STRATICA Documentation
Welcome to STRATICA — Stratigraphic Pattern Recognition & Paleoclimatic Temporal Reconstruction.
A Physics-Informed AI Framework for Deep-Time Earth System Reconstruction, Stratigraphic Layer Intelligence, and Paleoclimatic Cycle Decoding via the Temporal Climate Integrity Index (TCI).
Quick Links
GitHub Repository: https://github.com/gitdeeper8/STRATICA
GitLab Mirror: https://gitlab.com/gitdeeper8/STRATICA
Live Dashboard: https://stratica.netlify.app
PyPI Package: https://pypi.org/project/stratica/
Research Paper DOI: 10.5281/zenodo.18851076
What is STRATICA?
STRATICA presents the first unified, multi-parameter Physics-Informed AI framework for the systematic reconstruction, computational modeling, and temporal interpretation of Earth’s stratigraphic record across 4.5 billion years.
The framework integrates nine analytically independent stratigraphic and geochemical parameters into a single Temporal Climate Integrity Index (TCI) , achieving paleoclimate classification accuracy of 96.2% across 47 sedimentary basins on 6 continents.
Key Features
✓ Temporal Back-Casting — Transformer-LSTM hybrid architectures reconstruct missing geological records ✓ Nine-Parameter TCI — Integrated composite metric balancing all paleoclimate proxy types ✓ Physics-Informed Neural Network — Hard constraints enforce stratigraphic, thermodynamic, and orbital coherence ✓ Extensive Validation — 47 sedimentary basins, 12 IODP drill cores, 8 ice core records (800,000 years) ✓ Real-Time Dashboard — Interactive paleoclimate exploration and analysis platform
Performance at a Glance
Metric |
STRATICA |
Previous |
Improvement |
|---|---|---|---|
TCI Classification Accuracy |
96.2% |
81.4% |
+14.8 pp |
δ¹⁸O Back-cast RMSD |
0.0018 ‰ |
0.0063 ‰ |
71% reduction |
Milankovitch Cycle Detection |
±1,200 yr |
±8,500 yr |
7x improvement |
Magnetostratigraphy Age Accuracy |
±3.4% |
±11.2% |
3.3x improvement |
Microfossil Classification (CNN) |
93.4% |
71.8% |
+21.6 pp |
Drill Core Processing Speed |
4 hrs/200m |
6-12 months |
500-2000x faster |
Contents
Getting Started
API Reference
Case Studies
Reference
The Nine TCI Parameters
Parameter |
Symbol |
Weight |
Description |
|---|---|---|---|
Lithological Deposition Rate |
LDR |
20% |
Rate of sediment accumulation as function of basin subsidence and compaction |
Stable Isotope Fractionation |
ISO |
15% |
δ¹⁸O / δ¹³C ratios encoding palaeotemperature and carbon cycle state |
Micro-Fossil Assemblage |
MFA |
12% |
AI-classified foraminifera, nannofossils, and palynomorphs |
Magnetic Susceptibility |
MAG |
11% |
Ferrimagnetic mineral content recording geomagnetic reversals |
Geochemical Anomaly Index |
GCH |
10% |
Trace element signatures detecting bolide impacts and anoxic events |
Palynological Yield Score |
PYS |
9% |
Pollen and spore assemblage diversity encoding vegetation history |
Varve Sedimentary Integrity |
VSI |
8% |
Annual lamination preservation in lacustrine sediments |
Thermal Diffusion Model |
TDM |
8% |
Subsurface heat flow modeling quantifying burial depth and maturity |
Cyclostratigraphic Energy Cycle |
CEC |
7% |
Spectral power at Milankovitch orbital periods for astronomical calibration |
Citation
If you use STRATICA in your research, please cite:
BibTeX:
@software{baladi2026stratica,
author = {Baladi, Samir},
title = {STRATICA: Stratigraphic Pattern Recognition & Paleoclimatic Temporal Reconstruction},
year = {2026},
publisher = {Zenodo},
doi = {10.5281/zenodo.18851076},
url = {https://github.com/gitdeeper8/STRATICA}
}
APA:
Baladi, S. (2026). STRATICA: Stratigraphic Pattern Recognition & Paleoclimatic Temporal Reconstruction [Software]. Zenodo. https://doi.org/10.5281/zenodo.18851076
License
This project is licensed under the Creative Commons Attribution 4.0 International License (CC-BY-4.0).
See LICENSE for details.
Contact & Support
Principal Investigator: Samir Baladi
Email: gitdeeper@gmail.com
ORCID: 0009-0003-8903-0029
Phone: +16142642074
Affiliation: Ronin Institute for Independent Scholarship Division: Geological Deep-Time & Geospatial Intelligence Division