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An Improved BP Algorithm and Its Application in Classification of Surface Defects of Steel Plate 被引量:4
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作者 ZHAO Xiang-yang LAI Kang-sheng DAI Dong-ming 《Journal of Iron and Steel Research International》 SCIE EI CAS CSCD 2007年第2期52-55,共4页
Artificial neural network is a new approach to pattern recognition and classification. The model of multilayer perceptron (MLP) and back-propagation (BP) is used to train the algorithm in the artificial neural net... Artificial neural network is a new approach to pattern recognition and classification. The model of multilayer perceptron (MLP) and back-propagation (BP) is used to train the algorithm in the artificial neural network. An improved fast algorithm of the BP network was presented, which adopts a singular value decomposition (SVD) and a generalized inverse matrix. It not only increases the speed of network learning but also achieves a satisfying precision. The simulation and experiment results show the effect of improvement of BP algorithm on the classification of the surface defects of steel plate. 展开更多
关键词 artificial neural network MLP bp algorithm SVD generalized inverse matrix
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Salt and Pepper Noise Filter Based on GA-BP Algorithm Noise Detector 被引量:2
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作者 宋寅卯 李晓娟 《光电工程》 CAS CSCD 北大核心 2011年第2期59-64,共6页
基于噪声检测的中值滤波器已广泛用于消除图像中的椒盐噪声,然而在高噪声密度情况下,对噪声像素的定位不准确很容易造成图像边缘的模糊。本文提出了一种基于GA-BP的椒盐噪声滤波算法,克服了这一缺陷。算法首先用遗传算法优化的BP网... 基于噪声检测的中值滤波器已广泛用于消除图像中的椒盐噪声,然而在高噪声密度情况下,对噪声像素的定位不准确很容易造成图像边缘的模糊。本文提出了一种基于GA-BP的椒盐噪声滤波算法,克服了这一缺陷。算法首先用遗传算法优化的BP网络对图像中的噪声像素定位,然后引入保边函数和PRP算法求目标函数的极值进而实现图像的去噪处理。实验结果表明,该算法比传统滤波算法效果有明显改善,且具有良好的泛化性、鲁棒性和自适应性。 展开更多
关键词 GA-bp算法 椒盐噪声 噪声检测 保边函数 PRP算法
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Motion Control of Underwater Vehicle Based on Least Disturbance BP Algorithm 被引量:3
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作者 LIU Xue-min, LIU Jian-cheng, XU Yu-ruCollege of Shipbuilding Engineering, Harbin Engineering University, Harbin 150001 , China 《Journal of Marine Science and Application》 2002年第1期16-20,共5页
Up to now, some technology of neural networks are developed to solve the non-linearity of researched objects and to implement the adaptive control in many engineering fields, and some good results were achieved. Thoug... Up to now, some technology of neural networks are developed to solve the non-linearity of researched objects and to implement the adaptive control in many engineering fields, and some good results were achieved. Though it puts some questions over to design application structure with neural networks, it is really unknowable about the study mechanism of those. But, the importance of study ratio is widely realized by many scientists now, and some methods on the modification of that are provided. The main subject is how to improve the stability and how to increase the convergent rate of networks by defining a good form of the study ratio. Here a new algorithm named LDBP (least disturbance BP algorithm) is proposed to calculate the ratio online according to the output errors, the weights of network and the input values. The algorithm is applied to the control of an autonomous underwater vehicle designed by HEU. The experimental results show that the algorithm has good performance and the controller designed based on it is fine. 展开更多
