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Research on Plant Species Identification Based on Improved Convolutional Neural Network
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作者 Chuangchuang Yuan Tonghai Liu +2 位作者 Shuang Song Fangyu Gao Rui Zhang 《Phyton-International Journal of Experimental Botany》 SCIE 2023年第4期1037-1058,共22页
Plant species recognition is an important research area in image recognition in recent years.However,the existing plant species recognition methods have low recognition accuracy and do not meet professional requiremen... Plant species recognition is an important research area in image recognition in recent years.However,the existing plant species recognition methods have low recognition accuracy and do not meet professional requirements in terms of recognition accuracy.Therefore,ShuffleNetV2 was improved by combining the current hot concern mechanism,convolution kernel size adjustment,convolution tailoring,and CSP technology to improve the accuracy and reduce the amount of computation in this study.Six convolutional neural network models with sufficient trainable parameters were designed for differentiation learning.The SGD algorithm is used to optimize the training process to avoid overfitting or falling into the local optimum.In this paper,a conventional plant image dataset TJAU10 collected by cell phones in a natural context was constructed,containing 3000 images of 10 plant species on the campus of Tianjin Agricultural University.Finally,the improved model is compared with the baseline version of the model,which achieves better results in terms of improving accuracy and reducing the computational effort.The recognition accuracy tested on the TJAU10 dataset reaches up to 98.3%,and the recognition precision reaches up to 93.6%,which is 5.1%better than the original model and reduces the computational effort by about 31%compared with the original model.In addition,the experimental results were evaluated using metrics such as the confusion matrix,which can meet the requirements of professionals for the accurate identification of plant species. 展开更多
关键词 Deep learning convolutional neural network plant identification model improvement
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Proton exchange membrane fuel cells modeling based on artificial neural networks 被引量:4
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作者 YudongTian XinjianZhu GuangyiCao 《Journal of University of Science and Technology Beijing》 CSCD 2005年第1期72-77,共6页
To understand the complexity of the mathematical models of a proton exchange membrane fuel cell (PEMFC) and their shortage of practical PEMFC control, the PEMFC complex mechanism and the existing PEMFC models are anal... To understand the complexity of the mathematical models of a proton exchange membrane fuel cell (PEMFC) and their shortage of practical PEMFC control, the PEMFC complex mechanism and the existing PEMFC models are analyzed, and artificial neural networks based PEMFC modeling is advanced. The structure, algorithm, training and simulation of PEMFC modeling based on improved BP networks are given out in detail. The computer simulation and conducted experiment verify that this model is fast and accurate, and can be used as a suitable operational model for PEMFC real-time control. 展开更多
