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Dynamic temperature control of dividing wall batch distillation with middle vessel based on neural network soft-sensor and fuzzy control
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作者 Xiaoyu Zhou Erwei Song +1 位作者 Mingmei Wang Erqiang Wang 《Chinese Journal of Chemical Engineering》 2025年第3期200-211,共12页
Dividing wall batch distillation with middle vessel(DWBDM)is a new type of batch distillation column,with outstanding advantages of low capital cost,energy saving and flexible operation.However,temperature control of ... Dividing wall batch distillation with middle vessel(DWBDM)is a new type of batch distillation column,with outstanding advantages of low capital cost,energy saving and flexible operation.However,temperature control of DWBDM process is challenging,since inherently dynamic and highly nonlinear,which make it difficult to give the controller reasonable set value or optimal temperature profile for temperature control scheme.To overcome this obstacle,this study proposes a new strategy to develop temperature control scheme for DWBDM combining neural network soft-sensor with fuzzy control.Dynamic model of DWBDM was firstly developed and numerically solved by Python,with three control schemes:composition control by PID and fuzzy control respectively,and temperature control by fuzzy control with neural network soft-sensor.For dynamic process,the neural networks with memory functions,such as RNN,LSTM and GRU,are used to handle with time-series data.The results from a case example show that the new control scheme can perform a good temperature control of DWBDM with the same or even better product purities as traditional PID or fuzzy control,and fuzzy control could reduce the effect of prediction error from neural network,indicating that it is a highly feasible and effective control approach for DWBDM,and could even be extended to other dynamic processes. 展开更多
关键词 Dividing wall batch distillation column Middle-vessel Temperature control Neural network soft-sensor Fuzzy control
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Component Content Soft-sensor Based on Neural Networks in Rare-earth Countercurrent Extraction Process 被引量:13
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作者 YANG Hui CHAI Tian-You 《自动化学报》 EI CSCD 北大核心 2006年第4期489-495,共7页
Throught fusion of the mechanism modeling and the neural networks modeling,a compo- nent content soft-sensor,which is composed of the equilibrium calculation model for multi-component rare earth extraction and the err... Throught fusion of the mechanism modeling and the neural networks modeling,a compo- nent content soft-sensor,which is composed of the equilibrium calculation model for multi-component rare earth extraction and the error compensation model of fuzzy system,is proposed to solve the prob- lem that the component content in countercurrent rare-earth extraction process is hardly measured on-line.An industry experiment in the extraction Y process by HAB using this hybrid soft-sensor proves its effectiveness. 展开更多
关键词 RARE-EARTH countercurrent extraction soft-sensor equilibrium calculation model neural networks
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Melt Index Prediction by Neural Soft-Sensor Based on Multi-Scale Analysis and Principal Component Analysis 被引量:11
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作者 施健 刘兴高 《Chinese Journal of Chemical Engineering》 SCIE EI CAS CSCD 2005年第6期849-852,共4页
