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Building lighting energy consumption prediction for supporting energy data analytics

机译:用于支持能源数据分析的照明能耗预测

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Recent studies emphasized the importance of building energy consumption prediction for improved decision making. Data-driven models are being widely used for building energy consumption prediction. Among these, support vector machines (SVM) gained a lot of popularity due to its capability of handling non-linear problems. This paper presents an SVM-based lighting energy consumption prediction model for office buildings. For this study, an office building in Philadelphia, PA was instrumented and the required lighting energy consumption data to train the model were collected from this building. The developed model predicts daily lighting energy consumption based on two features: daily average sky cover and day type. The results showed that the developed model could be a good baseline model for predicting lighting energy consumption, which could be further extended by taking occupant behavior into account.
机译:最近的研究强调了建设能源消耗预测对改进决策的重要性。数据驱动的模型广泛用于构建能源消耗预测。其中,由于其处理非线性问题的能力,支持向量机(SVM)获得了很多人气。本文介绍了办公楼的基于SVM的照明能耗预测模型。对于这项研究,PA的费城的办公大楼被仪器化了,并从该建筑中收集了培训模型的所需照明能耗数据。开发模型基于两个特征预测日常照明能耗:每日平均天空覆盖和日型。结果表明,开发的模型可以是用于预测照明能耗的良好基线模型,这可以通过考虑乘员行为来进一步扩展。

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