关键词: Artificial intelligence Cyanobacteria Fluorescence Remote sensors Water quality Water resources management

Mesh : Chlorophyll / metabolism Chlorophyll A Cyanobacteria / metabolism Environmental Monitoring / methods Fluorescence Fluorescent Dyes Odorants Phycocyanin / metabolism Risk Assessment Taste Water Pollutants / toxicity

来  源:   DOI:10.1016/j.watres.2018.05.001

Abstract:
In recent years, there has been a widespread deployment of submersible fluorescence sensors by water utilities. They are used to measure diagnostic pigments and estimate algae and cyanobacteria abundance in near real-time. Despite being useful and promising tools, operators and decision-makers often rely on the data provided by these probes without a full understanding of their limitations. As a result, this may lead to wrong and misleading estimations which, in turn, means that researchers and technicians distrust these sensors. In this review paper, we list and discuss the main limitations of such probes, as well as identifying the effect of environmental factors on pigment production, and in turn, the conversion to cyanobacteria abundance estimation. We argue that a comprehensive calibration approach to obtain reliable readings goes well beyond manufacturers\' recommendations, and should involve several context-specific experiments. We also believe that if such a comprehensive set of experiments is conducted, the data collected from fluorescence sensors could be used in artificial intelligence modelling approaches to reliably predict, in near real-time, the presence and abundance of different cyanobacteria species. This would have significant benefits for both drinking and recreational water management, given that cyanobacterial toxicity, and taste and odour compounds production, are species-dependent.
摘要:
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