Prediction of melt index (MI), the most important parameter in determining the product's grade and quality control of polypropylene produced in practical industrial processes, is studied. A novel soft-sensor model ... Prediction of melt index (MI), the most important parameter in determining the product's grade and quality control of polypropylene produced in practical industrial processes, is studied. A novel soft-sensor model with principal component analysis (PCA), radial basis function (RBF) networks, and multi-scale analysis (MSA) is proposed to infer the MI of manufactured products from real process variables, where PCA is carried out to select the most relevant process features and to eliminate the correlations of the input variables, MSA is introduced to a^quire much more information and to reduce the uncertainty of the system, and RBF networks are used to characterize the nonlinearity of the process. The research results show that the proposed method provides promising prediction reliability and accuracy, and supposed to have extensive application prospects in propylene polymerization processes. 展开更多
关键词 propylene polymerization neural soft-sensor principal component analysis multi-scale analysis
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MIMO Soft-sensor Model of Nutrient Content for Compound Fertil- izer Based on Hybrid Modeling Technique 被引量:6
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作者 傅永峰 苏宏业 褚健 《Chinese Journal of Chemical Engineering》 SCIE EI CAS CSCD 2007年第4期554-559,共6页
In compound fertilizer production, several quality variables need to be monitored and controlled simultaneously. It is very diifficult to measure these variables on-line by existing instruments and sensors. So, soft-s... In compound fertilizer production, several quality variables need to be monitored and controlled simultaneously. It is very diifficult to measure these variables on-line by existing instruments and sensors. So, soft-sensor technique becomes an indispensable method to implement real-time quality control. In this article, a new model of multi-inputs multi-outputs (MIMO) soft-sensor, which is constructed based on hybrid modeling technique, is proposed for these interactional variables. Data-driven modeling method and simplified first principle modelingmethod are combined in this model. Data-driven modeling method based on limited memory partial least squares(LM-PLS) al.gorithm is used to build soft-senor models for some secondary variables.then, the simplified first principle model is used to compute three primary variables on line. The proposed model has been used in practicalprocess; the results indicate that the proposed model is precise and efficient, and it is possible to realize on line quality control for compound fertilizer process. 展开更多
关键词 multi-inputs multi-outputs soft-sensor limited memory partial least squares simplified first principle model nutrient content of compound fertilizer
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Component Content Soft-Sensor Based on Hybrid Models in Countercurrent Rare Earth Extraction Process 被引量:3
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作者 杨辉 王欣 《Journal of Rare Earths》 SCIE EI CAS CSCD 2005年第S1期86-91,共6页
In consideration of the online measurement of the component content in rare earth countercurrent extraction separation process, the soft sensor method based on hybrid modeling was proposed to measure the rare earth co... In consideration of the online measurement of the component content in rare earth countercurrent extraction separation process, the soft sensor method based on hybrid modeling was proposed to measure the rare earth component content. The hybrid models were composed of the extraction equilibrium calculation model and the Radial Basis Function (RBF) Neural Network (NN) error compensation model; the parameters of compensation model were optimized by the hierarchical genetic algorithms (HGA). In addition, application experiment research of this proposed method was carried out in the rare earth separation production process of a corporation. The result shows that this method is effective and can realize online measurement for the component content of rare earth in the countercurrent extraction. 展开更多
