雾天图像目标检测。实验结果表明:该算法可有效提升雾天图像质量,峰值信噪比指标达到20.828 dB,结构相似度指标为0.814;可实现目标的精准检测,平均精度(IoU=0.5)为94.5%,检测帧率为27.37帧/s。 展开更多
关键词 改进yolox-s算法 雾天图像 双边滤波器 RETINEX算法 ECANet通道注意力
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面向焊缝控制的自动焊接机窄间隙焊接轨迹YOLOX-s纵向跟踪技术
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作者 胡石 王旭升 常宽 《河南工程学院学报(自然科学版)》 2025年第4期45-49,共5页
自动焊接机受加工工件和自身因素影响会出现不同程度的振动,使得焊枪偏离期望焊缝轨迹,出现较大焊缝。为此,提出面向焊缝控制的自动焊接机窄间隙焊接轨迹YOLOX-s纵向跟踪技术。首先,根据焊接道数、焊接次序、焊枪偏移量建立焊道轨迹坐标... 自动焊接机受加工工件和自身因素影响会出现不同程度的振动,使得焊枪偏离期望焊缝轨迹,出现较大焊缝。为此,提出面向焊缝控制的自动焊接机窄间隙焊接轨迹YOLOX-s纵向跟踪技术。首先,根据焊接道数、焊接次序、焊枪偏移量建立焊道轨迹坐标系;然后,结合YOLOX-s模型,分析窄间隙焊接轨迹在该坐标系中的位置,计算理想焊缝轨迹,将理想焊缝轨迹与窄间隙焊接轨迹的坐标位置差值作为焊缝轨迹误差;最后,利用焊缝估计调控量对该误差进行控制,结合输送速率与输送量完成窄间隙焊接轨迹纵向跟踪。结果表明:采用所提方法得到的焊缝轨迹与期望轨迹的最大跟踪误差小于5 mm,且焊缝轨迹之间的一致性系数达到8以上,可以稳定地控制自动焊接机按照期望焊缝轨迹执行任务。 展开更多
关键词 焊缝控制 自动焊接机 窄间隙焊接 yolox-s模型 纵向跟踪技术
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基于改进YOLOx-s的无人机桥梁裂缝检测算法 被引量:2
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作者 徐伟峰 吕航 +4 位作者 程子益 陆安文 王洪涛 王晏如 李昇 《吉林大学学报(理学版)》 北大核心 2025年第4期1091-1098,共8页
针对桥梁裂缝检测不充分的安全隐患问题,结合小型无人机平台提出一种基于YOLOx-s的桥梁裂缝检测算法.首先,在backbone中添加残差空洞卷积模块,以解决无人机图像尺度变化大、背景复杂的问题;其次,在PANET中添加坐标注意力机制模块,以提... 针对桥梁裂缝检测不充分的安全隐患问题,结合小型无人机平台提出一种基于YOLOx-s的桥梁裂缝检测算法.首先,在backbone中添加残差空洞卷积模块,以解决无人机图像尺度变化大、背景复杂的问题;其次,在PANET中添加坐标注意力机制模块,以提高小目标检测率;最后,替换损失函数为Focal loss,以加强正样本的学习,提高模型的稳定性.实验结果表明:该方法相比于YOLOx-s算法,检测精度提升了3.72个百分点;在嵌入式设备上,该方法比其他主流算法有更好的精度,且能实现实时性检测,可以更好地应用在无人机桥梁裂缝检测中. 展开更多
关键词 无人机 桥梁裂缝检测 目标检测 yolox-s算法 注意力机制
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改进YOLOX-S的智慧港口目标检测算法
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作者 江鉴 袁志群 +2 位作者 高秀晶 何鸿正 谷子硕 《计算机工程与设计》 北大核心 2025年第7期2045-2053,共9页
针对单目摄像头在港口场景下面临目标检测算法识别不稳定的问题,提出一种改进YOLOX-S目标检测算法。引入大核注意力机制改进主干提取网络的特征输出与BottleNeck模块,提高算法特征提取的能力;引入中心点余弦距离损失改进目标框损失函数... 针对单目摄像头在港口场景下面临目标检测算法识别不稳定的问题,提出一种改进YOLOX-S目标检测算法。引入大核注意力机制改进主干提取网络的特征输出与BottleNeck模块,提高算法特征提取的能力;引入中心点余弦距离损失改进目标框损失函数,解决训练损失虽收敛但目标框仍抖动的问题;引入深度可分离卷积模块优化检测头模块,提高检测精度同时减少模型大小;实车录制智慧港口不同场景20 906张图片进行实验,其结果表明,改进算法与YOLOX-S相比,mAP@0.5:0.95提高5.1%,模型权重大小降低8.8%,TensorRT部署检测帧率为25.0 FPS。改进方法与实验结果可为智慧港口场景下的视觉感知算法开发提供参考。 展开更多
关键词 智慧港口 自动驾驶 目标检测 yolox-s算法 大核注意力机制 ACE-IOU损失 深度可分离卷积
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基于YOLOX-S算法的通信网络状态识别研究
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作者 郑含笑 宋可可 《通信电源技术》 2025年第5期13-15,共3页
传统的通信网络状态识别方法存在数据预处理复杂、模型训练效率低下以及实时性不足等弊端,导致难以准确、高效地识别网络状态,无法满足现代复杂网络环境的需求。针对这些问题,提出了基于YOLOX-S算法的通信网络状态识别研究。利用聚类算... 传统的通信网络状态识别方法存在数据预处理复杂、模型训练效率低下以及实时性不足等弊端,导致难以准确、高效地识别网络状态,无法满足现代复杂网络环境的需求。针对这些问题,提出了基于YOLOX-S算法的通信网络状态识别研究。利用聚类算法聚类处理通信网络中的异常状态特征,形成清晰的聚类结构。使用YOLOX-S算法增强聚类后的通信网络关键特征,进一步挖掘通信网络中的潜在特征,提升特征的表达能力和区分度。最后计算通信网络增强后的特征与正常状态或预设阈值的偏离程度识别通信网络的状态。实验结果表明,该方法能够准确并及时地识别出通信网络状态,具有较高的准确率和实时性。 展开更多
关键词 yolox-s算法 通信 网络状态 识别 网络异常
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基于YOLOX-S算法的电气二次设备状态自动识别研究
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作者 柏文 《电气技术与经济》 2025年第12期86-89,共4页
电气二次设备种类繁多,且每种设备都有其特定的工作原理和性能参数,这种复杂性和多样性增加了状态识别的难度。为保证整个电力系统的安全性和稳定性,提出基于YOLOX-S算法的电气二次设备状态自动识别方法。通过分析电气二次设备的运行情... 电气二次设备种类繁多,且每种设备都有其特定的工作原理和性能参数,这种复杂性和多样性增加了状态识别的难度。为保证整个电力系统的安全性和稳定性,提出基于YOLOX-S算法的电气二次设备状态自动识别方法。通过分析电气二次设备的运行情况,构建出电气二次设备状态指标体系。基于所构建的状态指标体系,选用YOLOX-S算法建立二次设备状态隶属度模型。计算各项指标的权重,将权重计算结果与二次设备状态隶属度模型进行融合,实现电气二次设备状态的自动识别。实验结果表明,所提方法的识别准确率较高以及资源消耗较低,可以在实际中得到广泛应用。 展开更多
关键词 二次设备 电气设备 状态识别 yolox-s算法
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An Eulerian-Lagrangian parallel algorithm for simulation of particle-laden turbulent flows 被引量:1
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作者 Harshal P.Mahamure Deekshith I.Poojary +1 位作者 Vagesh D.Narasimhamurthy Lihao Zhao 《Acta Mechanica Sinica》 2026年第1期15-34,共20页
