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基于SSA-BP神经网络的库区边坡变形时序预测研究
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作者 武益民 张成良 张焕雄 《水电能源科学》 北大核心 2026年第1期177-181,共5页
针对库区边坡位移预测中存在的复杂非线性及不确定性难题,构建了一种基于智能优化算法的混合预测模型SSA-BP,旨在克服传统BP网络训练速度慢、易陷入局部最优的局限,从而提升边坡位移预测的精度和鲁棒性。通过麻雀搜索算法SSA对BP神经网... 针对库区边坡位移预测中存在的复杂非线性及不确定性难题,构建了一种基于智能优化算法的混合预测模型SSA-BP,旨在克服传统BP网络训练速度慢、易陷入局部最优的局限,从而提升边坡位移预测的精度和鲁棒性。通过麻雀搜索算法SSA对BP神经网络的初始权值和阈值进行全局优化,增强其收敛效率和适应性,并基于张家湾边坡历时5个月的真实位移监测数据进行训练。为验证模型优势,将SSA-BP模型与基于遗传算法(GA)和粒子群算法(PSO)优化的BP网络进行性能比对。研究表明,模型在24次迭代内快速收敛,显著优于对比模型,其均方根误差(RRMSE)、平均绝对百分比误差(M MAPE)、决定系数(R2)等评价指标均表现最佳。SSA-BP模型为库区边坡位移预测提供了一种可靠且高效的智能方法。 展开更多
关键词 库区边坡 位移变形预测 麻雀搜索算法(ssa) BP网络模型优化
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PID Steering Control Method of Agricultural Robot Based on Fusion of Particle Swarm Optimization and Genetic Algorithm
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作者 ZHAO Longlian ZHANG Jiachuang +2 位作者 LI Mei DONG Zhicheng LI Junhui 《农业机械学报》 北大核心 2026年第1期358-367,共10页
Aiming to solve the steering instability and hysteresis of agricultural robots in the process of movement,a fusion PID control method of particle swarm optimization(PSO)and genetic algorithm(GA)was proposed.The fusion... Aiming to solve the steering instability and hysteresis of agricultural robots in the process of movement,a fusion PID control method of particle swarm optimization(PSO)and genetic algorithm(GA)was proposed.The fusion algorithm took advantage of the fast optimization ability of PSO to optimize the population screening link of GA.The Simulink simulation results showed that the convergence of the fitness function of the fusion algorithm was accelerated,the system response adjustment time was reduced,and the overshoot was almost zero.Then the algorithm was applied to the steering test of agricultural robot in various scenes.After modeling the steering system of agricultural robot,the steering test results in the unloaded suspended state showed that the PID control based on fusion algorithm reduced the rise time,response adjustment time and overshoot of the system,and improved the response speed and stability of the system,compared with the artificial trial and error PID control and the PID control based on GA.The actual road steering test results showed that the PID control response rise time based on the fusion algorithm was the shortest,about 4.43 s.When the target pulse number was set to 100,the actual mean value in the steady-state regulation stage was about 102.9,which was the closest to the target value among the three control methods,and the overshoot was reduced at the same time.The steering test results under various scene states showed that the PID control based on the proposed fusion algorithm had good anti-interference ability,it can adapt to the changes of environment and load and improve the performance of the control system.It was effective in the steering control of agricultural robot.This method can provide a reference for the precise steering control of other robots. 展开更多
关键词 agricultural robot steering PID control particle swarm optimization algorithm genetic algorithm
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NTSSA:A Novel Multi-Strategy Enhanced Sparrow Search Algorithm with Northern Goshawk Optimization and Adaptive t-Distribution for Global Optimization
