Transfer learning for forecasting hourly indoor air temperatures of buildings with electrochromic glass

IF 0.8 0 ARCHITECTURE Japan Architectural Review Pub Date : 2024-02-08 DOI:10.1002/2475-8876.12434
Thanyalak Srisamranrungruang, Kyosuke Hiyama
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Abstract

This study aimed to employ transfer learning with a fully connected feed-forward neural network for forecasting the indoor air temperatures of adaptive buildings with electrochromic (EC) glass. This study predicted indoor air temperatures for an intermediate season requiring heating and cooling. Forecasting indoor air temperature can help control the EC glass to avoid overheating the interiors. The forecasting times for the predictions varied from 1 to 5 h between early morning and noon, which is when the interior is often overheated. The pretrained model was created using multilayer perceptron learning with the simulation data of a source building in Tokyo and transfer learning with feature-based extraction models that used datasets from the simulation of target buildings in Tokyo and Fukuoka. Further, the effects of facade orientation were investigated. The root mean squared error (RMSE) of the pretrained model varied from 0.027 to 0.935 when predicting the indoor air temperatures from 1 to 5 h. The RMSE of the transfer learning models using the pretrained model with the same and different orientations varied from 0.022 to 1.205 and from 0.9301 to 2.566. This study demonstrated that utilizing predicted indoor air temperatures to control EC glass can help protect against overheating.

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利用迁移学习预测装有电致变色玻璃的建筑物的每小时室内空气温度
本研究旨在利用全连接前馈神经网络的迁移学习来预测装有电致变色(EC)玻璃的自适应建筑的室内空气温度。该研究预测了需要供暖和制冷的中间季节的室内空气温度。预测室内空气温度有助于控制电致变色玻璃,避免室内过热。预测时间从清晨到中午的 1 到 5 小时不等,而这段时间正是室内经常过热的时候。预训练模型是通过多层感知器学习和转移学习创建的,前者使用了东京一栋源建筑的模拟数据,后者使用了东京和福冈两地目标建筑模拟数据集的特征提取模型。此外,还研究了立面朝向的影响。在预测 1 至 5 小时的室内空气温度时,预训练模型的均方根误差(RMSE)从 0.027 到 0.935 不等;使用相同和不同朝向的预训练模型的迁移学习模型的均方根误差从 0.022 到 1.205 不等,从 0.9301 到 2.566 不等。这项研究表明,利用预测的室内空气温度来控制欧共体玻璃有助于防止过热。
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来源期刊
CiteScore
1.20
自引率
11.10%
发文量
58
审稿时长
15 weeks
期刊最新文献
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