关键词 fuel cells proton exchange membrane artificial neural networks improved BP algorithm modelING
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Improved lightweight road damage detection based on YOLOv5
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作者 LIU Chang SUN Yu +2 位作者 CHEN Jin YANG Jing WANG Fengchao 《Optoelectronics Letters》 2025年第5期314-320,共7页
There is a problem of real-time detection difficulty in road surface damage detection. This paper proposes an improved lightweight model based on you only look once version 5(YOLOv5). Firstly, this paper fully utilize... There is a problem of real-time detection difficulty in road surface damage detection. This paper proposes an improved lightweight model based on you only look once version 5(YOLOv5). Firstly, this paper fully utilized the convolutional neural network(CNN) + ghosting bottleneck(G_bneck) architecture to reduce redundant feature maps. Afterwards, we upgraded the original upsampling algorithm to content-aware reassembly of features(CARAFE) and increased the receptive field. Finally, we replaced the spatial pyramid pooling fast(SPPF) module with the basic receptive field block(Basic RFB) pooling module and added dilated convolution. After comparative experiments, we can see that the number of parameters and model size of the improved algorithm in this paper have been reduced by nearly half compared to the YOLOv5s. The frame rate per second(FPS) has been increased by 3.25 times. The mean average precision(m AP@0.5: 0.95) has increased by 8%—17% compared to other lightweight algorithms. 展开更多
关键词 road surface damage detection convolutional neural network feature maps convolutional neural network cnn lightweight model yolov improved lightweight model spatial pyram
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A New Searching Strategy for the Lost Plane Based on RBF Neural Network Model and Global Optimization Model
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作者 Yiqing YU 《International Journal of Technology Management》 2015年第4期126-128,共3页
In this paper, we construct two models for the searching task for a lost plane. Model 1 determines the searching area. We predict the trajectory of floats generated after the disintegration of the plane by using RBF n... In this paper, we construct two models for the searching task for a lost plane. Model 1 determines the searching area. We predict the trajectory of floats generated after the disintegration of the plane by using RBF neural network model, and then determine the searching area according to the trajectory. With the pass of time, the searching area will also be constantly moving along the trajectory. Model 2 develops a maritime search plan to achieve the purpose of completing the search in the shortest time. We optimize the searching time and transform the problem into the 0-1 knapsack problem. Solving this problem by improved genetic algorithm, we can get the shortest searching time and the best choice for the search power. 展开更多
关键词 the trajectory of floats RBF neural network model Global optimization model 0-1 knapsack problem improved geneticalgorithm
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Predicting formation lithology from log data by using a neural network 被引量:6
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作者 Wang Kexiong Zhang Laibin 《Petroleum Science》 SCIE CAS CSCD 2008年第3期242-246,共5页
