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New Multi-Objective Optimization Techniques and their Application to Complex Chemical Engineering Problems.

机译:新的多目标优化技术及其在复杂化学工程问题中的应用。

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摘要

In this study, two new Multi-Objective Optimization (MOO) techniques are developed. The two new techniques, the Objective-Based Gradient Algorithm (OBGA) and the Principal Component Grid Algorithm (PCGA), were developed with the goals of improving the accuracy and efficiency of the Pareto domain approximation relative to current MOO techniques. Both methods were compared to current MOO techniques using several test problems. It was found that both the OBGA and PCGA systematically produced a more accurate Pareto domain than current MOO techniques used for comparison, for all problems studied. The OBGA requires less computation time than the current MOO methods for relatively simple problems whereas for more complex objective functions, the computation time was larger. On the other hand, the efficiency of the PCGA was higher than the current MOO techniques for all problems tested.;The new techniques were also applied to complex chemical engineering problems. The OBGA was applied to an industrial reactor producing ethylene oxide from ethylene. The optimization varied four of the reactor input parameters, and the selectivity, productivity and a safety factor related to the presence of oxygen in the reactor were maximized. From the optimization results, recommendations were made based on the ideal reactor operating conditions, and the control of key reactor parameters. The PCGA was applied to a PI controller model to develop new tuning methods based on the Pareto domain. The developed controller tuning methods were compared to several previously developed controller correlations. It was found that all previously developed controller correlations showed equal or worse performance than that based on the Pareto domain. The tuning methods were applied to a fourth order process and a process with a disturbance, and demonstrated excellent performance.
机译:在这项研究中,开发了两种新的多目标优化(MOO)技术。开发了两种新技术,即基于目标的梯度算法(OBGA)和主成分网格算法(PCGA),目的是相对于当前的MOO技术提高Pareto域逼近的准确性和效率。使用几种测试问题将这两种方法与当前的MOO技术进行了比较。对于所有研究的问题,发现OBGA和PCGA都系统地产生了比当前用于比较的MOO技术更准确的Pareto域。与相对简单的问题相比,OBGA比当前的MOO方法需要更少的计算时间,而对于更复杂的目标函数而言,计算时间更长。另一方面,对于所有测试的问题,PCGA的效率都高于当前的MOO技术。;新技术还应用于复杂的化学工程问题。将该OBGA应用于由乙烯生产环氧乙烷的工业反应器中。优化改变了反应器的四个输入参数,并且与反应器中氧的存在相关的选择性,生产率和安全系数被最大化。从优化结果中,根据理想的反应堆运行条件和关键反应堆参数的控制提出了建议。将PCGA应用于PI控制器模型,以基于Pareto域开发新的调整方法。将开发的控制器调整方法与几个以前开发的控制器相关性进行了比较。发现所有先前开发的控制器相关性都表现出与基于Pareto域的控制器相关性相同或更差的性能。将该调谐方法应用于四阶过程和具有干扰的过程,并且表现出优异的性能。

著录项

  • 作者

    Vandervoort, Allan.;

  • 作者单位

    University of Ottawa (Canada).;

  • 授予单位 University of Ottawa (Canada).;
  • 学科 Engineering Chemical.
  • 学位 M.A.Sc.
  • 年度 2011
  • 页码 129 p.
  • 总页数 129
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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