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A hybrid genetic-simulated annealing algorithm for optimization of hydraulic manifold blocks 被引量:7
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作者 刘万辉 田树军 +1 位作者 贾春强 曹宇宁 《Journal of Shanghai University(English Edition)》 CAS 2008年第3期261-267,共7页
This paper establishes a mathematical model of multi-objective optimization with behavior constraints in solid space based on the problem of optimal design of hydraulic manifold blocks (HMB). Due to the limitation o... This paper establishes a mathematical model of multi-objective optimization with behavior constraints in solid space based on the problem of optimal design of hydraulic manifold blocks (HMB). Due to the limitation of its local search ability of genetic algorithm (GA) in solving a massive combinatorial optimization problem, simulated annealing (SA) is combined, the multi-parameter concatenated coding is adopted, and the memory function is added. Thus a hybrid genetic-simulated annealing with memory function is formed. Examples show that the modified algorithm can improve the local search ability in the solution space, and the solution quality. 展开更多
关键词 hydraulic manifold blocks (HMB) genetic algorithm (GA) simulated annealing (SA) optimal design
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A Personified Annealing Algorithm for Circles Packing Problem 被引量:5
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作者 ZHANGDe-Fu LIXin 《自动化学报》 EI CSCD 北大核心 2005年第4期590-595,共6页
Circles packing problem is an NP-hard problem and is di?cult to solve. In this paper, ahybrid search strategy for circles packing problem is discussed. A way of generating new configurationis presented by simulating t... Circles packing problem is an NP-hard problem and is di?cult to solve. In this paper, ahybrid search strategy for circles packing problem is discussed. A way of generating new configurationis presented by simulating the moving of elastic objects, which can avoid the blindness of simulatedannealing search and make iteration process converge fast. Inspired by the life experiences of people,an e?ective personified strategy to jump out of local minima is given. Based on the simulatedannealing idea and personification strategy, an e?ective personified annealing algorithm for circlespacking problem is developed. Numerical experiments on benchmark problem instances show thatthe proposed algorithm outperforms the best algorithm in the literature. 展开更多
关键词 包装问题 模拟技术 退火算法 弹性物体
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Optimal design of pressure vessel using an improved genetic algorithm 被引量:5
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作者 Peng-fei LIU Ping XU +1 位作者 Shu-xin HAN Jin-yang ZHENG 《Journal of Zhejiang University-Science A(Applied Physics & Engineering)》 SCIE EI CAS CSCD 2008年第9期1264-1269,共6页
As the idea of simulated annealing (SA) is introduced into the fitness function, an improved genetic algorithm (GA) is proposed to perform the optimal design of a pressure vessel which aims to attain the minimum weigh... As the idea of simulated annealing (SA) is introduced into the fitness function, an improved genetic algorithm (GA) is proposed to perform the optimal design of a pressure vessel which aims to attain the minimum weight under burst pressure con- straint. The actual burst pressure is calculated using the arc-length and restart analysis in finite element analysis (FEA). A penalty function in the fitness function is proposed to deal with the constrained problem. The effects of the population size and the number of generations in the GA on the weight and burst pressure of the vessel are explored. The optimization results using the proposed GA are also compared with those using the simple GA and the conventional Monte Carlo method. 展开更多
关键词 Pressure vessel Optimal design genetic algorithm (GA) simulated annealing (SA) Finite element analysis (FEA)
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Using Whole Annealing Genetic Algorithms for the Turbine Cascade Inverse Design Problem 被引量:1
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作者 Jun Li Zhenping Feng +1 位作者 Hidetoshi Nishida Nobuyuki Satofuka 《Journal of Thermal Science》 SCIE EI CAS CSCD 1999年第1期32-37,共6页
Turbine cascade optimum design, the typical non-convex optimal problem, has long been a design challenge in the engineering fields. The new type hybrid Genetic Algorithms-whole annealing GeneticAlgorithms have been de... Turbine cascade optimum design, the typical non-convex optimal problem, has long been a design challenge in the engineering fields. The new type hybrid Genetic Algorithms-whole annealing GeneticAlgorithms have been developed in this paper. Simulated annealing selection and non-uniform mutation are adopted in the whole annealing Genetic Algorithms. Whole annealing Genetic Algorithmsoptimal performance have been tested through mathematical test functions. On this basis, turbinecascade inverse design using whole annealing Genetic Algorithms have been presented. The B-Splinefunction is applied to represent the cascade shape. C-type grid and Godunov scheme are adopted toanalysis the cascade aerodynamic performance. The optimal problem aims to obtain an cascade shapefrom different initial cascade through the given target pressure distribution. The optimum cascadeshape is in well agreement with the target cascade shape. The numerical results show that the wholeannealing Genetic Algorithms are the powerful optimum tools for turbine optimum design or othercomplex engineering design problems. 展开更多
关键词 genetic algorithms simulate annealing TURBINE CASCADE inverse design.
