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Understanding Smartwatch Battery Utilization in the Wild

机译:了解野外智能手表电池利用率

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摘要

Smartwatch battery limitations are one of the biggest hurdles to their acceptability in the consumer market. To our knowledge, despite promising studies analyzing smartwatch battery data, there has been little research that has analyzed the battery usage of a diverse set of smartwatches in a real-world setting. To address this challenge, this paper utilizes a smartwatch dataset collected from 832 real-world users, including different smartwatch brands and geographic locations. First, we employ clustering to identify common patterns of smartwatch battery utilization; second, we introduce a transparent low-parameter convolutional neural network model, which allows us to identify the latent patterns of smartwatch battery utilization. Our model converts the battery consumption rate into a binary classification problem; i.e., low and high consumption. Our model has 85.3% accuracy in predicting high battery discharge events, outperforming other machine learning algorithms that have been used in state-of-the-art research. Besides this, it can be used to extract information from filters of our deep learning model, based on learned filters of the feature extractor, which is impossible for other models. Third, we introduce an indexing method that includes a longitudinal study to quantify smartwatch battery quality changes over time. Our novel findings can assist device manufacturers, vendors and application developers, as well as end-users, to improve smartwatch battery utilization.
机译:SmartWatch电池限制是他们在消费市场中可接受性的最大障碍之一。据我们所知,尽管有前途的研究分析SmartWatch电池数据,但很少的研究已经分析了在真实世界中设置了多种智能手表的电池用途。为了解决这一挑战,本文利用了从832个现实世界用户收集的SmartWatch数据集,包括不同的SmartWatch品牌和地理位置。首先,我们采用聚类来识别SmartWatch电池利用率的常见模式;其次,我们介绍了一个透明的低参数卷积神经网络模型,这使我们能够识别SmartWatch电池利用率的潜在模式。我们的模型将电池消耗率转换为二进制分类问题;即,低消耗量和高消耗。我们的型号在预测高电池放电事件方面具有85.3%的精度,优于最先进的研究中使用的其他机器学习算法。除此之外,它可以用于根据要素提取器的学习过滤器提取来自我们深度学习模型的过滤器的信息,这是其他模型不可能的。第三,我们介绍了一种索引方法,包括纵向研究,以量化SmartWatch电池质量随时间的变化。我们的新发现可以帮助设备制造商,供应商和应用开发人员以及最终用户来提高SmartWatch电池利用率。

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