
mcp-stargazing
Calculate the altitude, rise, and set times of celestial objects (Sun, Moon, planets, stars, and deep-space objects) for any location on Earth.
README
mcp-stargazing
Calculate the altitude, rise, and set times of celestial objects (Sun, Moon, planets, stars, and deep-space objects) for any location on Earth, with optional light pollution analysis.
Features
- Altitude/Azimuth Calculation: Get elevation and compass direction for any celestial object.
- Rise/Set Times: Determine when objects appear/disappear above the horizon.
- Light Pollution Analysis: Load and analyze light pollution maps (GeoTIFF format).
- Supports:
- Solar system objects (Sun, Moon, planets)
- Stars (e.g., "sirius")
- Deep-space objects (e.g., "andromeda", "orion_nebula")
- Time Zone Aware: Works with local or UTC times.
Installation
pip install astropy pytz numpy astroquery rasterio geopy
Usage
Calculate Altitude/Azimuth
from src.celestial import celestial_pos
from astropy.coordinates import EarthLocation
import pytz
from datetime import datetime
# Observer location (New York)
location = EarthLocation(lat=40.7128, lon=-74.0060)
# Time (local timezone-aware)
local_time = pytz.timezone("America/New_York").localize(datetime(2023, 10, 1, 12, 0))
altitude, azimuth = celestial_pos("sun", location, local_time)
print(f"Sun Position: Altitude={altitude:.1f}°, Azimuth={azimuth:.1f}°")
Calculate Rise/Set Times
from src.celestial import celestial_rise_set
rise, set_ = celestial_rise_set("andromeda", location, local_time.date())
print(f"Andromeda: Rise={rise.iso}, Set={set_.iso}")
Load Light Pollution Map
from src.light_pollution import load_map
# Load a GeoTIFF light pollution map
vriis_data, bounds, crs, transform = load_map("path/to/map.tif")
print(f"Map Bounds: {bounds}")
API Reference
celestial_pos(celestial_object, observer_location, time)
(src/celestial.py
)
- Inputs:
celestial_object
: Name (e.g.,"sun"
,"andromeda"
).observer_location
:EarthLocation
object.time
:datetime
(timezone-aware) or AstropyTime
.
- Returns:
(altitude_degrees, azimuth_degrees)
.
celestial_rise_set(celestial_object, observer_location, date, horizon=0.0)
(src/celestial.py
)
- Inputs:
date
: Timezone-awaredatetime
.horizon
: Horizon elevation (default: 0°).
- Returns:
(rise_time, set_time)
as UTCTime
objects.
load_map(map_path)
(src/light_pollution.py
)
- Inputs:
map_path
: Path to GeoTIFF file.
- Returns: Tuple
(vriis_data, bounds, crs, transform)
for light pollution analysis.
Testing
Run tests with:
pytest tests/
Key Test Cases (tests/test_celestial.py
)
def test_calculate_altitude_deepspace():
"""Test deep-space object resolution."""
altitude, _ = celestial_pos("andromeda", NYC, Time.now())
assert -90 <= altitude <= 90
def test_calculate_rise_set_sun():
"""Validate Sun rise/set times."""
rise, set_ = celestial_rise_set("sun", NYC, datetime(2023, 10, 1))
assert rise < set_
Project Structure
.
├── src/
│ ├── celestial.py # Core celestial calculations
│ ├── light_pollution.py # Light pollution map utilities
│ ├── utils.py # Time/location helpers
│ └── main.py # CLI entry point
├── tests/
│ ├── test_celestial.py
│ └── test_utils.py
└── README.md
Future Work
- Add support for comets/asteroids.
- Optimize SIMBAD queries for offline use.
- Integrate light pollution data into visibility predictions.
Key Updates:
- Light Pollution: Added
light_pollution.py
to features and API reference. - Dependencies: Added
rasterio
andgeopy
to installation instructions. - Project Structure: Clarified file roles and test coverage.
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