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Non-Markovian dynamical solver for efficient combinatorial optimization
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作者 Haijie Xu Zhe Yuan 《Chinese Physics B》 2026年第2期583-590,共8页
We incorporate a non-Markovian feedback mechanism into the simulated bifurcation method for dynamical solvers addressing combinatorial optimization problems.By reinjecting a portion of dissipated kinetic energy into e... We incorporate a non-Markovian feedback mechanism into the simulated bifurcation method for dynamical solvers addressing combinatorial optimization problems.By reinjecting a portion of dissipated kinetic energy into each spin in a history-dependent and trajectory-informed manner,the method effectively suppresses early freezing induced by inelastic boundaries and enhances the system's ability to explore complex energy landscapes.Numerical results on the maximum cut(MAX-CUT)instances of fully connected Sherrington–Kirkpatrick(SK)spin glass models,including the 2000-spin K_(2000)benchmark,demonstrate that the non-Markovian algorithm significantly improves both solution quality and convergence speed.Tests on randomly generated SK instances with 100 to 1000 spins further indicate favorable scalability and substantial gains in computational efficiency.Moreover,the proposed scheme is well suited for massively parallel hardware implementations,such as field-programmable gate arrays,providing a practical and scalable approach for solving large-scale combinatorial optimization problems. 展开更多
关键词 non-Markovian dynamics simulated bifurcation combinatorial optimization maximum cut(MAX-CUT)problem spin glass
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An extended discrete particle swarm optimization algorithm for the dynamic facility layout problem 被引量:3
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作者 Hassan REZAZADEH Mehdi GHAZANFARI +1 位作者 Mohammad SAIDI-MEHRABAD Seyed JAFAR SADJADI 《Journal of Zhejiang University-Science A(Applied Physics & Engineering)》 SCIE EI CAS CSCD 2009年第4期520-529,共10页
We extended an improved version of the discrete particle swarm optimization (DPSO) algorithm proposed by Liao et al.(2007) to solve the dynamic facility layout problem (DFLP). A computational study was performed with ... We extended an improved version of the discrete particle swarm optimization (DPSO) algorithm proposed by Liao et al.(2007) to solve the dynamic facility layout problem (DFLP). A computational study was performed with the existing heuristic algorithms, including the dynamic programming (DP), genetic algorithm (GA), simulated annealing (SA), hybrid ant system (HAS), hybrid simulated annealing (SA-EG), hybrid genetic algorithms (NLGA and CONGA). The proposed DPSO algorithm, SA, HAS, GA, DP, SA-EG, NLGA, and CONGA obtained the best solutions for 33, 24, 20, 10, 12, 20, 5, and 2 of the 48 problems from (Balakrishnan and Cheng, 2000), respectively. These results show that the DPSO is very effective in dealing with the DFLP. The extended DPSO also has very good computational efficiency when the problem size increases. 展开更多
关键词 dynamic facility layout problem (DFLP) Particle swarm optimization (PSO) optimization Heuristic method
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Optimal scheduling method for multi-regional integrated energy system based on dynamic robust optimization algorithm and bi-level Stackelberg model
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作者 Bo Zhou Erchao Li Wenjing Liang 《Global Energy Interconnection》 2025年第3期510-521,共12页
In this study,we construct a bi-level optimization model based on the Stackelberg game and propose a robust optimization algorithm for solving the bi-level model,assuming an actual situation with several participants ... In this study,we construct a bi-level optimization model based on the Stackelberg game and propose a robust optimization algorithm for solving the bi-level model,assuming an actual situation with several participants in energy trading.Firstly,the energy trading process is analyzed between each subject based on the establishment of the operation framework of multi-agent participation in energy trading.Secondly,the optimal operation model of each energy trading agent is established to develop a bi-level game model including each energy participant.Finally,a combination algorithm of improved robust optimization over time(ROOT)and CPLEX is proposed to solve the established game model.The experimental results indicate that under different fitness thresholds,the robust optimization results of the proposed algorithm are increased by 56.91%and 68.54%,respectively.The established bi-level game model effectively balances the benefits of different energy trading entities.The proposed algorithm proposed can increase the income of each participant in the game by an average of 8.59%. 展开更多
