有害藻类水华的频繁发生已成为国内外普遍关注的环境问题。
The widespread occurrence of heavy cyanobacterial blooms has been the serious environmental problem.
本文的研究工作主要着眼于利用神经网络模型对藻类水华进行建模和预测。
This paper focuses on the modeling and forecasting algal blooms using neural networks.
本文的研究工作主要着眼于利用神经网络模型对藻类水华进行建模和预测。
The Research on the System of Observing and Predicting of the Harmful Algal Blooms;
藻类水华会释放大量毒素和有害物质,造成水生生物的大量死亡,给渔业生态环境带来严重危害。
Algae bloom will release toxins and harmful substances, cause organisms mass deaths in water, bring serious harm to aquatic ecological environment.
并对遥感水质参数定量反演方法、中程无线传感网络技术和藻类水华预测预警模型方面进行了改进。
With improved retrieval approach of water quality parameters, technology of Wireless Sensor Network (WSN) and forecast model of algal bloom, the blue-green algal bloom forecast platform was developed.
本文研究了水华期间藻类的生消过程及其动态变化,并分析环境因子在水华形成和消亡过程中的作用和机制。
The processes and dynamics of these blooms were studied, and the functions and mechanisms of the environmental factors in the processes of the blooms in area scale were analysed.
研究表明:水体的富营养状态是藻类异常增殖的主要原因,而藻类的异常增殖又是"水华"发生的前提条件。
The result shows that eutrophication is the major reason responsible for the bloom formation and the abnormal growth of algae population composes the premise of this procedure.
太湖水华蓝藻主要由铜绿微囊藻、水华鱼腥藻和水华束丝藻等藻类组成,是太湖流域的夏季主要污染物之一。
Cyanobacteria bloom in Tai Lake, mainly composed of Microcystis aeruginosa, Anabaena flos-aquae and Aphanizomenon flos-aquae, is one of the main pollutants in Tai Lake in summer.
水体严重富营养化时,水面藻类增殖,成片或成团地覆盖在水体表面,形成水华或赤潮。
When eutrophic condition of water body is serious, algae on water surface proliferate and cover the water surface flakily to form water blooms or red tides.
淡水或海洋生态 系统中微生物迅速增长的现象,例如藻类造成的水华。
Bloom A sudden growth of microorganisms in a freshwater or marine ecosystem, often known as an algal bloom.
以水华鱼腥藻为材料研究了6种氨基甲酸酯类农药对藻类的毒性效应。
The toxicity effect of 6 carbamic ester pesticides on Anabaena flos-aquae was studied.
以水华鱼腥藻为材料研究了6种氨基甲酸酯类农药对藻类的毒性效应。
The toxicity effect of 6 carbamic ester pesticides on Anabaena flos-aquae was studied.
应用推荐