利用人工神经网络和空间语法技术来理解大众住宅设计参数

Veli Mustafa Yönder
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引用次数: 0

摘要

大众住宅的设计是一个复杂的过程,涉及到大量构件和参数的使用。设计领域不可避免地受到数字化的影响,这导致了计算设计模型、数据结构、人工智能和算法思维方式的激增。人工神经网络、空间语法方法、预定义规则将有助于形成方案设计过程的步骤,并建立一定的限制。在这项研究的范围内,预定义的指导方针被用来在设计中带来几何差异。在这个过程中使用了传统和数字仪器。基于人工神经网络模型和空间语法技术的方法被用于调查案例研究和开发原型。为了解影响大众住宅设计参数的因素,设计了人工神经网络模型。根据该模型的输出结果确定各参数的重要性百分比。此外,基于空间句法的方法对决策过程和基于反馈的设计都产生了重大影响。在这项研究中,使用了几种数字工具进行分析,如可见性图分析、基于节点的技术和等层分析。在结论部分,对所获得的各种原型进行了比较,讨论了空间语法分析的发现以及模型开发的各个阶段。
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USING ARTIFICIAL NEURAL NETWORKS AND SPACE SYNTAX TECHNIQUES TO UNDERSTAND MASS HOUSING DESIGN PARAMETERS
Abstract The design of mass housing is a complex process that involves the use of a large number of components and parameters. The field of design has unavoidably been changed by the impact of digitalization, which has resulted in the proliferation of computational design models, data structures, artificial intelligence, and an algorithmic way of thinking. Artificial neural networks, space syntax methodologies, predefined rules will help shape the steps of the schematic design process and establish certain limitations. Within the confines of this research, predefined guidelines were used to bring about geometric variances in the design of mass houses. Both traditional and digital instruments were utilized in the process. Methodologies based on artificial neural network models and space syntax techniques were utilized to investigate case studies and develop prototypes. The artificial neural network model is designed to understand the factors affecting mass housing design parameters. The importance percentages of the parameters were determined according to the outputs of this model. Besides, methodologies based on space syntax have had a significant impact, both on decision-making processes and on feedback-based design. In this study, several digital tools were used to analyze such as visibility graph analyzes, node-based techniques, and isovist analysis. In the section devoted to the conclusion, the comparison of the various prototypes that were obtained, the findings of the space syntax analysis, and the various stages of model development are discussed.
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