关键词 countercurrent extraction soft-sensor equilibrium calculation model RBF neural networks hierarchical genetic algorithms rare earths
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Neural Networks Based Component Content Soft-Sensor in Countercurrent Rare-Earth Extraction 被引量:2
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作者 杨辉 谭明皓 柴天佑 《Journal of Rare Earths》 SCIE EI CAS CSCD 2003年第6期691-696,共6页
The equilibrium model for multicomponent rare earth extraction is developed using neural networks, which combined with the material balance model could give online prediction of component content in countercurrent rar... The equilibrium model for multicomponent rare earth extraction is developed using neural networks, which combined with the material balance model could give online prediction of component content in countercurrent rare earth (extraction) production. Simulation experiments with industrial operation data prove the effectiveness of the hybrid soft-(sensor). 展开更多
关键词 countercurrent extraction first principle model soft-sensor model neural networks rare earths
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A data-derived soft-sensor method for monitoring effluent total phosphorus 被引量:5
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作者 Shuguang Zhu Honggui Han +1 位作者 Min Guo Junfei Qiao 《Chinese Journal of Chemical Engineering》 SCIE EI CAS CSCD 2017年第12期1791-1797,共7页
The effluent total phosphorus(ETP) is an important parameter to evaluate the performance of wastewater treatment process(WWTP). In this study, a novel method, using a data-derived soft-sensor method, is proposed to ob... The effluent total phosphorus(ETP) is an important parameter to evaluate the performance of wastewater treatment process(WWTP). In this study, a novel method, using a data-derived soft-sensor method, is proposed to obtain the reliable values of ETP online. First, a partial least square(PLS) method is introduced to select the related secondary variables of ETP based on the experimental data. Second, a radial basis function neural network(RBFNN) is developed to identify the relationship between the related secondary variables and ETP. This RBFNN easily optimizes the model parameters to improve the generalization ability of the soft-sensor. Finally, a monitoring system, based on the above PLS and RBFNN, named PLS-RBFNN-based soft-sensor system, is developed and tested in a real WWTP. Experimental results show that the proposed monitoring system can obtain the values of ETP online and own better predicting performance than some existing methods. 展开更多
关键词 Data-derived soft-sensor Effluent total phosphorus Wastewater treatment process Radial basis function neural network Partial least square method
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Method of Soft-Sensor Modeling for Fermentation Process Based on Geometric Support Vector Regression 被引量:1
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作者 吴佳欢 王晓琨 +2 位作者 王建林 赵利强 于涛 《Journal of Donghua University(English Edition)》 EI CAS 2013年第1期1-6,共6页