关键词 bp algorithm of neural networks dynamic ratio least disturbance autonomous underwater vehicle
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A serialized civil aircraft R&D cost estimation model considering commonality based on BP algorithm 被引量:1
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作者 Yongjie ZHANG Kang CAO +2 位作者 Ke LIANG Yongqi ZENG Wenjun DONG 《Chinese Journal of Aeronautics》 SCIE EI CAS CSCD 2022年第4期253-265,共13页
The common design of serial civil aircraft, an important strategy of modern civil aircraft research and develop-ment, minimizes the whole life cycle cost of civil aircraft through asset reuse and resource sharing. How... The common design of serial civil aircraft, an important strategy of modern civil aircraft research and develop-ment, minimizes the whole life cycle cost of civil aircraft through asset reuse and resource sharing. However, the existing estimating model for the R&D cost of civil aircraft ignores the effects of common design, so the value estimated by estimating derivative models is significantly inconsistent with the actual one. To solve this problem, a novel assessment method for civil aircraft commonality indicators is developed based on fuzzy set in the present study, exploiting the attributes and structural parameters of the aircraft to be assessed as input to determine the degree of membership that pertains to the commonality sub-interval as the commonality indicator.Then the BP(Back Propagation) neural network algorithm is adopted to establish the relationship between the common index and the decrease rate of the R&D cost of derivative models. The model employs over a dozen typical civil aircraft models(e.g., Boeing, Airbus, and Bombardier) as the sample data for network learning training to build a mature neural network model for estimating the R&D cost of novel derivative models. As revealed from the comparative analysis on the calculated results of the samples, the estimated results of the model given the effects of commonality in the present study exhibit higher estimation accuracy and value for future work. 展开更多
关键词 bp algorithm Civil aircraft R&D cost Common indicators Fuzzy set Serialized civil aircraft
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Modeling of mechanical properties of as-cast Mg-Li-Al alloys based on PSO-BP algorithm 被引量:1
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作者 Li Ming Hao Hai +3 位作者 Zhang Aimin Song Yingde Liu Zhao Zhang Xingguo 《China Foundry》 SCIE CAS 2012年第2期119-124,共6页
Artificial neural networks have been widely used to predict the mechanical properties of alloys in material research. This study aims to investigate the implicit relationship between the compositions and mechanical pr... Artificial neural networks have been widely used to predict the mechanical properties of alloys in material research. This study aims to investigate the implicit relationship between the compositions and mechanical properties of as-cast Mg-Li-AI alloys. Based on the experimental collection of the tensile strength and the elongation of representative Mg-Li-AI alloys, a momentum