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加权Soft Voting多模型集成钓鱼网站检测模型
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作者 谢亚龙 周建华 卢晴川 《计算机时代》 2026年第2期47-50,56,共5页
本文针对钓鱼网站检测中单一模型泛化能力不足的问题,提出一种基于SLSQP权重优化的加权Soft Voting多模型融合检测方法。该方法通过集成XGBoost、LightGBM、CatBoost、随机森林、梯度提升、MLPClassifier六种异构基模型,利用SLSQP算法... 本文针对钓鱼网站检测中单一模型泛化能力不足的问题,提出一种基于SLSQP权重优化的加权Soft Voting多模型融合检测方法。该方法通过集成XGBoost、LightGBM、CatBoost、随机森林、梯度提升、MLPClassifier六种异构基模型,利用SLSQP算法在验证集上以最大化AUC指标为目标优化各模型权重,构建兼具高检出率与低误报率的集成检测系统。实验结果表明,所提融合模型在准确率、召回率和F1值上均优于单一模型,融合模型在静态特征集下准确率达95.22%,AUC值为0.9762;引入动态扩展特征后,准确率提升至96.75%,AUC值达0.9845,该方法显著提升了钓鱼网站识别的鲁棒性与检测性能,为复杂网络环境下的钓鱼攻击防御提供了高效解决方案。 展开更多
关键词 钓鱼网站检测 加权soft Voting 多模型融合 集成学习 SLSQP算法
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A Reduced Search Soft-Output Detection Algorithm and Its Application to Turbo-Equalization
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作者 樊祥宁 窦怀宇 毕光国 《Journal of Southeast University(English Edition)》 EI CAS 2001年第1期8-12,共5页
To decrease the complexity of MAP algorithm, reduced state or reduced search techniques can be applied. In this paper we propose a reduced search soft output detection algorithm fully based on the principle of M a... To decrease the complexity of MAP algorithm, reduced state or reduced search techniques can be applied. In this paper we propose a reduced search soft output detection algorithm fully based on the principle of M algorithm for turbo equalization, which is a suboptimum version of the Lee algorithm. This algorithm is called soft output M algorithm (denoted as SO M algorithm), which applies the M strategy to both the forward recursion and the extended forward recursion of the Lee algorithm. Computer simulation results show that, by properly selecting and adjusting the breadth parameter and depth parameter during the iteration of turbo equalization, this algorithm can obtain good performance and complexity trade off. 展开更多
关键词 MAP algorithm Lee algorithm soft output M algorithm turbo equalization
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A Novel Sequential Soft Output Viterbi Algorithm
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作者 钱学诚 赵春明 程时昕 《Journal of Southeast University(English Edition)》 EI CAS 1999年第2期20-23,共4页
In order to fully utilize the soft decision ability of the outer decoder in a concatenated system, reliability information (called soft output) from the inner decoder or equalizer is required. In this paper, based on... In order to fully utilize the soft decision ability of the outer decoder in a concatenated system, reliability information (called soft output) from the inner decoder or equalizer is required. In this paper, based on the analysis of typical implementations of soft output VA, a novel algorithm is proposed by utilizing the property of Viterbi algorithm. Compared with the typical implementations, less processing expense is required by the new algorithm for weighting the hard decisions of VA. Meanwhile, simulation results show that, deterioration in performance of this algorithm is usually small for decoding of convolutional code and negligible for equalization. 展开更多
关键词 EQUALIZATION DECODING soft output Viterbi algorithm
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Soft Tissue Deformation Model Based on Marquardt Algorithm and Enrichment Function 被引量:2
