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Cascade refrigeration system synthesis based on hybrid simulated annealing and particle swarm optimization algorithm 被引量:3
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作者 Danlei Chen Yiqing Luo Xigang Yuan 《Chinese Journal of Chemical Engineering》 SCIE EI CAS CSCD 2023年第6期244-255,共12页
Cascade refrigeration system(CRS)can meet a wider range of refrigeration temperature requirements and is more energy efficient than single-refrigerant refrigeration system,making it more widely used in low-temperature... Cascade refrigeration system(CRS)can meet a wider range of refrigeration temperature requirements and is more energy efficient than single-refrigerant refrigeration system,making it more widely used in low-temperature industry processes.The synthesis of a CRS with simultaneous consideration of heat integration between refrigerant and process streams is challenging but promising for significant cost saving and reduction of carbon emission.This study presented a stochastic optimization method for the synthesis of CRS.An MINLP model was formulated based on the superstructure developed for the CRS,and an optimization framework was proposed,where simulated annealing algorithm was used to evolve the numbers of pressure/temperature levels for all sub-refrigeration systems,and particle swarm optimization algorithm was employed to optimize the continuous variables.The effectiveness of the proposed methodology was verified by a case study of CRS optimization in an ethylene plant with 21.89%the total annual cost saving. 展开更多
关键词 Optimal design Process systems particle swarm optimization simulated annealing Mathematical modeling
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Dependent task assignment algorithm based on particle swarm optimization and simulated annealing in ad-hoc mobile cloud 被引量:3
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作者 Huang Bonan Xia Weiwei +4 位作者 Zhang Yueyue Zhang Jing Zou Qian Yan Feng Shen Lianfeng 《Journal of Southeast University(English Edition)》 EI CAS 2018年第4期430-438,共9页
In order to solve the problem of efficiently assigning tasks in an ad-hoc mobile cloud( AMC),a task assignment algorithm based on the heuristic algorithm is proposed. The proposed task assignment algorithm based on pa... In order to solve the problem of efficiently assigning tasks in an ad-hoc mobile cloud( AMC),a task assignment algorithm based on the heuristic algorithm is proposed. The proposed task assignment algorithm based on particle swarm optimization and simulated annealing( PSO-SA) transforms the dependencies between tasks into a directed acyclic graph( DAG) model. The number in each node represents the computation workload of each task and the number on each edge represents the workload produced by the transmission. In order to simulate the environment of task assignment in AMC,mathematical models are developed to describe the dependencies between tasks and the costs of each task are defined. PSO-SA is used to make the decision for task assignment and for minimizing the cost of all devices,which includes the energy consumption and time delay of all devices.PSO-SA also takes the advantage of both particle swarm optimization and simulated annealing by selecting an optimal solution with a certain probability to avoid falling into local optimal solution and to guarantee the convergence speed. The simulation results show that compared with other existing algorithms,the PSO-SA has a smaller cost and the result of PSO-SA can be very close to the optimal solution. 展开更多
