AI 용어집
인공지능 완전 사전
Topological Optimization
Mathematical and computational method that determines the optimal distribution of material within a given volume to maximize mechanical performance under physical constraints.
SIMP Method (Solid Isotropic Material with Penalization)
Topological optimization approach that uses a continuous density function with penalization to force design variables toward binary values (solid/void).
Sensitivity Filters
Regularization tools applied to optimization gradients to prevent the formation of non-manufacturable structures such as checkerboards and mesh dependencies.
GANs for Design
Generative adversarial networks trained on optimal structures to generate new valid and performant topological configurations in an end-to-end manner.
Additive Manufacturing Constraints
Physical and procedural limitations integrated into the optimization algorithm to ensure that the resulting topology is manufacturable by 3D printing.
Mathematical Homogenization
Theory enabling the calculation of effective properties of periodic composite materials, used to relate local density to mechanical properties in topological optimization.
Level-Set Method
Topological optimization technique representing the material/void interface as the zero level of a higher-dimensional continuous function, enabling smooth topological changes.
Reinforcement Learning for Topology
Approach where an agent learns through trial-and-error to gradually modify an initial structure to achieve performance objectives under physical constraints.
Surrogate Models
Machine learning approximations of expensive physical simulations that accelerate design evaluation during iterative optimization.
Parametric Geometry Transfer
AI technique that encodes and decodes topological structures into continuous latent spaces to enable exploration and modification of complex designs.
Multi-objective Topology Optimization
Extension of topology optimization that simultaneously optimizes multiple conflicting criteria such as stiffness, weight, and natural frequencies.
Admissible Perturbation
Infinitesimal modification of material density satisfying feasibility constraints used in gradient-based optimization methods.
AI-Optimized Lattice Structures
Machine learning-optimized cellular architectures that offer tailored mechanical properties while minimizing overall mass.
Topological Gradient Inversion
Method that analyzes the variation of a cost functional with respect to infinitesimal topological perturbations to identify regions to modify.
Expert Systems for Design
AI programs that encapsulate heuristic rules and human expertise to guide the topology optimization process toward viable solutions.
Robust Topology Optimization
Approach that incorporates material and geometric uncertainties into the optimization process to guarantee performance under variable conditions.