Qawareer
Fatima
ab,
Azhar Ali
Haidry
*ab,
Zhengjun
Yao
*ab,
Yue
He
ab,
Zhong
Li
ab,
Linchao
Sun
ab and
Lijuan
Xie
ab
aCollege of Materials Science and Technology, Nanjing University of Aeronautics and Astronautics, 211100 Nanjing, China. E-mail: aa.haidry@nuaa.edu.cn; azharalig2@gmail.com; yaozj@nuaa.edu.cn
bKey Laboratory of Materials Preparation and Protection for Harsh Environment, Ministry of Industry and Information Technology, 211100 Nanjing, China
First published on 26th October 2018
Excellent adsorption of water vapor on the surface of graphene oxide (GO), which contains several inherited functional groups, leads to the development of improved humidity monitoring systems that can urgently meet the high industrial demand. In this study, we fabricated a GO-based humidity sensor and investigated the influence of hydroxyl group concentration on its performance. The sensor exhibited excellent humidity sensing performance in terms of sensitivity (sensor response ∼40 for 90% RH), selectivity, stability (both long-term and short-term) and reaction time (τres = 8.5 s and τrec = 13 s). Additionally, this sensor does not require external power consumption for heating; thus, the aforementioned performance (recorded at room temperature) with an applied voltage of 0.1 V can significantly reduce the power/energy consumption to about ∼1.314 × 10−4 kW h per year. In the future, this type of sensor can be integrated into smart humidity monitoring systems to not only monitor but also control the humidity levels on a specific application area. Based on complementary characterization techniques, such as XRD, AFM, Raman and electrical measurement, here, we propose a physical-chemical sensing model to elucidate the aforementioned sensor characteristics.
Since its discovery, graphene and its derivatives6,7 have been used in many applications, including oxygen reduction reactions,8,9 bio-sensing,10–12 mechanical sensing,13–15 chemical, and gas sensing.16 It has been reported that nitrogen doping8 and Fe–N–C nanoparticles9 can significantly improve the oxygen reduction reaction (ORR) in energy conversion systems, for instance, in fuel cells and batteries. It has already been demonstrated that resistive-type humidity sensors based on graphene oxide (GO) offer significant solutions to many industries owing to their unique electrical and surface properties17,18 as well as low-cost fabrication, long-term stability, interchangeability and compatibility with semiconductor fabrication technology.19 The properties of GO can be enhanced according to the application by controlling its functional groups thermally or via chemical reduction since it contains distinct functional groups, e.g., carboxyl, epoxy, lactone, phenol, carbonyl, anhydride, and ether.20–23 In addition, GO possesses inadmissible defect chemistry and can easily dissolve in water (and organic solvents) due to its oxygen functional groups, which surprisingly give rise to remarkable properties. These functional groups in GO allow fast water permeation within the GO layers, as reported by Nair,24 which permits rapid water molecule diffusion (in and out of GO) during humidity changes and provides enhanced adsorption and binding energy of gas molecules.25–27 The respective GO layers are connected via H-bonds between the functional groups and water molecules. At high RH, the H-bonds between water molecules dominate, inducing an increase in the distance between the GO layers (so-called swelling effect), which reduces the interlayer H-bond interactions.28,29 Basically, GO-based gas sensors are p-type materials30 and show decrease in electrical conduction due to the decrease in surface charge carrier density (in this case, hole concentration) when exposed to humidity. However, despite the rapidly growing interest in utilizing GO-based humidity sensors for real-life applications, almost all the above-mentioned sensors operate at a relatively high applied voltage, which makes them non-compatible for battery operated device applications. Potential solutions to this issue exist, such as using external heating, excessive applied voltage and UV illumination; however, these strategies increase the complexity and cost of the final device.
