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A Python library for Pulp and Paper manufacturing processes, based on BREF (Best Available Techniques) standards.

Project description

PapAiEra Logo

PapAiEra

PyPI version Python versions

PyPI Project URL: https://pypi.org/project/PapAiEra/

Installation

pip install PapAiEra

PapAiEra is a specialized Python library engineered for the Pulp and Paper industry. It mathematically models and solves optimization problems based on the Best Available Techniques (BAT) reference documents (EU BREF 2015).


Included Processes & Modules

The library covers a massive array of metrics across the entire pulp and paper production cycle.

1. Pulping Modules (pap_ai_era.pulping)

  • Kraft (kraft.py): H-factor calculation, Digester Mass Balance, Kappa numbers, recovery efficiency, black liquor solids, yield, BAT compliance.
  • Sulphite (sulphite.py): Yields for paper/dissolving grades, SO2 and Mg/Ca base recovery.
  • Mechanical (mechanical.py): Energy intensity of SGW, PGW, TMP, and CTMP, heat recovery.
  • Recycled Fibre (recycled.py): Deinking yield, fiber loss, rejects rates.
  • Non-Wood (non_wood.py): Depithing efficiency, silica load checks (crucial for bagasse).
  • Bleaching Engine (bleaching/): Universal, input-driven bleaching sequence optimizer.
  • Recovery Cycle (recovery_cycle.py): Causticizing efficiency, evaporator steam economy, lime kiln energy.

2. Papermaking Modules (pap_ai_era.papermaking)

  • Machine Operations (machine.py): Paper machine fiber mass balance, OEE, broke tracking, wire retention, dryer section economy.
  • Wet End Chemistry (wet_end_chemistry.py): Furnish-based dosing heuristics, physical GPL to LPH pump conversion algorithms, ash retention.
  • Coating/Finishing (coating.py): Colour recovery, ultrafiltration efficiency, specific water usage.
  • Variability Analysis (variability_analysis.py): ABB-compliant VPA engine for MDL, CD, and MDS decomposition.

3. Sustainability (pap_ai_era.sustainability)

  • Emissions (emissions.py, air_emissions.py): BOD/COD/TSS load to water. TRS, SO2, NOx, Dust to air.
  • Wastewater & Water (wastewater.py, water_energy.py): Loop closure, explicit cooling-water vs contaminated-water accounting.
  • Management (EMS): ISO 14001 grading, solid waste footprint (Ash + Sludge + Rejects).
  • Power Plant & Cogen (power_plant.py): Boiler thermal efficiency and TG steam tracking.

4. Mathematical AI Solvers (pap_ai_era.optimization_models)

Allows for non-linear optimization using SciPy constraints to determine optimal dosing/setpoints.

  • optimize_batch_kraft_digester()
  • optimize_continuous_kamyr_digester()
  • optimize_bleaching_sequence_cost()
  • optimize_sulphite_base_recovery()
  • optimize_machine_steam_consumption()
  • optimize_wet_end_dosing()
  • optimize_cogeneration_tg_fuel()

Advanced Usage Examples

🧠 Universal Bleaching Optimizer

PapAiEra now includes a Universal Bleaching Brain. Engineers can define custom stages, chemicals, and costs via a simple JSON/dict configuration.

Key Features:

  • Dynamic Sequence Building: Supports any number of stages (e.g., D0-EOP-D1, O-Z-P, etc.).
  • AI-Driven Simulation: Plug-in system for Heuristic, PNN, or Regression models.
  • Global Optimization: Uses Differential Evolution to minimize total chemical cost while hitting Brightness, Kappa, and Viscosity targets.
from pap_ai_era.bleaching import run_optimization_from_config

config = {
    "stages": [
        {
            "name": "D0",
            "chemicals": [{"name": "ClO2", "min_dosage": 5, "max_dosage": 30, "cost": 0.8}]
        },
        {
            "name": "EOP",
            "chemicals": [
                {"name": "NaOH", "min_dosage": 5, "max_dosage": 25, "cost": 0.4},
                {"name": "H2O2", "min_dosage": 2, "max_dosage": 15, "cost": 0.6}
            ]
        }
    ],
    "targets": {"brightness": 90.0, "kappa": 2.0, "viscosity_min": 800}
}
result = run_optimization_from_config(config)

📊 Variance Partition Analysis (VPA - ABB 2-Sigma)

Decomposes reel variability into Machine Direction (MDL), Cross Direction (CD), and Residual (MDS) components with automated root-cause inference.

import numpy as np
from pap_ai_era.papermaking.variability_analysis import compute_vpa

# 50 scans and 600 data boxes
data = np.random.normal(loc=50, scale=1.5, size=(50, 600))
vpa_report = compute_vpa(data, process_average=50.0)

print(f"Total 2-Sigma Variability: {vpa_report.normalised['TOT']:.2f}%")
print(f"Primary Problem Detected: {vpa_report.primary_problem}")

⚙️ Kraft Digester Vroom H-Factor

Calculates the integrated cooking reaction rate required to hit your Kappa target.

from pap_ai_era.pulping.kraft import calculate_h_factor

# 165 °C cooking zone for 45 minutes
h_factor_generated = calculate_h_factor(temperature_celsius=165.0, time_minutes=45.0)
print(f"H-Factor Generated: {h_factor_generated:.2f}")

💧 Papermaking Moisture Prediction

Simulates the entire water loss journey through the Wire formers, Press Nips, and Dryers.

from pap_ai_era.papermaking.moisture_prediction import predict_wire_drainage_and_couch_moisture

couch = predict_wire_drainage_and_couch_moisture(
    target_gsm=80, machine_speed_mpm=1200, wire_width_m=6.5,
    layer_data=[{'gsm': 40}, {'gsm': 40}],
    vacuum_boxes=[{'vacuum_kpa': 15}, {'vacuum_kpa': 35}, {'vacuum_kpa': 60}]
)
print(f"Moisture exiting Couch Roll: {couch['moisture_after_couch_pct']:.2f}%")

Troubleshooting Guide

1. Optimization returns success: False: Target constraints are mathematically impossible. Adjust boundaries in the bounds variables. 2. Import Errors: Ensure you run pip install PapAiEra in an active environment. 3. Data Shape for VPA: The VPA engine expects a 2D numpy array of (scans, data_boxes).

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