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Improving Stockline Detection of Radar Sensor Array Systems in Blast Furnaces Using a Novel Encoder–Decoder Architecture

机译:使用新型编码器-解码器体系结构改善高炉中雷达传感器阵列系统的库存检测

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摘要

The stockline, which describes the measured depth of the blast furnace (BF) burden surface with time, is significant to the operator executing an optimized charging operation. For the harsh BF environment, noise interferences and aberrant measurements are the main challenges of stockline detection. In this paper, a novel encoder–decoder architecture that consists of a convolution neural network (CNN) and a long short-term memory (LSTM) network is proposed, which suppresses the noise interferences, classifies the distorted signals, and regresses the stockline in a learning way. By leveraging the LSTM, we are able to model the longer historical measurements for robust stockline tracking. Compared to traditional hand-crafted denoising processing, the time and efforts could be greatly saved. Experiments are conducted on an actual eight-radar array system in a blast furnace, and the effectiveness of the proposed method is demonstrated on the real recorded data.
机译:储存线描述了高炉(BF)炉料表面随时间的测量深度,对于执行优化的装料操作的操作员来说非常重要。对于严峻的高炉环境,噪声干扰和异常测量是生产线检测的主要挑战。本文提出了一种由卷积神经网络(CNN)和长短期记忆(LSTM)网络组成的新型编解码器架构,该架构可抑制噪声干扰,对失真的信号进行分类并使库存线回归。一种学习方式。通过利用LSTM,我们能够对较长的历史测量进行建模,以实现可靠的库存线跟踪。与传统的手工去噪处理相比,可以节省大量时间和精力。在高炉中的实际八雷达阵列系统上进行了实验,并在实际记录的数据上证明了该方法的有效性。

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