Noemi Manara, Lorenzo Rosset, Francesco Zambelli, Andrea Zanola, A. Califano
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引用次数: 2
摘要
目的在遗产科学领域,特别是应用于由有机吸湿材料制成的建筑和工艺品,分析小气候一直是极其重要的。特别是,在许多情况下,对室外/室内小气候的了解可能会支持历史建筑保护和保存事项的决策过程。这些知识通常是通过开展长期耗时的监测活动获得的,这些活动可以收集大气和气候数据。设计/方法/方法有时,由于历史建筑位置偏远、传感器自然老化或缺乏对数据下载过程的连续检查,收集的时间序列可能会被破坏、不完整和/或受到传感器错误的影响。因此,在这项工作中,提出了一种将室内小气候重建为传统建筑的创新方法,只需了解室外小气候。该方法基于使用称为变分自动编码器(VAE)的机器学习工具,该工具能够重建时间序列和/或填补数据空白。发现所提出的方法是使用在挪威中世纪木制遗产建筑Ringebu Stave Church收集的数据来实施的。在一年中的绝大多数时间里,重建教会内部自然气候的现实时间序列已经成功实施。原创性/价值在现有文献的框架内讨论了这部作品的新颖性。这项工作探索了机器学习工具与传统工具相比的潜力,提供了一种能够可靠地填补时间序列中缺失数据的方法。
Natural climate reconstruction in the Norwegian stave churches through time series processing with variational autoencoders
PurposeIn the field of heritage science, especially applied to buildings and artefacts made by organic hygroscopic materials, analyzing the microclimate has always been of extreme importance. In particular, in many cases, the knowledge of the outdoor/indoor microclimate may support the decision process in conservation and preservation matters of historic buildings. This knowledge is often gained by implementing long and time-consuming monitoring campaigns that allow collecting atmospheric and climatic data.Design/methodology/approachSometimes the collected time series may be corrupted, incomplete and/or subjected to the sensors' errors because of the remoteness of the historic building location, the natural aging of the sensor or the lack of a continuous check of the data downloading process. For this reason, in this work, an innovative approach about reconstructing the indoor microclimate into heritage buildings, just knowing the outdoor one, is proposed. This methodology is based on using machine learning tools known as variational auto encoders (VAEs), that are able to reconstruct time series and/or to fill data gaps.FindingsThe proposed approach is implemented using data collected in Ringebu Stave Church, a Norwegian medieval wooden heritage building. Reconstructing a realistic time series, for the vast majority of the year period, of the natural internal climate of the Church has been successfully implemented.Originality/valueThe novelty of this work is discussed in the framework of the existing literature. The work explores the potentials of machine learning tools compared to traditional ones, providing a method that is able to reliably fill missing data in time series.
期刊介绍:
The International Journal of Building Pathology and Adaptation publishes findings on contemporary and original research towards sustaining, maintaining and managing existing buildings. The journal provides an interdisciplinary approach to the study of buildings, their performance and adaptation in order to develop appropriate technical and management solutions. This requires an holistic understanding of the complex interactions between the materials, components, occupants, design and environment, demanding the application and development of methodologies for diagnosis, prognosis and treatment in this multidisciplinary area. With rapid technological developments, a changing climate and more extreme weather, coupled with developing societal demands, the challenges to the professions responsible are complex and varied; solutions need to be rigorously researched and tested to navigate the dynamic context in which today''s buildings are to be sustained. Within this context, the scope and coverage of the journal incorporates the following indicative topics: • Behavioural and human responses • Building defects and prognosis • Building adaptation and retrofit • Building conservation and restoration • Building Information Modelling (BIM) • Building and planning regulations and legislation • Building technology • Conflict avoidance, management and disputes resolution • Digital information and communication technologies • Education and training • Environmental performance • Energy management • Health, safety and welfare issues • Healthy enclosures • Innovations and innovative technologies • Law and practice of dilapidation • Maintenance and refurbishment • Materials testing • Policy formulation and development • Project management • Resilience • Structural considerations • Surveying methodologies and techniques • Sustainability and climate change • Valuation and financial investment