关键词 Robust optimization over time Integrated energy system dynamic problem Stackelberg game
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An Improved GT Algorithm for Solving Complicated Dynamic Function Optimization Problems
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作者 ZHANG Qing LI Yan +1 位作者 KANG Zhuo KANG Lishan 《Wuhan University Journal of Natural Sciences》 CAS 2009年第5期404-408,共5页
An improved Guo Tao algorithm (IGT algorithm) is proposed for solving complicated dynamic function optimization problems, and a function optimization benchmark problem with constrained condition and two dynamic para... An improved Guo Tao algorithm (IGT algorithm) is proposed for solving complicated dynamic function optimization problems, and a function optimization benchmark problem with constrained condition and two dynamic parameters has been designed. The results achieved by IGT algorithm have been compared with the results from the Guo Tao algorithm (GT algorithm). It is shown that the new algorithm (IGT algorithm) provides better results. This preliminarily demonstrates the efficiency of the new algorithm in complicated dynamic environments. 展开更多
关键词 dynamic function optimization Guo Tao algorithm (GT algorithm) benchmark problems
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A Scheme Library-Based Ant Colony Optimization with 2-Opt Local Search for Dynamic Traveling Salesman Problem
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作者 Chuan Wang Ruoyu Zhu +4 位作者 Yi Jiang Weili Liu Sang-Woon Jeon Lin Sun Hua Wang 《Computer Modeling in Engineering & Sciences》 SCIE EI 2023年第5期1209-1228,共20页
The dynamic traveling salesman problem(DTSP)is significant in logistics distribution in real-world applications in smart cities,but it is uncertain and difficult to solve.This paper proposes a scheme library-based ant... The dynamic traveling salesman problem(DTSP)is significant in logistics distribution in real-world applications in smart cities,but it is uncertain and difficult to solve.This paper proposes a scheme library-based ant colony optimization(ACO)with a two-optimization(2-opt)strategy to solve the DTSP efficiently.The work is novel and contributes to three aspects:problemmodel,optimization framework,and algorithmdesign.Firstly,in the problem model,traditional DTSP models often consider the change of travel distance between two nodes over time,while this paper focuses on a special DTSP model in that the node locations change dynamically over time.Secondly,in the optimization framework,the ACO algorithm is carried out in an offline optimization and online application framework to efficiently reuse the historical information to help fast respond to the dynamic environment.The framework of offline optimization and online application is proposed due to the fact that the environmental change inDTSPis caused by the change of node location,and therefore the newenvironment is somehowsimilar to certain previous environments.This way,in the offline optimization,the solutions for possible environmental changes are optimized in advance,and are stored in a mode scheme library.In the online application,when an environmental change is detected,the candidate solutions stored in the mode scheme library are reused via ACO to improve search efficiency and reduce computational complexity.Thirdly,in the algorithm design,the ACO cooperates with the 2-opt strategy to enhance search efficiency.To evaluate the performance of ACO with 2-opt,we design two challenging DTSP cases with up to 200 and 1379 nodes and compare them with other ACO and genetic algorithms.The experimental results show that ACO with 2-opt can solve the DTSPs effectively. 展开更多
关键词 dynamic traveling salesman problem(DTSP) offline optimization and online application ant colony optimization(ACO) two-optimization(2-opt)strategy
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Predictive Mathematical and Statistical Modeling of the Dynamic Poverty Problem in Burundi: Case of an Innovative Economic Optimization System
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作者 Fulgence Nahayo Ancille Bagorizamba +1 位作者 Marc Bigirimana Irene Irakoze 《Open Journal of Optimization》 2021年第4期101-125,共25页
