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Data driven models for compressive strength prediction of concrete at high temperatures

Mahmood AKBARI, Vahid JAFARI DELIGANI

《结构与土木工程前沿(英文)》 2020年 第14卷 第2期   页码 311-321 doi: 10.1007/s11709-019-0593-8

摘要: The use of data driven models has been shown to be useful for simulating complex engineering processes, when the only information available consists of the data of the process. In this study, four data-driven models, namely multiple linear regression, artificial neural network, adaptive neural fuzzy inference system, and nearest neighbor models based on collection of 207 laboratory tests, are investigated for compressive strength prediction of concrete at high temperature. In addition for each model, two different sets of input variables are examined: a complete set and a parsimonious set of involved variables. The results obtained are compared with each other and also to the equations of NIST Technical Note standard and demonstrate the suitability of using the data driven models to predict the compressive strength at high temperature. In addition, the results show employing the parsimonious set of input variables is sufficient for the data driven models to make satisfactory results.

关键词: data driven model     compressive strength     concrete     high temperature    

Prediction of hydro-suction dredging depth using data-driven methods

《结构与土木工程前沿(英文)》 2021年 第15卷 第3期   页码 652-664 doi: 10.1007/s11709-021-0719-7

摘要: In this study, data-driven methods (DDMs) including different kinds of group method of data handling (GMDH) hybrid models with particle swarm optimization (PSO) and Henry gas solubility optimization (HGSO) methods, and simple equations methods were applied to simulate the maximum hydro-suction dredging depth (hs). Sixty-seven experiments were conducted under different hydraulic conditions to measure the hs. Also, 33 data samples from three previous studies were used. The model input variables consisted of pipeline diameter (d), the distance between the pipe inlet and sediment level (Z), the velocity of flow passing through the pipeline (u0), the water head (H), and the medium size of particles (D50). Data-driven simulation results indicated that the HGSO algorithm accurately trains the GMDH methods better than the PSO algorithm, whereas the PSO algorithm trained simple simulation equations more precisely. Among all used DDMs, the integrative GMDH-HGSO algorithm provided the highest accuracy (RMSE = 7.086 mm). The results also showed that the integrative GMDHs enhance the accuracy of polynomial GMDHs by ~14.65% (based on the RMSE).

关键词: sedimentation     water resources     dam engineering     machine learning     heuristic    

Data-driven distribution network topology identification considering correlated generation power of distributed

《能源前沿(英文)》 2022年 第16卷 第1期   页码 121-129 doi: 10.1007/s11708-021-0780-x

摘要: This paper proposes a data-driven topology identification method for distribution systems with distributed energy resources (DERs). First, a neural network is trained to depict the relationship between nodal power injections and voltage magnitude measurements, and then it is used to generate synthetic measurements under independent nodal power injections, thus eliminating the influence of correlated nodal power injections on topology identification. Second, a maximal information coefficient-based maximum spanning tree algorithm is developed to obtain the network topology by evaluating the dependence among the synthetic measurements. The proposed method is tested on different distribution networks and the simulation results are compared with those of other methods to validate the effectiveness of the proposed method.

关键词: power distribution network     data-driven     topology identification     distributed energy resource     maximal information coefficient    

使用数据驱动模型优化抗体纯化策略 Article

刘松崧, Lazaros G. Papageorgiou

《工程(英文)》 2019年 第5卷 第6期   页码 1077-1092 doi: 10.1016/j.eng.2019.10.011

摘要:

本工作致力于抗体片段纯化过程的多尺度优化。优化了生产过程中的色谱决策,包括色谱柱的数量及其大小,每批的循环数以及操作流速。使用基于微型实验数据的制造规模模拟数据集,建立了以负载质量、流速和柱床高度为输入的色谱通量数据驱动模型。与其他方法相比,分段线性回归建模方法具有简单、预测精度高的优点。提出了两种混合整数非线性规划(MINLP)模型,结合数据驱动模型,以最小化每克抗体纯化过程的总成本。然后,使用线性化技术和多参数分解将这些MINLP模型重新构造为混合整数线性规划(MILP)模型。研究了两个具有不同色谱柱尺寸替代品的工业相关案例,以证明所提出模型的适用性。