back-propagation (BP) neural network with a single hidden layer was established. Particle swarm optimization (PSO) was applied to optimize the BP model. In the neural network, the input variables were the contents of Mg, Li and AI, and the output variables were the tensile strength and the elongation. The results show that the proposed PSO-BP model can describe the quantitative relationship between the Mg-Li-AI alloy's composition and its mechanical properties. It is possible that the mechanical properties to be predicted without experiment by inputting the alloy composition into the trained network model. The prediction of the influence of AI addition on the mechanical properties of as-cast Mg-Li-AI alloys is consistent with the related research results. 展开更多
关键词 artificial neural networks Mg-Li-Al alloys bp algorithm particle swarm optimization mechanical properties
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Nonlinear Inversion for Complex Resistivity Method Based on QPSO-BP Algorithm 被引量:1
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作者 Weixin Zhang Jinsuo Liu +1 位作者 Le Yu Biao Jin 《Open Journal of Geology》 2021年第10期494-508,共15页
The significant advantage of the complex resistivity method is to reflect the abnormal body through multi-parameters, but its inversion parameters are more than the resistivity tomography method. Therefore, how to eff... The significant advantage of the complex resistivity method is to reflect the abnormal body through multi-parameters, but its inversion parameters are more than the resistivity tomography method. Therefore, how to effectively invert these spectral parameters has become the focused area of the complex resistivity inversion. An optimized BP neural network (BPNN) approach based on Quantum Particle Swarm Optimization (QPSO) algorithm was presented, which was able to improve global search ability for complex resistivity multi-parameter nonlinear inversion. In the proposed method, the nonlinear weight adjustment strategy and mutation operator were used to enhance the optimization ability of QPSO algorithm. Implementation of proposed QPSO-BPNN was given, the network had 56 hidden neurons in two hidden layers (the first hidden layer has 46 neurons and the second hidden layer has 10 neurons) and it was trained on 48 datasets and tested on another 5 synthetic datasets. The training and test results show that BP neural network optimized by the QPSO algorithm performs better than the BP neural network without initial optimization on the inversion training and test models, and the mean square error distribution is better. At the same time, a double polarized anomalous bodies model was also used to verify the feasibility and effectiveness of the proposed method, the inversion results show that the QPSO-BP algorithm inversion clearly characterizes the anomalous boundaries and is closer to the values of the parameters. 展开更多
关键词 Complex Resistivity Finite Element Method Nonlinear Inversion QPSO-bp algorithm 2.5D Numerical Simulation
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Demarcation of potential seismic sources on integration of genetic algorithm and BP algorithm
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作者 ZHOU Qing(周庆) +1 位作者 YE Hong(叶洪) 《Acta Seismologica Sinica(English Edition)》 CSCD 2002年第6期677-682,共6页