The mathematical and statistical modeling of the problem of poverty is a major challenge given Burundi’s economic development. Innovative economic optimization systems are widely needed to face the problem of the dyn... The mathematical and statistical modeling of the problem of poverty is a major challenge given Burundi’s economic development. Innovative economic optimization systems are widely needed to face the problem of the dynamic of the poverty in Burundi. The Burundian economy shows an inflation rate of -1.5% in 2018 for the Gross Domestic Product growth real rate of 2.8% in 2016. In this research, the aim is to find a model that contributes to solving the problem of poverty in Burundi. The results of this research fill the knowledge gap in the modeling and optimization of the Burundian economic system. The aim of this model is to solve an optimization problem combining the variables of production, consumption, budget, human resources and available raw materials. Scientific modeling and optimal solving of the poverty problem show the tools for measuring poverty rate and determining various countries’ poverty levels when considering advanced knowledge. In addition, investigating the aspects of poverty will properly orient development aid to developing countries and thus, achieve their objectives of growth and the fight against poverty. This paper provides a new and innovative framework for global scientific research regarding the multiple facets of this problem. An estimate of the poverty rate allows good progress with the theory and optimization methods in measuring the poverty rate and achieving sustainable development goals. By comparing the annual food production and the required annual consumption, there is an imbalance between different types of food. Proteins, minerals and vitamins produced in Burundi are sufficient when considering their consumption as required by the entire Burundian population. This positive contribution for the latter comes from the fact that some cows, goats, fishes, ···, slaughtered in Burundi come from neighboring countries. Real production remains in deficit. The lipids, acids, calcium, fibers and carbohydrates produced in Burundi are insufficient for consumption. This negative contribution proves a Burundian food deficit. It is a decision-making indicator for the design and updating of agricultural policy and implementation programs as well as projects. Investment and economic growth are only possible when food security is mastered. The capital allocated to food investment must be revised upwards. Demographic control is also a relevant indicator to push forward Burundi among the emerging countries in 2040. Meanwhile, better understanding of the determinants of poverty by taking cultural and organizational aspects into account guides managers for poverty reduction projects and programs. 展开更多
关键词 Poverty problem Mathematical Modeling Applied Statistics Operational Research Symplectic Partitioned Runge Kutta Algorithm dynamic Programming Matlab and Simulink AMPL KNITRO Gurobi Economic optimization Technology Transfer Incubation of Results Sustainable Development Goals
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Multi-population and diffusion UMDA for dynamic multimodal problems 被引量:3
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作者 Yan Wu Yuping Wang +1 位作者 Xiaoxiong Liu Jimin Ye 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2010年第5期777-783,共7页
In dynamic environments,it is important to track changing optimal solutions over time.Univariate marginal distribution algorithm(UMDA) which is a class algorithm of estimation of distribution algorithms attracts mor... In dynamic environments,it is important to track changing optimal solutions over time.Univariate marginal distribution algorithm(UMDA) which is a class algorithm of estimation of distribution algorithms attracts more and more attention in recent years.In this paper a new multi-population and diffusion UMDA(MDUMDA) is proposed for dynamic multimodal problems.The multi-population approach is used to locate multiple local optima which are useful to find the global optimal solution quickly to dynamic multimodal problems.The diffusion model is used to increase the diversity in a guided fashion,which makes the neighbor individuals of previous optimal solutions move gradually from the previous optimal solutions and enlarge the search space.This approach uses both the information of current population and the part history information of the optimal solutions.Finally experimental studies on the moving peaks benchmark are carried out to evaluate the proposed algorithm and compare the performance of MDUMDA and multi-population quantum swarm optimization(MQSO) from the literature.The experimental results show that the MDUMDA is effective for the function with moving optimum and can adapt to the dynamic environments rapidly. 展开更多
关键词 univariate marginal distribution algorithm(UMDA) dynamic multimodal problems dynamic optimization multipopulation scheme.
