Datasets:
license: cc-by-4.0
language:
- en
pretty_name: 'Roll Compactor Control Performance: PID Tuning & Process Stability (Synthetic)'
size_categories:
- n<1K
task_categories:
- tabular-classification
- time-series-forecasting
tags:
- process-control
- pid-controller
- statistical-process-control
- roller-compaction
- pharmaceutical-manufacturing
- time-series
- synthetic-data
- twin-feed-screw
- process-engineering
- spc
- control-charts
- education
configs:
- config_name: summary
data_files:
- split: train
path: control_performance_summary_v1.0.csv
- config_name: timeseries
data_files:
- split: train
path: control_performance_timeseries_v1.0.csv
Roll Compactor Control Performance: PID Tuning & Process Stability (Synthetic)
Version: 1.0 Publisher: Innovative Process Applications (IPA) License: Creative Commons Attribution 4.0 International (CC BY 4.0) Contact: Crestwood, IL, USA
This dataset is 100% synthetic and intended for educational use only. It was generated from PID control theory applied to roll compaction process dynamics — not measured on any real equipment, customer, or production batch.
What's in this dataset
Two linked files containing synthetic roll compaction process control data:
1. Summary file: control_performance_summary_v1.0.csv (96 runs × 22 columns)
Each row is one 3-minute compaction run with computed control metrics.
| Column | Description |
|---|---|
run_id |
Unique run identifier |
control_architecture |
Control strategy identifier |
control_label |
Human-readable control description |
feed_type |
Single screw or twin screw |
has_scf_pid / has_gw_pid |
Whether PID control is active for SCF / gap width |
material |
Model material (MCC_101, Mannitol_SD, MCC_Mannitol_Mix) |
scenario |
Setpoint change scenario (step up, step down, simultaneous, etc.) |
scf_setpoint_kN_per_cm |
Target specific compaction force |
gw_setpoint_mm |
Target gap width |
scf_ss_mean / scf_ss_std / scf_ss_cv_pct |
Steady-state SCF statistics |
scf_deviation_from_setpoint_pct |
Steady-state deviation from target (%) |
scf_settling_time_s |
Time to reach ±2% of setpoint after change |
scf_overshoot_pct |
Peak overshoot above setpoint (%) |
gw_ss_mean_mm / gw_ss_std_mm / gw_ss_cv_pct |
Steady-state gap width statistics |
gw_deviation_from_setpoint_pct |
Gap width deviation from target (%) |
gw_settling_time_s |
Gap width settling time |
control_quality_grade |
Overall grade: Excellent / Good / Acceptable / Poor |
2. Time-series file: control_performance_timeseries_v1.0.csv (8,640 rows × 8 columns)
Actual process data sampled every 2 seconds for each run (90 timepoints × 96 runs).
| Column | Description |
|---|---|
run_id |
Links to summary table |
time_s |
Timestamp in seconds (0–180) |
scf_setpoint_kN_per_cm |
Current SCF setpoint (changes at t=30s) |
scf_actual_kN_per_cm |
Measured SCF value |
gw_setpoint_mm |
Current gap width setpoint |
gw_actual_mm |
Measured gap width |
roll_speed_rpm |
Roll rotation speed |
screw_speed_rpm |
Feed screw speed (adapts if GW PID is active) |
Scientific basis
The dataset models PID control behavior as described in:
Szappanos-Csordás, K. (2018). Impact of material properties, process parameters and roll compactor design on roll compaction. Chapter 3.1: Control performance of the different types of roll compactors. Heinrich-Heine-Universität Düsseldorf.
Key concepts from Section 3.1 modeled here:
Four control architectures of increasing sophistication:
- No gap control (hydraulic pressure setpoint only) — highest variability
- PID with gap width + screw speed control — moderate performance
- PID with SCF + gap width control — good performance
- PID with SCF + gap width + twin feed screw — best performance
PID controller dynamics: Proportional, Integral, and Derivative terms producing characteristic overshoot, oscillation, and settling behavior. Without PID (no gap control), the system shows steady-state offset because there is no integral term to eliminate it.
Settling time: Time required after a setpoint change for the process to stabilize within ±2% of the new setpoint. Varies by control architecture, material properties, and magnitude of the setpoint change.
Coefficient of variation (CV%): Ratio of standard deviation to mean during steady-state production. Lower CV indicates more robust process control. The dissertation reports CV values from ~0.8% (best) to ~3.6% (no control).
Material-dependent control difficulty: Brittle materials (mannitol) produce more erratic force signals due to particle fragmentation, making control harder. Plastic materials (MCC) compact more smoothly.
Twin feed screw advantage: Reduces feed rate fluctuations, lowering both SCF and gap width variability — a key differentiator in IPA's CL-series compactor design.
Setpoint change scenarios: Step increases, step decreases, and simultaneous changes in SCF and gap width — mirroring the experimental protocol in the dissertation's Tables 2–3.
What you can teach with it
- PID controller tuning: Examine overshoot, settling time, and steady-state error across different control architectures
- Statistical Process Control (SPC): Build control charts, calculate Cp/Cpk, identify out-of-control conditions
- Time-series analysis: Apply filtering, spectral analysis, or change-point detection to the process signals
- Control architecture comparison: Quantify the value of closed-loop PID control vs. open-loop hydraulic setpoint
- Material effects on controllability: Compare control performance across plastic, brittle, and mixed deformation materials
- Classification: Train models to predict control quality grade from time-series features
Cross-links (also published on)
- Kaggle: [link after publication]
- Hugging Face Datasets: [link after publication]
- Zenodo (DOI): [link after publication]
- GitHub: [link after publication]
- IPA website: https://www.innovativeprocess.com
About IPA
Innovative Process Applications designs and manufactures twin-feed-screw roller compactors, mills, and size-reduction equipment for the pharmaceutical, nutraceutical, chemical, and food industries. Based in Crestwood, Illinois, IPA is a direct OEM alternative to legacy Fitzpatrick Chilsonator and FitzMill systems, with American manufacturing and direct engineer access. Learn more at innovativeprocess.com.
Citation
Innovative Process Applications (2026). Roll Compactor Control Performance: PID Tuning & Process Stability (Synthetic), v1.0. CC BY 4.0. https://www.innovativeprocess.com
Scientific basis:
Szappanos-Csordás, K. (2018). Impact of material properties, process parameters and roll compactor design on roll compaction. Doctoral dissertation, Heinrich-Heine-Universität Düsseldorf.
Version history
- v1.0 (April 2026) — Initial release. 96 runs, 4 control architectures, 3 materials, 8 scenarios. Summary + time-series files.