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Regional optimal allocation for reducing waste loads via artificial neural network and particle swarm optimization: a case study of ammonia nitrogen in Harbin, northeast China

机译:通过人工神经网络和粒子群算法减少废物负荷的区域最优分配:以中国东北哈尔滨市氨氮为例

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摘要

Cutting external waste loads can improve water quality. Allocation for reducing waste loads should consider changing variables, such as river flows and pollutant emissions. A particle swarm optimization (PSO) method and coupling artificial neural network (ANN) models have been applied to optimize reduction rates of ammonia nitrogen (NH_3-N) loads from sewage outlets in Harbin, northeast China. For the planned water quality functional section (WQFS), the NH_3-N concentration is related to emitted pollutant loads and can be well predicted by ANN linkage models. Further, NH_3-N load reduction rates of all outlets are optimized by PSO with the water quality standard target. The highest NH_3-N concentrations occur in January and February, a typical low-flow period in Harbin. The results delivered optimum NH_3-N reduction rates for the five outlets, for January and February 2011. All predicted NH_3-N concentrations after the reduction meet the water quality standard. The results indicate that the outlet with the highest NH_3-N load has the biggest reduction rate in each WQFS, and outlets in the WQFS with higher background NH_3-N concentrations need to cut more NH_3-N loads. Decision-makers should not only focus on the outlet with the highest NH_3-N emission load, but also ensure that the NH_3-N concentration of upper WQFS meets the water quality goal.
机译:减少外部废物负荷可以改善水质。减少废物负荷的分配应考虑变化的变量,例如河流流量和污染物排放。运用粒子群优化(PSO)方法和耦合人工神经网络(ANN)模型来优化东北哈尔滨市污水处理厂氨氮(NH_3-N)负荷的还原率。对于计划的水质功能区(WQFS),NH_3-N浓度与排放的污染物负荷有关,并且可以通过ANN链接模型很好地预测。此外,PSO以水质标准为目标优化了所有出口的NH_3-N减负荷率。最高的NH_3-N浓度发生在1月和2月,这是哈尔滨的典型低流量时期。结果为2011年1月和2011年2月的五个出口提供了最佳的NH_3-N还原率。还原后所有预测的NH_3-N浓度均符合水质标准。结果表明,NH_3-N负荷最高的出口在每个WQFS中的还原率最大,而WQFS中背景NH_3-N浓度较高的出口需要减少更多的NH_3-N负荷。决策者不仅应关注NH_3-N排放负荷最高的出口,还应确保上部WQFS的NH_3-N浓度符合水质目标。

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