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Generic Application of Deep Learning Framework for Real-Time Engineering Data Analysis

机译:深度学习框架在实时工程数据分析中的通用应用

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The need for computer-assisted real-time anomaly detection in engineering data used for condition monitoring is apparent in various applications, including the oil and gas, automotive industries and many other engineering domains. To reduce the reliance on domain-specific experts' knowledge, this paper proposes a deep learning framework that can assist in building a versatile anomaly detection tool needed for effective condition monitoring. The framework enables building a computational anomaly detection model using different types of neural networks and supervised learning. While building such a model, three types of ANN units were compared: a recurrent neural network, a long short-term memory network, and a gated recurrent unit. Each of these units has been evaluated on two benchmark public datasets. The experimental results of this comparative study revealed that the LSTM network unit that uses the sigmoid activation function, the Mean Absolute Error as the objective Loss function and the Adam optimizer as the output layer showed the best performance and attained the accuracy of over 77 % in detecting anomalous values in the datasets. Having determined the best performing combination of the neural network components, a computational anomaly detection model was built within the framework, which was successfully evaluated on real-life engineering datasets comprising the timeseries datasets from an offshore installation in North Sea and another dataset from the automotive industry, which enabled exploring the anomaly classification capability of the proposed framework.
机译:用于状态监测的工程数据中需要计算机辅助实时异常检测的需求在包括石油和天然气,汽车行业和许多其他工程领域在内的各种应用中显而易见。为了减少对特定领域专家知识的依赖,本文提出了一种深度学习框架,该框架可帮助构建有效的状态监视所需的通用异常检测工具。该框架能够使用不同类型的神经网络和监督学习来建立计算异常检测模型。在建立这样的模型时,比较了三种类型的ANN单元:循环神经网络,长期短期记忆网络和门控循环单元。这些单位中的每一个都已在两个基准公开数据集上进行了评估。这项比较研究的实验结果表明,使用S型激活函数,平均绝对误差作为目标损失函数以及以Adam优化器作为输出层的LSTM网络单元显示出最佳的性能,并在2000年内达到了77%以上的精度。检测数据集中的异常值。确定了神经网络组件的最佳性能组合后,在框架内建立了计算异常检测模型,该模型已成功地在现实工程数据集上进行了评估,该数据集包括北海海上设施的时间序列数据集和汽车行业的另一个数据集行业,这使得能够探索所提出框架的异常分类能力。

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