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DeepNautilus: A Deep Learning Based System for Nautical Engines' Live Vibration Processing

机译:Deadnautilus:航海发动机现场振动处理的深度学习系统

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Recent advances in sensor technologies and data analysis techniques allow reliable and efficient systems for the early diagnosis of breakdowns in the production chain of the car industry and, more generally, of engines. The performance of these systems is based fundamentally on the quality of the features extracted and on the learning technique. In this paper, we show our preliminary, but encouraging, results carried out through our research effort in the field of using deep neural network to recognize and eventually predict engine failures. We present the prototypal blueprint of the system DeepNautilius devoted to detect failures in marine engines using deep learning with the ambitious goal of reducing marine pollution. Our envision comprises a distributed sensor data acquisition system based on the fog/edge/cloud computing paradigm, with a consistent part of the computation located on the edge side. While our architectural approach is described as a design oriented issue, in this work we present our experience with the deep neural network (DNN) computational core, using a literature dataset from an air compression engine. We demonstrate that our approach is not only comparable with the one in literature but is even better performing.
机译:传感器技术和数据分析技术的最新进展允许可靠且有效的系统,用于早期诊断汽车行业生产链中的崩溃,更一般地是发动机。这些系统的性能基本上基于提取和学习技术的特征的质量。在本文中,我们展示了我们通过我们在利用深度神经网络识别和最终预测发动机故障的领域的研究努力进行的初步而令人鼓舞的结果。我们展示了系统的原型蓝图,致力于使用深入学习的雄心勃勃的进入海洋污染的雄心勃勃的目标来检测海洋发动机的失败。我们的设想包括基于FOG /边缘/云计算范例的分布式传感器数据采集系统,其中位于边缘侧的计算的一致部分。虽然我们的架构方法被描述为设计导向的问题,但在这项工作中,我们使用来自空气压缩引擎的文献数据集来向深度神经网络(DNN)计算核心的经验。我们表明,我们的方法不仅与文学中的方法相当,而且更好地表现。

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