Litcius/Paper detail

FA-LSTM: A Novel Toxic Gas Concentration Prediction Model in Pollutant Environment

Cong Yu, Ximeng Zhao, Ke Tang, Ge Wang, Yanfei Hu, Yingkui Jiao

2021IEEE Access29 citationsDOIOpen Access PDF

Abstract

Real-time monitoring and accurate prediction of toxic gas concentration in the future are of great significance for emergency capability assessment and rescue work. At present, the method of gas concentration prediction based on artificial intelligence still has problems of low accuracy, slow convergence speed and equal feature importance. This paper proposes a feature-aware LSTM model to predict pollutant gas concentration. First of all, we design a set of multi-component toxic gas monitoring equipment that applies in pollution environment, which can at the same time monitor CO, NO<sub>2</sub>, NH<sub>3</sub>, HCN, H<sub>2</sub>S and SO<sub>2</sub>, six common pollutants; To accurate estimate the toxic gas concentration, we combine the collected the gas data and the environmental parameters and regard them as the input features, and then we obtain toxic gas data based on the sampling policy and the environmental data as our data-set. Finally, we train a FA-LSTM gas concentration prediction model on these data-set. We test the proposed model and compared with ARIMA, ETS and BP network on the same test set. Experimental results show that the proposed model outperforms traditional concentration prediction model. Also, it is better than other state-of-the-art models in predicting accuracy.

Topics & Concepts

Computer scienceAutoregressive integrated moving averageTest setPollutantData setFeature (linguistics)PollutionData miningSet (abstract data type)Artificial intelligenceConvergence (economics)Sampling (signal processing)Machine learningEnvironmental scienceTime seriesChemistryFilter (signal processing)Programming languageEconomicsLinguisticsPhilosophyEconomic growthOrganic chemistryComputer visionBiologyEcologyAir Quality Monitoring and ForecastingAdvanced Chemical Sensor TechnologiesFire Detection and Safety Systems