In order to increase drilling speed in deep complicated formations in Kela-2 gas field, Tarim Basin, Xinjiang, west China, it is important to predict the formation lithology for drilling bit optimization. Based on the... In order to increase drilling speed in deep complicated formations in Kela-2 gas field, Tarim Basin, Xinjiang, west China, it is important to predict the formation lithology for drilling bit optimization. Based on the conventional back propagation (BP) model, an improved BP model was proposed, with main modifications of back propagation of error, self-adapting algorithm, and activation function, also a prediction program was developed. The improved BP model was successfully applied to predicting the lithology of formations to be drilled in the Kela-2 gas field. 展开更多
关键词 Kela-2 gas field neural network improved back-propagation (BP) model log data lithology prediction
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Two-Phase Rate Adaptation Strategy for Improving Real-Time Video QoE in Mobile Networks 被引量:3
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作者 Ailing Xiao Jie Liu +2 位作者 Yizhe Li Qiwei Song Ning Ge 《China Communications》 SCIE CSCD 2018年第10期12-24,共13页
With the popularity of smart handheld devices, mobile streaming video has multiplied the global network traffic in recent years. A huge concern of users' quality of experience(Qo E) has made rate adaptation method... With the popularity of smart handheld devices, mobile streaming video has multiplied the global network traffic in recent years. A huge concern of users' quality of experience(Qo E) has made rate adaptation methods very attractive. In this paper, we propose a two-phase rate adaptation strategy to improve users' real-time video Qo E. First, to measure and assess video Qo E, we provide a continuous Qo E prediction engine modeled by RNN recurrent neural network. Different from traditional Qo E models which consider the Qo E-aware factors separately or incompletely, our RNN-Qo E model accounts for three descriptive factors(video quality, rebuffering, and rate change) and reflects the impact of cognitive memory and recency. Besides, the video playing is separated into the initial startup phase and the steady playback phase, and we takes different optimization goals for each phase: the former aims at shortening the startup delay while the latter ameliorates the video quality and the rebufferings. Simulation results have shown that RNN-Qo E can follow the subjective Qo E quite well, and the proposed strategy can effectively reduce the occurrence of rebufferings caused by the mismatch between the requested video rates and the fluctuated throughput and attains standout performance on real-time Qo E compared with classical rate adaption methods. 展开更多
关键词 continuous quality of experience (QoE) model recurrent neural network(RNN) real-time video QoE improving dynamic adaptive streaming over HTTP (DASH)
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Chinese News Text Classification Based on Convolutional Neural Network 被引量:2
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作者 Hanxu Wang Xin Li 《Journal on Big Data》 2022年第1期41-60,共20页