关键词 ad-hoc mobile cloud task assignment algorithm directed acyclic graph particle swarm optimization simulated annealing
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Location and Capacity Determination Method of Electric Vehicle Charging Station Based on Simulated Annealing Immune Particle Swarm Optimization 被引量:3
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作者 Jiulong Sun Yanbo Che +2 位作者 Ting Yang Jian Zhang Yibin Cai 《Energy Engineering》 EI 2023年第2期367-384,共18页
As the number of electric vehicles(EVs)continues to grow and the demand for charging infrastructure is also increasing,how to improve the charging infrastructure has become a bottleneck restricting the development of ... As the number of electric vehicles(EVs)continues to grow and the demand for charging infrastructure is also increasing,how to improve the charging infrastructure has become a bottleneck restricting the development of EVs.In other words,reasonably planning the location and capacity of charging stations is important for development of the EV industry and the safe and stable operation of the power system.Considering the construction and maintenance of the charging station,the distribution network loss of the charging station,and the economic loss on the user side of the EV,this paper takes the node and capacity of charging station planning as control variables and the minimum cost of system comprehensive planning as objective function,and thus proposes a location and capacity planning model for the EV charging station.Based on the problems of low efficiency and insufficient global optimization ability of the current algorithm,the simulated annealing immune particle swarm optimization algorithm(SA-IPSO)is adopted in this paper.The simulated annealing algorithm is used in the global update of the particle swarm optimization(PSO),and the immune mechanism is introduced to participate in the iterative update of the particles,so as to improve the speed and efficiency of PSO.Voronoi diagram is used to divide service area of the charging station,and a joint solution process of Voronoi diagram and SA-IPSO is proposed.By example analysis,the results show that the optimal solution corresponding to the optimisation method proposed in this paper has a low overall cost,while the average charging waiting time is only 1.8 min and the charging pile utilisation rate is 75.5%.The simulation comparison verifies that the improved algorithm improves the operational efficiency by 18.1%and basically does not fall into local convergence. 展开更多
关键词 Electric vehicle charging station location selection and capacity configuration loss of distribution system simulated annealing immune particle swarm optimization Voronoi diagram
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Hybrid discrete particle swarm optimization algorithm for capacitated vehicle routing problem 被引量:27
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作者 CHEN Ai-ling YANG Gen-ke WU Zhi-ming 《Journal of Zhejiang University-Science A(Applied Physics & Engineering)》 SCIE EI CAS CSCD 2006年第4期607-614,共8页
Capacitated vehicle routing problem (CVRP) is an NP-hard problem. For large-scale problems, it is quite difficult to achieve an optimal solution with traditional optimization methods due to the high computational comp... Capacitated vehicle routing problem (CVRP) is an NP-hard problem. For large-scale problems, it is quite difficult to achieve an optimal solution with traditional optimization methods due to the high computational complexity. A new hybrid ap- proximation algorithm is developed in this work to solve the problem. In the hybrid algorithm, discrete particle swarm optimiza- tion (DPSO) combines global search and local search to search for the optimal results and simulated annealing (SA) uses certain probability to avoid being trapped in a local optimum. The computational study showed that the proposed algorithm is a feasible and effective approach for capacitated vehicle routing problem, especially for large scale problems. 展开更多
