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Introducing atmospheric angular momentum into prediction of length of day change by generalized regression neural network model 被引量:9
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作者 王琪洁 杜亚男 刘建 《Journal of Central South University》 SCIE EI CAS 2014年第4期1396-1401,共6页
The general regression neural network(GRNN) model was proposed to model and predict the length of day(LOD) change, which has very complicated time-varying characteristics. Meanwhile, considering that the axial atmosph... The general regression neural network(GRNN) model was proposed to model and predict the length of day(LOD) change, which has very complicated time-varying characteristics. Meanwhile, considering that the axial atmospheric angular momentum(AAM) function is tightly correlated with the LOD changes, it was introduced into the GRNN prediction model to further improve the accuracy of prediction. Experiments with the observational data of LOD changes show that the prediction accuracy of the GRNN model is 6.1% higher than that of BP network, and after introducing AAM function, the improvement of prediction accuracy further increases to 14.7%. The results show that the GRNN with AAM function is an effective prediction method for LOD changes. 展开更多
关键词 神经网络模型 回归神经网络 预测模型 大气角动量 grnn 广义 预测精度 LOD
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Electricity price forecasting using generalized regression neural network based on principal components analysis 被引量:1
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作者 牛东晓 刘达 邢棉 《Journal of Central South University》 SCIE EI CAS 2008年第S2期316-320,共5页
A combined model based on principal components analysis (PCA) and generalized regression neural network (GRNN) was adopted to forecast electricity price in day-ahead electricity market. PCA was applied to mine the mai... A combined model based on principal components analysis (PCA) and generalized regression neural network (GRNN) was adopted to forecast electricity price in day-ahead electricity market. PCA was applied to mine the main influence on day-ahead price, avoiding the strong correlation between the input factors that might influence electricity price, such as the load of the forecasting hour, other history loads and prices, weather and temperature; then GRNN was employed to forecast electricity price according to the main information extracted by PCA. To prove the efficiency of the combined model, a case from PJM (Pennsylvania-New Jersey-Maryland) day-ahead electricity market was evaluated. Compared to back-propagation (BP) neural network and standard GRNN, the combined method reduces the mean absolute percentage error about 3%. 展开更多
关键词 ELECTRICITY PRICE forecasting generalized regression neural network principal COMPONENTS analysis
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Risk based security assessment of power system using generalized regression neural network with feature extraction 被引量:2
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作者 M. Marsadek A. Mohamed 《Journal of Central South University》 SCIE EI CAS 2013年第2期466-479,共14页