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作者 Xiaorui Zhang Xuefeng Yu +1 位作者 Wei Sun Aiguo Song 《Computer Modeling in Engineering & Sciences》 SCIE EI 2020年第9期1131-1147,共17页
In order to solve the problem of high computing cost and low simulation accuracy caused by discontinuity of incision in traditional meshless model,this paper proposes a soft tissue deformation model based on the Marqu... In order to solve the problem of high computing cost and low simulation accuracy caused by discontinuity of incision in traditional meshless model,this paper proposes a soft tissue deformation model based on the Marquardt algorithm and enrichment function.The model is based on the element-free Galerkin method,in which Kelvin viscoelastic model and adjustment function are integrated.Marquardt algorithm is applied to fit the relation between force and displacement caused by surface deformation,and the enrichment function is applied to deal with the discontinuity in the meshless method.To verify the validity of the model,the Sensable Phantom Omni force tactile interactive device is used to simulate the deformations of stomach and heart.Experimental results show that the proposed model improves the real-time performance and accuracy of soft tissue deformation simulation,which provides a new perspective for the application of the meshless method in virtual surgery. 展开更多
关键词 Virtual surgery meshless model Marquardt algorithm enrichment function soft tissue simulation
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Soft measurement model of ring's dimensions for vertical hot ring rolling process using neural networks optimized by genetic algorithm 被引量:2
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作者 汪小凯 华林 +3 位作者 汪晓旋 梅雪松 朱乾浩 戴玉同 《Journal of Central South University》 SCIE EI CAS CSCD 2017年第1期17-29,共13页
Vertical hot ring rolling(VHRR) process has the characteristics of nonlinearity,time-variation and being susceptible to disturbance.Furthermore,the ring's growth is quite fast within a short time,and the rolled ri... Vertical hot ring rolling(VHRR) process has the characteristics of nonlinearity,time-variation and being susceptible to disturbance.Furthermore,the ring's growth is quite fast within a short time,and the rolled ring's position is asymmetrical.All of these cause that the ring's dimensions cannot be measured directly.Through analyzing the relationships among the dimensions of ring blanks,the positions of rolls and the ring's inner and outer diameter,the soft measurement model of ring's dimensions is established based on the radial basis function neural network(RBFNN).A mass of data samples are obtained from VHRR finite element(FE) simulations to train and test the soft measurement NN model,and the model's structure parameters are deduced and optimized by genetic algorithm(GA).Finally,the soft measurement system of ring's dimensions is established and validated by the VHRR experiments.The ring's dimensions were measured artificially and calculated by the soft measurement NN model.The results show that the calculation values of GA-RBFNN model are close to the artificial measurement data.In addition,the calculation accuracy of GA-RBFNN model is higher than that of RBFNN model.The research results suggest that the soft measurement NN model has high precision and flexibility.The research can provide practical methods and theoretical guidance for the accurate measurement of VHRR process. 展开更多