关键词 Capacitated routing problem Discrete particle swarm optimization (DPSO) simulated annealing (SA)
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Scenario-oriented hybrid particle swarm optimization algorithm for robust economic dispatch of power system with wind power 被引量:3
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作者 WANG Bing ZHANG Pengfei +2 位作者 HE Yufeng WANG Xiaozhi ZHANG Xianxia 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2022年第5期1143-1150,共8页
An economic dispatch problem for power system with wind power is discussed.Using discrete scenario to describe uncertain wind powers,a threshold is given to identify bad scenario set.The bad-scenario-set robust econom... An economic dispatch problem for power system with wind power is discussed.Using discrete scenario to describe uncertain wind powers,a threshold is given to identify bad scenario set.The bad-scenario-set robust economic dispatch model is established to minimize the total penalties on bad scenarios.A specialized hybrid particle swarm optimization(PSO)algorithm is developed through hybridizing simulated annealing(SA)operators.The SA operators are performed according to a scenario-oriented adaptive search rule in a neighborhood which is constructed based on the unit commitment constraints.Finally,an experiment is conducted.The computational results show that the developed algorithm outperforms the existing algorithms. 展开更多
关键词 wind power robust economic dispatch SCENARIO simulated annealing(SA) particle swarm optimization(PSO)
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APPLYING PARTICLE SWARM OPTIMIZATION TO JOB-SHOPSCHEDULING PROBLEM 被引量:5
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作者 XiaWeijun WuZhiming ZhangWei YangGenke 《Chinese Journal of Mechanical Engineering》 SCIE EI CAS CSCD 2004年第3期437-441,共5页
A new heuristic algorithm is proposed for the problem of finding the minimummakespan in the job-shop scheduling problem. The new algorithm is based on the principles ofparticle swarm optimization (PSO). PSO employs a ... A new heuristic algorithm is proposed for the problem of finding the minimummakespan in the job-shop scheduling problem. The new algorithm is based on the principles ofparticle swarm optimization (PSO). PSO employs a collaborative population-based search, which isinspired by the social behavior of bird flocking. It combines local search (by self experience) andglobal search (by neighboring experience), possessing high search efficiency. Simulated annealing(SA) employs certain probability to avoid becoming trapped in a local optimum and the search processcan be controlled by the cooling schedule. By reasonably combining these two different searchalgorithms, a general, fast and easily implemented hybrid optimization algorithm, named HPSO, isdeveloped. The effectiveness and efficiency of the proposed PSO-based algorithm are demonstrated byapplying it to some benchmark job-shop scheduling problems and comparing results with otheralgorithms in literature. Comparing results indicate that PSO-based algorithm is a viable andeffective approach for the job-shop scheduling problem. 展开更多
关键词 Job-shop scheduling problem particle swarm optimization simulated annealingHybrid optimization algorithm