In this paper potential seismic sources in coastal region of South China are identified by integration of genetic algorithm (GA) and back propagation (BP algorithm). GA is used for finding the best parameter combinati... In this paper potential seismic sources in coastal region of South China are identified by integration of genetic algorithm (GA) and back propagation (BP algorithm). GA is used for finding the best parameter combination rapidly in an infinite solution space for artificial neural networks (ANN). The results show that the distribution of potential seismic sources with different upper magnitude demarcated by this classifier is mostly satisfied the intrinsic relationship between seismic environment and earthquake occurrence, with less effect from subjective judgment of human being. 展开更多
关键词 genetic algorithm bp algorithm potential seismic sources
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Research on a Fog Computing Architecture and BP Algorithm Application for Medical Big Data
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作者 Baoling Qin 《Intelligent Automation & Soft Computing》 SCIE 2023年第7期255-267,共13页
Although the Internet of Things has been widely applied,the problems of cloud computing in the application of digital smart medical Big Data collection,processing,analysis,and storage remain,especially the low efficie... Although the Internet of Things has been widely applied,the problems of cloud computing in the application of digital smart medical Big Data collection,processing,analysis,and storage remain,especially the low efficiency of medical diagnosis.And with the wide application of the Internet of Things and Big Data in the medical field,medical Big Data is increasing in geometric magnitude resulting in cloud service overload,insufficient storage,communication delay,and network congestion.In order to solve these medical and network problems,a medical big-data-oriented fog computing architec-ture and BP algorithm application are proposed,and its structural advantages and characteristics are studied.This architecture enables the medical Big Data generated by medical edge devices and the existing data in the cloud service center to calculate,compare and analyze the fog node through the Internet of Things.The diagnosis results are designed to reduce the business processing delay and improve the diagnosis effect.Considering the weak computing of each edge device,the artificial intelligence BP neural network algorithm is used in the core computing model of the medical diagnosis system to improve the system computing power,enhance the medical intelligence-aided decision-making,and improve the clinical diagnosis and treatment efficiency.In the application process,combined with the characteristics of medical Big Data technology,through fog architecture design and Big Data technology integration,we could research the processing and analysis of heterogeneous data of the medical diagnosis system in the context of the Internet of Things.The results are promising:The medical platform network is smooth,the data storage space is sufficient,the data processing and analysis speed is fast,the diagnosis effect is remarkable,and it is a good assistant to doctors’treatment effect.It not only effectively solves the problem of low clinical diagnosis,treatment efficiency and quality,but also reduces the waiting time of patients,effectively solves the contradiction between doctors and patients,and improves the medical service quality and management level. 展开更多
