Skip to main content

A framework for conducting agent-based simulations of SETI

Project description

[![DOI](https://zenodo.org/badge/157450057.svg)](https://zenodo.org/badge/latestdoi/157450057)

This Python package allows the user to setup and run an agent-based simulation of a SETI survey. The package allows the creation of a population of observing and transmitting civilisations. Each transmitter and observer conducts their activities according to an input strategy. The success of observers and transmitters can then be recorded, and multiple simulations can be run for Monte Carlo Realisation.

This package is therefore a flexible framework in which to simulate and test different SETI strategies, both as an Observer and as a Transmitter. It is primarily designed with radio SETI in mind, but is sufficiently flexible to simulate all forms of electromagnetic SETI.

![](doc/xymovie.gif)

Features

  • Object-oriented, agent-driven simulation of Observers and Transmitters

  • Generates agents spatially distributed in random cubes, random spheres and the Galactic Habitable Zone

  • Simulates continuous and pulsing broadcasts at a defined beam-size

  • Permits transmission/observation strategies as a smooth scan across the sky, or as a series of discrete pointings

  • Accounts for Doppler drift due to transmitters/observers orbiting a host star

  • Accounts for signal travel time

  • Generates maps of the sky as seen from Observers’ point of view

  • Current presets optimised for electromagnetic signals - can be configured for signals of arbitrary speed and decay behaviour (gravitational waves, neutrinos)

Future Features/Wishlist

  • Interstellar scintillation/absorption/dispersion, other forms of noise

  • Sampling of planetary orbits from exoplanet data

Installation Instructions

This package is hosted on PyPI. To install with pip:

> pip install taktent

Code dependencies

The code has been developed in Python 3.6, using numpy 1.14.3 and matplotlib 2.2.2, and hence requires these for basic operation.

If the user wishes to generate all-sky maps for their Observer objects, this will also require mpl_toolkits.basemap to be installed. This is an optional requirement, and the package will function without it.

Examples of Use

Examples of how to use taktent to set up and conduct SETI simulations can be found in the examples/ folder.

How to Contribute

See [CONTRIBUTING.md](CONTRIBUTING.md) for details

Package Structure

The package contains several modules defining six fundamental classes:

### agents/

Vector3D - a 3D cartesian vector class

Agent - a generic agent base class

Transmitter(Agent) - a transmitting civilisation

Observer(Agent) - an observing civilisation

### strategies/

Strategy - a base class that defines generic targeting behaviour of an agent as a function of time

PointingStrategy(Strategy) - A discrete pointing strategy (defined by a list of target vectors) scanningStrategy(Strategy) - A continuous pointing strategy (defined by a target vector function)

### population/

Population - a class that defines the combined population of Transmitters and Observers, and drives the simulation

Creating a Simulation

The basic procedure for creating simulations is as follows:

  1. Create a Population object

  2. Create Strategy objects for Transmitter and Observer

  3. Generate Transmitter objects (either manually or using methods in Population)

  4. Generate an Observer (or multiple Observer objects)

  5. Run the simulation (with data recorded in the Population Object)

Monte Carlo Realisation simulations can then be run by repeating steps 1-5 as many times as necessary.

The Name

The name “taktent” is derived from the Scots phrase “tak tent o’ the sma things”, which translates as “pay attention to the little things”

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

taktent-1.11.tar.gz (17.7 kB view hashes)

Uploaded Source

Supported by

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