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作者 Hui Lv Yuer Yang Yifeng Lin 《Computers, Materials & Continua》 2025年第10期925-953,共29页
It is evident that complex optimization problems are becoming increasingly prominent,metaheuristic algorithms have demonstrated unique advantages in solving high-dimensional,nonlinear problems.However,the traditional ... It is evident that complex optimization problems are becoming increasingly prominent,metaheuristic algorithms have demonstrated unique advantages in solving high-dimensional,nonlinear problems.However,the traditional Sparrow Search Algorithm(SSA)suffers from limited global search capability,insufficient population diversity,and slow convergence,which often leads to premature stagnation in local optima.Despite the proposal of various enhanced versions,the effective balancing of exploration and exploitation remains an unsolved challenge.To address the previously mentioned problems,this study proposes a multi-strategy collaborative improved SSA,which systematically integrates four complementary strategies:(1)the Northern Goshawk Optimization(NGO)mechanism enhances global exploration through guided prey-attacking dynamics;(2)an adaptive t-distribution mutation strategy balances the transition between exploration and exploitation via dynamic adjustment of the degrees of freedom;(3)a dual chaotic initialization method(Bernoulli and Sinusoidal maps)increases population diversity and distribution uniformity;and(4)an elite retention strategy maintains solution quality and prevents degradation during iterations.These strategies cooperate synergistically,forming a tightly coupled optimization framework that significantly improves search efficiency and robustness.Therefore,this paper names it NTSSA:A Novel Multi-Strategy Enhanced Sparrow Search Algorithm with Northern Goshawk Optimization and Adaptive t-Distribution for Global Optimization.Extensive experiments on the CEC2005 benchmark set demonstrate that NTSSA achieves theoretical optimal accuracy on unimodal functions and significantly enhances global optimum discovery for multimodal functions by 2–5 orders of magnitude.Compared with SSA,GWO,ISSA,and CSSOA,NTSSA improves solution accuracy by up to 14.3%(F8)and 99.8%(F12),while accelerating convergence by approximately 1.5–2×.The Wilcoxon rank-sum test(p<0.05)indicates that NTSSA demonstrates a statistically substantial performance advantage.Theoretical analysis demonstrates that the collaborative synergy among adaptive mutation,chaos-based diversification,and elite preservation ensures both high convergence accuracy and global stability.This work bridges a key research gap in SSA by realizing a coordinated optimization mechanism between exploration and exploitation,offering a robust and efficient solution framework for complex high-dimensional problems in intelligent computation and engineering design. 展开更多
关键词 Sparrow search algorithm multi-strategy fusion T-DISTRIBUTION elite retention strategy wilcoxon rank-sum test
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Flood predictions from metrics to classes by multiple machine learning algorithms coupling with clustering-deduced membership degree
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作者 ZHAI Xiaoyan ZHANG Yongyong +5 位作者 XIA Jun ZHANG Yongqiang TANG Qiuhong SHAO Quanxi CHEN Junxu ZHANG Fan 《Journal of Geographical Sciences》 2026年第1期149-176,共28页
