Research article Topical Sections

Characterization of the hybrid joint between AA2024-T3 alloy and thermoplastic composite obtained by oxy-fuel welding (OFW)

  • Studies on dissimilar materials joining have greatly increased, transitioning from temporary to permanent joining methods. The latter approach is more applicable due to the hybrid structure offering the best properties of the constituent materials, along with the development of new materials and manufacturing procedures. In this study, the AA2024-T3 alloy was treated with plasma electrolytic oxidation (PEO) and a thermoplastic composite/AA2024-T3 hybrid joint was manufactured using oxy-fuel welding (OFW). Morphological aspects, chemical compositions electrochemical and mechanical properties of hybrid composite joints were determined. The results indicated that the joint exhibits a uniform structure. The adhesion between the dissimilar materials reached a strength of 4.2 to 5.2 MPa, with cohesive bonding and without severe degradation of the thermoplastic matrix in some cases. It was observed that PEO treatment decreased the interface shear strength due to the high silicon content presence in the coating. The coatings effectively increased nobility and corrosion resistance, with corrosion rates ranging from 0.0087 to 0.018 mm/year.

    Citation: Rafael Resende Lucas, Rita de Cássia Mendonça Sales-Contini, Luis Felipe Barbosa Marques, Jonas Frank Reis, Ana Beatriz Ramos Moreira Abrahão, Edson Cocchieri Botelho, Rogério Pinto Mota. Characterization of the hybrid joint between AA2024-T3 alloy and thermoplastic composite obtained by oxy-fuel welding (OFW)[J]. AIMS Materials Science, 2024, 11(3): 585-601. doi: 10.3934/matersci.2024029

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    Over the past few decades, arthropod-borne viruses (arboviruses), particularly those transmitted by mosquitoes, have emerged and/or reemerged as significant public health problems worldwide [1]. Different conditions, such as climate change, globalization, human movement, and the lack of adequate vector control strategies, are among the complex factors, that have influenced the growing burden of arboviral infections around the globe [2]. The present threat that these viruses represent, highlights the importance of a better understanding of its transmission dynamics, in order to provide public health care authorities with evidence that could potentially help in the development of more effective prevention and control approaches. This article focuses on Zika virus (ZIKV), one of the most recent mosquito-borne pathogens that have emerged as a global public health concern, specifically in the 2016–2017 outbreak that took place in Costa Rica.

    Originally isolated in 1947 from the Zika forest of Uganda [3] and later identified in humans in the 1950's [4], ZIKV remained as a relatively unknown arbovirus for nearly 60 years [5]. It was until recent outbreaks in most American countries [6,7] that the disease gained global attention, especially after its association with microcephaly and Guillain-Barré Syndrome (GBS) cases [8,9]. This flavivirus, closely related with the dengue virus, is mainly transmitted in a human-mosquito-human transmission cycle, with the female Aedes aegypti as a primary vector and to a lesser extent Aedes albopictus [10]. It has also been documented that the ZIKV can be passed from a pregnant mother to her child during all trimesters and at time of delivery [11,12,13], through blood transfusion [14], laboratory accidents [15] and during sexual contact with an infected partner [16]. While several studies have evidenced that vector transmission remains the key driver of ZIKV transmission [17,18], sexual transmission has the potential to increase the risk of infection, epidemic size and prolong the outbreak [19,20]. Adding further complexity to the dynamics of the disease, it has been estimated that up to 80% of all ZIKV infections are asymptomatic [21], where even at low viremia levels, these cases have the potential to cause congenital Zika syndrome [22], which emphasizes the importance of silent ZIKV transmission.

    To discuss potential control strategies of an infectious disease, such as ZIKV, the use of mathematical models can play an important role in the development of efficient control strategies [23]. In general, these models help decision makers focus on key aspects of the disease, and are now commonly used in the development of public health policies around the world [24,25]. An important threshold quantity that can be estimated with such models, is the basic reproductive number, R0, first presented in [26]. Its biological meaning describes the number of secondary infections caused by a typical infectious individual in a mostly susceptible population. Previous studies have estimated R0 to determine key parameters and region specific public health strategies [27,28,29,30,31,32,33]. This threshold quantity can be estimated using a variety of mathematical and statistical techniques, in this article we use an Approximate Bayesian Computation (ABC) approach in order to obtain parameter estimates and R0 distribution.

    Given the data provided by the Ministry of Health of Costa Rica, weekly reported ZIKV cases, and using the statistical methodology described in Section 3, we estimated key model parameters. This data can provide public health authorities with information to assess viable public health strategies based on one of the key features of the model, host availability for mosquito feeding.

    The article is organized as follows: in Section 2, we provide details on the data and statistical methodology applied to estimate parameters, as well as the description of the model used. In Section 3, we show the parameter estimation using the Approximate Bayesian Computation (ABC). In Section 4, we provide the results and, in Section 5, we give our conclusions.

