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Location Prediction Approach for Context-Aware Energy Management System

机译:情境感知能源管理系统的位置预测方法

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Given that over the past few decades energy demand has been continuously increasing and the context-aware energy management systems for renewable sources and electrical loads have become much more sophisticated, the paper presents the application of location prediction methods in such systems. CAEMSs are highly distributed, can manage large amounts of energy-related data and have to be able to react rapidly and intelligently when conditions change, leading to real-time challenges. We address one of the most valuable context prediction tasks - learning human habits and behavioral patterns for indoor location prediction. The motivation behind choosing this problem is that knowledge of the location, presumably entered by the user, can initiate several preparation routines to maximize comfort and minimize energy consumption. Automatic adjustment of light or temperature, by heating rooms prior to their occupation, can be stated as an example of such a routine.
机译:鉴于在过去的几十年中,能源需求一直不断增加,并且对可再生源和电负载的环境感知能源管理系统变得更加复杂,纸张呈现在这种系统中的位置预测方法的应用。 CAEMS是高度分布的,可以管理大量的能量相关数据,并且在条件变化时必须能够快速且智能地反应,导致实时挑战。 我们解决了最有价值的背景预测任务之一 - 学习室内位置预测的人类习惯和行为模式。 选择这个问题的动机是了解所需的位置,可能由用户输入,可以启动几种准备例程以最大限度地提高舒适性并最小化能量消耗。 通过在占用前的加热室自动调节光或温度,可以表示为这种常规的一个例子。

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