Abstract

Understanding or estimating the co-evolution processes is critical in ecology, but very challenging. Traditional methods are difficult to deal with the complex processes of evolution and to predict their consequences on nature. In this paper, we use the deep-reinforcement learning algorithms to endow the organism with learning ability, and simulate their evolution process by using the Monte Carlo simulation algorithm in a large-scale ecosystem. The combination of the two algorithms allows organisms to use experiences to determine their behavior through interaction with that environment, and to pass on experience to their offspring. Our research showed that the predators’ reinforcement learning ability contributed to the stability of the ecosystem and helped predators obtain a more reasonable behavior pattern of coexistence with its prey. The reinforcement learning effect of prey on its own population was not as good as that of predators and increased the risk of extinction of predators. The inconsistent learning periods and speed of prey and predators aggravated that risk. The co-evolution of the two species had resulted in fewer numbers of their populations due to their potentially antagonistic evolutionary networks. If the learnable predators and prey invade an ecosystem at the same time, prey had an advantage. Thus, the proposed model illustrates the influence of learning mechanism on a predator–prey ecosystem and demonstrates the feasibility of predicting the behavior evolution in a predator–prey ecosystem using AI approaches.

Highlights

  • In recent years, the environment of our planet has become worse and worse, and the ecosystem is facing a crisis of destruction as a result of climate change

  • We propose a framework based on deep-reinforcement learning algorithms to endow organisms learning ability and high intelligence, and use Monte Carlo simulation algorithm to simulate the intergenerational evolution in large-scale ecosystems

  • We considered an individual-based predator–prey dynamic ecosystem that performed on a square lattice of linear size L with periodic spatial boundary conditions [3,4,8,9,13]

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Summary

Introduction

The environment of our planet has become worse and worse, and the ecosystem is facing a crisis of destruction as a result of climate change. The adaptation and evolution of organisms to the environment is unpredictable due to the sophisticated changes and the lengthy processes, but we can make meaningful estimates of those processes by some means [1,2]. Monte Carlo simulation algorithm is one of the most important method to study the temporal and spatial characteristics of large-scale ecosystem [3,4,5,6,7,8,9,10,11,12,13]. Compared with the traditional population dynamics algorithm, the Monte Carlo simulation in two-dimensional space can reveal more details and spatio-temporal characteristics.

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