Accurate prediction of flood events is important for flood control and risk management.Machine learning techniques contributed greatly to advances in flood predictions,and existing studies mainly focused on predicting... Accurate prediction of flood events is important for flood control and risk management.Machine learning techniques contributed greatly to advances in flood predictions,and existing studies mainly focused on predicting flood resource variables using single or hybrid machine learning techniques.However,class-based flood predictions have rarely been investigated,which can aid in quickly diagnosing comprehensive flood characteristics and proposing targeted management strategies.This study proposed a prediction approach of flood regime metrics and event classes coupling machine learning algorithms with clustering-deduced membership degrees.Five algorithms were adopted for this exploration.Results showed that the class membership degrees accurately determined event classes with class hit rates up to 100%,compared with the four classes clustered from nine regime metrics.The nonlinear algorithms(Multiple Linear Regression,Random Forest,and least squares-Support Vector Machine)outperformed the linear techniques(Multiple Linear Regression and Stepwise Regression)in predicting flood regime metrics.The proposed approach well predicted flood event classes with average class hit rates of 66.0%-85.4%and 47.2%-76.0%in calibration and validation periods,respectively,particularly for the slow and late flood events.The predictive capability of the proposed prediction approach for flood regime metrics and classes was considerably stronger than that of hydrological modeling approach. 展开更多
关键词 flood regime metrics class prediction machine learning algorithms hydrological model
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Equivalent Modeling with Passive Filter Parameter Clustering for Photovoltaic Power Stations Based on a Particle Swarm Optimization K-Means Algorithm
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作者 Binjiang Hu Yihua Zhu +3 位作者 Liang Tu Zun Ma Xian Meng Kewei Xu 《Energy Engineering》 2026年第1期431-459,共29页
This paper proposes an equivalent modeling method for photovoltaic(PV)power stations via a particle swarm optimization(PSO)K-means clustering(KMC)algorithm with passive filter parameter clustering to address the compl... This paper proposes an equivalent modeling method for photovoltaic(PV)power stations via a particle swarm optimization(PSO)K-means clustering(KMC)algorithm with passive filter parameter clustering to address the complexities,simulation time cost and convergence problems of detailed PV power station models.First,the amplitude–frequency curves of different filter parameters are analyzed.Based on the results,a grouping parameter set for characterizing the external filter characteristics is established.These parameters are further defined as clustering parameters.A single PV inverter model is then established as a prerequisite foundation.The proposed equivalent method combines the global search capability of PSO with the rapid convergence of KMC,effectively overcoming the tendency of KMC to become trapped in local optima.This approach enhances both clustering accuracy and