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abaqus-topology-optimization

majiayu000
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デザインaiautomationdesign

について

このスキルは、部品の剛性を維持しながら重量を最小化するトポロジー最適化のための完全なAbaqus/Toscaワークフローを提供します。軽量設計や材料効率化の用途に向けて、有機的な荷重支持構造を生成します。Tosca機能が必要なため、完全版Abaqusライセンス(学習版を除く)が必要であることにご注意ください。

クイックインストール

Claude Code

推奨
プラグインコマンド推奨
/plugin add https://github.com/majiayu000/claude-skill-registry
Git クローン代替
git clone https://github.com/majiayu000/claude-skill-registry.git ~/.claude/skills/abaqus-topology-optimization

このコマンドをClaude Codeにコピー&ペーストしてスキルをインストールします

ドキュメント

Abaqus Topology Optimization Workflow

Complete workflow for topology optimization - determining optimal material distribution to minimize weight while maintaining structural performance.

When to Use This Skill

Triggers: topology optimization, minimize weight, lightweight design, organic structure, generative design, where to remove material, material efficiency, design for additive

USE for: Minimize weight while maintaining stiffness, maximize stiffness for given weight, generate organic load-carrying structures

Do NOT use for: Shape optimization (surface only) -> /abaqus-shape-optimization, Learning Edition users -> Tosca requires full license

Important: License Required

Topology optimization requires a full Abaqus license with Tosca module. NOT available in Learning Edition.

Prerequisites

  1. Working static analysis that converges
  2. Design space defined (bounding volume for material)
  3. Clear objective (usually max stiffness at target weight)
  4. Known load cases and boundary conditions

Workflow Steps

Phase 1: Setup Base Model

  1. /abaqus-geometry - Design space with partitions for frozen regions
  2. /abaqus-material - Elastic properties + density (required for TO)
  3. /abaqus-mesh - Fine mesh (2-5mm typical for TO)
  4. /abaqus-bc - Fixed supports (these regions become frozen)
  5. /abaqus-load - Applied forces (these regions become frozen)
  6. /abaqus-step - Static step for stiffness optimization

Phase 2: Configure Optimization

Use /abaqus-optimization for detailed API patterns.

  1. Create TopologyTask with SIMP interpolation
  2. Define design responses (volume, strain energy)
  3. Set objective function (minimize compliance)
  4. Add constraints (volume <= target fraction)
  5. Define frozen regions (BC and load attachment areas)
  6. Add manufacturing constraints (min member size)

Phase 3: Run and Post-Process

  1. /abaqus-job - Submit OptimizationProcess
  2. /abaqus-odb - View density distribution
  3. /abaqus-export - STL export at density threshold (0.3-0.5 typical)

Key Decisions

GoalObjectiveConstraint
Stiffest at weightMinimize complianceVolume <= X%
Lightest that worksMinimize volumeCompliance <= Y
Avoid resonanceMaximize frequencyVolume <= X%

Most common: Minimize compliance with volume constraint at 30%.

Volume Fraction

FractionUse Case
20-30%Aggressive (aerospace)
30-40%Balanced (general)
40-50%Conservative (safety-critical)

Manufacturing Constraints

ConstraintWhen to Use
Minimum member sizeAlways (3-5mm typical)
Draw directionCasting, molding
Symmetry planeBalanced loads, aesthetics
Overhang angleAdditive manufacturing

What to Ask User

Critical:

  • Design space: "What is the bounding volume where material can exist?"
  • Frozen regions: "Which areas must remain solid? (BC/load attachment)"
  • Volume fraction: "What percentage of material should remain? (20-50%)"
  • Loads and BCs: "What loads and supports act on the structure?"

With Defaults:

  • Objective: Min compliance (change if stress/frequency is primary)
  • Min member size: 3mm (adjust for manufacturing)
  • Material: Steel (if not specified)
  • Max iterations: 50 (increase if not converging)
  • SIMP penalty: 3.0 (higher for sharper boundaries)

Validation

StageCheck
Base modelStatic analysis runs, results sensible
After iteration 5Objective decreasing, no disconnection
ConvergenceObjective stable (< 0.1% change)
Final designLoad path intact, no floating regions

Troubleshooting

IssueSolution
Checkerboard patternAdd min member size constraint
Not convergingRelax volume fraction, check frozen regions
Disconnected regionsAdd more frozen regions along load path
Takes foreverCoarsen mesh, reduce iterations
License errorRequires full Abaqus with Tosca

Code Patterns

For API syntax and code examples, see:

  • /abaqus-optimization - Task, response, objective, constraint API
  • references/common-patterns.md - Complete TO code patterns

Related Skills

  • /abaqus-optimization - Base optimization API details
  • /abaqus-static-analysis - Required before optimization
  • /abaqus-shape-optimization - Alternative for surface-only changes
  • /abaqus-export - Export optimized geometry

GitHub リポジトリ

majiayu000/claude-skill-registry
パス: skills/data/abaqus-topology-optimization

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