    Costa Rica is a country located in the Central America isthmus with a population of approximately 5,003,402 [34], of which an estimated 75% live in urban areas [35]. The country has a natural environment rich in biodiversity, and tropical weather with two well defined seasons, a dry season (December-April) and a rainy season (May-November) [36]. The annual average temperature varies from 10 C to 27 C, with an annual rainfall that can go from 1000 mm per year, up to 4000 mm per year, depending on the region [37]. These tropical conditions that greatly influence Aedes mosquito population and behaviour.

    The Ministry of Health is the main entity responsible for the surveillance of arboviral diseases and has a long standing experience on its management. In the 1980s the Ae. aegypti mosquito re-infested the country, after a brief period of eradication [38]. Since 1993, dengue virus has been endemic in Costa Rica, and three of the four serotypes have circulated the country [39]. In 2014, the chikungunya virus also emerged, causing outbreaks in different regions of the national territory [39].

    In Costa Rica, Zika was first documented in January 2016, as an imported case from a 25-year-old Costa Rican male who contracted the virus after a trip to Colombia [40]. Prior to this patient, a 55-year-old US tourist that had traveled to Nosara, Guanacaste from December 19-26, 2015, was diagnosed with Zika upon his return to Massachusetts [41]. Subsequently, in February 2016, the first two autochthonous cases were confirmed by the Ministry of Health, one from a 24-year-old pregnant woman, and another from a 32-year-old woman, both of them residents of Nicoya, Guanacaste [42].

    Since then, the virus spread rapidly throughout the seven Costa Rican provinces, mainly in areas near the coast, which are largely infested by the mosquito and have a high circulation of the other two arboviruses, dengue and chikungunya. No notified deaths associated with Zika or concomitant infections by Zika, dengue or chikungunya, have been identified in any of the provinces [43].

    In Figure 1, we illustrate the concentration of ZIKV cases in 2016 and 2017 in Costa Rica. Note that the vast majority of cases were reported in coastal regions where temperature is ideal for mosquito prevalence.

    Figure 1.  Zika incidence per region, Costa Rica, 2016-2017. In 2016, the province with higher incidence was Puntarenas, located in the Pacific coast. In 2017, the province with higher incidence was Limón, located in the Caribbean coast [39].

    In our model, we use the number of weekly clinically and laboratory-diagnosed cases of ZIKV infection reported during 2016-2017, to the Costa Rican Ministry of Health [39]. In Costa Rica, ZIKV infections are mainly identified during a clinical examination. Following national guidelines, laboratory testing is made only to those samples that meet the clinical and epidemiological criteria. Once endemic circulation in a region is determined, only samples from groups at risk, such as pregnant women, and newborns with microcephaly, are analyzed [44].

    Between January and December 2016, a total of 7,820 cases were reported from hospitals and clinics around the country. The peak of patients was observed during the months of August and September (epidemiological week 31–41) [39]. Through the first year of ZIKV introduction, the laboratory responsible for coordinating the virological surveillance of arbovirus at a national level, the INCIENSA National Virology Reference Center, analyzed 6,297 samples, of which 1,794 were positive [45].

    In 2017 ZIKV transmission prevailed, however, the number of reported cases were less than the previous year. Some factors that might have influenced this are: herd immunity and greater awareness by public health officials. A total of 2,414 cases were reported by the Ministry of Health [39], with a confirmation of 350 cases by the INCIENSA National Virology Reference Center [43].

    In general, mathematical models have been extensively used to understand the dynamics of vector-borne diseases [46,47,48,49,50,51,52,53,54,55]. Most recently, several papers have developed models specifically on estimating parameters for Zika [19,55]. For example, it has been estimated that R0 is most sensitive to the mosquito biting rate, mortality rate of mosquitoes [19] and to the human infectious period [56], where increased concentration of ZIKV in blood significantly increases the rate at which mosquitoes become infectious [57]. It has also been estimated that prior dengue virus infections could potentially protect individuals from symptomatic Zika [58] and that the effects of sexual transmission are not significant enough to sustain the disease in the absence of mosquitoes [33], but can play a role in sustaining the epidemic, in the epidemic size and in creating potential endemic scenarios [19,20,59,60].

    We introduce a nonlinear differential equation single-outbreak epidemic model that describes the Zika dynamics with sexual transmission and host availability for mosquito feeding in Costa Rica. We included the element of host availability because adult Ae. aegypti mosquito prefers to rest indoors [61,62], disperses relatively short distances from their development site, [63] and feeds on humans during daylight hours whenever the host is available [61,64]. It has also been identified that the majority of meals taken by the mosquito, are from residents or neighbors of the house they emerged as adults [65] where individuals who spent more time at home are more likely to receive Ae. aegypti bites in their homes than other household residents [66]. In Costa Rica, the National Institute of Statistics and Census has identified that women represent the part of the population that tends to stay longer periods of time at home (inside) (as shown in 2), most of that time, doing domestic chores [67]. Hence, making women more vulnerable to mosquito bites. In a country largely infested by the vector, sexual transmission dynamics has the potential to spread ZIKV in non-endemic Aedes established regions [60]. Undermining the risk of sexual transmission, may lead to an underestimate of the potential for disease persistence [20].

