from randomized design exploration to design space

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From Randomized Design Exploration to Design Space Cartography–Model-based Optimization for Performance-Informed Architectural Design Processes Contemporary architectural design often involves sophisticated structural and environmental simulations that are time-intensive . To optimise architectural designs in a reasonable amount of time, it is necessary to employ state-of-the- art optimisation algorithms . The diagrams above represent the three classes of simulation-based optimisation algorithms: stochastic metaheuristics, deterministic direct search and model-based algorithms . Opossum 2.0 will feature an interactive visualisation of the surrogate model , a so- called Performance Map. This visualisation will (1) provide insights into the nature of optimisation problems, (2) represent the predicted performance of unexplored designs, (3) display designs that are estimated to perform well and (4) identify promising areas for further exploration. Model-based algorithms employ surrogate models (estimates of the implicit mathematical formulations of simulation-based problems) to guide the search for good solutions. Surrogate models accelerate optimisation, since they are much faster to calculate than the underlying simulations. One optimisation steps consist of (1) searching the model for a promising solution to evaluate, (2) simulating the found solution and (3) updating the model based on the simulation results. Performance Map of the optimisation problem described on the Left, with the objective: min f(x) = (1.0 − u(x) + g(x)) / 2 The map indicates a noisy objective function with a general trend that better solutions are open towards the top and closed towards the bottom. There are many solutions around 22% and several isolated optima at 19%. RBFOpt and HypeE have found the closest approximations of the Pareto front . The diagonal fronts indicate a tradeoff between maximising daylight and minimising glare, although large improvements of daylight quality can be achieved by accepting small increases in glare. This improvement is especially noticeable for RBFOpt. HypE suggests a steep tradeoff between daylight and glare, while RBFOpt indicates that the tradeoff is less dramatic . Opossum follows the look and behavior of existing optimisation tools for architects. Opossum’s GUI consists of three tabs: The first tab lets users choose between minimisation and maximisation, select one of three pre-sets of parameters, and start and stop the optimisation. The second tab lets users define stopping conditions based on the number of iterations or the elapsed time and conduct and log multiple optimisation runs. The third tab accepts command line parameter for RBFOpt . We consider an individual room in Singapore. For the façade, we propose a porous screen with a grid of 1.692 circular openings. A grid of forty “attractor points” controls the openings, with weights in the range [0.0, 1.0]. This formulation results in a problem with forty continuous variables. The objectives of the optimisation are to (1) maximise Useful Daylight Illuminance (UDI) while (2) minimising Daylight Glare Probability (DGP). DIRECT and SA perform poorly, while the remaining metaheuristics perform similarly and improve the objective by around 40%. Opossum’s RBFOpt is the best- performing solver with an improvement of 50%. Note RBFOpt’s rapid progress after 40 evaluations: Here it starts profiting from the surrogate model . The box plot on the right indicates the range of objective values found by the solvers in five runs. DIRECT is fully deterministic. Of the remaining algorithms, RBFOpt is the most stable . Glare UDI Objective Objective Iterations Thomas Wortmann SUTD PhD Programme (January 2014 Intake) Architecture and Sustainable Design Supervisor: Prof. Thomas Schroepfer

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Page 1: From Randomized Design Exploration to Design Space

From Randomized Design Exploration to Design Space Cartography–Model-based Optimization for Performance-Informed Architectural Design Processes

Contemporary architectural design often involves sophisticated structural andenvironmental simulations that are time-intensive. To optimise architecturaldesigns in a reasonable amount of time, it is necessary to employ state-of-the-art optimisation algorithms. The diagrams above represent the three classes ofsimulation-based optimisation algorithms: stochastic metaheuristics,deterministic direct search and model-based algorithms.

Opossum 2.0 will feature an interactive visualisation of the surrogate model, a so-called Performance Map. This visualisation will (1) provide insights into the nature ofoptimisation problems, (2) represent the predicted performance of unexploreddesigns, (3) display designs that are estimated to perform well and (4) identifypromising areas for further exploration.

Model-based algorithms employ surrogate models (estimates of the implicitmathematical formulations of simulation-based problems) to guide the search forgood solutions. Surrogate models accelerate optimisation, since they are much fasterto calculate than the underlying simulations. One optimisation steps consist of (1)searching the model for a promising solution to evaluate, (2) simulating the foundsolution and (3) updating the model based on the simulation results.

Performance Map of the optimisation problem described on the Left, with theobjective: min f(x) = (1.0 − u(x) + g(x)) / 2The map indicates a noisy objective function with a general trend that better solutionsare open towards the top and closed towards the bottom. There are many solutionsaround 22% and several isolated optima at 19%.

RBFOpt and HypeE have found the closest approximations of the Pareto front. Thediagonal fronts indicate a tradeoff between maximising daylight and minimising glare,although large improvements of daylight quality can be achieved by accepting smallincreases in glare. This improvement is especially noticeable for RBFOpt. HypEsuggests a steep tradeoff between daylight and glare, while RBFOpt indicates thatthe tradeoff is less dramatic.

Opossum follows the look and behavior of existing optimisation tools for architects.Opossum’s GUI consists of three tabs: The first tab lets users choose betweenminimisation and maximisation, select one of three pre-sets of parameters, and startand stop the optimisation. The second tab lets users define stopping conditionsbased on the number of iterations or the elapsed time and conduct and log multipleoptimisation runs. The third tab accepts command line parameter for RBFOpt.

We consider an individual room in Singapore. For the façade, we propose a porousscreen with a grid of 1.692 circular openings. A grid of forty “attractor points” controlsthe openings, with weights in the range [0.0, 1.0]. This formulation results in a problemwith forty continuous variables. The objectives of the optimisation are to (1) maximiseUseful Daylight Illuminance (UDI) while (2) minimising Daylight Glare Probability(DGP).

DIRECT and SA perform poorly, while the remaining metaheuristics perform similarlyand improve the objective by around 40%. Opossum’s RBFOpt is the best-performing solver with an improvement of 50%. Note RBFOpt’s rapid progress after40 evaluations: Here it starts profiting from the surrogate model. The box plot on theright indicates the range of objective values found by the solvers in five runs. DIRECTis fully deterministic. Of the remaining algorithms, RBFOpt is the most stable.

Glare

UDI

Objective Objective

Iterations

Thomas Wortmann SUTD PhD Programme (January 2014 Intake)

Architecture and Sustainable DesignSupervisor: Prof. Thomas Schroepfer