With the explosive growth of Internet text information,the task of text classification is more important.As a part of text classification,Chinese news text classification also plays an important role.In public securit... With the explosive growth of Internet text information,the task of text classification is more important.As a part of text classification,Chinese news text classification also plays an important role.In public security work,public opinion news classification is an important topic.Effective and accurate classification of public opinion news is a necessary prerequisite for relevant departments to grasp the situation of public opinion and control the trend of public opinion in time.This paper introduces a combinedconvolutional neural network text classification model based on word2vec and improved TF-IDF:firstly,the word vector is trained through word2vec model,then the weight of each word is calculated by using the improved TFIDF algorithm based on class frequency variance,and the word vector and weight are combined to construct the text vector representation.Finally,the combined-convolutional neural network is used to train and test the Thucnews data set.The results show that the classification effect of this model is better than the traditional Text-RNN model,the traditional Text-CNN model and word2vec-CNN model.The test accuracy is 97.56%,the accuracy rate is 97%,the recall rate is 97%,and the F1-score is 97%. 展开更多
关键词 Chinese news text classification word2vec model improved TF-IDF combined-convolutional neural network public opinion news
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3D laser scanning strategy based on cascaded deep neural network
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作者 Xiao-bin Xu Ming-hui Zhao +4 位作者 Jian Yang Yi-yang Xiong Feng-lin Pang Zhi-ying Tan Min-zhou Luo 《Defence Technology(防务技术)》 SCIE EI CAS CSCD 2022年第9期1727-1739,共13页
A 3D laser scanning strategy based on cascaded deep neural network is proposed for the scanning system converted from 2D Lidar with a pitching motion device. The strategy is aimed at moving target detection and monito... A 3D laser scanning strategy based on cascaded deep neural network is proposed for the scanning system converted from 2D Lidar with a pitching motion device. The strategy is aimed at moving target detection and monitoring. Combining the device characteristics, the strategy first proposes a cascaded deep neural network, which inputs 2D point cloud, color image and pitching angle. The outputs are target distance and speed classification. And the cross-entropy loss function of network is modified by using focal loss and uniform distribution to improve the recognition accuracy. Then a pitching range and speed model are proposed to determine pitching motion parameters. Finally, the adaptive scanning is realized by integral separate speed PID. The experimental results show that the accuracies of the improved network target detection box, distance and speed classification are 90.17%, 96.87% and 96.97%, respectively. The average speed error of the improved PID is 0.4239°/s, and the average strategy execution time is 0.1521 s.The range and speed model can effectively reduce the collection of useless information and the deformation of the target point cloud. Conclusively, the experimental of overall scanning strategy show that it can improve target point cloud integrity and density while ensuring the capture of target. 展开更多
