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The application of artificial neural networks for the optimization of coagulant dosage

机译:人工神经网络在优化混凝剂用量中的应用

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Filtration is the final physical barrier preventing the passage of microbial pathogens into public drinking water. Proper pre-treatment via coagulation is essential for maintaining good particle removal during filtration. To improve filter performance at the Elgin Area WTP, artificial neural network (ANN) models were applied to optimize pre-filtration processes in terms of settled water turbidity and alum dosage. ANNS were successfully developed to predict future settled water turbidity based on seasonal raw water variables and chemical dosages, with correlation (R2) values ranging from 0.63 to 0.79. Additionally, inverse-process ANNS were developed to predict the optimal alum dosage required to achieve desired settled water turbidity, with correlation (ff2) values ranging from 0.78 to
机译:过滤是阻止微生物病原体进入公共饮用水的最终物理屏障。通过凝结进行适当的预处理对于在过滤过程中保持良好的颗粒去除至关重要。为了提高Elgin Area WTP的过滤器性能,应用了人工神经网络(ANN)模型来优化预过滤过程,以解决水浊度和明矾用量方面的问题。 ANNS已成功开发,可根据季节性原水变量和化学剂量来预测未来的沉降水浊度,相关(R2)值在0.63至0.79之间。此外,开发了逆过程ANNS来预测实现所需的沉降水浊度所需的最佳明矾剂量,相关(ff2)值范围为0.78至

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