首页> 外文会议>IFAC/IFORS/IMACS/IFIP Symposium on Large Scale Systems >ESTIMATION OF WASTEWATER TREATMENT PLANT STATE FOR MODEL PREDICTIVE CONTROL OF N-P REMOVAL AT MEDIUM TIME SCALE
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ESTIMATION OF WASTEWATER TREATMENT PLANT STATE FOR MODEL PREDICTIVE CONTROL OF N-P REMOVAL AT MEDIUM TIME SCALE

机译:估计诸如中时级尺度的N-P去除模型预测控制的废水处理植物状态

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State estimates are needed for optimising model predictive control of nitrogen and phosphorous removal in a wastewater treatment plant due to limited state measurements available. The MFC optimiser to implement an information feedback from the plant uses the estimates. Parameters of a grey box model used by MPC for the output prediction purposes need to be updated as well. The state estimates are then used, as pseudo measurements of the states by the parameter estimation algorithm. Otherwise the joint state and parameter estimation does not provide needed accuracy due to limited measurement programme. The paper applies extended Kalman filter to the plant model that is based on ASM2d model of the biological reactor. The estimator is tested by simulation on a benchmark producing encouraging results.
机译:优化由于可用的有限状态测量而在废水处理设备中优化氮气去除的模型预测控制所需的状态估计。 MFC优化器实现从工厂的信息反馈使用估计。 MPC用于输出预测目的的MPC使用的参数也需要更新。然后使用状态估计作为通过参数估计算法的状态的伪测量。否则,由于测量程序有限,联合状态和参数估计不提供所需的精度。本文将扩展的卡尔曼滤波器应用于基于生物反应器的ASM2D模型的工厂模型。通过模拟在产生令人鼓舞的结果的基准测试中进行估算器。

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