关键词 vertical hot ring rolling dimension precision soft measurement model artificial neural network genetic algorithm
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A fuzzy immune algorithm and its application in solvent tower soft sensor modeling
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作者 孟科 董朝阳 +2 位作者 高晓丹 王海明 李晓 《Journal of Measurement Science and Instrumentation》 CAS CSCD 2015年第2期197-204,共8页
An improved immune algorithm is proposed in this paper. The problems, such as convergence speed and optimization precision, existing in the basic immune algorithm are well addressed. Besides, a fuzzy adaptive method i... An improved immune algorithm is proposed in this paper. The problems, such as convergence speed and optimization precision, existing in the basic immune algorithm are well addressed. Besides, a fuzzy adaptive method is presented by using the fuzzy system to realize the adaptive selection of two key parameters (possibility of crossover and mutation). By comparing and analyzing the results of several benchmark functions, the performance of fuzzy immune algorithm (FIA) is approved. Not only the difficulty of parameters selection is relieved, but also the precision and stability are improved. At last, the FIA is ap- plied to optimization of the structure and parameters in radial basis function neural network (RBFNN) based on an orthogonal sequential method. And the availability of algorithm is proved by applying RBFNN in modeling in soft sensor of solvent tower. 展开更多
关键词 immune algorithm fuzzy system radial basis function neural network (RBFNN) soft sensor
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An Improved Soft Subspace Clustering Algorithm for Brain MR Image Segmentation
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作者 Lei Ling Lijun Huang +4 位作者 Jie Wang Li Zhang Yue Wu Yizhang Jiang Kaijian Xia 《Computer Modeling in Engineering & Sciences》 SCIE EI 2023年第12期2353-2379,共27页
In recent years,the soft subspace clustering algorithm has shown good results for high-dimensional data,which can assign different weights to each cluster class and use weights to measure the contribution of each dime... In recent years,the soft subspace clustering algorithm has shown good results for high-dimensional data,which can assign different weights to each cluster class and use weights to measure the contribution of each dimension in various features.The enhanced soft subspace clustering algorithm combines interclass separation and intraclass tightness information,which has strong results for image segmentation,but the clustering algorithm is vulnerable to noisy data and dependence on the initialized clustering center.However,the clustering algorithmis susceptible to the influence of noisydata and reliance on initializedclustering centers andfalls into a local optimum;the clustering effect is poor for brain MR images with unclear boundaries and noise effects.To address these problems,a soft subspace clustering algorithm for brain MR images based on genetic algorithm optimization is proposed,which combines the generalized noise technique,relaxes the equational weight constraint in the objective function as the boundary constraint,and uses a genetic algorithm as a method to optimize the initialized clustering center.The genetic algorithm finds the best clustering center and reduces the algorithm’s dependence on the initial clustering center.The experiment verifies the robustness of the algorithm,as well as the noise immunity in various ways and shows good results on the common dataset and the brain MR images provided by the Changshu First People’s Hospital with specific high accuracy for clinical medicine. 展开更多
