期刊文献+
共找到1,703篇文章
< 1 2 86 >
每页显示 20 50 100
NTSSA:A Novel Multi-Strategy Enhanced Sparrow Search Algorithm with Northern Goshawk Optimization and Adaptive t-Distribution for Global Optimization
1
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
在线阅读 下载PDF
Method for Estimating the State of Health of Lithium-ion Batteries Based on Differential Thermal Voltammetry and Sparrow Search Algorithm-Elman Neural Network 被引量:1
2
作者 Yu Zhang Daoyu Zhang TiezhouWu 《Energy Engineering》 EI 2025年第1期203-220,共18页
Precisely estimating the state of health(SOH)of lithium-ion batteries is essential for battery management systems(BMS),as it plays a key role in ensuring the safe and reliable operation of battery systems.However,curr... Precisely estimating the state of health(SOH)of lithium-ion batteries is essential for battery management systems(BMS),as it plays a key role in ensuring the safe and reliable operation of battery systems.However,current SOH estimation methods often overlook the valuable temperature information that can effectively characterize battery aging during capacity degradation.Additionally,the Elman neural network,which is commonly employed for SOH estimation,exhibits several drawbacks,including slow training speed,a tendency to become trapped in local minima,and the initialization of weights and thresholds using pseudo-random numbers,leading to unstable model performance.To address these issues,this study addresses the challenge of precise and effective SOH detection by proposing a method for estimating the SOH of lithium-ion batteries based on differential thermal voltammetry(DTV)and an SSA-Elman neural network.Firstly,two health features(HFs)considering temperature factors and battery voltage are extracted fromthe differential thermal voltammetry curves and incremental capacity curves.Next,the Sparrow Search Algorithm(SSA)is employed to optimize the initial weights and thresholds of the Elman neural network,forming the SSA-Elman neural network model.To validate the performance,various neural networks,including the proposed SSA-Elman network,are tested using the Oxford battery aging dataset.The experimental results demonstrate that the method developed in this study achieves superior accuracy and robustness,with a mean absolute error(MAE)of less than 0.9%and a rootmean square error(RMSE)below 1.4%. 展开更多
关键词 Lithium-ion battery state of health differential thermal voltammetry sparrow search algorithm
在线阅读 下载PDF
An NOMA-VLC power allocation scheme for multi-user based on sparrow search algorithm
3
作者 WANG Xing WANG Haitao +3 位作者 DONG Zhenliang XIONG Yingfei SHI Huili WANG Ping 《Optoelectronics Letters》 2025年第5期278-283,共6页
A non-orthogonal multiple access(NOMA) power allocation scheme on the basis of the sparrow search algorithm(SSA) is proposed in this work. Specifically, the logarithmic utility function is utilized to address the pote... A non-orthogonal multiple access(NOMA) power allocation scheme on the basis of the sparrow search algorithm(SSA) is proposed in this work. Specifically, the logarithmic utility function is utilized to address the potential fairness issue that may arise from the maximum sum-rate based objective function and the optical power constraints are set considering the non-negativity of the transmit signal, the requirement of the human eyes safety and all users' quality of service(Qo S). Then, the SSA is utilized to solve this optimization problem. Moreover, to demonstrate