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Using self-adaptive optimisation methods to perform sequential optimisation for low-energy building design

机译:使用自适应优化方法对低能耗建筑设计进行顺序优化

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摘要

The use of software tools to aid building design, or to show compliance, is now commonplace. This has motivated investigations into the potential of optimisation algorithms, used in such software, to automatically optimise designs, or to generate a variety of near-optimal designs. Optimisation always requires the evaluation of a large number of possibilities, before a final selection is made. Normally when using a building simulator to assess the quality of designs, all possible solutions in the early stages of optimisation (when there is a high volume of choices) are evaluated using the same tool, so that the computational time for the assessment of each of the possibilities is the same as the time required for the final, refined choice of solutions. This paper suggests using a method of evaluation which changes as the algorithm evolves: whereas accuracy is initially compromised to improve the speed of the algorithm, the process is subsequently altered to produce a more accurate, evaluation process. This is a case of dynamic optimisation that requires an algorithm able to cope with changes in the objective landscape. A self-adaptive evolutionary strategy has been chosen, for its ability to "learn" about changes, and the influence of the different decision variables in the objective function as they arise. The results show that this method can reach the same optimal design, with substantially lower computational time than the optimisation methods found in the literature.
机译:现在,使用软件工具辅助建筑设计或证明合规性已经很普遍了。这激发了对用于这种软件中的自动优化设计或生成各种接近最优设计的优化算法潜力的研究。在进行最终选择之前,优化总是需要评估大量可能性。通常,当使用建筑模拟器来评估设计质量时,将使用相同的工具评估在优化的早期阶段(当有大量选择时)所有可能的解决方案,以便评估每个模型的计算时间。可能性与最终精炼解决方案所需的时间相同。本文建议使用一种评估方法,该方法会随着算法的发展而变化:尽​​管最初为了提高算法速度而降低了准确性,但随后更改了过程以产生更准确的评估过程。这是动态优化的情况,需要一种能够应对客观环境变化的算法。选择了一种自适应进化策略,因为它具有“学习”变化的能力,以及不同决策变量对目标函数的影响。结果表明,与文献中的优化方法相比,该方法可以达到相同的最佳设计,并且所需的计算时间大大缩短。

著录项

  • 来源
    《Energy and Buildings》 |2014年第10期|18-29|共12页
  • 作者单位

    College of Engineering, Mathematics and Physical Sciences, University of Exeter, UK, The Innovation Centre (Phase 1), University of Exeter, Rennes Drive, Exeter, Devon EX4 4RN, UK;

    Department of Architecture and Civil Engineering, University of Bath, UK;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Optimisation; Evolutionary strategy; Dynamic; Sequential; Energy; Building;

    机译:优化;进化策略;动态;顺序能源;建造;

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