A Real-time Environmental Air Pollution Predictor Model Using Dense Deep Learning Approach in IoT Infrastructure

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Abstract

With the technical advancements in Deep Learning (DL), it is probable to construct the predictor model for monitoring and controlling pollution from real-time data. Here, IoT techniques are used for sensing the emission rate from various factors and the predictor model is constructed using the available data, for instance, carbon monoxide prediction. Modern sensors are embedded to evaluate the level of pollutants and using these modern techniques, the source of emission rate is identified and notified to the specific environment. Deep learning concepts are used for predicting the pollution level based on the current and previous data attained from the sensors. Here, we have implemented a learning solution to predict carbon monoxide concentration hourly using the novel Dense Residual Convolutional Network Model with Bi-LSTM (Bidirection-Long Short Term Memory) with the spatial and temporal features by integrating the features of the present and previous pollutant data. The side output from the residual network model is used to evaluate prediction quality. The performance is compared with existing approaches like standard LSTM, CNN, pre-trained network model, etc. The experimentation is done in a Python environment, and the proposed model facilitates more prediction accuracy for the pollutants CO,SO_2,O_3 and NO_2 than other conventional network models and establishes a better trade-off.
物联网基础设施中使用密集深度学习方法的实时环境空气污染预测模型
随着深度学习(Deep Learning,DL)技术的进步,可以通过实时数据构建监测和控制污染的预测模型。在这里,物联网技术用于感知各种因素的排放率,并利用可用数据构建预测模型,例如一氧化碳预测模型。嵌入式现代传感器可评估污染物水平,利用这些现代技术,可识别排放率的来源并通知特定环境。深度学习概念用于根据传感器获得的当前和以往数据预测污染水平。在这里,我们采用了一种学习解决方案,通过整合当前和以往污染物数据的空间和时间特征,使用带有 Bi-LSTM(双向-长短期记忆)的新型密集残差卷积网络模型,每小时预测一氧化碳浓度。残差网络模型的侧输出用于评估预测质量。其性能与标准 LSTM、CNN、预训练网络模型等现有方法进行了比较。实验是在 Python 环境下完成的,与其他传统网络模型相比,所提出的模型有助于提高 CO、SO_2、O_3 和 NO_2 等污染物的预测准确性,并建立了更好的权衡机制。
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