This paper presents an Eulerian-Lagrangian algorithm for direct numerical simulation(DNS)of particle-laden flows.The algorithm is applicable to perform simulations of dilute suspensions of small inertial particles in ... This paper presents an Eulerian-Lagrangian algorithm for direct numerical simulation(DNS)of particle-laden flows.The algorithm is applicable to perform simulations of dilute suspensions of small inertial particles in turbulent carrier flow.The Eulerian framework numerically resolves turbulent carrier flow using a parallelized,finite-volume DNS solver on a staggered Cartesian grid.Particles are tracked using a point-particle method utilizing a Lagrangian particle tracking(LPT)algorithm.The proposed Eulerian-Lagrangian algorithm is validated using an inertial particle-laden turbulent channel flow for different Stokes number cases.The particle concentration profiles and higher-order statistics of the carrier and dispersed phases agree well with the benchmark results.We investigated the effect of fluid velocity interpolation and numerical integration schemes of particle tracking algorithms on particle dispersion statistics.The suitability of fluid velocity interpolation schemes for predicting the particle dispersion statistics is discussed in the framework of the particle tracking algorithm coupled to the finite-volume solver.In addition,we present parallelization strategies implemented in the algorithm and evaluate their parallel performance. 展开更多
关键词 DNS Eulerian-Lagrangian Particle tracking algorithm Point-particle Parallel software
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PID Steering Control Method of Agricultural Robot Based on Fusion of Particle Swarm Optimization and Genetic Algorithm
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作者 ZHAO Longlian ZHANG Jiachuang +2 位作者 LI Mei DONG Zhicheng LI Junhui 《农业机械学报》 北大核心 2026年第1期358-367,共10页
Aiming to solve the steering instability and hysteresis of agricultural robots in the process of movement,a fusion PID control method of particle swarm optimization(PSO)and genetic algorithm(GA)was proposed.The fusion... Aiming to solve the steering instability and hysteresis of agricultural robots in the process of movement,a fusion PID control method of particle swarm optimization(PSO)and genetic algorithm(GA)was proposed.The fusion algorithm took advantage of the fast optimization ability of PSO to optimize the population screening link of GA.The Simulink simulation results showed that the convergence of the fitness function of the fusion algorithm was accelerated,the system response adjustment time was reduced,and the overshoot was almost zero.Then the algorithm was applied to the steering test of agricultural robot in various scenes.After modeling the steering system of agricultural robot,the steering test results in the unloaded suspended state showed that the PID control based on fusion algorithm reduced the rise time,response adjustment time and overshoot of the system,and improved the response speed and stability of the system,compared with the artificial trial and error PID control and the PID control based on GA.The actual road steering test results showed that the PID control response rise time based on the fusion algorithm was the shortest,about 4.43 s.When the target pulse number was set to 100,the actual mean value in the steady-state regulation stage was about 102.9,which was the closest to the target value among the three control methods,and the overshoot was reduced at the same time.The steering test results under various scene states showed that the PID control based on the proposed fusion algorithm had good anti-interference ability,it can adapt to the changes of environment and load and improve the performance of the control system.It was effective in the steering control of agricultural robot.This method can provide a reference for the precise steering control of other robots. 展开更多
关键词 agricultural robot steering PID control particle swarm optimization algorithm genetic algorithm
