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Matrix-weighted consensus of fractional-order networked systems via sampled-data control. 基于采样数据控制的分数阶网络系统的矩阵加权一致性。
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-02-09 DOI: 10.1016/j.neunet.2026.108696
Yanyan Ye, Weiling Wang, Wenfeng Jin, Cheng Zhou, Yuanqing Wu, Zhixia Ding

This paper addresses the consensus in fractional-order networked systems with matrix-weighted coupling, where the interactions of agents are characterized by positive definite or positive semi-definite matrices. A distributed sample-based control strategy is designed, in which each agent updates its state using sampled data. Some necessary and sufficient consensus conditions are derived for both undirected and directed matrix-weighted networks, respectively. The conditions depend on the sampling period, the fractional order, the control gain strengths, as well as the eigenvalue properties of the matrix-weighted Laplacian. Notably, for undirected networks, consensus is closely related to the null space of the matrix-weighted Laplacian. For directed networks, the existence of a positive spanning tree is not necessary to reach matrix-weighted consensus. Finally, simulation examples are conducted to validate the effectiveness of the theoretical analysis.

本文研究了具有矩阵加权耦合的分数阶网络系统中的一致性问题,其中智能体之间的相互作用用正定或正半定矩阵来表征。设计了一种基于样本的分布式控制策略,每个智能体使用采样数据更新自己的状态。分别导出了无向和有向矩阵加权网络的充分必要一致条件。这些条件取决于采样周期、分数阶、控制增益强度以及矩阵加权拉普拉斯算子的特征值性质。值得注意的是,对于无向网络,一致性与矩阵加权拉普拉斯算子的零空间密切相关。对于有向网络,正生成树的存在性并不是达到矩阵加权一致的必要条件。最后通过仿真算例验证了理论分析的有效性。
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引用次数: 0
Learning fair representation for fine-tuning pre-trained language models. 为微调预训练语言模型学习公平表示。
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-02-09 DOI: 10.1016/j.neunet.2026.108701
Ke Wang, Yinghao Zhang, Hong-Yu Zhang, Lin Liu, Jiuyong Li, Zaiwen Feng, Debo Cheng

Pre-trained language models (PLMs) have achieved remarkable success across a wide range of natural language processing tasks, including text classification, machine translation, and question-answering systems, by leveraging vast amounts of unlabeled data to learn rich linguistic representations. However, existing models often reflect human-like biases and societal stereotypes, posing a significant challenge in their application. To address this issue, this paper proposes a novel debiasing framework called CFPLM. Unlike conventional debiasing methods, CFPLM is grounded in causal inference, aiming to identify and intervene in the factors that contribute to bias, thereby eliminating the bias in PLMs. The framework incorporates a composite loss function, which introduces a fairness penalty term to regulate the learning process of the model. Additionally, it integrates adversarial loss and entropy regularization to further optimize model performance. Experimental results demonstrate that, based on standard datasets and evaluation metrics, the proposed CFPLM method significantly reduces bias in BERT, RoBERTa, and ALBERT, while results on the GLUE benchmark indicate that enhancing model fairness does not compromise the models' language understanding capabilities.