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A new support vector machine optimized by improved particle swarm optimization and its application 被引量:3
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作者 李翔 杨尚东 乞建勋 《Journal of Central South University of Technology》 EI 2006年第5期568-572,共5页
A new support vector machine (SVM) optimized by an improved particle swarm optimization (PSO) combined with simulated annealing algorithm (SA) was proposed. By incorporating with the simulated annealing method, ... A new support vector machine (SVM) optimized by an improved particle swarm optimization (PSO) combined with simulated annealing algorithm (SA) was proposed. By incorporating with the simulated annealing method, the global searching capacity of the particle swarm optimization(SAPSO) was enchanced, and the searching capacity of the particle swarm optimization was studied. Then, the improyed particle swarm optimization algorithm was used to optimize the parameters of SVM (c,σ and ε). Based on the operational data provided by a regional power grid in north China, the method was used in the actual short term load forecasting. The results show that compared to the PSO-SVM and the traditional SVM, the average time of the proposed method in the experimental process reduces by 11.6 s and 31.1 s, and the precision of the proposed method increases by 1.24% and 3.18%, respectively. So, the improved method is better than the PSO-SVM and the traditional SVM. 展开更多
关键词 support vector machine particle swarm optimization algorithm short-term load forecasting simulated annealing
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Structural optimization of Au–Pd bimetallic nanoparticles with improved particle swarm optimization method 被引量:1
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作者 邵桂芳 朱梦 +4 位作者 上官亚力 李文然 张灿 王玮玮 李玲 《Chinese Physics B》 SCIE EI CAS CSCD 2017年第6期131-139,共9页
Due to the dependence of the chemical and physical properties of the bimetallic nanoparticles(NPs) on their structures,a fundamental understanding of their structural characteristics is crucial for their syntheses a... Due to the dependence of the chemical and physical properties of the bimetallic nanoparticles(NPs) on their structures,a fundamental understanding of their structural characteristics is crucial for their syntheses and wide applications. In this article, a systematical atomic-level investigation of Au–Pd bimetallic NPs is conducted by using the improved particle swarm optimization(IPSO) with quantum correction Sutton–Chen potentials(Q-SC) at different Au/Pd ratios and different sizes. In the IPSO, the simulated annealing is introduced into the classical particle swarm optimization(PSO) to improve the effectiveness and reliability. In addition, the influences of initial structure, particle size and composition on structural stability and structural features are also studied. The simulation results reveal that the initial structures have little effects on the stable structures, but influence the converging rate greatly, and the convergence rate of the mixing initial structure is clearly faster than those of the core-shell and phase structures. We find that the Au–Pd NPs prefer the structures with Au-rich in the outer layers while Pd-rich in the inner ones. Especially, when the Au/Pd ratio is 6:4, the structure of the nanoparticle(NP) presents a standardized Pd(core) Au(shell) structure. 展开更多
关键词 bimetallic nanoparticles stable structures particle swarm optimization (PSO) simulated annealing
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An efficient hybrid evolutionary optimization algorithm based on PSO and SA for clustering 被引量:11