A comprehensive risk based security assessment which includes low voltage, line overload and voltage collapse was presented using a relatively new neural network technique called as the generalized regression neural n... A comprehensive risk based security assessment which includes low voltage, line overload and voltage collapse was presented using a relatively new neural network technique called as the generalized regression neural network (GRNN) with incorporation of feature extraction method using principle component analysis. In the risk based security assessment formulation, the failure rate associated to weather condition of each line was used to compute the probability of line outage for a given weather condition and the extent of security violation was represented by a severity function. For low voltage and line overload, continuous severity function was considered due to its ability to zoom in into the effect of near violating contingency. New severity function for voltage collapse using the voltage collapse prediction index was proposed. To reduce the computational burden, a new contingency screening method was proposed using the risk factor so as to select the critical line outages. The risk based security assessment method using GRNN was implemented on a large scale 87-bus power system and the results show that the risk prediction results obtained using GRNN with the incorporation of principal component analysis give better performance in terms of accuracy. 展开更多
关键词 广义回归神经网络 安全评估方法 风险因素 特征提取 电力系统 主成分分析 grnn 神经网络技术
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An Approach to Carbon Emissions Prediction Using Generalized Regression Neural Network Improved by Genetic Algorithm 被引量:1
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作者 Zhida Guo Jingyuan Fu 《Electrical Science & Engineering》 2020年第1期4-10,共7页
The study on scientific analysis and prediction of China’s future carbon emissions is conducive to balancing the relationship between economic development and carbon emissions in the new era,and actively responding t... The study on scientific analysis and prediction of China’s future carbon emissions is conducive to balancing the relationship between economic development and carbon emissions in the new era,and actively responding to climate change policy.Through the analysis of the application of the generalized regression neural network(GRNN)in prediction,this paper improved the prediction method of GRNN.Genetic algorithm(GA)was adopted to search the optimal smooth factor as the only factor of GRNN,which was then used for prediction in GRNN.During the prediction of carbon dioxide emissions using the improved method,the increments of data were taken into account.The target values were obtained after the calculation of the predicted results.Finally,compared with the results of GRNN,the improved method realized higher prediction accuracy.It thus offers a new way of predicting total carbon dioxide emissions,and the prediction results can provide macroscopic guidance and decision-making reference for China’s environmental protection and trading of carbon emissions. 展开更多
关键词 Carbon emissions Genetic Algorithm generalized regression neural network Smooth Factor PREDICTION
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Performance Prediction of Switched Reluctance Motor using Improved Generalized Regression Neural Networks for Design Optimization 被引量:4
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作者 Zhu Zhang Shenghua Rao Xiaoping Zhang 《CES Transactions on Electrical Machines and Systems》 2018年第4期371-376,共6页
