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Describing and Simulating Phytoplankton of a Small and Shallow Reservoir Using Decision Trees and Rule-Based Models.

ENVIRONMENTAL MONITORING AND ASSESSMENT(2023)

University of Rijeka

Cited 0|Views25
Abstract
Phytoplankton represents one of the most important biological components of primary production, trophic interactions, and circulation of organic matter in lakes and reservoirs. To contribute to the understanding of eutrophication processes and ecological status of the small, shallow Butoniga reservoir, a machine learning tool for induction of models in form of decision trees and rule-based models was applied on a dataset comprising physical, chemical, and biological variables measured at four stations. Two types of models were successfully elaborated, i.e., (1) model describing phytoplankton Phylum, which describes and connects phytoplankton Phylum with phytoplankton abundance and biomass, and (2) model simulating phytoplankton biomass according to environmental variables which could be used in management purposes. Such models and their presentation contribute to a better understanding of the Butoniga reservoir ecosystem functioning.
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Key words
Butoniga reservoir,Phytoplankton Phylum,Phytoplankton abundance and biomass,Statistical analysis,Machine learning,Decision trees,Rule-based models
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要点】:该论文利用决策树和基于规则的模型描述和模拟了一个小浅水水库的浮游植物,创新点在于通过机器学习方法构建了描述浮游植物门分类和与环境变量相关联的浮游生物量模型,为理解水库生态系统功能提供了新工具。

方法】:采用机器学习方法,通过决策树和基于规则的模型来构建模型。

实验】:在Butoniga水库的四个监测站点测量物理、化学和生物学变量,构建了两个模型:一是描述浮游植物门分类与浮游植物丰度和生物量关系的模型;二是根据环境变量模拟浮游生物量的模型,数据集未明确提及,研究结果有助于水库管理。