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5 Commits

Author SHA1 Message Date
c09549902a Added Robins adjustments for FEL 2024-05-27 14:27:09 +02:00
b7bb8cb379 Merge branch 'refs/heads/mdeval_dev' 2024-05-02 16:18:18 +02:00
7b9f8b6773 Merge branch 'mdeval_dev' 2024-03-05 13:58:15 +01:00
31eb145a13 Merge branch 'mdeval_dev'
# Conflicts:
#	src/mdevaluate/coordinates.py
2024-02-26 14:20:12 +01:00
b5395098ce Fixed iter of Coordinates after last change 2024-02-26 13:57:44 +01:00

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@ -4,7 +4,6 @@ from typing import Optional
import numpy as np
from numpy.typing import ArrayLike, NDArray
from numpy.polynomial.polynomial import Polynomial as Poly
import math
from scipy.spatial import KDTree
import pandas as pd
import multiprocessing as mp
@ -49,7 +48,7 @@ def _pbc_points_reduced(
def _build_tree(points, box, r_max, pore_geometry):
if np.all(np.diag(np.diag(box)) == box):
tree = KDTree(points, boxsize=box)
tree = KDTree(points % box, boxsize=box)
points_pbc_index = None
else:
points_pbc, points_pbc_index = _pbc_points_reduced(
@ -79,8 +78,7 @@ def occupation_matrix(
z_bins = np.arange(0, box[2][2] + edge_length, edge_length)
bins = [x_bins, y_bins, z_bins]
# Trajectory is split for parallel computing
size = math.ceil(len(frame_indices) / nodes)
indices = [frame_indices[i : i + size] for i in range(0, len(frame_indices), size)]
indices = np.array_split(frame_indices, nodes)
pool = mp.Pool(nodes)
results = pool.map(
partial(_calc_histogram, trajectory=trajectory, bins=bins), indices
@ -274,7 +272,11 @@ def distance_resolved_energies(
def find_energy_maxima(
energy_df: pd.DataFrame, r_min: float, r_max: float
energy_df: pd.DataFrame,
r_min: float,
r_max: float,
r_eval: float = None,
degree: int = 2,
) -> pd.DataFrame:
distances = []
energies = []
@ -283,6 +285,9 @@ def find_energy_maxima(
x = np.array(data_d["r"])
y = np.array(data_d["energy"])
mask = (x >= r_min) * (x <= r_max)
p3 = Poly.fit(x[mask], y[mask], deg=2)
energies.append(np.max(p3(np.linspace(r_min, r_max, 1000))))
p3 = Poly.fit(x[mask], y[mask], deg=degree)
if r_eval is None:
energies.append(np.max(p3(np.linspace(r_min, r_max, 1000))))
else:
energies.append(p3(r_eval))
return pd.DataFrame({"d": distances, "energy": energies})