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Recent Advances in Particle Swarm Optimization for Large Scale Problems
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作者 Danping Yan Yongzhong Lu +3 位作者 Min Zhou Shiping Chen David Levy Jicheng You 《Journal of Autonomous Intelligence》 2018年第1期22-35,共14页
Accompanied by the advent of current big data ages,the scales of real world optimization problems with many decisive design variables are becoming much larger.Up to date,how to develop new optimization algorithms for ... Accompanied by the advent of current big data ages,the scales of real world optimization problems with many decisive design variables are becoming much larger.Up to date,how to develop new optimization algorithms for these large scale problems and how to expand the scalability of existing optimization algorithms have posed further challenges in the domain of bio-inspired computation.So addressing these complex large scale problems to produce truly useful results is one of the presently hottest topics.As a branch of the swarm intelligence based algorithms,particle swarm optimization (PSO) for coping with large scale problems and its expansively diverse applications have been in rapid development over the last decade years.This reviewpaper mainly presents its recent achievements and trends,and also highlights the existing unsolved challenging problems and key issues with a huge impact in order to encourage further more research in both large scale PSO theories and their applications in the forthcoming years. 展开更多
关键词 SWARM intelligence particle SWARM optimization large scale optimization problem cooperative coevolution ENSEMBLE evolution static GROUPING METHOD dynamic GROUPING METHOD
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A Parallel Search System for Dynamic Multi-Objective Traveling Salesman Problem
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作者 Weiqi Li 《Journal of Mathematics and System Science》 2014年第5期295-314,共20页
This paper introduces a parallel search system for dynamic multi-objective traveling salesman problem. We design a multi-objective TSP in a stochastic dynamic environment. This dynamic setting of the problem is very u... This paper introduces a parallel search system for dynamic multi-objective traveling salesman problem. We design a multi-objective TSP in a stochastic dynamic environment. This dynamic setting of the problem is very useful for routing in ad-hoc networks. The proposed search system first uses parallel processors to identify the extreme solutions of the search space for each ofk objectives individually at the same time. These solutions are merged into the so-called hit-frequency matrix E. The solutions in E are then searched by parallel processors and evaluated for dominance relationship. The search system is implemented in two different ways master-worker architecture and pipeline architecture. 展开更多
关键词 dynamic multi-objective optimization traveling salesman problem parallel search algorithm solution attractor.
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基于myRIO-1900实现2704个自旋的伊辛机
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作者 陈志乐 陆平平 +3 位作者 郝树宏 时培新 谢晨阳 王东 《量子电子学报》 北大核心 2026年第1期99-109,共11页
伊辛机是一种基于伊辛模型解决组合优化问题的计算机器,其中基于时分复用马赫-曾德尔调制器(MZM)的相干伊辛机其光学部分较为简单,但是反馈控制电路比较复杂。本文利用NI myRIO-1900模块,实现了MZM伊辛机电路系统中AD、DA和FPGA等硬件... 伊辛机是一种基于伊辛模型解决组合优化问题的计算机器,其中基于时分复用马赫-曾德尔调制器(MZM)的相干伊辛机其光学部分较为简单,但是反馈控制电路比较复杂。本文利用NI myRIO-1900模块,实现了MZM伊辛机电路系统中AD、DA和FPGA等硬件的集成,并用LabVIEW软件实现无线编程控制,使得MZM伊辛机变得更加易于使用。对反铁磁方格模型的实验结果表明,该伊辛机利用系统自身电路噪声可实现自旋分岔,找到100个自旋的基态时间为1.25 s,最高可找到1156个自旋的基态;加入随机噪声后,最高可实现2704个自旋的基态搜索。该伊辛机在解决实际组合优化问题方面具有潜在的应用价值。 展开更多
