首页> 外文会议>International Conference on Advances in Intelligent Computing Theories and Applications(ICIC 2007); 20070821-24; Qingdao(CN) >Multi-units Unified Process Optimization Under Uncertainty Based on Differential Evolution with Hypothesis Test
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Multi-units Unified Process Optimization Under Uncertainty Based on Differential Evolution with Hypothesis Test

机译:基于差分进化和假设检验的不确定性下的多单元统一过程优化

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摘要

For large-scale chemical process, which consists of lots of production units, all units have their respective optimization objects which are often conflicting with each other for a series of constraints on material and energy balance. In this paper, the total solution with two layers structure strategy made up of multi-units unified optimization and predictive control of each unit is realized. For the global optimization has high dimension, serious nonlinearity and uncertainty, the optimization algorithm based on differential evolution (DE) is performed, while a hybrid DE approach combining hypothesis test (HT) to compare the optimization objects under uncertainty is proposed. The simulation results of an application example to a 20Mt/a gas separation process show that the proposed total solution with two layers structure strategy is successful and multi-units unified optimization method based on HTDE is effective and robust for solving the optimization problem under uncertainty.
机译:对于由许多生产单元组成的大规模化学过程,所有单元都有各自的优化对象,这些优化对象通常会因一系列对物料和能量平衡的约束而相互冲突。本文实现了由多单元统一优化和各单元的预测控制组成的两层结构策略的整体解决方案。针对全局优化的高维,严重的非线性和不确定性,提出了一种基于差分演化(DE)的优化算法,同时提出了一种结合假设检验(HT)的混合DE方法来比较不确定性条件下的优化对象。一个20Mt / a气体分离过程的应用实例的仿真结果表明,所提出的具有两层结构策略的整体解决方案是成功的,并且基于HTDE的多单元统一优化方法对于解决不确定性条件下的优化问题是有效且鲁棒的。

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