Air quality measurement, prediction and warning using transfer learning based IOT system for ambient assisted living

IF 0.6 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
S. Sonawani, Kailas Patil
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引用次数: 5

Abstract

Purpose Indoor air quality monitoring is extremely important in urban, industrial areas. Considering the devastating effect of declining quality of air in major part of the countries like India and China, it is highly recommended to monitor the quality of air which can help people with respiratory diseases, children and elderly people to take necessary precautions and stay safe at their homes. The purpose of this study is to detect air quality and perform predictions which could be part of smart home automation with the use of newer technology. Design/methodology/approach This study proposes an Internet-of-Things (IoT)-based air quality measurement, warning and prediction system for ambient assisted living. The proposed ambient assisted living system consists of low-cost air quality sensors and ESP32 controller with new generation embedded system architecture. It can detect Indoor Air Quality parameters like CO, PM2.5, NO2, O3, NH3, temperature, pressure, humidity, etc. The low cost sensor data are calibrated using machine learning techniques for performance improvement. The system has a novel prediction model, multiheaded convolutional neural networks-gated recurrent unit which can detect next hour pollution concentration. The model uses a transfer learning (TL) approach for prediction when the system is new and less data available for prediction. Any neighboring site data can be used to transfer knowledge for early predictions for the new system. It can have a mobile-based application which can send warning notifications to users if the Indoor Air Quality parameters exceed the specified threshold values. This is all required to take necessary measures against bad air quality. Findings The IoT-based system has implemented the TL framework, and the results of this study showed that the system works efficiently with performance improvement of 55.42% in RMSE scores for prediction at new target system with insufficient data. Originality/value This study demonstrates the implementation of an IoT system which uses low-cost sensors and deep learning model for predicting pollution concentration. The system is tackling the issues of the low-cost sensors for better performance. The novel approach of pretrained models and TL work very well at the new system having data insufficiency issues. This study contributes significantly with the usage of low-cost sensors, open-source advanced technology and performance improvement in prediction ability at new systems. Experimental results and findings are disclosed in this study. This will help install multiple new cost-effective monitoring stations in smart city for pollution forecasting.
使用基于迁移学习的物联网系统进行环境辅助生活的空气质量测量、预测和预警
目的室内空气质量监测在城市和工业区非常重要。考虑到印度和中国等主要国家空气质量下降的破坏性影响,强烈建议监测空气质量,这有助于呼吸系统疾病患者、儿童和老人采取必要的预防措施,并在家中保持安全。这项研究的目的是检测空气质量并进行预测,这可能是使用新技术实现智能家居自动化的一部分。设计/方法论/方法本研究提出了一种基于物联网(IoT)的环境辅助生活空气质量测量、预警和预测系统。所提出的环境辅助生活系统由低成本的空气质量传感器和具有新一代嵌入式系统架构的ESP32控制器组成。它可以检测室内空气质量参数,如CO、PM2.5、NO2、O3、NH3、温度、压力、湿度等。低成本的传感器数据使用机器学习技术进行校准,以提高性能。该系统具有一个新的预测模型,即多头卷积神经网络门控递归单元,可以检测下一小时的污染浓度。当系统是新的并且可用于预测的数据较少时,该模型使用迁移学习(TL)方法进行预测。任何相邻站点数据都可以用于传递用于新系统的早期预测的知识。它可以有一个基于移动的应用程序,如果室内空气质量参数超过指定的阈值,该应用程序可以向用户发送警告通知。这一切都是为了采取必要措施来应对恶劣的空气质量。发现基于物联网的系统已经实现了TL框架,本研究的结果表明,在数据不足的新目标系统中,该系统工作效率高,预测的RMSE分数提高了55.42%。独创性/价值这项研究展示了物联网系统的实现,该系统使用低成本传感器和深度学习模型来预测污染浓度。该系统正在解决低成本传感器的问题,以获得更好的性能。预训练模型和TL的新方法在存在数据不足问题的新系统中工作得很好。这项研究在使用低成本传感器、开源先进技术以及提高新系统预测能力方面做出了重大贡献。本研究公开了实验结果和发现。这将有助于在智能城市中安装多个新的具有成本效益的监测站,用于污染预测。
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来源期刊
International Journal of Pervasive Computing and Communications
International Journal of Pervasive Computing and Communications COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
6.60
自引率
0.00%
发文量
54
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