关键词: 抗体纯化     多尺度优化     抗原结合片段     混合整数规划     数据驱动模型     分段线性回归    

数据驱动的加工过程异常诊断 Article

Y.C. Liang, S. Wang, W.D. Li, X. Lu

《工程(英文)》 2019年 第5卷 第4期   页码 646-652 doi: 10.1016/j.eng.2019.03.012

摘要:

为了在计算机数控(CNC)加工过程中实现零缺陷生产,开发有效的异常检测诊断系统势在必行。然而,由于加工过程中机床和工装的动态条件限制,目前在工业生产中采用的相关诊断系统所能发挥的作用往往非常有限。为了解决这个问题,本文提出了一种全新的异常数据驱动的诊断系统。在该系统之中,我们持续收集随动态加工过程而产生的状态监测功率数据,并以此支持在线诊断分析。为了便于分析,我们设计了预处理机制对所监视的数据进行去噪、标准化以及校准。随后我们即从监控数据中提取关键特征,并定义阈值以识别异常。考虑到加工过程中机床和工装的动态条件,用于识别异常的阈值可以调整。我们还可以基于历史数据利用果蝇优化(FFO)算法优化阈值,以实现更准确的检测。通过实践验证,我们证明了该系统在工业应用中的有效性和巨大前景。

关键词: 计算机数控加工     异常检测     果蝇优化算法     数据驱动方法    

机器学习和数据驱动算法在智慧发电系统中的应用——一种不确定性处理的视角 Review

孙立, Fengqi You

《工程(英文)》 2021年 第7卷 第9期   页码 1239-1247 doi: 10.1016/j.eng.2021.04.020

摘要:

由于人们对气候变化和环境保护的日益关注,智慧发电已成为常规火力发电厂和可再生能源系统经济安全运行的关键。面对日益增长的系统规模及其各种不确定性,传统的基于模型的第一定律方法已难以满足系统控制的要求。机器学习(ML)和数据驱动控制(DDC)技术的蓬勃发展为这些传统方法提供了一种替代方案。本文回顾了机器学习和数据驱动控制技术在发电系统监测、控制、优化和故障检测方面的典型应用,特别着重于揭示这些方法在评价、消除或耐受相关不确定性影响方面的作用。本文为智慧发电控制技术提供了一个从调节层到规划层的总体视角,分别从可见性、机动性、灵活性、经济性和安全性(简称“五性”)方面对机器学习和数据驱动控制技术的优势进行阐释。最后,对未来研究和应用进行了展望。

关键词: 智慧发电     机器学习     数据驱动控制     系统工程    

An adaptive data-driven method for accurate prediction of remaining useful life of rolling bearings

Yanfeng PENG, Junsheng CHENG, Yanfei LIU, Xuejun LI, Zhihua PENG

《机械工程前沿(英文)》 2018年 第13卷 第2期   页码 301-310 doi: 10.1007/s11465-017-0449-7

摘要:

A novel data-driven method based on Gaussian mixture model (GMM) and distance evaluation technique (DET) is proposed to predict the remaining useful life (RUL) of rolling bearings. The data sets are clustered by GMM to divide all data sets into several health states adaptively and reasonably. The number of clusters is determined by the minimum description length principle. Thus, either the health state of the data sets or the number of the states is obtained automatically. Meanwhile, the abnormal data sets can be recognized during the clustering process and removed from the training data sets. After obtaining the health states, appropriate features are selected by DET for increasing the classification and prediction accuracy. In the prediction process, each vibration signal is decomposed into several components by empirical mode decomposition. Some common statistical parameters of the components are calculated first and then the features are clustered using GMM to divide the data sets into several health states and remove the abnormal data sets. Thereafter, appropriate statistical parameters of the generated components are selected using DET. Finally, least squares support vector machine is utilized to predict the RUL of rolling bearings. Experimental results indicate that the proposed method reliably predicts the RUL of rolling bearings.