the superiority of the proposed strategy, it is compared with the fixed power allocation(FPA) and the gain ratio power allocation(GRPA) schemes. Results show that regardless of the number of users considered, the sum-rate achieved by SSA consistently outperforms that of FPA and GRPA schemes. Specifically, compared to FPA and GRPA schemes, the sum-rate obtained by SSA is increased by 40.45% and 53.44% when the number of users is 7, respectively. The proposed SSA also has better performance in terms of user fairness. This work will benefit the design and development of the NOMA-visible light communication(VLC) systems. 展开更多
关键词 NOMA logarithmic utility function VLC sparrow search algorithm sparrow search algorithm ssa fairness issue power allocation Sum Rate
原文传递
Optimized control of grid-connected photovoltaic systems:Robust PI controller based on sparrow search algorithm for smart microgrid application
4
作者 Youssef Akarne Ahmed Essadki +2 位作者 Tamou Nasser Maha Annoukoubi Ssadik Charadi 《Global Energy Interconnection》 2025年第4期523-536,共14页
The integration of renewable energy sources into modern power systems necessitates efficient and robust control strategies to address challenges such as power quality,stability,and dynamic environmental variations.Thi... The integration of renewable energy sources into modern power systems necessitates efficient and robust control strategies to address challenges such as power quality,stability,and dynamic environmental variations.This paper presents a novel sparrow search algorithm(SSA)-tuned proportional-integral(PI)controller for grid-connected photovoltaic(PV)systems,designed to optimize dynamic perfor-mance,energy extraction,and power quality.Key contributions include the development of a systematic SSA-based optimization frame-work for real-time PI parameter tuning,ensuring precise voltage and current regulation,improved maximum power point tracking(MPPT)efficiency,and minimized total harmonic distortion(THD).The proposed approach is evaluated against conventional PSO-based and P&O controllers through comprehensive simulations,demonstrating its superior performance across key metrics:a 39.47%faster response time compared to PSO,a 12.06%increase in peak active power relative to P&O,and a 52.38%reduction in THD,ensuring compliance with IEEE grid standards.Moreover,the SSA-tuned PI controller exhibits enhanced adaptability to dynamic irradiancefluc-tuations,rapid response time,and robust grid integration under varying conditions,making it highly suitable for real-time smart grid applications.This work establishes the SSA-tuned PI controller as a reliable and efficient solution for improving PV system performance in grid-connected scenarios,while also setting the foundation for future research into multi-objective optimization,experimental valida-tion,and hybrid renewable energy systems. 展开更多
关键词 Smart microgrid Photovoltaic system PI controller sparrow search algorithm GRID-CONNECTED Metaheuristic optimization
在线阅读 下载PDF
A Clustering Model Based on Density Peak Clustering and the Sparrow Search Algorithm for VANETs
5
作者 Chaoliang Wang Qi Fu Zhaohui Li 《Computers, Materials & Continua》 2025年第8期3707-3729,共23页