关键词 光计算 相干伊辛机 非线性动力学 组合优化问题 马赫曾德尔调制器 噪声
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并行异速机批量混合流水车间动态调度方法研究
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作者 昝云磊 刘贵杰 +4 位作者 王川 张玮 刘新宇 钟正彬 张金营 《机电工程》 北大核心 2026年第1期102-116,共15页
针对电站锅炉屏式管屏制造中多动态事件耦合导致的调度响应滞后及多目标协同优化难题,提出了一种基于深度强化学习的动态调度方法。首先,构建了并行异速机批量混合流水车间调度模型(LSHFSP-Qm),以精确描述异构机器速度、批量转移和能耗... 针对电站锅炉屏式管屏制造中多动态事件耦合导致的调度响应滞后及多目标协同优化难题,提出了一种基于深度强化学习的动态调度方法。首先,构建了并行异速机批量混合流水车间调度模型(LSHFSP-Qm),以精确描述异构机器速度、批量转移和能耗等生产约束条件;然后,基于双延迟深层确定性策略梯度(TD3)算法框架,采用长短时记忆(LSTM)网络重构了策略网络以增强时序特征提取能力,同时,设计了多级奖励机制,集成处理了时差、能耗和订单延迟的惩罚,从而构建了灵活自适应的动态事件驱动多目标重调度机制;最后,通过多组基准算例和车间实验验证了该方法的有效性。研究结果表明:改进TD3算法较传统深度强化学习方法提供了更好的近优解;在某屏式管屏车间中,调度效率提升了309.09%,动态事件反应速度提升了300%,综合生产效率间接提升了14.29%,订单拖期时间缩短了66.7%,生产线设备平均能耗降低了5%。该方法可有效协调多目标冲突,显著增强算法复杂动态环境中的适应性,可为装备制造业车间调度智能化转型提供可行方案。 展开更多
关键词 并行异速机批量混合流水车间调度问题 柔性制造系统及单元 双延迟深层确定性策略梯度算法 深度强化学习 动态调度 多目标优化
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A Hybrid Immigrants Scheme for Genetic Algorithms in Dynamic Environments 被引量:9
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作者 Shengxiang Yang Renato Tinós 《International Journal of Automation and computing》 EI 2007年第3期243-254,共12页
Dynamic optimization problems are a kind of optimization problems that involve changes over time. They pose a serious challenge to traditional optimization methods as well as conventional genetic algorithms since the ... Dynamic optimization problems are a kind of optimization problems that involve changes over time. They pose a serious challenge to traditional optimization methods as well as conventional genetic algorithms since the goal is no longer to search for the optimal solution(s) of a fixed problem but to track the moving optimum over time. Dynamic optimization problems have attracted a growing interest from the genetic algorithm community in recent years. Several approaches have been developed to enhance the performance of genetic algorithms in dynamic environments. One approach is to maintain the diversity of the population via random immigrants. This paper proposes a hybrid immigrants scheme that combines the concepts of elitism, dualism and random immigrants for genetic algorithms to address dynamic optimization problems. In this hybrid scheme, the best individual, i.e., the elite, from the previous generation and its dual individual are retrieved as the bases to create immigrants via traditional mutation scheme. These elitism-based and dualism-based immigrants together with some random immigrants are substituted into the current population, replacing the worst individuals in the population. These three kinds of immigrants aim to address environmental changes of slight, medium and significant degrees respectively and hence efficiently adapt genetic algorithms to dynamic environments that are subject to different severities of changes. Based on a series of systematically constructed dynamic test problems, experiments are carried out to investigate the performance of genetic algorithms with the hybrid immigrants scheme and traditional random immigrants scheme. Experimental results validate the efficiency of the proposed hybrid immigrants scheme for improving the performance of genetic algorithms in dynamic environments. 展开更多
关键词 Genetic algorithms random immigrants elitism-based immigrants DUALISM dynamic optimization problems.