The soft-sensor modeling for fermentation process based on standard support vector regression(SVR) needs to solve the quadratic programming problem(QPP) which will often lead to large computational burdens, slow conve... The soft-sensor modeling for fermentation process based on standard support vector regression(SVR) needs to solve the quadratic programming problem(QPP) which will often lead to large computational burdens, slow convergence rate, low solving efficiency, and etc. In order to overcome these problems, a method of soft-sensor modeling for fermentation process based on geometric SVR is presented. In the method, the problem of solving the SVR soft-sensor model is converted into the problem of finding the nearest points between two convex hulls (CHs) or reduced convex hulls (RCHs) in geometry. Then a geometric algorithm is adopted to generate soft-sensor models of fermentation process efficiently. Furthermore, a swarm energy conservation particle swarm optimization (SEC-PSO) algorithm is proposed to seek the optimal parameters of the augmented training sample sets, the RCH size, and the kernel function which are involved in geometric SVR modeling. The method is applied to the soft-sensor modeling for a penicillin fermentation process. The experimental results show that, compared with the method based on the standard SVR, the proposed method of soft-sensor modeling based on geometric SVR for fermentation process can generate accurate soft-sensor models and has much less amount of computation, faster convergence rate, and higher efficiency. 展开更多
关键词 fermentation process soft-sensor modeling geometric SVR swarm energy conservation particle swarm optimization (SEC-PSO)
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Forward heuristic breadth-first reasoning based on rule match for biomass hybrid soft-sensor modeling in fermentation process
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作者 安莉 王建林 《Journal of Beijing Institute of Technology》 EI CAS 2012年第1期128-133,共6页
Biomass is a key parameter in fermentation process, directly influencing the performance of the fermentation system as well as the quality and yield of the targeted product. Hybrid soft-sensor modeling is a good metho... Biomass is a key parameter in fermentation process, directly influencing the performance of the fermentation system as well as the quality and yield of the targeted product. Hybrid soft-sensor modeling is a good method for on-line estimation of biomass. Structure of hybrid soft-sensor model is a key to improve the estimating accuracy. In this paper, a forward heuristic breadth-first reasoning approach based on rule match is proposed for constructing structure of hybrid model. First, strategy of forward heuristic reasoning about facts is introduced, which can reason complex hybrid model structure in the event of few known facts. Second, rule match degree is defined to obtain higher esti- mating accuracy. The experiment results of Nosiheptide fermentation process show that the hybrid modeling process can estimate biomass with higher accuracy by adding transcendental knowledge and partial mechanism to the process. 展开更多
关键词 fermentation process BIOMASS soft-sensor modeling rule match
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基于DBN-IWOA优化的区间二型TSK模糊逻辑系统在化工过程建模中的应用
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作者 李军 康鹏元 《过程工程学报》 北大核心 2026年第1期99-108,共10页
针对化工过程中存在的强非线性和复杂性问题,本工作提出了一种基于深度信念网络(DBN)与改进鲸鱼优化算法(IWOA)优化的区间二型TSK模糊逻辑系统(DBN-IWOA-IT2 TSK FLS)方法,以提升软测量建模的精度和稳定性。首先,DBN通过深度特征提取能... 针对化工过程中存在的强非线性和复杂性问题,本工作提出了一种基于深度信念网络(DBN)与改进鲸鱼优化算法(IWOA)优化的区间二型TSK模糊逻辑系统(DBN-IWOA-IT2 TSK FLS)方法,以提升软测量建模的精度和稳定性。首先,DBN通过深度特征提取能力对输入数据进行处理,以减少噪声干扰并提取关键信息。随后,结合区间二型TSK模糊逻辑系统(IT2 TSK FLS)的建模优势,采用IWOA算法对前件参数和后件参数进行优化,以进一步增强模型的预测能力。IWOA通过引入早熟收敛检测机制,提高了全局搜索能力,加快了收敛速度,并降低了陷入局部最优的风险。最后,将所提出的方法应用于脱丁烷塔软测量建模,选取了支持向量机(SVM)、长短期记忆网络(LSTM)、门控循环单元网络(GRU),以及分别基于反向传播算法(BP)、粒子群优化算法(PSO)、灰狼优化算法(GWO)、鲸鱼优化算法(WOA)、改进鲸鱼优化算法(IWOA)和DBN-IWOA优化算法的区间二型TSK模糊逻辑系统作为对比模型进行实验评估。结果显示,DBN-IWOA-IT2 TSK FLS在预测准确性、收敛速度均优于现有方法,验证了其有效性和工程应用价值。 展开更多