Since practical mathematical model for the design optimization of switched reluctance motor(SRM)is difficult to derive because of the strong nonlinearity,precise prediction of electromagnetic characteristics is of gre... Since practical mathematical model for the design optimization of switched reluctance motor(SRM)is difficult to derive because of the strong nonlinearity,precise prediction of electromagnetic characteristics is of great importance during the optimization procedure.In this paper,an improved generalized regression neural network(GRNN)optimized by fruit fly optimization algorithm(FOA)is proposed for the modeling of SRM that represent the relationship of torque ripple and efficiency with the optimization variables,stator pole arc,rotor pole arc and rotor yoke height.Finite element parametric analysis technology is used to obtain the sample data for GRNN training and verification.Comprehensive comparisons and analysis among back propagation neural network(BPNN),radial basis function neural network(RBFNN),extreme learning machine(ELM)and GRNN is made to test the effectiveness and superiority of FOA-GRNN. 展开更多
关键词 Fruit fly optimization algorithm generalized regression neural networks switched reluctance motor
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Application of generalized regression neural network on fast 3D reconstruction
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作者 Babakhani Asad 杜志江 +2 位作者 孙立宁 Kardan Reza Mianji A. Fereidoun 《Journal of Harbin Institute of Technology(New Series)》 EI CAS 2007年第1期9-12,共4页
In robot-assisted surgery projects,researchers should be able to make fast 3D reconstruction. Usually 2D images acquired with common diagnostic equipments such as UT, CT and MRI are not enough and complete for an accu... In robot-assisted surgery projects,researchers should be able to make fast 3D reconstruction. Usually 2D images acquired with common diagnostic equipments such as UT, CT and MRI are not enough and complete for an accurate 3D reconstruction. There are some interpolation methods for approximating non value voxels which consume large execution time. A novel algorithm is introduced based on generalized regression neural network (GRNN) which can interpolate unknown voxles fast and reliable. The GRNN interpolation is used to produce new 2D images between each two succeeding ultrasonic images. It is shown that the composition of GRNN with image distance transformation can produce higher quality 3D shapes. The results of this method are compared with other interpolation methods practically. It shows this method can decrease overall time consumption on online 3D reconstruction. 展开更多
关键词 神经系统 自动化技术 可视化 图象插行
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Modelling the impact of climate change on rangeland forage production using a generalized regression neural network:a case study in Isfahan Province,Central Iran
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作者 Zahra JABERALANSAR Mostafa TARKESH +1 位作者 Mehdi BASSIRI Saeid POURMANAFI 《Journal of Arid Land》 SCIE CSCD 2017年第4期489-503,共15页
Monitoring of rangeland forage production at specified spatial and temporal scales is necessary for grazing management and also for implementation of rehabilitation projects in rangelands. This study focused on the ca... Monitoring of rangeland forage production at specified spatial and temporal scales is necessary for grazing management and also for implementation of rehabilitation projects in rangelands. This study focused on the capability of a generalized regression neural network(GRNN) model combined with GIS techniques to explore the impact of climate change on rangeland forage production. Specifically, a dataset of 115 monitored records of forage production were collected from 16 rangeland sites during the period 