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作者 Taher NIKNAM Babak AMIRI +1 位作者 Javad OLAMAEI Ali AREFI 《Journal of Zhejiang University-Science A(Applied Physics & Engineering)》 SCIE EI CAS CSCD 2009年第4期512-519,共8页
The K-means algorithm is one of the most popular techniques in clustering. Nevertheless, the performance of the Kmeans algorithm depends highly on initial cluster centers and converges to local minima. This paper prop... The K-means algorithm is one of the most popular techniques in clustering. Nevertheless, the performance of the Kmeans algorithm depends highly on initial cluster centers and converges to local minima. This paper proposes a hybrid evolutionary programming based clustering algorithm, called PSO-SA, by combining particle swarm optimization (PSO) and simulated annealing (SA). The basic idea is to search around the global solution by SA and to increase the information exchange among particles using a mutation operator to escape local optima. Three datasets, Iris, Wisconsin Breast Cancer, and Ripley's Glass, have been considered to show the effectiveness of the proposed clustering algorithm in providing optimal clusters. The simulation results show that the PSO-SA clustering algorithm not only has a better response but also converges more quickly than the K-means, PSO, and SA algorithms. 展开更多
关键词 simulated annealing (SA) Data clustering Hybrid evolutionary optimization algorithm K-means clustering Parti-cle swarm optimization (PSO)
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Application of DSAPSO Algorithm in Distribution Network Reconfiguration with Distributed Generation 被引量:1
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作者 Caixia Tao Shize Yang Taiguo Li 《Energy Engineering》 EI 2024年第1期187-201,共15页
With the current integration of distributed energy resources into the grid,the structure of distribution networks is becoming more complex.This complexity significantly expands the solution space in the optimization p... With the current integration of distributed energy resources into the grid,the structure of distribution networks is becoming more complex.This complexity significantly expands the solution space in the optimization process for network reconstruction using intelligent algorithms.Consequently,traditional intelligent algorithms frequently encounter insufficient search accuracy and become trapped in local optima.To tackle this issue,a more advanced particle swarm optimization algorithm is proposed.To address the varying emphases at different stages of the optimization process,a dynamic strategy is implemented to regulate the social and self-learning factors.The Metropolis criterion is introduced into the simulated annealing algorithm to occasionally accept suboptimal solutions,thereby mitigating premature convergence in the population optimization process.The inertia weight is adjusted using the logistic mapping technique to maintain a balance between the algorithm’s global and local search abilities.The incorporation of the Pareto principle involves the consideration of network losses and voltage deviations as objective functions.A fuzzy membership function is employed for selecting the results.Simulation analysis is carried out on the restructuring of the distribution network,using the IEEE-33 node system and the IEEE-69 node system as examples,in conjunction with the integration of distributed energy resources.The findings demonstrate that,in comparison to other intelligent optimization algorithms,the proposed enhanced algorithm demonstrates a shorter convergence time and effectively reduces active power losses within the network.Furthermore,it enhances the amplitude of node voltages,thereby improving the stability of distribution network operations and power supply quality.Additionally,the algorithm exhibits a high level of generality and applicability. 展开更多