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A hybrid genetic algorithm for multi-objective flexible job shop scheduling problem considering transportation time 被引量:13
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作者 Xiabao Huang Lixi Yang 《International Journal of Intelligent Computing and Cybernetics》 EI 2019年第2期154-174,共21页
Purpose–Flexible job-shop scheduling is significant for different manufacturing industries nowadays.Moreover,consideration of transportation time during scheduling makes it more practical and useful.The purpose of th... Purpose–Flexible job-shop scheduling is significant for different manufacturing industries nowadays.Moreover,consideration of transportation time during scheduling makes it more practical and useful.The purpose of this paper is to investigate multi-objective flexible job-shop scheduling problem(MOFJSP)considering transportation time.Design/methodology/approach–A hybrid genetic algorithm(GA)approach is integrated with simulated annealing to solve the MOFJSP considering transportation time,and an external elitism memory library is employed as a knowledge library to direct GA search into the region of better performance.Findings–The performance of the proposed algorithm is tested on different MOFJSP taken from literature.Experimental results show that proposed algorithm performs better than the original GA in terms of quality of solution and distribution of the solution,especially when the number of jobs and the flexibility of the machine increase.Originality/value–Most of existing studies have not considered the transportation time during scheduling of jobs.The transportation time is significantly desired to be included in the FJSP when the time of transportation of jobs has significant impact on the completion time of jobs.Meanwhile,GA is one of primary algorithms extensively used to address MOFJSP in literature.However,to solve the MOFJSP,the original GA has a possibility to get a premature convergence and it has a slow convergence speed.To overcome these problems,a new hybrid GA is developed in this paper. 展开更多
关键词 Flexible job-shop scheduling problem Transportation time genetic algorithm simulated annealing Multi-objective optimization
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HAPE3D—a new constructive algorithm for the 3D irregular packing problem 被引量:4
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作者 Xiao LIU Jia-min LIU +1 位作者 An-xi CAO Zhuang-le YAO 《Frontiers of Information Technology & Electronic Engineering》 SCIE EI CSCD 2015年第5期380-390,共11页
