Hybrid LE Systems for Simulation of an Activated Sludge Process

E. Juuso, I. Laakso
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引用次数: 1

Abstract

Industrial wastewater treatment plants (WWTP), especially in pulp and paper mills, have operational problems resulting fluctuations in effluent discharges. The composition and flow rates of industrial wastewater fluctuate depending on the production schedules of the upstream processes. A lot of process measurements are available, but measurement sets do not include sufficient information on the special features of the influent nor on the microbial composition of the sludge. The populations of microorganisms have an essential effect on the operation of the treatment process. Basic dynamic simulation is done with linguistic equation (LE) models, where interactions are handled with linear equations, and nonlinearities are taken into account by scaling functions. Intelligent indices provide useful information for the detection of process conditions and the system, which consists of three interactive models: load, biomass population and treatment. Process insight is maintained while data-driven tuning relates the measurements to the operating areas. A wide range of operating conditions is handled with a multimodel system and a fuzzy decision module, which defines the weights of the subsystems. Hybrid models with a cascade approach are needed in biological wastewater treatment to cover different operating conditions.
用于模拟活性污泥过程的混合LE系统
工业废水处理厂,特别是纸浆和造纸厂,存在操作问题,导致废水排放量波动。工业废水的组成和流速随上游工序的生产进度而波动。许多过程测量是可用的,但测量集不包括足够的信息对进水的特殊特征,也不包括污泥的微生物组成。微生物的数量对处理过程的操作有重要的影响。基本的动态模拟是用语言方程(LE)模型完成的,其中相互作用用线性方程处理,非线性通过缩放函数考虑。智能指标为过程条件和系统的检测提供有用的信息,它由三个交互模型组成:负荷、生物量种群和处理。当数据驱动的调优将度量与操作区域联系起来时,过程洞察力得到维护。采用多模型系统和模糊决策模块处理各种工况,模糊决策模块定义各子系统的权重。在生物废水处理中,需要采用具有级联方法的混合模型来覆盖不同的操作条件。
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