1998–2007 in Isfahan Province, Central Iran. Neural network models were designed using the monitored forage production values and available environmental data(including climate and topography data), and the performance of each network model was assessed using the mean estimation error(MEE), model efficiency factor(MEF), and correlation coefficient(r). The best neural network model was then selected and further applied to predict the forage production of rangelands in the future(in 2030 and 2080) under A1 B climate change scenario using Hadley Centre coupled model. The present and future forage production maps were also produced. Rangeland forage production exhibited strong correlations with environmental factors, such as slope, elevation, aspect and annual temperature. The present forage production in the study area varied from 25.6 to 574.1 kg/hm^2. Under climate change scenario, the annual temperature was predicted to increase and the annual precipitation was predicted to decrease. The prediction maps of forage production in the future indicated that the area with low level of forage production(0–100 kg/hm^2) will increase while the areas with moderate, moderately high and high levels of forage production(≥100 kg/hm^2) will decrease both in 2030 and in 2080, which may be attributable to the increasing annual temperature and decreasing annual precipitation. It was predicted that forage production of rangelands will decrease in the next couple of decades, especially in the western and southern parts of Isfahan Province. These changes are more pronounced in elevations between 2200 and 2900 m. Therefore, rangeland managers have to cope with these changes by holistic management approaches through mitigation and human adaptations. 展开更多
关键词 广义回归神经网络 气候变化 草地牧草 牧草生产 神经网络模拟 伊朗 神经网络模型 牧草产量
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Parameters optimization for exponentially weighted moving average control chart using generalized regression neural network
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作者 梁宗保 《Journal of Chongqing University》 CAS 2006年第3期131-136,共6页
As a useful alternative of Shewhart control chart, exponentially weighted moving average (EWMA) control chat has been applied widely to quality control, process monitoring, forecast, etc. In this paper, a method was i... As a useful alternative of Shewhart control chart, exponentially weighted moving average (EWMA) control chat has been applied widely to quality control, process monitoring, forecast, etc. In this paper, a method was introduced for optimal design of EWMA and multivariate EWMA (MEWMA) control charts, in which the optimal parameter pair ( λ ,k) or ( λ ,h) was searched by using the generalized regression neural network (GRNN). The results indicate that the optimal parameter pair can be obtained effectively by the proposed strategy for a given in-control average running length (ARL0) and shift to detect under any conditions, removing the drawback of incompleteness existing in the tables that had been reported. 展开更多
关键词 参数最优化 EWMA 控制图 神经网络
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Forecasting model of residential load based on general regression neural network and PSO-Bayes least squares support vector machine 被引量:5
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作者 何永秀 何海英 +1 位作者 王跃锦 罗涛 《Journal of Central South University》 SCIE EI CAS 2011年第4期1184-1192,共9页
