应用障碍泊松模型预测储层中有毒微囊藻的丰度

Truc-Ly Le-Huynh, T. Itayama, Kaito Mitsunaga, Misigo W. S. Angalika, Seiji Suzuki
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引用次数: 0

摘要

富营养化水库中有毒微囊藻蓝藻的大量繁殖给世界范围内的供水造成了严重的困难。对于这样的水库的适当管理,有毒蓝藻微囊藻的预测模型可以是一个有用的工具。因此,本研究旨在建立一个贝叶斯障碍泊松模型,仅从气温和叶绿素-a计算的营养状态指数(TSI)两个预测因子进行毒性微囊藻的统计预测。用mcyB基因拷贝数作为毒性微囊藻细胞密度的替代指标。对日本长崎县20个水库的mcyB基因和叶绿素-a进行了分析。从当地气象站下载每日平均气温,计算采样日前30天的平均值。结果表明,较高的温度和较大的TSI有利于毒性微囊藻的生长。此外,该模型成功预测了mcyB基因拷贝数作为毒性微囊藻细胞密度在不同空气温度和TSI条件下的替代物,具有足够的准确性。因此,该模型有可能成为水库综合管理中有毒微囊蓝藻的有用预测工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of hurdle Poisson model to predict the abundance of toxic cyanobacteria Microcystis in reservoirs
The blooming of toxic cyanobacteria Microcystis in eutrophicated reservoirs causes serious difficulties for water supply worldwide. For the appropriate management of such reservoirs, a prediction model of toxic cyanobacteria Microcystis can be a useful tool. Therefore, this study aims to develop a Bayesian hurdle Poisson model for statistical prediction of toxic Microcystis from only two predictors, air temperature and trophic state index (TSI) calculated from chlorophyll-a. The gene copy number of the mcyB gene was used as a surrogate of toxic Microcystis cell density. The data on mcyB gene and chlorophyll-a were collected from 20 reservoirs in Nagasaki Prefecture (Japan). The daily average air temperature was downloaded from the local meteorological stations and a mean for 30 days before sampling date was calculated. The results showed that higher temperature and larger TSI accelerate the growth of toxic Microcystis. Furthermore, this model successfully predicted mcyB gene copy number as a surrogate of toxic Microcystis cell density for different conditions of air temperature and TSI with sufficient accuracy. Therefore, the proposed model has the potential to be a useful prediction tool for toxic cyanobacteria Microcystis in the integrated management of reservoirs.
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