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A case-based reasoning approach to the designing of building envelopes.

机译:基于案例的推理方法用于建筑围护结构的设计。

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摘要

Building-envelope design is an information-intensive process that requires experiential knowledge. Confronted with such a process, a human expert adds to well-known domain knowledge his own experience, or the experience of others, to support his reasoning process and guide him in typical situations.; The problem-solving paradigm where reasoning is supported by reusing past experiences is called Case-Based Reasoning ( CBR), and it was added to the Artificial Intelligence (AI) methodology following research in cognitive psychology. Instead of relying solely on general knowledge of a problem domain, or making associations along generalized relationships between problem descriptors and conclusions, CBR is able to utilize the specific knowledge of previous experienced problem situations called cases. CBR is a technology that solves problem by storing, retrieving, and adapting past cases. CBR systems have been proposed as an alternative to rule-based systems whenever the knowledge engineering process of eliciting rules is difficult or unmanageable. Instead, many experiences (or cases) with solutions, warnings, plans, and so forth are collected and new situations are related to a stored recollection of these past cases. New solutions are adapted from the old ones.; Research in Knowledge-Based Expert Systems ( KBES) for building-envelope design has shown a similar trend. While computerized assistance was imposed by the large amount of data to be processed, the success of rule-based implementations was hampered by the lack of abstract domain knowledge. Such fields where most of the knowledge is based on experience are often labeled as "weak theory domains," and they are prime candidates for adopting a CBR approach.; This thesis proposes a CBR framework for selecting the construction alternatives during the preliminary stage of the building-envelope design process. The methodology presented aims to find the most suitable design for a new building envelope from a library of prototypical building cases and adapts it to meet the requirements of ASHRAE Standard 90.1/1989 for energy efficient building design. The study outlines the potential benefits of using CBR technology and the key issues encountered while attempting to define the CBR model for building-envelope design. Developing a hierarchy of building-envelope components identifies cases and features for design. The envelope design problem is solved through decomposition, and by combining case-based and rule-based reasoning methods. In searching for a best match to achieve a higher degree of case filtering, a connection between case-based reasoning and Artificial Neural Networks (ANN) is proposed. An ANN-based filtering mechanism is designed to improve the quality of case-matching outcome while enforcing the economy of case representation.; The framework proposed by this research has been implemented into the CRED software system demonstrating the feasibility and advantages of using CBR methodology for building envelope design. CRED blends several Al techniques (such as ANN, CBR and KBES) while aiming to offer expert assistance to building design professionals for browsing and selecting building-envelope alternatives.
机译:建筑围护结构设计是一个信息密集型过程,需要经验知识。面对这样的过程,人类专家将自己的经验或他人的经验添加到众所周知的领域知识中,以支持他的推理过程并在典型情况下指导他。通过重用过去的经验来支持推理的解决问题范式称为基于案例的推理(CBR),并且在认知心理学研究之后将其添加到人工智能(AI)方法中。 CBR不仅可以仅依赖于问题域的一般知识,也不可以根据问题描述符和结论之间的一般关系进行关联,而可以利用以前经历过的问题情况(称为案例)的特定知识。 CBR是一种通过存储,检索和改编过去的案例来解决问题的技术。提出CBR系统是基于规则的系统的替代方法,只要引发规则的知识工程过程困难或无法管理。取而代之的是,收集了有关解决方案,警告,计划等的许多经验(或案例),并且新情况与这些过去案例的存储回忆有关。新的解决方案改编自旧的解决方案。基于知识的专家系统(KBES)用于建筑围护结构的研究也显示出类似的趋势。尽管要处理的大量数据强加了计算机辅助功能,但由于缺乏抽象域知识,因此妨碍了基于规则的实现的成功。这些大多数知识都是基于经验的领域,通常被标记为“弱理论领域”,它们是采用CBR方法的主要候选人。本文提出了一种在建筑围护结构设计的初期阶段选择施工方案的CBR框架。提出的方法旨在从原型建筑案例库中找到最适合新建筑围护结构的设计,并使之适应ASHRAE标准90.1 / 1989对节能建筑设计的要求。该研究概述了使用CBR技术的潜在好处以及在尝试为建筑围护设计定义CBR模型时遇到的关键问题。建立建筑围护结构组件的层次结构可确定设计的案例和功能。信封设计问题是通过分解以及结合基于案例和基于规则的推理方法来解决的。为了寻求最佳匹配以实现更高级别的案例过滤,提出了基于案例的推理与人工神经网络(ANN)之间的联系。一种基于ANN的过滤机制旨在提高案件匹配结果的质量,同时加强案件代表的经济性。这项研究提出的框架已被实施到CRED软件系统中,证明了使用CBR方法进行建筑围护结构设计的可行性和优势。 CRED融合了多种Al技术(例如ANN,CBR和KBES),旨在为建筑设计专业人士提供专家协助,以供他们浏览和选择建筑围护结构替代方案。

著录项

  • 作者

    Iliescu, Serban.;

  • 作者单位

    Concordia University (Canada).;

  • 授予单位 Concordia University (Canada).;
  • 学科 Engineering Civil.
  • 学位 Ph.D.
  • 年度 2000
  • 页码 204 p.
  • 总页数 204
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 建筑科学;
  • 关键词

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