关键词 soft subspace clustering image segmentation genetic algorithm generalized noise brain MR images
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Soft-output stack algorithm with lattice-reduction for MIMO detection
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作者 Yuan Yang Hailin Zhang Junfeng Hue 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2010年第2期197-203,共7页
A computationally efficient soft-output detector with lattice-reduction (LR) for the multiple-input multiple-output (MIMO) systems is proposed. In the proposed scheme, the sorted QR de- composition is applied on t... A computationally efficient soft-output detector with lattice-reduction (LR) for the multiple-input multiple-output (MIMO) systems is proposed. In the proposed scheme, the sorted QR de- composition is applied on the lattice-reduced equivalent channel to obtain the tree structure. With the aid of the boundary control, the stack algorithm searches a small part of the whole search tree to generate a handful of candidate lists in the reduced lattice. The proposed soft-output algorithm achieves near-optimal perfor- mance in a coded MIMO system and the associated computational complexity is substantially lower than that of previously proposed methods. 展开更多
关键词 multiple-input multiple-output (MIMO) soft-output de- tection lattice-reduction stack algorithm.
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Fuzzy N-Bipolar Soft Sets for Multi-Criteria Decision-Making:Theory and Application
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作者 Sagvan Y.Musa Baravan A.Asaad +2 位作者 Hanan Alohali Zanyar A.Ameen Mesfer H.Alqahtani 《Computer Modeling in Engineering & Sciences》 2025年第4期911-943,共33页
This paper introduces fuzzy N-bipolar soft(FN-BS)sets,a novel mathematical framework designed to enhance multi-criteria decision-making(MCDM)processes under uncertainty.The study addresses a significant limitation in ... This paper introduces fuzzy N-bipolar soft(FN-BS)sets,a novel mathematical framework designed to enhance multi-criteria decision-making(MCDM)processes under uncertainty.The study addresses a significant limitation in existing models by unifying fuzzy logic,the consideration of bipolarity,and the ability to evaluate attributes on a multinary scale.The specific contributions of the FN-BS framework include:(1)a formal definition and settheoretic foundation,(2)the development of two innovative algorithms for solving decision-making(DM)problems,and(3)a comparative analysis demonstrating its superiority over established models.The proposed framework is applied to a real-world case study on selecting vaccination programs across multiple countries,showcasing consistent DM outcomes and exceptional adaptability to complex and uncertain scenarios.These results position FN-BS sets as a versatile and powerful tool for addressing dynamic DM challenges. 展开更多
关键词 Fuzzy N-bipolar soft sets N-bipolar soft sets N-soft sets MCDM algorithmS
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Application of soft sensor modeling based on SSA-CNN-LSTM in solar thermal power collection subsystem
