Zhang Ran   Lecturer

张然,工学博士,讲师,沈阳市“拔尖人才”。日本建筑学会正会员、日本农村规划学会会员。主要研究方向为乡村建筑文化的活化与传承、乡村存量空间的数智化设计与改造、庭院空间设计策略、乡村土地利用、乡村规划、老年人生活空间规划设计策略。近十年,参加辽宁省科学技术计划项目1项,日本村庄规划项目1项。发表中文论文7篇,其中国际城市规划、建筑学报等核心期刊4篇;日文论文14篇,其中日本建筑学会计划系论文集等核心期刊4...Detials

Safety Assessment of the Main Beams of Historical Buildings Based on Multisource Data Fusion

Release time:2024-12-16  Hits:

  • First Author:Ying Chen
  • Co author:Ran Zhang,Yanfeng Li,Jiyuan Xie,Dong Guo,Laiqiang Song
  • Journal:buildings
  • Affiliation of Author(s):College of JangHo Architecture, Northeastern University
  • Abstract:Taking the main beams of historical buildings as the engineering background, existing theoretical research results related to influencing structural factors were used along with numerical simulation and data fusion methods to examine their integrity. Thus, the application of multifactor data fusion in the safety assessment of the main beams of historical buildings was performed. On the basis of existing structural safety assessment methods, neural networks and rough set theory were combined and applied to the safety assessment of the main beams of historical buildings. The bearing capacity of the main beams was divided into five levels according to the degree to which they met current requirements. The safety assessment database established by a Kohonen neural network was clustered. Thus, the specific evaluation indices corresponding to the five types of safety levels were presented. The rough neural network algorithm, integrating the rough set and neural network, was applied for data fusion with this database. The attribute reduction function of the rough set was used to reduce the input dimension of the neural network, which was trained, underwent a learning process, and then used for predictions. The trained neural network was applied for the safety assessment of the main beams of historical buildings, and six specific attribute index values corresponding to the main beams were directly input to obtain the current safety statuses of the buildings. Corresponding management suggestions were also provided.
  • Key Words:historical buildings; dynamic security assessment; data fusion; rough set; neural network
  • Indexed by:SCI JCR Q2
  • Discipline:Engineering
  • Document Type:JCR 二区
  • First-Level Discipline:Architecture
  • Translation or Not:no