使用自然语言处理类比的智能家居数据解释

Matthias Melzer, Jan Dünnweber, Timo Baumann
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引用次数: 1

摘要

智能家居发展的最新进展导致了各种各样的设备的可用性,通过手势和语音控制或全自动操作提供了高水平的便利。许多智能家电还通过在一段时间不使用后自动关闭电源来解决安全性和节电问题。然而,在一个典型的家庭中,仍有许多设备本身并不“智能”,或者主要不是电动的(比如供暖系统)。我们通过识别涉及在电流数据中使用多个设备的过程来解决节约方面的问题,正如现代家庭中的智能电表所捕获的那样,而不是专注于单个电器。因此,我们引入了一种新的使用模式分析方法,该方法基于这样一种想法,即由居民的“日常”(如做早餐)导致的设备使用模式可以类似于自然语言的“句子”来解释;自然语言处理(NLP)算法可以用来解释居民的行为。我们引入了从用于文档分类的词袋模型衍生出来的词袋装置(BoD)的概念。在一个实验中,我们展示了如何使用这个模型从设备使用情况推断出对居民的预测,比如居民当天离开或只是去取报纸。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Smart Home Data Interpretation Using Analogies to Natural Language Processing
Recent advances in the development of smart homes have led to the availability of a wide variety of devices providing a high level of convenience via gesture and speech control or fully automated operation. Many smart home appliances also address the aspects of safety and electricity savings by automatically powering themselves off after not being used for a while. However, many devices remain in a typical household that are not themselves “smart”, or are not primarily electric (such as heating systems). We address the savings aspect by identifying processes involving the use of multiple devices in the electrical flow data, as captured by a smart meter in a modern household, rather than focusing on a single appliance. Therefore, we introduce a novel approach to usage pattern analysis based on the idea that a pattern of device usages as a result of a resident's ‘routine’ (such as making breakfast) can be interpreted similarly to a natural language ‘sentence’; Natural Language Processing (NLP) algorithms can then be used for interpreting the residents' behavior. We introduce the notion of bag-oj-devices (BoD), derived from the bag-of-words model used in document classification. In an experiment, we show how we use this model to infer predictions about the inhabitants from device usage, such as the resident leaving for the day or just to fetch the newspaper.
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