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In-situ monitoring of liquid composite molding process using piezoelectric sensor network

期刊

出版社

SAGE PUBLICATIONS LTD
DOI: 10.1177/1475921720958082

关键词

Liquid composite molding; resin flow front; progress of reaction; sensor network; lamb waves

资金

  1. National Natural Science Foundation of China [11972314, 11772279, 11172053]

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This study developed the concept of Networked Elements for Resin Visualization and Evaluation to monitor important parameters using piezoelectric sensors in real-time during the liquid composite molding process. Experimental results demonstrated the effectiveness of the network in monitoring the composite molding process.
The excellent properties of advanced composite materials provide great opportunities for making industrial structures large-scale and intelligent. Liquid composite molding process is suitable for manufacturing complex large-scale composite structures and has the potential for low cost and mass production. In present work, the concept of Networked Elements for Resin Visualization and Evaluation network was developed to measure and monitor the manufacturing process in-situ. This paper investigates the capability of piezoelectric lead-zirconate-titanate sensors in the Networked Elements for Resin Visualization and Evaluation network to monitor two important parameters in liquid composite molding process, including the resin flow front and the progress of the reaction. The piezoelectric lead-zirconate-titanate sensor network can be integrated with a composite structure either installed on the interface between the mold and laminates or embedded inside the laminates during the liquid composite molding process. Experimental results demonstrated that the liquid composite molding process can be effectively monitored by the embedded Networked Elements for Resin Visualization and Evaluation network with a piezoelectric lead-zirconate-titanate sensor network.

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