Cluster-basedmodels have numerous application scenarios in vehicular ad-hoc networks(VANETs)and can greatly help improve the communication performance of VANETs.However,the frequent movement of vehicles can often lead... Cluster-basedmodels have numerous application scenarios in vehicular ad-hoc networks(VANETs)and can greatly help improve the communication performance of VANETs.However,the frequent movement of vehicles can often lead to changes in the network topology,thereby reducing cluster stability in urban scenarios.To address this issue,we propose a clustering model based on the density peak clustering(DPC)method and sparrow search algorithm(SSA),named SDPC.First,the model constructs a fitness function based on the parameters obtained from the DPC method and deploys the SSA for iterative optimization to select cluster heads(CHs).Then,the vehicles that have not been selected as CHs are assigned to appropriate clusters by comprehensively considering the distance parameter and link-reliability parameter.Finally,cluster maintenance strategies are considered to tackle the changes in the clusters’organizational structure.To verify the performance of the model,we conducted a simulation on a real-world scenario for multiple metrics related to clusters’stability.The results show that compared with the APROVE and the GAPC,SDPC showed clear performance advantages,indicating that SDPC can effectively ensure VANETs’cluster stability in urban scenarios. 展开更多
关键词 VANETS CLUSTER density peak clustering sparrow search algorithm
在线阅读 下载PDF
Improved sparrow search algorithm for inversion of geometric parameters of earthquake source faults
6
作者 Leyang Wang Xuekai Zhou +2 位作者 Zhanglin Sun Can Xi Hao Xiao 《Geodesy and Geodynamics》 2025年第6期665-680,共16页
With the continuous improvement of the accuracy of geodetic deformation data,the inversion of seismic source parameters puts forward a higher demand for nonlinear inversion algorithms.In this research,an improved Spar... With the continuous improvement of the accuracy of geodetic deformation data,the inversion of seismic source parameters puts forward a higher demand for nonlinear inversion algorithms.In this research,an improved Sparrow Search Algorithm(SSA)is proposed for the seismic source parameter inversion problem.By replacing the original population generation in the improved algorithm with Latin hypercubic sampling,the Sparrow Search Algorithm reduces the repetition of samples in the population initialization.Subsequently,the algorithm introduces adaptive weights in the discoverer generation phase of the sparrow algorithm and combines the Levy flight strategy to make the algorithm more comprehensive and improve the search accuracy during the whole iteration process.Therefore,the improved Latin hypercube-based sparrow search algorithm(ILHSSA)has better advantages in terms of iterative convergence speed and stability.In order to verify the performance of ILHSSA,the basic genetic algorithm(GA)and sparrow search algorithm(SSA)are examined and compared with ILHSSA by simulated earthquakes of two different earthquake types.The simulation experiments show that the improved algorithm ILHSSA outperforms SSA in accuracy and stability.Compared with the GA algorithm,ILHSSA can achieve the same inversion accuracy as GA,and it even surpasses GA in inversion speed and the inversion results of some parameters,demonstrating better stability.Finally,the improved algorithm is used for the 2017 Bodrum-Cos earthquake and the 2016 Amatrice earthquake in Italy.The inversion results all reflect the practicality and reliability of the improved algorithm. 展开更多
关键词 sparrow search algorithm Latin hypercube Source parameter inversion Bodrum-Coase earthquake Amatrice earthquake