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Efficient Algorithms for Steiner k-eccentricity on Graphs Similar to Trees
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作者 LI Xingfu 《数学进展》 北大核心 2026年第2期281-291,共11页
The Steiner k-eccentricity of a vertex is the maximum Steiner distance over all k-sets each of which contains the given vertex,where the Steiner distance of a vertex set is the size of a minimum Steiner tree on this s... The Steiner k-eccentricity of a vertex is the maximum Steiner distance over all k-sets each of which contains the given vertex,where the Steiner distance of a vertex set is the size of a minimum Steiner tree on this set.Since the minimum Steiner tree problem is well-known NP-hard,the Steiner k-eccentricity is not so easy to compute.This paper attempts to efficiently solve this problem on block graphs and general graphs with limited cycles.A block graph is a graph in which each block is a clique,and is also called a clique-tree.On block graphs,we propose an O(k(n+m))-time algorithm to compute the Steiner k-eccentricity of a vertex where n and m are respectively the order and size of a block graph.On general graphs with limited cycles,we take the cyclomatic numberν(G)as a parameter which is the minimum number of edges of G whose removal makes G acyclic,and devise an O(n^(ν(G)+1)(n(G)+m(G)+k))-time algorithm. 展开更多
关键词 Steiner eccentricity algorithm COMPLEXITY
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Optimization of Truss Structures Using Nature-Inspired Algorithms with Frequency and Stress Constraints
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作者 Sanjog Chhetri Sapkota Liborio Cavaleri +3 位作者 Ajaya Khatri Siddhi Pandey Satish Paudel Panagiotis G.Asteris 《Computer Modeling in Engineering & Sciences》 2026年第1期436-464,共29页
Optimization is the key to obtaining efficient utilization of resources in structural design.Due to the complex nature of truss systems,this study presents a method based on metaheuristic modelling that minimises stru... Optimization is the key to obtaining efficient utilization of resources in structural design.Due to the complex nature of truss systems,this study presents a method based on metaheuristic modelling that minimises structural weight under stress and frequency constraints.Two new algorithms,the Red Kite Optimization Algorithm(ROA)and Secretary Bird Optimization Algorithm(SBOA),are utilized on five benchmark trusses with 10,18,37,72,and 200-bar trusses.Both algorithms are evaluated against benchmarks in the literature.The results indicate that SBOA always reaches a lighter optimal.Designs with reducing structural weight ranging from 0.02%to 0.15%compared to ROA,and up to 6%–8%as compared to conventional algorithms.In addition,SBOA can achieve 15%–20%faster convergence speed and 10%–18%reduction in computational time with a smaller standard deviation over independent runs,which demonstrates its robustness and reliability.It is indicated that the adaptive exploration mechanism of SBOA,especially its Levy flight–based search strategy,can obviously improve optimization performance for low-and high-dimensional trusses.The research has implications in the context of promoting bio-inspired optimization techniques by demonstrating the viability of SBOA,a reliable model for large-scale structural design that provides significant enhancements in performance and convergence behavior. 展开更多
关键词 OPTIMIZATION truss structures nature-inspired algorithms meta-heuristic algorithms red kite opti-mization algorithm secretary bird optimization algorithm
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A Novel Hybrid Sine Cosine-Flower Pollination Algorithm for Optimized Feature Selection
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作者 Sumbul Azeem Shazia Javed +3 位作者 Farheen Ibraheem Uzma Bashir Nazar Waheed Khursheed Aurangzeb 《Computers, Materials & Continua》 2026年第5期1916-1930,共15页