numerical stability when determining equivalence for PV inverter units.Using the proposed clustering method,both a detailed PV power station model and an equivalent model are developed and compared.Simulation and hardwarein-loop(HIL)results based on the equivalent model verify that the equivalent method accurately represents the dynamic characteristics of PVpower stations and adapts well to different operating conditions.The proposed equivalent modeling method provides an effective analysis tool for future renewable energy integration research. 展开更多
关键词 Photovoltaic power station multi-machine equivalentmodeling particle swarmoptimization K-means clustering algorithm
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GSLDWOA: A Feature Selection Algorithm for Intrusion Detection Systems in IIoT
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作者 Wanwei Huang Huicong Yu +3 位作者 Jiawei Ren Kun Wang Yanbu Guo Lifeng Jin 《Computers, Materials & Continua》 2026年第1期2006-2029,共24页
Existing feature selection methods for intrusion detection systems in the Industrial Internet of Things often suffer from local optimality and high computational complexity.These challenges hinder traditional IDS from... Existing feature selection methods for intrusion detection systems in the Industrial Internet of Things often suffer from local optimality and high computational complexity.These challenges hinder traditional IDS from effectively extracting features while maintaining detection accuracy.This paper proposes an industrial Internet ofThings intrusion detection feature selection algorithm based on an improved whale optimization algorithm(GSLDWOA).The aim is to address the problems that feature selection algorithms under high-dimensional data are prone to,such as local optimality,long detection time,and reduced accuracy.First,the initial population’s diversity is increased using the Gaussian Mutation mechanism.Then,Non-linear Shrinking Factor balances global exploration and local development,avoiding premature convergence.Lastly,Variable-step Levy Flight operator and Dynamic Differential Evolution strategy are introduced to improve the algorithm’s search efficiency and convergence accuracy in highdimensional feature space.Experiments on the NSL-KDD and WUSTL-IIoT-2021 datasets demonstrate that the feature subset selected by GSLDWOA significantly improves detection performance.Compared to the traditional WOA algorithm,the detection rate and F1-score increased by 3.68%and 4.12%.On the WUSTL-IIoT-2021 dataset,accuracy,recall,and F1-score all exceed 99.9%. 展开更多
关键词 Industrial Internet of Things intrusion detection system feature selection whale optimization algorithm Gaussian mutation
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Identification of small impact craters in Chang’e-4 landing areas using a new multi-scale fusion crater detection algorithm
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作者 FangChao Liu HuiWen Liu +7 位作者 Li Zhang Jian Chen DiJun Guo Bo Li ChangQing Liu ZongCheng Ling Ying-Bo Lu JunSheng Yao 《Earth and Planetary Physics》 2026年第1期92-104,共13页
