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Component-Based Machine Learning for Energy Performance Prediction by MultiLOD Models in the Early Phases of Building Design

机译:在建筑设计的早期阶段,通过MultiLOD模型基于组件的机器学习进行能源性能预测

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The application of building information modeling (BIM) in early design phases requires the support of different levels of detail (LOD). This allows scaling to be supported as an important activity of designing. Furthermore, to achieve well-performing solutions in terms of energy efficiency, it is necessary to consider energy performance in early design stages. Therefore, this paper presents a multiLOD modeling approach for the early phases of building design that integrates energy performance prediction based on component-based machine learning (ML) using artificial neural networks (ANN). A model structure with three adaptive LOD definitions is proposed to support the design process by a digital model that supports flexible scaling back and forth. By linking the ML models to the elements in this structure, components are formed that support quick and flexible modeling and energy performance prediction in the early building design process. The transformation rules flexibly link the ML components to all LOD. This approach was illustrated and validated by a test case with a medium-sized office building. The early design states of the case were reconstructed for the application of the method. For validation purposes, the results of the ML predictions for 60 different design configurations were compared to those of a conventional parametric full-detail simulation model. This comparison showed that the average error was no higher than 3.8% for heating and 3.5% for cooling.
机译:在早期设计阶段,建筑信息模型(BIM)的应用需要不同详细程度(LOD)的支持。这允许缩放作为设计的重要活动得到支持。此外,为了在能源效率方面实现性能良好的解决方案,有必要在设计初期就考虑能源性能。因此,本文提出了一种用于建筑设计早期阶段的multiLOD建模方法,该方法将基于基于组件的机器学习(ML)的能源性能预测与人工神经网络(ANN)集成在一起。提出了具有三个自适应LOD定义的模型结构,以通过支持来回灵活缩放的数字模型来支持设计过程。通过将ML模型链接到此结构中的元素,可以形成支持早期建筑设计过程中快速灵活的建模和能源性能预测的组件。转换规则将ML组件灵活地链接到所有LOD。通过使用中型办公楼的测试案例对这种方法进行了说明和验证。为该方法的应用重建了案例的早期设计状态。为了进行验证,将60种不同设计配置的ML预测结果与常规参数全细节仿真模型的结果进行了比较。该比较表明,加热的平均误差不高于3.8%,冷却的平均误差不高于3.5%。

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