HYBRID MODEL AND FRAMEWORK FOR PREDICTING AIR POLLUTANTS IN SMART CITIES

Qutaiba Humadi Mohammed, Anupama Namburu
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Abstract

The pollution index of any urban area is indicated by its air quality. It also shows a fine balance is maintained between the needs of the populace and the industrial ecosystem. To mitigate such pollution in real-time, smart cities have a significant role to play. It's common knowledge that air pollution in a city severely affects the health of its dependents. More alarmingly, human health damage and disease burden are caused by phenomena like acid rain, and global warming. More precisely, lung ailments, CPOD, heart problems and skin cancer are caused by polluted air in congested urban places. Amongst the worst air pollutants, CO, C6H6, SO2, NO2, O3, RSPM/PM10, and PM2.5 cause maximum havoc. The climatic variables like atmospheric wind velocity, direction, relative humidity, and temperature control air contaminants in the air. Lately, numerous techniques have been applied by researchers and environmentalists to determine the Air Quality Index over a place. However, not a single technique has found acceptance from all quarters as being effective in every situation or scenario. Here, the main aspect relates to achieving authentic prediction in AQI levels by applying Machine Learning algorithms so worst situations can be averted by timely action. To enhance the performance of Machine Learning methods study adopted imputation and feature selection methods. When feature selection is applied, the experimental outcomes indicate a more accurate prediction over other techniques, showing promise for the application of the model in smart cities by syncing data from different monitoring stations.
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预测智慧城市空气污染物的混合模型和框架
任何城市地区的污染指数都可以通过空气质量来体现。这也表明,居民需求与工业生态系统之间保持着微妙的平衡。为了实时缓解这种污染,智慧城市可以发挥重要作用。众所周知,城市空气污染会严重影响居民的健康。更令人担忧的是,酸雨和全球变暖等现象会造成人类健康损害和疾病负担。更确切地说,肺部疾病、CPOD、心脏病和皮肤癌都是由城市拥堵地区的污染空气造成的。在最严重的空气污染物中,CO、C6H6、SO2、NO2、O3、RSPM/PM10 和 PM2.5 造成的破坏最大。大气风速、风向、相对湿度和温度等气候变量控制着空气中的污染物。最近,研究人员和环境学家应用了许多技术来确定一个地方的空气质量指数。然而,并不是每一种技术都能在任何情况或场景下有效,也不是每一种技术都能得到各方面的认可。在这里,主要是通过应用机器学习算法实现对空气质量指数水平的真实预测,以便及时采取行动避免最糟糕的情况。为提高机器学习方法的性能,研究采用了估算和特征选择方法。在应用特征选择时,实验结果表明预测结果比其他技术更准确,这表明通过同步不同监测站的数据,该模型有望应用于智慧城市。
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来源期刊
CiteScore
0.70
自引率
0.00%
发文量
74
审稿时长
50 weeks
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