高通量自动流程材料集成计算算法与软件及其在先进存储材料中的应用

项目来源

国家重点研发计划(NKRD)

项目主持人

孙志梅

项目受资助机构

北京航空航天大学

立项年度

2017

立项时间

未公开

项目编号

2017YFB071700

项目级别

国家级

研究期限

未知 / 未知

受资助金额

519.50万元

学科

材料基因工程关键技术与支撑平台

学科代码

未公开

基金类别

“材料基因工程关键技术与支撑平台”重点专项

关键词

材料基因工程 ; 数据库 ; 相变/阻变材料 ; 相图 ; 数据同化 ; 不确定性量化 ; material genome project ; database ; Phase-Change RAM/Resistance-Change RAM material ; phase diagram ; data assimilation ; uncertainty quantification

参与者

王鹏;汪炯;缪奶华;郑洲顺;杨小渝;姜鑫;方泽华;张越;杨晓艺

参与机构

中南大学;中国科学院计算机网络信息中心

项目标书摘要:本科技报告为国家重点研发计划“高通量自动流程材料集成计算算法与软件及其在先进存储材料中的应用”课题二“高通量材料数据管理、可靠性分析与智能学习”的验收报告。本课题主要研究目标包含:构建阻变/相变存储材料的第一原理计算高通量计算数据库系统;构建相变/阻变材料相图热力学数据库系统;分析与量化高通量计算材料数据的可靠性,并揭示其误差传递规律;实现海量异质材料数据的管理与挖掘开发面向新材料性能预测的智能学习与同化的集成化大数据处理模式。针对上述目标,课题组使用了数据库技术、不确定性量化等方法,在材料数据库、材料计算及共性算法、跨尺度计算和数据驱动的新材料设计这三个方面取得了重要成果。在数据库上,课题组自主构建了相变/阻变材料相图热力学数据库系统,并自主研发了材料数据管理系统Data Vault;开发了材料数据清洗、挖掘、分类技术,可实现与其它材料数据库平台的跨平台及连接查询的并行功能;利用项目组其它课题数据,共同构建了阻变/相变存储材料的第一原理计算高通量数据库系统。在共性算法上,课题组开发了可用于体模量、互扩散系数、二元相图等材料性质的高效算法,提供了动态系统状态预测修正的数据同化算法。在材料计算和新材料设计上,课题组计算了部分相变与阻变材料相关体系的相图;设计了可用于信息存储的二维本征铁磁体、Janus本征铁磁半导体和新型二维直接带隙半导体In2Ge2Te6。

Application Abstract: This report is the final report for program titled“High-throughput material data management,reliability analysis and intelligent learning”of the National Key Research and Development Program of China(high-throughput and automatic material integrated computation and software and applications in information-storage materials).The main objectives of this project are:construct the database for high-throughput ab initio data of phase-change RAM and resistance-change RAM materials;construct the database for phase diagrams of PC-RAM and R-RAM materials;analyze and quantify the reliability of high-throughput computational material data and explain its error propagation mechanism;achieve an integrated big-data process mode for large heterogeneous material data management and mining aiming for new material properties learning and data assimilation.To address those objectives,the program teams have employed multi-disciplinary methods and techniques including database and uncertainty quantification.In the duration of the program,a number of progresses have been made which can be categorized into three major fields:database,numerical frameworks for computational materials and similar problems,multi-scale computation and data-driven new material design.To be specific,for database,we have constructed the database for phase diagrams of PC-RAM and R-RAM materials;developed the material data management system Data Vault to provide internet services;developed material data cleaning,mining and category techniques and achieved parallel searching across various material database platforms;constructed the database for high-throughput ab initio data of PC-RAM and R-RAM materials using data from other participating teams of the same project.For numerical frameworks for computational materials and similar problems,we have developed efficient algorithms to estimate bulk modulus,inter-diffusion coefficients and phase diagrams,and developed data assimilation frameworks to correct prediction for dynamic systems。For multi-scale computation and data-driven new material design,we have computed the phase diagrams of phase-change RAM and resistance-change RAM related materials;design 2D ferromagnets,2D magnetic Janus semiconductor and 2D semiconductor In2Ge2Te6 using material data.

