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Predicting microalgae growth and phosphorus removal in cold region waste stabilization ponds using a stochastic modelling approach

机译:使用随机造型方法预测冷区污水稳定池中的微藻生长和磷去除

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A stochastic ecological model with an integrated equilibrium temperature model was developed to predict microalgae growth and phosphorus removal in cold region waste stabilization ponds (WSPs). The model utilized a Monte Carlo simulation to account for parameter uncertainty. The equilibrium temperature model was parameterized using field data collected from two WSPs in Nunavut, Canada, from 2012 to 2014. The equilibrium temperature model provided good agreement with field data on a daily time step. The full model was run using historic (1956–2005) temperature and solar radiation data from five communities (Baker Lake, Cambridge Bay, Coral Harbour, Hall Beach, Resolute) in Nunavut, Canada. The communities represented a range of geographical locations and environmental conditions. Logistic regression on pooled model outputs showed that mean July temperature and mean treatment season temperature (June 1–September 15, ice-free period) provided the best predictors for microalgae growth. They had a predictive success rate of 93 and 88%, respectively. The modelled threshold (50% probability from the Monte Carlo simulation) for microalgae growth was 8.7 and 5.6?°C for the July temperature and mean treatment season temperature, respectively. The logistic regression was applied to each community (except Sanikiluaq) in Nunavut using historic climate data and a probability of microalgae growth was calculated. Based on the model results, soluble phosphorus concentrations consistent with secondary treatment could be achieved if WSP depth is less than 2?m. The model demonstrated a robust method to predict whether a microalgae bloom will occur under a range of model parameters.
机译:具有集成的平衡温度模型的随机生态模型以预测在寒冷地区废物稳定池(的WSP)微藻生长和磷的去除。该模型利用蒙特卡罗模拟账户参数的不确定性。平衡温度模型是使用来自努纳武特地区,加拿大的两个水安全计划,从2012年至2014年采集的现场数据参数上每天的时间步骤中提供与现场数据吻合良好的平衡温度模型。完整的模型是使用历史(1956年至2005年)温度和太阳辐射的数据从五个社区(贝克湖,剑桥湾,珊瑚港,霍尔海滩,坚决)在加拿大努纳武特运行。社区表示的范围的地理位置和环境条件的。对合并的模型输出Logistic回归分析显示,七月平均温度和平均治疗季节温度(六月1日至9月15日,不冻期)提供了最好的预测微藻生长。他们分别有93%和88%的预测成功率。微藻生长所建模的阈值(从蒙特卡罗模拟50%的概率)分别为8.7和5.6?℃下为7月温度和平均治疗季节温度。逻辑回归,使用历史数据气候努勒维特施加到每个社区(除Sanikiluaq)并计算微藻生长的概率。基于该模型的结果,可溶性磷的浓度与二次处理一致,如果能WSP深度小于2?米来实现。该模型表现出可靠的方法来预测是否微藻开花下的范围内的模型参数将发生。

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