    The population is divided as follows: Sm,f-susceptible males and females, respectively, Em,f-exposed males and females, respectively (infected but not infectious), Um,f-infected (undiagnosed and infectious) males and females, respectively, Dm,f-infected (diagnosed) males and females, respectively and Rm,f-recovered (immune) males and females, respectively. For the vector we have: Sz (susceptible mosquitoes), Ez (latent mosquitoes) and Iz (infected mosquitoes). The following is the system of nonlinear differential equations:

    Sm=λ(t)SmIzNzβmSm[Uf+DfNf],Em=λ(t)SmIzNz+βmSm[Uf+DfNf]αmEm,Um=αmEm(γm+δm)Um,Dm=δmUmγmDm,Rm=γmUm+γmDm,Sf=λ(t)SfIzNzβfSf[Um+DmNm],Ef=λ(t)SfIzNz+βfSf[Um+DmNm]αfEf,Uf=αfEf(γf+δf)Uf,Df=δfUfγfDf,Rf=γfUf+γfDf,Sz=μNzβzSz[ξm(Um+Dm)+ξf(Uf+Df)N]μSz,Ez=βzSz[ξm(Um+Dm)+ξf(Uf+Df)N](μ+αz)Ez,Iz=αzEzμIz, (2.1)

    where Nm=Sm+Em+Um+Dm+Rm, Nf=Sf+Ef+Uf+Df+Rf, N=Nm+Nf and Nz=Sz+Ez+Iz. The transmission rate is given by λ(t)=NzNκphv, where NzN is the vector to human ratio, κ is the mosquito biting rate and pvh is the probability of infection from mosquito to human. Model parameters and description are shown in Table 1. For sexual transmission within hosts the transition from susceptible to infected is measured by βm,f=β×σm,f, where β is the transmission rate (weeks1) and σm,f (dimensionless) is the sexual activity indicator for males and females, respectively. In Figure 3, we illustrate the model transitions.

    Table 1.  Model parameters and description.
    Parameter Description
    βm,f Transmission rate via sexual activity between males and females (weeks1)
    αm,f Per-capita exposed rate of males and females, respectively (weeks1)
    δm,f Per-capita diagnosis rate after infection (weeks1)
    γm,f Per-capita recovery rate of males and females, respectively (weeks1)
    βz Transmission rate (mosquito-to-human) (weeks1)
    αz Per-capita exposed rate of mosquitoes (weeks1)
    ξm,f Proportion of hosts available (males and females) for mosquito feeding (Dimensionless)
    μ Per-capita mortality rate of mosquitoes (weeks1)
    κ Mosquito biting rate (weeks1)
    pvh Probability of infection from mosquito to human (Dimensionless)

     | Show Table
    DownLoad: CSV
    Figure 2.  Average time of population aged 12 and over doing unpaid domestic work, by age group and sex, October and November 2017. Graphic taken from the National Institute of Statics and Census. Figure adapted from Figure 5.6 in [67].
    Figure 3.  Flow diagram of Zika dynamics with sexual transmission.

    We are interested in exploring the effects of host availability, as well as sexual transmission of ZIKV in Costa Rica. Here, host availability is modeled via the parameter ξm,f (male and female), where ξm,f[0,1]. This parameter serves as a reduction factor in the transmission dynamics from mosquito to host.

    Moreover, using the next generation approach by [68], we computed the basic reproductive number, R0. However, the analytic expression is highly complex, therefore, we computed its value in Mathematica using the parameter estimates.

    We used weekly reported cases from [39] and the Approximate Bayesian Computation (ABC) to fit the model, estimate parameters and the basic reproductive number distribution from the 20162017 Zika outbreak in Costa Rica.

    In Figure 3, we show the number of ZIKV confirmed cases and the model solution after estimating parameters.

    We use the Approximate Bayesian Computation (ABC) parameter estimation method. This method seeks to approximate the posterior distribution of the parameters through algorithms where the evaluation and optimization of the likelihood is not performed. On the other hand, this method is based on sequential algorithms that allow the approximation of the posterior density using sampling schemes such as rejection sampling, MCMC or sequential Monte Carlo sampling (see [69] for an exhaustive summary of the subject).

    Some of the parameters were fixed in order to follow the ecology constraints of the vector, as well as some conditions of the transmission dynamics of the disease that have been explored in previous articles [54,70]. The total set of parameters (fixed and estimated), as well as the initial conditions of the system are presented in Table 2.