Firstly,general regression neural network(GRNN) was used for variable selection of key influencing factors of residential load(RL) forecasting.Secondly,the key influencing factors chosen by GRNN were used as the input... Firstly,general regression neural network(GRNN) was used for variable selection of key influencing factors of residential load(RL) forecasting.Secondly,the key influencing factors chosen by GRNN were used as the input and output terminals of urban and rural RL for simulating and learning.In addition,the suitable parameters of final model were obtained through applying the evidence theory to combine the optimization results which were calculated with the PSO method and the Bayes theory.Then,the model of PSO-Bayes least squares support vector machine(PSO-Bayes-LS-SVM) was established.A case study was then provided for the learning and testing.The empirical analysis results show that the mean square errors of urban and rural RL forecast are 0.02% and 0.04%,respectively.At last,taking a specific province RL in China as an example,the forecast results of RL from 2011 to 2015 were obtained. 展开更多
关键词 最小二乘支持向量机 广义回归神经网络 贝叶斯理论 负荷预测 PSO 模型基 住宅 影响因素
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Prediction of Water Table Based on General Regression Neural Network
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作者 GUAN Shuai QIAN Cheng 《科技视界》 2017年第35期56-57,共2页
Traditional methods for water table prediction have such defects as extensive calculation and reliance on the presupposition of a homogeneous and regular aquifer.Based on the fundamentals of the general regression neu... Traditional methods for water table prediction have such defects as extensive calculation and reliance on the presupposition of a homogeneous and regular aquifer.Based on the fundamentals of the general regression neural network(GRNN),this article sets up a GRNN model for water level prediction.Case study indicates that this model,even with limited information,has satisfactory prediction accuracy,which,coupled with a simple model structure and relatively high calculation efficiency,mean a vast application prospect for the model. 展开更多
关键词 general regression neural network Water TABLE PREDICTION INDEX model LINEAR regression
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改进的MVO-GRNN神经网络岩爆预测模型研究
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作者 侯克鹏 包广拓 孙华芬 《安全与环境学报》 CAS CSCD 北大核心 2024年第3期923-932,共10页
准确预测岩爆烈度等级能有效指导岩爆灾害的防控。根据影响岩爆发生及烈度等级的3个因素构建岩爆评价指标体系,提出一种基于改进多元宇宙算法(Improved Multi-Verse Optimizer,IMVO)优化广义回归神经网络(General Regression Neural Net... 准确预测岩爆烈度等级能有效指导岩爆灾害的防控。根据影响岩爆发生及烈度等级的3个因素构建岩爆评价指标体系,提出一种基于改进多元宇宙算法(Improved Multi-Verse Optimizer,IMVO)优化广义回归神经网络(General Regression Neural Network,GRNN)的岩爆预测模型。在普通多元宇宙算法(MVO)的基础上,运用自适应平衡机制调节MVO算法中的虫洞存在概率(V_(WEP))和旅行距离率(V_(TDR))两个重要参数来改进该算法;再运用改进的多元宇宙算法优化广义回归神经网络的光滑度,通过训练数据优选出最佳光滑因子σ,得到IMVO-GRNN神经网络岩爆烈度预测模型;最后结合工程实例验证模型的性能。研究表明,该模型相比传统模型寻优能力更强,精度更高,为岩爆预测提供了一种新的思路。 展开更多
关键词 安全工程 岩爆预测 多元宇宙算法 广义回归神经网络(grnn) 虫洞存在概率 旅行距离率
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基于GRNN-MC的变压器振动信号预测
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作者 钱国超 王山 +3 位作者 张家顺 代维菊 朱龙昌 王丰华 《电工电能新技术》 CSCD 北大核心 2024年第3期41-48,共8页
变压器振动信号是评估其工作状态的重要参数之一,与绕组松动或变形等隐患密切相关,为揭示变压器振动信号的变化趋势,本文提出了一种基于广义回归神经网络和马尔科夫链修正的变压器振动信号预测方法。即分别以变压器运行电压、负载电流... 变压器振动信号是评估其工作状态的重要参数之一,与绕组松动或变形等隐患密切相关,为揭示变压器振动信号的变化趋势,本文提出了一种基于广义回归神经网络和马尔科夫链修正的变压器振动信号预测方法。即分别以变压器运行电压、负载电流和振动信号归一化特征频率为输入和输出建立变压器振动信号广义回归神经网络预测模型,然后引入马尔科夫链并结合负载电流的变化对振动信号计算结果进行修正以获得最终的预测结果。对某500 kV变压器振动在线监测信号的分析结果表明:经马尔科夫链修正后的变压器广义回归神经网络振动信号预测模型预测精度高,可为变压器绕组运行状态的振动监测技术提供重要参考。 展开更多
关键词 变压器 振动信号 广义回归神经网络 马尔科夫链 归一化特征频率
