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AI-Powered Generative Design for Efficient Park Space Creation


Kernekoncepter
This study proposes an AI-powered generative design framework that can rapidly generate realistic and customized 3D park models from basic site conditions, enabling efficient and interactive park space design.
Resumé

The study presents a comprehensive framework for generating park space designs using a three-phase approach:

  1. Plan Generation Design: An automated plan generation system is developed based on deep learning technology, capable of rapidly generating a large number of complete design layout drawings solely constrained by the layout of internal park elements.

  2. 3D Park Automated Generation Design: Building upon the data generated by the plan generation system, a parametric modeling system is developed to swiftly construct three-dimensional park models.

  3. Analysis and Visualization: A model processing system is constructed to enable rapid analysis and modification of the generated three-dimensional parks, producing visual renderings from different perspectives.

The key highlights of the framework include:

  • Rapid generation of park layout designs that meet the designer's perspective based on site conditions, leveraging AI-assisted technology.
  • Vectorization and three-dimensionalization of various types of landscape design elements while preserving design fidelity.
  • Integration of an analysis and visualization module that allows for landscape analysis on the generated 3D models and produces node effect diagrams, enabling real-time design modifications.

The experimental results demonstrate the effectiveness of the proposed framework in generating park designs of different scales, with diverse vegetation arrangements and element layouts. The generated 3D models are consistent with the layout plans and can be further refined and rendered for practical use.

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Statistik
The study trained a CycleGAN model using 194 pairs of park plan design images and their corresponding layout labels. The generated layout plans were then processed to extract vector data for different design elements, including buildings, pavement, water, green land, roads, and plantings. The extracted vector data was used to parametrically generate 3D park models using the Grasshopper platform.
Citater
"This system generates design plans based on the topological relationships of landscape elements, then vectorizes the plan element information, and uses Grasshopper to generate three-dimensional models while synchronously fine-tuning parameters, rapidly completing the entire process from basic site conditions to model effect analysis." "Experimental results show that: (1) the system, with the aid of AI-assisted technology, can rapidly generate space green space schemes that meet the designer's perspective based on site conditions; (2) this study has vectorized and three-dimensionalized various types of landscape design elements based on semantic information; (3) the analysis and visualization module constructed in this study can perform landscape analysis on the generated three-dimensional models and produce node effect diagrams, allowing users to modify the design in real time based on the effects, thus enhancing the system's interactivity."

Vigtigste indsigter udtrukket fra

by Ran Chen,Zek... kl. arxiv.org 04-26-2024

https://arxiv.org/pdf/2404.16067.pdf
Layout2Rendering: AI-aided Greenspace design

Dybere Forespørgsler

How can this generative design framework be extended to incorporate more advanced landscape design elements, such as detailed vegetation species and ecological considerations?

In order to incorporate more advanced landscape design elements into the generative design framework, such as detailed vegetation species and ecological considerations, several enhancements can be implemented: Advanced Data Integration: Integrate databases or APIs containing detailed information on vegetation species, including growth patterns, environmental requirements, and visual characteristics. This data can be used to inform the generation of realistic and diverse vegetation layouts in the park designs. Ecological Modeling: Incorporate ecological modeling principles into the generative design process to simulate the interactions between different elements in the park ecosystem. This can help in creating designs that are not only visually appealing but also ecologically sustainable. Machine Learning Algorithms: Utilize machine learning algorithms to analyze large datasets of vegetation species and ecological factors, allowing the system to learn and generate designs that mimic natural ecosystems more accurately. Parametric Design Parameters: Develop parametric design parameters that allow for the customization of vegetation species, densities, and distributions based on ecological requirements. This would enable designers to input specific ecological considerations and constraints into the generative design system. Feedback Mechanisms: Implement feedback mechanisms that allow for iterative improvements based on ecological performance metrics. This would enable the system to learn from past designs and optimize future iterations for ecological sustainability. By incorporating these enhancements, the generative design framework can evolve to create more sophisticated and ecologically conscious landscape designs that consider detailed vegetation species and ecological considerations.

What are the potential limitations or challenges in applying this framework to real-world park design projects with complex site conditions and stakeholder requirements?

When applying the generative design framework to real-world park design projects with complex site conditions and stakeholder requirements, several limitations and challenges may arise: Data Accuracy and Availability: The framework heavily relies on accurate and comprehensive data inputs. Obtaining detailed and up-to-date data on complex site conditions, such as topography, soil composition, and existing vegetation, can be challenging and may impact the accuracy of the generated designs. Stakeholder Engagement: Incorporating diverse stakeholder requirements and preferences into the generative design process can be complex. Balancing the needs of various stakeholders, such as local communities, environmental agencies, and urban planners, while maintaining design coherence can be a significant challenge. Complexity of Design Elements: Real-world park designs often involve intricate design elements that go beyond basic geometric shapes. Incorporating complex architectural structures, water features, and natural elements into the generative design framework may require advanced algorithms and modeling techniques. Regulatory Compliance: Ensuring that the generated designs comply with local regulations, zoning laws, and environmental standards can be a challenge. The framework must be adaptable to incorporate regulatory constraints and guidelines into the design process. Interpretation of Site Conditions: Complex site conditions, such as historical significance, cultural heritage, and ecological sensitivity, may require human interpretation and judgment. The framework may struggle to capture the nuanced understanding and contextual considerations that human designers bring to the table. Addressing these limitations and challenges would require a multidisciplinary approach, involving collaboration between designers, data scientists, stakeholders, and regulatory bodies to ensure the successful application of the generative design framework in real-world park design projects.

How could the integration of this generative design system with other urban planning and design tools, such as GIS and BIM, further enhance the efficiency and effectiveness of the park design process?

Integrating the generative design system with other urban planning and design tools, such as Geographic Information Systems (GIS) and Building Information Modeling (BIM), can significantly enhance the efficiency and effectiveness of the park design process in the following ways: Data Integration: By connecting the generative design system with GIS, designers can access geospatial data on terrain, land use, and environmental factors, enabling more informed decision-making during the design process. This integration allows for the seamless incorporation of real-world site conditions into the generative design framework. Visualization and Analysis: Combining the generative design system with BIM software enables designers to create detailed 3D models of park designs, incorporating architectural elements, infrastructure, and landscaping features. This integration facilitates better visualization and analysis of the design proposals, enhancing communication with stakeholders and decision-makers. Parametric Design: Leveraging the parametric capabilities of BIM tools, designers can create intelligent models that respond to changes in design parameters. Integrating this functionality with the generative design system allows for dynamic adjustments to the park design based on various criteria, such as cost, sustainability, and user preferences. Collaborative Workflows: Integration with collaborative platforms and project management tools streamlines communication and coordination among multidisciplinary teams involved in the park design process. This ensures that all stakeholders have access to the latest design iterations, feedback, and updates, promoting efficient collaboration and decision-making. Performance Analysis: By linking the generative design system with simulation tools within BIM software, designers can conduct performance analysis on aspects such as daylighting, energy efficiency, and environmental impact. This integration enables designers to optimize park designs for sustainability and functionality. Overall, the integration of the generative design system with GIS and BIM tools creates a comprehensive and interconnected design environment that enhances the efficiency, accuracy, and quality of park design projects. It enables designers to leverage spatial data, parametric modeling, visualization capabilities, and performance analysis tools to create innovative and sustainable park designs that meet the needs of diverse stakeholders.
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