原文传递
基于OCSSA-LSSVM的锂电池多故障诊断方法
7
作者 廖力 王意 +3 位作者 李兴科 郑全新 黄杨 姜久春 《电源技术》 北大核心 2026年第3期479-487,共9页
为了保障电动汽车的安全运行,对锂电池组的不同类型故障进行准确、快速的故障识别显得至关重要。针对不同故障特征容易混淆的问题,提出了基于融合鱼鹰与柯西变异的麻雀优化算法(OCSSA)-最小二乘支持向量机(LSSVM)的锂电池多故障诊断方... 为了保障电动汽车的安全运行,对锂电池组的不同类型故障进行准确、快速的故障识别显得至关重要。针对不同故障特征容易混淆的问题,提出了基于融合鱼鹰与柯西变异的麻雀优化算法(OCSSA)-最小二乘支持向量机(LSSVM)的锂电池多故障诊断方法。首先,采用交错电压测量拓扑结构采集电池组的原始电压数据,然后采用改进的相关系数方法对信号进行处理,克服了测量误差和电池不一致性对故障诊断的影响;然后计算故障电池和正常电池之间的差分;最后将差分矩阵输入诊断模型进行故障分类,并引入OCSSA对LSSVM的超参数进行全局优化,提升分类性能。实验结果表明,该方法在多种锂电池故障类型识别中准确率高达97.34%,优于传统的分类方法。 展开更多
关键词 多故障诊断 锂电池 麻雀优化算法 最小二乘法支持向量机
在线阅读 下载PDF
基于SSA-RELM的多源多因素剃齿齿形中凹误差预测模型
8
作者 蔡安江 苏文哲 +1 位作者 沈彦君 赵漫漫 《中国工程机械学报》 北大核心 2026年第1期22-27,共6页
针对高精度剃齿加工,建立一种以多源多因素剃齿参数为输入、以剃齿齿形中凹误差为输出的剃齿齿形中凹误差预测模型,同时引入正则化参数,有效解决了模型的过拟合问题。运用麻雀搜索算法优化了该模型的输入层权值和阈值,通过实例对比证明... 针对高精度剃齿加工,建立一种以多源多因素剃齿参数为输入、以剃齿齿形中凹误差为输出的剃齿齿形中凹误差预测模型,同时引入正则化参数,有效解决了模型的过拟合问题。运用麻雀搜索算法优化了该模型的输入层权值和阈值,通过实例对比证明该剃齿齿形中凹误差预测模型的优越性,提高了模型的精准度,为解决剃齿齿形中凹误差问题提供了新的研究思路。 展开更多
关键词 剃齿 剃齿齿形中凹误差 正则化极限学习机 麻雀搜索算法
在线阅读 下载PDF
搬运机械臂逆运动学分析与ISSA算法求解
9
作者 李海虹 宋盖 《机械设计与制造》 北大核心 2026年第2期337-341,共5页
为实现局促空间内搬运机械臂的作业问题,提出一种改进麻雀搜索算法(ISSA)对7-DOF冗余机械臂逆运动求解。建立其典型位姿下的D-H表,分别以位姿误差最小、位置误差和运动中关节变化最小两种情况为目标,构建机械臂的逆运动学模型。通过ISS... 为实现局促空间内搬运机械臂的作业问题,提出一种改进麻雀搜索算法(ISSA)对7-DOF冗余机械臂逆运动求解。建立其典型位姿下的D-H表,分别以位姿误差最小、位置误差和运动中关节变化最小两种情况为目标,构建机械臂的逆运动学模型。通过ISSA算法对该模型逆运动进行求解,即采用Halton序列对种群进行初始化,提高种群多样性;结合BOA算法提高发现者全局搜索能力;采用高斯变异对个体位置进行扰动以避免产生局部最优解。仿真结果表明,相比SSA算法,ISSA算法的位姿误差与标准差分别降低了98.63%与84.29%,说明在求解冗余型机械臂逆运动学时,ISSA算法精度更高。 展开更多
关键词 机械臂 搬运任务 逆运动学 麻雀搜索算法 蝴蝶优化算法 高斯变异
在线阅读 下载PDF
基于SCSSA-BiLSTM的变压器故障诊断模型
10
作者 汪繁荣 李州 《南方电网技术》 北大核心 2026年第2期78-86,共9页
针对变压器故障诊断存在诊断精度不高和麻雀搜索算法(sparrow search algorithm,SSA)存在易陷入局部最优的问题,提出了一种基于融合正余弦和柯西变异的麻雀搜索算法(sine-cosine and Cauchy mutation sparrow search algorithm,SCSSA)... 针对变压器故障诊断存在诊断精度不高和麻雀搜索算法(sparrow search algorithm,SSA)存在易陷入局部最优的问题,提出了一种基于融合正余弦和柯西变异的麻雀搜索算法(sine-cosine and Cauchy mutation sparrow search algorithm,SCSSA)优化双向长短期记忆网络(bi-directional long-short term memory,BiLSTM)的变压器故障诊断模型。首先,基于油中溶解气体分析(dissolved gas analysis,DGA)法,以5种特征量作为输入,其次利用正余弦策略和柯西变异策略对麻雀算法进行改进,然后将SCSSA算法、SSA算法和灰狼优化算法(grey wolf optimizer,GWO)在4种测试函数上进行性能对比,验证了SCSSA算法的优越性。最后利用SCSSA算法对BiLSTM网络中的参数进行优化,从而提高BiLSTM网络在变压器故障诊断中的性能。实验结果表明,所提SCSSA-BiLSTM故障诊断模型的综合诊断精度为95.1%,相比于SSA-BiLSTM、GWO-BiLSTM、BiLSTM和LSTM模型分别提高了7.3%、12.2%、14.6%、19.5%,并且SCSSA-BiLSTM模型有着更好的鲁棒性。 展开更多
关键词 变压器 故障诊断 麻雀搜索算法 双向长短期记忆网络 诊断精度
在线阅读 下载PDF
基于SSA-VMD-MPE(r)的隧道爆破振动信号降噪方法研究
11
作者 王逸轩 朱凯 +5 位作者 刘现鹏 张学民 李建兵 王立川 张书博 聂智超 《振动与冲击》 北大核心 2026年第5期273-285,共13页
隧道钻爆施工中工序的平行、搭接、交叉及其组合方式的实施,使实测爆破振动信号中存在的较多噪声干扰影响频带及能量分布特征分析的准确性。为获得真实爆破振动特性,提出一种基于混沌映射的麻雀搜索算法-变分模态分解-多尺度排列熵(spar... 隧道钻爆施工中工序的平行、搭接、交叉及其组合方式的实施,使实测爆破振动信号中存在的较多噪声干扰影响频带及能量分布特征分析的准确性。为获得真实爆破振动特性,提出一种基于混沌映射的麻雀搜索算法-变分模态分解-多尺度排列熵(sparrow search algorithm-variational mode decomposition-multi-scale permutation entropy,SSA-VMD-MPE)(r)滤波重构振动信号降噪方法。该方法首先采用基于混沌映射的SSA对VMD关键参数模态数K和惩罚因子α进行寻优;然后将分解所得各固有模态函数进行MPE与相关系数r检验,依据双控制指标将其划分为真实信号、噪声及含噪信号分量;最后对含噪信号分量进行低通滤波处理后与真实信号分量共同重构得到降噪信号。对实测隧道爆破振动信号处理表明,该方法减少了人为因素对VMD的影响,提高了信号分解的自适性和准确性,在较好去除高频噪声成分的同时对低频振动能量影响较小,有效保留了爆破振动真实信号成分,可重构出高信噪比、低重构误差的降噪信号,降噪效果良好。 展开更多
关键词 隧道爆破振动 麻雀搜索算法(ssa) 变分模态分解(VMD) 多尺度排列熵(MPE) 信号降噪
在线阅读 下载PDF
A Chaos Sparrow Search Algorithm with Logarithmic Spiral and Adaptive Step for Engineering Problems 被引量:15
12
作者 Andi Tang Huan Zhou +1 位作者 Tong Han Lei Xie 《Computer Modeling in Engineering & Sciences》 SCIE EI 2022年第1期331-364,共34页