预训练语言模型(PLMs)通过利用大量未标记数据来学习丰富的语言表示,在广泛的自然语言处理任务中取得了显著的成功,包括文本分类、机器翻译和问答系统。然而,现有的模型往往反映出类似人类的偏见和社会刻板印象,这对它们的应用构成了重大挑战。为了解决这个问题,本文提出了一种新的去偏框架CFPLM。与传统的去偏方法不同,CFPLM以因果推理为基础,旨在识别和干预导致偏差的因素,从而消除plm中的偏差。该框架引入了一个复合损失函数,引入公平性惩罚项来调节模型的学习过程。此外,它还集成了对抗损失和熵正则化来进一步优化模型性能。实验结果表明,基于标准数据集和评估指标,所提出的CFPLM方法显著降低了BERT、RoBERTa和ALBERT中的偏差,而GLUE基准测试的结果表明,增强模型公平性并不影响模型的语言理解能力。
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引用次数: 0
CGE-GAN: Contrastive-guided evolutionary generative adversarial networks with dynamic adaptive weight sharing CGE-GAN:具有动态自适应权共享的对比导向进化生成对抗网络
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-02-09 DOI: 10.1016/j.neunet.2026.108702
Kashif Iqbal , Xue Yu , Atifa Rafique , Muhammad Hamid , Khursheed Aurangzeb
Generative adversarial networks (GANs) have achieved remarkable success in image synthesis but faces major challenges, including mode collapse, training instability, and inefficient architecture search. Existing evolutionary GANs partially address these issues but lack semantic alignment with real data, effective weight reuse, and knowledge transfer between model generations. To overcome these limitations, we propose contrastive-guided evolutionary GANs (CGE-GAN)–a unified method introduces a novel hybrid Wasserstein-Contrastive loss function that drives generators to align semantically with real data while maintaining adversarial competitiveness. Besides, we incorporated dynamic adaptive weight sharing (DAWS) for efficient training and knowledge distillation-based crossover to preserve useful features across generations. The CGE-GAN is evaluated on CIFAR-10 and STL-10, and it achieves an Inception Score (IS) of 8.99 and 10.46, and fréchet inception distance (FID) of 9.74 and 21.86, respectively. Compared to strong baselines, CGE-GAN reduces FID by up to 1.74 points while maintaining high semantic diversity and convergence efficiency with only 0.36 GPU days. These results highlight the effectiveness of contrastive-driven evolution for generating stable and high-fidelity outputs.
生成对抗网络(GANs)在图像合成方面取得了显著的成功,但面临着模式崩溃、训练不稳定和低效架构搜索等主要挑战。现有的进化gan部分解决了这些问题,但缺乏与真实数据的语义一致性、有效的权重重用以及模型代之间的知识转移。为了克服这些限制,我们提出了对比引导进化gan (CGE-GAN)——一种统一的方法,引入了一种新的混合wasserstein - contrast损失函数,该函数驱动生成器在保持对抗性竞争的同时,在语义上与真实数据保持一致。此外,我们结合了动态自适应权值共享(DAWS)进行有效的训练和基于知识蒸馏的交叉,以保持有用的特征跨代。CGE-GAN在CIFAR-10和STL-10上进行了评价,其Inception Score (is)分别为8.99和10.46,FID (FID)分别为9.74和21.86。与强基线相比,CGE-GAN在仅0.36 GPU天的情况下,在保持高语义多样性和收敛效率的同时,减少了高达1.74点的FID。这些结果突出了对比驱动进化在生成稳定和高保真输出方面的有效性。
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引用次数: 0
CGLK-GNN : A connectome generation network with large kernels for GNN based Alzheimer’s disease analysis CGLK-GNN:用于基于GNN的阿尔茨海默病分析的大核连接组生成网络
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-02-07 DOI: 10.1016/j.neunet.2026.108689
Wenqi Zhu , Zhong Yin , Yinghua Fu , Alzheimer's Disease Neuroimaging Initiative
Alzheimer’s disease (AD) is a currently incurable neurodegenerative disease, with early detection representing a high research priority. AD is characterized by progressive cognitive decline accompanied by alterations in brain functional connectivity. Based on its data structure similar to the graph, graph neural networks (GNNs) have emerged as important methods for brain function analysis and disease prediction in recent years. However, most GNN methods are limited by information loss caused by traditional functional connectivity calculation as well as common noise issues in functional magnetic resonance imaging (fMRI) data. This paper proposes a graph generation based AD classification model using resting state fMRI to address this issue. The connectome generation network with large kernels for GNN (CGLK-GNN) based AD Analysis contains a graph generation block and a GNN prediction block. The graph generation block employs decoupled convolutional networks with large kernels to extract comprehensive temporal features while preserving sequential dependencies, contrasting with previous generative GNN approaches. This module constructs the connectome graph by encoding both edge-wise correlations and node-embedded temporal features, thereby utilizing the generated graph more effectively. The subsequent GNN prediction block adopts an efficient architecture to learn these enhanced representations and perform final AD stage classification. Through independent cohort validations, CGLK-GNN outperforms state-of-the-art GNN and rsfMRI-based AD classifiers in differentiating AD status. Furthermore, CGLK-GNN demonstrates high clinical value by learning clinically relevant connectome node and connectivity features from two independent datasets.
