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Use of Sensors and Analyzers Data for Load Forecasting: A Two Stage Approach

机译:传感器和分析仪数据用于负荷预测的两阶段方法

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摘要

The increase in sensors in buildings and home automation bring potential information to improve buildings’ energy management. One promissory field is load forecasting, where the inclusion of other sensors’ data in addition to load consumption may improve the forecasting results. However, an adequate selection of sensor parameters to use as input to the load forecasting should be done. In this paper, a methodology is proposed that includes a two-stage approach to improve the use of sensor data for a specific building. As an innovation, in the first stage, the relevant sensor data is selected for each specific building, while in the second stage, the load forecast is updated according to the actual forecast error. When a certain error is reached, the forecasting algorithm (Artificial Neural Network or K-Nearest Neighbors) is trained with the most recent data instead of training the algorithm every time. Data collection is provided by a prototype of agent-based sensors developed by the authors in order to support the proposed methodology. In this case study, data over a period of six months with five-minute time intervals regarding eight types of sensors are used. These data have been adapted from an office building to illustrate the advantages of the proposed methodology.
机译:建筑物中传感器的增加和家庭自动化带来了潜在的信息,以改善建筑物的能源管理。一个重要的领域是负荷预测,除负荷消耗外,还包括其他传感器的数据可能会改善预测结果。但是,应该对传感器参数进行适当的选择以用作负荷预测的输入。在本文中,提出了一种方法,该方法包括两阶段方法,以针对特定建筑物改进传感器数据的使用。作为一项创新,在第一阶段,为每个特定建筑物选择相关的传感器数据,而在第二阶段,根据实际的预测误差更新负荷预测。当达到某个错误时,将使用最新数据训练预测算法(人工神经网络或K最近邻),而不是每次都训练该算法。由作者开发的基于代理的传感器原型提供数据收集,以支持所提出的方法。在本案例研究中,使用了六个月期间,五分钟时间间隔内有关八种传感器的数据。这些数据已从办公楼改编,以说明所建议方法的优势。

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