师资队伍

职称:副教授

电子邮箱:jingang@tsinghua.edu.cn

职务:博士生导师

教育背景

学士    201007    清华大学    核工程与核技术

博士    201507    清华大学    核科学与技术


工作履历

201510 - 201907    美国麻省理工学院(MIT)核科学与工程系    博士后

201910 – 202105    清华大学核研院    助理教授

202106 – 至今        清华大学核研院    副教授

学术兼职

202103 - 至今    学术期刊Frontiers in Energy Research (ISSN: 2296-598X)    客座编辑

202106 - 至今    学术期刊Energies (ISSN: 1996-1073)    客座编辑

201809 - 至今    美国核学会(American Nuclear Society)    会员

201911 - 至今    中国核学会(China Nuclear Society)    会员

201710 – 201906   国际反应堆物理实验评价项目(IRPhEP)技术评审会    成员

研究领域

致力于通过核反应堆先进模拟分析方法研究,改进核能系统效率及安全水平。具体研究方向包括:

- 反应堆放射性源项

- 辐射防护与屏蔽分析

- 蒙特卡罗粒子输运模拟

- 核反应堆多尺度、多物理耦合分析

- 核能系统设计及安全分析软件研发

- 智能化核应急决策技术

研究概况

2021 –2024    先进核安全分析与风险评价技术研究   国家自然科学基金

2022 –2024    基于直接CAD粒子输运和非结构网格统计的聚变蒙卡方法研究   国家自然科学基金(面上项目)

2020 –2023    核电厂智能化故障监测与事故诊断方法研究    中核领创-菁英项目

2020 –2025    基于高保真多物理模拟的高温堆核事故分析方法研究   启动科研

获奖情况

2020    省部级    三等奖    国家电力投资集团科技进步奖

2015    论文类    最佳论文奖    2015亚洲反应堆物理年会最佳论文奖

学术成果

B. Qi, L. Zhang, J. Liang*, J. Tong. Combinatorial Techniques for Fault Diagnosis in Nuclear Power Plants Based on Bayesian Neural Network and Simplified Bayesian Network-Artificial Neural Network. Frontiers in Energy Research. 2022, 10.  

R. Li, Z. Liu, Z. Feng, J. Liang* , L. Zhang. High-fidelity MC-DEM Modeling and Uncertainty Analysis of HTR-PM First Criticality. Frontiers in Energy Research. 2022.  

Z. Feng, N. An, J. Liang*, K. Wang. ODR-VS method for high packing fraction of dispersed TRISO particles. Annals of Nuclear Energy. 2022, 166.

S. Kumar, J. Liang*, B. Forget, K. Smith. “BEAVRS: An integral full core multi-physics PWR benchmark with measurements and uncertainties”. Progress in Nuclear Energy. 129. 2020.  

J. Liang*, K. Wang, Y. Qiu, X. Chai, S. Qiang. “Domain decomposition strategy for pin-wise full-core Monte Carlo depletion calculation with the reactor Monte Carlo code”. Nuclear Engineering and Technology. 2016, 48(3): 635-641.

J. Liang, X. Peng, et al. “Processing of a Comprehensive Windowed Multipole Library via Vector Fitting”. PHYSOR 2018: Reactor Physics paving the way towards more efficient systems. Cancun, Mexico, April 22-26, 2018.

J. Liang, S. Kumar, B. Forget, K. Smith. “Quantifying Uncertainty in the BEAVRS Benchmark”. M&C 2017 - International Conference on Mathematics & Computational Methods Applied to Nuclear Science & Engineering, Jeju, Korea, April 16-20, 2017, on USB (2017).

J. Liang, Z. Wu*, H Abdel-Kalik. “Nuclear Data Sensitivity Analysis in OpenMC Using the GPT-Free Method”. Transactions of the American Nuclear Society, 2018, 118: 921-924.

J. Liang, P. Ducru, et al, “Target Velocity Sampling for Resonance Elastic Scattering Using Windowed Multipole Cross Section Data”, Transactions of the American Nuclear Society, 2019, 119: 1163-1166.

X. Wang, J. Liang, Y. Li, Q. Zhang*. Hybrid Monte Carlo methods for Geant4-based nuclear well logging implementation. Annals of Nuclear Energy. 2022, 169.  

S. Liu, J. Liang, K. Wang, Y. Chen. “Development of the integrated parallelism strategy for large scale depletion calculation in the Monte Carlo code RMC”. Annals of Nuclear Energy. 135: 106941. 2020.  

X. Peng, J. Liang, et al. “Calculation of adjoint-weighted reactor kinetics parameters in OpenMC”. Annals of Nuclear Energy. 2019. 128: 231-235.  

Z. Wu, J. Liang, et al. “GPT-Free Sensitivity Analysis for Monte Carlo Models”. Nuclear Technology. 2019: 1-16. X. Peng*,

J. Liang, et al. “Development of continuous-energy sensitivity analysis capability in OpenMC”. Annals of Nuclear Energy. 2017. 110: 362-383.

S. Liu, J. Liang, Q. Wu, J. Guo, S. Huang*, X. Tang, Z. Li, K. Wang. “BEAVRS full core burnup calculation in hot full power condition by RMC code”. Annals of Nuclear Energy. 2017. 101: 434-446.

梁金刚, 王侃, 蔡云, 孙嘉龙.  中子输运蒙特卡罗模拟的区域分解方法研究  .原子能科学技术,   2014,   48(12):   2315-2320.


梁金刚, 王侃, 余纲林, 佘顶, 柴晓明, 强胜龙, 姚栋.  基于RMC的计数器数据分解方法研究  .核动力工程,   2014,   35(4):   142-146.