Satellite MCP Server
Performs satellite orbital mechanics calculations using natural language, with a built-in world cities database for location lookup.
Satellite MCP Server
A comprehensive Model Context Protocol (MCP) server for satellite orbital mechanics calculations with natural language processing capabilities.
✨ Key Features
- 🛰️ Satellite Access Window Calculations - Calculate when satellites are visible from ground locations
- 🌍 World Cities Database - Built-in database of 200+ cities worldwide for easy location lookup
- 🗣️ Natural Language Processing - Parse orbital parameters from text like "satellite at 700km in SSO over London"
- 📡 TLE Generation - Generate Two-Line Elements from orbital descriptions
- 🌅 Lighting Analysis - Ground and satellite lighting conditions (civil, nautical, astronomical twilight)
- 📊 Bulk Processing - Process multiple satellites and locations from CSV data
- 🚀 6 Orbit Types - Support for LEO, MEO, GEO, SSO, Molniya, and Polar orbits
🚀 Quick Start
Using Docker (Recommended)
Clone the repository
git clone cd mcp-orbit
Build the Docker image
make docker-build
Run the MCP server
make docker-run
Local Installation
Install dependencies
make install
Run the MCP server
make run
🔌 Connecting to the MCP Server
The server communicates via JSON-RPC 2.0 over stdio. Here are the connection methods:
Claude Desktop Integration
Add to your Claude Desktop MCP configuration file:
macOS: ~/Library/Application Support/Claude/claude_desktop_config.json Windows: %APPDATA%/Claude/claude_desktop_config.json
{ "mcpServers": { "satellite-mcp-server": { "command": "docker", "args": ["run", "--rm", "-i", "satellite-mcp-server:latest"] } } }
Direct Docker Connection
Interactive mode
docker run -it --rm satellite-mcp-server:latest
Pipe commands
echo '{"jsonrpc":"2.0","id":1,"method":"tools/list","params":{}}' |
docker run --rm -i satellite-mcp-server:latest
Local Python Connection
If running locally without Docker
python -m src.mcp_server
💬 Example Usage in LLMs
Example 1: Basic Satellite Pass Prediction
User Prompt:
"When will the ISS be visible from London tomorrow?"
MCP Tool Call:
{ "tool": "calculate_access_windows_by_city", "arguments": { "city_name": "London", "tle_line1": "1 25544U 98067A 24001.50000000 .00001234 00000-0 12345-4 0 9999", "tle_line2": "2 25544 51.6400 123.4567 0001234 12.3456 347.6543 15.49011999123456", "start_time": "2024-01-02T00:00:00Z", "end_time": "2024-01-03T00:00:00Z" } }
**Response:**The ISS will be visible from London 4 times tomorrow, with the best pass at 19:45 UTC reaching 78° elevation in the southwest sky during civil twilight.
Example 2: Natural Language Orbital Design
User Prompt:
"Create a sun-synchronous satellite at 700km altitude and show me when it passes over Tokyo."
MCP Tool Calls:
- Parse orbital elements:
{ "tool": "parse_orbital_elements", "arguments": { "orbital_text": "sun-synchronous satellite at 700km altitude" } }
- Calculate access windows:
{ "tool": "calculate_access_windows_from_orbital_elements_by_city", "arguments": { "orbital_text": "sun-synchronous satellite at 700km altitude", "city_name": "Tokyo", "start_time": "2024-01-01T00:00:00Z", "end_time": "2024-01-02T00:00:00Z" } }
**Response:**Generated SSO satellite (98.16° inclination, 98.6 min period) with 14 passes over Tokyo in 24 hours, including 6 daylight passes and 8 during various twilight conditions.
Example 3: Bulk Satellite Analysis
User Prompt:
"I have a CSV file with ground stations and want to analyze coverage for multiple satellites."
{ "tool": "calculate_bulk_access_windows", "arguments": { "locations_csv": "name,latitude,longitude,altitude\nMIT,42.3601,-71.0589,43\nCaltechm,34.1377,-118.1253,237", "satellites_csv": "name,tle_line1,tle_line2\nISS,1 25544U...,2 25544...\nHubble,1 20580U...,2 20580...", "start_time": "2024-01-01T00:00:00Z", "end_time": "2024-01-02T00:00:00Z" } }
🛠️ Available Tools
calculate_access_windows- Basic satellite visibility calculationscalculate_access_windows_by_city- City-based satellite passescalculate_bulk_access_windows- Multi-satellite/location analysisparse_orbital_elements- Natural language orbital parameter parsingcalculate_access_windows_from_orbital_elements- Access windows from orbital textcalculate_access_windows_from_orbital_elements_by_city- Combined orbital elements + city lookupsearch_cities- Find cities in the world databasevalidate_tle- Validate Two-Line Element dataget_orbit_types- Available orbit type definitions
🗂️ Project Structure
/
├── src/
│ ├── mcp_server.py # MCP server implementation
│ ├── satellite_calc.py # Core orbital mechanics calculations
│ └── world_cities.py # World cities database
├── docs/ # Documentation
├── Dockerfile # Container definition
├── docker-compose.yml # Multi-container setup
└── Makefile # Build automation
📚 Dependencies
- Skyfield - Satellite position calculations
- NumPy - Numerical computations
- MCP - Model Context Protocol implementation
- Python 3.8+ - Runtime environment
🤝 Contributing
This is a specialized MCP server for satellite orbital mechanics. For issues or enhancements, please check the documentation in the docs/ directory.
📄 License
[Add your license information here]
İlgili Sunucular
创思大模型安全 MCP
A content security protection system for large language models, providing real-time risk identification and interception to ensure safe and compliant applications.
Data Wallets MCP
It connects Agents to data wallet with DID and verifiable credentials
Frihet MCP Server
The first AI-native MCP server for a Spanish ERP. Create invoices, manage expenses, track clients, handle products, quotes and webhooks — all through natural language with any AI assistant. 31 tools, bilingual ES/EN.
Public Data Portal Short-term Forecast
Provides current weather information using the Korea Meteorological Administration's short-term forecast API.
Fewsats
Enable AI Agents to purchase anything in a secure way using Fewsats
Bitnovo Pay
MCP server for Bitnovo Pay integration with AI agents. Provides cryptocurrency payment capabilities through Bitnovo Pay API. Features include payment creation, status checking, QR code generation, and webhook management with support for multiple tunnel providers (ngrok, zrok, manual).
MCP Media Processing Server
A server for media processing, offering powerful video and image manipulation using FFmpeg and ImageMagick.
BWA (Burrows-Wheeler Aligner)
An MCP server for the BWA sequence alignment tool.
Ingero
eBPF-based GPU causal observability agent with MCP server. Traces CUDA Runtime/Driver APIs via uprobes and host kernel events via tracepoints to build causal chains explaining GPU latency. 7 MCP tools for AI-assisted GPU debugging and root cause analysis. <2% overhead, production-safe.
AgentRouter
Let your agent delegate tasks to specialised external agents and orchestrate multi agent approaches to tackle complex tasks and enable new capabilitys.