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Fa?ade deterioration prediction with the use of machine learning methods, based on objective parameters and e-participation data

机译:FA?基于客观参数和电子参与数据,使用机器学习方法的ade劣化预测

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Condition monitoring and timely repair of residential buildings is an important task when ensuring a comfortable life in cities. In the case of large metropolitan areas, it is a difficult task to perform continuous objective condition monitoring for tens of thousands of residential buildings by efforts of experts. However, residential infrastructure health can be predicted on the basis of indirect data. These can be objective building parameters or subjective data on citizens’ complaints about deterioration. In cities today, it is possible to collect such data in machine-readable form from various information systems. This article proposes a method to predict external deterioration of buildings on the basis of indirect data, using machine learning and SMILE Low-coding platform. Based on the results of method approbation, which used data of a metropolis, the significance of electronic participation data and objective parameters of objects for fa?ade deterioration forecast was assessed. Options for further research are proposed to improve the quality of deterioration predicting by using data on citizens’ complaints about infrastructure damage.
机译:在确保城市舒适的生活时,住宅建筑物的情况监测及及时维修是一项重要的任务。在大都市地区的情况下,通过专家努力,这是一项艰巨的任务,可以通过专家努力进行成千上万的住宅建筑物进行持续的客观状态监测。但是,可以基于间接数据预测住宅基础设施健康。这些可以是客观建立关于恶化的公民投诉的目标参数或主观数据。在今天的城市中,可以从各种信息系统中以机器可读形式收集此类数据。本文提出了一种方法来在间接数据的基础上预测建筑物的外部恶化,使用机器学习和微笑低编码平台。根据方法认可的结果,使用大都市的数据,评估了对FA的对象的电子参与数据和物体参数的重要性。评估了ade恶化预测。提出了进一步研究的选择,以提高通过关于公民对基础设施损伤的投诉数据的恶化预测的质量。

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