Impact craters are important for understanding the evolution of lunar geologic and surface erosion rates,among other functions.However,the morphological characteristics of these micro impact craters are not obvious an... Impact craters are important for understanding the evolution of lunar geologic and surface erosion rates,among other functions.However,the morphological characteristics of these micro impact craters are not obvious and they are numerous,resulting in low detection accuracy by deep learning models.Therefore,we proposed a new multi-scale fusion crater detection algorithm(MSF-CDA)based on the YOLO11 to improve the accuracy of lunar impact crater detection,especially for small craters with a diameter of<1 km.Using the images taken by the LROC(Lunar Reconnaissance Orbiter Camera)at the Chang’e-4(CE-4)landing area,we constructed three separate datasets for craters with diameters of 0-70 m,70-140 m,and>140 m.We then trained three submodels separately with these three datasets.Additionally,we designed a slicing-amplifying-slicing strategy to enhance the ability to extract features from small craters.To handle redundant predictions,we proposed a new Non-Maximum Suppression with Area Filtering method to fuse the results in overlapping targets within the multi-scale submodels.Finally,our new MSF-CDA method achieved high detection performance,with the Precision,Recall,and F1 score having values of 0.991,0.987,and 0.989,respectively,perfectly addressing the problems induced by the lesser features and sample imbalance of small craters.Our MSF-CDA can provide strong data support for more in-depth study of the geological evolution of the lunar surface and finer geological age estimations.This strategy can also be used to detect other small objects with lesser features and sample imbalance problems.We detected approximately 500,000 impact craters in an area of approximately 214 km2 around the CE-4 landing area.By statistically analyzing the new data,we updated the distribution function of the number and diameter of impact craters.Finally,we identified the most suitable lighting conditions for detecting impact crater targets by analyzing the effect of different lighting conditions on the detection accuracy. 展开更多
关键词 impact craters Chang’e-4 landing area multi-scale automatic detection YOLO11 Fusion algorithm
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基于SSA-VMD-ICA的减速器振动信号降噪算法研究
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作者 徐涛 朱明强 《组合机床与自动化加工技术》 北大核心 2026年第1期19-24,31,共7页
减速器振动信号中包含大量无关信号,导致无法准确获得减速器的原始特征,提出了基于SSA(麻雀优化算法)、VMD(变分模态分解)和ICA(独立分量分析)的减速器振动信号降噪算法。由于VMD分解过程中,惩罚因子α和模态分解数K无法准确获得,设计... 减速器振动信号中包含大量无关信号,导致无法准确获得减速器的原始特征,提出了基于SSA(麻雀优化算法)、VMD(变分模态分解)和ICA(独立分量分析)的减速器振动信号降噪算法。由于VMD分解过程中,惩罚因子α和模态分解数K无法准确获得,设计了基于麻雀搜寻算法(SSA)的VMD分解算法,首先利用SSA优化VMD算法中的惩罚因子α和模态分解数K,再将振动信号进行VMD分解得到若干IMFs分量;将上述分量作为输入,利用FastICA再次进行去噪处理,分离出有效的故障特征分量,并去除大于阈值的独立成分后,进行信号的重构,得到降噪后的振动信号。通过对仿真实验数据和实际获得振动信号数据的降噪处理,结果表明提出的方法在去除减速器振动数据中的噪声信号与保留有效信号方面明显优于小波包分解与VMD分解。 展开更多
关键词 减速器振动 麻雀搜寻算法 VMD ICA 信号降噪
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基于SSA-ELM神经网络的室内可见光定位系统 被引量:1
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作者 贾科军 牛振 +3 位作者 于凯 张志聪 彭铎 曹明华 《光通信研究》 北大核心 2025年第1期13-17,共5页
【目的】针对极限学习机(ELM)神经网络在室内可见光定位(VLP)中收敛不稳定,易陷入局部最优状态,导致定位精度降低的问题,文章引入了麻雀搜索算法(SSA)确定ELM神经网络的初始权值和阈值,提出了SSA-ELM神经网络算法。【方法】首先,采集定... 【目的】针对极限学习机(ELM)神经网络在室内可见光定位(VLP)中收敛不稳定,易陷入局部最优状态,导致定位精度降低的问题,文章引入了麻雀搜索算法(SSA)确定ELM神经网络的初始权值和阈值,提出了SSA-ELM神经网络算法。【方法】首先,采集定位区域内接收信号强度(RSS)与位置信息作为指纹数据;然后,训练SSA-ELM神经网络并得到预测模型,将测试集数据输入预测模型得到待测位置的定位结果;最后,设计了仿真实验和测试平台。【结果】仿真表明,在立体空间模型中0、0.3、0.6和0.9 m 4个接收高度,平均误差分别为1.73、1.86、2.18和3.47 cm,与反向传播(BP)、SSA-BP和ELM定位算法相比,SSA-ELM神经网络算法定位精度分别提高了83.55%、45.71%和26.26%,定位时间分别降低了36.48%、17.69%和6.61%。实验测试表明,文章所提SSA-ELM神经网络算法的平均定位误差为3.75 cm,比未优化的ELM神经网络定位精度提高了16.38%。【结论】SSA对ELM神经网络具有明显的优化作用,能够显著降低定位误差,减少定位时间。 展开更多