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作者 LU Xiaojuan ZHANG Yaohui +2 位作者 FAN Duojin KONG Linggang ZHANG Zhiyong 《Journal of Measurement Science and Instrumentation》 2025年第4期505-514,共10页
To address the stochasticity and nonlinearity of solar collector power systems,a soft sensor prediction model with a hybrid convolutional neural network(CNN)and long short-term memory network(LSTM)was constructed,and ... To address the stochasticity and nonlinearity of solar collector power systems,a soft sensor prediction model with a hybrid convolutional neural network(CNN)and long short-term memory network(LSTM)was constructed,and the hyperparameter optimization of the hybrid neural network(CNN-LSTM)was carried out by using the sparrow search algorithm(SSA).The model utilized the powerful feature extraction and non-linear mapping capabilities of deep learning to effectively handle the complex relationship between input and target variables.The batch normalization technique was used to speed up the training and improve the stability of the soft-sensing model,and the random discard technique was used to prevent the soft-sensing model from overfitting.Finally,the mean absolute error(MAE)was used to assess the accuracy of the soft sensor model predictions.This study compared the proposed model with soft sensor prediction models like Bp,Elman,CNN,LSTM,and CNN-LSTM,using dynamic thermal performance data from the solar collector field of the molten salt linear Fresnel photovoltaic demonstration power plant.The deep learning-based soft sensor model outperformed the other models according to the experimental data.Its coefficients of determination(namely R^(2))are higher by 6.35%,8.42%,5.69%,6.90%,and 3.67%,respectively.The accuracy and robustness have been significantly improved. 展开更多
关键词 soft sensor modeling linear Fresnel collector subsystem collector field outlet temperature deep learning sparrow search algorithm
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Improved ant colony optimization for multi-depot heterogeneous vehicle routing problem with soft time windows 被引量:10
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作者 汤雅连 蔡延光 杨期江 《Journal of Southeast University(English Edition)》 EI CAS 2015年第1期94-99,共6页
Considering that the vehicle routing problem (VRP) with many extended features is widely used in actual life, such as multi-depot, heterogeneous types of vehicles, customer service priority and time windows etc., a ... Considering that the vehicle routing problem (VRP) with many extended features is widely used in actual life, such as multi-depot, heterogeneous types of vehicles, customer service priority and time windows etc., a mathematical model for multi-depot heterogeneous vehicle routing problem with soft time windows (MDHVRPSTW) is established. An improved ant colony optimization (IACO) is proposed for solving this model. First, MDHVRPSTW is transferred into different groups according to the nearest principle, and then the initial route is constructed by the scanning algorithm (SA). Secondly, genetic operators are introduced, and crossover probability and mutation probability are adaptively adjusted in order to improve the global search ability of the algorithm. Moreover, the smooth mechanism is used to improve the performance of the ant colony optimization (ACO). Finally, the 3-opt strategy is used to improve the local search ability. The proposed IACO was tested on three new instances that were generated randomly. The experimental results show that IACO is superior to the other three existing algorithms in terms of convergence speed and solution quality. Thus, the proposed method is effective and feasible, and the proposed model is meaningful. 展开更多
