Skip to main content

Collection of tools used for fitting sHG1G2 and SOCCA photometric models to sparse asteroid photometry

Project description

asteroid-spinprops

Overview

asteroid-spinprops is a Python package providing tools to fit SHG1G2 and SOCCA photometric models to sparse asteroid photometry.
It supports multiband modeling, residual analysis and shape, period and pole orientation estimation for small solar system objects.


Installation

Install the package via pip:

pip install asteroid_spinprops

Input column requirements and preprocessing

asteroid_spinprops expects photometric measurements to follow the Fink alert schema.
If your DataFrame uses different column names, they must be renamed to the standard format before analysis.

The package maps common input columns to Fink-style fields:

Expected name Description
cjd Observation time (JD)
cmagpsf PSF magnitude
csigmapsf Magnitude uncertainty
cfid Filter identifier
ra Right ascension (deg)
dec Declination (deg)
Phase Solar phase angle (deg)

Additional columns created during preprocessing

The preprocessing step also adds the following fields:

  • cmred — Reduced magnitude

    Computed from the heliocentric and observer-centric distances:

$$ \mathrm{cmred} = \mathrm{cmagpsf} - 5\log_{10}!\left(\frac{r,\Delta}{\mathrm{AU}^2}\right) $$
where Obj_Sun_LTC_km = (r) and Range_LTC_km = (\Delta).

  • jd_ltc — Light-time–corrected Julian Date

    First converts MJD → JD (+ 2400000.5), then applies the correction

    $$ JD_\mathrm{ltc} = JD - \frac{\Delta}{c}, $$

    using the one-way light-travel time in days.

pdf.rename(
    columns={
        "Your_JD_column": "cjd",
        "Your_magnitudes_column": "cmagpsf",
        "Your_phase_angle_column": "Phase",
        "Your_RA_column": "ra",
        "Your_Dec_column": "dec",
        "Your_magnitude_uncertainty_column": "csigmapsf",
        "Your_filter_column": "cfid",
    },
    inplace=True,
)

# Add missing columns
pdf["cmred"] = pdf["cmagpsf"] - 5 * np.log10(
    pdf["Observer_SSO_distance_column"] * pdf["Sun_SSO_distance_column"] / (au**2)
)

# LT correction
pdf["cjd"] = pdf["cjd"] + 2400000.5  # MJD to JD
pdf["jd_ltc"] = pdf["cjd"] - pdf["Observer_SSO_distance_column"] / c_kmday  # light time correction

Required inputs

Your input DataFrame must therefore include:

  • time of observation (JD)
  • PSF magnitude and uncertainty
  • filter ID
  • RA, Dec (Degrees)
  • phase angle
  • heliocentric distance (AU)
  • observer-centric distance (AU)

The preprocessing step renames these fields to the Fink schema, computes reduced magnitudes, and applies the light-time correction to the observation timestamps.

Quick Start

import numpy as np
import pandas as pd
from asteroid_spinprops.ssolib import dataprep, periodest, modelfit

# Suppose `pdf` is your initial asteroid DataFrame 
# Ensure all columns are converted to the required single row format.
pdf_s = pd.DataFrame({col: [np.array(pdf[col])] for col in pdf.columns})

# Convert filter IDs to numeric
unique_vals, inv = np.unique(pdf_s["cfid"].values[0], return_inverse=True)
numeric_filter = inv + 1
pdf_s["cfid"].values[0] = numeric_filter

# --- Data cleaning and filtering ---
clean_data, errorbar_rejects = dataprep.errorbar_filtering(data=pdf_s, mlimit=0.7928) # mag limit from the LCDB
clean_data, projection_rejects = dataprep.projection_filtering(data=clean_data)
clean_data, iterative_rejects = dataprep.iterative_filtering(data=clean_data)

# --- Fit SOCCA ---
SOCCA_params = modelfit.get_fit_params(
        data=clean_data,
        flavor="SOCCA",
        shg1g2_constrained=True,
        pole_blind=False,
        period_blind=True,
        period_in=None,
        period_quality_flag=True
    )


## --- Or step-by-step --- ##
# --- Fit SHG1G2 model ---
shg1g2_params = modelfit.get_fit_params(
    data=clean_data,
    flavor="SHG1G2",
)

# Compute residuals for period analysis
residuals_dataframe = modelfit.make_residuals_df(
    clean_data, model_parameters=shg1g2_params
)

# --- Estimate rotation period ---
p_in, k_val, p_rms, signal_peak, window_peak = periodest.get_multiband_period_estimate(
    residuals_dataframe,
    k_free=True,
)

# Assess period robustness via bootstrap resampling
_, Nbs = periodest.perform_residual_resampling(
    resid_df=residuals_dataframe,
    p_min=0.03,
    p_max=2,
    k=int(k_val)
)

# --- Fit SOCCA model ---
SOCCA_params = modelfit.get_fit_params(
    data=clean_data,
    flavor="SSHG1G2",
    shg1g2_constrained=True,
    period_blind=False,
    pole_blind=False,
    period_in=p_in,
    period_quality_flag=False
)

Models

Photometric models from Carry et al.(2024) {2024A&A...687A..38C} and https://github.com/astrolabsoftware

Project status

Under development

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

asteroid_spinprops-1.3.5.tar.gz (18.4 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

asteroid_spinprops-1.3.5-py3-none-any.whl (19.9 kB view details)

Uploaded Python 3

File details

Details for the file asteroid_spinprops-1.3.5.tar.gz.

File metadata

  • Download URL: asteroid_spinprops-1.3.5.tar.gz
  • Upload date:
  • Size: 18.4 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/2.2.1 CPython/3.13.5 Linux/6.14.0-36-generic

File hashes

Hashes for asteroid_spinprops-1.3.5.tar.gz
Algorithm Hash digest
SHA256 eb465ab3d04354d649ac5e11a2831493601cdbb18cc98ab1faade4cbe21de8a2
MD5 33bfd393c6b2b8d5c8c0d46e3f00725f
BLAKE2b-256 f758e916ebcfceba6662655b1356921679f1d4655da1b9e19a004fb825d2b31c

See more details on using hashes here.

File details

Details for the file asteroid_spinprops-1.3.5-py3-none-any.whl.

File metadata

  • Download URL: asteroid_spinprops-1.3.5-py3-none-any.whl
  • Upload date:
  • Size: 19.9 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/2.2.1 CPython/3.13.5 Linux/6.14.0-36-generic

File hashes

Hashes for asteroid_spinprops-1.3.5-py3-none-any.whl
Algorithm Hash digest
SHA256 0498ffd46d1c163b41bcf3f71642653fc4fda800dbbfc33b68ccad9648bcb54a
MD5 f54762165fc681e5fb1cf697518c6f79
BLAKE2b-256 594243ac63b8c677c7b3886d95ac4e5ea494da43bb35c0621139becb91cefb68

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page