关键词 可见光通信 室内定位 极限学习机神经网络 麻雀搜索算法
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基于RCMFFDE和SSA-RVM的旋转机械损伤检测模型 被引量:2
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作者 王显彬 孙阳 《机电工程》 北大核心 2025年第3期510-519,共10页
针对旋转机械系统的振动信号具有明显的非线性,严重影响故障特征提取从而导致其识别精度不佳的问题,建立了一种基于精细复合多尺度分数波动散布熵(RCMFFDE)、t-分布随机邻域嵌入(t-SNE)和麻雀搜索算法优化相关向量机(SSA-RVM)的旋转机... 针对旋转机械系统的振动信号具有明显的非线性,严重影响故障特征提取从而导致其识别精度不佳的问题,建立了一种基于精细复合多尺度分数波动散布熵(RCMFFDE)、t-分布随机邻域嵌入(t-SNE)和麻雀搜索算法优化相关向量机(SSA-RVM)的旋转机械损伤检测模型。首先,进行了基于RCMFFDE方法的特征提取,生成了特征样本,以定量反映旋转机械的不同损伤情况;然后,采用t-SNE方法,将原始高维故障特征映射至低维空间,获得了对故障更敏感的低维特征;最后,将敏感的低维故障特征向量输入至SSA-RVM多分类器中,进行了训练和测试,实现了旋转机械样本的故障识别目的;采用两种旋转机械数据集进行了实验,并从准确率、效率和抗噪性方面,将RCMFFDE-SSA-SVM方法与多种特征提取方法进行了对比。研究结果表明:RCMFFDE能用于有效提取旋转机械的故障特征,分别取得99.2%和100%的识别精度;而对敏感特征进行分类所获得的精度优于对原始特征进行分类的情形,前者比后者提高了4%;在模式识别中,SSA-RVM优于其他分类器;自制数据集的诊断精度达到了97%,特征提取的时间为16.05 s。 展开更多
关键词 非线性振动信号 特征提取时间 故障识别精度(诊断精度) 精细复合多尺度分数波动散布熵 t-分布随机邻域嵌入 麻雀搜索算法优化相关向量机
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基于ISSA-XGBoost的数字孪生变电站故障监测
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作者 何锐 梁智 +2 位作者 戈一航 凌行龙 王应宇 《科技和产业》 2025年第17期100-107,共8页
随着智能电网的快速发展,传统变电站的监控方式已难以满足现代电网对高效、准确监控的需求。针对传统变电站监控信息准确率较低的问题,提出基于ISSA-XGBoost(改进麻雀搜索算法-极端梯度提升树)的数字孪生变电站故障监测。首先基于八叉... 随着智能电网的快速发展,传统变电站的监控方式已难以满足现代电网对高效、准确监控的需求。针对传统变电站监控信息准确率较低的问题,提出基于ISSA-XGBoost(改进麻雀搜索算法-极端梯度提升树)的数字孪生变电站故障监测。首先基于八叉树空间分割和NURBS(非均匀有理B样条)三维数字孪生(DT)体建模技术,建立数字孪生变电站模型。通过主成分分析提取关键数据特征,降低数据集的复杂性。结合变电站的运行模式,建立XGBoost的状态监测模型,通过改进的麻雀搜索算法寻找XGBoost的超参数,弥补传统XGBoost人工设定超参数的不足。变电站状态监测正确率达到96.45%,相较传统XGBoost监测正确率提高了8.11%,训练时间缩短了4.8%,ISSA-XGBoost模型故障监测精度更高、速度更快。实践表明,该方法能够更精确地对变电站电气设备的故障进行监测。 展开更多
关键词 变电站 数字孪生(DT) 主成分分析(PCA) 麻雀搜索算法(ssa) 极端梯度提升树(XGBoost)
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基于SSA-VMD-LSTM的架空输电线路动态载流量预测方法
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作者 王帅 申杰文 +1 位作者 徐彬 朱振东 《电子测量技术》 北大核心 2025年第19期115-125,共11页
准确预测架空输电线路动态载流量是保障线路安全增容的关键。针对传统预测模型因依赖人工经验选择模型超参数,难以有效降低线路动态载流量波动性而导致的预测精度不佳问题,本研究创新性提出一种基于SSA-VMD-LSTM的预测方法。该方法深度... 准确预测架空输电线路动态载流量是保障线路安全增容的关键。针对传统预测模型因依赖人工经验选择模型超参数,难以有效降低线路动态载流量波动性而导致的预测精度不佳问题,本研究创新性提出一种基于SSA-VMD-LSTM的预测方法。该方法深度融合了SSA的全局优化能力、VMD的多尺度数据分解特性以及LSTM的时序建模优势,构建了一个层次化的人工智能预测模型。首先,利用SSA的强大搜索能力对VMD超参数进行迭代寻优,获取最优超参数;随后,采用VMD对线路动态载流量进行多尺度分解,得到一系列中心频率不同但局部平稳的分量;在此基础上,对多个分量分别建立LSTM进行预测;最后,将分量预测结果叠加得到最终预测结果。实验结果表明,与多个传统预测模型相比,所提方法的预测精度至少提升4.78%,充分验证了该方法在动态载流量预测中的有效性和优越性。 展开更多
关键词 架空输电线路 动态载流量 ssa VMD 超参数寻优
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基于BP-SSA算法的大学生体质健康水平评价模型研究
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作者 赵莹 《合肥师范学院学报》 2025年第5期171-174,180,共5页
随着经济和社会的不断发展,大学生体质的培养受到了广泛的关注。然而,传统的身体素质评价方法存在一些不足,如评价指标单一,评价结果不准确等。针对这一问题,研究提出利用误差反向传播算法与麻雀搜索算法,构建一种大学生体质健康水平评... 随着经济和社会的不断发展,大学生体质的培养受到了广泛的关注。然而,传统的身体素质评价方法存在一些不足,如评价指标单一,评价结果不准确等。针对这一问题,研究提出利用误差反向传播算法与麻雀搜索算法,构建一种大学生体质健康水平评价模型。经过对比试验,结果表明,该算法的准确率最高可达到96%,优于对比算法。研究提出的大学生体质健康水平评价模型的F值与G值分别为86%、92%,优于对比模型。综上,研究提出的基于改进麻雀算法的大学生体质健康水平评价模型,能够有效地提高我国大学生体质健康评估的准确率和工作效率。 展开更多
关键词 BP算法 ssa算法 大学生体质 评价模型
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基于Elman神经网络和SSA-BP神经网络的空气质量指数预测类比研究
