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Building environment analysis based on clustering methods from sensor data on top of the Hadoop platform

机译:基于聚类方法从Hadoop平台顶部的传感器数据进行构建环境分析

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Presented paper describes the use of clustering methods in building environment analysis task. The presented approach is based on modeling of the sensor data containing information about humidity and temperature. Such models are then used to describe the level of the comfort of particular environment. K-means clustering algorithm was used to create those models. The paper then presents and describes a method of user interaction with the environment model. User feed-back represents how the user feels in the current environment. Feedback is then collected and evaluated. Based on the feedback, models can trigger the change of current environment or during the time, re-compute themselves in order to pro-vide more precise building environment representation. Our solution was based on real sensor data obtained from university buildings and presented solution was implemented on top of Hadoop cluster using Mahout library for machine learning.
机译:提出的论文介绍了聚类方法在构建环境分析任务中的使用。所提出的方法基于包含有关湿度和温度的信息的传感器数据的建模。然后使用这些模型来描述特定环境的舒适度。 K-means群集算法用于创建这些模型。然后本文呈现并描述了一种与环境模型的用户交互的方法。用户馈回表示用户在当前环境中的感受。然后收集和评估反馈。基于反馈,模型可以触发当前环境的变化或在时间内重新计算自己,以便更精确地构建环境表示。我们的解决方案基于从大学建筑获得的真实传感器数据,并在Hadoop集群的顶部使用Mahout库进行机器学习来实现呈现的解决方案。

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