基于多任务加载的实时混合仿真方法

IF 1.8 3区 工程技术 Q3 CONSTRUCTION & BUILDING TECHNOLOGY Structural Design of Tall and Special Buildings Pub Date : 2023-07-20 DOI:10.1002/tal.2045
Tao Wang, Jiedun Hao, Guoshan Xu, Zhen Wang, Liyan Meng, Huan Zheng
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引用次数: 0

摘要

由于实时加载特性和可用加载设施的限制,传统的实时混合模拟方法(RHSM)无法进行精细的数值子结构模拟和多次实验子结构试验。为了提高有限加载条件下的实验精度,本文提出了一种基于多任务加载的RHSM(RHSM‐ML)。在所提出的方法中,采用了内环多任务加载策略,以在有限的可用加载设施下准确再现多个实验子结构的性能,并且采用了基于外环力校正的迭代策略,通过允许对数值子结构进行精细模拟,同时在实验子结构上保持实时载荷,进一步提高了实验精度。首先,介绍了所提出的RHSM‐ML的方法。此外,还进行了数值模拟,验证了该方法的有效性和准确性。最后,分析了结构模型对迭代收敛性的影响。结果表明,多任务加载和基于力校正的迭代策略对RHSM是可行的。数值模拟表明,在多任务加载策略的作用下,RHSM‐ML在五轮迭代中,不同模拟条件下的相关系数可达0.9999,基于力校正的RHSM‐ML迭代策略可以显著提高迭代收敛精度。迭代收敛性分析表明,在不同的结构模型下,RHSM‐ML的收敛可以在五轮迭代内实现。
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A real‐time hybrid simulation method based on multitasking loading
Due to the real‐time loading property and the limitation of available loading facilities, both of the refined numerical substructure simulations and multiple experimental substructure tests are impossible for traditional real‐time hybrid simulation method (RHSM). For improving the experimental accuracy under limited loading facilities, a RHSM based on multitasking loading (RHSM‐ML) is proposed in this paper. In the proposed method, an inner‐loop multitasking loading strategy is adopted for accurately reproducing the performance of multiple experimental substructures with limited available loading facilities, and an outer‐loop force correction‐based iteration strategy is adopted for further improving the experimental accuracy by allowing refined simulation of the numerical substructures while remaining real‐time loading on the experimental substructures. Firstly, the methodology of the proposed RHSM‐ML is presented. Furthermore, the numerical simulations were conducted for validating the effectiveness and accuracy of the proposed method. Finally, the influence of the structural model on the iterative convergence is analyzed. It is shown that the multitasking loading and the force correction‐based iteration strategy are feasible for RHSM. It is shown from numerical simulations that with the contribution of the multitasking loading strategy, the correlation coefficients under different simulation conditions can up to 0.9999 within five round iterations by the RHSM‐ML and the force correction‐based iteration strategy of the RHSM‐ML can significantly improve the iterative convergence accuracy. It is shown from iterative convergence analysis that under different structural models, the convergence of the RHSM‐ML can be achieved within five round iterations.
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来源期刊
CiteScore
5.30
自引率
4.20%
发文量
83
审稿时长
6-12 weeks
期刊介绍: The Structural Design of Tall and Special Buildings provides structural engineers and contractors with a detailed written presentation of innovative structural engineering and construction practices for tall and special buildings. It also presents applied research on new materials or analysis methods that can directly benefit structural engineers involved in the design of tall and special buildings. The editor''s policy is to maintain a reasonable balance between papers from design engineers and from research workers so that the Journal will be useful to both groups. The problems in this field and their solutions are international in character and require a knowledge of several traditional disciplines and the Journal will reflect this. The main subject of the Journal is the structural design and construction of tall and special buildings. The basic definition of a tall building, in the context of the Journal audience, is a structure that is equal to or greater than 50 meters (165 feet) in height, or 14 stories or greater. A special building is one with unique architectural or structural characteristics. However, manuscripts dealing with chimneys, water towers, silos, cooling towers, and pools will generally not be considered for review. The journal will present papers on new innovative structural systems, materials and methods of analysis.
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