Data serves as the foundation for training and testing machine learning and artificial intelligencemodels.The most fundamental part of data is its attributes or features.The feature set size changes from one dataset t... Data serves as the foundation for training and testing machine learning and artificial intelligencemodels.The most fundamental part of data is its attributes or features.The feature set size changes from one dataset to another.Only the relevant features contributemeaningfully to classificationaccuracy.The presence of irrelevant features reduces the system’s effectiveness.Classification performance often deteriorates on high-dimensional datasets due to the large search space.Thus,one of the significant obstacles affecting the performance of the learning process in the majority of machine learning and data mining techniques is the dimensionality of the datasets.Feature selection(FS)is an effective preprocessing step in classification tasks.The aim of applying FS is to exclude redundant and unrelated features while retaining the most informative ones to optimize classification capability and compress computational complexity.In this paper,a novel hybrid binary metaheuristic algorithm,termed hSC-FPA,is proposed by hybridizing the Flower Pollination Algorithm(FPA)and the Sine Cosine Algorithm(SCA).Hybridization controls the exploration capacity of SCA and the exploitation behavior of FPA to maintain a balanced search process.SCA guides the global search in the early iterations,while FPA’s local pollination refines promising solutions in later stages.A binary conversion mechanism using a threshold function is implemented to handle the discrete nature of the feature selection problem.The functionality of the proposed hSC-FPA is authenticated on fourteen standard datasets from the UCI repository using the K-Nearest Neighbors(K-NN)classifier.Experimental results are benchmarked against the standalone SCA and FPA algorithms.The hSC-FPA consistently achieves higher classification accuracy,selects a more compact feature subset,and demonstrates superior convergence behavior.These findings support the stability and outperformance of the hybrid feature selection method presented. 展开更多
关键词 Classification algorithms feature selection process flower pollination algorithm hybrid model metaheuristics multi-objective optimization search algorithm sine cosine algorithm
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RRT^(*)-GSQ:A hybrid sampling path planning algorithm for complex orchard scenarios
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作者 ZHU Qingzhen ZHAO Jiamuyang +1 位作者 DAI Xu YU Yang 《农业工程学报》 北大核心 2026年第3期13-25,共13页
Traditional sampling-based path planning algorithms,such as the rapidly-exploring random tree star(RRT^(*)),encounter critical limitations in unstructured orchard environments,including low sampling efficiency in narr... Traditional sampling-based path planning algorithms,such as the rapidly-exploring random tree star(RRT^(*)),encounter critical limitations in unstructured orchard environments,including low sampling efficiency in narrow passages,slow convergence,and high computational costs.To address these challenges,this paper proposes a novel hybrid global path planning algorithm integrating Gaussian sampling and quadtree optimization(RRT^(*)-GSQ).This methodology aims to enhance path planning by synergistically combining a Gaussian mixture sampling strategy to improve node generation in critical regions,an adaptive step-size and direction optimization mechanism for enhanced obstacle avoidance,a Quadtree-AABB collision detection framework to lower computational complexity,and a dynamic iteration control strategy for more efficient convergence.In obstacle-free and obstructed scenarios,compared with the conventional