项目受资助省

北京市

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  • 2.A sequential sampling method for adaptive metamodeling using data with highly nonlinear relation between input and output parameters

    • 关键词:
    • Kriging; Nonlinearity; Sequential sampling; Simulations; Metamodel;Adaptive metamodeling;ENGINEERING DESIGN; COMPUTER EXPERIMENTS; OPTIMIZATION; SUPPORT;PREDICTION
    • Huo, Guanying;Jiang, Xin;Zheng, Zhiming;Xue, Deyi
    • 《ENGINEERING COMPUTATIONS》
    • 2020年
    • 37卷
    • 3期
    • 期刊

    PurposeMetamodeling is an effective method to approximate the relations between input and output parameters when significant efforts of experiments and simulations are required to collect the data to build the relations. This paper aims to develop a new sequential sampling method for adaptive metamodeling by using the data with highly nonlinear relation between input and output parameters.Design/methodology/approachIn this method, the Latin hypercube sampling method is used to sample the initial data, and kriging method is used to construct the metamodel. In this work, input parameter values for collecting the next output data to update the currently achieved metamodel are determined based on qualities of data in both the input and output parameter spaces. Uniformity is used to evaluate data in the input parameter space. Leave-one-out errors and sensitivities are considered to evaluate data in the output parameter space.FindingsThis new method has been compared with the existing methods to demonstrate its effectiveness in approximation. This new method has also been compared with the existing methods in solving global optimization problems. An engineering case is used at last to verify the method further.Originality/valueThis paper provides an effective sequential sampling method for adaptive metamodeling to approximate highly nonlinear relations between input and output parameters.

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  • 3.CNC Tool Path Generation for Freeform Surface Machining Based on Preferred Feed Direction Field

    • 关键词:
    • Energy dissipation;Compressors;Compressor blades;Feed direction;Free-form surface machining;Scallop height;Toolpaths;Vector fields
    • Huo, Guanying;Jiang, Xin;Su, Cheng;Lu, Zehong;Sun, Yuwen;Zheng, Zhiming;Xue, Deyi
    • 《International Journal of Precision Engineering and Manufacturing》
    • 2019年
    • 20卷
    • 5期
    • 期刊

    This paper presents a novel method to generate three-axis CNC tool paths for machining freeform surfaces based on a preferred feed direction field. This research was initiated from a fluid dynamics behavior that the energy loss can be reduced when the streamlines of fluid and the small grooves on a surface are in the same directions. In this research, the fluid streamlines above the surface are defined by a collection of vectors. These vectors are regularized into a grid of vectors, and these regularized vectors are further projected onto the tangent planes of a grid of points on the surface to create the preferred feed direction field. Based on the parametric model of the surface, the vectors on the tangent planes of the surface are mapped into vectors in the parametric domain. A scalar function is constructed such that the isolines of this scalar function and the preferred feed direction vectors in the parametric domain are in the same directions. A group of isolines of the scalar function are identified and these isolines are mapped back onto the 3-D surface as the created tool paths considering the tolerance requirement. The developed method has been applied to generate the tool paths for machining surfaces of a compressor blade. © 2019, Korean Society for Precision Engineering.

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  • 4.High-order Hidden Markov Model for trend prediction in financial time series

    • 关键词:
    • Forecasting;Financial markets;Commerce;Electronic trading;Dimension reduction method;Essential problems;Financial time series;First-order models;High-order;Stock market prices;Tools and techniques;Trend prediction
    • Zhang, Mengqi;Jiang, Xin;Fang, Zehua;Zeng, Yue;Xu, Ke
    • 《Physica A: Statistical Mechanics and its Applications》
    • 2019年
    • 517卷
    • 期刊

