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A Hybrid Predictive Model for Acoustic Noise in Urban Areas Based on Time Series Analysis and Artificial Neural Network

机译:基于时间序列分析和人工神经网络的城市声学噪声混合预测模型

摘要

The dangerous effect of noise on human health is well known. Both the auditory and non-auditory effects are largely documented in literature, and represent an important hazard in human activities. Particular care is devoted to road traffic noise, since it is growing according to the growth of residential, industrial and commercial areas. For these reasons, it is important to develop effective models able to predict the noise in a certain area. In this paper, a hybrid predictive model is presented. The model is based on the mixing of two different approach: the Time Series Analysis (TSA) and the Artificial Neural Network (ANN). The TSA model is based on the evaluation of trend and seasonality in the data, while the ANN model is based on the capacity of the network to “learn” the behavior of the data. The mixed approach will consist in the evaluation of noise levels by means of TSA and, once the differences (residuals) between TSA estimations and observed data have been calculated, in the training of a ANN on the residuals. This hybrid model will exploit interesting features and results, with a significant variation related to the number of steps forward in the prediction. It will be shown that the best results, in terms of prediction, are achieved predicting one step ahead in the future. Anyway, a 7 days prediction can be performed, with a slightly greater error, but offering a larger range of prediction, with respect to the single day ahead predictive model.
机译:噪声对人体健康的危险影响是众所周知的。听觉效应和非听觉效应都在文献中有大量记载,并代表了对人类活动的重要危害。由于道路交通噪声会随着住宅,工业和商业区域的增长而增加,因此需要特别注意。由于这些原因,重要的是要开发出能够预测特定区域噪声的有效模型。本文提出了一种混合预测模型。该模型基于两种不同方法的混合:时间序列分析(TSA)和人工神经网络(ANN)。 TSA模型基于数据趋势和季节性的评估,而ANN模型基于网络“学习”数据行为的能力。混合方法将包括通过TSA评估噪声水平,并且一​​旦计算出TSA估计值与观测数据之间的差异(残差),就可以对残差进行ANN训练。该混合模型将利用有趣的功能和结果,并且与预测中前进的步数有关。可以看出,在预测方面,最好的结果是在预测未来向前迈出一步的过程中获得的。无论如何,相对于提前一天的预测模型,可以执行7天的预测,但误差会稍大一些,但提供的预测范围更大。

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