Identification of Safe Air Quality for Activity Using Long Short-Term Memory

R. Rahmat, Fahrurrozi Lubis, M. Furqan, S. Faza, Farhad Nadi, Nur Intan Raihana Ruhayem
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Abstract

Air pollution is one of the problems that is often occurred in the cities with high industrial and transportation levels. Several informations are needed by the community so that they can be use it for people’s health concerns. Air Quality Index is a standard for determining air quality and pollution based on the main parameters, namely: Carbon Dioxide (CO2), Sulfur Dioxide (SO2), Ozone (O3), and Particulate Dust (PM10 and PM2.5). While, for the methods, we suggest Long Short-Term Memory model which have good performance in identifying safe air quality for activities. The model conducts training with a parameter of 100 epoch, learning rate = 0.001, batch size = 32. Testing uses the optimizer, activation function, and the right function to measure air quality with an accuracy of up to 98%. Thus, we adjust LSTM model with Adamax optimizer and Sigmoid activation function is the best parameter to get the highest accuracy.
利用长短期记忆识别活动的安全空气质量
空气污染是工业和交通水平高的城市经常发生的问题之一。社区需要一些信息,以便他们能够利用这些信息来解决人们的健康问题。空气质量指数是根据主要参数,即二氧化碳(CO2)、二氧化硫(SO2)、臭氧(O3)和颗粒物(PM10和PM2.5),来判断空气质量和污染程度的标准。而对于方法,我们建议采用长短期记忆模型,该模型在识别活动安全空气质量方面具有较好的性能。模型以100 epoch为参数进行训练,学习率= 0.001,批大小= 32。测试使用优化器,激活功能和正确的功能来测量空气质量,准确度高达98%。因此,我们使用Adamax优化器调整LSTM模型,Sigmoid激活函数是获得最高精度的最佳参数。
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