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Chaotic Neural Network Technique for "0-1" Programming Problems 被引量:1
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作者 王秀宏 乔清理 王正欧 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2003年第4期99-105,共7页
0-1 programming is a special case of the integer programming, which is commonly encountered in many optimization problems. Neural network and its general energy function are presented for 0-1 optimization problem. The... 0-1 programming is a special case of the integer programming, which is commonly encountered in many optimization problems. Neural network and its general energy function are presented for 0-1 optimization problem. Then, the 0-1 optimization problems are solved by a neural network model with transient chaotic dynamics (TCNN). Numerical simulations of two typical 0-1 optimization problems show that TCNN can overcome HNN's main drawbacks that it suffers from the local minimum and can search for the global optimal solutions in to solveing 0-1 optimization problems. 展开更多
关键词 neural network chaotic dynamics 0-1 optimization problem.
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基于粒子飞行动态径向基代理模型的辐射屏蔽优化设计 被引量:1
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作者 高帅 管兴胤 +5 位作者 卢毅 叶洋 袁媛 郝帅 胡启航 张勇 《核技术》 北大核心 2025年第2期133-143,共11页
针对辐射屏蔽优化设计中存在的消耗时间长、优化效率低的问题,提出一种基于粒子飞行样本更新策略的动态径向基代理模型。首先采用径向基神经网络建立真实目标函数的初始代理模型,然后通过差分进化算法对代理模型进行全局寻优,然后基于... 针对辐射屏蔽优化设计中存在的消耗时间长、优化效率低的问题,提出一种基于粒子飞行样本更新策略的动态径向基代理模型。首先采用径向基神经网络建立真实目标函数的初始代理模型,然后通过差分进化算法对代理模型进行全局寻优,然后基于代理模型寻优结果和粒子飞行样本更新策略产生新样本点,最后将新样本点加入原有样本点后重新更新代理模型并循环迭代,直至满足收敛条件。该方法以代理模型拟合精度为依据控制原有样本点向随机样本点和最优预测样本点的飞行速度,可以实现动态代理模型全局探索与局部探索的自适应平衡。为验证方法的有效性,将所提方法应用于12个数值测试函数和船用反应堆辐射屏蔽优化设计工程实例,并与其他优化方法计算结果进行对比。结果表明:对于数值测试函数,所提方法在寻优结果、样本点数量和算法鲁棒性方面均具有显著优势,对于辐射屏蔽优化设计实例,所提方法得到的中子透射率为另外两种方法的48%和8%,所需样本点数量为静态代理模型的25%,证明该方法是求解辐射屏蔽优化等昂贵优化问题的有效方法。 展开更多
关键词 粒子飞行 径向基函数 动态代理模型 辐射屏蔽优化 昂贵优化问题
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融合多策略改进的白鲸优化算法 被引量:9
