The Importance of Noise Colour in Simulations of Evolutionary Systems

Author:

Grove Matt1,Timbrell Lucy2,Jolley Ben3,Polack Fiona4,Borg James M.56

Affiliation:

1. University of Liverpool, Department of Archaeology, Classics and Egyptology. matt.grove@liverpool.ac.uk

2. University of Liverpool, Department of Archaeology, Classics and Egyptology. lucy.timbrell@liverpool.ac.uk

3. Keele University, UK School of Computing and Mathematics. b.p.jolley1@keele.ac.uk

4. Keele University, UK School of Computing and Mathematics. f.a.c.polack@keele.ac.uk

5. Keele University, UK School of Computing and Mathematics

6. Aston University, UK School of Informatics and Digital Engineering. j.borg@aston.ac.uk

Abstract

Abstract Simulations of evolutionary dynamics often employ white noise as a model of stochastic environmental variation. Whilst white noise has the advantages of being simply generated and analytically tractable, empirical analyses demonstrate that most real environmental time series have power spectral densities consistent with pink or red noise, in which lower frequencies contribute proportionally greater amplitudes than higher frequencies. Simulated white noise environments may therefore fail to capture key components of real environmental time series, leading to erroneous results. To explore the effects of different noise colours on evolving populations, a simple evolutionary model of the interaction between life-history and the specialism-generalism axis was developed. Simulations were conducted using a range of noise colours as the environments to which agents adapted. Results demonstrate complex interactions between noise colour, reproductive rate, and the degree of evolved generalism; importantly, contradictory conclusions arise from simulations using white as opposed to red noise, suggesting that noise colour plays a fundamental role in generating adaptive responses. These results are discussed in the context of previous research on evolutionary responses to fluctuating environments, and it is suggested that Artificial Life as a field should embrace a wider spectrum of coloured noise models to ensure that results are truly representative of environmental and evolutionary dynamics.

Publisher

MIT Press - Journals

Subject

Artificial Intelligence,General Biochemistry, Genetics and Molecular Biology

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