A platform for research: civil engineering, architecture and urbanism
Generative Design by Using Exploration Approaches of Reinforcement Learning in Density-Based Structural Topology Optimization
A central challenge in generative design is the exploration of vast number of solutions. In this work, we extend two major density-based structural topology optimization (STO) methods based on four classes of exploration algorithms of reinforcement learning (RL) to STO problems, which approaches generative design in a new way. The four methods are: first, using -greedy policy to disturb the search direction; second, using upper confidence bound (UCB) to add a bonus on sensitivity; last, using Thompson sampling (TS) as well as information-directed sampling (IDS) to direct the search, where the posterior function of reward is fitted by Beta distribution or Gaussian distribution. Those combined methods are evaluated on some structure compliance minimization tasks from 2D to 3D, including the variable thickness design problem of an atmospheric diving suit (ADS). We show that all methods can generate various acceptable design options by varying one or two parameters simply, except that IDS fails to reach the convergence for complex structures due to the limitation of computation ability. We also show that both Beta distribution and Gaussian distribution work well to describe the posterior probability.
Generative Design by Using Exploration Approaches of Reinforcement Learning in Density-Based Structural Topology Optimization
A central challenge in generative design is the exploration of vast number of solutions. In this work, we extend two major density-based structural topology optimization (STO) methods based on four classes of exploration algorithms of reinforcement learning (RL) to STO problems, which approaches generative design in a new way. The four methods are: first, using -greedy policy to disturb the search direction; second, using upper confidence bound (UCB) to add a bonus on sensitivity; last, using Thompson sampling (TS) as well as information-directed sampling (IDS) to direct the search, where the posterior function of reward is fitted by Beta distribution or Gaussian distribution. Those combined methods are evaluated on some structure compliance minimization tasks from 2D to 3D, including the variable thickness design problem of an atmospheric diving suit (ADS). We show that all methods can generate various acceptable design options by varying one or two parameters simply, except that IDS fails to reach the convergence for complex structures due to the limitation of computation ability. We also show that both Beta distribution and Gaussian distribution work well to describe the posterior probability.
Generative Design by Using Exploration Approaches of Reinforcement Learning in Density-Based Structural Topology Optimization
Hongbo Sun (author) / Ling Ma (author)
2020
Article (Journal)
Electronic Resource
Unknown
Metadata by DOAJ is licensed under CC BY-SA 1.0
Topology optimization for heat conduction using generative design algorithms
British Library Online Contents | 2017
|Topology optimization approaches
British Library Online Contents | 2013
|Structural design using topology and shape optimization
British Library Online Contents | 2011
|Two-Dimensional Truss Topology Design by Reinforcement Learning
TIBKAT | 2020
|Tunnel Reinforcement via Topology Optimization
British Library Online Contents | 2000
|