关键词: Gaussian mixture model     distance evaluation technique     health state     remaining useful life     rolling bearing    

多尺度材料与过程设计的数据驱动和机理混合建模方法 Perspective

周腾, Rafiqul Gani, Kai Sundmacher

《工程(英文)》 2021年 第7卷 第9期   页码 1231-1238 doi: 10.1016/j.eng.2020.12.022

摘要:

世界人口的不断增长要求加工业以更高效和更可持续的方式生产食品、燃料、化学品和消费品。功能性过程材料是这一挑战的核心。传统上,人们根据经验或者通过反复试验的方法来发现新型先进材料。随着理论方法和相关工具的不断改进和计算机能力的提高,现在流行使用计算方法来指导材料选择和设计,这种方法也非常有效。由于材料选择与材料使用的过程操作之间存在很强的相互作用,必须同时进行材料设计和过程设计。尽管有这种重要联系,但由于通常需要使用不同规模的多个模型,材料和过程的集成设计并不容易。混合建模为解决此类复杂的设计问题提供了一个有前景的选择。在混合建模中,用数据驱动模型描述原本计算成本高昂的材料特性,而用机理模型表示众所周知的过程相关原理。本文重点介绍了混合建模在多尺度材料和过程设计中的重要性。首先介绍通用设计方法,然后选择了六个重要的应用领域:四个来自化学工程领域,两个来自能源系统工程领域。对于选定的每个领域,讨论了使用混合建模进行多尺度材料和过程设计的最新研究。最后,本文给出了结论,指出当前研究的局限性和未来的发展空间。

关键词: 数据驱动     代理模型     机器学习     混合建模     材料设计     过程优化    

A hierarchical system to predict behavior of soil and cantilever sheet wall by data-driven models

Nang Duc BUI; Hieu Chi PHAN; Tiep Duc PHAM; Ashutosh Sutra DHAR

《结构与土木工程前沿(英文)》 2022年 第16卷 第6期   页码 667-684 doi: 10.1007/s11709-022-0822-4

摘要: The study proposes a framework combining machine learning (ML) models into a logical hierarchical system which evaluates the stability of the sheet wall before other predictions. The study uses the hardening soil (HS) model to develop a 200-sample finite element analysis (FEA) database, to develop the ML models. Consequently, a system containing three trained ML models is proposed to first predict the stability status (random forest classification, RFC) followed by 1) the cantilever top horizontal displacement of sheet wall (artificial neural network regression models, RANN1) and 2) vertical settlement of soil (RANN2). The uncertainty of this data-driven system is partially investigated by developing 1000 RFC models, based on the application of random sampling technique in the data splitting process. Investigation on the distribution of the evaluation metrics reveals negative skewed data toward the 1.0000 value. This implies a high performance of RFC on the database with medians of accuracy, precision, and recall, on test set are 1.0000, 1.0000, and 0.92857, respectively. The regression ANN models have coefficient of determinations on test set, as high as 0.9521 for RANN1, and 0.9988 for RANN2, respectively. The parametric study for these regressions is also provided to evaluate the relative insight influence of inputs to output.