Various functional groups and defects may act as suitable adsorption sites for particular analyte species on the surface of GO,31–36 which may become unsuitable for other species. Thus, controlling the concentration of these specific functional groups may lead to the selective detection of a particular chemical species. Although there are several reports on GO-based humidity sensors,20–33,37–39 there is lack of available literature on the critical role of hydroxyl groups on the humidity sensing properties of GO. To the best of our knowledge, for the first time, herein, the direct impact of hydroxyl groups on the humidity sensing properties of GO is explored. GO samples were fabricated via a modified Hummer's method followed by a simple drop casting procedure onto substrates with interdigitated electrodes. The concentration of specific hydroxyl group was controlled by the chemical treatment of GO in ether solution. The prepared sensor showed excellent humidity sensing properties in terms of sensitivity, selectivity, stability and robustness. Importantly, the sensor operates under ambient conditions at 0.1 V and thus it can significantly reduce the overall power consumption, which is highly suitable for battery operated devices.
Subsequently, GO with different degrees of oxidation was synthesized by changing the content of KMnO4 to 3 g, 6 g, and 12 g. Then, the GO dispersion was dissolved in ethanol for the drop-casting procedure to obtain the GO-based humidity sensors. In the results and discussion sections, commercial GO is labelled as C-GO, and the samples prepared in FuMS are designated as GO. Meanwhile, GO samples prepared with 3 g, 6 g, and 12 g of KMnO4 are labelled as GO-I, GO-II and GO-III, respectively. Based on the initial results and analysis, GO-III was found to be the best contender for humidity sensing. Next, to investigate the effect of hydroxyl groups, GO-III was further functionalized with 2 and 5 mL ether, and these samples were further labelled as E-GO-I and E-GO-II, respectively. For simplicity, GO-flakes are referred to as GO only throughout the text (Table 1).
Sample | GO-III | Ethanol | Ether |
---|---|---|---|
GO-III | 0.29 g | 20 mL | 0 mL |
E-GO-I | 0.29 g | 20 mL | 2 mL |
E-GO-II | 0.29 g | 20 mL | 5 mL |
In the second approach, the static RH was obtained at room temperature using various saturated chemical solutions in air-tight glass flasks. For example, NaCl saturated solution was used to produce 75% RH. The schematic together with a table showing the relationship between humidity and used chemicals is shown in Table S1-ESI,† and this approach is shown in Fig. S2-ESI.† In all cases, the actual amount of %RH in the chamber was monitored using a commercial BENETECH Gm1360 Humidity & Temperature Meter purchased from Shenzhen XRC Electronics Co., Ltd.
SR = 100 × [ΔI/It] = 100 × [(Iair − It)/It] | (1) |
The argon gas flow cycles 1–9 in Fig. 3(a) correspond to the RH change in the range of 9–90% RH, and these cycles (1–9) and their corresponding RH values (9–90% RH) remain the same throughout the text. As shown in Fig. 3(b), the sensors based on C-GO have better humidity responses at a voltage ≥1 V and the best responses were obtained at an applied voltage of 2 V. For example, the C-GO response values to 44% RH measured at 2, 1 and 0.1 V are 6.31, 4.06, and 2.74, respectively. The response was also significantly reduced at a voltage below 1 V. As clearly seen in Fig. 3(b) (inset), the C-GO response to humidity above 44% RH was highly unstable at 0.1 V, which makes C-GO unsuitable for low voltage battery applications. On the other hand, the sensors based on GO (prepared in FuMS) showed excellent reproducible responses at 0.1 V, as shown in Fig. 3(c) and (d). The response values of GO-I, GO-II and GO-III were much higher than those observed for C-GO. The comparison of the dynamic responses in Fig. 3(c) demonstrates the superior humidity performance of GO-I, GO-II, and GO-III. For example, from the comparative curves in Fig. 3(c), the estimated response values of C-GO, GO-I, GO-II and GO-III to 9% RH are 1.14, 1.57, 2.96, and 3.29, respectively.
