基于机器学习算法的建筑物健康状态识别

Peipei Zhang, Ningning Wang, Guokun Xie
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引用次数: 1

摘要

为了提高构建健康状态识别的结果,提出了一种基于机器学习算法的构建健康状态检测方法。首先分析建筑物健康状态识别的过程,找出影响建筑物健康状态识别效果的因素,然后选择建筑物健康状态识别建模的主要影响因素,并引入机器学习算法来描述建筑物健康状态与影响因素之间的内在联系,建立建筑物健康状态识别模型;最后通过具体的建筑物健康状态识别实例,分析了该方法的有效性和优越性。该方法对建筑物健康状态的平均识别率超过92%,而目前经典方法对建筑物健康状态的识别率不超过90%,而且识别速度更快,具有较好的实际应用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognition of Building Health Status Based on Machine Learning Algorithm
In order to improve the results of building health status recognition, a method of building health status detection based on machine learning algorithms is proposed. First analyze the process of building health status recognition, find the factors that affect the building health status recognition effect, and then select the main influencing factors for building health status recognition modeling, and introduce machine learning algorithms to describe the building health status and influencing factors The internal connection between the building health status recognition model is established, and finally the effectiveness and superiority of the method are analyzed using specific building health status recognition examples. The average recognition rate of the building health status exceeds 92% while the current classic The method's recognition rate of building health status does not exceed 90%, and the recognition speed is faster, which has better practical application value.
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