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首页> 外文期刊>Ecological informatics: an international journal on ecoinformatics and computational ecology >Use of sea surface discoloration to monitor and discriminate the causative genera of harmful algal blooms (HABs): Practical use of digital repeat photography
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Use of sea surface discoloration to monitor and discriminate the causative genera of harmful algal blooms (HABs): Practical use of digital repeat photography

机译:使用海面变色来监测和辨别造成的有害藻类盛开(HABS)的致病性总:实际使用数字重复摄影

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摘要

Harmful algal blooms (HABs) are associated with water quality degradation, which damages fisheries, ecosystems, and public health. Consequently, techniques for detecting the occurrence of HABs have been developed globally. However, conventional techniques are unable to discriminate the causative species/genera of HABs objectively. Therefore, the aim of the present study was to develop a technique for frequently analyzing the causative genera of HAB events using repeat digital photography with a stationary device named "HABcam." The HABcam was installed at Okigamisenishi monitoring station in the inner western area of Ariake Bay, Japan, and the digital images obtained were analyzed to quantify the sea surface color and to estimate the probability of a HAB occurrence on a daily basis using Bayes' theorem. The estimated probability of a HAB occurrence accurately discriminated a HAB occurrence or non-occurrence in the research area on 19/21 days (=90.5%) for Chattonella spp. and 7/8 days (=87.5%) for Skeletonema spp. These findings indicate that this technique can be used to objectively determine the causative genera during HAB events and to observe HABs with high accuracy and at a high frequency.
机译:有害的藻类绽放(HABS)与水质退化有关,损害渔业,生态系统和公共卫生。因此,在全球范围内开发出用于检测生物发生的技术。然而,常规技术无法客观地区分致病种类/属性。因此,本研究的目的是开发一种技术,用于经常使用重复数码摄影与命名为“habcam”的静止数字摄影来频繁分析致原因属性。 Habcam安装在日本Ariake湾的内部西部地区的Okigamisenishi监测站,并分析了所得数字图像来量化海面颜色,并使用贝叶斯定理每天估计HAB发生的概率。 SAB发生的估计可能性在19/21天(= 90.5%)的Chattonella SPP中精确地区分了研究区的HAB发生或不发生。 7/8天(= 87.5%)用于骨骼肿瘤SPP。这些发现表明,该技术可用于客观地确定HAB事件期间的致病成因,并以高精度和高频观察HAB。

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