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基于改进GWO-GRNN的管道焊缝三维重构测量
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作者 高博轩 赵弘 苗兴园 《机床与液压》 北大核心 2024年第1期1-10,共10页
为提高双目相机不同位姿下焊缝的三维重构测量精度,提出一种基于立体视觉图像误差补偿的管道焊缝三维重构测量方法。采用改进灰狼算法(IGWO)优化广义回归神经网络(GRNN)补偿焊缝三维重构图像点的坐标误差。采用混沌映射、非线性收敛因... 为提高双目相机不同位姿下焊缝的三维重构测量精度,提出一种基于立体视觉图像误差补偿的管道焊缝三维重构测量方法。采用改进灰狼算法(IGWO)优化广义回归神经网络(GRNN)补偿焊缝三维重构图像点的坐标误差。采用混沌映射、非线性收敛因子和最优记忆保存思想对GWO算法进行改进,通过8个标准测试函数进行仿真验证;利用优化后的GRNN模型对图像点坐标误差进行预测和补偿,计算三维坐标重构出焊缝点云,三维测量焊缝的焊宽、余高和长度。试验结果表明:该模型在双目相机不同的位姿状态下都能较准确地实现焊缝的三维重构,焊缝的三维测量相对误差在0.9%以内。 展开更多
关键词 立体视觉 图像误差补偿 改进灰狼优化 广义回归神经网络 焊缝三维重构测量
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基于LPSO-GRNN模型的螺栓松紧状态预测研究
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作者 梁伟 陈志雄 +4 位作者 欧阳忠杰 龚晟炜 钟建华 钟舜聪 廖华忠 《机电工程》 CAS 北大核心 2023年第11期1814-1822,共9页
在轴重式动态汽车衡的服役状态下,由于受到重型货车频繁的加卸载循环冲击,会导致其内部螺栓发生松弛脱落,针对这一问题,提出了一种基于莱维飞行改进粒子群算法优化的广义回归神经网络(LPSO-GRNN)的轴重式动态汽车衡螺栓松紧状态预测模型... 在轴重式动态汽车衡的服役状态下,由于受到重型货车频繁的加卸载循环冲击,会导致其内部螺栓发生松弛脱落,针对这一问题,提出了一种基于莱维飞行改进粒子群算法优化的广义回归神经网络(LPSO-GRNN)的轴重式动态汽车衡螺栓松紧状态预测模型,并结合振动信号特征提取,将该模型应用于汽车衡螺栓松紧状态的预测。首先,研究并提取了螺栓不同松紧状态下输出振动信号的波形指标、峰值指标、脉冲指标、峭度指标等信号特征,并将其作为模型的共同输入特征向量;然后,采用莱维飞行提高了粒子群优化算法的寻优能力,通过产生随机步长,提高了算法的全局寻优能力,避免算法陷入局部最优值;利用改进的算法对广义回归神经网络(GRNN)的光滑因子进行了优化,得到了全局最优的光滑因子;最后,通过设计实验,分别使用广义回归神经网络(GRNN)、粒子群算法优化广义回归神经网络(PSO-GRNN)和LPSO-GRNN,以此来对螺栓松紧状态进行了预测,并将预测结果与实际情况进行了对比分析。实验结果表明:基于LPSO-GRNN建立的螺栓松紧状态预测模型,其预测准确率可达到95%。研究结果表明:该螺栓松紧状态预测模型可以有效提高汽车衡螺栓松紧预测的准确率,同时有效解决粒子群算法容易陷入局部最优收敛的问题。 展开更多
关键词 轴重式动态汽车衡 LPSO-grnn预测模型 螺栓紧固 振动信号特征提取 广义回归神经网络 粒子群算法优化 莱维飞行
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面向磨损检测的切削表面粗糙度评估及AGRNN预测
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作者 孙备 张玲玲 +2 位作者 李峰 赵凯绅 王翠芳 《制造技术与机床》 北大核心 2023年第9期74-79,共6页
当前切削表面粗糙度大多需要结合人工经验以及多次测试方法,加工质量难以得到保障。在充分发挥加工阶段历史参数作用的基础上,构建了磨损监测模型。同时为了满足算法精度以及响应速率的要求,引入了快速响应和逼近的自适应广义回归神经网... 当前切削表面粗糙度大多需要结合人工经验以及多次测试方法,加工质量难以得到保障。在充分发挥加工阶段历史参数作用的基础上,构建了磨损监测模型。同时为了满足算法精度以及响应速率的要求,引入了快速响应和逼近的自适应广义回归神经网络(AGRNN)进行粗糙度预测。研究结果表明:计算得到粗糙度预测数据和实际值相关系数达到R^(2)=0.988,预测模型达到了理想的控制状态,预测精度满足调控标准,经过设备调节后可以继续缩短响应时间。在主轴转速1000~2000 r/min、进给量0.2~0.3 mm/r、轴向切深0.2~0.4 mm、径向切深1~5 mm范围内,AGRNN对应的磨损与粗糙度MAPE依次为3.685和2.236,低于卷积神经网络(CNN)、高斯过程回归(GPR)、支持向量机(SVM)和多元线性回归(MLR)4种算法,达到了理想预测效果,控制决策时间也明显缩短。 展开更多
关键词 粗糙度 大数据 自适应广义回归神经网络 磨损 质量稳定控制
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GRNN神经网络在汽车发动机性能预测中的应用
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作者 林冬燕 《集美大学学报(自然科学版)》 CAS 2023年第5期467-472,共6页
建立多输入参数条件下发动机动力性能及燃油经济性能预测模型,研究平滑因子、输入参数对预测精度的影响;建立预测模型,研究发动机运转参数对动力性能与燃油消耗率的影响规律。研究结果表明:采用广义回归神经网络(GRNN)能构建准确性较高... 建立多输入参数条件下发动机动力性能及燃油经济性能预测模型,研究平滑因子、输入参数对预测精度的影响;建立预测模型,研究发动机运转参数对动力性能与燃油消耗率的影响规律。研究结果表明:采用广义回归神经网络(GRNN)能构建准确性较高的发动机动力性能与燃油经济性能预测模型;选择合适的平滑因子可使GRNN算法获得的预测值避免出现较大波动,同时兼顾较高预测精度;保持合适的油门开度能使发动机输出较高的功率和转矩;低功率或低油门开度使发动机燃油消耗率较高。 展开更多
关键词 汽车发动机 预测模型 广义回归神经网络 动力性能 燃油消耗率
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Short-term Load Forecasting of Regional Distribution Network Based on Generalized Regression Neural Network Optimized by Grey Wolf Optimization Algorithm 被引量:9
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作者 Leijiao Ge Yiming Xian +3 位作者 Zhongguan Wang Bo Gao Fujian Chi Kuo Sun 《CSEE Journal of Power and Energy Systems》 SCIE CSCD 2021年第5期1093-1101,共9页
