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首页> 外文期刊>The Science of the Total Environment >Predicting cyanobacteria bloom occurrence in lakes and reservoirs before blooms occur
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Predicting cyanobacteria bloom occurrence in lakes and reservoirs before blooms occur

机译:在盛开之前预测湖泊和水库中的蓝细菌盛开发生

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摘要

With increased global warming, cyanobacteria are blooming more frequently in lakes and reservoirs, severely damaging the health and stability of aquatic ecosystems and threatening drinking water safety and human health.There is an urgent demand for the effective prediction and prevention of cyanobacterial blooms. However, it is difficult to effectively reduce the risks and loss caused by cyanobacterial blooms because most methods are unable to successfully predict cyanobacteria blooms. Therefore, in this study, we proposed a new cyanobacterial bloom occurrence prediction method to analyze the probability and driving factors of the blooms for effective prevention and control. Dominant cyanobacterial species with bloom capabilities were initially determined using a dominant species identification model, and the principal driving factors of the dominant species were then analyzed using canonical correspondence analysis (CCA). Cyanobacterial bloom probability was calculated using a newly-developed model, after which, the probable mutation points were identified and thresholds for the principal driving factors of cyanobacterial blooms were predicted. A total of 141 phytoplankton data sets from 90 stations were collected from six large-scale hydrology, water-quality ecology, integrated field surveys in Jinan City, China in 2014-2015 and used for model application and verification. The results showed that there were six dominant cyanobacterial species in the study area, and that the principal driving factors were water temperature, pH, total phosphorus, ammonia nitrogen, chemical oxygen demand, and dissolved oxygen. The cyanobacterial blooms corresponded to a threshold water temperature range, pH, total phosphorus (TP), ammonium nitrogen level, chemical oxygen demand, and dissolved oxygen levels of 19.5-32.5 degrees C, 7.0-9.38, 0.13-0.22 mg L-1, 0.38-0.63 mg L-1,10.5-17.5 mg L-1 and 4.97-8.28 mg L-1, respectively. Comparison with research results from other global regions further supported the use of these thresholds, indicating that this method could be used in habitats beyond China. We found that the probability of cyanobacterial bloom was 0.75, a critical point for prevention and control. When this critical point was exceeded, cyanobacteria could proliferate rapidly, increasing the risk of cyanobacterial blooms. Changes in driving factors need to be rapidly controlled, based on these thresholds, to prevent cyanobacterial blooms. Temporal and spatial scales were critical factors potentially affecting the selection of driving factors. This method is versatile and can help determine the risk of cyanobacterial blooms and the thresholds of the principal driving factors. It can effectively predict and help prevent cyanobacterial blooms to reduce the global probability of occurrence, protect the health and stability of water ecosystems, ensure drinking water safety, and protect human health. (C) 2019 Elsevier B.V. All rights reserved.
机译:随着全球变暖的增加,蓝藻在湖泊和水库中更频繁地绽放,严重破坏水生生态系统的健康和稳定性,威胁饮用水安全和人类健康。迫切需要迫切需要预测和预防蓝藻绽放的需求。然而,难以有效地降低蓝藻绽放引起的风险和损失,因为大多数方法无法成功预测蓝藻绽放。因此,在本研究中,我们提出了一种新的蓝藻绽放发生预测方法,用于分析盛开的概率和驱动因素,以实现有效的预防和控制。最初使用主要物种识别模型最初确定具有绽放能力的显性蓝细菌物种,然后使用规范对应分析(CCA)分析主导物种的主要驱动因子。使用新开发的模型计算了蓝藻绽放概率,之后,鉴定了可能的突变点,并预测了蓝细菌绽放的主要驾驶因子的阈值。从六个大规模水文,水质生态,2014 - 2015年中国济南市的水质生态学,水质生态,综合田间调查,共收集了来自90个站点的141个浮游植物数据集,用于模范应用和验证。结果表明,研究区中有六种显性性蓝杆菌种类,主要驱动因子是水温,pH,总磷,氨氮,化学需氧量和溶解氧。蓝藻绽放与阈值水温范围,pH,总磷(TP),氮水平,化学需氧量,溶解氧水平为19.5-32.5℃,7.0-9.38,0.13-0.22mg L-1, 0.38-0.63mg L-1,10.5-17.5 mg L-1和4.97-8.28 mg L-1。与其他全球区域的研究结果的比较进一步支持使用这些阈值,表明该方法可以用于中国以外的栖息地。我们发现蓝藻绽放的概率为0.75,是预防和控制的关键点。当超过这个关键点时,蓝藻可以迅速增殖,增加蓝藻绽放的风险。基于这些阈值,需要快速控制驱动因子的变化,以防止蓝藻绽放。时间和空间尺度是可能影响驾驶因素选择的关键因素。该方法是通用的,可以帮助确定蓝藻绽放的风险和主要驱动因子的阈值。它可以有效地预测和有助于预防蓝藻绽放以降低全球发生的可能性,保护水生态系统的健康和稳定性,确保饮用水安全,保护人体健康。 (c)2019 Elsevier B.v.保留所有权利。

著录项

  • 来源
    《The Science of the Total Environment》 |2019年第20期|837-848|共12页
  • 作者单位

    Beijing Normal Univ Coll Water Sci Beijing Key Lab Urban Hydrol Cycle & Sponge City Beijing 100875 Peoples R China|CNRS UdS ICube UMR 7357 300 Bld Sebastien Brant CS 10413 F-67412 Illkirch Graffenstaden France;

    Beijing Normal Univ Sch Geog Fac Geog Sci Beijing 100875 Peoples R China;

    Beijing Normal Univ Coll Water Sci Beijing Key Lab Urban Hydrol Cycle & Sponge City Beijing 100875 Peoples R China|Guizhou Normal Univ Guiyang 550001 Guizhou Peoples R China;

    Adm Yanma Reservoir Zaozhuang 277200 Peoples R China;

    Jinan Survey Bur Hydrol & Water Resources Jinan 250013 Shandong Peoples R China;

    Jinan Survey Bur Hydrol & Water Resources Jinan 250013 Shandong Peoples R China;

    Dongying Bur Hydrol & Water Resources Dongying 257000 Peoples R China;

    Jinan Survey Bur Hydrol & Water Resources Jinan 250013 Shandong Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Water quality; Cyanobactetial blooms; Canonical correspondence analysis;

    机译:水质;Cyanobactial Blooms;规范对应分析;

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