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AIstructure-Copilot-V0.3.8:剪力墙智能设计模块完善倾斜梁智能设计功能

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引言    

AIstructure-Copilot-V0.3.8版本,剪力墙结构智能设计模块进一步完善了倾斜梁智能设计功能,使得设计结果更加符合工程实际需要。诚邀大家广泛试用,并给我们提出宝贵意见。


1

 剪力墙结构智能设计模块进一步完善倾斜梁设计功能

2025年4月14日,我们发布了AIstructure-Copilot-V0.3.4版本(详见:AIstructure-Copilot-V0.3.4:多种算法融合、提供新算法尝新功能),同时将稳定版和研发中的最新测试版的设计结果都提供给用户,其中最新测试版对包含倾斜构件的复杂结构设计效果不理想。

AIstructure-Copilot-V0.3.8的最新测试版完善了倾斜梁智能设计功能,可以更好的进行倾斜梁构件的设计,如图1所示。

 

图1 AIstructure-Copilot-V0.3.8最新测试版的倾斜梁智能设计效果


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不同算法倾斜梁设计效果的对比

图2(a)为一个复杂的建筑平面布置图,图2(b)和图2(c)分别为最新测试版和其他算法的设计结果,可以看出最新测试版的设计结果更适合该建筑平面布局,也更贴合工程师设计。

 

(a)建筑平面布置图


 

(b)最新测试版的梁智能设计结果


 

(c)算法A的梁智能设计结果

图2不同算法梁智能设计结果的对比


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结语

AIstructure-Copilot发展至今,算法不断进化,带给用户更好的使用体验,可以更好的辅助工程师开展工作,欢迎大家试用。


后续,我们还将不断完善相关产品功能。欢迎大家持续关注我们的工作,多多支持!

   

温馨提示:为更好使用AI设计工具,请仔细阅读使用说明书(https://ai-structure.com)

--End--


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来源:陆新征课题组
ACTSystem二次开发建筑材料人工智能
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