Implementation of machine learning techniques for the quasi real-time blind and electric lighting optimization in a controlled experimental facility

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Abstract

Machine Learning techniques have been recently investigated as an alternative to the use of physical simulations, aiming to improve the response time of daylight and electric lighting performance-predictions. In this study, daylight and electric lighting predictor models are derived from daylighting RADIANCE simulations, aiming to provide visual comfort to office room occupants, with a reduced use of electric lighting. The aim is to integrate an intelligent control scheme, that, implemented on a small embedded 32-bit computer (Raspberry Pi), interfaces a KNX system for a quasi-real-time optimization of the building parameters. The present research constitutes a step towards the broader goal of achieving a unified approach, in which the daylight and electric lighting predictor models would be integrated in a Model Predictive Control. A verification of the ML performance is carried-out by comparing the model predictions to data obtained in monitoring sessions in autumn, winter and spring 2020-2021, resulting in an average MAPE of 19.3%.

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Basurto, C., Boghetti, R., Colombo, M., Papinutto, M., Nembrini, J., & Kämpf, J. H. (2021). Implementation of machine learning techniques for the quasi real-time blind and electric lighting optimization in a controlled experimental facility. In Journal of Physics: Conference Series (Vol. 2042). IOP Publishing Ltd. https://doi.org/10.1088/1742-6596/2042/1/012112

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