The sparrow search algorithm(SSA)is a newly proposed meta-heuristic optimization algorithm based on the sparrowforaging principle.Similar to other meta-heuristic algorithms,SSA has problems such as slowconvergence spe... The sparrow search algorithm(SSA)is a newly proposed meta-heuristic optimization algorithm based on the sparrowforaging principle.Similar to other meta-heuristic algorithms,SSA has problems such as slowconvergence speed and difficulty in jumping out of the local optimum.In order to overcome these shortcomings,a chaotic sparrow search algorithm based on logarithmic spiral strategy and adaptive step strategy(CLSSA)is proposed in this paper.Firstly,in order to balance the exploration and exploitation ability of the algorithm,chaotic mapping is introduced to adjust the main parameters of SSA.Secondly,in order to improve the diversity of the population and enhance the search of the surrounding space,the logarithmic spiral strategy is introduced to improve the sparrow search mechanism.Finally,the adaptive step strategy is introduced to better control the process of algorithm exploitation and exploration.The best chaotic map is determined by different test functions,and the CLSSA with the best chaotic map is applied to solve 23 benchmark functions and 3 classical engineering problems.The simulation results show that the iterative map is the best chaotic map,and CLSSA is efficient and useful for engineering problems,which is better than all comparison algorithms. 展开更多
关键词 sparrow search algorithm global optimization adaptive step benchmark function chaos map
在线阅读 下载PDF
Optimizing slope safety factor prediction via stacking using sparrow search algorithm for multi-layer machine learning regression models 被引量:5
13
作者 SHUI Kuan HOU Ke-peng +2 位作者 HOU Wen-wen SUN Jun-long SUN Hua-fen 《Journal of Mountain Science》 SCIE CSCD 2023年第10期2852-2868,共17页
The safety factor is a crucial quantitative index for evaluating slope stability.However,the traditional calculation methods suffer from unreasonable assumptions,complex soil composition,and inadequate consideration o... The safety factor is a crucial quantitative index for evaluating slope stability.However,the traditional calculation methods suffer from unreasonable assumptions,complex soil composition,and inadequate consideration of the influencing factors,leading to large errors in their calculations.Therefore,a stacking ensemble learning model(stacking-SSAOP)based on multi-layer regression algorithm fusion and optimized by the sparrow search algorithm is proposed for predicting the slope safety factor.In this method,the density,cohesion,friction angle,slope angle,slope height,and pore pressure ratio are selected as characteristic parameters from the 210 sets of established slope sample data.Random Forest,Extra Trees,AdaBoost,Bagging,and Support Vector regression are used as the base model(inner loop)to construct the first-level regression algorithm layer,and XGBoost is used as the meta-model(outer loop)to construct the second-level regression algorithm layer and complete the construction of the stacked learning model for improving the model prediction accuracy.The sparrow search algorithm is used to optimize the hyperparameters of the above six regression models and correct the over-and underfitting problems of the single regression model to further improve the prediction accuracy.The mean square error(MSE)of the predicted and true values and the fitting of the data are compared and analyzed.The MSE of the stacking-SSAOP