阿尔茨海默病(AD)是一种目前无法治愈的神经退行性疾病,早期发现是研究的重点。阿尔茨海默病的特点是进行性认知能力下降,并伴有脑功能连通性的改变。图神经网络(graph neural networks, gnn)由于其数据结构类似于图,近年来成为脑功能分析和疾病预测的重要方法。然而,大多数GNN方法受到传统功能连通性计算导致的信息丢失以及功能磁共振成像(fMRI)数据中常见的噪声问题的限制。为了解决这一问题,本文提出了一种基于静息状态fMRI的AD分类模型。基于CGLK-GNN的大核连接体生成网络包含一个图生成块和一个GNN预测块。与之前的生成式GNN方法相比,图生成块采用具有大核的解耦卷积网络来提取全面的时间特征,同时保留顺序依赖关系。该模块通过编码沿边相关性和节点嵌入的时间特征来构建连接体图,从而更有效地利用生成的图。随后的GNN预测块采用一种高效的架构来学习这些增强的表示,并执行最终的AD阶段分类。通过独立队列验证,CGLK-GNN在区分AD状态方面优于最先进的GNN和基于rsfmri的AD分类器。此外,CGLK-GNN通过从两个独立的数据集学习临床相关的连接组节点和连接特征,显示出很高的临床价值。
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引用次数: 0
Gender-independent kinship verification network via fuzzy disentangling and multi-metric inference 基于模糊解缠和多度量推理的性别无关亲属关系验证网络
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-02-06 DOI: 10.1016/j.neunet.2026.108691
Lei Li , Quan Zhou , Shanshan Gao , Chaoran Cui , Zhaoqiang Xia
Kinship verification aims to determine whether two individuals share a familial relationship based on facial information. Cross-gender relationships (i.e., Father-Daughter and Mother-Son) continue to face formidable challenges due to the diversity and uncertainty of genetic inheritance. Existing studies primarily focus on extracting robust features and measuring similarity, with limited attention given to the fuzziness of gender differences. To address this issue, this paper proposes a kinship verification framework based on a fuzzy neural network, which adaptively extracts gender-independent kinship features and handles relationship fuzziness to improve cross-gender verification performance. Specifically, the Swin Transformer, which has demonstrated excellent performance in facial analysis, is employed to extract initial features. A fuzzy neural network is then designed to disentangle gender and kinship features, with a gender recognition task introduced to further enhance this disentanglement and improve the gender independence of kinship features. Subsequently, a multi-metric fuzzy reasoning module is adopted to integrate kinship features, extract latent kinship cues, and leverage a contrastive loss function to effectively mine potential negative sample information, thereby significantly enhancing the model’s robustness. Experimental results on three publicly available datasets demonstrate that the proposed method achieves state-of-the-art performance.
