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Applying Online Image Analysis to Simultaneously Evaluate the Removals of Suspended Solids and Color from Textile Wastewater in Chemical Flocculated Sedimentation

机译:应用在线图像分析同时评估化学絮凝沉淀中纺织品废水中悬浮固体和颜色的去除

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The removal of suspended solids (SS) and color is critically important for textile wastewater treatment processes. Typically, chemical coagulation and sedimentation have been used as pretreatment processes to remove SS and color from textile wastewater. The effective removal of SS depends significantly on the particle size distribution, density, and fractal dimension. In practice, a batch settling test is used in the laboratory to evaluate the performance of chemical coagulation for the removal of SS. In this paper, we present the application of digital image analysis (MA) for on-line and simultaneous measurement of the variations of the characteristics of particles in textile wastewater. This technology was used during a batch settling test to measure the characteristics of particles, including the mean gray value (MGV) of the captured images, particle size (i.e., equivalent diameter (ED)), total area, total volume, the fractal dimension, and the mean red/green/blue (R/GB) values of the captured images. The on-line DIA data were used as input to regression and artificial neural network (ANN) models that predicted the efficiencies of SS removal and color removal in real textile wastewater after chemical coagulation and sedimentation. The experimental results indicated that the ANN models predicted both the SS and color removal efficiencies precisely, with correlation coefficients (R-2) of 0.93 to 0.96. Thus, digital image analysis and ANN models can be used to simultaneously evaluate the removal of SS and color from textile wastewater by chemical coagulation.
机译:去除悬浮固体(SS)和颜色对于纺织废水处理过程至关重要。通常,化学混凝和沉淀已被用作预处理方法,以从纺织废水中去除SS和色素。 SS的有效去除在很大程度上取决于粒径分布,密度和分形维数。在实践中,实验室使用批量沉降测试来评估化学混凝去除SS的性能。在本文中,我们介绍了数字图像分析(MA)在纺织废水中颗粒特征变化的在线和同时测量中的应用。在批处理沉降测试中使用了该技术来测量颗粒的特征,包括捕获图像的平均灰度值(MGV),颗粒大小(即等效直径(ED)),总面积,总体积,分形维数,以及所拍摄图像的平均红色/绿色/蓝色(R / GB)值。在线DIA数据被用作回归和人工神经网络(ANN)模型的输入,该模型预测化学混凝和沉淀后真实纺织品废水中SS去除和颜色去除的效率。实验结果表明,人工神经网络模型准确地预测了SS和除色效率,相关系数(R-2)为0.93至0.96。因此,数字图像分析和ANN模型可用于同时评估通过化学混凝从纺织品废水中去除SS和颜色的方法。

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