Correlation Research between Blue-green Algae and Water Quality Indicators Using Unmanned Surface Vehicle

Yichen Wei, Zixian Zhang, Xiaohui Zhu, Yong Yue
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Abstract

The harmful algal blooms in fresh waters have led to severe environmental problems such as mass mortalities of wild and cultured fish and shellfish, and human illnesses, which hamper the sustainability of fisheries and aquaculture. Blue-green algae (BGA) are commonly the dominant species in harmful algal blooms. Thus, studying the correlation between BGA and water quality indicators can contribute to establishing data-driven models when predicting the outbreaks of BGA. Previous studies typically used data from fixed-point sampling for correlation analysis. For specific waters, fixed-point sampling has the defects of small coverage, low sampling frequency, and poor flexibility, which is one of the reasons affecting the reliability of the analysis results. This paper uses an unmanned surface vehicle (USV) for water quality data collection. Spearman's correlation coefficient and statistical methods are used to conduct correlation analysis between BGA biomass (measured by phycocyanin) and water quality indicators. The results show a significant positive correlation between BGA biomass and chlorophyll-a, pH, water temperature, and dissolved oxygen. The results are consistent with most correlation studies and demonstrate the feasibility of using the massive sampling data collected by unmanned surface vehicle to analyze the correlation between BGA and water quality indicators.
基于无人水面航行器的蓝藻与水质指标相关性研究
淡水中有害的藻华导致了严重的环境问题,如野生和养殖鱼类和贝类的大量死亡,以及人类疾病,这阻碍了渔业和水产养殖的可持续性。蓝绿藻(BGA)通常是有害藻华的优势物种。因此,研究BGA与水质指标之间的相关性有助于建立BGA爆发预测的数据驱动模型。以往的研究通常采用定点抽样的数据进行相关性分析。对于特定水域,定点采样存在覆盖范围小、采样频率低、灵活性差的缺陷,这是影响分析结果可靠性的原因之一。本文采用无人水面飞行器(USV)进行水质数据采集。采用Spearman相关系数和统计学方法对BGA生物量(藻蓝蛋白测定)与水质指标进行相关性分析。结果表明:BGA生物量与叶绿素-a、pH、水温、溶解氧呈显著正相关;研究结果与大多数相关研究结果一致,证明了利用无人水面航行器采集的大量采样数据分析BGA与水质指标相关性的可行性。
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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