关键词 vehicle routing problem soft time window improved ant colony optimization customer service priority genetic algorithm
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基于强化学习算法的闸控河网工程水位控制方法
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作者 陈珠亮 孔令仲 +4 位作者 肖洋 张涛涛 冯仲恺 王晓颖 刘子涵 《南水北调与水利科技(中英文)》 北大核心 2026年第1期31-41,共11页
为保障河道网络工程景观功能发挥与供水安全、实现水位稳定控制,传统水位控制方法中基于经验的手动调节和比例-积分(proportional-integral,PI)自动控制算法存在明显局限性,易导致水位调节精度不足、动态过程中振荡现象明显等问题,难以... 为保障河道网络工程景观功能发挥与供水安全、实现水位稳定控制,传统水位控制方法中基于经验的手动调节和比例-积分(proportional-integral,PI)自动控制算法存在明显局限性,易导致水位调节精度不足、动态过程中振荡现象明显等问题,难以满足工程对水位稳定的核心需求。通过构建河道水闸群强化学习训练框架,采用软演员评论家(soft actor-critic,SAC)算法训练水闸控制智能体,以实现水闸群实时高效联合调控。结果表明:经充分训练收敛后,该智能体水力控制性能优异,随机流量扰动引发水位波动时,可快速将水位精准调控至目标值(偏差严格控制在±0.2 m内),调控误差范围较传统PI算法缩小48.8%。相较于PI算法,其核心优势为:水位稳定速度显著提升,动态调节收敛速度加快40%;水闸操作次数大幅减少,闸门动作频次降低32%;环境适应性更强,可在不同水流条件下稳定维持期望水位(PI算法对部分渠池如闸4的水位调控偏差达0.332 m,超出目标范围)。研究证实,基于SAC的强化学习方法为河道网络水位稳定调控提供了创新解决方案,能有效应对随机流量扰动,提升水位调节稳定性与精准度,为河网智能化管理控制提供重要技术支撑,在工程中应用前景广阔。 展开更多
关键词 河网 水位控制 强化学习 SAC算法 闸门调控
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一种基于改进型SAC的蜂甲一体协同作战仿真算法
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作者 付泽建 魏洁英 +3 位作者 罗浩 魏国强 王杰 张华 《火力与指挥控制》 北大核心 2026年第1期148-155,共8页
基于强化学习的多智能体算法在作战仿真领域具有重要意义,针对传统算法在模拟蜂甲一体作战等高扩展性、高灵活性的复杂场景中的问题,引入集中计算的评论家注意力共享机制和多智能体优势函数,提出了一种基于改进型SAC的蜂甲一体协同作战... 基于强化学习的多智能体算法在作战仿真领域具有重要意义,针对传统算法在模拟蜂甲一体作战等高扩展性、高灵活性的复杂场景中的问题,引入集中计算的评论家注意力共享机制和多智能体优势函数,提出了一种基于改进型SAC的蜂甲一体协同作战仿真算法。结合作战场景与改进后的算法,设计两种蜂甲一体仿真作战环境进行对比研究。结果表明,相较于MADDPG算法和SAC算法,改进型SAC算法进一步提高了算法的回报率和收敛速度。 展开更多
关键词 蜂甲一体 作战仿真 强化学习 注意力机制 优势函数 软演员-评论家算法
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基于Kaczmarz-Net深度网络的大规模MIMO信号检测方法
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作者 金龙康 王辩铮 申滨 《电讯技术》 北大核心 2026年第2期191-201,共11页
受益于信道硬化现象和高维渐近特性,传统线性信号检测算法在大规模多输入多输出(Multiple-Input Multiple-Output,MIMO)系统中可获得优良的检测性能,但高维矩阵求逆的繁重计算负担将导致实际应用困难。借助于信号检测领域知识和深度学... 受益于信道硬化现象和高维渐近特性,传统线性信号检测算法在大规模多输入多输出(Multiple-Input Multiple-Output,MIMO)系统中可获得优良的检测性能,但高维矩阵求逆的繁重计算负担将导致实际应用困难。借助于信号检测领域知识和深度学习技术,提出了一种Kaczmarz深度网络(Kaczmarz Network,Kaczmarz-Net)大规模MIMO上行链路信号检测方法。首先,对综合性能最优的默认降序Kaczmarz检测算法实施深度网络结构设计,将算法迭代运算过程映射为深度网络。其次,结合Kaczmarz算法自身特有的循环迭代更新特性,引入可学习参数并改进算法内部更新结构。最后,利用简化对数似然比计算软信息,将深度网络引入软判决提升检测精确度。实验结果表明,在硬判决检测条件下,所提出的Kaczmarz-Net在天线配置为64×64、误码率(Bit Error Rate,BER)为10^(-2)时,相较最小均方误差(Minimum Mean Square Error,MMSE)算法可获得1 dB的性能增益,且仅需发射端天线数平方级的计算开销;在软判决条件下,Kaczmarz-Net深度网络可获得与MMSE软检测算法相当的BER性能表现。 展开更多
关键词 大规模MIMO 信号检测 深度学习 软输出 Kaczmarz算法
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快速特征金字塔和Soft-Cascade在折角塞门图像故障检测中的应用 被引量:1
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作者 孙国栋 林凯 +2 位作者 高媛 张杨 赵大兴 《机械科学与技术》 CSCD 北大核心 2019年第6期947-952,共6页
为了提升列车折角塞门的故障检测效率,提出了一种基于快速特征金字塔和Soft-Cascade的故障图像检测算法。首先,构建快速特征金字塔模型来提取图像多尺度聚合通道特征;其次,利用向量化后的多尺度聚合通道特征来训练Soft-Cascade故障分类... 为了提升列车折角塞门的故障检测效率,提出了一种基于快速特征金字塔和Soft-Cascade的故障图像检测算法。首先,构建快速特征金字塔模型来提取图像多尺度聚合通道特征;其次,利用向量化后的多尺度聚合通道特征来训练Soft-Cascade故障分类器;最后,利用训练好的分类器来判断待检折角塞门是否含有故障。实验结果表明:该算法的故障检测正确率为97.33%,离线检测速度高达43fps(每张图像仅需23ms),检测效率高于其他算法。该算法训练时间短,检测速度快,硬件要求低,能满足列车折角塞门的故障检测要求。 展开更多