关键词 软测量建模 脱丁烷塔 区间二型模糊逻辑系统 深度置信网络 早熟收敛检测机制
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基于CNN-BiLSTM-SSA的锅炉再热器壁温预测模型
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作者 徐世明 何至谦 +6 位作者 彭献永 商忠宝 范景玮 王俊略 曲舒杨 刘洋 周怀春 《动力工程学报》 北大核心 2026年第1期121-130,共10页
针对锅炉高温再热器壁温动态特点,提出了一种基于稀疏自注意力(SSA)、卷积神经网络(CNN)及双向长短期记忆神经网络(BiLSTM)相融合的再热器壁温软测量模型。首先,采用核主成分分析(KPCA)算法对原始候选变量进行筛选降维,选择前26个主成... 针对锅炉高温再热器壁温动态特点,提出了一种基于稀疏自注意力(SSA)、卷积神经网络(CNN)及双向长短期记忆神经网络(BiLSTM)相融合的再热器壁温软测量模型。首先,采用核主成分分析(KPCA)算法对原始候选变量进行筛选降维,选择前26个主成分变量作为模型的最终输入。其次,考虑利用CNN捕捉局部相关性,BiLSTM学习数据的长期序列依赖性的优势,使用卷积神经网络-双向长短期记忆神经网络(CNN-BiLSTM)捕捉时序数据中的短期和长期依赖关系,引入稀疏自注意力SSA机制,通过为不同特征部分分配自适应权重,从而增强CNN-BiLSTM模型的特征提取与建模能力,最后利用在役1000 MW超超临界锅炉的历史数据进行仿真实验。结果表明:CNN-BiLSTM-SSA模型在高温再热器壁温预测中的均方根误差(RMSE)、平均绝对误差(MAE)及平均绝对百分比误差(MAPE)分别为4.92℃、3.81℃和0.6241%,相应的指标均优于CNN、LSTM、BiLSTM、CNN-LSTM和CNN-BiLSTM模型。 展开更多
关键词 再热器壁温软测量 深度学习 卷积神经网络 长短期记忆网络 注意力机制 核主成分分析 CNN-BiLSTM
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Water quality soft-sensor prediction in anaerobic process using deep neural network optimized by Tree-structured Parzen Estimator 被引量:3
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作者 Junlang Li Zhenguo Chen +7 位作者 Xiaoyong Li Xiaohui Yi Yingzhong Zhao Xinzhong He Zehua Huang Mohamed A.Hassaan Ahmed El Nemr Mingzhi Huang 《Frontiers of Environmental Science & Engineering》 SCIE EI CSCD 2023年第6期23-35,共13页
Anaerobic process is regarded as a green and sustainable process due to low carbon emission and minimal energy consumption in wastewater treatment plants(WWTPs).However,some water quality metrics are not measurable in... Anaerobic process is regarded as a green and sustainable process due to low carbon emission and minimal energy consumption in wastewater treatment plants(WWTPs).However,some water quality metrics are not measurable in real time,thus influencing the judgment of the operators and may increase energy consumption and carbon emission.One of the solutions is using a soft-sensor prediction technique.This article introduces a water quality soft-sensor prediction method based on Bidirectional Gated Recurrent Unit(BiGRU)combined with Gaussian Progress Regression(GPR)optimized by Tree-structured Parzen Estimator(TPE).TPE automatically optimizes the hyperparameters of BiGRU,and BiGRU is trained to obtain the point prediction with GPR for the interval prediction.Then,a case study applying this prediction method for an actual anaerobic process(2500 m^(3)/d)is carried out.Results show that TPE effectively optimizes the hyperparameters of BiGRU.For point prediction of CODeff and biogas yield,R^(2)values of BiGRU,which are 0.973 and 0.939,respectively,are increased by 1.03%–7.61%and 1.28%–10.33%,compared with those of other models,and the valid prediction interval can be obtained.Besides,the proposed model is assessed as a reliable model for anaerobic process through the probability prediction and reliable evaluation.It is expected to provide high accuracy and reliable water quality prediction to offer basis for operators in WWTPs to control the reactor and minimize carbon emission and energy consumption. 展开更多
关键词 Water quality prediction soft-sensor Anaerobic process Tree-structured Parzen Estimator
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基于级联注意力特征融合的门控TCN软测量方法
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作者 孙乐 曹余庆 谢莉 《计算机测量与控制》 2026年第2期23-30,共8页