model was found to be smaller than that of the single regression model(MSE=0.03917).Therefore,the former has a higher prediction accuracy and better data fitting.This study innovatively applies the sparrow search algorithm to predict the slope safety factor,showcasing its advantages over traditional methods.Additionally,our proposed stacking-SSAOP model integrates multiple regression algorithms to enhance prediction accuracy.This model not only refines the prediction accuracy of the slope safety factor but also offers a fresh approach to handling the intricate soil composition and other influencing factors,making it a precise and reliable method for slope stability evaluation.This research holds importance for the modernization and digitalization of slope safety assessments. 展开更多
关键词 Multi-layer regression algorithm fusion Stacking gensemblelearning sparrow search algorithm Slope safety factor Data prediction
原文传递
基于SSA-BP神经网络的库区边坡变形时序预测研究
14
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
原文传递
基于ISSA-RF算法的光伏阵列故障诊断研究
15
作者 许桂敏 宋雨航 +2 位作者 相里梦桥 杨亚龙 段晨东 《太阳能学报》 北大核心 2026年第2期111-121,共11页
提出一种基于改进麻雀搜索(ISSA)优化随机森林(RF)的算法,用以提高光伏阵列故障诊断的准确率。首先,通过搭建光伏阵列模拟5种工况,提取故障向量,构造光伏阵列故障数据集。其次,通过测试函数对灰狼搜索算法(GWO)、粒子群算法(PSO)、ISSA... 提出一种基于改进麻雀搜索(ISSA)优化随机森林(RF)的算法,用以提高光伏阵列故障诊断的准确率。首先,通过搭建光伏阵列模拟5种工况,提取故障向量,构造光伏阵列故障数据集。其次,通过测试函数对灰狼搜索算法(GWO)、粒子群算法(PSO)、ISSA和麻雀搜索算法(SSA)进行寻优对比,发现ISSA在平均值和标准差方面均优于其他算法,显示出更好的鲁棒性。然后,利用光伏阵列故障仿真数据集对ISSA-RF诊断模型进行性能分析,得到ISSA-RF方法整体准确率达到97.06%,比传统RF模型提高6.94个百分点。最后,结合实验室光伏阵列开路、短路、遮荫、老化和正常5种工况数据集对ISSA-RF诊断模型进行验证,证明所提基于ISSA-RF的光伏阵列故障诊断方法具有较高的分类效率和精度,其性能表现优于其他诊断模型。 展开更多
关键词 光伏阵列 故障诊断 改进麻雀搜索算法 随机森林算法
原文传递
A Modified Self-Adaptive Sparrow Search Algorithm for Robust Multi-UAV Path Planning 被引量:1
16
作者 SUN Zhiyuan SHEN Bo +2 位作者 PAN Anqi XUE Jiankai MA Yuhang 《Journal of Donghua University(English Edition)》 CAS 2024年第6期630-643,共14页
With the advancement of technology,the collaboration of multiple unmanned aerial vehicles(multi-UAVs)is a general trend,both in military and civilian domains.Path planning is a crucial step for multi-UAV mission execu... With the advancement of technology,the collaboration of multiple unmanned aerial vehicles(multi-UAVs)is a general trend,both in military and civilian domains.Path planning is a crucial step for multi-UAV mission execution,it is a nonlinear problem with constraints.Traditional optimization algorithms have difficulty in finding the optimal solution that minimizes the cost function under various constraints.At the same time,robustness should be taken into account to ensure the reliable and safe operation of the UAVs.In this paper,a self-adaptive sparrow search algorithm(SSA),denoted as DRSSA,is presented.During optimization,a dynamic population strategy is used to allocate the searching effort between exploration and exploitation;a t-distribution perturbation coefficient is proposed to adaptively adjust the exploration range;a random learning strategy is used to help the algorithm from falling into the vicinity of the origin and local optimums.The convergence of DRSSA is tested by 29 test functions from the Institute of Electrical and Electronics Engineers(IEEE)Congress on Evolutionary Computation(CEC)2017 benchmark suite.Furthermore,a stochastic optimization strategy is introduced to enhance safety in the path by accounting for potential perturbations.Two sets of simulation experiments on multi-UAV path planning in three-dimensional environments demonstrate that the algorithm exhibits strong optimization capabilities and robustness in dealing with uncertain situations. 展开更多
