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Artificial neural network modelling: a summary of successful applications relative to microbial water quality

机译:人工神经网络建模:与微生物水质有关的成功应用总结

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Artificial neural networks (ANN) are modelling tools that can be of great utility in studies of microbial water quality. The ability of ANNs to work with complex, inter-related multiparameter databases and provide superior predictive power in non-linear relationships suits their application to microbial water quality studies. To date ANNs have been successfully applied (a) for the prediction of peak microbial concentrations, (b) to sort land use associated faecal pollution sources and relative ages of runoff and (c) towards the selection and study of surrogate parameters. Predictions of peak microbial contamination or faecal pollution sources have been greater than 90% accurate. The importance of a subgroup of organisms that are isolated by the total coliform membrane filter test on m-Endo media in defining faecal sources was revealed through parameter selection exercises. The result is the definition of a hew bacterial ratio that can be directly related to the age of faecal contamination in animal impacted runoff. [References: 8]
机译:人工神经网络(ANN)是建模工具,可在微生物水质研究中发挥重要作用。人工神经网络具有处理复杂的,相互关联的多参数数据库并在非线性关系中提供出色的预测能力的能力,适合将其应用于微生物水质研究。迄今为止,人工神经网络已经成功地应用于(a)预测微生物的最高浓度,(b)对与土地利用相关的粪便污染源和径流的相对年龄进行分类,以及(c)用于选择和研究替代参数。预测的峰值微生物污染或粪便污染源的准确率已超过90%。通过参数选择演习揭示了通过在m-Endo培养基上进行大肠菌膜滤膜总测试分离出的亚组生物对定义粪便来源的重要性。结果是定义了大棚细菌比率,该比率可以直接与动物径流中粪便污染的年龄相关。 [参考:8]

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