    Table 2.  Model parameters, initial conditions and R0.
    Parameter Fixed Value Point Estimate Prediction Interval Coefficient of Variation
    Fixed parameters
    αm,αf 7/5 N/A N/A N/A
    βm 1.186 N/A N/A N/A
    βf 0.949 N/A N/A N/A
    βz 4.745 N/A N/A N/A
    γm,γf 7/6 N/A N/A N/A
    αz 7/10 N/A N/A N/A
    ξm 0.5 N/A N/A N/A
    ξf 0.8 N/A N/A N/A
    phv 0.33 N/A N/A N/A
    Fixed initial conditions
    Em(0),Ef(0) 0 N/A N/A N/A
    Um(0),Uf(0) 1 N/A N/A N/A
    Dm(0),Df(0) 0 N/A N/A N/A
    Rm(0),Rf(0) 0 N/A N/A N/A
    Ez(0) 0 N/A N/A N/A
    Iz(0) 1 N/A N/A N/A
    Active parameters
    κ N/A 151.109 (120.944,184.707) 0.116
    δm,δf N/A 181.307 (67.337,288.285) 0.318
    μ N/A 4.054 (3.539, 4.586) 0.071
    Sm(0),Sf(0) N/A 7376 N/A N/A
    Sz(0) N/A 1637 N/A N/A
    R0 N/A 1.519 (1.508, 1.531) 0.004

     | Show Table
    DownLoad: CSV

    The initial conditions of the susceptible populations and the initial values of the three remaining parameters (μ, κ and δ) are obtained through the minimization of the sum of squared differences between the observed cases and the total number of cases per week according to the model (2.1). We used a genetic algorithm [71,72] and the quasi-Newton L-BFGS-B method [73] to obtain the minimum. With the first algorithm we make an initial search in the parameter space and then the search for the first step is improved using as initial value the result of the genetic algorithm.

    Once we obtained the initial values of the three parameters, we used a rejection sampling scheme for the ABC [74] through the EasyABC package of R [75]. The prior densities for the three parameters were truncated normal to assure that the parameters are strictly positive, and their corresponding means are the initial values obtained through the optimization procedure.

    A summary of the main estimation results is shown in Table 2. It contains the point estimates and the Bayesian 95% prediction intervals of the active parameters and the assumed values in case of fixed quantities.

    In Figure 4, we show the data from the 2016-2017 ZIKV outbreak and model solutions based on the estimated parameters and initial conditions (see Table 2), and different model solutions based on ξm and ξf (host availability), as well as the respective R0 values. In Figure 4a, the model parameters are taken from Table 2 where the values of ξm and ξf are assumed to be 0.5 and 0.8, respectively. The model curve (solid line) is fitted to the weekly reported data (dots). Given the parameter estimates, the model suggests that R0=1.519, a sustainable outbreak, which coincides with the situation in 2016-2017 in Costa Rica. Previous studies conducted in Costa Rica with dengue and chikungunya [70] have shown that the introduction of a new infectious disease in the population proves difficult to contain even when strict public health policies are in place. Moreover, in Figure 4b, the dashed line represents a reduction in female host availability (ξf=0.5), R0 is reduced to 1.434. This presents a situation where even when reducing host availability the epidemic is still sustainable (R0>1), albeit with a reduction in the number of cases. In Figure 4c, a more extreme case where ξm=ξf=0.4, host availability for males and females is reduced significantly, we observe an even lower number of ZIKV cases (dashed line) and R0=1.368. Still, the epidemic remains sustainable (R0>1) and suggests that in order to have R0<1 host availability needs to be very low, and hence, not a viable public health strategy on its own.

    Figure 4.  Data (dots) from the 2016-2017 ZIKV outbreak in Costa Rica and model solutions.

    In Figure 6a, we use the estimated parameters (in Table 2) to analyze host availability as a function of the basic reproductive number, R0. Here, we confirm that in order to have R0<1, host availability for both males and females needs to be below 3. Furthermore, the viability of reducing host availability (ξm and ξf) is not realistic. In turn, other more viable strategies, or a combination of, are required in order to have R0<1. In Figures 6b, 6c we use the same analysis using the mosquito biting rate (κ) and mosquito mortality rate (μ) with different host availability values.

    The posterior densities of the three active parameters and R0 are shown in Figure 5. We obtained the posterior densities using the ABC approach under a rejection scheme with 100000 samples, from which we selected the 1000 samples that guaranteed the smallest mean square errors between the number of observed and theoretical diagnosed cases. It is important to note that the level of precision of the parameter estimates, measured through the coefficient of variation of the posterior distribution, attains their minimum values for R0 and μ, as can be seen in the last column of Table 2. Therefore, the degree of accuracy with which we are estimating R0 is reliable.