关键词 Scanning strategy Cascaded deep neural network improved cross entropy loss function Pitching range and speed model Integral separate speed PID
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Ultra-short-term Photovoltaic Power Prediction Based on Improved Temporal Convolutional Network and Feature Modeling
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作者 Hao Xiao Wanting Zheng +1 位作者 Hai Zhou Wei Pei 《CSEE Journal of Power and Energy Systems》 2025年第5期2024-2035,共12页
Accurate ultra-short-term photovoltaic(PV)power forecasting is crucial for mitigating variations caused by PV power generation and ensuring the stable and efficient operation of power grids.To capture intricate tempor... Accurate ultra-short-term photovoltaic(PV)power forecasting is crucial for mitigating variations caused by PV power generation and ensuring the stable and efficient operation of power grids.To capture intricate temporal relationships and enhance the precision of multi-step time forecast,this paper introduces an innovative approach for ultra-short-term photovoltaic(PV)power prediction,leveraging an enhanced Temporal Convolutional Neural Network(TCN)architecture and feature modeling.First,this study introduces a method employing the Spearman coefficient for meteorological feature filtration.Integrated with three-dimensional PV panel modeling,key factors influencing PV power generation are identified and prioritized.Second,the analysis of the correlation coefficient between astronomical features and PV power prediction demonstrates the theoretical substantiation for the practicality and essentiality of incorporating astronomical features.Third,an enhanced TCN model is introduced,augmenting the original TCN structure with a projection head layer to enhance its capacity for learning and expressing nonlinear features.Meanwhile,a new rolling timing network mechanism is constructed to guarantee the segmentation prediction of future long-time output sequences.Multiple experiments demonstrate the superior performance of the proposed forecasting method compared to existing models.The accuracy of PV power prediction in the next 4 hours,devoid of meteorological conditions,increases by 20.5%.Furthermore,incorporating shortwave radiation for predictions over 4 hours,2 hours,and 1 hour enhances accuracy by 11.1%,9.1%,and 8.8%,respectively. 展开更多
关键词 Astronomical feature feature modeling improved temporal convolutional neural network solar power generation ultra-short-term power generation prediction
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基于神经网络代理模型的风电机组变桨控制参数优化
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作者 周晓飞 刘志力 +3 位作者 王晓东 刘颖明 焦一飞 万佳 《可再生能源》 北大核心 2026年第2期215-222,共8页
针对风电机组详细模型复杂度高、计算量大,且变桨参数优化效果不佳的问题,文章提出一种基于代理模型的风电机组变桨控制参数智能优化方法。该方法采用广义回归(GRNN)神经网络,结合机组运行数据建立变桨距风电机组响应特性代理模型,在保... 针对风电机组详细模型复杂度高、计算量大,且变桨参数优化效果不佳的问题,文章提出一种基于代理模型的风电机组变桨控制参数智能优化方法。该方法采用广义回归(GRNN)神经网络,结合机组运行数据建立变桨距风电机组响应特性代理模型,在保留风电机组气动特性的同时,有效提升了仿真计算速度。基于此代理模型,引入改进粒子群算法优化的BP神经网络算法(改进PSO-BPNN算法),以输出功率稳定性和疲劳载荷综合最优为目标,实现对PI参数快速、准确优化。实测数据与仿真算例验证结果表明,该策略可大幅减小风电机组变桨参数优化过程中的计算量,优化所得参数能够实现输出功率稳定性与疲劳载荷的综合最优目标。 展开更多
关键词 代理模型 仿真速度 广义回归神经网络 改进PSO-BPNN算法 参数优化
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面向溢流风险的多分类智能识别模型
