Research on green building optimization design of smart city based on deep learning

Xufeng Liu, Fei Meng, Li Chen
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引用次数: 1

Abstract

With the advent of the era of "data revolution", the technical development trend of architecture in the future will change greatly; Under the common goal of global sustainable development, improving the relationship between architecture and man, architecture and nature, and realizing and improving the functional requirements of architecture in an efficient way is the main topic of architectural development today. The rapid development of artificial intelligence (AI) technology makes the application of deep learning in various fields possible. The most popular is the application of artificial intelligence to improve urban planning and design. Deep learning has been used in many cities to optimize traffic flow, reduce energy consumption and improve the efficiency of green buildings. Machine learning using multi-layer neurons is called deep learning. Each neuron receives input from other neurons through weighted connections, which are trained by algorithms based on historical data or real-world experience. This makes the prediction more accurate than traditional methods (such as linear regression model or linear regression model).
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基于深度学习的智慧城市绿色建筑优化设计研究
随着“数据革命”时代的到来,未来建筑的技术发展趋势将发生巨大变化;在全球可持续发展的共同目标下,改善建筑与人、建筑与自然的关系,有效地实现和提高建筑的功能需求,是当今建筑发展的主要课题。人工智能(AI)技术的快速发展使得深度学习在各个领域的应用成为可能。最受欢迎的是应用人工智能来改善城市规划和设计。深度学习已经在许多城市被用于优化交通流量,降低能源消耗和提高绿色建筑的效率。使用多层神经元的机器学习被称为深度学习。每个神经元通过加权连接接收来自其他神经元的输入,加权连接由基于历史数据或现实世界经验的算法训练。这使得预测比传统方法(如线性回归模型或线性回归模型)更准确。
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