关键词 Reconfiguration of distribution network distributed generation particle swarm optimization algorithm simulated annealing algorithm active network loss
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基于ASAPSO混合算法的双脉冲变轨拦截轨迹优化
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作者 杨慧婷 王庆辉 《空间控制技术与应用》 北大核心 2025年第1期75-84,共10页
针对航天器Lambert双脉冲变轨拦截问题,引入一种自适应模拟退火粒子群(ASAPSO)算法,旨在通过优化两次脉冲的速度增量总和,以实现航天器变轨所需的最小燃料消耗.首先,基于Lambert固定时间飞行定理构建了变轨拦截的数学模型,假设航天器在... 针对航天器Lambert双脉冲变轨拦截问题,引入一种自适应模拟退火粒子群(ASAPSO)算法,旨在通过优化两次脉冲的速度增量总和,以实现航天器变轨所需的最小燃料消耗.首先,基于Lambert固定时间飞行定理构建了变轨拦截的数学模型,假设航天器在沿初始轨道飞行一周内机动追逐目标,将两次脉冲变轨的时刻设为决策变量,将燃料消耗量作为适应度函数,并采用ASAPSO混合算法作为优化策略.其次,为了验证ASAPSO算法的有效性,针对同一模型分别采用了传统粒子群算法(PSO)、模拟退火粒子群算法(SAPSO)以及强化学习粒子群算法(RLPSO)进行优化,对比发现ASAPSO算法在较少的迭代次数内就能快速收敛至全局最优解,极大地减少了处理轨道拦截问题的计算量和时间.该算法结合了PSO的全局搜索能力和SA的局部优化特性,为航天器Lambert双脉冲变轨拦截问题提供了一种更为高效、精确的解决方案. 展开更多
关键词 Lambert变轨拦截 粒子群算法 模拟退火算法 参数自适应
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基于GASAPSO-RF算法的医疗器械故障检测研究 被引量:2
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作者 袁鉴辞 李静 +1 位作者 鲁浩 张磊 《电子设计工程》 2025年第9期90-94,101,共6页
针对随机森林模型检测医疗器械故障精度不足的问题,提出了基于粒子群与随机森林的GASAPSO-RF医疗器械故障检测方法。改进粒子群算法将选择、交叉、变异操作融入粒子群迭代过程,利用选择操作优选出粒子群的初始群体,通过交叉和变异提高... 针对随机森林模型检测医疗器械故障精度不足的问题,提出了基于粒子群与随机森林的GASAPSO-RF医疗器械故障检测方法。改进粒子群算法将选择、交叉、变异操作融入粒子群迭代过程,利用选择操作优选出粒子群的初始群体,通过交叉和变异提高种群多样性;利用模拟退火思想优化粒子杂交过程,以一定概率接受最差解,帮助粒子群算法跳出局部最优解;利用改进的PSO算法搜索随机森林模型“决策树数量”与“决策树最大深度”参数的最优值,构建高精准度的GASAPSORF医疗器械故障检测模型,以采集的医疗器械特征量作为输入,获得故障检测类型。对比试验结果表明,GASAPSO算法性能最佳,利于随机森林参数进行搜索;GASAPSO-RF模型有效提升了随机森林故障检测模型的精准度,优化了故障检测效率,为医疗器械故障智能检测提供了新思路。 展开更多
关键词 粒子群 遗传算法 模拟退火 随机森林 杂交 故障检测
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t-SNE降维融合SAPSO-BP的飞机电弧故障识别
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作者 屈慧妍 李娟 +2 位作者 戴洪德 王希彬 张依 《电子测量与仪器学报》 北大核心 2025年第9期266-276,共11页
针对单个特征识别故障电弧时特征的阈值难以确定、且难以设置适用于不同负载的统一阈值等问题,为更准确高效地检测不同负载下的串联电弧故障,提出基于t-分布随机邻域嵌入(t-SNE)和模拟退火粒子群算法优化BP神经网络(SAPSO-BP)结合的多... 针对单个特征识别故障电弧时特征的阈值难以确定、且难以设置适用于不同负载的统一阈值等问题,为更准确高效地检测不同负载下的串联电弧故障,提出基于t-分布随机邻域嵌入(t-SNE)和模拟退火粒子群算法优化BP神经网络(SAPSO-BP)结合的多特征故障电弧识别方法。首先,针对故障电弧电流高频分量丰富的特点,通过提取电流频率的变异系数改进传统的变异系数特征,构造时频域特征检测故障电弧,结果表明改进后的变异系数(CV)对不同负载的平均识别准确率达到96%。其次,继续提取小波包细节分量以及能量熵等时频域特征与CV进行多特征融合,共同识别故障电弧。在融合过程中使用多种非线性降维算法对多维特征进行降维,并进行聚类可视化对比,发现使用t-SNE降维将多维特征降至三维空间对故障电弧的区分度最高。最后,将降维后的特征输入SAPSO-BP进行训练,并设计消融实验验证了提出方法的识别性能与鲁棒性。结果表明,融合算法tSNE-SAPSO-BP在不同负载上的识别性能较单个特征的识别准确率分别提升了3.2%、16.8%、27.66%、33.5%。t-SNE降维与聚类很好地处理了各特征间的非线性相关性,为融合机器学习方法识别故障电弧提供了关键特征信息。 展开更多
关键词 电弧故障识别 特征提取 改进的变异系数特征 t-SNE算法 模拟退火粒子群算法
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面间煤柱掘进系统截割与钻锚机器人协同控制参数优化方法
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作者 毛清华 陈彦璋 +3 位作者 王川伟 马宏伟 张旭辉 薛旭升 《中国煤炭》 北大核心 2026年第1期92-102,共11页
针对面间煤柱巷道掘进系统截割与钻锚机器人协同控制参数优化难题,本文建立了截割与钻锚机器人协同控制参数优化模型,并提出一种基于模拟退火粒子群(SA-PSO)算法的协同控制参数优化模型求解方法。通过分析面间煤柱掘进系统截割与钻锚机... 针对面间煤柱巷道掘进系统截割与钻锚机器人协同控制参数优化难题,本文建立了截割与钻锚机器人协同控制参数优化模型,并提出一种基于模拟退火粒子群(SA-PSO)算法的协同控制参数优化模型求解方法。通过分析面间煤柱掘进系统截割与钻锚机器人协同控制需求,建立了截割与钻锚机器人协同控制参数优化模型,该模型以截割机器人的摆动速度、钻锚机器人的钻进速度和钻杆转速作为优化变量,以截割比能耗、钻比能耗和理论生产率所计算的综合性能指标为目标优化函数。为了得出截割与钻锚机器人协同控制参数优化模型的最优参数,提出一种基于模拟退火粒子群(SA-PSO)算法对该优化模型进行求解,得出全域截割阻抗下协同控制最优参数。为验证截割机器人和钻锚机器人协同控制参数优化效果,采用仿真软件EDEM、RecurDyn和Simulink构建多物理场联合仿真模型,在不同截割阻抗下进行对比验证,结果表明:优化后一个步距内“截割-钻锚”协同运行最大时间差为60 s,符合面间煤柱巷道掘进工艺要求;综合性能指标平均降低31.60%,提高了掘进效率并显著降低了掘进能耗。 展开更多
关键词 面间煤柱 截割与钻锚机器人 协同控制参数优化模型 模拟退火粒子群算法 截割阻抗
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隔离型三有源桥DC-DC变换器端口解耦及回流功率优化控制