We propose a new constructive algorithm, called HAPE3 D, which is a heuristic algorithm based on the principle of minimum total potential energy for the 3D irregular packing problem, involving packing a set of irregul... We propose a new constructive algorithm, called HAPE3 D, which is a heuristic algorithm based on the principle of minimum total potential energy for the 3D irregular packing problem, involving packing a set of irregularly shaped polyhedrons into a box-shaped container with fixed width and length but unconstrained height. The objective is to allocate all the polyhedrons in the container, and thus minimize the waste or maximize profit. HAPE3 D can deal with arbitrarily shaped polyhedrons, which can be rotated around each coordinate axis at different angles. The most outstanding merit is that HAPE3 D does not need to calculate no-fit polyhedron(NFP), which is a huge obstacle for the 3D packing problem. HAPE3 D can also be hybridized with a meta-heuristic algorithm such as simulated annealing. Two groups of computational experiments demonstrate the good performance of HAPE3 D and prove that it can be hybridized quite well with a meta-heuristic algorithm to further improve the packing quality. 展开更多
关键词 3D packing problem Layout design SIMULATION OPTIMIZATION Constructive algorithm META-HEURISTICS
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Enhanced Heap-Based Optimizer Algorithm for Solving Team Formation Problem
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作者 Nashwa Nageh Ahmed Elshamy +2 位作者 Abdel Wahab Said Hassan Mostafa Sami Mustafa Abdul Salam 《Computers, Materials & Continua》 SCIE EI 2022年第12期5245-5268,共24页
Team Formation(TF)is considered one of the most significant problems in computer science and optimization.TF is defined as forming the best team of experts in a social network to complete a task with least cost.Many r... Team Formation(TF)is considered one of the most significant problems in computer science and optimization.TF is defined as forming the best team of experts in a social network to complete a task with least cost.Many real-world problems,such as task assignment,vehicle routing,nurse scheduling,resource allocation,and airline crew scheduling,are based on the TF problem.TF has been shown to be a Nondeterministic Polynomial time(NP)problem,and high-dimensional problem with several local optima that can be solved using efficient approximation algorithms.This paper proposes two improved swarm-based algorithms for solving team formation problem.The first algorithm,entitled Hybrid Heap-Based Optimizer with Simulated Annealing Algorithm(HBOSA),uses a single crossover operator to improve the performance of a standard heap-based optimizer(HBO)algorithm.It also employs the simulated annealing(SA)approach to improve