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Use of neural networks for monitoring surface water quality changes in a neotropical urban stream

机译:使用神经网络监测新热带城市溪流的地表水水质变化

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This paper reports the using of neural networks for water quality analysis in a tropical urban stream before (2002) and after sewerage building and the completion of point-source control-based sanitation program (2003). Mathematical modeling divided water quality data in two categories: (a) input of some in situ water quality variables (temperature, pH, O_2 concentration, O_2 saturation and electrical conductivity) and (b) water chemical composition (N-NO_2 ~- ; N-NO_3 ~-; N-NH_4 ~+, Total-N; P-PO_4 ~(3-); K~+; Ca~(2+); Mg~(+2); Cu~(+2); Zn~(+2) and Fe~(+3)) as the output from tested models. Stream water data come from fortnightly sampling in five points along the Ipanema streamrn(Southeast Brazil, Minas Gerais state) plus two points downstream and upstream Ipanema discharge into Doce River. Once the best models are consistent with variables behavior we suggest that neural networking shows potential as a methodology to enhance guidelines for urban streams restoration, conservation and management.
机译:本文报道了在建立污水管道之前(2002年)和建造污水管道之后以及在基于点源控制的卫生计划(2003年)完成之后,神经网络在热带城市溪流中的水质分析。数学建模将水质数据分为两类:(a)输入一些原位水质变量(温度,pH,O_2浓度,O_2饱和度和电导率)和(b)水化学成分(N-NO_2〜-; N -NO_3〜-; N-NH_4〜+,总氮; P-PO_4〜(3-); K〜+; Ca〜(2+); Mg〜(+2); Cu〜(+2); Zn 〜(+2)和Fe〜(+3))作为测试模型的输出。溪流水数据来自伊帕内玛河(巴西东南部,米纳斯吉拉斯州)沿伊帕内玛河水流的五个地点每两周采样一次,另外两个点是伊帕内玛河下游和上游向Doce河的排放。一旦最佳模型与变量行为一致,我们建议神经网络将显示出作为增强城市河流恢复,养护和管理指南的方法的潜力。

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