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Self-learning predictive control using relational-based fuzzy logic.

机译:使用基于关系的模糊逻辑的自学习预测控制。

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摘要

This thesis documents the development of a Model-based Self-Learning Predictive Fuzzy Logic (MSPF) Controller for use in applications where the inherent uncertainty in the process model and/or data precludes the use of conventional discrete control algorithms. This work required not only a translation of the concepts of discrete model-based control systems into the fuzzy domain but also significant extensions to fuzzy logic theory.;The extensions to fuzzy logic theory in this thesis pertain mostly to the max-product composition, which several authors have shown to produce better results than the widely used max-min composition. The superiority of the max-product composition was also confined in this thesis for a variety of process oriented applications. The new theory developed for the max-product composition includes eigen fuzzy stability, powers of ;Since the max-product composition has not been used extensively, there was very little existing literature on effective identification algorithms for this composition. This thesis therefore reviews and compares several important fuzzy identification strategies for the max-min composition and then applies them using the max-product composition. Based on this work, a new identification algorithm was developed that is better, from a least squares perspective, than the existing algorithms when applies to the Box-Jenkins gas furnace data. The new identification algorithm also includes a new procedure that permits an identification aigorithm to adapt quickly to process changes while maintaining a complete solution.;Most of the rule-based fuzzy logic controller designs in the literature are based on a ;The MSPF controller gave very good closed-loop performance in simulation using underdamped, overdamped and non-linear processes plus processes with large time delays and/or disturbances. A direct comparison of the MSPF controller versus a conventional discrete: it PI controller using a very (smoothly) non-linear process showed that (based on minimization of the discrete control error) the MSPF controller gave better performances over the full operating domain than PI control even when three-level gain scheduling was used.;The development and evaluating of the Self-Learning Predictive Fuzzy Logic Controller described above is complemented by a extensive fuzzy logic tutorial which includes a literature survey and examples for each aspect of the controller development.
机译:本论文记录了基于模型的自学习预测模糊逻辑(MSPF)控制器的开发,该控制器用于过程模型和/或数据的固有不确定性无法使用常规离散控制算法的应用中。这项工作不仅需要将基于离散模型的控制系统的概念转换为模糊域,而且还需要对模糊逻辑理论进行重大扩展。;本论文对模糊逻辑理论的扩展主要涉及最大乘积的构成,即几位作者已经证明,与广泛使用的最大-最小成分相比,它可以产生更好的结果。在本论文中,max-product组合的优越性还局限于各种面向过程的应用。为最大积构成开发的新理论包括本征模糊稳定性,幂次幂;由于最大积构成尚未得到广泛使用,因此关于这种构成的有效识别算法的文献很少。因此,本文回顾并比较了几种关于最大-最小组成的重要模糊识别策略,然后使用最大乘积组成对其进行了应用。基于这项工作,从最小二乘角度出发,开发了一种新的识别算法,该算法在应用于Box-Jenkins煤气炉数据时比现有算法更好。新的识别算法还包括一个新的过程,该过程允许识别算法快速适应过程变化,同时保持完整的解决方案。文献中大多数基于规则的模糊逻辑控制器设计都基于; MSPF控制器给出了使用欠阻尼,过阻尼和非线性过程以及具有较大时间延迟和/或干扰的过程,在仿真中具有良好的闭环性能。 MSPF控制器与常规离散控制器的直接比较:使用非常(平滑)非线性过程的PI控制器显示(基于离散控制误差的最小化),MSPF控制器在整个工作范围内的性能均优于PI甚至在使用三级增益调度时也可进行控制。;上述自学习式预测模糊逻辑控制器的开发和评估得到了广泛的模糊逻辑教程的补充,该教程包括有关控制器开发各个方面的文献调查和示例。

著录项

  • 作者

    Bourke, Mary Margaret.;

  • 作者单位

    University of Alberta (Canada).;

  • 授予单位 University of Alberta (Canada).;
  • 学科 Engineering Electronics and Electrical.;Computer Science.;Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 1995
  • 页码 411 p.
  • 总页数 411
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 老年病学;
  • 关键词

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