RRT^(*),the proposed algorithm reduced the number of node evaluations by 67.57%and 62.72%,and decreased the search time by 79.72%and 78.52%,respectively.In path tracking tests,the proposed algorithm achieved substantial reductions in RMSE of the final path compared to the conventional RRT^(*).Specifically,the lateral RMSE was reduced by 41.5%in obstacle-free environments and 59.3%in obstructed environments,while the longitudinal RMSE was reduced by 57.2%and 58.5%,respectively.Furthermore,the maximum absolute errors in both lateral and longitudinal directions were constrained within 0.75 m.Field validation experiments in an operational orchard confirmed the algorithm's practical effectiveness,showing reductions in the mean tracking error of 47.6%(obstacle-free)and 58.3%(with obstructed),alongside a 5.1%and 7.2%shortening of the path length compared to the baseline method.The proposed algorithm effectively enhances path planning efficiency and navigation accuracy for robots,presenting a superior solution for high-precision autonomous navigation of agricultural robots in orchard environments and holding significant value for engineering applications. 展开更多
关键词 ROBOT path planning ORCHARD improved RRT^(*)algorithm Gaussian sampling autonomous navigation
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TWO PARALLEL ALGORITHMS FOR A CLASS OF SPLIT COMMON SOLUTION PROBLEMS
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作者 Truong Minh TUYEN Nguyen Thi TRANG Tran Thi HUONG 《Acta Mathematica Scientia》 2026年第1期505-518,共14页
We study the split common solution problem with multiple output sets for monotone operator equations in Hilbert spaces.To solve this problem,we propose two new parallel algorithms.We establish a weak convergence theor... We study the split common solution problem with multiple output sets for monotone operator equations in Hilbert spaces.To solve this problem,we propose two new parallel algorithms.We establish a weak convergence theorem for the first and a strong convergence theorem for the second. 展开更多
关键词 iterative algorithm Hilbert space metric projection proximal point algorithm
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Painted Wolf Optimization:A Novel Nature-Inspired Metaheuristic Algorithm for Real-World Optimization Problems
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作者 Saeid Sheikhi 《Computers, Materials & Continua》 2026年第5期243-271,共29页
Metaheuristic optimization algorithms continue to be essential for solving complex real-world problems,yet existingmethods often struggle with balancing exploration and exploitation across diverse problem landscapes.T... Metaheuristic optimization algorithms continue to be essential for solving complex real-world problems,yet existingmethods often struggle with balancing exploration and exploitation across diverse problem landscapes.This paper proposes a novel nature-inspired metaheuristic optimization algorithm named the Painted Wolf Optimization(PWO)algorithm.The main inspiration for the PWO algorithm is the group behavior and hunting strategy of painted wolves,also known as African wild dogs in the wild,particularly their unique consensus-based voting rally mechanism,a behavior fundamentally distinct fromthe social dynamics of grey wolves.In this innovative process,pack members explore different areas to find prey;then,they hold a pre-hunting voting rally based on the alpha member to determine who will begin the hunt and attack the prey.The efficiency of the proposed PWO algorithm is evaluated by a comparison study with other well-known optimization algorithms on 33 test functions,including the Congress on Evolutionary Computation(CEC)2017 suite and different real-world engineering design cases.Furthermore,the algorithm’s performance is further tested across a spectrum of optimization problems with extensive