    Financial price series trend prediction is an essential problem which has been discussed extensively using tools and techniques of economic physics and machine learning. Time dependence and volatility issues in this problem have made Hidden Markov Model (HMM) a useful tool in predicting the states of stock market. In this paper, we present an approach to predict the stock market price trend based on high-order HMM. Different from the commonly used first-order HMM, short and long-term time dependence are both considered in the high order HMM. By introducing a dimension reduction method which could transform the high-dimensional state vector of high-order HMM into a single one, we present a dynamic high-order HMM trading strategy to predict and trade CSI 300 and S&P 500 stock index for the next day given historical data. In our approach, we make a statistic of the daily returns in the history to demonstrate the relationship between hidden states and the price change trend. Experiments on CSI 300 and S&P 500 index illustrate that high-order HMM has preferable ability to identify market price trend than first-order one. Thus, the high-order HMM has higher accuracy and lower risk than the first-order model in predicting the index price trend. © 2018 Elsevier B.V.

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  • 5.Emergence and temporal structure of Lead–Lag correlations in collective stock dynamics

    • 关键词:
    • Commerce;Investments;Chinese economics;Chinese stock market;Correlation matrix;Market volatility;Matrix diagrams;Temporal networks;Temporal structures;Trading strategies
    • Xia, Lisi;You, Daming;Jiang, Xin;Chen, Wei
    • 《Physica A: Statistical Mechanics and its Applications》
    • 2018年
    • 502卷
    • 期刊

    Understanding the correlations among stock returns is crucial for reducing the risk of investment in stock markets. As an important stylized correlation, lead–lag effect plays a major role in analyzing market volatility and deriving trading strategies. Here, we explore historical lead–lag relationships among stocks in the Chinese stock market. Strongly positive lagged correlations can be empirically observed. We demonstrate this lead–lag phenomenon is not constant but temporally emerges during certain periods. By introducing moving time window method, we transform the lead–lag dynamics into a series of asymmetric lagged correlation matrices. Dynamic lead–lag structures are uncovered in the form of temporal network structures. We find that the size of lead–lag group experienced a rapid drop during the year 2012, which signaled a re-balance of the stock market. On the daily timescale, we find the lead–lag structure exhibits several persistent patterns, which can be characterized by the Jaccard matrix. We show significant market events can be distinguished in the Jaccard matrix diagram. Taken together, we study an integration of all the temporal networks and identify several leading stock sectors, which are in accordance with the common Chinese economic fundamentals. © 2018 Elsevier B.V.

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  • 6.Approach and algorithm for generating appropriate doped structures for high-throughput materials screening

    • 关键词:
    • Calculations;Iron alloys;Computation theory;Zircaloy;Cobalt alloys;Binary alloys;Computational algorithm;Computational materials;Doped structures;First principle simulation;First-principles density functional theory;High throughput screening;High-throughput materials;MatCloud
    • Zhang, Mingming;Yang, Xiaoyu
    • 《Computational Materials Science》
    • 2018年
    • 150卷
    • 期刊

    As the extensive use of first-principles Density Functional Theory (DFT) simulations, using DFT for high-throughput screening to predict the desirable doped structures that are physically stable with optimal properties becomes common. Usually, the challenge of running doping calculation is how to obtain inequivalent doped structures as input for DFT simulations to find the desirable doped structure(s). The current practice of substitutional doping is mainly based on experience to use one or more dopant atoms to replace target atoms to be substituted. Using this manual approach to produce all inequivalent doped structures based on expertise is tedious, and the results are usually incomplete. To address this need, we propose a "doping-filtering" collaboratively working approach and develop associated high-throughput computational algorithms to obtain inequivalent doped structures for substitutional doping-based high-throughput screening effectively. A computational time benchmark matrix table of using this approach to obtain inequivalent doped structures for different doping concentrations is also given. The algorithm is integrated into a high-throughput computational material infrastructure named MatCloud. It has been demonstrated in the study case of doping Ni, Co, Ti and Sc into Zr2Fe that the approach and algorithm are effective in reducing the computational time in obtaining inequivalent doped structures. © 2018 Elsevier B.V.

