Intro

Project Black Pearl

AI-Driven ECU Engineering — Proven on a 2005 WRX

Project Black Pearl is the structured development of a data-driven, AI-assisted ECU tuning framework — validated in real time on a rebuilt 2005 Subaru WRX.

This is not a typical “stage build.”
This is constraint-based calibration.

Every pull is logged.
Every revision is documented.
Every adjustment is small, deliberate, and reversible.

Target outcome:
A stable, repeatable ~305whp rally-capable WRX — built without sacrificing engine longevity.


Engineering First

Black Pearl operates on a strict iteration protocol:

Log → Analyze → Score → Adjust → Flash → Validate → Repeat

Each WOT pull is graded for:

  • Knock behavior (IAM, FBKC, FLKC)
  • Boost tracking vs target
  • AFR accuracy
  • Injector duty margin
  • Thermal stability

Changes are limited by hard rules:

  • Timing increases ≤ 0.5° per iteration
  • WGDC adjustments ≤ 2% per iteration
  • No boost increases if fueling or heat is unstable
  • No power escalation without repeatable clean pulls

Power is the final variable — not the first.

Reliability is non-negotiable.


The Proving Ground

The platform:

2005 Subaru WRX (GD chassis)
Rebuilt EJ205
VF-series turbo system
Pump gas calibration

Performance bias:

  • Strong midrange torque
  • Smooth, controlled boost ramp
  • Predictable throttle modulation
  • Consistent output under heat

This is a rally-oriented calibration — usable power, not dyno theatrics.

The goal isn’t a spike.
It’s repeatable performance.


Why This Matters

Most builds show parts lists.
Few show process.

By completion, Project Black Pearl will deliver:

  • A validated ~305whp calibration
  • A repeatable AI-assisted tuning framework
  • Structured log scoring templates
  • A safe-iteration methodology
  • Documented before/after validation data

The car proves the system.
The system becomes the product.


Built With Purpose

This project exists for builders who want:

  • Power without gambling their engine
  • Data-backed decision making
  • Measured, defensible tuning methodology
  • Engineering discipline over ego

If it cannot be measured, it does not get changed.

Explore the Framework

The System Behind the Power

Project Black Pearl runs on a structured, AI-assisted ECU calibration architecture designed to remove guesswork and eliminate ego tuning.

This is controlled iteration — not aggressive experimentation.


Layer 1 — Data Acquisition

No decisions are made without structured logs.

Each pull captures:

  • RPM
  • Load
  • Boost (target vs actual)
  • WGDC
  • IAM
  • FBKC / FLKC
  • AFR (wideband)
  • MAF voltage
  • Injector duty cycle
  • IAT & coolant temp
  • Throttle angle

If it cannot be logged, it cannot be trusted.


Layer 2 — AI Log Intelligence

Each WOT pull is scored across four categories:

Stability Score
Knock Risk Score
Boost Control Score
Fueling Accuracy Score

Output classification:

SAFE
CAUTION
STOP

The AI identifies patterns such as:

  • Knock clustering by RPM/load
  • Heat soak sensitivity
  • Boost overshoot or oscillation
  • AFR deviation trends
  • Injector duty risk zones
  • MAF scaling inconsistencies

No emotional tuning. Only pattern detection.


Layer 3 — Controlled Change Generator

Adjustments are constrained by strict limits:

  • Timing delta ≤ +0.5° per iteration
  • WGDC delta ≤ 2% per iteration
  • Fueling changes incremental only

No timing increases if:

  • IAM unstable
  • Active knock present
  • Boost overshooting

No boost increases if:

  • Injector duty exceeds margin
  • AFR trends lean
  • IAT elevated

Power is earned through stability.


Layer 4 — Validation Protocol

Before escalation:

  • Two repeatable clean pulls
  • Stable IAM
  • No sustained knock events
  • Boost tracking within tolerance
  • AFR within target margin

If validation fails → revert.

No exceptions.


The Outcome

This framework produces:

  • Predictable power delivery
  • Heat-consistent performance
  • Reduced engine risk
  • Documented revision history
  • A teachable, repeatable methodology

The car is the proof.
The framework is the asset.