unknown search spaces.This includes its application within the field of cybersecurity,specifically in the context of training a machine learning-based intrusion detection system(ML-IDS),achieving an accuracy of 0.90 and an F-measure of 0.9290.Statistical analyses using the Wilcoxon signed-rank test(all p<0.05)indicate that the PWO algorithm outperforms existing state-of-the-art algorithms,providing superior solutions in diverse and unpredictable optimization landscapes.This demonstrates its potential as a robust method for tackling complex optimization problems in various fields.The source code for thePWOalgorithmis publicly available at https://github.com/saeidsheikhi/Painted-Wolf-Optimization. 展开更多
关键词 OPTIMIZATION painted wolf optimization algorithm metaheuristic algorithm nature-inspired computing swarm intelligence
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Gekko Japonicus Algorithm:A Novel Nature-inspired Algorithm for Engineering Problems and Path Planning
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作者 Ke Zhang Hongyang Zhao +2 位作者 Xingdong Li Chengjin Fu Jing Jin 《Journal of Bionic Engineering》 2026年第1期431-471,共41页
This paper introduces a novel nature-inspired metaheuristic algorithm called the Gekko japonicus algorithm.The algo-rithm draws inspiration mainly from the predation strategies and survival behaviors of the Gekko japo... This paper introduces a novel nature-inspired metaheuristic algorithm called the Gekko japonicus algorithm.The algo-rithm draws inspiration mainly from the predation strategies and survival behaviors of the Gekko japonicus.The math-ematical model is developed by simulating various biological behaviors of the Gekko japonicus,such as hybrid loco-motion patterns,directional olfactory guidance,implicit group advantage tendencies,and the tail autotomy mechanism.By integrating multi-stage mutual constraints and dynamically adjusting parameters,GJA maintains an optimal balance between global exploration and local exploitation,thereby effectively solving complex optimization problems.To assess the performance of GJA,comparative analyses were performed against fourteen state-of-the-art metaheuristic algorithms using the CEC2017 and CEC2022 benchmark test sets.Additionally,a Friedman test was performed on the experimen-tal results to assess the statistical significance of differences between various algorithms.And GJA was evaluated using multiple qualitative indicators,further confirming its superiority in exploration and exploitation.Finally,GJA was utilized to solve four engineering optimization problems and further implemented in robotic path planning to verify its practical applicability.Experimental results indicate that,compared to other high-performance algorithms,GJA demonstrates excep-tional performance as a powerful optimization algorithm in complex optimization problems.We make the code publicly available at:https://github.com/zhy1109/Gekko-japonicusalgorithm. 展开更多
关键词 Gekko japonicus algorithm Metaheuristic algorithm Exploration and exploitation Engineering optimization Path planning
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Path planning of unmanned surface vehicles based on improved particle swarm optimization algorithm with consideration of particle sight distance
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作者 WANG Cheng YANG Junnan +3 位作者 ZHANG Xinyang QIAN Zhong ZHU Ye LIU Hong 《上海海事大学学报》 北大核心 2026年第1期9-19,共11页
