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Real-time Production Monitoring for Chinese Pharmacy Based on Convolutional Neural Network

机译:基于卷积神经网络的中国药房实时生产监测

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A deep monitoring architecture for extraction and esterification process monitoring in Chinese Pharmacy production based on convolution neural network is proposed and lightweight model is also researched. Different convolution kernel including 2D convolution, depth-wise convolution and 3D convolution is compared to improve the performance of monitoring. Experimental results show that accuracy of the designed extraction monitoring model is 98.95% using 3D convolution and esterification monitoring mode has the accuracy of 98.68%. Meanwhile, lightweight model using depth-wise convolution can reduce computation while ensuring accuracy.
机译:提出了基于卷积神经网络的中国药房生产中提取和酯化过程监测的深度监测架构,并研究了轻量级模型。不同的卷积内核,包括2D卷积,深度明智的卷积和3D卷积,以提高监控性能。实验结果表明,使用3D卷积和酯化监测模式的设计提取监测模型的准确性为98.95%,精度为98.68%。同时,使用深度明智卷积的轻质模型可以减少计算,同时确保精度。

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