关键词 multiple unmanned aerial vehicle(multi-UAV) path planning sparrow search algorithm(ssa) stochastic optimization
在线阅读 下载PDF
Research on Evacuation Path Planning Based on Improved Sparrow Search Algorithm 被引量:2
17
作者 Xiaoge Wei Yuming Zhang +2 位作者 Huaitao Song Hengjie Qin Guanjun Zhao 《Computer Modeling in Engineering & Sciences》 SCIE EI 2024年第5期1295-1316,共22页
Reducing casualties and property losses through effective evacuation route planning has been a key focus for researchers in recent years.As part of this effort,an enhanced sparrow search algorithm(MSSA)was proposed.Fi... Reducing casualties and property losses through effective evacuation route planning has been a key focus for researchers in recent years.As part of this effort,an enhanced sparrow search algorithm(MSSA)was proposed.Firstly,the Golden Sine algorithm and a nonlinear weight factor optimization strategy were added in the discoverer position update stage of the SSA algorithm.Secondly,the Cauchy-Gaussian perturbation was applied to the optimal position of the SSA algorithm to improve its ability to jump out of local optima.Finally,the local search mechanism based on the mountain climbing method was incorporated into the local search stage of the SSA algorithm,improving its local search ability.To evaluate the effectiveness of the proposed algorithm,the Whale Algorithm,Gray Wolf Algorithm,Improved Gray Wolf Algorithm,Sparrow Search Algorithm,and MSSA Algorithm were employed to solve various test functions.The accuracy and convergence speed of each algorithm were then compared and analyzed.The results indicate that the MSSA algorithm has superior solving ability and stability compared to other algorithms.To further validate the enhanced algorithm’s capabilities for path planning,evacuation experiments were conducted using different maps featuring various obstacle types.Additionally,a multi-exit evacuation scenario was constructed according to the actual building environment of a teaching building.Both the sparrow search algorithm and MSSA algorithm were employed in the simulation experiment for multiexit evacuation path planning.The findings demonstrate that the MSSA algorithm outperforms the comparison algorithm,showcasing its greater advantages and higher application potential. 展开更多
关键词 sparrow search algorithm optimization and improvement function test set evacuation path planning
在线阅读 下载PDF
Winter Wheat Yield Estimation Based on Sparrow Search Algorithm Combined with Random Forest:A Case Study in Henan Province,China 被引量:1
18
作者 SHI Xiaoliang CHEN Jiajun +2 位作者 DING Hao YANG Yuanqi ZHANG Yan 《Chinese Geographical Science》 SCIE CSCD 2024年第2期342-356,共15页
Precise and timely prediction of crop yields is crucial for food security and the development of agricultural policies.However,crop yield is influenced by multiple factors within complex growth environments.Previous r... Precise and timely prediction of crop yields is crucial for food security and the development of agricultural policies.However,crop yield is influenced by multiple factors within complex growth environments.Previous research has paid relatively little attention to the interference of environmental factors and drought on the growth of winter wheat.Therefore,there is an urgent need for more effective methods to explore the inherent relationship between