Experiment Planner DOE
Purpose
The Experiment Planner DOE skill provides systematic experimental design for nanomaterial synthesis and processing optimization, enabling efficient exploration of parameter space and robust process development.
Capabilities
- •Factorial design generation
- •Response surface methodology
- •Taguchi method implementation
- •ANOVA analysis
- •Optimization predictions
- •Robustness testing
Usage Guidelines
DOE Workflow
- •
Design Selection
- •Identify factors and levels
- •Choose appropriate design
- •Calculate required runs
- •
Execution Planning
- •Randomize run order
- •Include replicates
- •Plan blocking if needed
- •
Analysis
- •Perform ANOVA
- •Build response models
- •Optimize parameters
Process Integration
- •Nanoparticle Synthesis Protocol Development
- •Thin Film Deposition Process Optimization
- •Nanolithography Process Development
Input Schema
json
{
"factors": [{
"name": "string",
"low": "number",
"high": "number",
"type": "continuous|categorical"
}],
"responses": ["string"],
"design_type": "factorial|fractional|rsm|taguchi",
"constraints": {
"max_runs": "number",
"blocking": "boolean"
}
}
Output Schema
json
{
"design": {
"type": "string",
"runs": "number",
"run_table": [{
"run": "number",
"factors": {},
"block": "number"
}]
},
"analysis": {
"anova_table": {},
"significant_factors": ["string"],
"r_squared": "number"
},
"optimization": {
"optimal_settings": {},
"predicted_response": "number",
"confidence_interval": {"lower": "number", "upper": "number"}
}
}