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Toolbox for development and validation of grey-box building models for forecasting and control

机译:用于开发和验证灰箱建筑模型以进行预测和控制的工具箱

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As automatic sensing and information and communication technology get cheaper, building monitoring data becomes easier to obtain. The availability of data leads to new opportunities in the context of energy efficiency in buildings. This paper describes the development and validation of a data-driven grey-box modelling toolbox for buildings. The Python toolbox is based on a Modelica library with thermal building and Heating, Ventilation and Air-Conditioning models and the optimization framework in JModelica.org. The toolchain facilitates and automates the different steps in the system identification procedure, like data handling, model selection, parameter estimation and validation. To validate the methodology, different grey-box models are identified for a single-family dwelling with detailed monitoring data from two experiments. Validated models for forecasting and control can be identified. However, in one experiment the model performance is reduced, likely due to a poor information content in the identification data set.
机译:随着自动感应,信息和通信技术的价格越来越便宜,建筑物监控数据也变得越来越容易获得。数据的可用性在建筑物的能源效率方面带来了新的机会。本文介绍了用于建筑物的数据驱动灰箱建模工具箱的开发和验证。 Python工具箱基于Modelica库,该库具有热建筑,供热,通风和空调模型以及JModelica.org中的优化框架。该工具链可促进并自动执行系统识别过程中的不同步骤,例如数据处理,模型选择,参数估计和验证。为了验证该方法,为单户住宅确定了不同的灰箱模型,其中包含来自两个实验的详细监控数据。可以确定用于预测和控制的经过验证的模型。但是,在一个实验中,模型性能会降低,这很可能是由于标识数据集中的信息内容不足所致。

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