首页> 外文期刊>International Journal of Environmental Impacts: Management, Mitigation and Recovery >PM10 FORECASTING THROUGH APPLYING CONVOLUTION NEURAL NETWORK TECHNIQUES
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PM10 FORECASTING THROUGH APPLYING CONVOLUTION NEURAL NETWORK TECHNIQUES

机译:通过应用卷积PM10预测神经网络技术

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摘要

The World Health Organization (WHO) estimates that air pollution kills around 6.5 million people around the world every year. The European Environment Agency, in turn, points out that about 50,000 people die annually in Poland due to this. PM10 pollution arises in the form of smog (smoke and fog) and is an unnatural phenomenon created by adverse weather conditions and human activity. The aim of this article is to assess the possibilities of tasking modern neural networks to predict PM10 air pollution levels in the following hours of the subsequent day. In evaluating the prediction task, several types of error are considered, and machine learning algorithms and structures are utilized as learning models. Of note, the algorithm selected for stochastic optimization is a form of convolutional neural networking and deep learning neural networking that is used in machine learning when considering Big Data issues. The obtained results were then analysed and compared with other methods of prediction. As a result of this research, the proposed convergent neural network could be used effectively as a tool for calculating detailed air quality forecasts for the subsequent 24-h period.
机译:世界卫生组织(世卫组织)估计空气污染造成大约650万人死亡每年在世界各地。反过来,环境局指出每年大约有50000人死在波兰由于这一点。(烟和雾),是一种自然现象由恶劣天气条件和人类活动。现代神经任务的可能性网络预测可吸入颗粒物空气污染水平以下几个小时之后的一天。评估预测任务,几种类型的错误被认为是和机器学习利用算法和结构学习模型。随机优化的一种形式卷积神经网络和深度学习神经网络用于机器学习在考虑大数据问题。结果被分析和比较与其它预测方法。本研究提出的收敛的神经网络可以使用有效的工具计算详细的空气质量预测随后的24小时周期。

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