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Development and Practice of Performance-Based Seismic Design of High-Rise Buildings in China

  • Published : 2023.09.11

Abstract

Seismic performance-based design methods are widely used in the field of engineering. This paper introduces the current status of seismic performance-based design methods for high-rise buildings in China, and summarizes latest advancements in seismic performance-based design methods for high-rise buildings in China, with a focus on the design methods based on predetermined yield mode and the design methods based on member ductility requirements. Finally, the development direction of seismic performance-based design method for high-rise buildings is prospected.

Keywords

Acknowledgement

This research was funded by the Beijing Natural Science Foundation (No. 8212019) and by Special Funding of the China Academy of Building Research (20220118330730013).

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