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用于天敌-寄主行为的生物强化学习模拟:探索种群动态的深度学习算法

Biological reinforcement learning simulation for natural enemy -host behavior: Exploring deep learning algorithms for population dynamics.

作者信息

Agboka Komi Mensah, Peter Emmanuel, Bwambale Erion, Sokame Bonoukpoè Mawuko

机构信息

International Centre of Insect Physiology and Ecology (ICIPE), P.O. Box 30772 00100, Nairobi, Kenya.

Department of Agronomy, Faculty of Agriculture, Federal University Gashua, P.M.B 1005, Yobe, Nigeria.

出版信息

MethodsX. 2024 Jul 3;13:102845. doi: 10.1016/j.mex.2024.102845. eCollection 2024 Dec.

DOI:10.1016/j.mex.2024.102845
PMID:39092273
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11292350/
Abstract

This study introduces a simulation of biological reinforcement learning to explore the behavior of natural enemies in the presence of host pests, aiming to analyze the population dynamics between natural enemies and insect pests within an ecological context. The simulation leverages on Q-learning, a reinforcement learning algorithm, to model the decision-making processes of both parasitoids/predators and pests, thereby assessing the impact of varying parasitism and predation rates on pest population growth. Simulation parameters, such as episode count, duration in months, steps, learning rate, and discount factor, were set arbitrarily. Environmental and reward matrices, representing climatic conditions, crop availability, and the rewards for different actions, were established for each month. Initial Q-tables for parasitoids/predators and pests, along with population arrays, were used to track population dynamics.•The simulation, illustrated through the Aphid-Ladybird beetle interaction case study over multiple episodes, includes a sensitivity analysis to evaluate the effects of different predation rates.•Findings reveal detailed population dynamics, phase relationships between predator and pest populations, and the significant influence of predation rates.•These insights contribute to a deeper understanding of ecological systems and inform potential pest management strategies.

摘要

本研究引入了一种生物强化学习模拟,以探索天敌在寄主害虫存在情况下的行为,旨在分析生态背景下天敌与害虫之间的种群动态。该模拟利用强化学习算法Q学习,对寄生蜂/捕食者和害虫的决策过程进行建模,从而评估不同寄生率和捕食率对害虫种群增长的影响。模拟参数,如回合数、月持续时间、步数、学习率和折扣因子,均为任意设定。为每个月建立了环境和奖励矩阵,分别代表气候条件、作物可利用性以及不同行动的奖励。寄生蜂/捕食者和害虫的初始Q表以及种群数组用于跟踪种群动态。•通过多回合的蚜虫-瓢虫相互作用案例研究进行说明的模拟,包括敏感性分析,以评估不同捕食率的影响。•研究结果揭示了详细的种群动态、捕食者与害虫种群之间的相位关系以及捕食率的重大影响。•这些见解有助于更深入地理解生态系统,并为潜在的害虫管理策略提供信息。

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本文引用的文献

1
A Fuzzy-Based Model to Predict the Spatio-Temporal Performance of the Natural Enemy against under Climate Change.一种基于模糊逻辑的模型,用于预测气候变化下天敌的时空表现。
Biology (Basel). 2022 Aug 28;11(9):1280. doi: 10.3390/biology11091280.
2
A New Few-Shot Learning Method of Bacterial Colony Counting Based on the Edge Computing Device.一种基于边缘计算设备的细菌菌落计数少样本学习新方法。
Biology (Basel). 2022 Jan 19;11(2):156. doi: 10.3390/biology11020156.
3
Optimal spatial prioritization of control resources for elimination of invasive species under demographic uncertainty.
在人口不确定的情况下,消除入侵物种的控制资源的最优空间优先级。
Ecol Appl. 2020 Sep;30(6):e02126. doi: 10.1002/eap.2126. Epub 2020 Apr 15.
4
Enriching behavioral ecology with reinforcement learning methods.用强化学习方法丰富行为生态学。
Behav Processes. 2019 Apr;161:94-100. doi: 10.1016/j.beproc.2018.01.008. Epub 2018 Feb 13.
5
Deep learning.深度学习。
Nature. 2015 May 28;521(7553):436-44. doi: 10.1038/nature14539.