关键词 Medical big data IOT fog computing distributed computing bp algorithm model
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The tool for building an NN based on improved BP algorithm
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作者 冯玉强 潘启澍 《Journal of Harbin Institute of Technology(New Series)》 EI CAS 2001年第3期312-316,共5页
Back propagation (BP) algorithm is a very useful algorithm in many areas, but its leaning process is a very complicated non linear convergence process, in which, chaos often happens, and slow convergence speed and loc... Back propagation (BP) algorithm is a very useful algorithm in many areas, but its leaning process is a very complicated non linear convergence process, in which, chaos often happens, and slow convergence speed and local least often make it difficult for the non experts to use it widely, and an improved BP (IBP) algorithm is therefore suggested to expedite the convergence speed. The algorithm can judge local least and take some steps automatically to jump out from the local least. Furthermore, this algorithm introduces the expert knowledge base. An IBP based agile and current neural network (NN) constructed tool is designed. An initial NN can be constructed automatically using an expert knowledge base. And an Aitken’s Δ 2 process method is used to expedite the convergent speed for NN. Besides, the method of changing the parameter of Sigmoid function and increasing the hidden node is used to bring surge for NN to jump out from the local 展开更多
关键词 neural network (NN) bp algorithm
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Neural Network Based on GA-BP Algorithm and its Application in the Protein Secondary Structure Prediction 被引量:8
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作者 YANG Yang LI Kai-yang 《Chinese Journal of Biomedical Engineering(English Edition)》 2006年第1期1-9,共9页
The advantages and disadvantages of genetic algorithm and BP algorithm are introduced. A neural network based on GA-BP algorithm is proposed and applied in the prediction of protein secondary structure, which combines... The advantages and disadvantages of genetic algorithm and BP algorithm are introduced. A neural network based on GA-BP algorithm is proposed and applied in the prediction of protein secondary structure, which combines the advantages of BP and GA. The prediction and training on the neural network are made respectively based on 4 structure classifications of protein so as to get higher rate of predication---the highest prediction rate 75.65%,the average prediction rate 65.04%. 展开更多
关键词 bp algorithm GENETIC algorithm NEURAL network STRUCTURE classification Protein SECONDARY STRUCTURE prediction
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Convergence of BP Algorithm for Training MLP with Linear Output
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作者 Hongmei Shao Wei Wu Wenbin Liu 《Numerical Mathematics A Journal of Chinese Universities(English Series)》 SCIE 2007年第3期193-202,共10页