Moreover, the GO sensors (prepared in FuMS with 3, 6, and 12 g KmnO4) showed decent responses to all RH values, as shown in Fig. 3(d). Among them, GO synthesized with 6 and 12 g KmnO4 showed comparatively improved humidity sensing characteristics. However, the response of the GO-II-based sensor was higher than that of GO-III for low to medium humidity and saturated for humidity higher than 70% RH. Meanwhile, the humidity response increased linearly for the GO-III sensor. These results support the modification of functional groups on the GO samples, and after careful consideration, the GO-III sample was selected as the response does not saturate at high RH. In addition, the correlation factor for GO-II (R2 ≅ 0.95) was lower than that of GO-II (R2 ≅ 0.99), and Fig. S3-ESI† shows the linear fit comparison of GO-I, GO-II, and GO-III samples. Fig. 4(a) shows the dynamic responses of the GO-III, E-GO-I, and E-GO-II sensors for a broad range of humidity (9–90% RH) measured with 0.1 V at room temperature. The dynamic responses clearly evince the superior humidity characteristics of the sensors treated with ether, i.e., E-GO-I and E-GO-II. The response values of E-GO-I and E-GO-II increased to about 47% and 95%, respectively. For example, for 90% RH, the response values of GO-III, E-GO-I, and EGO-II were about 21.3, 30.9 and 38.5, respectively. The plot showing the sensor response comparison of GO-I, GO-II, GO-III, EGO-I, and EGO-II is displayed in Fig. S4-ESI.† In addition, it was observed that the responses of the GO sensors remained unchanged for <0.5 V but destabilized under high %RH when the applied voltage further increased. For instance, at high voltage, as shown in Fig. S5-ESI,† the response of E-GO-I and E-GO-II not only reduced but also became unstable.
Moreover, against other reducing gases, all the sensors at all applied voltages showed no or negligible response to 0.1 vol% of H2 and CO, as shown in Fig. S6(a)-ESI.† Meanwhile, a slight response to 0.1 vol% CH4 with 1.0 V at room temperature was obtained, which was not fully recoverable and repeatable with a drift in the baseline current value, as shown in Fig. S6(b)-ESI.† As an example, the estimated selectivity factor, SF, of E-GO-II for 90% RH measured at 0.1 V against 0.1 vol% H2, CO, and CH4 (with 1.0 V) is ∼48, (∼32). This indicates the selectivity of the sensor to RH only. To check the functionality of the sensors with flexible substrates, a solution of E-GO-II was also simultaneously drop-casted onto polyimide (PI) substrates, as shown in Scheme 2 in Fig. 1. The value of the baseline current for the PI/E-GO-II (8.52 × 10−6 A) sample was lower than that of the Al2O3/E-GO-II (1.63 × 10−5 A) sample, as shown in Fig. S7-ESI.† Moreover, the response also decreased slightly for Scheme 2, as shown in Fig. 4(b). We believe that the lowering of the baseline current (and sensor response) with PI substrate is strongly related to the electrode material (Ag for PI) and its design, where the distance between the consecutive fingers pair is about 300 μm (>150 μm for Ag IDEs on Al2O3 substrate). Next, the sensors were operated outside the sensing chamber under ambient conditions to test their response to human breath, which contains high relative humidity. As evident from Fig. 4(c), the sensor showed a stable response even with PI substrate to continuous exhaling/inhaling cycles. Additionally, a video is provided as a ESI,† which demonstrates the real-time humidity measurement in human breath. The response and recovery time values were unprecedentedly short at about 0.9 and 0.4 seconds, respectively, as shown in Fig. 4(d). This can be correlated to the fact that the measurements were conducted in open air environment, which contains light radiation to enhance the sensor signal.
Further in-depth investigations of the important sensor characteristics (hysteresis, reaction/recovery times and stability) were carried out with the E-GO-II sample prepared on a ceramic substrate, as presented in Fig. 5. The humidity step-like changes (6–30% RH) in Fig. 5(a) with small possible steps (3% RH) in the gas flow step correspond to the humidity measurements of E-GO-II and E-GO-I in Fig. 5(b) and (c). The sensor showed recoverable adsorption and desorption reaction even with the small humidity changes, giving an RH accuracy value of ±3–4% RH. The linear fit of the E-GO-I and E-GO-II sensor response against RH value is given in Fig. 5(d), which shows excellent linearity with estimated correlation factor values (R2 ≅ 0.99) for both samples. Moreover, the reliability of the sensor performance (so-called short-term stability) was checked with hysteresis curves, which show the difference between the response values of the adsorption and desorption processes at specific %RH. From the hysteresis curves presented in Fig. 5(e), it is clear that both samples do not show striking differences in their adsorption and desorption processes. The only slight difference was observed in the medium humidity range of 40–60% RH, and the maximum difference values in hysteresis were 1.13% and 0.63% towards 44% RH for the E-GO-I and E-GO-II sensors, respectively.