these factors and crop yield,making precise yield prediction increasingly important.This study was based on four type of indicators including meteorological,crop growth status,environmental,and drought index,from October 2003 to June 2019 in Henan Province as the basic data for predicting winter wheat yield.Using the sparrow search al-gorithm combined with random forest(SSA-RF)under different input indicators,accuracy of winter wheat yield estimation was calcu-lated.The estimation accuracy of SSA-RF was compared with partial least squares regression(PLSR),extreme gradient boosting(XG-Boost),and random forest(RF)models.Finally,the determined optimal yield estimation method was used to predict winter wheat yield in three typical years.Following are the findings:1)the SSA-RF demonstrates superior performance in estimating winter wheat yield compared to other algorithms.The best yield estimation method is achieved by four types indicators’composition with SSA-RF)(R^(2)=0.805,RRMSE=9.9%.2)Crops growth status and environmental indicators play significant roles in wheat yield estimation,accounting for 46%and 22%of the yield importance among all indicators,respectively.3)Selecting indicators from October to April of the follow-ing year yielded the highest accuracy in winter wheat yield estimation,with an R^(2)of 0.826 and an RMSE of 9.0%.Yield estimates can be completed two months before the winter wheat harvest in June.4)The predicted performance will be slightly affected by severe drought.Compared with severe drought year(2011)(R^(2)=0.680)and normal year(2017)(R^(2)=0.790),the SSA-RF model has higher prediction accuracy for wet year(2018)(R^(2)=0.820).This study could provide an innovative approach for remote sensing estimation of winter wheat yield.yield. 展开更多
关键词 winter wheat yield estimation sparrow search algorithm combined with random forest(ssa-RF) machine learning multi-source indicator optimal lead time Henan Province China
在线阅读 下载PDF
基于QA-SSA-EARF的调节阀多工况故障诊断方法
19
作者 罗柯达 张登峰 +2 位作者 周通 王村松 张泉灵 《仪器仪表学报》 北大核心 2026年第1期111-122,共12页
调节阀在实际工作过程中需要运行于多种控制方式,使相同故障在不同控制工况下常呈现出差异的特征信息,导致基于单一工况数据训练的机器学习诊断模型难以泛化、性能下降。为此,提出了一种基于量子注意力麻雀搜索算法(QA-SSA)与弹性自适... 调节阀在实际工作过程中需要运行于多种控制方式,使相同故障在不同控制工况下常呈现出差异的特征信息,导致基于单一工况数据训练的机器学习诊断模型难以泛化、性能下降。为此,提出了一种基于量子注意力麻雀搜索算法(QA-SSA)与弹性自适应随机森林(EARF)模型相结合的调节阀多工况故障分类诊断方法。所提EARF模型在自适应随机森林(ARF)模型基础上,通过引入两级决策机制、优化全局漂移检测器位置、设计局部剪枝策略,并动态调节决策树数量,减少ARF模型的计算量,提高建模效率与诊断精度,增强对工况变化的自适应能力。针对EARF模型超参数耦合难以优化的难题,设计了一种QA-SSA优化算法,通过在传统麻雀搜索算法(SSA)中引入量子行为与玻尔兹曼选择策略,提高了算法在高维超参数空间的搜索效率与鲁棒性。最后,利用实验室电动调节阀流体控制系统平台,分别在流量、压力、液位等3种控制工况下针对调节阀的6类故障进行了模拟试验验证。结果表明,所提出的QA-SSA-EARF模型方法对单一工况下的分类诊断准确率达到97.47%,比优化后的随机森林(RF)模型和ARF模型分别提高了9.65%和3.64%;多工况下的平均分类诊断准确率达到93.12%,比其他两种模型方法分别提高了2.59%和8.9%,充分证明了该方法在多工况故障诊断任务中的有效性与鲁棒性。 展开更多
关键词 调节阀 故障诊断 麻雀搜索算法 自适应随机森林 超参数优化
原文传递
电动汽车充电桩充电负荷ISSA优化CNN-GRU短期预测
20
作者 刘兵 张明 《机械设计与制造》 北大核心 2026年第2期37-41,共5页
为了提高电动汽车充电桩设备的充电负荷短期预测能力,设计了一种改进麻雀搜索算法(ISSA)来实现卷积神经网络-门控循环神经网络(CNN-GRU)混合神经网络模型。综合发挥CNN特征提取、数据降维和GRU神经网络的各自优势,建立了一种CNN-GRU模型... 为了提高电动汽车充电桩设备的充电负荷短期预测能力,设计了一种改进麻雀搜索算法(ISSA)来实现卷积神经网络-门控循环神经网络(CNN-GRU)混合神经网络模型。综合发挥CNN特征提取、数据降维和GRU神经网络的各自优势,建立了一种CNN-GRU模型,再以ISSA实现模型参数的优化,最后利用优化模型预测充电负荷。研究结果表明:与其它模型相比,ISSA-CNN-GRU模型的MAE与RMSE均值达到了最小,获得了最高预测精度,预测结果误差较为集中。CNN模型在处理充电负荷大幅转折时,形成了较大的预测误差。ISSA算法对参数进行优化后能够实现CNN-GRU模型预测精度的显著提升。采用ISSA-CNN-GRU模型预测达到了最优精度,对于短时间的电动汽车充电负荷预测具备较大优势。逐渐增多网络层数后,CNN模型达到了更高预测精度,GRU模型则在二层网络层时达到了最高精度。 展开更多
关键词 深度学习 卷积神经网络 门控循环单元 麻雀搜索算法 电动汽车 充电负荷
在线阅读 下载PDF
上一页 1 2 86 下一页 到第
使用帮助 返回顶部