Project Discover: an Application of Generative Design for Architectural

Project Discover: an Application of Generative Design for Architectural

Project Discover: An Application of Generative Design for Architectural Space Planning Danil Nagy, Damon Lau, John Locke, Jim Stoddart, Lorenzo Villaggi, Ray Wang, Dale Zhao and David Benjamin The Living, an Autodesk Studio New York, NY USA [email protected] 1.1 Parametric design ABSTRACT In the past decade, a new type of design software has This paper describes a flexible workflow for generative de- emerged which is fundamentally changing the way designers sign applied to architectural space planning. We describe this use computers to develop and refine their designs. Known as workflow through an application for the design of a new of- parametric design software, these tools allow the designer to fice space. First, we describe a computational design model not only define a final geometric solution, but to describe the that can create a variety of office layouts including locating entire system behind how a design is generated. Within this all necessary programs and people using a small set of input larger system description, the designer can expose specific parameters. We then describe six unique objectives that eval- parameters, or values that drive different variations of the de- uate each layout based on architectural performance as well sign. as worker-specific preferences. Finally, we show the use of a multi-objective genetic algorithm (MOGA) to search Although such a model takes more work initially to describe, through the high-dimensional space of all possible designs, it offers the designer many advantages. First, the parametric and describe several visualization tools that can help a de- approach makes it easy to create variations and custom ad- signer to navigate through this design space and choose good aptations of a design. Instead of manually creating multiple designs. We conclude by discussing the future of such com- versions for different applications, the designer can expose putational workflows in design and architecture. Our hope is the critical parameters that drive different variations and au- that they go beyond basic automation to create an expanded tomatically generate different versions by changing those pa- role for the human designer and a more dynamic and collab- rameters. Second, a well-structured parametric model is orative interaction between computer design software and more adaptable to change in the future. Since it is defined by human designers in the future. a series of operations, the design can be easily adapted to changing conditions instead of rebuilding the model from Author Keywords Parametric modeling, simulation, genetic algorithms, multi- scratch each time. objective optimization, evolutionary design, generative de- Most importantly, the parametric approach allows the de- sign, architecture signer to think through design solutions in a deeper and more ACM Classification Keywords dynamic way than possible with traditional methods. In a tra- I.6.5 SIMULATION AND MODELING - Model Develop- ditional approach, the designer studies the design problem, ment internalizes all of its constraints and objectives, and then uses their skill and experience to craft a single design solution, or 1 INTRODUCTION a handful at most. With the parametric approach, the con- Computers and computer-aided design (CAD) software have straints and goals of the design problem can be directly em- had a dramatic impact on architectural practice since the bedded within the parametric model, which can then be used emergence of computers in academia in the 1950s, and espe- to automatically generate a variety of solutions. Instead of cially since the introduction of personal computing in the designing a single solution, the designer can now think of 1980s. Although early researchers envisioned a wide-rang- designing a multi-dimensional ‘space’ of design. Each di- ing future interaction between computers and human design- mension of this design space represents one of the critical ers [10], the first computer tools to be widely adopted by ar- parameters exposed by the parametric model, and each indi- chitectural designers were computerized versions of tradi- vidual design variation can be found somewhere within this tional drafting and rendering tools. While they allowed de- hyper-dimensional space. signers to produce content much faster than with traditional methods, they did not fundamentally change the process of 1.2 Beyond parametric design. While the parametric approach has broadened the possibili- ties of design and pushed the boundaries of human-computer interaction in the design process, the exploration of the de- applied similar optimization methods to a variety of architec- sign space is still limited by the abilities of the human de- tural problems. However, their optimization criteria are sim- signer. Although some parameters may be set by the con- ilarly constrained to well-known and easily simulated physi- straints found explicitly in the design problem, for the most cal objectives such as structural and environmental perfor- part the human designer must investigate different design op- mance. In contrast, we propose a more flexible workflow that tions by manually varying individual parameters and evalu- can accommodate a diversity of optimization criteria, includ- ating each option using their own criteria and intuition in a ing those dealing directly with how space is used and expe- way not much different than with traditional design methods. rienced at the occupant level The concept of generative design, as described in this paper, The quantification of spatial experience has also been ex- addresses this limitation by tasking a computer with explor- plored by a variety of authors. Hillier, et al. [4] proposed a ing the design space semi-autonomously, and then reporting variety of analytical tools for studying spatial configurations back to the designer which options it considers promising for which they called ‘space syntax’. Peponis, et al. [11] extend further analysis. Because a computer can process infor- this work by proposing a universal method for understanding mation much quicker than a human, such a system allows a plan topology through linear representation. Turner, et al. much deeper exploration of complex design spaces. Tradi- [12] propose a view-based ray tracing technique for under- tionally, such an approach has been used to optimize a given standing and analyzing spatial configurations. While the pro- model to achieve maximum possible performance based on posed methods can help the designer derive quantitative data concrete objectives [8]. With a model of sufficient complex- about their designs, they are only offered as tools to aid a ity, however, a generative design system can also be used to traditional design process. In contrast, we extend these meth- reveal interesting parts of the design space and discover ods and show how they can be used as measures of spatial novel design solutions that would otherwise be hidden to the performance to guide an automated optimization process. human designer. 3 METHODOLOGY To take advantage of the possibilities of generative design, Our proposed workflow of generative design for architecture the basic parametric model must be extended in two ways. is organized into four steps: (1) the design of a geometric First, the model must include concrete metrics by which each model which can create many design variations, (2) the de- design option can be evaluated. Since the computer does not sign of a series of performance metrics which can be used to have any inherent intuition about design, the human designer measure the performance of a single design, (3) the explora- must explicitly describe to the computer how to determine tion of the model’s design space through a MOGA, and (4) which designs perform better than others. Second, the model the investigation of the resulting design data through statisti- needs to be connected to a search algorithm that can control cal analysis. Furthermore, we propose this method as only the input parameters of the model, get feedback from the one component within a broader design process. Thus, there metrics, and intelligently tune the parameters to find high are several steps that must be taken both ‘before generative performing designs while also exploring the full possibilities design’ in order to establish a design concept to drive the ge- of the design space. One of the most promising of these al- ometric model and collect necessary data for the perfor- gorithms is the multi-objective genetic algorithm (MOGA), mance metrics. Similarly, there are a variety of steps that which uses principles of evolution to create sequential gen- must be taken ‘after generative design’ in order to achieve erations of designs and evolve them to contain higher per- other criteria and develop the selected design solution to the forming designs over time [9]. level of a final constructible design. The remainder of this paper describes our development of a 3.1 Before generative design custom workflow for generative design specifically geared As with any architectural design project, the process begins towards architectural space planning, and our application of by studying the design problem, understanding its goals and this workflow to the design of a new office space. constraints, and formulating a vision and concept for the de- sign. The vision of the project was to create a dynamic and 2 RELATED WORK highly functional new office space for Autodesk in Toronto. The application of multi-objective optimization towards Some of the constraints included: solving complex mechanical design problems is well-known in the field of engineering. Marler and Arora [8] provide a 1. The outline of the three floors of an existing new build- good overview of various applications. However, being con- ing where the office would be located strained to the goals of engineering problems, these applica- 2. The programmatic requirements, including specific tions are limited to using only structural performance as op- numbers of shared amenities such as meeting rooms timization criteria. 3. Occupation by up to 300 workers Liggett [7] provides a thorough historical overview of auto- mated methods for space planning in architecture, including 4.

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