Description:
Key Words:
环境性能 Environmental Performance,数字设计 Digital Design,人工智能 Artificial Intelligence,生成对抗网络 Generative Adversarial Network
Required Skills:
掌握Rhino/Grasshopper;掌握Python等编程语言等优先 intermediate Rhino, beginner Python
Required Software:
Rhinoceros/Grasshopper, Python/Anaconda3/TensorFlow
Required Hardware:
个人电脑 PC
Maximum number of participating students:
20(线下)+50(线上)
环境性能化设计(Environmental performance-based design)的出现旨在为城市与建筑应对气候变化,提供更舒适的生活空间提供方案和策略。传统上,环境性能只被作为概念性的设计指导和评价因素,对于空间形体的调整主要由设计师与咨询师合作,开展“盲盒式”、“经验式”的被动设计方法;而相比之下,由于高速增长的人工智能工具催生出的环境性能驱动的设计(Environmental performance-driven design)则是一种主动的设计思路,强调在设计方案初期阶段选取环境性能为目标,通过模拟分析、结果反馈、迭代寻优的方式,引导设计方案的生成式设计。
本次工作营将围绕环境性能驱动的生成设计的关键理论和技术问题,与学员共同探讨如何将环境性能的评估优化和生成设计相结合,探索人工智能在环境性能优化中应用的更多可能性。工作营将以理论教学和技术指导相结合的方式,帮助学员理解环境性能驱动的生成设计框架涉及的关键问题和解决方案。学员将基于课程内容以小组的形式进行主题研究,工作营成果包括展板,2-3分钟视频和汇报。
The emergence of environmental performance-based design aims to provide solutions and strategies for cities and buildings to cope with climate change and provide more comfortable living space. Traditionally, environmental performance is only regarded as a conceptual design guidance and evaluation factor. For the adjustment of spatial form, designers and consultants cooperate to carry out "blind box" and "experiential" passive design methods; In contrast, environmental performance-driven design is a kind of active design idea, which is produced by the rapid growth of artificial intelligence tools. It emphasizes the selection of environmental performance as the goal in the early stage of design and completes the design through simulation analysis, result feedback, and iterative optimization.
Our workshop will focus on the key theoretical and technical issues of environmental performance-driven generative design. It will be discussed with students that how to combine environmental performance evaluation and optimization with generative design, explore more possibilities of application of AI in environmental performance optimization. The workshop will combine theory course with technical guidance to help students understand the key issues and solutions involved in the environment performance-driven generative design framework. Based on the content of the series of courses, the students will carry out theme research in the form of groups, and the results of the workshop include display boards, 2-3 minutes video, and presentations.