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Prediction of sludge volume index bulking using image analysis and neural network at a full-scale activated sludge plant

机译:使用图像分析和神经网络预测大规模活性污泥厂的污泥体积指数膨胀

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Sludge volume index parameter should be monitored daily for the performance of wastewater treatment plants. It was aimed to estimate this parameter using image processing and artificial intelligence techniques for full-scale wastewater treatment plant. The activated sludge samples were collected from the aeration tank of the activated sludge process in Konya Domestic Wastewater Treatment Plant. Sludge characteristics and settling properties were observed microscopically via the measurements of flocs and filaments. The 49 images per slide were taken by an image-analysis system developed for automated image acquisition. A total of 120 samples were examined over a period of year. The floc and filament structures were analyzed using Cellular Neural Networks (CNN). Iteration value of the CNN was modified according to the image. Then, a number of morphological operations were applied for an accurate identification of the floc and filaments separately. Textural, shape, and statistical approaches were utilized for creating a set of data for each sample. After preparing the training and test data by shuffling the data randomly, a fivefold cross-validation method was applied. And, these training and test data were applied to an artificial neural network. The weights of the neural network were trained using the Levenberg-Marquardt, Genetic, and Artificial Bee Colony algorithms.
机译:应每天监测污泥量指标参数以了解废水处理厂的性能。旨在使用图像处理和人工智能技术对大型废水处理厂估算该参数。活性污泥样品是从科尼亚生活污水处理厂的活性污泥工艺曝气池中收集的。通过絮凝物和细丝的测量,在显微镜下观察了污泥特性和沉降特性。每张幻灯片49张图像是通过为自动图像采集开发的图像分析系统拍摄的。一年中共检查了120个样品。使用细胞神经网络(CNN)分析絮状物和细丝结构。根据图像修改了CNN的迭代值。然后,进行了许多形态学操作,分别准确地鉴定了絮状物和细丝。使用纹理,形状和统计方法为每个样本创建一组数据。在通过随机改组数据准备训练和测试数据之后,应用了五重交叉验证方法。并且,这些训练和测试数据被应用于人工神经网络。使用Levenberg-Marquardt,Genetic和人工蜂群算法对神经网络的权重进行了训练。

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