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作者 柴岩 常晓萌 任生 《计算机工程与应用》 北大核心 2025年第5期76-93,共18页
为进一步提升白鲸优化算法(BWO)的寻优能力和收敛速度,提出一种融合多策略改进的白鲸优化算法(multi-strategy improved beluga whale optimization,MIBWO)。针对算法初期因随机生成个体的遍历性较差使得算法易陷入局部的劣势,利用PWLC... 为进一步提升白鲸优化算法(BWO)的寻优能力和收敛速度,提出一种融合多策略改进的白鲸优化算法(multi-strategy improved beluga whale optimization,MIBWO)。针对算法初期因随机生成个体的遍历性较差使得算法易陷入局部的劣势,利用PWLCM混沌映射增加种群多样性以及准反向学习生成的反向解增强初始解的质量,为算法寻优性能奠定基础;构造一种动态限制局部扰动搜索机制,引入非线性收敛因子扰动个体增加求解精度与速度,为避免收敛因子在迭代后期过快收敛,利用动态平衡搜索策略以避免陷入局部最优;提出一种差异性种群进化策略对鲸鱼坠落阶段进行最优值位置扰动更新,有效提升收敛精度。理论分析和数值实验证明MIBWO算法具有较强的寻优性能,MIBWO算法在PV辨识问题体现了良好的寻优性能、收敛速度及鲁棒性并具有一定的实际工程应用前景。 展开更多
关键词 白鲸优化算法 PWLCM混沌映射 准反向学习 非线性收敛因子 动态平衡搜索策略 差异性种群进化策略 PV辨识问题
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带有扰动观测模型预测控制的水下无人航行器对接控制
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作者 张伟 王强 +2 位作者 吴奇阳 郑岩 杜雪 《哈尔滨工程大学学报》 北大核心 2025年第4期634-642,共9页
为实现水下无人航行器的回收,本文将回收中的动态对接问题转换为水下无人航行器与母船的位姿同步控制问题。在水下无人航行器动态对接母船存在外界扰动的情况下,设计了带有扰动观测器的非线性模型预测控制方案。对水下无人航行器的五自... 为实现水下无人航行器的回收,本文将回收中的动态对接问题转换为水下无人航行器与母船的位姿同步控制问题。在水下无人航行器动态对接母船存在外界扰动的情况下,设计了带有扰动观测器的非线性模型预测控制方案。对水下无人航行器的五自由度模型加入相对于惯性系的恒定或缓慢变化的扰动,利用非线性扰动观测器对这些扰动进行估计,并将其输入到模型预测中来增强控制器的鲁棒性。研究表明:通过求解非线性优化问题得到最优控制,使得水下无人航行器能够和母船的位姿保持一致,完成对接过程。本文控制器能够有效抵抗外界扰动,提高对接任务的控制精度。 展开更多
关键词 水下无人航行器 动态对接 位姿同步控制 外界扰动 估计 鲁棒性 非线性模型预测控制 非线性扰动观测器 非线性优化问题 最优控制
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动态电磁环境下多功能雷达一体化发射资源管理方案
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作者 张鹏 严俊坤 +2 位作者 高畅 李康 刘宏伟 《雷达学报(中英文)》 北大核心 2025年第2期456-469,共14页
传统多功能雷达仅面向目标特性优化发射资源,在动态电磁环境下面临干扰智能时变、优化模型失配的问题。因此,该文提出一种基于数据驱动的一体化发射资源管理方案,旨在通过对动态干扰信息在线感知与利用提升多功能雷达在动态电磁环境下... 传统多功能雷达仅面向目标特性优化发射资源,在动态电磁环境下面临干扰智能时变、优化模型失配的问题。因此,该文提出一种基于数据驱动的一体化发射资源管理方案,旨在通过对动态干扰信息在线感知与利用提升多功能雷达在动态电磁环境下的多目标跟踪(MTT)性能。该方案首先建立马尔可夫决策过程,数学化描述雷达被敌方截获和干扰的风险。而后将该马尔可夫决策过程感知的干扰信息耦合进MTT精度计算,一体化发射资源管理方法被设计为具有约束动作空间的优化问题。最后提出一种贪婪排序回溯算法对其进行求解。仿真结果表明,所提方法在面向动态干扰环境时不仅可以降低敌方截获概率,还能在被干扰时降低干扰对雷达的影响,改善MTT性能。 展开更多
关键词 一体化发射资源管理 多目标跟踪 动态电磁环境 马尔可夫决策过程 优化问题