model convergence and avoid local minima trapping.The second algorithm is the Chaotic Heap-based Optimizer Algorithm(CHBO).CHBO aids in the discovery of new solutions in the search space by directing particles to different regions of the search space.During HBO’s optimization process,a logistic chaotic map is used.The performance of the two proposed algorithms(HBOSA)and(CHBO)is evaluated using thirteen benchmark functions and tested in solving the TF problem with varying number of experts and skills.Furthermore,the proposed algorithms were compared to well-known optimization algorithms such as the Heap-Based Optimizer(HBO),Developed Simulated Annealing(DSA),Particle SwarmOptimization(PSO),GreyWolfOptimization(GWO),and Genetic Algorithm(GA).Finally,the proposed algorithms were applied to a real-world benchmark dataset known as the Internet Movie Database(IMDB).The simulation results revealed that the proposed algorithms outperformed the compared algorithms in terms of efficiency and performance,with fast convergence to the global minimum. 展开更多
关键词 Team formation problem optimization problem genetic algorithm heap-based optimizer simulated annealing hybridization method chaotic local search
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Evolutionary Algorithms for Solving Unconstrained Multilevel Lot-Sizing Problem with Series Structure
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作者 韩毅 蔡建湖 +3 位作者 IKOU Kaku 李延来 陈以增 唐加福 《Journal of Shanghai Jiaotong university(Science)》 EI 2012年第1期39-44,共6页
This paper presents a comparative study of evolutionary algorithms which are considered to be effective in solving the multilevel lot-sizing problem in material requirement planning(MRP)systems.Three evolutionary algo... This paper presents a comparative study of evolutionary algorithms which are considered to be effective in solving the multilevel lot-sizing problem in material requirement planning(MRP)systems.Three evolutionary algorithms(simulated annealing(SA),particle swarm optimization(PSO)and genetic algorithm(GA))are provided.For evaluating the performances of algorithms,the distribution of total cost(objective function)and the average computational time are compared.As a result,both GA and PSO have better cost performances with lower average total costs and smaller standard deviations.When the scale of the multilevel lot-sizing problem becomes larger,PSO is of a shorter computational time. 展开更多
关键词 simulated annealing(SA) genetic algorithm(GA) particle SWARM optimization(PSO) MULTILEVEL LOT-SIZING problem
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正三角形容器内等圆Packing问题的启发式算法 被引量:6