关键词: finite element analysis     cantilever sheet wall     machine learning     artificial neural network     random forest    

Data-driven approach to solve vertical drain under time-dependent loading

《结构与土木工程前沿(英文)》 2021年 第15卷 第3期   页码 696-711 doi: 10.1007/s11709-021-0727-7

摘要: Currently, the vertical drain consolidation problem is solved by numerous analytical solutions, such as time-dependent solutions and linear or parabolic radial drainage in the smear zone, and no artificial intelligence (AI) approach has been applied. Thus, in this study, a new hybrid model based on deep neural networks (DNNs), particle swarm optimization (PSO), and genetic algorithms (GAs) is proposed to solve this problem. The DNN can effectively simulate any sophisticated equation, and the PSO and GA can optimize the selected DNN and improve the performance of the prediction model. In the present study, analytical solutions to vertical drains in the literature are incorporated into the DNN–PSO and DNN–GA prediction models with three different radial drainage patterns in the smear zone under time-dependent loading. The verification performed with analytical solutions and measurements from three full-scale embankment tests revealed promising applications of the proposed approach.

关键词: vertical drain     artificial neural network     time-dependent loading     deep learning network     genetic algorithm     particle swarm optimization    

基于混合驱动高斯过程学习的强机动多目标跟踪方法 Research Article

国强1,滕龙1,2,尹天祥3,郭云飞3,吴新良2,宋文明2

《信息与电子工程前沿(英文)》 2023年 第24卷 第11期   页码 1647-1656 doi: 10.1631/FITEE.2300348

摘要: 现有机动目标跟踪方法在杂波环境中强机动目标的跟踪性能并不令人满意。本文提出一种混合驱动方法,利用数据驱动和基于模型算法的优点跟踪多个高机动目标。将时变恒速(CV)模型集成到在线学习的高斯过程(GP)中,提高高斯过程的预测性能。进一步与广义概率数据关联(GPDA)算法相结合,实现多目标跟踪。通过仿真实验可知,与广泛使用的机动目标跟踪算法如交互式多模型(IMM)和数据驱动的高斯过程运动跟踪器(GPMT)相比,提出的混合驱动方法具有显著的性能优势。

关键词: 目标跟踪;高斯过程;数据驱动;在线学习;模型驱动;概率数据关联    

Decomposition and decoupling analysis of electricity consumption carbon emissions in China

《工程管理前沿(英文)》   页码 486-498 doi: 10.1007/s42524-022-0215-3

摘要: Electricity consumption is one of the major contributors to greenhouse gas emissions. In this study, we build a power consumption carbon emission measurement model based on the operating margin factor. We use the decomposition and decoupling technology of logarithmic mean Divisia index method to quantify six effects (emission intensity, power generation structure, consumption electricity intensity, economic scale, population structure, and population scale) and comprehensively reflect the degree of dependence of electricity consumption carbon emissions on China’s economic development and population changes. Moreover, we utilize the decoupling model to analyze the decoupling state between carbon emissions and economic growth and identify corresponding energy efficiency policies. The results of this study provide a new perspective to understand carbon emission reduction potentials in the electricity use of China.

关键词: electricity consumption carbon emission measurement     LMDI model     decoupling model     data driven    

数据驱动的材料创新基础设施

汪洪, 项晓东, 张澜庭

《工程(英文)》 2020年 第6卷 第6期   页码 609-611 doi: 10.1016/j.eng.2020.04.004

Dynamic response surface methodology using Lasso regression for organic pharmaceutical synthesis

《化学科学与工程前沿(英文)》 2022年 第16卷 第2期   页码 221-236 doi: 10.1007/s11705-021-2061-y

摘要: To study the dynamic behavior of a process, time-resolved data are collected at different time instants during each of a series of experiments, which are usually designed with the design of experiments or the design of dynamic experiments methodologies. For utilizing such time-resolved data to model the dynamic behavior, dynamic response surface methodology (DRSM), a data-driven modeling method, has been proposed. Two approaches can be adopted in the estimation of the model parameters: stepwise regression, used in several of previous publications, and Lasso regression, which is newly incorporated in this paper for the estimation of DRSM models. Here, we show that both approaches yield similarly accurate models, while the computational time of Lasso is on average two magnitude smaller. Two case studies are performed to show the advantages of the proposed method. In the first case study, where the concentrations of different species are modeled directly, DRSM method provides more accurate models compared to the models in the literature. The second case study, where the reaction extents are modeled instead of the species concentrations, illustrates the versatility of the DRSM methodology. Therefore, DRSM with Lasso regression can provide faster and more accurate data-driven models for a variety of organic synthesis datasets.