To enhance the accuracy of path planning of unmanned surface vehicles(USVs),the particle swarm optimization algorithm(PSO)is improved based on species migration strategies observed in ecology.By incorporating the conc... To enhance the accuracy of path planning of unmanned surface vehicles(USVs),the particle swarm optimization algorithm(PSO)is improved based on species migration strategies observed in ecology.By incorporating the concept of particle sight distance,an improved algorithm,called SD-IPSO,is proposed for the real-time autonomous navigation of USVs in marine environments.The algorithm refines the individual behavior pattern of particles in the population,effectively improving both local and global search capabilities while avoiding premature convergence.The effectiveness of the algorithm is validated using standard test functions from CEC-2017 function library,assessing it from multiple dimensions.Sensitivity analysis is conducted on key parameters in the algorithm,including particle sight distance and population size.Results indicate that compared with PSO,SD-IPSO demonstrates significant advantages in optimization accuracy and convergence speed.The application of SD-IPSO in path planning is further investigated through a 14-point traveling salesman problem(TSP)example and navigation autonomous tests of USVs in marine environments.Findings demonstrate that the proposed algorithm exhibits superior optimization capabilities and can effectively address the path planning challenges of USVs. 展开更多
关键词 particle swarm optimization algorithm(PSO) sight distance unmanned surface vehicle(USV)
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A Quantum-Inspired Algorithm for Clustering and Intrusion Detection
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作者 Gang Xu Lefeng Wang +5 位作者 Yuwei Huang Yong Lu Xin Liu Weijie Tan Zongpeng Li Xiu-Bo Chen 《Computers, Materials & Continua》 2026年第4期1180-1215,共36页
The Intrusion Detection System(IDS)is a security mechanism developed to observe network traffic and recognize suspicious or malicious activities.Clustering algorithms are often incorporated into IDS;however,convention... The Intrusion Detection System(IDS)is a security mechanism developed to observe network traffic and recognize suspicious or malicious activities.Clustering algorithms are often incorporated into IDS;however,conventional clustering-based methods face notable drawbacks,including poor scalability in handling high-dimensional datasets and a strong dependence of outcomes on initial conditions.To overcome the performance limitations of existing methods,this study proposes a novel quantum-inspired clustering algorithm that relies on a similarity coefficient-based quantum genetic algorithm(SC-QGA)and an improved quantum artificial bee colony algorithm hybrid K-means(IQABC-K).First,the SC-QGA algorithmis constructed based on quantum computing and integrates similarity coefficient theory to strengthen genetic diversity and feature extraction capabilities.For the subsequent clustering phase,the process based on the IQABC-K algorithm is enhanced with the core improvement of adaptive rotation gate and movement exploitation strategies to balance the exploration capabilities of global search and the exploitation capabilities of local search.Simultaneously,the acceleration of convergence toward the global optimum and a reduction in computational complexity are facilitated by means of the global optimum bootstrap strategy and a linear population reduction strategy.Through experimental evaluation with multiple algorithms and diverse performance metrics,the proposed algorithm confirms reliable accuracy on three datasets:KDD CUP99,NSL_KDD,and UNSW_NB15,achieving accuracy of 98.57%,98.81%,and 98.32%,respectively.These results affirm its potential as an effective solution for practical clustering applications. 展开更多
关键词 Intrusion detection CLUSTERING quantum artificial bee colony algorithm K-MEANS quantum genetic algorithm
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Information Diffusion Models and Fuzzing Algorithms for a Privacy-Aware Data Transmission Scheduling in 6G Heterogeneous ad hoc Networks
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作者 Borja Bordel Sánchez Ramón Alcarria Tomás Robles 《Computer Modeling in Engineering & Sciences》 2026年第2期1214-1234,共21页
