论文成果
Numerical simulation of side-entry bubbling reactor
点击次数:
关键字:ALGORITHM; LOCATION; FAILURE
摘要:As a leak identification method in chemical processes, deep learning is limited by inadequate sample labels and highly coupled, nonlinear process variables, therefore difficult to model with a high identification accuracy. To address these problems, a fusion correlation -distance graph (CDG) coding aided deep learning method is proposed. First, the mechanism model is built based on dynamic process data with different leakage labels. Then, the weighted degree and spatial distribution of the dynamic dataset are computed through innovatively designed correlation and distance coding, aided by sliding window fusion into a correlation -distance matrix. Finally, the well -trained long short-term memory (LSTM) is constructed to learn the deep features of the leakage process and identify them. The applications in two industrial cases, CO 2 capture and ammonia synthesis, show that CDGLSTM presents state-of-the-art identification performance with R 2 scores of 0.994 and 0.986. 6.6 % and 18.4 % improvement over LSTM. In addition, the proposed method effectively categorizes the unknown leak samples into known labels with nearby locations, providing a valuable reference for operators to determine the unknown leak locations.
卷号:187
期号:
是否译文:

田文德

教师拼音名称:tianwende

所属院系:环境与安全工程学院

学术荣誉列表组件组件异常,错误标识码S4Mwk, 请查看错误日志 曾获荣誉列表组件组件异常,错误标识码zqVYb, 请查看错误日志
崂山校区 - 山东省青岛市松岭路99号   
四方校区 - 山东省青岛市郑州路53号   
中德国际合作区(中德校区) - 山东省青岛市西海岸新区团结路3698号
高密校区 - 山东省高密市杏坛西街1号   
济南校区 - 山东省济南市文化东路80号©2015 青岛科技大学    
管理员邮箱:master@qust.edu.cn
访问量: 手机版 主页语种切换组件异常,错误标识码BgckO, 请查看错误日志

最后更新时间: ..