Agent Skills: MPC Configurator Skill

Model Predictive Control configuration skill for MPC model identification, tuning, and implementation

Process ControlID: a5c-ai/babysitter/mpc-configurator

Install this agent skill to your local

pnpm dlx add-skill https://github.com/a5c-ai/babysitter/tree/HEAD/plugins/babysitter/skills/babysit/process/specializations/domains/science/chemical-engineering/skills/mpc-configurator

Skill Files

Browse the full folder contents for mpc-configurator.

Download Skill

Loading file tree…

plugins/babysitter/skills/babysit/process/specializations/domains/science/chemical-engineering/skills/mpc-configurator/SKILL.md

Skill Metadata

Name
mpc-configurator
Description
Model Predictive Control configuration skill for MPC model identification, tuning, and implementation

MPC Configurator Skill

Purpose

The MPC Configurator Skill supports Model Predictive Control implementation including model identification, controller configuration, and performance tuning.

Capabilities

  • Step test design and execution
  • Dynamic model identification
  • MPC model validation
  • CV/MV/DV selection
  • Constraint configuration
  • Objective function tuning
  • Prediction/control horizon selection
  • Move suppression tuning
  • Performance monitoring

Usage Guidelines

When to Use

  • Implementing new MPC applications
  • Retuning existing MPC controllers
  • Identifying process models
  • Optimizing MPC performance

Prerequisites

  • Regulatory control stable
  • Step test data available
  • Process constraints identified
  • Economic objectives defined

Best Practices

  • Ensure quality step test data
  • Validate models thoroughly
  • Start with conservative tuning
  • Monitor controller performance

Process Integration

This skill integrates with:

  • Model Predictive Control Implementation
  • Control Strategy Development
  • PID Controller Tuning

Configuration

mpc-configurator:
  platforms:
    - DMCplus
    - RMPCT
    - Pavilion
    - Honeywell-RMPCT
  identification-methods:
    - step-response
    - subspace
    - prediction-error

Output Artifacts

  • Process models
  • Controller configuration
  • Tuning parameters
  • Validation reports
  • Performance metrics