From the dynamic responses, the estimated response (τres) and recovery (τrec) times of the sensors are shown in Fig. 5(f), which demonstrate the decrease in both τres and τrec with an increase in RH values. For example, the typical τres (τrec) value decreased from 7.2 to 1.5 (from 8.1 to 4.3) minutes with RH increasing from 9% to 90% RH. The τres and τrec values are even lower for the other samples, as can be seen in Fig. 5(f). On comparison, these τres and τrec values are much higher than the values mentioned in previous reports.39–47 However, we strongly believe that the mentioned τres and τrec values in the present case do not represent the actual surface reaction but are rather given by the gas mixing process of the designed sensor test experiment, as already described elsewhere.48 This was already proven by the breath analysis experiment shown in Fig. 4(d). Thus, to further prove this non-trivial behaviour, we designed a second approach (as mentioned in the Experimental section) to test the sensors under a static measurement system, which was adopted by many researchers in the aforementioned reports. One of the typical E-GO-II dynamic responses measured with the static humidity setup is shown in Fig. S8(a)-ESI,† which clearly demonstrates that the actual τres and τrec values are much faster (τres = 8.5 s and τrec = 13 s) than that measured with the dynamic gas mixing setup. As realistic evidence, a demonstration of the short reaction times is provided in the supporting Video ESI,† which further confirms our postulate.
Finally, the long-term stability of the sensors was examined as shown in Fig. 5(g). As can be noticed, the sensors showed nearly the same response to almost all RH values throughout a thirteen month period. To further validate this, the response fluctuation value in the sensor response was estimated using ΔSR = 100 × [SRi − SRn]/SRi, where, SRi and SRn are the initial and nth measurements, respectively. The average fluctuations in the SR values for all the %RH values were below 1%, which indicates that the fluctuations in long-term stability are ±1 %RH per year. To summarize, the sensor performance in this study is compared with other previous results in Table 2. While operating at 0.1 V, the estimated power consumption of the sensor was about 15 μW. Given the above results, the performance of the humidity sensor is definitely suitable for many applications including breath analysis and in the aerospace industry, where the monitoring of trace RH and fog formation near the ground must be remotely recorded as long-term measurements, with an energy consumption ∼1.314 × 10−4 kW h per year. This value is modest compared with the energy consumed by a normal 60 W bulb, which is ∼525.6 kW h per year.
The main feature of this discussion is the pivotal role of OH− groups in the enhanced water adsorption/desorption processes. As can be seen from the data obtained from all sensors, the humidity response of GO is directly dependent on the amount of hydroxyl group, as shown in Fig. 6(a). The sensing mechanism showing the complete process of the water adsorption scheme on GO is predicted in Fig. 6(b). Subsequently, the sensing mechanism and its authentication are both discussed simultaneously. In the absence of humidity, i.e., dry air, the electronic conduction is basically dominated by the concentration of surface charge carriers on GO, which in the present case is hole concentration [h+]. With the initial injection of technical air, a high amount of oxygen enters the sensing chamber, and the current value increases, as shown in Fig. S8(a)-ESI.† A plausible reason for this observation is the dry air surface reaction with functional groups, such as acceptor OH–, which creates more holes and hence increases its concentration [h+]. Similarly, the current increases due to the change in chamber environment from a humid to an oxygen-rich environment. In addition, as can be seen from Fig. 3 and 4, the current values decrease with an increase in KMnO4 (Iair [A] = 0.8 × 10−3, 1.25 × 10−4, and 3.28 × 10−4 for GO, GO-II, and GO-III, respectively) and ether contents (Iair [A] = 8.17 × 10−4 and 16.15 × 10−4 for E-GO-I and E-GO-II, respectively). The reason for this phenomenon is discussed further.