The capability of multilayer perceptrons(MLPs)for approximating continuous functions with arbitrary accuracy has been demonstrated in the past decades.Back propagation(BP)algorithm is the most popular learning algorit... The capability of multilayer perceptrons(MLPs)for approximating continuous functions with arbitrary accuracy has been demonstrated in the past decades.Back propagation(BP)algorithm is the most popular learning algorithm for training of MLPs.In this paper,a simple iteration formula is used to select the leaming rate for each cycle of training procedure,and a convergence result is presented for the BP algo- rithm for training MLP with a hidden layer and a linear output unit.The monotonicity of the error function is also guaranteed during the training iteration. 展开更多
关键词 多层感知器 bp算法 收敛性 单调性 神经网络
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BP神经网络回归预测模型的改进 被引量:3
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作者 何大四 金璐琪 +1 位作者 张祖铭 赵强强 《机械工程与自动化》 2025年第1期224-226,共3页
为了优化BP神经网络,提出了一种优化BP神经网络的流程。首先,判断各影响因素之间的自相关性,如果各影响因素满足自相关评价指标,则可以使用BP神经网络进行回归训练;其次,改变BP神经网络的隐藏节点数、学习效率、训练误差和训练次数等影... 为了优化BP神经网络,提出了一种优化BP神经网络的流程。首先,判断各影响因素之间的自相关性,如果各影响因素满足自相关评价指标,则可以使用BP神经网络进行回归训练;其次,改变BP神经网络的隐藏节点数、学习效率、训练误差和训练次数等影响因素;最后,加入遗传算法或者粒子群算法与BP神经网络组成混合算法,以提高BP神经网络的训练精度。 展开更多
关键词 bp神经网络 隐藏节点 混合算法 回归预测 自相关性
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基于SA-BP神经网络的直线电机优化设计 被引量:1
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作者 郭凯 李昊 +1 位作者 李彪 梁楠楠 《太原学院学报(自然科学版)》 2025年第2期45-52,共8页
针对永磁直线同步电机推力波动大、有限元仿真计算时间长等问题,提出了一种结合解析算法(SA)和BP神经网络算法的电机仿真优化模型:依据电机各部件的磁导率不同划分解析域,由解析算法算出电磁场分布等电机参数,利用解析获得的电机性能参... 针对永磁直线同步电机推力波动大、有限元仿真计算时间长等问题,提出了一种结合解析算法(SA)和BP神经网络算法的电机仿真优化模型:依据电机各部件的磁导率不同划分解析域,由解析算法算出电磁场分布等电机参数,利用解析获得的电机性能参数建立BP神经网络训练样本库,设计BP神经网络算法的训练周期、衰减率等参数后进行模型训练,拟合预测出电机尺寸参数与定位力之间的关系模型,最后利用多目标优化算法优化电机的尺寸参数。实验结果表明:基于SA-BP神经网络的电机模型的推力计算结果与有限元仿真结果的误差为2.35%,SA-BP神经网络算法不仅具有较高的计算精度,还能有效提升电机仿真计算速度。 展开更多
关键词 永磁直线同步电机 解析算法 bp神经网络算法 定位力 多目标优化算法
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改进SSA优化BP神经网络的变压器故障诊断 被引量:2
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作者 汪繁荣 汪筠涵 江俊杰 《现代电子技术》 北大核心 2025年第4期145-150,共6页
变压器故障类型的准确诊断对保障电网的安全与稳定至关重要。针对BP神经网络与麻雀搜索算法(SSA)存在收敛缓慢和易陷入局部极值导致无法准确诊断的问题,提出将改进的麻雀搜索算法(ISSA)优化BP神经网络应用于变压器故障诊断。首先,引入... 变压器故障类型的准确诊断对保障电网的安全与稳定至关重要。针对BP神经网络与麻雀搜索算法(SSA)存在收敛缓慢和易陷入局部极值导致无法准确诊断的问题,提出将改进的麻雀搜索算法(ISSA)优化BP神经网络应用于变压器故障诊断。首先,引入非线性惯性权重和纵横交叉策略,从而提高算法的收敛速度和全局寻优能力;其次,将ISSA与传统SSA在收敛函数上进行对比分析,得到ISSA算法在迭代12次后以52%的准确率收敛,而SSA算法迭代23次后才达到25%的准确率,证明了ISSA在收敛速度和精度方面有明显提高;最后,将ISSA-BP、SSA-BP和BP诊断模型进行对比。实验结果表明,ISSA-BP模型准确率达到了97%,比SSA-BP、BP神经网络模型分别提高了4%和11%,可以认为提出的算法模型在变压器故障诊断领域具有更高的精度与良好的发展前景。 展开更多
关键词 麻雀搜索算法 bp神经网络 变压器 故障诊断 非线性惯性权重 纵横交叉策略
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一种基于GA-BP神经网络的冷库能耗预测 被引量:1
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作者 王雅博 陈君豪 +1 位作者 刘兴华 张行健 《冷藏技术》 2025年第1期79-85,75,共8页
影响冷库能耗的因素众多,其中,货物信息的缺失使得建立冷库预测模型面临一定的挑战。为解决该问题,提出利用冷库当天使用面积代替传统的货物信息作为输入特征,依据某大型冷库历史能耗数据,采用斯皮尔曼相关性分析筛选出合适的变量,构建... 影响冷库能耗的因素众多,其中,货物信息的缺失使得建立冷库预测模型面临一定的挑战。为解决该问题,提出利用冷库当天使用面积代替传统的货物信息作为输入特征,依据某大型冷库历史能耗数据,采用斯皮尔曼相关性分析筛选出合适的变量,构建基于GA-BP神经网络的冷库能耗模型。结果表明,在缺失货物信息的情况下,使用冷库当天使用面积作为输入变量能够保证模型具有高准确率,R2达到0.9563,并且性能优于BP神经网络、多元回归模型。 展开更多
关键词 能耗预测 特征选择 遗传算法 bp神经网络 机器学习
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基于蜣螂优化BP-PID的温室自主跟随平台行走速度控制研究 被引量:1