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作者 陶海军 宋佳瑶 +1 位作者 赵蒙恩 张晨杰 《电机与控制学报》 北大核心 2026年第1期107-116,共10页
三有源桥DC-DC变换器广泛应用于光伏发电、电动汽车等高功率输电场合。然而,功率在传输过程中会在端口间产生耦合现象,这不仅降低了系统动态性能,还会导致功率流失。为此,设计一种三有源桥DC-DC变换器性能优化策略。该策略对移相方式进... 三有源桥DC-DC变换器广泛应用于光伏发电、电动汽车等高功率输电场合。然而,功率在传输过程中会在端口间产生耦合现象,这不仅降低了系统动态性能,还会导致功率流失。为此,设计一种三有源桥DC-DC变换器性能优化策略。该策略对移相方式进行优化,在传统双重移相的基础上进行改进,通过控制各端口全桥电压移相比的重合,提出一种新型双重移相控制方法。在此基础之上,引入模拟退火粒子群混合优化算法,以回流功率最小化为目标函数,经过对各个移相角的迭代筛选,最终计算出使回流功率达到全局最优的移相角组合。仿真和实验结果表明,该控制策略有效消除了端口间的耦合功率,显著降低了回流功率,提升了变换器的整体效率和动态响应速度,从而增强了系统的可靠性与工程适用性。 展开更多
关键词 三有源桥DC-DC变换器 新双重移相控制 解耦 回流功率 模拟退火粒子群算法
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基于SAPSO-BP神经网络的井下自适应定位算法 被引量:10
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作者 莫树培 唐琎 +1 位作者 杜永万 陈明 《工矿自动化》 北大核心 2019年第7期80-85,共6页
针对基于传统BP神经网络的井下定位算法存在收敛速度慢、易形成局部极值、在煤矿井下强时变性电磁环境中定位误差大等问题,提出了一种基于模拟退火思想的粒子群优化算法加BP神经网络(SAPSO-BP)的井下自适应定位算法。采用SAPSO算法优化B... 针对基于传统BP神经网络的井下定位算法存在收敛速度慢、易形成局部极值、在煤矿井下强时变性电磁环境中定位误差大等问题,提出了一种基于模拟退火思想的粒子群优化算法加BP神经网络(SAPSO-BP)的井下自适应定位算法。采用SAPSO算法优化BP神经网络的初始权值和阈值,以加快训练收敛速度,使之到达全局最优;通过安装在井下巷道中的无线校准器采集目标点接收信号强度指示(RSSI)值,采用自适应动态校准方法对RSSI值进行实时校准,以减小强时变性电磁环境对定位精度的影响;最后利用SAPSO-BP神经网络估算出目标点位置坐标。实验结果表明,该算法的定位误差在2m内的置信概率为77.54%,平均误差为1.53m,定位性能优于未校准SAPSO-BP神经网络算法、PSO-BP神经网络算法、BP神经网络算法。 展开更多
关键词 井下人员定位 自适应定位 模拟退火思想的粒子群优化算法 sapso-BP神经网络 自适应动态校准
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基于SAPSO优化灰色神经网络的空中目标威胁估计 被引量:28
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作者 刘海波 王和平 沈立顶 《西北工业大学学报》 EI CAS CSCD 北大核心 2016年第1期25-32,共8页
针对目标威胁估计有很多不确定性的特点,分析了传统目标威胁估计方法和灰色神经网络初始参数随机选择的不足。采用模拟退火改进的粒子群算法代替梯度修正法,对网络参数初始值进行寻优,并通过该方法搜寻到的最优粒子,建立了基于模拟退火... 针对目标威胁估计有很多不确定性的特点,分析了传统目标威胁估计方法和灰色神经网络初始参数随机选择的不足。采用模拟退火改进的粒子群算法代替梯度修正法,对网络参数初始值进行寻优,并通过该方法搜寻到的最优粒子,建立了基于模拟退火粒子群算法优化的灰色神经网络模型,以提高预测模型的稳健性和精确度。与灰色神经网络和没有改进的粒子群灰色神经网络等方法进行比较,仿真实验结果表明,模拟退火粒子群优化的灰色神经网络具有很好的预测能力,可以准确地完成空中目标威胁估计。 展开更多
关键词 灰色系统 神经网络 模拟退火 粒子群算法 目标威胁估计
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基于SAPSO-LSSVM的蛋白质模型质量评估 被引量:4
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作者 王鲜芳 张悦 王俊美 《计算机应用研究》 CSCD 北大核心 2017年第5期1346-1348,1378,共4页
针对传统蛋白质模型质量评估没有考虑同源信息的问题,提出了一种基于LS-SVM评估蛋白质模型质量的方法。综合模拟退火(simulated annealing,SA)算法跳出局部最优解和粒子群(particle swarm optimization,PSO)算法收敛速度快的特点,提出... 针对传统蛋白质模型质量评估没有考虑同源信息的问题,提出了一种基于LS-SVM评估蛋白质模型质量的方法。综合模拟退火(simulated annealing,SA)算法跳出局部最优解和粒子群(particle swarm optimization,PSO)算法收敛速度快的特点,提出了模拟退火粒子群(SAPSO)算法。利用SAPSO算法来优化LS-SVM参数C和γ,最后得到最优模型来评估蛋白质模型质量。实验结果表明,经SAPSO优化LS-SVM参数所得到的模型评估预测误差较小,且预测值更稳定。 展开更多
关键词 蛋白质 模型质量 LS-SVM 模拟退火粒子群 参数优化
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基于SAPSO的灰色神经网络优化城市林研究 被引量:2
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作者 罗美淑 刘世勇 +1 位作者 孙强 夏春艳 《中国农机化学报》 北大核心 2018年第8期76-80,共5页
为构建合理的城市生态系统,亟待预测适宜的城市林(城市地带性植被)。城市林的预测是一个复杂的非线性问题,其发展有波动性,选择合理的拟合方法可以提高预测精度。以东北地区的城市林为例进行研究,筛选7个影响城市植被类型的因子,以传统... 为构建合理的城市生态系统,亟待预测适宜的城市林(城市地带性植被)。城市林的预测是一个复杂的非线性问题,其发展有波动性,选择合理的拟合方法可以提高预测精度。以东北地区的城市林为例进行研究,筛选7个影响城市植被类型的因子,以传统的灰色神经网络模型为基础,用粒子群算法初始网络参数,用模拟退火代替粒子群进行梯度修正,建立基于模拟退火算法(SA)和粒子群算法(PSO)的灰色神经网络模型。实验结果表明,改进后的模型预测拟合精度较高,残差均值为0.13,为城市林的预测提供一条新途径。 展开更多
关键词 城市林的预测 灰色系统 粒子群算法 模拟退火算法
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GA-SAPSO神经网络模型的构建 被引量:3
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作者 周建新 付传秀 《佳木斯大学学报(自然科学版)》 CAS 2011年第1期32-35,共4页
BP神经网络存在寻优参数多、收敛速度慢、易陷入局部极小的固有缺陷,为改进其网络性能,本文利用遗传-模拟退火粒子群算法(GA-SAPSO)对BP神经网络的初始权值及神经元阀值进行优化处理,并重新构建网络模型.实例仿真结果表明:所构建模型降... BP神经网络存在寻优参数多、收敛速度慢、易陷入局部极小的固有缺陷,为改进其网络性能,本文利用遗传-模拟退火粒子群算法(GA-SAPSO)对BP神经网络的初始权值及神经元阀值进行优化处理,并重新构建网络模型.实例仿真结果表明:所构建模型降低了BP网络结构的复杂性,避免了网络参数选取的盲目性,提高了网络的计算精度. 展开更多
关键词 遗传算法 模拟退火粒子群算法 BP网络 优化
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