It is conclusively evident from the estimated transmittance (ΔT = Tinitial − Tfinal) values presented in the 3D bar graphs in Fig. 7(a) for various functional groups and the complete FTIR spectra of the samples in Fig. S9-ESI† that the transmittance intensity of the broad infrared band peak in the range of ν = 3600–2400 cm−1 significantly increases with KMnO4 (ΔTνO–H = 9, 22, 24 and 32 for C-GO, GO-I, GO-II and GO-III samples, respectively) and ether contents (ΔTνO–H = 35 and 42 for E-GO-I and E-GO-II samples, respectively). This peak is basically assigned to the stretching modes of the O–H bonds originating from the intercalated water between the graphene oxide layers and the OH− groups from tertiary alcohol. Here, it is reasonable to infer that the increase in peak intensity is due to the OH− functional groups rather than intercalated water. This can be proven by two strong reasons: (1) as reported,52 ether is a strong agent to remove (or condense in solid form) intercalated water and hence (2) to decrease interatomic distance, which will be discussed later in detail. In addition, the bands of the carbonyl moieties and carboxyl groups present in the FTIR spectra at 1650, 1550, 1404, 1100, 1120, and 580 (cm−1) correspond to CO (νCO), CC (νCC), C–OH (νC–O–H), C–O–C (νC–O–C), and COH (νOH), which exist along the GO sheet edges and basal planes.50,52 The peak intensity of C–OH (νC–O–H) shows a similar increasing trend (for KMnO4 and ether treatment) to the C–OH (νC–O–H) band, as shown in Fig. 7(a). Besides, the C–O–C (νC–O–C) band for C-GO is the maximum, showing the strong correlation of carbon atoms attached to functionalized oxygen.
Due to its sensitive nature to the GO electronic structure, Raman spectroscopy was employed to gain more scientific insights into the crystal disorder and chemical modification due to functional groups. The Raman spectra of C-GO, GO-III, E-GO-I and E-GO-II are shown in Fig. 7(b). All the samples show D (at ∼1358 cm−1) and G (at ∼1585 cm−1) bands, which are ascribed to defect-activated sp3-bonded doubly resonant disorder defects and sp2-bonded in-plane vibration (E2g phonons having in frequency mode at Γ-point) of carbon atoms, respectively. The D-band intensity of C-GO is very low, whereas the G-band intensity is very high for GO-III, E-GO-I, and E-GO-II; in the latter case, the band also broadens and shifts to the left, as can be observed in Fig. 7(b). This small left-shift (so-called blue-shift) was also observed for the GO flakes treated with ether (i.e., E-GO-I and E-GO-II), indicating a decrease in the GO-stacked layer thickness. As shown in the Fig. 7(b), the intensity ratio (R = ID/IG) of the D and G bands, which also represents the structural regularity in GO flakes, still remained in the “low” defect density regime and increased with ether treatment. For instance, the R-values for the C-GO, GO-III, E-GO-I, and E-GO-II samples were 0.28, 1.01, 1.35, and 1.41, respectively. These observations indicate an increase in the number of defects due an increase in functional groups, thus causing a more disordered GO structure and shrinking of the layer distance due to ether treatment, which confines the intercalated water from translating into a solid structure.52
The shrinking of the layer distance is clearly seen in the measured AFM height profiles of the ether-treated samples in Fig. S10-ESI.† Despite the good agreement with previous results,36,41,43,44,49,50 we believe that the AFM technique is not very conclusive and only provides a rough estimate about the height profile of the GO layers because controlling the quantity of GO flakes in a drop for AFM analysis is nearly improbable. Moreover, the estimated height profile comes from the GO-stacked layers (aggregated flakes) rather than two consecutive layers.