亲属关系验证的目的是根据面部信息确定两个人是否具有家庭关系。由于基因遗传的多样性和不确定性,跨性别关系(即父女关系和母子关系)继续面临着巨大的挑战。现有的研究主要集中在提取鲁棒特征和度量相似性上,对性别差异的模糊性关注较少。针对这一问题,本文提出了一种基于模糊神经网络的亲属关系验证框架,该框架自适应提取与性别无关的亲属关系特征,并对关系模糊性进行处理,以提高跨性别验证的性能。具体而言,采用在人脸分析中表现优异的Swin Transformer提取初始特征。然后设计了模糊神经网络来解开性别和亲属特征的纠缠,并引入性别识别任务来进一步增强这种纠缠,提高亲属特征的性别独立性。随后,采用多度量模糊推理模块整合亲属关系特征,提取潜在的亲属关系线索,并利用对比损失函数有效挖掘潜在的负样本信息,显著增强了模型的鲁棒性。在三个公开数据集上的实验结果表明,该方法达到了最先进的性能。
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引用次数: 0
Graph adiabatic diffusion neural networks for distribution-shift breast tumor image classification. 图绝热扩散神经网络用于分布移位乳腺肿瘤图像分类。
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-02-06 DOI: 10.1016/j.neunet.2026.108686
Haoquan Lu, Zhihui Lai, Heng Kong

Breast tumor images show low intra-class similarity and suffer from distribution shift, posing challenges for recognition tasks. While increasing the number of labeled training data is a common strategy to improve performance, the high cost of expert annotation is another challenge. Semi-supervised learning methods, e.g., Graph Neural Networks (GNNs), which smooth features via graph topology, have the potential to reduce the annotation costs for breast tumor datasets while achieving satisfactory classification performance. To address these challenges, we propose Graph Adiabatic Diffusion Neural Networks (GradiNet), which jointly learn discriminative graph structures for discriminative representation and simulate distribution shift environments. Specifically, we model the discriminative graph structure through a graph-learning objective function and demonstrate its effectiveness theoretically and empirically. Furthermore, we design a GNN feature propagation mechanism for the first time by incorporating the Fourier heat diffusion equation with adiabatic boundary conditions. Hence, the mechanism allows the model to adaptively simulate distribution shifts and enhance its generalization ability on both in-distribution (ID) and out-of-distribution (OOD) data. Extensive experiments on public and private breast tumor ultrasound image datasets demonstrate the superiority and effectiveness of our approach, achieving state-of-the-art performance across multiple evaluation metrics.

乳腺肿瘤图像具有类内相似性低、分布偏移等特点,给识别任务带来了挑战。虽然增加标记训练数据的数量是提高性能的常用策略,但专家注释的高成本是另一个挑战。半监督学习方法,如图神经网络(gnn),通过图拓扑平滑特征,有可能降低乳腺肿瘤数据集的标注成本,同时获得令人满意的分类性能。为了解决这些挑战,我们提出了图绝热扩散神经网络(GradiNet),它共同学习判别图结构以进行判别表示并模拟分布转移环境。具体来说,我们通过图学习目标函数对判别图结构进行建模,并从理论上和经验上证明了其有效性。此外,我们首次将具有绝热边界条件的傅里叶热扩散方程结合起来,设计了GNN特征传播机制。因此,该机制允许模型自适应地模拟分布变化,并增强其对分布内(ID)和分布外(OOD)数据的泛化能力。在公共和私人乳房肿瘤超声图像数据集上进行的大量实验证明了我们方法的优越性和有效性,在多个评估指标中实现了最先进的性能。
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引用次数: 0
DiffMCG: A diffusion model with mask-conditioned guiding module for medical image classification DiffMCG:一种带口罩条件引导模块的医学图像分类扩散模型。
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-02-05 DOI: 10.1016/j.neunet.2026.108690
Chen Guan , Haihong Ai , Weiwei Wang , Ravi P. Singh , Shiya Song
Diffusion models have application potential in medical image classification tasks due to their effectiveness in eliminating unexpected noise and perturbations from medical images. However, existing diffusion models for medical image classification utilize image features as the condition guiding diffusion model denoising, neglecting the most critical structured semantic information within medical images—namely, the mask of the lesion region. This results in suboptimal denoising performance from diffusion models, consequently impairing classification performance. To address this issue, we propose a diffusion model with the mask-conditioned guiding module called DiffMCG. Specifically, we introduce the Mask-Conditioned Guiding (MCG) module that concurrently extracts features from the medical image and its corresponding mask. Secondly, we design a U-Net denoising network based on the multi-layer perceptron (MLP) that is tailored for low-dimensional vector data and performs denoising tasks within the category label space. Furthermore, we introduce the MMD regularization constraint loss to establish a distributional relationship between the image prediction distribution, mask prediction distribution, and ground-truth label distribution within the label prediction space. This ensures the consistency of multimodal information during the diffusion process. Through analysis of comparative and ablation experiments, we validate the advantages of the MCG module in medical image classification, providing technical support for precision medical diagnostics.