针对传统TCN模型在工业过程动态建模中容易忽略时间序列连续性和局部依赖关系的问题,研究并提出了一种动态软测量模型CAFF-GTCN;通过设计一种新的级联注意力特征融合模块改进TCN中的残差连接,利用自注意力机制和多尺度通道注意力机制对... 针对传统TCN模型在工业过程动态建模中容易忽略时间序列连续性和局部依赖关系的问题,研究并提出了一种动态软测量模型CAFF-GTCN;通过设计一种新的级联注意力特征融合模块改进TCN中的残差连接,利用自注意力机制和多尺度通道注意力机制对不同感受野提取的特征进行融合,保证模型不会丢失重要信息;同时利用门控机制改进扩张因果卷积,并结合SELU函数增强特征提取能力;实验结果表明,所提方法显著提升了预测精度:在青霉素发酵仿真实验中,相较于传统TCN模型,CAFF-GTCN模型的RMSE和MAE分别降低了45.1%和49.4%,R2从0.9923提升至0.9989;在硫回收过程实验中,CAFF-GTCN模型的RMSE和MAE分别降低了38.2%和42.7%,R2从0.7503提升至0.8464;实验结果验证了所提方法在动态特征提取和预测精度方面的有效性和优越性。 展开更多
关键词 软测量 深度学习 时间卷积网络 特征融合 门控机制
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基于流形正则的质量相关的迁移慢特征回归
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作者 黄岩 李浩志 +2 位作者 程兰 任密蜂 阎高伟 《控制工程》 北大核心 2026年第1期40-48,共9页
流程工业过程普遍存在慢变化特性与多工况特性,而慢特征分析只考虑慢变化信息,忽略了不同工况间的数据分布差异,从而导致预测质量变量不精确。针对此问题,在慢特征分析的基础上,结合迁移学习策略,兼顾慢特征对质量变量的可解释性与数据... 流程工业过程普遍存在慢变化特性与多工况特性,而慢特征分析只考虑慢变化信息,忽略了不同工况间的数据分布差异,从而导致预测质量变量不精确。针对此问题,在慢特征分析的基础上,结合迁移学习策略,兼顾慢特征对质量变量的可解释性与数据的局部几何结构,提出了一种带有结构保持的多工况慢特征回归软测量模型。首先,最大化慢特征与质量变量的相关性,增强慢特征对质量变量的可解释性;其次,采用域适应的策略减小历史工况与待测工况之间的数据分布差异;最后,引入邻域保持嵌入以保留局部信息,从而设计一个多目标优化函数,利用非线性迭代偏最小二乘框架对质量变量进行预测。实验利用3个实际工业数据集对所提模型进行验证,实验结果表明,所提模型可以有效提高质量变量的预测精度。 展开更多
关键词 慢特征分析 邻域保持嵌入 域适应 软测量 时间相关性
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软体执行器的弯曲传感器视觉标定方法
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作者 曾文健 江励 +2 位作者 邬永烨 李尹军 汤健华 《机电工程技术》 2026年第1期84-88,195,共6页
针对软体执行器中嵌入式柔性传感器存在的非线性标定难题,提出基于视觉的动态标定框架以实现传感器信号与三维形变量的精确映射。通过构建气动驱动模块与嵌入式触发电路协同系统,结合通道差分增强与亚像素曲率解析算法,实现软体执行器... 针对软体执行器中嵌入式柔性传感器存在的非线性标定难题,提出基于视觉的动态标定框架以实现传感器信号与三维形变量的精确映射。通过构建气动驱动模块与嵌入式触发电路协同系统,结合通道差分增强与亚像素曲率解析算法,实现软体执行器形变轮廓的亚毫米级精度提取(均方根误差小于1.2 mm)。开发多模态数据同步采集平台,采用双通道时间戳对齐技术建立传感器电阻变化与形变量的非线性模型。实验表明,该方法在0°~90°弯曲范围内单次标定耗时均值30.0 s(标准差0.3 s),较传统机械标定效率提升4~6倍,最大误差控制在5 s以内。视觉标定提取轮廓与标准3D打印沟道的对比误差小于2.5 mm,验证了方法的精度与稳定性。研究成果为软体执行器的实时闭环控制提供了可靠传感基础,在工业无损抓取与人机交互领域具有应用价值,后续将拓展至多自由度形变耦合标定及迁移学习跨场景泛化研究。 展开更多
关键词 弯曲传感器 视觉标定 软体执行器
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基于电容感知聚合物熔体密度测量方法
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作者 邱子岳 许红 +4 位作者 武艺旸 张世超 周瑞臣 陈孝进 吴大鸣 《塑料》 北大核心 2026年第1期117-121,共5页
基于pVT原理,设计完成了可模拟熔体状态的实验装置,通过实验获得在不同温度和压力状态下的熔体密度及对应的电容值的测量值。选用聚丙烯作为实验材料,通过自主设计的实验装置对熔体密度及对应电容值进行测量,基于最小二乘法,建立以电容... 基于pVT原理,设计完成了可模拟熔体状态的实验装置,通过实验获得在不同温度和压力状态下的熔体密度及对应的电容值的测量值。选用聚丙烯作为实验材料,通过自主设计的实验装置对熔体密度及对应电容值进行测量,基于最小二乘法,建立以电容为单值变量的聚合物熔体密度软测量模型,其均方根误差为0.000 817,并将软测量模型用于精密挤出中,实现对米重的精确控制,在异型材料米重控制中精度达到±0.042 g/m。 展开更多
关键词 聚合物熔体密度在线测量 电容-熔体密度软测量模型 pVT原理 特殊结构电容传感器 聚合物精密成型
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油田多相流含水率和含气率测量方法研究
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作者 张继龙 《石油石化节能与计量》 2026年第2期81-86,共6页
为解决油田多相流流量测量中分离式计量结果滞后、含水率和含气率等参数依赖人工取样的问题,实现单井产量精准监测,针对不含气和含气油井分别提出计量方案。对于不含气油井,基于能量守恒、传热机理及串联热阻叠加原理,推导含水率软测量... 为解决油田多相流流量测量中分离式计量结果滞后、含水率和含气率等参数依赖人工取样的问题,实现单井产量精准监测,针对不含气和含气油井分别提出计量方案。对于不含气油井,基于能量守恒、传热机理及串联热阻叠加原理,推导含水率软测量模型,通过地层温度、井口温度等参数反演油相、水相流量;对于含气油井,采用文丘里管与双能伽马传感器组合实现三相计量。结果显示:不含气油井模型核心参数敏感性符合传热规律,与量油车对比,20口油井的油相流量、水相流量平均相对误差分别为9.51%、9.35%,单井设备改造费用为0元,年节约费用共计79.5万元;25口含气油井的各相流量平均相对误差均低于5%,年节约费用共计140.4万元。结论表明,两类技术可精准满足不同油井计量需求,适合在油田推广应用。 展开更多
关键词 多相流 含水率软测量 文丘里管 双能伽马传感器 流量
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基于改进随机配置网络的工业软测量建模实验
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作者 邓晓刚 张静 王平 《实验室研究与探索》 北大核心 2025年第5期32-36,53,共6页
针对传统随机配置网络方法在变工况工业场景下难以建立准确软测量模型的问题,提出一种改进的随机配置网络(SCN)软测量建模方法,即多源迁移随机配置网络。以典型工业装置连续搅拌反应釜为例,通过实验研究验证了该方法的有效性。该方法将... 针对传统随机配置网络方法在变工况工业场景下难以建立准确软测量模型的问题,提出一种改进的随机配置网络(SCN)软测量建模方法,即多源迁移随机配置网络。以典型工业装置连续搅拌反应釜为例,通过实验研究验证了该方法的有效性。该方法将历史工况数据作为源域,将新工况数据作为目标域,采用K-means聚类算法将源域划分为多个子源域。针对每个子源域与目标域,分别建立SCN模型,并引入最大均值差异准则对多个迁移SCN模型进行加权集成。实验结果表明,所提出的多源迁移随机配置网络模型能够准确预测目标域的新样本,其建模性能优于传统的SCN模型。 展开更多
关键词 软测量 随机配置网络 迁移学习 多源域 最大均值差异
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