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作者 尤游 《哈尔滨师范大学自然科学学报》 2025年第4期67-75,共9页
针对空气质量预测中监测数据的动态性以及BP神经网络训练的局限性等问题,依次提出Elman神经网络和SSA-BP神经网络来优化模型.首先基于空气质量数据的动态变化特征,通过构建Elman神经网络来优化BP算法,其优势在于增加的承接层可以作为延... 针对空气质量预测中监测数据的动态性以及BP神经网络训练的局限性等问题,依次提出Elman神经网络和SSA-BP神经网络来优化模型.首先基于空气质量数据的动态变化特征,通过构建Elman神经网络来优化BP算法,其优势在于增加的承接层可以作为延时算子来存储记忆信息,提升了动态数据处理的敏感度.其次利用麻雀搜索算法(SSA)优化BP网络,通过全局寻优获得最佳权阈值,避免了BP网络初始权阈值选取的随机性,解决了其局部极小化问题,并提升了网络收敛速度.最后以合肥市为例进行仿真实验,得出结论:SSA-BP神经网络的MAE、MSE、RMSE和MAPE四个预测评价指标最优,其次是Elman神经网络,最后是BP神经网络.说明上述两种优化模型为空气质量预测提供了新思路,具有一定的可行性. 展开更多
关键词 空气质量指数 ELMAN神经网络 麻雀搜索算法 ssa-BP神经网络 预测精度
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基于SSAPSO-PID的白胡椒熟化温度控制系统设计与试验 被引量:2
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作者 俞国燕 张嘉伟 +3 位作者 张园 韦丽娇 赵振华 沈德战 《农业机械学报》 北大核心 2025年第5期589-596,共8页
为解决白胡椒初加工生产线熟化环节长时间无法维持恒温控制、过度依赖人工辅助控温等问题,设计了基于PID的白胡椒初加工生产线熟化温度控制系统。利用STM32和触摸屏控制蒸汽发生器和电调节阀,PT100温度传感器实时监测温度并反馈至系统,... 为解决白胡椒初加工生产线熟化环节长时间无法维持恒温控制、过度依赖人工辅助控温等问题,设计了基于PID的白胡椒初加工生产线熟化温度控制系统。利用STM32和触摸屏控制蒸汽发生器和电调节阀,PT100温度传感器实时监测温度并反馈至系统,通过控制算法调节蒸汽流量以确保稳定控制。采用开环阶跃响应法建立并拟合了熟化机内温度与时间的数学模型,通过Simulink仿真试验对比了Ziegler-Nichols整定法、临界比例度法、衰减曲线法以及基于麻雀搜索算法的粒子群优化自整定法(SSAPSO)性能。最终确定PID最佳控制参数为比例系数K_(p)=0.8759,积分系数K_(i)=0.02,微分系数K_(d)=4.3255。系统试验结果表明,在8 min的熟化过程中,每隔1 min采集当前熟化温度,由于熟化机与空气直接对流换热,其温度稳定在(99±1.5)℃范围内,熟化温度平均相对误差小于1.2%、变异系数小于1.3%,基本实现了熟化过程中自动化精准高效控温的目的。 展开更多
关键词 白胡椒初加工生产线 熟化温度 粒子群优化算法 麻雀搜索算法 PID控制
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基于DC-CNN-PE-SSA-Informer的电缆缆芯温度预测研究 被引量:2
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作者 鲍克勤 赵欣妍 +2 位作者 刘擘 王仕博 郝海斌 《昆明理工大学学报(自然科学版)》 北大核心 2025年第2期116-125,共10页
针对电缆缆芯温度不易直接测量,且预测精确度不足的问题,本文提出了DC-CNN-PE-SSA-Informer混合预测模型,该模型利用扩展因果卷积网络(DC-CNN)增强对时间序列数据局部特征的捕捉能力,并将提取的特征传递至Informer模块以捕获长期依赖关... 针对电缆缆芯温度不易直接测量,且预测精确度不足的问题,本文提出了DC-CNN-PE-SSA-Informer混合预测模型,该模型利用扩展因果卷积网络(DC-CNN)增强对时间序列数据局部特征的捕捉能力,并将提取的特征传递至Informer模块以捕获长期依赖关系,通过引入相对位置编码(PE)加强Informer模型对时间序列中相对位置信息的捕捉能力,最后由麻雀搜索算法(SSA)进行参数优化。通过对电缆温度场进行有限元分析,求解出不同条件下的缆芯温度作为仿真实验的样本数据。仿真结果表明,DC-CNN-PE-SSA-Informer模型相比常见的预测模型在电缆缆芯温度预测方面具有更高的预测精度,为电力调度的运行方式提供了依据。 展开更多
关键词 电力电缆 温度预测 扩展因果卷积网络(DC-CNN) INFORMER 麻雀搜索算法(ssa) 位置编码(PE)
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Multi-UAV reconnaissance task allocation for heterogeneous targets using an opposition-based genetic algorithm with double-chromosome encoding 被引量:51
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作者 Zhu WANG Li LIU +1 位作者 Teng LONG Yonglu WENa 《Chinese Journal of Aeronautics》 SCIE EI CAS CSCD 2018年第2期339-350,共12页
This paper presents a novel multiple Unmanned Aerial Vehicles(UAVs) reconnaissance task allocation model for heterogeneous targets and an effective genetic algorithm to optimize UAVs' task sequence. Heterogeneous t... This paper presents a novel multiple Unmanned Aerial Vehicles(UAVs) reconnaissance task allocation model for heterogeneous targets and an effective genetic algorithm to optimize UAVs' task sequence. Heterogeneous targets are classified into point targets, line targets and area targets according to features of target geometry and sensor's field of view. Each UAV is regarded as a Dubins vehicle to consider the kinematic constraints. And the objective of task allocation is to minimize the task execution time and UAVs' total consumptions. Then, multi-UAV reconnaissance task allocation is formulated as an extended Multiple Dubins Travelling