Using identification method to modelling short term luminous flux depreciation of LED luminaire to reducing electricity consumption

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作者
Roman Sikora
Przemysław Markiewicz
Ewa Korzeniewska
机构
[1] Lodz University of Technology,Institute of Electrical Power Engineering
[2] Lodz University of Technology,Institute of Electrical Engineering Systems
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摘要
Reducing electricity consumption is currently one of the most significant global issues. Luminaires and light sources are characterised by relatively low rated power values. However, due to their high number, they account for a noticeable share of the total volume of electricity consumption. When the LED lamp/luminaire is switched-on, it emits a higher luminous flux and receives more power from the mains supply than when the thermal conditions have stabilized. This phenomenon is called short-term luminous flux depreciation. The lighting design process on photometric data obtained for steady-state operating conditions is based, on once the luminous flux has stabilized. Therefore, it is possible to design the control algorithm of the LED luminaire in such a way as to reduce this phenomenon, which will result in measurable savings of electrical energy. The paper proposes the use of a method to identify the short-term luminous flux depreciation of LED luminaires. The model was then used to simulate the operation of a control algorithm limiting the phenomenon of short-term luminous flux depreciation.
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