Short-term load forecasting of regional distribution network is the key to the economic operation of smart distribution systems,which not only requires high accuracy and fast calculation speed,but also has a diversity... Short-term load forecasting of regional distribution network is the key to the economic operation of smart distribution systems,which not only requires high accuracy and fast calculation speed,but also has a diversity of influential factors and strong randomness.This paper proposes a short-term load forecasting model for regional distribution network combining the maximum information coefficient,factor analysis,gray wolf optimization,and generalized regression neural network(MIC-FA-GWO-GRNN).To screen and decrease the dimension of the multiple-input features of the short-term load forecasting model,MIC is first used to quantify the non-linear correlation between the load and input features,and to eliminate the ineffective features,and then FA is used to reduce the dimension of the screened input features on the premise of preserving the main information of input features.After that the high-precision short-term丨oad forecasting based on GWO-GRNN model is realized.GRNN is used to regressively analyze the input features after screening and dimension reduction,and the parameter of GRNN is optimized by using the GWO,which has strong global searching ability and fast convergence.Finally a case study of a regional distribution network in Tianjin,China verifies the accuracy and applicability of the proposed forecasting model. 展开更多
关键词 Factor analysis generalized regression neural network gray wolf optimization maximum information coefficient short-term load forecasting
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Underwater Positioning Based on an Artificial Lateral Line and a Generalized Regression Neural Network 被引量:8
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作者 Xiande Zheng Yong Zhang +4 位作者 Mingjiang Ji Ying Liu Xin Lin Jing Qiu Guanjun Liu 《Journal of Bionic Engineering》 SCIE EI CSCD 2018年第5期883-893,共11页
关键词 回归神经网络 侧面 水下 人工 压力传感器 食肉动物 识别问题 采样间隔
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基于灰狼算法优化GRNN的润滑油摩擦磨损性能预测 被引量:1
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作者 夏延秋 王春丽 +1 位作者 冯欣 蔡美荣 《摩擦学学报》 EI CAS CSCD 北大核心 2023年第8期947-955,共9页
针对齿轮油极压抗磨添加剂的复配问题,提出基于灰狼算法优化的广义回归神经网络(GWO-GRNN)摩擦学性能参数优化模型.选用齿轮油常用的硫化异丁烯(T321)、磷酸三甲酚酯(T306)、异辛基酸性硫磷脂十八胺(T308)和二烷基二硫代氨基甲酸钼(MoD... 针对齿轮油极压抗磨添加剂的复配问题,提出基于灰狼算法优化的广义回归神经网络(GWO-GRNN)摩擦学性能参数优化模型.选用齿轮油常用的硫化异丁烯(T321)、磷酸三甲酚酯(T306)、异辛基酸性硫磷脂十八胺(T308)和二烷基二硫代氨基甲酸钼(MoDTC)这4种材料为添加剂,设计正交试验制备齿轮油并使用MFT-R4000往复摩擦磨损试验机测试其摩擦学性能,分别建立平均摩擦系数和磨损体积性能预测模型并对模型参数进行优化,提高模型预测的准确性,采用留出法和留一交叉验证法评估模型在数据集上的泛化能力,降低模型过拟合的风险.研究结果表明:在引入灰狼算法(GWO)优化广义回归神经网络(GRNN)的平滑参数σ后,预测模型的决定系数R2得到明显提升,GWO-GRNN平均摩擦系数预测模型的R2达到96%,磨损体积预测模型的R2达到91%;表明该模型能够在小样本情况下较为准确预测出齿轮油极压抗磨添加剂的摩擦学性能,为齿轮油极压抗磨添加剂的复配研究提供了新方法. 展开更多
关键词 添加剂 摩擦磨损 灰狼算法 广义回归神经网络 润滑性能预测
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基于ABC-GRNN组合模型的露天矿边坡变形预测 被引量:2
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作者 宁永香 崔希民 崔建国 《煤田地质与勘探》 CAS CSCD 北大核心 2023年第3期65-72,共8页
准确预测露天矿边坡变形是有效实现边坡临灾预警的重要保证,针对传统边坡变形预测方法无法表征和综合分析边坡变形受多种因素的影响,提出一种露天矿边坡变形的人工蜂群(ABC)算法优化广义回归网络(GRNN)组合预测模型(ABC-GRNN)。在此预... 准确预测露天矿边坡变形是有效实现边坡临灾预警的重要保证,针对传统边坡变形预测方法无法表征和综合分析边坡变形受多种因素的影响,提出一种露天矿边坡变形的人工蜂群(ABC)算法优化广义回归网络(GRNN)组合预测模型(ABC-GRNN)。在此预测模型中,综合考虑了影响露天矿边坡变形的5个因素:开采扰动、降雨量、降雨持续时间、温度以及湿度。以山西中煤平朔安家岭露天矿为例,通过遗传算法改进BP神经网络(GA-BPNN)、支持向量机(SVM)等人工智能算法与实测变形数据进行预测效果对比分析。结果表明:ABC算法能够快速帮助GRNN寻优获取合适的传递参数,并对变形进行有效的预测。ABC-GRNN组合预测模型,将预测结果的平均绝对误差292.9 mm、平均绝对百分比误差0.691 3%及均方根误差338.9 mm分别降低到25 mm、0.043 3%和29.5 mm,说明该模型具有更高的预测精度;ABC-GRNN模型比其他模型收敛速度快,只经过7步的迭代,即可得到最小的均方误差。与其他预测模型相比较,本文模型的预测精度更高、泛化能力更强、收敛速度更快,有较高的实用价值。 展开更多
关键词 露天矿 边坡变形 蜂群算法 广义回归神经网络 预测模型 预测精度
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