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作者 刘景发 张国建 +2 位作者 刘文杰 高泽旭 周子铃 《计算机辅助设计与图形学学报》 EI CSCD 北大核心 2012年第6期808-815,共8页
等圆Packing问题研究如何将n个单位半径的圆形物体互不嵌入地置入一个边长尽量小的正三角形容器内,作为一类经典的NP难度问题,其有着重要的理论价值和广泛的应用背景.模拟退火算法是一种随机的全局寻优算法,通过将启发式格局更新策略与... 等圆Packing问题研究如何将n个单位半径的圆形物体互不嵌入地置入一个边长尽量小的正三角形容器内,作为一类经典的NP难度问题,其有着重要的理论价值和广泛的应用背景.模拟退火算法是一种随机的全局寻优算法,通过将启发式格局更新策略与基于梯度法的局部搜索策略融入模拟退火算法,并与二分搜索相结合,提出一种求解正三角形容器内等圆Packing问题的启发式算法.该算法将启发式格局更新策略用来产生新格局和跳坑,用梯度法搜索新产生格局附近能量更低的格局,并用二分搜索得到正三角形容器的最小边长.对41个算例进行测试的实验结果表明,文中算法改进了其中38个实例的目前最优结果,是求解正三角形容器内等圆Packing问题的一种有效算法. 展开更多
关键词 等圆packing问题 模拟退火算法 启发式格局更新策略 梯度法 二分法
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一种求解圆形Packing问题的模拟退火算法 被引量:7
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作者 刘朝霞 刘景发 《计算机工程》 CAS CSCD 北大核心 2011年第19期141-144,共4页
为求解矩形区域内的圆形Packing问题,提出一种启发式模拟退火算法。寻求多个圆在一个矩形区域内的优良布局,使这些圆两两互不嵌入地放置。算法从任一初始构形出发,采用模拟退火(SA)算法进行全局寻优,在SA执行过程中,应用基于自适应步长... 为求解矩形区域内的圆形Packing问题,提出一种启发式模拟退火算法。寻求多个圆在一个矩形区域内的优良布局,使这些圆两两互不嵌入地放置。算法从任一初始构形出发,采用模拟退火(SA)算法进行全局寻优,在SA执行过程中,应用基于自适应步长的梯度法进行局部搜索,同时介绍一些启发式策略。对2组共20个算例进行实算测试,计算结果证明了该算法的有效性。 展开更多
关键词 圆形packing问题 模拟退火算法 启发式策略 梯度法 布局 矩形区域
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一种求解不等圆Packing问题的改进遗传模拟退火算法 被引量:11
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作者 张维 杨康宁 张民 《西北工业大学学报》 EI CAS CSCD 北大核心 2017年第6期1033-1039,共7页
不等圆Packing问题是求解半径不等的小圆在一个圆形容器内的优良布局,使得圆形容器的半径值最小。该问题属于NP hard的组合优化问题,使用传统的数学方法很难求解,提出了一种解决该问题的改进遗传模拟退火算法,该算法通过计算生成一个合... 不等圆Packing问题是求解半径不等的小圆在一个圆形容器内的优良布局,使得圆形容器的半径值最小。该问题属于NP hard的组合优化问题,使用传统的数学方法很难求解,提出了一种解决该问题的改进遗传模拟退火算法,该算法通过计算生成一个合适大小的初始圆形容器来指导初始种群的生成,以减少搜索范围,采用最优保存策略来保证历代的最优解不被破坏,结合了遗传算法全局搜索能力强的优势和模拟退火算法局部搜索能力强的优势,改进了算法的搜索能力。最后通过算例验证,该算法有效地提高了圆形容器的面积利用率,证明了改进遗传模拟退火算法的有效性。 展开更多
关键词 不等圆packing问题 NP HARD 遗传算法 模拟退火算法 最优保存策略
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A More Effective Technique of Design Synthesis for MEMS with Expected Performance
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作者 Shuxun Chen 《Intelligent Information Management》 2010年第3期204-211,共8页
A design synthesis technique based on sensitivity for Micro-Electro-Mechanical Systems (MEMS) proposed. This new technique can be called Sensitivity-Based Direct Solution Algorithm (DSA) of design synthesis for MEMS w... A design synthesis technique based on sensitivity for Micro-Electro-Mechanical Systems (MEMS) proposed. This new technique can be called Sensitivity-Based Direct Solution Algorithm (DSA) of design synthesis for MEMS with expected performance. Design synthesis with expected performance is regarded as a reverse problem of MEMS analysis. Behavior equation group can be educed from analysis equations. Solving the behavior equation group only need L design variables, L is number