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Decision Model for Optimization of Coagulation/Flocculation Process for Wastewater Treatment

机译:混凝/絮凝工艺优化处理的决策模型

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The dye wastewater is an important environmental problem. Coagulation-flocculation process is an available technology in treatment of this kind of wastewater. The aim of the present study was to develop a model for coagulation-flocculation process using ferric chloride as a flocculant and the model could provide an alternative to the experimental jar test for determining the operational variables for treatment of the row wastewater. Also, some parameters affecting the degradation degree such as coagulant dosage, wastewater initial pH, agitation speed and time, were examined. The results showed that the linear correlation coefficient (R) between the simulation values and the expected values was 0.94 after network training and 0.92 after testing. The simulation effect of RBF neural network is related to the maximum number of neurons of network and the spread of radial basis functions. When the maximum number of neurons of network is 28 and the spread of radial basis functions is 2.1, the ratio of test error to training error is l.36 and the simulation result is the best. The experiment was carried out based on better simulation results and the degradation degree could reach 93% when coagulant dosage, wastewater initial pH, agitation speed and rapid agitation time are 0.3 ml/l, 7.6, 300 rpm and 1 min respectively. In addition, the importance of the parameters on degradation degree was investigated by the model. The degradation degree was enhanced significantly as listed herein decreasing order of effectiveness: coagulant dosage >; agitation speed >; agitation time >; wastewater initial pH.
机译:染料废水是重要的环境问题。混凝-絮凝工艺是一种可用于处理此类废水的技术。本研究的目的是开发一种使用氯化铁作为絮凝剂的混凝-絮凝过程模型,该模型可以为实验震击试验提供替代方法,以确定用于处理行废水的操作变量。此外,还检查了影响降解程度的一些参数,例如凝结剂用量,废水初始pH,搅拌速度和时间。结果表明,模拟值与期望值之间的线性相关系数(R)在网络训练后为0.94,测试后为0.92。 RBF神经网络的仿真效果与网络神经元的最大数目和径向基函数的扩展有关。当网络的最大神经元数为28,径向基函数的展宽为2.1时,测试误差与训练误差之比为1.36,仿真结果最佳。实验基于较好的模拟结果进行,当混凝剂用量,废水初始pH,搅拌速度和快速搅拌时间分别为0.3 ml / l,7.6、300 rpm和1 min时,降解度可达到93%。此外,该模型还研究了参数对降解度的重要性。如本文所列,降解程度显着增强,降低的效果依次为:凝结剂用量>;搅拌速度>;搅拌时间>;废水初始pH。

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