关键词: data-driven modeling     pharmaceutical organic synthesis     Lasso regression     dynamic response surface methodology    

高炉炼铁过程数据驱动软测量技术研究综述 Review Article

罗月阳1,张新民1,Manabu Kano2,邓龙3,杨春节1,宋执环1

《信息与电子工程前沿(英文)》 2023年 第24卷 第3期   页码 327-354 doi: 10.1631/FITEE.2200366

摘要: 在高能耗、高污染、极为复杂的冶炼过程中,高炉是极为重要的反应器。软测量技术是在线实时预测反映高炉能耗和运行稳定性质量指标的关键技术,在节能减排、提高产品质量和带来经济效益方面发挥着重要作用。随着物联网、大数据和人工智能的发展,高炉炼铁过程中的数据驱动软测量技术受到越来越多关注,但目前尚无关于高炉炼铁过程数据驱动软测量技术的系统性总结与评价。本文详细总结了高炉炼铁过程数据驱动软测量技术的最新研究成果与发展现状。具体而言,首先对高炉炼铁中使用的各种数据驱动软测量建模方法(如多尺度方法、自适应方法、深度学习等)进行了全面分类总结与分析。其次,对高炉炼铁中数据驱动软测量技术的应用现状(如硅含量、熔铁温度、气体利用率等)作对比分析。最后,展望了数据驱动软测量技术在高炉数字孪生、多源信息融合、碳达峰与碳中和等方面的潜在挑战和未来发展趋势。

关键词: 软测量;数据驱动建模;机器学习;深度学习;高炉;炼铁过程    

标题 作者 时间 类型 操作

Data driven models for compressive strength prediction of concrete at high temperatures

Mahmood AKBARI, Vahid JAFARI DELIGANI

期刊论文

Prediction of hydro-suction dredging depth using data-driven methods

期刊论文

Data-driven distribution network topology identification considering correlated generation power of distributed

期刊论文

使用数据驱动模型优化抗体纯化策略

刘松崧, Lazaros G. Papageorgiou

期刊论文

数据驱动的加工过程异常诊断

Y.C. Liang, S. Wang, W.D. Li, X. Lu

期刊论文

机器学习和数据驱动算法在智慧发电系统中的应用——一种不确定性处理的视角

孙立, Fengqi You

期刊论文

An adaptive data-driven method for accurate prediction of remaining useful life of rolling bearings

Yanfeng PENG, Junsheng CHENG, Yanfei LIU, Xuejun LI, Zhihua PENG

期刊论文

多尺度材料与过程设计的数据驱动和机理混合建模方法

周腾, Rafiqul Gani, Kai Sundmacher

期刊论文

A hierarchical system to predict behavior of soil and cantilever sheet wall by data-driven models

Nang Duc BUI; Hieu Chi PHAN; Tiep Duc PHAM; Ashutosh Sutra DHAR

期刊论文

Data-driven approach to solve vertical drain under time-dependent loading

期刊论文

基于混合驱动高斯过程学习的强机动多目标跟踪方法

国强1,滕龙1,2,尹天祥3,郭云飞3,吴新良2,宋文明2

期刊论文

Decomposition and decoupling analysis of electricity consumption carbon emissions in China

期刊论文

数据驱动的材料创新基础设施

汪洪, 项晓东, 张澜庭

期刊论文

Dynamic response surface methodology using Lasso regression for organic pharmaceutical synthesis

期刊论文

高炉炼铁过程数据驱动软测量技术研究综述

罗月阳1,张新民1,Manabu Kano2,邓龙3,杨春节1,宋执环1

期刊论文