2018
DOI: 10.1177/1477153518792586
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Climate model based test workbench for daylight-artificial light integration

Abstract: Energy efficiency strategies based on daylight-artificial light integration have grown exponentially in recent years. Taking into account the dynamics to be considered for control and the dependence on natural and occupancy factors, it is better to use a test workbench prior to setting up the final control scheme. This work describes a climate model based test workbench for the real time testing of the control of luminaires and window blinds in a daylight-artificial light integrated scheme. The established cli… Show more

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Cited by 10 publications
(27 citation statements)
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“…These are also used to examine the light level for the developed predictive models and the baseline fuzzy-based model. 21 Finally, we found that both the GPR and the BSVR models performed well for all the cases, but when the models were cross-validated for the east, west and north side windows, the BSVR performed well, and for the south side window, both the BSVR and the GPR models performed well. These models work from the industrial point of view to implement controllers in a real-time environment by reducing the complexity.…”
Section: Introductionmentioning
confidence: 73%
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“…These are also used to examine the light level for the developed predictive models and the baseline fuzzy-based model. 21 Finally, we found that both the GPR and the BSVR models performed well for all the cases, but when the models were cross-validated for the east, west and north side windows, the BSVR performed well, and for the south side window, both the BSVR and the GPR models performed well. These models work from the industrial point of view to implement controllers in a real-time environment by reducing the complexity.…”
Section: Introductionmentioning
confidence: 73%
“…Some studies have shown that automated control of shading helps to improve the energy efficiency and gives comfort to the occupants. 21,22 Also, other studies have suggested that a modelbased predictive control of shading devices using real-time data and robust control schemes has the potential to improve the indoor environment and reduce lighting energy use. [23][24][25][26][27] Nowadays, adaptive predictive control strategies for shading and lighting control based on the occupant's preference are gaining popularity in research.…”
Section: Introductionmentioning
confidence: 99%
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“…The proposed system shown in Fig.2 consists of 100 sensor nodes installed in a floor of a building. The network is divided into four occupancy zones, each with its own Passive Infrared [PIR] Occupancy Sensors, two LED Luminaires and motorized window blinds [17,18]. One of the luminaires in each zone is placed close to a window, thus is exposed to more natural light than the other.…”
Section: System Descriptionmentioning
confidence: 99%