    Figure 5.  Posterior densities (parameters and R0).
    Figure 6.  Parameter values: βm=1.186, βf=0.949, βz=4.745, αm,f=7/5, γm,f=7/6, αz=7/10, phv=0.33, κ=151.109, δm,f=181.307 and μ=4.054. The model parameters are estimates from Table 2.

    We performed an elasticity and sensitivity analysis on the R0 parameters (see Table 3). Our analysis revealed that R0 is most sensitive to the probability of infection from mosquito to human (pvh) and the exposed rate of mosquitoes (αz) followed by the host availability parameters ξm (male) and ξf (female).

    Table 3.  Sensitivity index for R0 parameters. We used λR0R0λ to determine elasticity (left) and R0λ to determine un-normalised sensitivity (right), where λ is the parameter [77]. The parameters not shown, δm and δf have indices <0.001.

     | Show Table
    DownLoad: CSV

    The importance of the female host availability is in part due to a larger proportion of the female population out of the workforce [76] and therefore they stay home (inside) for longer periods of time [67]. This scenario gives the mosquito more feeding opportunities throughout the day. In contrast, the male population spends most of their time in workforce activities [67], in turn, males tend to be more mobile giving the mosquito less opportunities to feed.

    These parameters increase R0, therefore creating opportunities to reduce incidence. Taking into account that vector control measures are the most common practice of prevention/control, we argue that targeted strategies to individuals that stay home long periods of time along with vector control can prove viable strategies in order to reduce ZIKV incidence in Costa Rica.

    Currently, the most common techniques used to combat vector borne diseases in Costa Rica, include epidemiological and entomological surveillance, environmental management, public education and chemical control [78]. In spite of these efforts, the numerous larval habitats identified in households of one of the most affected area of the country, shows that people may not be taking all the actions necessary to eliminate mosquito larval habitats [79]. In a disease where human behaviour plays a significant role, control strategies must depend on the specific socioeconomic context and behavioral characteristics of the population [80]. Reducing the mosquito biting rate involve strategies surrounding repellents, clothing that minimizes skin exposure during daylight hours, as well as, the use of window and door screens [81]. Nonetheless, given the characteristics of the population and household fixtures of the most affected areas [82], these possibilities are likely to incur in an economic burden for the population at risk. Lastly, the role of sexual transmission was shown to be minimal. However, it is important that this transmission mechanism be considered in order to implement the appropriate intervention strategies in future ZIKV outbreaks.

    After the rapidly spread of ZIKV through various Latin American countries, the introduction of the virus to Costa Rica was expected [83]. Despite efforts made from public health authorities, the virus has circulated the seven provinces and has caused important consequences in the health and well-being of the Costa Rican population, in particular, due to neurological complications. According to data provided by the Costa Rican Social Security Fund (CCSS), from January 2016-December 2017 there were a total of 21 hospitalizations due to Zika, 13 of which were from women in a reproductive age. During that same period of time, 323 pregnant women and six newborns with microcephaly were confirmed to have the virus [44]. However, the actual number of newborns affected by ZIKV could be higher, as evidenced in a report published by The Center for Congenital Diseases in Costa Rica. In the report, it was established that since the introduction of ZIKV to the country, the cases of microcephaly almost doubled, especially in the coastal regions, which could indicate that the observed increase may be associated, in some level, with ZIKV [84].

    It is evident that ZIKV presents a unique challenge to public health authorities around the world. The multiple routes of transmission, the large number of asymptomatic cases, as well as, its link with microcephaly and other neurological disorders, makes the planning of effective prevention/control measures a unique challenge to public health officials [85,86]. In Costa Rica, a country greatly infested by the Aedes mosquito, a better understanding of the transmission dynamics and ecology of the vector, can provide a guide to introduce more efficient prevention and control interventions, that allows for a better use of the human and economic resources available for the control of vector borne-diseases.

    We estimated the basic reproductive number distribution using the estimated parameters by means of a simulation-based Bayesian approach (ABC). This method has the advantage that it does not require strong assumptions on the data which are necessary if we use classical estimation methods, such as maximum likelihood or least squares. Furthermore, the Bayesian nature of ABC allows us to assume that some parameters of the model are random with the additional advantage that the modeling of those parameters includes the understanding of their variation.

    Using data from the Ministry of Health's surveillance system, our study showed that the risk of ZIKV transmission in Costa Rica is greater in the population that spends most of its time inside. These results go in hand with previous studies that evidenced that female adult Ae. aegypti are more likely to bite household residents that spend more time inside their homes [66], and highlights the need for more effective community engagement strategies, in order to enable residents of different areas in the communities to make informed health decisions that will influence their overall well-being [87]. This becomes more significant, based on the fact that women constitute the majority of the population that stays inside [67], which gives an extra layer of relevance to the findings. The study also evidenced that for Costa Rica, the sexual transmission route for the virus plays a secondary role in the propagation of the disease, however, public health officials need to remain vigilant and provide information to the general population about the risk of sexual transmission of ZIKV.