扩散模型能够有效地消除医学图像中的意外噪声和扰动,在医学图像分类任务中具有很大的应用潜力。然而,现有的医学图像分类扩散模型利用图像特征作为指导扩散模型去噪的条件,忽略了医学图像中最关键的结构化语义信息,即病灶区域的掩模。这导致扩散模型的去噪性能不够理想,从而损害了分类性能。为了解决这个问题,我们提出了一个带有掩模条件引导模块的扩散模型,称为DiffMCG。具体来说,我们引入了mask - conditioned guidance (MCG)模块,该模块可以同时从医学图像及其对应的mask中提取特征。其次,我们设计了一个基于多层感知器(MLP)的U-Net去噪网络,该网络为低维向量数据量身定制,并在类别标签空间内执行去噪任务。此外,我们引入了MMD正则化约束损失,建立了图像预测分布、掩模预测分布和真地标签分布在标签预测空间内的分布关系。这保证了扩散过程中多模态信息的一致性。通过对比和消融实验分析,验证了MCG模块在医学图像分类方面的优势,为精准医学诊断提供技术支持。
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引用次数: 0
A graph-based safe reinforcement learning method for multi-agent cooperation. 一种基于图的多智能体合作安全强化学习方法。
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-02-05 DOI: 10.1016/j.neunet.2026.108693
Fandi Gou, Haikuo Du, Yunze Cai

Safety and Restricted Communication are two critical challenges faced by practical Multi-Agent Systems (MAS). However, most Multi-Agent Reinforcement Learning (MARL) algorithms that rely solely on reward shaping are ineffective in ensuring safety, and their applicability is rather limited due to the fully connected communication. To address these issues, we propose a novel framework, Graph-based Safe MARL (GS-MARL), to enhance the safety and scalability of MARL methods. Leveraging the inherent graph structure of MAS, we design a Graph Neural Network (GNN) based on message passing to aggregate local observations and communications of varying sizes. Furthermore, we develop a constrained joint policy optimization method in the setting of local observation to improve safety. Simulation experiments demonstrate that GS-MARL achieves a better trade-off between optimality and safety compared to other methods, and in large-scale communication-limited scenarios GS-MARL achieves a success rate at least 10% higher than the leading baselines. The feasibility of our method is also verified by hardware implementation with Mecanum-wheeled vehicles. Codes and demos are available at https://github.com/finleygou/GS-MARL.

安全性和受限通信是实际多智能体系统面临的两个关键挑战。然而,大多数仅依赖于奖励塑造的多智能体强化学习(MARL)算法在确保安全性方面是无效的,并且由于通信是完全连接的,其适用性相当有限。为了解决这些问题,我们提出了一个新的框架,基于图的安全MARL (GS-MARL),以提高MARL方法的安全性和可扩展性。利用MAS固有的图结构,我们设计了一个基于消息传递的图神经网络(GNN)来聚合不同规模的局部观测和通信。在此基础上,提出了一种局部观测条件下的约束联合策略优化方法。仿真实验表明,与其他方法相比,GS-MARL在最优性和安全性之间取得了更好的平衡,并且在大规模通信受限场景下,GS-MARL的成功率比领先基线高出至少10%。通过机械轮式车辆的硬件实现,验证了该方法的可行性。代码和演示可在https://github.com/finleygou/GS-MARL上获得。
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引用次数: 0
On the inherent robustness of one-stage object detection against out-of-distribution data 针对非分布数据的单阶段目标检测的固有鲁棒性
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-02-04 DOI: 10.1016/j.neunet.2026.108683
Aitor Martinez-Seras , Javier Del Ser , Aitzol Olivares-Rad , Alain Andres , Pablo Garcia-Bringas
Robustness is a fundamental aspect for developing safe and trustworthy models, particularly when they are deployed in the open world. In this work we analyze the inherent capability of one-stage object detectors to robustly operate in the presence of out-of-distribution (OoD) data. Specifically, we propose a novel detection algorithm for detecting unknown objects in image data, which leverages the features extracted by the model from each sample. Differently from other recent approaches in the literature, our proposal does not require retraining the object detector, thereby allowing for the use of pretrained models. Our proposed OoD detector exploits the application of supervised dimensionality reduction techniques to mitigate the effects of the curse of dimensionality on the features extracted by the model. Furthermore, it utilizes high-resolution feature maps to identify potential unknown objects in an unsupervised fashion. Our experiments analyze the Pareto trade-off between the performance detecting known and unknown objects resulting from different algorithmic configurations and inference confidence thresholds. We also compare the performance of our proposed algorithm to that of logits-based post-hoc OoD methods, as well as possible fusion strategies. Finally, we discuss on the competitiveness of all tested methods against state-of-the-art OoD approaches for object detection models over the recently published Unknown Object Detection benchmark. The obtained results verify that the performance of avant-garde post-hoc OoD detectors can be further improved when combined with our proposed algorithm.
