论文标题
使用智能手机的GNSS信号强度估算阳光
Estimating Sunlight Using GNSS Signal Strength from Smartphone
论文作者
论文摘要
过度或不充分暴露于紫外线(UV)对健康有害,并导致骨质疏松症,结肠癌和皮肤癌。 UV指数是标准的紫外线,倾向于在阳光明媚的地方增加,阴影急剧下降。一种区分阴凉和阳光明媚的地方的方法将有助于我们预防和治愈由紫外线引起的疾病。但是,现有的方法(例如携带紫外线传感器)对用户施加了负载,而城市级的紫外线预测没有足够的粒度来监视个人的紫外线暴露。本文提出了一种使用现成的移动设备来检测阳光明媚的地方的方法。该方法通过使用GNSS信号强度的特征来检测这些位置,该特征被设备周围的物体减弱。作为一个数据集,我们从五个位置收集了GNSS信号数据,例如C/N0,卫星ID,卫星角度和太阳角,以及参考数据(即每分钟每分钟每分钟)从五个位置进行四天。使用数据集,我们通过使用监督的机器学习方法创建了十二个分类模型,并通过4倍交叉验证评估了其性能。此外,我们研究了特征的重要性和组合特征的效果。绩效评估表明,我们的分类模型可以在最佳情况下以超过97%的精度对阳光明媚的地方进行分类。此外,我们的调查表明,C/N0的值及其时间序列(即当时和之后的C/N0值)是更重要的特征。
Excessive or inadequate exposure to ultraviolet light (UV) is harmful to health and causes osteoporosis, colon cancer, and skin cancer. The UV Index, a standard scale of UV light, tends to increase in sunny places and sharply decrease in the shade. A method for distinguishing shady and sunny places would help us to prevent and cure diseases caused by UV. However, the existing methods, such as carrying UV sensors, impose a load on the user, whereas city-level UV forecasts do not have enough granularity for monitoring an individual's UV exposure. This paper proposes a method to detect sunny and shady places by using an off-the-shelf mobile device. The method detects these places by using a characteristic of the GNSS signal strength that is attenuated by objects around the device. As a dataset, we collected GNSS signal data, such as C/N0, satellite ID, satellite angle, and sun angle, together with reference data (i.e., sunny and shady place information every minute) for four days from five locations. Using the dataset, we created twelve classification models by using supervised machine learning methods and evaluated their performance by 4-fold cross-validation. In addition, we investigated the feature importance and the effect of combining features. The performance evaluation showed that our classification model could classify sunny and shady places with more than 97% accuracy in the best case. Moreover, our investigation revealed that the value of C/N0 at a moment and its time series (i.e., C/N0 value before and after the moment) are more important features.