    Although participatory approaches from the communities have been used for many years in the control of mosquito borne diseases, its proper implementation has been difficult to achieve [88]. A bottom-up communicative approach at all levels of the public health system [89] could provide a greater interest in the general population to implement the mosquito control strategies widely recommended by health officials around the country. A better understanding of the specific needs of each region, each one with different social, cultural and economic characteristics, makes it fundamental to plan mosquito control strategies according to its specific needs [90]. Not taking into account the great heterogeneity of houses and neighborhoods where the mosquito completes its life cycle, along with the limited resources and personnel trained in the control of the vectors, are at least in part, attributed to the failure of previous prevention and control actions [91]. Because of the ongoing disease transmission, and the risk of recurrence of an outbreak, health care authorities around the country need to remain vigilant and establish a comprehensive arboviral disease surveillance. Prevention and control interventions adjusted to each specific region, with a more active involvement of the communities members is recommended to achieve a more efficient control of the ZIKV and other mosquito-borne diseases.

    The author is solely responsible for the views and opinions expressed in this research. We would like to thank the Ministry of Health of Costa Rica for providing the data regarding reported Zika cases.

    All authors declare no conflicts of interest in this paper.



    [1] Barbosa LCM, de Souza SDB, Botelho EC, et al. (2019) Fractographic evaluation of welded joints of PPS/glass fiber thermoplastic composites. Eng Fail Anal 102: 60–68. https://doi.org/10.1016/j.engfailanal.2019.04.032 doi: 10.1016/j.engfailanal.2019.04.032
    [2] Sarma K, Borah MJ, Saha N (2023) Friction stir spot welding: A novel approach to weld polyvinyl chloride. AIP Conf Proc 2825: 040002. https://doi.org/10.1063/5.0171424 doi: 10.1063/5.0171424
    [3] Shashikumar S, Sreekanth M (2024) Investigation on mechanical properties of polyamide 6 and carbon fiber reinforced composite manufactured by fused deposition modeling technique. J Thermoplast Compos Mater 37: 1730–1747. https://doi.org/10.1177/08927057231200006 doi: 10.1177/08927057231200006
    [4] Ye J, Wu W, Gao Y, et al. (2023) Hygrothermal aging effects on fiber-metal-laminates with engineered interfaces. Compos Commun 43: 101721. https://doi.org/10.1016/j.coco.2023.101721 doi: 10.1016/j.coco.2023.101721
    [5] Siddique A, Iqbal Z, Nawab Y, et al. (2023) A review of joining techniques for thermoplastic composite materials. J Thermoplast Compos Mater 36: 3417–3454. https://doi.org/10.1177/08927057221096662 doi: 10.1177/08927057221096662
    [6] Liu Z, Li Y, Liu Y, et al. (2023) Ultrasonic welding of metal to fiber-reinforced thermoplastic composites: A review. J Manuf Process 85: 702–712. https://doi.org/10.1016/j.jmapro.2022.12.001 doi: 10.1016/j.jmapro.2022.12.001
    [7] Tiamiyu A, Badmos A, Odeshi A, et al. (2017) The influence of temper condition on adiabatic shear failure of AA 2024 aluminum alloy. Mater Sci Eng A 708: 492–502. https://doi.org/10.1016/j.msea.2017.10.026 doi: 10.1016/j.msea.2017.10.026
    [8] Zhang G, Wu L, Tang A, et al. (2018) Active corrosion protection by a smart coating based on a MgAl-layered double hydroxide on a cerium-modified plasma electrolytic oxidation coating on Mg alloy AZ31. Corros Sci 139: 370–382. https://doi.org/10.1016/j.corsci.2018.05.010 doi: 10.1016/j.corsci.2018.05.010
    [9] Fioravante I, Nunes R, Acciari H, et al. (2019) Films formed on carbon steel in sweet environments—A review. J Brazil Chem Soc 30: 1341–1349. https://doi.org/10.21577/0103-5053.20190055 doi: 10.21577/0103-5053.20190055
    [10] Lucas R, Gonçalves L, Santos D (2020) Morphological and chemical characterization of oxide films produced by plasma anodization of 5052 aluminum alloy in solution containing sodium silicate and sodium phosphate. Rev Bras Apl Vac Campinas 39: 33–41. https://doi.org/10.17563/rbav.v39i1.1154 doi: 10.17563/rbav.v39i1.1154