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作者 肖茂华 陈泰 +3 位作者 庄晓华 朱烨均 胡艺缤 王鸿翔 《农业机械学报》 北大核心 2025年第2期83-91,154,共10页
针对当前温室作业环境复杂、现有机械行走稳定性差的问题,本文提出了温室自主跟随电动平台行走速度控制方法。由于该系统存在非线性和时变性的特点,传统PID控制算法无法实现有效控制,因此提出了一种基于蜣螂(Dung beetle optimizer,DBO... 针对当前温室作业环境复杂、现有机械行走稳定性差的问题,本文提出了温室自主跟随电动平台行走速度控制方法。由于该系统存在非线性和时变性的特点,传统PID控制算法无法实现有效控制,因此提出了一种基于蜣螂(Dung beetle optimizer,DBO)优化BP神经网络PID控制算法。该算法采用DBO优化算法对BP神经网络的权值进行优化,加快了BP神经网络的自学习速率,实现对温室自主跟随电动平台行走速度的快速精确控制,提高系统的响应速度并降低超调量,最后,将本文提出的行走速度控制算法与PID控制算法、BP-PID控制算法、遗传算法(Genetic algorithm,GA)优化PID控制算法、蚁群算法(Ant colony optimization,ACO)优化PID控制算法对比。试验结果表明,当行走速度为1 m/s时,系统平均响应速度为0.11 s,调整时间为0.27 s,最大超调量为2.44%;当履带线速度大小和方向发生变化时,系统依然表现出响应速度快、超调量小且稳态过程无振荡的优点。DBO-BP-PID控制算法在控制稳定性和控制精度上表现更优,有效降低了系统时滞性和非线性影响,满足温室自主跟随电动平台行走速度控制的需求。 展开更多
关键词 温室 自主跟随电动平台 行走速度控制 蜣螂优化算法 bp-PID控制
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基于遗传算法与BP神经网络的通风机智能监控系统 被引量:1
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作者 方志伟 《工业仪表与自动化装置》 2025年第3期45-50,共6页
煤矿通风机是保证煤矿安全生产的重要大型设备,提高其自动化、智能化水平意义重大。当前多数煤矿井下通风机工作时长期处于恒速运转模式,能耗消耗巨大。为了克服通风机工作中一风吹的状态,使其根据实际需要智能调风、按需供风、节能减耗... 煤矿通风机是保证煤矿安全生产的重要大型设备,提高其自动化、智能化水平意义重大。当前多数煤矿井下通风机工作时长期处于恒速运转模式,能耗消耗巨大。为了克服通风机工作中一风吹的状态,使其根据实际需要智能调风、按需供风、节能减耗,根据煤矿井下温湿度、瓦斯浓度及煤尘浓度实际情况,运用遗传算法与BP神经网络相结合的控制方法,构建了预测井下需风量的网络模型;使用MATLAB软件对遗传算法优化的BP神经网络风量预测效果进行了测试。结果显示,系统预测准确率高,达到理想效果。通过工控机、PLC、变频器及各类传感器等相关硬件以及软件技术,设计完成了通风机智能监控系统,使通风机智能按需调节风量,提高了通风机自动化、智能化控制水平。 展开更多
关键词 通风机 煤矿 遗传算法 bp神经网络 智能监控系统
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基于GA-BP神经网络的烟叶打叶风分工艺参数优化
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作者 田斌强 付龙 +5 位作者 唐剑宁 刘辉 夏凡 黄沙 刘莉艳 郭筠 《河南农业大学学报》 北大核心 2025年第3期508-515,共8页
【目的】获得烤烟烟叶在打叶风分中的最佳工艺参数,进一步优化叶片结构。【方法】选取打叶复烤工艺中的前5级打叶转速和第7、第8风机频率共7个因素,每个因素设3个水平开展正交试验,以正交试验结果确定较优的工艺参数组合为数据样本集构... 【目的】获得烤烟烟叶在打叶风分中的最佳工艺参数,进一步优化叶片结构。【方法】选取打叶复烤工艺中的前5级打叶转速和第7、第8风机频率共7个因素,每个因素设3个水平开展正交试验,以正交试验结果确定较优的工艺参数组合为数据样本集构建GA-BP神经网络模型,并结合NSGA-Ⅱ的方法对工艺参数进一步优化。【结果】正交试验确定较高的大中片率最佳工艺参数为:第1至5级打叶转速分别为493、471、620、798、794 r·min^(-1),第7、第8级风机频率分别为49、45 Hz,较低的碎片率和叶中含梗率的最优工艺参数为:第1至5级打叶转速分别为503、489、621、792、792 r·min^(-1),第7、第8级风机频率分别为50、46 Hz。经GA-BP神经网络模型优化后为第1至5级打叶转速分别为485、474、620、796、794 r·min^(-1),第7、第8级风机频率分别为49、46 Hz,在此条件下,大中片率提升了1.52个百分点,叶中含梗率、碎片率分别降低了0.09和0.08个百分点。【结论】在正交试验的基础上,通过GA-BP神经网络模型优化多工艺参数,叶片结构更为合理,可为提升烟叶叶片加工质量提供参考。 展开更多
关键词 叶片结构 bp神经网络 遗传算法 打叶风分 参数优化
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彬长矿区煤层采动导水裂隙带高度RF-BP模型预测对比研究
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作者 姬亚东 刘譞 +5 位作者 朱开鹏 赵春虎 李凯 袁晨瀚 李盼盼 闫鹏珍 《煤矿安全》 北大核心 2025年第7期175-184,共10页
西部黄陇侏罗系煤田煤层赋存条件一般较厚,其中彬长矿区煤层厚度平均大于5 m,最厚可达14 m,且常采用综放开采工艺,造成煤层顶板导水裂隙带发育厚度大且发育规律不明,矿井涌水量居高不下,严重影响矿区安全生产。为研究彬长矿区煤矿工作... 西部黄陇侏罗系煤田煤层赋存条件一般较厚,其中彬长矿区煤层厚度平均大于5 m,最厚可达14 m,且常采用综放开采工艺,造成煤层顶板导水裂隙带发育厚度大且发育规律不明,矿井涌水量居高不下,严重影响矿区安全生产。为研究彬长矿区煤矿工作面开采扰动覆岩而导致的煤层顶板导水裂隙带发育高度,优选了煤层开采厚度、煤层埋深、顶板覆岩岩性、顶板构造特征、开采速度、工作面长度、采煤工艺等7个影响因素,通过AHP层次分析法分别计算出了上述各影响因素的权重,发现煤层开采厚度、工作面长度2个影响因素所占权重相对较大;通过Matlab对搜集的数据进行插值,使数据分布更为平滑;通过反向传播神经网络(BP)、遗传算法优化神经网络(GA-BP)、粒子群优化算法优化神经网络(PSO-BP)、随机森林(RF)算法对插值后数据进行回归拟合。研究发现,4种方法对原始数据的拟合效果都较好,其中随机森林RF相对其他模型对原始数据的拟合具有更高的准确度,训练集和测试集的均方根误差RMSE分别为0.037 41和0.055 16,决定系数R2分别为0.987 37和0.957 89。研究结果可为彬长矿区煤矿开采导水裂隙带发育高度的预测提供一定的参考。 展开更多
关键词 导水裂隙带 煤矿智能化 随机森林算法 bp神经网络 矿井涌水
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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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