Mechanical Engineering, Massachusetts Institute of Technology, Cambridge, Massachusetts 02139, USA.
J Acoust Soc Am. 2021 Jan;149(1):405. doi: 10.1121/10.0003329.
This paper is part of a special issue on machine learning in acoustics. A model-based convolutional neural network (CNN) approach is presented to test the viability of this method as an alternative to conventional matched-field processing (MFP) for underwater source-range estimation. The networks are trained with simulated data generated under a particular model of the environment. When tested with data simulated in environments that deviate slightly from the training environment, this approach shows improved prediction accuracy and lower mean-absolute-error (MAE) compared to MFP. The performance of this model-based approach also transfers to real data, as demonstrated separately with field data collected in the Beaufort Sea and off the coast of Southern California. For the former, the CNN predictions are consistent with expected source range while for the latter, the CNN estimates have lower MAE compared to MFP. Examination of the trained CNNs' intermediate outputs suggests that the approach is more constrained than MFP from outputting very inaccurate predictions when there is a slight environmental mismatch. This improvement appears to be at the expense of decreased certainty in the correct source range prediction when the environment is precisely modeled.
本文是关于机器学习在声学中应用的特刊的一部分。提出了一种基于模型的卷积神经网络(CNN)方法,以检验该方法作为传统匹配场处理(MFP)的替代方法用于水下声源测距估计的可行性。该网络使用在特定环境模型下生成的模拟数据进行训练。当用偏离训练环境的环境模拟数据进行测试时,与 MFP 相比,该方法显示出更高的预测精度和更低的平均绝对误差(MAE)。该基于模型的方法的性能也可以转移到真实数据上,这分别通过在波弗特海和加利福尼亚南部沿海收集的现场数据进行了演示。对于前者,CNN 预测与预期的声源范围一致,而对于后者,CNN 估计的 MAE 低于 MFP。对训练有素的 CNN 的中间输出进行的检查表明,与 MFP 相比,该方法在环境略有不匹配时,从输出非常不准确的预测方面受到更多限制。这种改进似乎是以环境精确建模时正确声源范围预测的确定性降低为代价的。