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Linearization of the activated sludge model ASM1 for fast and reliable predictions

机译:活性污泥模型ASM1的线性化可实现快速可靠的预测

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In this paper a strategy is proposed to reduce the complexity of the activated sludge model no. 1 (ASM1) which describes the biotransformation processes in a common activated sludge process with N-removal. The key feature of the obtained reduced model is that it combines high predictive value (all state variables keep their biological interpretation) with very low computation time. Therefore, this model is a valuable tool in a risk assessment environment (designed for the evaluation of wastewater treatment plants facing stricter effluent norms) as well as in on-line (MPC) control strategies. The complexity reduction procedure consists of four steps. In the first step representative input/output data sets are generated by simulating the full ASM1 model. In the second step the ASM1 model is rewritten in state space format with linear approximations of the nonlinear (kinetic) terms. In the third step the unknown parameters in the linear terms are identified based on the generated input/output data. To reduce the amount of parameter sets that have to be identified (to cover the full operation range of the plant), a Multi-Model interpolation procedure is introduced as a last step.
机译:在本文中,提出了一种减少活性污泥模型No.3的复杂性的策略。参见图1(ASM1),其描述了具有N去除的普通活性污泥法中的生物转化法。所获得的简化模型的关键特征在于,它结合了高预测值(所有状态变量均保持其生物学解释)和极低的计算时间。因此,该模型在风险评估环境(旨在评估面临更严格的污水排放标准的废水处理厂)以及在线(MPC)控制策略中都是有价值的工具。降低复杂度的过程包括四个步骤。在第一步中,通过模拟完整的ASM1模型来生成代表性的输入/输出数据集。第二步,将ASM1模型以状态空间格式重写为非线性(动力学)项的线性近似。在第三步中,根据生成的输入/输出数据识别线性项中的未知参数。为了减少必须确定的参数集数量(以覆盖工厂的整个运行范围),最后一步引入了多模型插值程序。

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