Python library for site response analysis.
Site response analyses implemented in Python. This Python packages aims to implement many of the features found in Strata. These features include:
- Input motion characterization:
- Time series
- Random vibration theory
- Wave propagation or site amplification:
- linear
- equivalent-linear
- equivalent-linear with frequency dependent properties
- quarter wavelength
- Nonlinear curve models:
- Predictive models:
- Darendeli (2001)
- Menq (2004)
- Kishida (2012)
- Curves:
- Vucetic & Dobry (1991)
- EPRI (1993)
- GEI (1983)
- GeoMatrix (1990)
- Idriss (1990)
- Imperial Valley Soils
- Iwasaki
- Peninsular Range
- Seed & Idriss
- Predictive models:
- Site and soil property uncertainty:
- Toro (1994) Vs correlation model
- G/Gmax and D uncertainty:
- Darendeli (2001)
- EPRI SPID (2013)
Development of this software is on-going and any contributions are
encouraged. Previously named pysra
, but renamed after some sage and
persistent advice to be better associated with
Strata.
pystrata
is available via pip
and can be installed with:
pip install pystrata
If you are using conda
and a create a pystrata
specific
environmental make sure you install ipykernels
and nb_conda_kernels
so that the environment is discoverable by Jupyter
with:
conda install ipykernel nb_conda_kernels
Please cite this software using the following DOI:
Albert Kottke & Maxim Millen. (2023). arkottke/pystrata: v0.5.2 (v0.5.2). Zenodo. https://doi.org/10.5281/zenodo.7551992
or with BibTeX:
@software{albert_kottke_2023_7551992,
author = {Albert Kottke and
Maxim Millen},
title = {arkottke/pystrata: v0.5.2},
month = jan,
year = 2023,
publisher = {Zenodo},
version = {v0.5.2},
doi = {10.5281/zenodo.7551992},
url = {https://doi.org/10.5281/zenodo.7551992}
}
There are a variety of examples of using pystrata
within the examples
directory. An
interactive Jupyter interface of these examples is available on
.