健壮性是开发安全和可信模型的基本方面,特别是当它们部署在开放世界中时。在这项工作中,我们分析了一级目标检测器在存在非分布(OoD)数据的情况下鲁棒运行的固有能力。具体来说,我们提出了一种新的检测算法来检测图像数据中的未知物体,该算法利用模型从每个样本中提取的特征。与文献中其他最近的方法不同,我们的建议不需要重新训练目标检测器,从而允许使用预训练模型。我们提出的OoD检测器利用监督降维技术的应用来减轻维数诅咒对模型提取的特征的影响。此外,它利用高分辨率特征图以无监督的方式识别潜在的未知物体。我们的实验分析了不同算法配置和推断置信阈值导致的已知和未知对象检测性能之间的帕累托权衡。我们还将我们提出的算法的性能与基于逻辑学的事后OoD方法以及可能的融合策略进行了比较。最后,我们讨论了在最近发布的未知对象检测基准上,所有测试方法与最先进的对象检测模型的OoD方法的竞争力。实验结果表明,结合本文提出的算法,可以进一步提高前卫的事后OoD检测器的性能。
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引用次数: 0
A punishment neural network-based acceleration-level joint drift-free scheme for solving constrained motion planning problem of redundant robotic manipulators 一种基于惩罚神经网络的冗余机器人关节无漂移约束运动规划方案。
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-02-04 DOI: 10.1016/j.neunet.2026.108684
Zhijun Zhang, Xitong Gao, Jinjia Guo
To solve the repetitive motion problem of redundant robotic manipulators, a punishment neural network-based acceleration-level joint drift-free (PNN-ALJDF) scheme is designed. Traditional joint physical limits constraints are fixed and lack margin. Thus, a novel joint acceleration time-varying constraint is considered in the PNN-ALJDF scheme to avoid the joint state exceeding the physical limits. In addition, to ensure that redundant robotic manipulators can periodically return to the initial pose, a joint drift-free criterion is designed. Furthermore, the joint drift-free criterion, kinematics equation and joint acceleration time-varying constraint are formulated globally as an acceleration-level joint drift-free (ALJDF) scheme by a time-varying quadratic programming approach. Then, the ALJDF scheme is solved by the designed punishment neural network. Thus, the proposed PNN-ALJDF scheme is composed of the ALJDF scheme and punishment neural network. Finally, the simulations demonstrate that the PNN-ALJDF scheme avoids joints from drifting, and the states of joints are all within the acceleration time-varying constraint. In addition, the proposed PNN-ALJDF has higher solution accuracy than the linear variational inequalities-based primal-dual neural network.
为解决冗余机器人的重复运动问题,设计了一种基于惩罚神经网络的加速度级关节无漂移(PNN-ALJDF)方案。传统的关节物理极限约束是固定的,缺乏余量。因此,在PNN-ALJDF方案中考虑了一种新的关节加速度时变约束,以避免关节状态超出物理极限。此外,为了保证冗余机器人能周期性地恢复到初始姿态,设计了关节无漂移准则。在此基础上,采用时变二次规划方法,将关节无漂移准则、运动学方程和关节加速度时变约束全局化为加速度级关节无漂移格式。然后,利用设计的惩罚神经网络对ALJDF方案进行求解。因此,提出的PNN-ALJDF方案由ALJDF方案和惩罚神经网络组成。最后,仿真结果表明,PNN-ALJDF方案避免了关节漂移,且关节状态均在加速度时变约束范围内。此外,与基于线性变分不等式的原始对偶神经网络相比,所提出的PNN-ALJDF具有更高的解精度。
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引用次数: 0
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Neural Networks
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