4.7 Article Retracted Publication

被撤回的出版物: Knowledge-based deep belief network for machining roughness prediction and knowledge discovery (Retracted article. See vol. 137, 2022)

Journal

COMPUTERS IN INDUSTRY
Volume 121, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.compind.2020.103262

Keywords

Machining roughness; Deep learning; Knowledge discovery; Deep belief network; Rule extraction

Funding

  1. National Natural Science Foundation of China [71777173]
  2. Action Plan for Scientificand Technological Innovationof Shanghai Science and Technology Commission [19511106303]
  3. Fundamental Research Fundsfor the Central Universities

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The surface roughness prediction and knowledge discovery in the machining process are very important to optimize those process variables (e.g., spin speed, feed rate) online and then obtain high machining quality of products. Deep neural networks (DNNs) consist of a complex structure and multiple nonlinear processing units to perform deep feature learning. It has achieved great success in computer vision, natural language processing, and speech recognition. It is very appropriate to apply DNNs for modeling complex non-linear relationship between the process variables (e.g., spin speed, vibration) and the surface roughness. Due to the black box and the huge data demand problem, there are still huge obstacles to the applications of DNNs in real-world cases. This paper proposes a new DNN model, knowledge-based deep belief network (KBDBN), which integrates the symbol rules and classification rules with the deep network. This not only enables the model to have good feature learning performance, but also can discover the knowledge (i.e., rules) from the deep network. A KBDBN-based prediction model for workpiece surface roughness prediction is further proposed, which not only effectively discovery the knowledge (i.e., symbolic rules and classification rules) for process control, but also shows better recognition performance than that of the typical machine learning models (e.g., support vector machine, artificial neural network, logistic regression) and DNNs (e.g., deep belief network, stacked auto encoder). Moreover, the interpretable DNN model makes it be applied easily in real-world cases. (C) 2020 Elsevier B.V. All rights reserved.

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