Improving Cultural Heritage conservation: LSTM neural networks to effectively processing end-user’s maintenance requests

M. D’Orazio, G. Bernardini, E. Di Giuseppe
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引用次数: 0

Abstract

Preventive conservation of cultural heritage can avoid or minimize future damage, deterioration, loss and consequently, any invasive intervention. Recently, Machine Learning methods were proposed to support preventive conservation and maintenance plans, based on their ability to predict the future state of the built heritage by collected data. Several data sources were used, such as structural data and images depicting the evolution of the deterioration state, but till now textual information, exchanged by people living or working in historical buildings to require maintenance interventions, was not used to support conservation programmes. This work proposes a method to support preventive conservation programs based on the analysis of data collected into CMMS (computer maintenance management software). In a Cultural Heritage building in Italy, hosting a University Campus, data about end-user’s maintenance requests collected for 34 months were analysed, and LSTM neural networks were trained to predict the category of each request. Results show a prediction accuracy of 96.6%, thus demonstrating the potentialities of this approach in dynamically adapting the maintenance program to emerging issues.
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改善文物保护:LSTM神经网络有效处理终端用户的维修要求
文化遗产的预防性保护可以避免或尽量减少未来的损害、恶化、损失,从而避免任何侵入性的干预。最近,人们提出了机器学习方法来支持预防性保护和维护计划,基于机器学习方法能够通过收集的数据预测建筑遗产的未来状态。使用了几个数据源,例如结构数据和描述恶化状态演变的图像,但到目前为止,在历史建筑中生活或工作的人交换的文本信息要求进行维护干预,并未用于支持保护计划。本文提出了一种基于CMMS(计算机维护管理软件)中收集的数据分析的方法来支持预防性保护计划。在意大利的一座文化遗产建筑中,研究人员分析了收集了34个月的终端用户维护请求的数据,并训练LSTM神经网络来预测每个请求的类别。结果表明,预测精度为96.6%,表明了该方法在动态调整维修计划以适应新出现的问题方面的潜力。
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来源期刊
CiteScore
1.10
自引率
12.50%
发文量
9
审稿时长
20 weeks
期刊最新文献
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