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作者 武胜男 张来斌 +3 位作者 胡一鸣 崔蓉 刘书杰 殷志明 《中国安全科学学报》 北大核心 2026年第1期72-80,共9页
为提升钻井过程已发溢流风险的识别准确率,融合特征工程与机器学习方法,建立一种多类别溢流风险智能识别模型。首先,基于现场实测溢流数据,采用小波变换实现噪声抑制;其次,结合光滑样条函数提取关键参数的动态变化趋势,据此分析溢流特... 为提升钻井过程已发溢流风险的识别准确率,融合特征工程与机器学习方法,建立一种多类别溢流风险智能识别模型。首先,基于现场实测溢流数据,采用小波变换实现噪声抑制;其次,结合光滑样条函数提取关键参数的动态变化趋势,据此分析溢流特征参数的异常波动行为,建立低、中、高3类风险等级的判定准则,根据钻井数据的变化特征标记溢流风险;然后,引入麻雀搜索算法(SSA)优化极限学习机(ELM),构建基于改进型ELM(IELM)的多分类溢流风险智能识别模型;最后,所构建的风险数据集进行模型训练、调优与测试,验证模型的识别性能。结果表明:IELM模型在分类精度与判别稳定性方面均优于原始ELM及反向传播(BP)神经网络模型,能够更准确和高效地识别不同等级的溢流风险。 展开更多
关键词 溢流风险 识别模型 改进极限学习机(IELM) 神经网络 表征参数
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基于改进灰狼算法优化CNN-LSTM的短期光伏发电预测
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作者 刘溦 曾烨 +2 位作者 张磊 闫秀英 赵山西 《建筑电气》 2026年第2期58-62,共5页
为解决长短期记忆(LSTM)神经网络模型在进行光伏发电预测时调参复杂、训练过程困难等问题,将卷积神经网络(CNN)从光伏发电组时间序列数据中提取空间特征;然后将其输入到LSTM神经网络中,以提取时间序列数据的时序特性并捕捉其长期依赖关... 为解决长短期记忆(LSTM)神经网络模型在进行光伏发电预测时调参复杂、训练过程困难等问题,将卷积神经网络(CNN)从光伏发电组时间序列数据中提取空间特征;然后将其输入到LSTM神经网络中,以提取时间序列数据的时序特性并捕捉其长期依赖关系;再采用具有全局遍历性和收敛性较强的自适应学习策略改进灰狼优化算法(IGWO)对LSTM神经网络全连接层的初始值进行优化。对比分析LSTM神经网络预测模型、CNN-LSTM混合神经网络预测模型、GWO-CNN-LSTM预测模型以及本文采用的IGWO-CNN-LSTM预测模型。验证结果表明,IGWO-CNN-LSTM预测模型的平均绝对误差和均方根误差均最小,在进行短期光伏发电预测时具有很好的预测精度。 展开更多
关键词 改进灰狼优化算法 卷积神经网络 预测模型 长短期记忆神经网络 光伏短期预测 预测精度
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基于改进BP神经网络的水务管网漏损定位模型
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作者 吴丹 《科学技术创新》 2026年第5期164-167,共4页
为了提升漏损定位的精度与效率,展开基于改进BP神经网络的水务管网漏损定位模型研究。通过引入遗传算法优化神经网络的初始权值与阈值,构建融合水力模型、漏损数据库与智能算法的漏损定位总体框架。分析压力监测点数据与漏损位置的非线... 为了提升漏损定位的精度与效率,展开基于改进BP神经网络的水务管网漏损定位模型研究。通过引入遗传算法优化神经网络的初始权值与阈值,构建融合水力模型、漏损数据库与智能算法的漏损定位总体框架。分析压力监测点数据与漏损位置的非线性映射关系,提出了以压力变化率为输入、漏点坐标为输出的GABP预测模型。研究结果表明:该模型有效加快了收敛速度,显著提高了定位精度,为实际水务管网漏损检测提供了可靠的技术支持。 展开更多
关键词 改进BP神经网络 水务 管网 漏损 定位 模型
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基于YOLOv8n改进的水稻病害轻量化检测 被引量:6
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作者 郭丽峰 黄俊杰 +5 位作者 吴禹竺 王思吉 王轶哲 包羽健 苏中滨 刘宏新 《农业工程学报》 北大核心 2025年第8期156-164,共9页
为解决水稻病害检测中存在的小目标特征提取困难、复杂环境下检测精度不高的问题以及在边缘化设备上实现高效实时检测,该研究提出了一种轻量化水稻病害识别方法YOLOv8-DiDL。该方法通过引入倒残差移动模块(inverted residual mobile blo... 为解决水稻病害检测中存在的小目标特征提取困难、复杂环境下检测精度不高的问题以及在边缘化设备上实现高效实时检测,该研究提出了一种轻量化水稻病害识别方法YOLOv8-DiDL。该方法通过引入倒残差移动模块(inverted residual mobile block,iRMB)增强小目标特征捕捉能力,采用变形卷积模块DCNv2(deformable convolutional networks)优化目标几何变化适应性,结合采样算子DySample(dynamic sample)算法提升复杂环境适应能力,并改进快速空间金字塔池化模块(spatial pyramid pooling fast,SPPF)为大核分离卷积注意力模块(large separable kernel attention,LSKA)增强多尺度特征融合。试验结果表明,改进的YOLOv8-DiDL模型准确率、召回率和平均精度均值分别为91.4%、83.5%、90.8%;与原始基础网络YOLOv8n相比分别提升7.0、0.5、2.5个百分点,模型权重降低9.7%,每秒浮点运算次数提升7.4%。该研究通过改进模型显著提高了水稻病害检测的精度和部署效率,为智能化农业的实时病害监测提供了技术基础。 展开更多
关键词 水稻 病害 目标检测 YOLOv8n改进模型 卷积神经网络 模型轻量化设计
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西部陆海新通道陆路物流网络格局演变模拟与比较分析 被引量:2
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作者 张扬 杨成超 +2 位作者 王兴平 张广霞 李娟 《地理科学进展》 北大核心 2025年第1期34-48,共15页
随着中国与东南亚等地区经贸合作更加紧密,加快西部陆海新通道建设,提升物流发展质量和效率,对于推动中国西部内陆地区经济发展和高水平对外开放具有重要意义。论文以西部陆海新通道核心覆盖区30个城市单元为研究区,基于长时间序列统计... 随着中国与东南亚等地区经贸合作更加紧密,加快西部陆海新通道建设,提升物流发展质量和效率,对于推动中国西部内陆地区经济发展和高水平对外开放具有重要意义。论文以西部陆海新通道核心覆盖区30个城市单元为研究区,基于长时间序列统计数据,应用BP神经网络模型预测西部陆海新通道主通道建成后各城市铁路、高速公路物流量,利用改进引力模型模拟未来通道能力条件下各城市间物流联系量,并借助社会网络分析方法开展西部陆海新通道建成前后铁路、高速公路物流网络结构比较分析。研究表明:①西部陆海新通道建设有助于缩短核心覆盖区城市间铁路和高速公路距离,提高各城市的货运总量;②西部陆海新通道建成后,防城港、昆明等面向东南亚的海港、陆港城市与重庆及各省会城市间的物流联系得以较大程度强化,并促进各类货物流向一般地级市,物流网络格局呈现层级化和一体化发展的特点;③无论是距离缩减效应、货运量变化还是物流网络结构变化,西部陆海新通道的建设对铁路物流网络的影响均强于高速公路物流网络。通过对比新道建设前后陆路物流网络格局变化,可为优化通道布局、升级物流网络及促进区域经济高质量发展提供科学参考。 展开更多