    [11] Zhou C, Qian N, Su H, et al. (2022) Effect of energy distribution on the machining efficiency and surface morphology of Inconel 718 nickel-based superalloy using plasma electrolytic polishing. Surf Coat Technol 441: 128506. https://doi.org/10.1016/j.surfcoat.2022.128506 doi: 10.1016/j.surfcoat.2022.128506
    [12] Pezzato L, Gennari C, Franceschi M, et al. (2022) Influence of silicon morphology on direct current plasma electrolytic oxidation process in AlSi10Mg alloy produced with laser powder bed fusion. Sci Rep 12: 14329. https://doi.org/10.1038/s41598-022-18176-x doi: 10.1038/s41598-022-18176-x
    [13] Valentini F, Pezzato L, Dabalà M, et al. (2023) Study of the effect of functionalization with inhibitors on the corrosion properties of PEO-coated additive manufactured AlSi10Mg alloy. J Mater Res Technol 27: 3595–3609. https://doi.org/10.1016/j.jmrt.2023.10.160 doi: 10.1016/j.jmrt.2023.10.160
    [14] Shore D, Wilson J, Matthews A, et al. (2021) Adhesive bond strength of PEO coated AA6060-T6. Surf Coat Technol 428: 127898. https://doi.org/10.1016/j.surfcoat.2021.127898 doi: 10.1016/j.surfcoat.2021.127898
    [15] Lucas R, Marques L, Botelho E, et al. (2024) Experimental design of the adhesion between a PEI/glass fiber composite and the AA1100 aluminum alloy with oxide coating produced via plasma electrolytic oxidation (PEO). Ceramics 7: 596–606. https://doi.org/10.3390/ceramics7020039 doi: 10.3390/ceramics7020039
    [16] Abrahão A, Reis J, Brejão S, et al. (2015) Evaluation of time, current and pressure parameters in electrical resistance welding of PEI/continuous fiber composites: influence on mechanical resistance. Mater 20: 530–543. https://doi.org/10.1590/S1517-707620150002.0053 doi: 10.1590/S1517-707620150002.0053
    [17] Maia G, Souza M, Brito A (2021) A discussion on the parameters of the resistance spot welding process and their influences on the quality of the welded joint using analysis and design of experiments. SAE Technical Paper. https://doi.org/10.4271/2020-36-0180 doi: 10.4271/2020-36-0180
    [18] Faria R (2018) Use of the extended finite element method to predict the strength of hybrid T-joints. Master Thesis. https://recipp.ipp.pt/handle/10400.22/12703
    [19] Robles J, Dubé M, Hubert P, et al. (2022) Repair of thermoplastic composites: An overview. Adv Manuf-Polym Compos Sci 8: 68–96. https://doi.org/10.1080/20550340.2022.2057137 doi: 10.1080/20550340.2022.2057137
    [20] ASTM (2019) Standard test method for apparent shear strength of single-lap-joint adhesively bonded metal specimens by tension loading (metal-to-metal). Available from: https://www.astm.org/d1002-10r19.html.
    [21] Liu G, Lu X, Zhang X, et al. (2022) Improvement of corrosion resistance of PEO coatings on Al alloy by formation of ZnAl layered double hydroxide. Surf Coat Technol 441: 128528. https://doi.org/10.1016/j.surfcoat.2022.128528 doi: 10.1016/j.surfcoat.2022.128528
    [22] Fatimah S, Kamil M, Han D, et al. (2022) Development of anti-corrosive coating on AZ31 Mg alloy subjected to plasma electrolytic oxidation at sub-zero temperature. J Magnes Alloy 10: 1915–1929. https://doi.org/10.1016/j.jma.2021.07.013 doi: 10.1016/j.jma.2021.07.013
    [23] Aliasghari S, Rogov A, Skeldon S, et al. (2020) Plasma electrolytic oxidation and corrosion protection of friction stir welded AZ31B magnesium alloy-titanium joints. Surf Coat Technol 393: 125838. https://doi.org/10.1016/j.surfcoat.2020.125838 doi: 10.1016/j.surfcoat.2020.125838
    [24] Lucas R, Mota R, Abrahão A, et al. (2022) Characterization of oxide coating grown by plasma electrolytic oxidation (PEO) at different times on aluminum alloy AA2024-T3. MRS Commun 12: 266–271. https://doi.org/10.1557/s43579-022-00174-9 doi: 10.1557/s43579-022-00174-9
    [25] Mohedano M, Mingo B, Matykina E, et al. (2021) Effects of pre-anodizing and phosphates on energy consumption and corrosion performance of PEO coatings on AA6082. Surf Coat Technol 409: 126892. https://doi.org/10.1016/j.surfcoat.2021.126892 doi: 10.1016/j.surfcoat.2021.126892