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  • 7.MatCloud, a high-throughput computational materials infrastructure: Present, future visions, and challenges

    • 关键词:
    • Information management;Simulation platform;Computer software;Computational materials;Computing resource;Future visions;High throughput;High-throughput materials;Integrated management;Job submission;Materials informatics
    • Yang, Xiaoyu;Wang, Zongguo;Zhao, Xushan;Song, Jianlong;Yu, Chao;Zhou, Jiaxin;Li, Kai
    • 《Chinese Physics B》
    • 2018年
    • 27卷
    • 11期
    • 期刊

    MatCloud provides a high-throughput computational materials infrastructure for the integrated management of materials simulation, data, and computing resources. In comparison to AFLOW, Material Project, and NoMad, MatCloud delivers two-fold functionalities: a computational materials platform where users can do on-line job setup, job submission and monitoring only via Web browser, and a materials properties simulation database. It is developed under Chinese Materials Genome Initiative and is a China own proprietary high-throughput computational materials infrastructure. MatCloud has been on line for about one year, receiving considerable registered users, feedbacks, and encouragements. Many users provided valuable input and requirements to MatCloud. In this paper, we describe the present MatCloud, future visions, and major challenges. Based on what we have achieved, we will endeavour to further develop MatCloud in an open and collaborative manner and make MatCloud a world known China-developed novel software in the pressing area of high-throughput materials calculations and materials properties simulation database within Material Genome Initiative. © 2018 Institute of Physics Publishing.All right reserved.

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  • 8.Uncertainty quantification on the macroscopic properties of heterogeneous porous media

    • 关键词:
    • Intelligent systems;Monte Carlo methods;Complex physical process;Generalized polynomial chaos;Heterogeneous porous media;Macroscopic properties;Parametric uncertainties;Probabilistic density function;Structural heterogeneity;Uncertainty quantifications
    • Wang, Peng;Chen, Huali;Meng, Xuhui;Jiang, Xin;Xiu, Dongbin;Yang, Xiaofan
    • 《Physical Review E》
    • 2018年
    • 98卷
    • 3期
    • 期刊

    Pore-scale simulation is an essential tool to understand complex physical process in many environmental problems. However, structural heterogeneity and data scarcity render the porous medium, and in turn its macroscopic properties, uncertain. Meanwhile, direct numerical simulation of the medium at the fine scale often incurs high computational cost, which further limits efforts to quantify the parametric uncertainty over those macroscopic properties. To address this challenge, we propose a framework to compute the probabilistic density function (PDF) of the macroscopic property based on the generalized polynomial chaos expansion method and the Minkowski functionals. To illustrate the effectiveness of our approach, we conduct numerical experiments for one macroscopic property, namely the permeability, and we compare its PDF with that obtained from Monte Carlo simulations. Both two- and three-dimensional cases show that our framework requires much fewer realizations while maintaining the desired accuracy. © 2018 American Physical Society.

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  • 9.Sequential data assimilation with multiple nonlinear models and applications to subsurface flow

    • 关键词:
    • Nonlinear systems;Monte Carlo methods;Bandpass filters;Forecasting;Uncertainty analysis;Data assimilation;Data assimilation techniques;Ensemble Kalman Filter;Limited observations;Model form uncertainties;Modeling fidelity;Particle filter;Uncertainty quantifications
    • Yang, Lun;Narayan, Akil;Wang, Peng
    • 《Journal of Computational Physics》
    • 2017年
    • 346卷
    • 期刊

    Complex systems are often described with competing models. Such divergence of interpretation on the system may stem from model fidelity, mathematical simplicity, and more generally, our limited knowledge of the underlying processes. Meanwhile, available but limited observations of system state could further complicate one's prediction choices. Over the years, data assimilation techniques, such as the Kalman filter, have become essential tools for improved system estimation by incorporating both models forecast and measurement; but its potential to mitigate the impacts of aforementioned model-form uncertainty has yet to be developed. Based on an earlier study of Multi-model Kalman filter, we propose a novel framework to assimilate multiple models with observation data for nonlinear systems, using extended Kalman filter, ensemble Kalman filter and particle filter, respectively. Through numerical examples of subsurface flow, we demonstrate that the new assimilation framework provides an effective and improved forecast of system behavior. © 2017 Elsevier Inc.

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