Archive | 2021

Life-Cycle Monitoring of CFRP using Piezoelectric Sensors Network

 
 
 

Abstract


Vacuum Assisted Resin Infusion (VARI) process is suitable for manufacturing complex large-scale composite structures and has the potential for low cost and mass production. However, the inappropriate process parameters such as incomplete resin flow and the uneven cure occurred will lead to some defects such as dry spots and delamination. In the present work, the concept of Networked Elements for Resin Visualization and Evaluation (NERVE) with the piezoelectric lead-zirconate-titanate (PZT) sensors as the base unit was used to monitor the internal state of composite struture during its life-time. The capability of PZT sensors in the NERVE to monitor two important parameters during the manufacturing process including the flow front of resin and progress of reaction (POR), was investigated. The Lamb waves generated by PZT, propagating in the mold/composite, was used to measure the parameters. The resin flow front was analyzed using optical detection at the same time. The flow front position over time and the influence of the length of sensing path covered by resin were delivered. The effects of different resin cure state on Lamb signal attenuation and energy leakage were also obtained. The change of amplitude was integrated to get the POR curves, so the resin cure state could be also monitored. After the composite was demoulded, the network was used contiously to identify the artifical damages with the fused probability-based diagnostic imaging (PDI). Experimental results indicate that the NERVE has the ability to realize the full life-cycle health monitoring of composite structures. Introduction Advanced composite materials are being used on almost all modern aircraft due to their advantages of high specific strength, high specific stiffness and tailoring of mechanical properties. However, it is still difficult to precisely manufacture co-cured large-scale carbon fiber reinforced plastics (CFRP) structures and ensure their structural integrity through their life [1]. The life-cycle monitoring of CFRP includes the manufacturing process and the service stage. This paper is about the study demonstrating the sensing method based on the piezoelectric sensors network for continuously monitoring the internal state of composite structures. As a new type of low-cost molding technology for large-scale composite materials with the advantages of excellent product performance, low porosity and good adaptability [2,3], the VARI has attracted more and more attention in the field of aviation and spaceflight. However, there are still many difficulties in the VARI process, such as the control of the resin flow, the prevention of dry spots and the delamination and residual stress that closely related to the control parameter of the process [4,5]. These flaws seriously jeopardizing the structural health cannot be easily corrected, because the trial-and-error approaches are inefficient and costly to determine suitable process parameters [6-8]. Therefore, it is necessary to carry out in-suit monitoring in the manufacturing process to adjust the process parameters in time to avoid the occurrence of Structural Health Monitoring Materials Research Forum LLC Materials Research Proceedings 18 (2021) 121-130 https://doi.org/10.21741/9781644901311-15 122 defects. The VARI process is accompanied by a series of complex reaction processes, such as heat transfer, mass transfer, rheological reaction and polymerization reaction [9]. While the Lamb waves propagating in the homogeneous mold is suitable for the in-line VARI process monitoring, because part of energy of the Lamb wave will leak into the liquid or viscoelastic resin in the filling and curing process. Based on the propagation characteristics of Lamb waves, the signal feature changes of leaky Lamb waves can be used to track different stage of the manufacturing process [10-12]. Different from the previous works, this study embedded several PZT sensors into the composite to obtain Lamb wave signals in a pitch-catch way, which is suitable for the monitoring of large-scale composite. In the service stage of CFRP, ultrasonic waves are still attractive because of their relatively long distance of propagation and sensitivity to discontinuities along the propagation path [13,14]. The active ultrasonic Lamb waves-based structural health monitoring (SHM) is considered to be one of the promising methods, and PZTs are one kind of preferred actuators and sensors [15]. Among the algorithms for diagnostic imaging, the probability-based diagnostic imaging (PDI) can weaken or even eliminate the direct interpretation of the ultrasonic guided wave signals and the effect of dispersion and anisotropy [16-18]. The Networked Elements for Resin Visualization and Evaluation (NERVE) [19] based on the concept of distributed multifunctional sensor network of SMART (Stanford Multi-ActuatorReceiver Transduction) Layer [20] can monitor the manufacturing parameters (resin flow front and cure state) in the Liquid Composites Molding (LCM) process effectively. This paper firstly carried out the in-suit monitoring of VARI process experiment to validate the influence of the length of sensing path covered by resin and different cure state on Lamb signal attenuation and energy leakage. Then after the composite was demoulded, damage identification experiment was conducted with the fusion PDI approach of multiple frequencies. The experimental results indicated that the NERVE has the ability to realize the full life-cycle health monitoring of composite structures. Manufacturing monitoring Experimental setup for VARI process Before the experiment, three SMART layers were hollowed out for the resin to flow easily and nine circular PZT sensors (Ф8 mm × 0.33 mm) with the piezoelectric strain constant of about dd33 = 510 × 10−12 C/N were mounted on the bonding pad of the polyimide film Kapton® substrate, as shown in Fig. 1. The fiber prefabrication (400 mm × 400 mm× 2 mm) consisted of eight T300 woven carbon fiber plies was placed in the central area of the surface of a 6061-Aluminum alloy plate mold (600 mm × 600 mm × 2 mm). Then the layers were inserted into a specific position between the sixth and seventh plies to form a sensor network which were shown in Fig. 5. After that, seal the system and pump the air.Then the ScanGenie II developed by Acellent Technologies, Inc. at Sunnyvale, USA was used for generating and receiving Lamb wave signals as the baselines of different sensing paths. Due to the slight difference in the performance of piezoelectric sensors, the optimal excitation frequencies of different paths are obtained. The sensing paths and different excitation characteristics for manufacturing monitoring in Fig. 1 are listed in Table 1. Structural Health Monitoring Materials Research Forum LLC Materials Research Proceedings 18 (2021) 121-130 https://doi.org/10.21741/9781644901311-15 123 Fig. 1 The scene picture of the experiment for the VARI process. Table 1 Paths and excitation characteristics of piezoelectric sensor network Path Amp (V) f(kHz) Path Amp (V) f(kHz) Path Amp(V) f(kHz) P4-3 60 190 P4-2 60 180 P8-6 75 170 P5-3 60 180 P5-2 70 190 P9-4 70 180 P6-3 70 220 P6-2 70 180 P9-5 70 180 P7-3 75 170 P7-4 70 190 P9-6 70 190 P8-3 75 160 P7-5 60 180 P7-2 75 180 P9-3 75 180 P7-6 60 190 P8-2 75 160 P4-6 70 170 P8-4 70 160 P9-2 75 160 P7-9 70 190 P8-5 75 160 Note: P4-3 means the sensing path that Sensor 4 is the actuator and Sensor 3 is the receiver in this paper. The resin injection was carri out at room temperature. The resin used in this experiment was a mixture of epoxy resin (EC-TDS-IN2-Infusion-Resin) and curing agent (Formulated Amine) with a mixed ratio of 0.3 by weight. The low viscosity of 550 mPa.s at room temperature ensured the infusion of the production. With the injection of resin, the response signals excited by the narrowband five-peak sine waves modulated by Hanning window were collected continuously about every 2 minutes. A camera was placed at the top of the oven to track the resin flow front. After the resin filling process, clamped the resin tube and keep pumping the air. According the resin cure curves, the whole system was cured at a constant temperature (50 °C) for 6 hours to eliminate the effect of temperature changes on the Lamb waves signal. The response signals were collected every 5 minutes in the resin curing process. Experimental results of VARI process For each sensing path listed in Table. 1, ninety-five sets of response signals were collected in about 6.5 hours. Among them, the first twenty sets of response signals were collected in the filling process and the others were in the curing process. The complexity of the waveguides and Structural Health Monitoring Materials Research Forum LLC Materials Research Proceedings 18 (2021) 121-130 https://doi.org/10.21741/9781644901311-15 124 the influence of experimental environment made it very difficult to determine the modes, so the first wave packet (the fastest mode) was selected to compare the amplitude and attenuation during the whole process. Resin filling stage In the resin filling stage, the normalized amplitude curves versus filling times are shown in Fig. 2. Some interesting issues can be found: the amplitude fluctuated slightly before the corresponding sensing paths were covered by liquid resin. In the optical detection shown in Fig.2, the sequences of the sensors covered by resin were sensor 3,2,6,5. The order of the amplitude curves tended to decline is the same and implied the sequence of the sensing path started to be covered. Then the amplitude continued to decline because partial energy of Lamb waves would leak into the composite through the liquid-solid boundary. When the sensing paths were fully covered, the signals tended to be stable and the amplitude remained zero. Fig. 2 The normalized amplitude curves versus filling time and the optical detection results. In order to reveal the relationship between the resin covering length an

Volume 18
Pages None
DOI 10.21741/9781644901311-15
Language English
Journal None

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