The release of toxic gases by industries, emissions from vehicles, and an increase in the concentration of harmful gases and particulate matter in the atmosphere are all contributing factors to the deterioration of the quality of the air. Factors such as industries, urbanization, population growth, and the increased use of vehicles contribute to the rapid increase in pollution levels, which can adversely impact human health. This paper presents a model for forecasting the air quality index in Nigeria using the Bi-directional LSTM model. The air pollution data was downloaded from an online database (UCL). The dataset was pre-processed using both pandas tools in python. The pre-processed result was used as input features in training a Bi-LSTM model in making future forecasts of the values of the particulate matter Pm2.5, and Pm10. The Bi-LSTM model was evaluated using some evaluation parameters such as mean square error, mean absolute error, absolute mean square, and R^2 square. The result of the Bi-LSTM shows a mean square error of 52.99%, relative mean square error of 7.28%, mean absolute error of 3.4%, and R^2 square of 97%. The model. This shows that the model follows a seamless trend in forecasting the air quality in Port Harcourt, Nigeria.
翻译:工业、城市化、人口增长和车辆使用量的增加等因素促使污染水平迅速上升,从而对人类健康产生不利影响。本文提供了一个模型,用于利用双向LSTM模型预测尼日利亚空气质量指数。空气污染数据从一个在线数据库(UCL)下载。该数据集是使用Python中两个熊猫工具预先处理的。预处理的结果被用作培训Bi-LSTM模型的投入功能,用于对颗粒物质Pm2.5和Pm10进行未来预测。Bi-LSTM模型使用一些评价参数进行评估,如平均方差、绝对误差、绝对中正方和R%2方。Bi-LSTM的结果显示,平均正方差为52.99%,相对中正方差为7.28%,绝对误为3.4%,而Har%2号模型在尼日利亚空气质量中遵循了97%的无缝模型。这个模型显示尼日利亚的无缝状态。