Narrowing of the GO layers is also observable from the XRD diffractograms presented in Fig. 7(c). Both the E-GO-I and E-GO-II samples show a sharp peak in the 001 direction (perpendicular to the GO plane) at 2θ = 11.24°, which corresponds to the GO lattice structure orientation; meanwhile, for GO-III, a broad peak appears at 10.8°. The d-value estimated with the procedure mentioned in51,52 for the GO-III sample (∼9.46 Å) is much higher than that for E-GO-I (7.88 Å) and E-GO-II (7.35 Å). The d-value of the as-prepared sample is higher due to the presence of functional groups and abundant intercalated water, as illustrated in Fig. 7(d). The d-value of the ether-treated sample decreased to 7.35 Å and the peak sharpened and shifted to right at 11.24°, which is most probably due to the simultaneous increase in functional groups at the graphene basal plane and removal of intercalated water between the layers. The emergence of potassium–carbon (KC8) is also noticeable for the ether-treated GO, which is because KMnO4 reacted with graphite during the synthesis.52
As can be seen from Fig. 3 and 4, GO shows p-type sensing behaviour, which is most probably due to the introduced defects during the Hummer's method, on which adsorbed water vapor is polarized. For GO, the improved sensing characteristics is attributed to the strong adsorption of water molecules on GO-flakes. In this particular case, H2O is an excellent electron donor, which can enrich the electron concentration in GO to decrease hole density, leading to a decrease in current. At low humidity (in the present case 6–20% RH), water vapor gets adsorbed on the GO surface and spontaneously reacts with the GO surface and functional groups, which are most probably hydrophilic. As a result, water molecules form a network on the GO surface via hydrogen bonding and transfer of protons between the adsorbed water and hydrophilic groups (termed proton hopping mechanism) occurs. At this stage, physisorption of the weak mono-layer of water derivatives is possible due to low humidity (H2O ↔ H+ + OH−). Subsequently, as the reaction of the hole charge carrier [h+] at the GO surface is reduced, the current also decreases. In general, at low RH, the concentration of hydronium ions (H3O−) is very low due to high ionization activation energy, which may be the possible reason that some sensors (including C-GO) do not exhibit a response to low RH. Meanwhile, for the ether-treated samples, numerous defects decreased the ionization energy to yield decent responses even at very low RH (for instance, 6%, 9%, 12% and 18% RH), as shown in Fig. 5(b) and (c).
At medium humidity (in the present case, 20–65% RH), water molecules can form a continuous physisorbed layer on the GO surface and can also possibly permeate within the GO layerso. Thus, both processes determine the sensor response, which is due to H2O infiltration in the GO layer expanding its thickness (swelling effect). In addition to the physisorption process, Grotthus chain reactions occur to strongly dissociate H2O into hydronium and hydroxyl ions (2H2O ↔ H3O+ + OH−), which thus contributes significantly to the humidity sensing mechanism. With a further increase in RH (high humidity 65–95% RH), multilayers of physisorbed water forming a liquid phase on the surface as well as between the GO layers are highly probable, yielding a high amount of H3O+ ions. Thus, the current further decreases to decrease the charge carrier concentration.
Based on the above interpretation, it is inferred that the superior humidity sensing of E-GO samples can be correlated with the increased number of hydroxyl groups (FTIR analysis), which play a decisive role to provide a great number of adsorption sites. Specifically, surface reaction mechanism enhancement is strongly expected, unless it is limited by other chemical species, as in the case of the C-GO sensor. In addition, the permeation of water molecules within the GO layers in E-GO is very strong, giving rise to significant GO flake swelling. More importantly, both the adsorption and desorption processes at low and medium humidity are very efficient to give almost full recovery. Specifically, the former process dominates at high humidity, as can be seen in Fig. 4 and 5, where recovery results in a small shift in the sensor signal. Despite this comprehensive analysis and discussion, we believe that the effect of annealing temperature on GO electrical transport and sensor response still needs to be investigated, and the typical comparative responses of the un-annealed and annealed samples are shown in Fig. S11-ESI.† Research activities on these issues are underway in our laboratory.
Footnote |
† Electronic supplementary information (ESI) available. See DOI: 10.1039/c8na00135a |
This journal is © The Royal Society of Chemistry 2019 |