Recknagel Friedrich, Orr Philip T, Cao Hongqing
School of Earth and Environmental Sciences, University of Adelaide, SA 5005, Australia.
Seqwater, PO Box 16146, City East, Qld 4002, Australia.
Harmful Algae. 2014 Jan;31:26-34. doi: 10.1016/j.hal.2013.09.004. Epub 2013 Oct 17.
Seven-day-ahead forecasting models of Cylindrospermopsis raciborskii in three warm-monomictic and mesotrophic reservoirs in south-east Queensland have been developed by means of water quality data from 1999 to 2010 and the hybrid evolutionary algorithm HEA. Resulting models using all measured variables as inputs as well as models using electronically measurable variables only as inputs forecasted accurately timing of overgrowth of C. raciborskii and matched well high and low magnitudes of observed bloom events with 0.45≤r>0.61 and 0.4≤r>0.57, respectively. The models also revealed relationships and thresholds triggering bloom events that provide valuable information on synergism between water quality conditions and population dynamics of C. raciborskii. Best performing models based on using all measured variables as inputs indicated electrical conductivity (EC) within the range of 206-280mSm as threshold above which fast growth and high abundances of C. raciborskii have been observed for the three lakes. Best models based on electronically measurable variables for the Lakes Wivenhoe and Somerset indicated a water temperature (WT) range of 25.5-32.7°C within which fast growth and high abundances of C. raciborskii can be expected. By contrast the model for Lake Samsonvale highlighted a turbidity (TURB) level of 4.8 NTU as indicator for mass developments of C. raciborskii. Experiments with online measured water quality data of the Lake Wivenhoe from 2007 to 2010 resulted in predictive models with 0.61≤r>0.65 whereby again similar levels of EC and WT have been discovered as thresholds for outgrowth of C. raciborskii. The highest validity of r=0.75 for an in situ data-based model has been achieved after considering time lags for EC by 7 days and dissolved oxygen by 1 day. These time lags have been discovered by a systematic screening of all possible combinations of time lags between 0 and 10 days for all electronically measurable variables. The so-developed model performs seven-day-ahead forecasts and is currently implemented and tested for early warning of C. raciborskii blooms in the Wivenhoe reservoir.
利用1999年至2010年的水质数据和混合进化算法HEA,开发了昆士兰州东南部三个温暖单循环中营养水库中柱孢藻的提前七天预测模型。使用所有测量变量作为输入的模型以及仅使用电子可测量变量作为输入的模型,准确预测了柱孢藻过度生长的时间,并且分别以0.45≤r>0.61和0.4≤r>0.57很好地匹配了观察到的水华事件的高低强度。这些模型还揭示了触发水华事件的关系和阈值,为水质条件与柱孢藻种群动态之间的协同作用提供了有价值的信息。基于使用所有测量变量作为输入的最佳性能模型表明,电导率(EC)在206 - 280mSm范围内为阈值,高于该阈值时,在这三个湖泊中观察到柱孢藻快速生长和高丰度。基于电子可测量变量的Wivenhoe湖和Somerset湖的最佳模型表明,水温(WT)范围为25.5 - 32.7°C,在此范围内预计柱孢藻会快速生长和高丰度。相比之下,Samsonvale湖的模型突出了4.8 NTU的浊度(TURB)水平作为柱孢藻大量繁殖的指标。对2007年至2010年Wivenhoe湖的在线测量水质数据进行实验,得到了预测模型,其r值为0.61≤r>0.65,再次发现类似水平的EC和WT作为柱孢藻生长的阈值。在考虑电导率7天和溶解氧1天的时间滞后后,基于原位数据的模型实现了最高的r值0.75。这些时间滞后是通过对所有电子可测量变量在0到10天之间的所有可能时间滞后组合进行系统筛选而发现的。如此开发的模型进行提前七天的预测,目前已在Wivenhoe水库实施并测试用于柱孢藻水华的早期预警。