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Multiobjective optimization of building design using artificial neural network and multiobjective evolutionary algorithms

机译:利用人工神经网络和多目标进化算法对建筑设计进行多目标优化

摘要

Building design is a very complex task, involving many parameters and conflicting objectives. In order to maximise the comfort and minimize the environmental impact, multiobjective optimization should be used. While some tools such as Genetic Algorithms (GA) exist, they are very seldom used in the industry, due to the large computational time they require. This thesis focuses on a specific approach called GAINN (Genetic Algorithm Integrating Neural Network), which combines the rapidity of evaluation of Artificial Neural Networks (ANN) with the optimization power of GAs. The thesis concentrates on a better handling of multiple objectives, in order to efficiently exploit the methodology and increase its accessibility for the non-expert. First, a Multiobjective Evolutionary Algorithm (MOEA), NSGA-II, has been selected and programmed in MATLAB. Then, two new MOEAs were developed, specifically designed to take advantage of GAINN fast evaluations. These two MOEAs have proven to be more efficient than NSGA-II on benchmark test functions, for a comparison based on a maximum runtime. In a second part of this thesis, developed MOEAs were used inside GAINN methodology to optimize the energy consumption and the thermal comfort in a residential building. This optimization was successful, and enabled significant improvements in terms of energy consumption and thermal comfort. It also enabled to illustrate very clearly the relation between these two objectives. This optimization however highlighted two limitations regarding the ANN, the number of training cases and the accuracy in the vicinity of optimal solutions. Finally, the developed algorithms were applied on a past optimization study, in order to highlight the improvements added to GAINN methodology by the use of MOEA.
机译:建筑设计是一项非常复杂的任务,涉及许多参数和相互矛盾的目标。为了最大化舒适度并最小化环境影响,应该使用多目标优化。尽管存在某些工具,例如遗传算法(GA),但由于它们需要大量的计算时间,因此在业界很少使用。本文重点研究一种称为GAINN(遗传算法集成神经网络)的特定方法,该方法将人工神经网络(ANN)的评估速度与GA的优化能力相结合。论文着重于更好地处理多个目标,以有效地利用该方法并为非专家增加其可及性。首先,已经选择了多目标进化算法(MOEA)NSGA-II并在MATLAB中进行了编程。然后,开发了两个新的MOEA,专门设计用于利用GAINN快速评估的优势。对于基于最大运行时间的比较,事实证明这两种MOEA在基准测试功能上比NSGA-II更为有效。在本文的第二部分,在GAINN方法中使用了发达的MOEA,以优化住宅建筑的能耗和热舒适性。这种优化是成功的,并且在能耗和热舒适性方面进行了重大改进。它还可以非常清楚地说明这两个目标之间的关系。然而,这种优化突出了关于人工神经网络的两个局限性,训练案例的数量以及最佳解决方案附近的准确性。最后,将开发的算法应用于过去的优化研究中,以强调使用MOEA对GAINN方法带来的改进。

著录项

  • 作者

    Magnier Laurent;

  • 作者单位
  • 年度 2008
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
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