具有简单建筑特征的办公室眩光预测的机器学习模型

IF 0.7 4区 艺术学 0 ARCHITECTURE Journal of Green Building Pub Date : 2022-09-01 DOI:10.3992/jgb.17.4.79
Sanjeev Kumar T M, C. P. Kurian, S. Colaco, Veena Mathew
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引用次数: 0

摘要

日光眩光指数(Daylight glare index, DGI)、日光眩光概率(Daylight glare probability, DGP)和眩光感觉(glare-sensation, GS)预测模型是目前广泛应用于评价日光空间中居住者视觉舒适度的指标。本文介绍了预测这些眩光指数的机器学习模型的开发和实现。训练和验证数据集是从装有电动百叶窗和可调光LED灯具的测试室内的传感器收集的。预测和响应数据来自传统传感器、数码相机和EVALGLARE软件。回归模型预测的是DGI和DGP,分类模型预测的是GS。除了标准的统计误差评估指标外,假设检验还评估回归/分类模型的性能。结果表明,集合树(Ensemble Tree, ET)模型在预测眩光指数方面具有较高的精度。该技术试图简化现有的传统眩光指数(GI)估计方法。实时强光预测和适当的遮阳窗控制相结合,增加了居住者的视觉舒适度。采用基于高动态图像的系统对传统传感器的测量结果进行验证。
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MACHINE LEARNING MODEL FOR GLARE PREDICTION IN OFFICES WITH SIMPLE ARCHITECTURAL FEATURES
Daylight glare index (DGI), daylight glare probability (DGP) and glare-sensation (GS) predictive models are the widely used glare indices for the assessment of occupant visual comfort in daylit spaces. This paper presents the development and implementation of Machine Learning models to predict these glare indices. The training and validation data sets were collected from sensors incorporated in the test room with motorized Venetian Blinds and dimmable LED luminaires. Predictor and response data were obtained from conventional sensors, digital cameras, and the EVALGLARE Software. The regression models predict DGI and DGP, whereas the classification model predicts GS. In addition to standard statistical error evaluation metrics, the hypothesis test assesses the performance of regression/classification models. The results reveal that Ensemble Tree (ET) models are highly accurate at predicting glare indices. The proposed technique attempts to simplify the existing traditional Glare Index(GI) estimation method. The combination of real-time daylight glare prediction and suitable window shading control increases occupant visual comfort. A high dynamic image-based system is employed to verify the measurements made using traditional sensors.
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来源期刊
CiteScore
2.30
自引率
7.10%
发文量
36
期刊介绍: The purpose of the Journal of Green Building is to present the very best peer-reviewed research in green building design, construction, engineering, technological innovation, facilities management, building information modeling, and community and urban planning. The Research section of the Journal of Green Building publishes peer-reviewed articles in the fields of engineering, architecture, construction, construction management, building science, facilities management, landscape architecture, interior design, urban and community planning, and all disciplines related to the built environment. In addition, the Journal of Green Building offers the following sections: Industry Corner that offers applied articles of successfully completed sustainable buildings and landscapes; New Directions in Teaching and Research that offers guidance from teachers and researchers on incorporating innovative sustainable learning into the curriculum or the likely directions of future research; and Campus Sustainability that offers articles from programs dedicated to greening the university campus.
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