of desired behaviors. This behavior equation group can be solved using any solution algorithm of non-linear equation group. Newton Iteration Method based on sensitivity is adopted. Comparing with Genetic Optimization Algorithm (GA) and Simulated Annealing Optimization Algorithm (SA), computational workload of DSA is greatly decreased. For instance, synthesis computation of a meandering resonator only needs 4 iterations (17 analyses);computational time is decreased from 7~8 hours to less than 30 seconds. 展开更多
关键词 MEMS design Synthesis Direct Solution algorithm genetic algorithms simulated annealing Comparing
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不确定需求下异构电动物流车辆的路径优化研究 被引量:1
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作者 初良勇 王嘉宁 丁静茹 《计算机工程与应用》 北大核心 2025年第8期294-306,共13页
随着国家政策的推动和新能源技术的发展,电动物流车辆在财政补贴、限行政策、节能环保和运营成本等方面相较于传统燃油车辆展现出显著优势,因而越来越多的物流企业在城市配送中采用电动物流车。研究了异构电动车队在应对客户需求不确定... 随着国家政策的推动和新能源技术的发展,电动物流车辆在财政补贴、限行政策、节能环保和运营成本等方面相较于传统燃油车辆展现出显著优势,因而越来越多的物流企业在城市配送中采用电动物流车。研究了异构电动车队在应对客户需求不确定性和时间窗要求时的路径优化问题,并针对电动车辆续航里程有限和配送途中充电等实际约束,构建了一个以最小化配送总成本为目标的优化模型。为有效求解该模型,提出了一种结合遗传算法与模拟退火算法的混合方法。实验结果表明,所提出的模型和算法能够显著降低物流配送成本,并为交通和物流企业解决路径优化问题提供了有力的理论支持。 展开更多
关键词 车辆路径问题 异构车型 电动物流 遗传-模拟退火算法
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基于多旅行商问题建模的地铁乘务排班计划优化
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作者 薛锋 肖恩 +2 位作者 杨颖 王金成 罗建 《交通运输系统工程与信息》 北大核心 2025年第2期261-272,共12页
针对地铁乘务排班计划问题,本文借鉴多旅行商问题的模型特点进行建模,用排班问题中的乘务片段表示旅行商问题中的城市,乘务片段的接续时间表示旅行商问题中城市间的距离,综合考虑各班次最长在班时间、连续值乘时间、间休时间和就餐时间... 针对地铁乘务排班计划问题,本文借鉴多旅行商问题的模型特点进行建模,用排班问题中的乘务片段表示旅行商问题中的城市,乘务片段的接续时间表示旅行商问题中城市间的距离,综合考虑各班次最长在班时间、连续值乘时间、间休时间和就餐时间等约束,以乘务片段接续时间最短和乘务人员工作时间方差最小为优化目标,建立非线性0-1整数规划模型。基于多旅行商问题的求解思路,设计遗传模拟退火混合算法求解模型。最后,以成都地铁5号线为例验证算法,并与多种优化算法编制方案进行对比分析。实例分析结果显示,相比于ADMM(交替方向乘子法)算法和G-SPFA(基于贪婪思想的最短路)算法,本文优化后的排班方案在乘务任务数量优化率分别为17.9%和23.1%,接续时间方面的优化率分别为15.8%和12.1%,能够有效降低企业的人力成本,提高司乘员的值乘效率,验证了模型的有效性。 展开更多
关键词 城市交通 多旅行商问题 遗传模拟退火算法 乘务排班计划
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基于混合遗传模拟退火算法的无人机货舱装载优化研究 被引量:1
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作者 王彦兆 殷旅江 +1 位作者 沈明辰 张驰 《包装工程》 北大核心 2025年第9期250-259,共10页
目的旨在解决无人机货舱三维装箱空间利用率的优化问题,突破传统经验装箱法的空间利用瓶颈,实现多约束条件下的高效装载。方法结合无人机装载货物高支撑度的要求,构建高稳定性的数学模型,采用遗传算法和模拟退火算法相结合的混合优化方... 目的旨在解决无人机货舱三维装箱空间利用率的优化问题,突破传统经验装箱法的空间利用瓶颈,实现多约束条件下的高效装载。方法结合无人机装载货物高支撑度的要求,构建高稳定性的数学模型,采用遗传算法和模拟退火算法相结合的混合优化方法,通过混沌映射生成初始种群,然后采用两段式编码,结合动态空间分割法进行装载优化,最终迭代出最优装载方案。结果采用提出的混合算法对某汽车零部件企业的20种共390件零件进行仿真实验,在满足支撑约束与其他约束的前提下与原算法进行对比,空间利用率提高5%,可见装箱效果显著优于其他算法。结论改进的算法装载效率高,稳定性强,为无人机货舱装载问题提供一种有效的优化方法;它面对各种货物均能保证较优的装载效果,解决了某企业经验装箱法中存在的空间利用问题,同时为以后研究无人机装箱问题提供了借鉴,具有较好的应用前景。 展开更多
关键词 无人机 三维装箱 遗传算法 模拟退火算法
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地铁-货车联运的地铁转运站选址算法比较 被引量:1
