FuREAP: a Fuzzy–Rough Estimator of Algae Populations

Q Shen, A Chouchoulas
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引用次数: 30

Abstract

Concern for environmental issues has increased in recent years. Waste production influences humanity's future. The alga, an ubiquitous single-celled plant, can thrive on industrial waste, to the detriment of water clarity and human activities. To avoid this, biologists need to isolate the chemical parameters of these rapid population fluctuations. This paper proposes a Fuzzy–Rough Estimator of Algae Populations (FuREAP), a hybrid system involving Fuzzy Set and Rough Set theories that estimates the size of algae populations given certain water characteristics. Through dimensionality reduction, FuREAP significantly reduces computer time and space requirements. Also, it decreases the cost of obtaining measurements and increases runtime efficiency, making the system more viable economically. By retaining only information required for the estimation task, FuREAP offers higher accuracy than conventional rule induction systems. Finally, FuREAP does not alter the domain semantics, making the distilled knowledge human-readable. The paper addresses the problem domain, architecture and modus operandi of FuREAP, and provides and discusses detailed experimental results.

FuREAP:藻类种群的模糊粗略估计
近年来,人们越来越关注环境问题。废物的产生影响着人类的未来。藻类是一种无处不在的单细胞植物,它可以在工业废水中茁壮成长,对水的清晰度和人类活动造成损害。为了避免这种情况,生物学家需要分离出这些快速种群波动的化学参数。本文提出了一种基于模糊集理论和粗糙集理论的藻类种群模糊粗糙估计系统(FuREAP),用于估计给定一定水体特征的藻类种群规模。通过降维,FuREAP显著降低了计算机时间和空间要求。此外,它降低了获得测量的成本,提高了运行效率,使系统更具经济可行性。通过只保留估计任务所需的信息,FuREAP提供比传统规则归纳系统更高的精度。最后,FuREAP不改变领域语义,使提炼出来的知识易于人类阅读。本文阐述了FuREAP的问题域、结构和工作方式,并给出了详细的实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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