Salesmen Problem(MDTSP), where visit paths to the heterogeneous targets must meet specific constraints due to the targets' feature. As a complex combinatorial optimization problem, the dimensions of MDTSP are further increased due to the heterogeneity of targets. To efficiently solve this computationally expensive problem, the Opposition-based Genetic Algorithm using Double-chromosomes Encoding and Multiple Mutation Operators(OGA-DEMMO) is developed to improve the population variety for enhancing the global exploration capability. The simulation results demonstrate that OGADEMMO outperforms the ordinary genetic algorithm, ant colony optimization and random search in terms of optimality of the allocation results, especially for large scale reconnaissance task allocation problems. 展开更多
关键词 Unmanned aerial vehicles Task allocation Genetic algorithm Travelling salesman problems Dubins vehicles
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基于SSA-GA-BP神经网络的城轨地下线振动源强预测模型 被引量:1
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作者 刘庆杰 刘博亮 +3 位作者 冯青松 徐璐 罗信伟 刘文武 《铁道科学与工程学报》 北大核心 2025年第5期2355-2366,共12页
为寻求一种预测速度快、准确率高的城市轨道交通地下线振动源强预测模型,基于55个非减振轨道测试断面数据,经过数据清洗、分析和标签化后,建立了涵盖典型车型和主要线路参数取值范围的8 000多条实测数据库。分析地铁环境振动的影响因素... 为寻求一种预测速度快、准确率高的城市轨道交通地下线振动源强预测模型,基于55个非减振轨道测试断面数据,经过数据清洗、分析和标签化后,建立了涵盖典型车型和主要线路参数取值范围的8 000多条实测数据库。分析地铁环境振动的影响因素,利用斯皮尔曼相关系数得到各类影响因素与振动源强的关系强度。分别建立基于卷积神经网络(CNN)、随机森林(RF)、支持向量机(SVM)等5个机器学习模型,对比分析了不同模型对振动源强的预测效果。使用麻雀搜索算法(SSA)和遗传算法(GA)优化BP神经网络模型的结构、超参数、权重及阈值,对比SSA-GA-BP、SSA-BP、GA-BP神经网络对振动源强的预测精度。最终使用4个差异明显且未经模型学习的新断面验证SSA-GA-BP模型的泛化能力。结果表明:5种机器学习模型中BP神经网络的非线性回归拟合能力最强,验证集MAE损失为1.55 dB,决定系数为0.948;SSA-GA-BP模型对振动源强的预测精度高于SSA-BP和GA-BP,验证集MAE、MAPE和决定系数分别为1.289 dB、1.856%和0.967,有80.11%数据的平均绝对误差在2 dB以内;SSA-GA-BP模型对4个经典的新断面数据预测效果良好,4个断面汇总数据的MAE、MSE和MAPE误差值分别为1.21 dB、2.18 dB和1.67%,决定系数为0.977,有70%数据的预测误差在2 dB以内,证明了SSA-GA-BP模型有较强的泛化能力。SSA-GA-BP振源预测模型具有较好的预测精度和快速预测能力,研究可为轨道交通地下线路设计阶段的减振降噪设计提供参考。 展开更多
关键词 城市轨道交通地下线 振动源强 预测 BP神经网络 麻雀搜索算法 遗传算法
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SSA-XGBoost模型的资源型城市热环境非线性影响因素分析
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作者 范强 刘凯泽 张兵 《测绘科学》 北大核心 2025年第8期80-91,共12页
针对资源型城市热环境成因机制的复杂性以及高温挑战日益加剧问题,该文选择4个典型资源型城市为研究区,选取自然因素和人文因素作为影响因子,构建了基于麻雀搜索算法(SSA)优化的XGBoost回归模型,并结合SHAP解释机制量化各驱动因子对城... 针对资源型城市热环境成因机制的复杂性以及高温挑战日益加剧问题,该文选择4个典型资源型城市为研究区,选取自然因素和人文因素作为影响因子,构建了基于麻雀搜索算法(SSA)优化的XGBoost回归模型,并结合SHAP解释机制量化各驱动因子对城市热环境的影响。研究发现,所选因子对热环境的作用效果和贡献程度因城市的阶段性发展特征存在显著差异,这与城市化过程中地表覆被类型的空间差异具有密切关联;SHAP可解释性分析进一步揭示了各变量对热环境的具体影响,展现了模型在解释变量作用机制上的可靠性和透明性;SSA能够有效的对模型进行优化,构建的SSA-XGBoost模型的R^(2)均在0.9以上,表现出良好的稳定性和回归能力。该模型更精确地分析了资源型城市热环境非线性因素影响,为典型资源城市的建设和管理提供参考。 展开更多
关键词 热环境 地表温度 ssa-XGBoost 资源型城市 非线性回归 SHAP可解释
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基于CNN-SSA-GRU的位置指纹定位方法研究
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作者 吴兰 胡家傲 《计算机仿真》 2025年第1期323-328,366,共7页
针对现有位置指纹定位方法不能充分利用指纹数据中的特征信息以及训练过程中关键参数需要人为确定导致定位精度不高的问题,利用卷积神经网络(CNN)提取指纹数据中的空间特征信息并构造成特征向量,再利用门控循环神经网络(GRU)提取特征向... 针对现有位置指纹定位方法不能充分利用指纹数据中的特征信息以及训练过程中关键参数需要人为确定导致定位精度不高的问题,利用卷积神经网络(CNN)提取指纹数据中的空间特征信息并构造成特征向量,再利用门控循环神经网络(GRU)提取特征向量中的时间特征,建立特征融合的位置指纹定位模型进行定位,以提高定位精度。同时利用麻雀搜索算法(SSA)对GRU网络训练过程中的关键参数进行最佳寻优,降低人为设置训练参数对模型定位效果的影响,进一步提高模型的定位精度。实验分析表明,提出的CNN-SSA-GRU指纹定位方法平均误差在1.351m,与传统指纹定位方法相比定位精度更高,能够满足实际定位需求。 展开更多
关键词 指纹定位 卷积神经网络 麻雀搜索算法 门控循环神经网络
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