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title

Hindered Settling

description

random notes of a skeptical geologist

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Hindered Settling

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2025-12-16 05:58:33

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Hindered Settling Hindered Settling random notes of a skeptical geologist Main menu Skip to content Home About Selected publications Exploring (de)compaction with Python 12 April 2017 7 Comments All clastic sediments are subject to compaction (and reduction of porosity) as the result of increasingly tighter packing of grains under a thickening overburden. Decompaction – the estimation of the decompacted thickness of a rock column – is an important part of subsidence (or geohistory) analysis. The following exercise is loosely based on the excellent basin analysis textbook by Allen & Allen (2013) , especially their Appendix 56. You can download the Jupyter notebook version of this post from Github . Import stuff import numpy as np import matplotlib.pyplot as plt import functools from scipy.optimize import bisect %matplotlib inline %config InlineBackend.figure_format = 'svg' plt.rcParams['mathtext.fontset'] = 'cm' Posing the problem Given a sediment col...

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