In this paper,we propose a new privacy-aware transmission scheduling algorithm for 6G ad hoc networks.This system enables end nodes to select the optimum time and scheme to transmit private data safely.In 6G dynamic h... In this paper,we propose a new privacy-aware transmission scheduling algorithm for 6G ad hoc networks.This system enables end nodes to select the optimum time and scheme to transmit private data safely.In 6G dynamic heterogeneous infrastructures,unstable links and non-uniform hardware capabilities create critical issues regarding security and privacy.Traditional protocols are often too computationally heavy to allow 6G services to achieve their expected Quality-of-Service(QoS).As the transport network is built of ad hoc nodes,there is no guarantee about their trustworthiness or behavior,and transversal functionalities are delegated to the extreme nodes.However,while security can be guaranteed in extreme-to-extreme solutions,privacy cannot,as all intermediate nodes still have to handle the data packets they are transporting.Besides,traditional schemes for private anonymous ad hoc communications are vulnerable against modern intelligent attacks based on learning models.The proposed scheme fulfills this gap.Findings show the probability of a successful intelligent attack reduces by up to 65%compared to ad hoc networks with no privacy protection strategy when used the proposed technology.While congestion probability can remain below 0.001%,as required in 6G services. 展开更多
关键词 6G networks ad hoc networks PRIVACY scheduling algorithms diffusion models fuzzing algorithms
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Integrated diagnosis of abnormal energy consumption in converter steelmaking using GWO-SVM-K-means algorithms
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作者 Fei-Xiang Dai Xiang-Jun Bao +2 位作者 Lu Zhang Xiao-Jing Yang Guang Chen 《Journal of Iron and Steel Research International》 2026年第1期458-468,共11页
To address the issue of abnormal energy consumption fluctuations in the converter steelmaking process,an integrated diagnostic method combining the gray wolf optimization(GWO)algorithm,support vector machine(SVM),and ... To address the issue of abnormal energy consumption fluctuations in the converter steelmaking process,an integrated diagnostic method combining the gray wolf optimization(GWO)algorithm,support vector machine(SVM),and K-means clustering was proposed.Eight input parameters—derived from molten iron conditions and external factors—were selected as feature variables.A GWO-SVM model was developed to accurately predict the energy consumption of individual heats.Based on the prediction results,the mean absolute percentage error and maximum relative error of the test set were employed as criteria to identify heats with abnormal energy usage.For these heats,the K-means clustering algorithm was used to determine benchmark values of influencing factors from similar steel grades,enabling root-cause diagnosis of excessive energy consumption.The proposed method was applied to real production data from a converter in a steel plant.The analysis reveals that heat sample No.44 exhibits abnormal energy consumption,due to gas recovery being 1430.28 kg of standard coal below the benchmark level.A secondary contributing factor is a steam recovery shortfall of 237.99 kg of standard coal.This integrated approach offers a scientifically grounded tool for energy management in converter operations and provides valuable guidance for optimizing process parameters and enhancing energy efficiency. 展开更多
关键词 Converter smelting process Abnormal energy diagnosis Gray wolf optimization algorithm Support vector machine K-means clustering algorithm
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