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Multiobjective optimal control for wastewater treatment process using adaptive MOEA/D

机译:使用Adaptive Moea / D废水处理过程的多目标最优控制

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摘要

Through the analysis of the biological wastewater treatment process (WWTP), a multiobjective optimal control strategy is developed with the usage of energy consumption (EC) and effluent quality (EQ) as objectives to be optimized. To effectively handle the multiobjective optimization problem (MOP) with complex Pareto-optimal front (POF), an adaptive multiobjective evolutionary algorithm based on decomposition (AMOEA/D) is proposed in this paper. Since the efficiency of the multiple reference points and two-phase optimization strategies in solving MOPs with complex POFs has been proved. In the proposed AMOEA/D, an auto-switching strategy based on the aggregation function enhancement is designed to automatically make the algorithm switch from the first phase to the second phase. Besides, an adaptive differential evolution strategy is introduced into AMOEA/D to balance exploration and exploitation during the evolutionary process. Finally, the dynamic optimization, intelligent decision and bottom tracking control of the set-points of the dissolved oxygen and nitrate nitrogen in the WWTP are achieved via the combination of AMOEA/D with the self-organizing fuzzy neural network approximator and the self-organizing fuzzy neural network controller. The international benchmark simulation model No. 1 (BSM1) is utilized for experimental verification. Simulation results demonstrate that the proposed AMOEA/D can effectively reduce the EC of the WWTP under the premise of ensuring effluent parameters to meet the effluent discharge standards.
机译:通过对生物废水处理过程(WWTP)的分析,利用能量消耗(EC)和流出质量(EQ)作为优化的目标,开发了一种多目标最佳控制策略。为了有效处理具有复杂帕累托 - 最佳前部(POF)的多目标优化问题(MOP),本文提出了一种基于分解(AMOEA / D)的自适应多目标进化算法。由于已经证明了具有复杂POF的MOPS的多参考点和两相优化策略的效率。在提议的AmoeA / D中,基于聚合函数增强的自动切换策略旨在自动使算法从第一阶段切换到第二阶段。此外,将自适应差分演化策略引入Amoea / D,以平衡进化过程中的勘探和剥削。最后,通过Amoea / D与自组织模糊神经网络近似器和自组织的组合实现了WWTP中溶解氧和硝酸盐氮的设定点的动态优化,智能决策和底部跟踪控制。模糊神经网络控制器。国际基准模拟编号1(BSM1)用于实验验证。仿真结果表明,所提出的AmoeA / D可以在确保废水参数满足污水排放标准的前提下,有效地减少WWTP的EC。

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