首页> 外文期刊>Polish Journal of Environmental Studies >Response Surface Methodology and Artificial Neural Network for Modeling and Optimization of Distillery Spent Wash Treatment Using Phormidium valderianum BDU 140441
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Response Surface Methodology and Artificial Neural Network for Modeling and Optimization of Distillery Spent Wash Treatment Using Phormidium valderianum BDU 140441

机译:响应面方法和人工神经网络用于酿酒酵母BDU 140441对酒厂废水洗涤处理的建模和优化。

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摘要

The aim of this work was to evaluate the capability of Phormidium valderianum BDU 140441 on biodegradation and decolorization of distillery spent wash. The effect of initial pH (6-10), temperature (24-32℃), and light intensity (20-54 W/m~2) was studied using single factorial design and achieved a maximum decolorization of 74.5% with COD reduction of 83.48%. A 2~3 full factorial experimental central composite design (CCD) of response surface methodology (RSM) was used to investigate the interaction effect between these variables and the optimal values. The predicted results showed that a maximum decolorization of 85.5% and COD reduction of 87.29% was achieved under the optimum conditions of 8 pH, 30℃, and light intensity of 36 W/m~2. It was observed that model predictions were in good agreement with experimental values (R~2 = 0.9830, Adj-R~2 = 0.9677), which indicated the suitability of the model and the success of the optimization tool. A non-linear artificial neural network (ANN) model was developed to predict the biological decolorization of the spent wash. The results indicated that ANN revealed reasonable performance (R~2=0.9999, y=0.9781x-0.5679).
机译:这项工作的目的是评估Valderianum BDU 140441对酿酒厂废洗液的生物降解和脱色的能力。使用单因子设计研究了初始pH(6-10),温度(24-32℃)和光强度(20-54 W / m〜2)的影响,并通过减少COD达到了74.5%的最大脱色。 83.48%。使用2〜3个响应面方法(RSM)的全因子实验中心复合设计(CCD)来研究这些变量与最佳值之间的相互作用。预测结果表明,在8 pH,30℃,36 W / m〜2的最佳条件下,最大脱色率为85.5%,化学需氧量减少为87.29%。观察到的模型预测与实验值(R〜2 = 0.9830,Adj-R〜2 = 0.9677)很好地吻合,这表明模型的适用性和优化工具的成功。建立了非线性人工神经网络(ANN)模型来预测废洗液的生物脱色。结果表明,人工神经网络具有合理的性能(R〜2 = 0.9999,y = 0.9781x-0.5679)。

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