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针刺联合目偏牵正汤加减治疗2型糖尿病动眼神经麻痹的临床研究
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作者 庞荣 高辉 +4 位作者 徐靖知 李焕丽 路阿慧 杨介川 徐靖知 《辽宁中医杂志》 北大核心 2025年第11期141-144,共4页
目的研究针刺联合目偏牵正汤加减治疗2型糖尿病动眼神经麻痹(dynamic optimization problem,DOP)的疗效。方法将该院收治的102例DOP患者经随机数表法分为51例观察组(常规治疗基础上联合针刺及目偏牵正汤治疗)及51例对照组(常规治疗)。... 目的研究针刺联合目偏牵正汤加减治疗2型糖尿病动眼神经麻痹(dynamic optimization problem,DOP)的疗效。方法将该院收治的102例DOP患者经随机数表法分为51例观察组(常规治疗基础上联合针刺及目偏牵正汤治疗)及51例对照组(常规治疗)。比较两组临床疗效,中医证候积分(主症积分及次症积分),复视角度,瞳孔直径及眼裂高度,血液流变学(红细胞聚集指数、血浆黏度、全血黏度、纤维蛋白原)。结果观察组总有效率高于对照组(P<0.05)。观察组治疗后的中医证候积分低于对照组(P<0.05)。观察组治疗后的复视角度、瞳孔直径小于对照组(P<0.05),眼裂高度高于对照组(P<0.05)。观察组治疗后血液流变学指标低于对照组(P<0.05)。结论针刺联合目偏牵正汤可提高DOP治疗效果,减轻患者症状,改善血液流变学指标。 展开更多
关键词 2型糖尿病 动眼神经麻痹 针刺 目偏牵正汤
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融合动态规划与背包问题的多目标切割优化算法
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作者 任长清 张春钰 +3 位作者 丁星尘 丁禹程 曲文 杨春梅 《林业机械与木工设备》 2025年第10期44-51,共8页
被动式木窗边材加工过程中定长截断锯原有算法的出料顺序与码垛特性不匹配,导致锯切产生的边材段在尺寸组合上难以高效、稳定地进行自动化码垛,这成为制约整体生产效率的瓶颈。针对此问题,提出一种融合动态优化规则(DP)与背包问题的多... 被动式木窗边材加工过程中定长截断锯原有算法的出料顺序与码垛特性不匹配,导致锯切产生的边材段在尺寸组合上难以高效、稳定地进行自动化码垛,这成为制约整体生产效率的瓶颈。针对此问题,提出一种融合动态优化规则(DP)与背包问题的多目标优化算法。通过建立一维背包问题,利用遗传算法在解空间中搜索候选锯切方案视为装入背包的方案组合,以木料利用率最大化以及码垛符合率为多目标,设计动态转移方程,并且引入罚函数、权重系数平衡两目标的优先级。最终结果证明,该优化算法在保持原有木料利用率的前提下,显著提高码垛效率。 展开更多
关键词 背包问题 下料优化 动态规划 码垛模型
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考虑众包情形下的动态异质订单配送优化问题
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作者 李妍峰 刘学林 《工业工程》 2025年第5期123-130,168,共9页
根据顾客是否购买准时送达服务,或是否愿意支付额外费用让订单提前送达,将即时配送的订单分为不同的类型。除初始时刻的订单需求外,配送过程中还会出现新的订单需求。综合考虑订单的时间窗、车辆的容量限制、众包车辆服务范围等约束,以... 根据顾客是否购买准时送达服务,或是否愿意支付额外费用让订单提前送达,将即时配送的订单分为不同的类型。除初始时刻的订单需求外,配送过程中还会出现新的订单需求。综合考虑订单的时间窗、车辆的容量限制、众包车辆服务范围等约束,以车辆配送成本与顾客点处的时间成本之和最小为目标建立数学模型;并设计一种基于滚动时域的改进混合禁忌搜索算法进行求解,在该算法中设置禁忌步长的动态调整机制以及解的多样化策略。参数分析表明,为了有效降低成本,运输企业不宜将更新时间间隔设置过长,应优先配送第2类及第3类异质订单,尽量扩大众包车辆的服务范围并充分利用该范围内的众包车辆。多个不同规模的算例测试表明,基于滚动时域的改进混合禁忌搜索算法能有效求解各规模算例。 展开更多
关键词 动态取送货问题 订单配送 动态需求 改进混合禁忌搜索 滚动时域优化
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