关键词 物流网络 BP神经网络 改进引力模型 社会网络分析 西部陆海新通道
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改进遗传算法优化神经网络的医院编码员预测模型设计 被引量:1
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作者 叶炼 黄容 +3 位作者 邓单 曹云帆 冯欢 邱立志 《电子设计工程》 2025年第20期191-196,共6页
基于医院编码员合理配置与平衡调整的目的,该文采用改进遗传算法优化神经网络的方法,构建了医院编码员预测模型。通过收集编码员历史及当前数据,分析了编码业务工作量、编码员工作效率等关键影响因素的作用机制。经过神经网络构建、遗... 基于医院编码员合理配置与平衡调整的目的,该文采用改进遗传算法优化神经网络的方法,构建了医院编码员预测模型。通过收集编码员历史及当前数据,分析了编码业务工作量、编码员工作效率等关键影响因素的作用机制。经过神经网络构建、遗传算法改进及优化等步骤,模型成功推导出编码员数量变化规律。测试显示,新模型预测误差从±10人降至±6人,误差减少约4人,精度显著提升,为医院决策提供支持。该研究成功构建并验证基于改进遗传算法优化神经网络的预测模型,克服了传统方法的局限,提升了预测精度,为编码员合理配置提供了科学依据。 展开更多
关键词 改进遗传算法 神经网络构建 医院编码员 预测模型
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基于I-GWO-BP神经网络的矿区爆破振动预测
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作者 徐敏 林卫星 +5 位作者 石磊 欧任泽 于振建 龚永超 胡力可 胡军生 《矿业研究与开发》 北大核心 2025年第10期121-128,共8页
针对现有爆破振动速度预测公式在面对复杂地场环境时预测精度不高的问题,提出一种基于改进灰狼优化算法(I-GWO)的BP神经网络模型。通过改变神经网络收敛因子函数加强导优精度,混沌映射初始化狼群位置加快求解速度,基于步长欧式距离的比... 针对现有爆破振动速度预测公式在面对复杂地场环境时预测精度不高的问题,提出一种基于改进灰狼优化算法(I-GWO)的BP神经网络模型。通过改变神经网络收敛因子函数加强导优精度,混沌映射初始化狼群位置加快求解速度,基于步长欧式距离的比例权重动态调整权重、提升寻优效率来改进灰狼算法。结合李楼-吴集铁矿爆破振动速度监测数据,选取爆心距、最大单段装药量、总装药量作为输入参数建立I-GWO-BP模型。结果表明:I-GWO-BP模型的收敛速度以及收敛精度要优于GWO-BP模型及BP模型,优化效果明显;I-GWO-BP模型的预测值基本处于实测值±0.08 cm/s置信带内,平均绝对百分比误差为13.84%,预测效果显著优于其他预测方法,具有较高的预测精度。研究成果可为矿山的爆破振动速度预测提供一定的参考。 展开更多
关键词 爆破振动速度 BP神经网络 改进灰狼优化算法 预测模型 预测精度
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基于改进径向基函数神经网络的台区线损异常判断模型
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作者 邵林 刘冬 《微型电脑应用》 2025年第6期225-228,共4页
为了解决模型在预测台区线损率和识别误差方面存在的问题,提出基于改进径向基函数神经网络的台区线损异常判断模型。所提模型的异常台区数据处理模块基于k-means聚类算法聚类台区运行数据,提取线损特征,构建台区线损特征集。利用改进径... 为了解决模型在预测台区线损率和识别误差方面存在的问题,提出基于改进径向基函数神经网络的台区线损异常判断模型。所提模型的异常台区数据处理模块基于k-means聚类算法聚类台区运行数据,提取线损特征,构建台区线损特征集。利用改进径向基函数神经网络预测台区线损率,依据预测结果和设定阈值的对比结果,判断台区线损异常情况。测试结果显示:所提模型能可靠预测台区的线损率,预测结果与实际结果之间吻合程度较高;依据预测线损率和设定阈值之间的对比结果,所提模型精准完成了台区的线损异常判断,平均残差、平均相对误差值分别为0.23%和0.21%,满足应用标准。 展开更多
关键词 改进径向基函数 神经网络 台区线损 异常判断 网络模型
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基于改进引力模型和LSTM网络的区域干线公路网省际通道布局方法研究
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作者 戴越 张经纬 +2 位作者 卢川 林俊 张洁斐 《滁州职业技术学院学报》 2025年第2期37-40,45,共5页
科学构建省际路网互联互通体系,是提升国内国际双循环相互促进的新发展格局、推动城市群都市圈一体化发展的重要支撑。从普通国省干线的角度,建立改进交通引力模型,来分析城市群之间的交通引力强度。利用交通区位线分析区域交通优势度,... 科学构建省际路网互联互通体系,是提升国内国际双循环相互促进的新发展格局、推动城市群都市圈一体化发展的重要支撑。从普通国省干线的角度,建立改进交通引力模型,来分析城市群之间的交通引力强度。利用交通区位线分析区域交通优势度,研究区域的省际互联互通格局。基于LSTM模型,定量分析普通国省干线省际出口需求,得到布局优化方案。最后,以安徽省为例,依据模型结果,提出安徽省由现状的86个普通国省干线省际出口提升至103个的优化方案。 展开更多
关键词 省域干线公路网 布局规划调整 省际联通 改进引力模型 LSTM模型
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基于改进神经网络的变压器有载分接开关故障自动化诊断系统 被引量:1
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作者 李朋宇 国伟辉 +3 位作者 闫帅 李强 刘子恩 何山 《自动化与仪器仪表》 2025年第7期68-72,共5页
由于变压器有载分接开关操作频繁且工作恶劣,导致出现多种故障问题,影响变压器的正常运行和稳定性。为此,提出基于改进神经网络的变压器有载分接开关故障自动化诊断系统。依据系统的基本要求与实现功能,设计四层架构,并采用加速度传感... 由于变压器有载分接开关操作频繁且工作恶劣,导致出现多种故障问题,影响变压器的正常运行和稳定性。为此,提出基于改进神经网络的变压器有载分接开关故障自动化诊断系统。依据系统的基本要求与实现功能,设计四层架构,并采用加速度传感器和工控机作为故障诊断系统的硬件部分,基于此,通过振动信号时频域转换和分解,提取故障特征量,并引入神经网络算法构建故障诊断模型,并对其进行参数优化与改进,将提取的故障特征量作为输入数据,通过概率计算输出变压器有载分接开关的故障类型,以此实现故障自动化诊断。实例应用结果显示,所设计的系统可以较为准确地诊断变压器有载分接开关的故障类型,故障诊断误报率低于2.5%,诊断精度较高。 展开更多
关键词 改进神经网络 变压器有载分接开关 故障诊断 诊断模型 模型优化
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