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作者 孙颖杰 吴芳 刘亚丽 《物流科技》 2025年第2期28-32,共5页
针对传统算法解决复杂非线性规划收敛速度慢、寻优精确度低等问题,文章介绍并设计了模拟退火算法、自适应免疫遗传算法以及Python调用COPT求解器三种算法对地铁-货车联运的地铁转运站选址问题进行求解。最后,以西安市地铁网络为例,分别... 针对传统算法解决复杂非线性规划收敛速度慢、寻优精确度低等问题,文章介绍并设计了模拟退火算法、自适应免疫遗传算法以及Python调用COPT求解器三种算法对地铁-货车联运的地铁转运站选址问题进行求解。最后,以西安市地铁网络为例,分别运用这三种算法对地铁转运站选址问题进行求解,并对求解结果进行比较分析。结果表明,Python调用COPT求解器的算法在解决地铁转运站选址问题时,相较于自适应免疫遗传算法和模拟退火算法有着卓越的计算效能和精确度。 展开更多
关键词 地铁货运 选址问题 COPT求解器 自适应免疫遗传算法 模拟退火算法
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需求可离散拆分电动汽车充电策略和路径优化问题 被引量:5
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作者 邢玉伟 王展华 杨华龙 《控制与决策》 北大核心 2025年第3期987-995,共9页
针对电动汽车的物流配送问题,考虑到客户需求可以拆分成若干离散订单的特性,以最小化电动汽车的固定成本、路径行驶成本、充电成本以及时间窗惩罚成本为目标,构建需求可离散拆分的多车型电动汽车充电策略和路径优化模型.针对模型特点,... 针对电动汽车的物流配送问题,考虑到客户需求可以拆分成若干离散订单的特性,以最小化电动汽车的固定成本、路径行驶成本、充电成本以及时间窗惩罚成本为目标,构建需求可离散拆分的多车型电动汽车充电策略和路径优化模型.针对模型特点,设计改进的遗传-模拟退火算法.为验证算法的有效性进行算例分析,结果表明,考虑需求可离散拆分的情况下,该算法能够快速优化出电动汽车的充电策略和配送路径,其中部分充电策略不仅能够缩短充电时间,而且能够大幅度降低总成本.敏感性分析结果显示,充电等待时间增加会导致两种策略的时间窗惩罚成本上升,但部分充电策略的成本增速显著低于完全充电策略,尤其适用于充电等待时间较长的情况.所做的研究能够为物流企业电动汽车配送优化提供重要参考. 展开更多
关键词 电动汽车 充电策略 车辆路径优化 需求可离散拆分 改进的遗传-模拟退火算法
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基于资源最优化的复杂系统模块化设计优化方法
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作者 张荣夫 王金强 刘敏霞 《空天防御》 2025年第3期86-94,103,共10页
为了解决复杂系统模块化设计中资源最优化问题,提出一种融合模糊C均值聚类、遗传算法、模拟退火和免疫选择机制的混合优化方法。该方法首先利用模糊C均值聚类算法分析组件功能结构相关性,生成初始模块划分,然后采用改进遗传算法对模块... 为了解决复杂系统模块化设计中资源最优化问题,提出一种融合模糊C均值聚类、遗传算法、模拟退火和免疫选择机制的混合优化方法。该方法首先利用模糊C均值聚类算法分析组件功能结构相关性,生成初始模块划分,然后采用改进遗传算法对模块划分进行优化。模拟退火的融入可显著增强算法的局部搜索能力,免疫选择机制则通过精英保留、基因交换和插入突变等操作,维持种群多样性,以进一步提高算法的全局搜索能力和稳定性。结果表明,本文所提方法在模块的内聚度和耦合度优化方面具有显著优势,能有效提高模块化设计的质量和效率;同时在计算速度和优化精度之间取得良好平衡,尤其适用于对独立性、可扩展性和成本控制要求较高的工业场景。 展开更多
关键词 模块化设计 模糊C均值聚类 混合遗传算法 模拟退火
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基于遗传算法和模拟退火算法的布局问题研究 被引量:16
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作者 肖美华 王命延 +3 位作者 王洪发 彭正文 肖飞 何凌云 《计算机工程与应用》 CSCD 北大核心 2003年第36期70-72,共3页
文章在介绍遗传算法和模拟退火算法的基本理论及主要特点的基础上,提出了一个基于遗传算法和模拟退火算法的求解布局问题(矩形件排样优化)算法,并通过算例验证了该算法的有效性。
关键词 遗传算法 模拟退火算法 布局问题 选择策略
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基于遗传模拟退火算法的矩形件优化排样 被引量:25
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作者 杨卫波 王万良 +1 位作者 张景玲 赵燕伟 《计算机工程与应用》 CSCD 北大核心 2016年第7期259-263,共5页
为了探索更高效的矩形件优化排样方法,提出了一种改进的自适应遗传模拟退火算法。设计了基于矩形件的排样次序及旋转变量的两层染色体编码方法,并采用基于临界多边形的BL定位策略实现矩形件的布局;通过构造启发式算法生成排样初始种群,... 为了探索更高效的矩形件优化排样方法,提出了一种改进的自适应遗传模拟退火算法。设计了基于矩形件的排样次序及旋转变量的两层染色体编码方法,并采用基于临界多边形的BL定位策略实现矩形件的布局;通过构造启发式算法生成排样初始种群,然后各个种群之间通过相互竞争实现优秀个体的迁移与共享,最终搜索到最优解。标准测试问题的实验结果验证了所提算法的可行性与有效性。 展开更多
关键词 矩形件排样 启发式布局算法 临界多边形 模拟退火算法 自适应遗传算法
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