    [26] Qiu X, Tariq N, Qi L, et al. (2019) Effects of dissimilar alumina particulates on microstructure and properties of cold-sprayed alumina/A380 composite coatings. Acta Metall Sin 32: 1449–1458. https://doi.org/10.1007/s40195-019-00917-z doi: 10.1007/s40195-019-00917-z
    [27] Molaei M, Fattah-alhosseini A, Nouri M, et al. (2022) Systematic optimization of corrosion, bioactivity, and biocompatibility behaviors of calcium-phosphate plasma electrolytic oxidation (PEO) coatings on titanium substrates. Ceram Int 48: 6322–6337. https//doi.org/10.1016/j.ceramint.2021.11.175 doi: 10.1016/j.ceramint.2021.11.175
    [28] ASTM (2019) Standard practice for classifying failure modes in fiber-reinforced-plastic (FRP) joints. Available from: https://www.astm.org/d5573-99r19.html.
    [29] Chai Y, Yan J, Wang C, et al. (2023) Effect of electrical parameters on the growth and properties of 7075 aluminum alloy film based on scanning micro-arc oxidation with mesh electrode. J Mater Res Technol 25: 988–998. https://doi.org/10.1016/j.jmrt.2023.06.020 doi: 10.1016/j.jmrt.2023.06.020
    [30] Dias G, Sakundarini N, May C (2021) Mechanical and failure analysis of multi-materials adhesive joining. Int J Integr Eng 13: 160–166. https://doi.org/10.30880/ijie.2021.13.07.019 doi: 10.30880/ijie.2021.13.07.019
    [31] Sánchez-Romate X, Baena L, Jiménez-Suárez A, et al. (2019) Exploring the mechanical and sensing capabilities of multi-material bonded joints with carbon nanotube-doped adhesive films. Compos Struct 229: 111477. https://doi.org/10.1016/j.compstruct.2019.111477 doi: 10.1016/j.compstruct.2019.111477
    [32] Haddou Y, Salem M, Amiri A, et al. (2023) Numerical analysis and optimization of adhesively-bonded single lap joints by adherend notching using a full factorial design of experiment. Int J Adhes Adhes 26: 103482. https://doi.org/10.1016/j.ijadhadh.2023.103482 doi: 10.1016/j.ijadhadh.2023.103482
    [33] Wilson A, Grabowski A, Kustosik K, et al. (2018) Tartaric acid cross-contamination in post-cascade rinses after sulphuric acid anodising (SAA): Effect on adhesive bond strength of AA6060-T6 alloy. Int J Adhes Adhes 81: 30–35. https://doi.org/10.1016/j.ijadhadh.2017.11.004 doi: 10.1016/j.ijadhadh.2017.11.004
    [34] Müller-Pabel M, Agudo J, Gude M (2022) Measuring and understanding cure-dependent viscoelastic properties of epoxy resin: A review. Polym Test 114: 107701. https://doi.org/10.1016/j.polymertesting.2022.107701 doi: 10.1016/j.polymertesting.2022.107701
    [35] Ramgobin A, Fontaine G, Bourbigot S (2019) Thermal degradation and fire behavior of high performance polymers. Polym Rev 59: 55–123. https://doi.org/10.1080/15583724.2018.1546736 doi: 10.1080/15583724.2018.1546736
    [36] Posuvailo V, Imbirovych N, Povstyanoy O, et al. (2023) The state of electrolytic plasma in synthesis of oxide ceramic coatings on the magnesium basis, In: Ivanov V, Pavlenko I, Liaposhchenko O, et al. Advances in Design, Simulation and Manufacturing VI. DSMIE 2023. Lecture Notes in Mechanical Engineering, Cham: Springer, 258–269. https://doi.org/10.1007/978-3-031-32774-2_26
    [37] Fattah-alhosseini A, Chaharmahali R, Alizad S, et al. (2023) Corrosion behavior of composite coatings containing hydroxyapatite particles on Mg alloys by plasma electrolytic oxidation: A review. J Magnes Alloy 11: 2999–3011. https://doi.org/10.1016/j.jma.2023.09.003 doi: 10.1016/j.jma.2023.09.003
    [38] Xhanari K, Finšgar M (2019) Organic corrosion inhibitors for aluminum and its alloys in chloride and alkaline solutions: A review. Arab J Chem 12: 4646–4663. https://doi.org/10.1016/j.arabjc.2016.08.009 doi: 10.1016/j.arabjc.2016.08.009
    [39] Gobara M, Baraka A, Akid R, et al. (2020) Corrosion protection mechanism of Ce4+/organic inhibitor for AA2024 in 3.5% NaCl. RSC Adv 10: 2227–2240. https://doi.org/10.1039/C9RA09552G doi: 10.1039/C9RA09552G
    [40] Zamani P, Valefi Z, Jafarzadeh K (2022) Comprehensive study on corrosion protection properties of Al2O3, Cr2O3 and Al2O3–Cr2O3 ceramic coatings deposited by plasma spraying on carbon steel. Ceram Int 48: 1574–1588. https://doi.org/10.1016/j.ceramint.2021.09.237 doi: 10.1016/j.ceramint.2021.09.237
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