关键词 机器视觉 折角塞门 快速特征金字塔 soft-Cascade算法
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计及线路电热耦合特性的配电网鲁棒强化学习动态重构方法
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作者 高海淑 孙开宁 +1 位作者 黄钢 张峰 《电力系统自动化》 北大核心 2026年第1期39-50,共12页
随着光伏在配电网中渗透率的不断提高,基于智能软开关(SOP)与分段/联络开关协同的动态重构方法已成为保障配电网安全稳定运行的重要技术途径。然而,线路的电热耦合特性往往在动态重构过程中被忽略,导致电阻计算误差引起重构结果偏差,进... 随着光伏在配电网中渗透率的不断提高,基于智能软开关(SOP)与分段/联络开关协同的动态重构方法已成为保障配电网安全稳定运行的重要技术途径。然而,线路的电热耦合特性往往在动态重构过程中被忽略,导致电阻计算误差引起重构结果偏差,进而影响电网安全经济运行。为此,文中提出一种计及线路电热耦合特性的含SOP配电网鲁棒强化学习动态重构方法。首先,为缓解因恒定线路电阻假设而导致的系统建模误差,建立了考虑线路电热耦合的含SOP配电网动态重构模型。其次,将原优化问题转化为马尔可夫决策过程,并基于一阶仿射多项式构建奖励函数,用于评估光伏及负荷波动带来的运行风险,从而增强决策的鲁棒性。在此基础上,提出了基于置信度动作选择和动作网络参数鲁棒更新机制的鲁棒深度强化学习算法,以实现鲁棒优化策略的有效学习。最后,在IEEE 34节点和123节点系统上进行仿真测试。结果表明,较传统建模方法,所提方法能更好地捕捉线路电阻动态变化,提高决策可靠性,并在光伏发电及负荷短期波动条件下,有效降低系统运行成本与运行风险。 展开更多
关键词 动态重构 智能软开关 光伏 深度强化学习 仿射算法
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基于软演员-评论家的移动边缘计算任务卸载策略
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作者 郭阳 江晓明 《通信技术》 2026年第1期70-77,共8页
无人机凭借部署灵活、覆盖范围广以及无线通信可靠等特点,已在移动边缘计算中得到广泛应用。考虑到无人机在能耗和计算能力方面的局限性,构建了任务卸载与飞行轨迹的联合优化问题,并以任务处理时延与能耗的加权和最小化为优化目标,提出... 无人机凭借部署灵活、覆盖范围广以及无线通信可靠等特点,已在移动边缘计算中得到广泛应用。考虑到无人机在能耗和计算能力方面的局限性,构建了任务卸载与飞行轨迹的联合优化问题,并以任务处理时延与能耗的加权和最小化为优化目标,提出了一种改进型软演员-评论家算法。该算法通过引入长短期记忆网络增强模型对时序特征的建模能力,同时结合优先经验回放机制提升训练收敛效率。仿真结果表明,所提出的算法在降低系统开销方面表现出显著优势。 展开更多
关键词 移动边缘计算 任务卸载 无人机 软演员-评论家算法
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考虑充换电模式的电动汽车配送优化
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作者 林文杰 杨京帅 《交通科技与经济》 2026年第1期32-39,共8页
随着电动汽车在城市配送中的应用增加,单一补电模式难以同时满足时间窗约束和成本控制需求,影响配送质量。为此,以配送总成本最小为目标,综合考虑车辆载重、电量限制、时间窗、车辆数以及道路流量等多重约束条件,构建同时考虑充换电模... 随着电动汽车在城市配送中的应用增加,单一补电模式难以同时满足时间窗约束和成本控制需求,影响配送质量。为此,以配送总成本最小为目标,综合考虑车辆载重、电量限制、时间窗、车辆数以及道路流量等多重约束条件,构建同时考虑充换电模式的电动汽车配送优化模型,采用遗传算法进行求解。结果表明,相较于粒子群算法,遗传算法不易陷入局部最优且可获得更优的求解结果,总成本降低2.9%。三种补电模式对比分析显示:同时考虑充换电模式比单一充电和换电模式分别节省6.4%和7.6%的总配送成本,时间窗内到达率为55.0%。时间窗敏感性分析发现,随着时间窗约束由宽松变严格,同时考虑充换电模式相较于单一充电和换电模式的总配送成本节省率从2.5%和4.9%上升至9.1%和7.0%,验证本模型在不同时间窗约束强度下的有效性。 展开更多
关键词 物流工程 电动汽车配送 遗传算法 补电模式 车辆路径 软时间窗
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基于多目标贪心免疫优化算法的公交换电站选址路径优化
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作者 宁雅敬 张惠珍 《智能计算机与应用》 2026年第1期185-191,共7页
针对新能源公交换电站选址路径优化问题,本文首先建立包含客车容量约束、电池容量约束和时间窗口等约束的换电站选址和客车路径优化模型。与现有的换电站选址路径研究相比,本模型考虑了客户出行满意程度和总运行成本,建立了包含时间窗... 针对新能源公交换电站选址路径优化问题,本文首先建立包含客车容量约束、电池容量约束和时间窗口等约束的换电站选址和客车路径优化模型。与现有的换电站选址路径研究相比,本模型考虑了客户出行满意程度和总运行成本,建立了包含时间窗口和容量限制的换电站多目标选址路径数学模型;然后,引入邻域搜索和抗体自适应克隆等特征,提出了多目标贪心免疫优化算法用以解决该问题;最后,设计大中小三种规模的算例,以在实验仿真中验证该算法。计算结果表明,本文所提算法与传统免疫算法、粒子群算法、NSGA-Ⅱ法相比,在大中小规模算例中均可以有效地达到或接近最优的解。 展开更多
关键词 新能源客车 软时间窗 选址路径问题 贪心免疫优化算法
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考虑需求响应的配电网智能储能软开关双层优化配置
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作者 程子霞 唐兴 +2 位作者 柴旭峥 郭姿婵 姚文博 《郑州大学学报(工学版)》 北大核心 2026年第2期67-76,共10页
针对含高比例新能源电力系统面临的网络损耗增大、电压越限等问题,提出了考虑需求响应的配电网智能储能软开关(E-SOP)双层规划策略。首先,考虑风光出力相关特性,基于Frank-Copula函数生成风光出力典型场景;其次,建立了E-SOP双层规划模型... 针对含高比例新能源电力系统面临的网络损耗增大、电压越限等问题,提出了考虑需求响应的配电网智能储能软开关(E-SOP)双层规划策略。首先,考虑风光出力相关特性,基于Frank-Copula函数生成风光出力典型场景;其次,建立了E-SOP双层规划模型,上层以配电网年综合运行成本最低为目标进行E-SOP的选址定容,下层考虑需求响应参与,以各个场景运行成本最小为目标进行运行优化,并采用多策略改进的鲸鱼优化算法(MIWOA)和二阶锥规划(SOCP)的混合算法对模型进行求解;最后,采用IEEE33节点系统进行算例分析。仿真结果显示:系统的年综合成本降低了7.94%,验证了所提方案能够有效提高配电网运行的稳定性和经济性。 展开更多
关键词 智能储能软开关 Frank-Copula函数 双层规划 鲸鱼优化算法 二阶锥规划
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