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基于深度学习的城市环境噪声源识别技术

Urban environmental noise source identification technology using deep learning

  • 摘要: 城市噪声污染已经成为影响人类身心健康和生活质量的严重环境问题。为了加强对噪声污染的精准化、高效化管控,研发一种精准的、高效的环境噪声溯源技术已是当务之急。文章通过调研以上海为代表的城市区域中对居民影响显著的环境噪声源,收集了一个典型的城市环境噪声数据集。基于该数据集,设计了一个基于卷积循环神经网络(convolutional recurrent neural network, CRNN)的城市环境噪声源自动识别模型。该模型集成了3层卷积神经网络(convolutional neural network, CNN)模块和2层门控循环单元(gated recurrent unit, GRU)模块,同时具备强大的高维频谱特征提取能力,以及特征时序信息提取能力。训练结果表明,模型的平均识别准确度达到了93%,其中9个类别的准确度均超过90%,准确度最低的类别也达到了86.6%,这验证了基于CRNN模型的城市环境噪声源识别技术的有效性和可行性,而且模型准确度显著优于CNN(准确度低于30%)和GRU(准确度约为78%)模型,进一步验证了集成的CRNN算法更适用于处理环境噪声源识别任务。

     

    Abstract: Urban noise pollution has become a serious environmental issue affecting human health and quality of life. To strengthen the precise and efficient management and control of environmental noise pollution, an efficient and accurate environmental noise source identification technology is need to be developed urgently needed. This study investigates the environmental noise sources that significantly affect residents in urban areas, represented by Shanghai, and collects a typical urban environmental noise dataset. Further, based on the collected dataset, a convolutional recurrent neural network (CRNN) model for the automatic identification of urban environmental noise sources is designed. The model integrates a 3-layer convolutional neural network (CNN) module and a 2-layer gated recurrent unit (GRU) module, which not only has the ability to extract high-dimensional spectral features but also captures temporal information of features. The training results show that the model's average identification accuracy (Acc) reaches 93%, with Acc values for all nine classes exceeding 90%, and the lowest Acc value reaching 86.6%. This verifies the effectiveness and feasibility of the CRNN model-based urban environmental noise source identification technology. Moreover, the model's identification Acc is significantly better than that of CNN (with an Acc value below 30%) and GRU (with an Acc value of about 78%), further verifying that the integrated CRNN method is more suitable for processing environmental noise source identification tasks.

     

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