Journal Pre-proof Application of electrochemical noise (EN) technology to evaluate the passivation performances of adsorption and film-forming type corrosion inhibitors Jun Cui, Dayang Yu, Ziwei Long, Beidou Xi, Xiaosong He, Yuansheng Pei PII:
S1572-6657(19)30852-5
DOI:
https://doi.org/10.1016/j.jelechem.2019.113584
Reference:
JEAC 113584
To appear in:
Journal of Electroanalytical Chemistry
Received Date: 10 June 2019 Revised Date:
12 October 2019
Accepted Date: 17 October 2019
Please cite this article as: J. Cui, D. Yu, Z. Long, B. Xi, X. He, Y. Pei, Application of electrochemical noise (EN) technology to evaluate the passivation performances of adsorption and film-forming type corrosion inhibitors, Journal of Electroanalytical Chemistry (2019), doi: https://doi.org/10.1016/ j.jelechem.2019.113584. This is a PDF file of an article that has undergone enhancements after acceptance, such as the addition of a cover page and metadata, and formatting for readability, but it is not yet the definitive version of record. This version will undergo additional copyediting, typesetting and review before it is published in its final form, but we are providing this version to give early visibility of the article. Please note that, during the production process, errors may be discovered which could affect the content, and all legal disclaimers that apply to the journal pertain. © 2019 Published by Elsevier B.V.
Graphical Abstract
1
Application of electrochemical noise (EN) technology to
2
evaluate the passivation performances of adsorption and
3
film-forming type corrosion inhibitors
4 5
Jun Cuia,b,c, Dayang Yua, Ziwei Longa, Beidou Xib,c, Xiaosong Heb,c, Yuansheng Peia
6
a
7
Environment, Beijing Normal University, Beijing 100875, China
8
b
9
Academy of Environmental Sciences, Beijing 100012, China
The Key Laboratory of Water and Sediment Sciences, Ministry of Education, School of
State Key Laboratory of Environmental Criteria and Risk Assessment, Chinese Research
10
c
11
Pollution, Chinese Research Academy of Environmental Sciences, Beijing 100012, China
State Environmental Protection Key Laboratory of Simulation and Control of Groundwater
12 13
ABSTRACT: Electrochemical noise (EN) technology is an accurate, non-destructive,
14
and rapid method for evaluating corrosion protection performance that has been
15
undergoing development for the last decade. In this work, EN was applied to detect
16
the inhibitor type and evaluate the short-term (12 h) and long-term (30 d) passivation
17
performances. The results indicated that the EN signal amplitude and the noise
18
resistance (Rn) value significantly increased after adding inhibitors, which could be
19
utilized to identify the existence of the inhibitors. The shot noise and the energy
20
distribution results exhibited different characteristics with the variation of the
21
corrosion types in the presence of the different types of inhibitors. Rn showed a
22
positive relationship with the polarization resistance and was inversely proportional to
23
the corrosion current during a long-term passivation process. The EN results were
24
verified by electrochemical impedance spectroscopy, potentiodynamic polarization
25
curves, and surface morphology analysis. These results provided a theoretical
26
foundation for the application of the EN technology to evaluate passivation
27
performances of corrosion inhibitors.
28
Keywords: Electrochemical noise, Corrosion inhibitor, Inhibitor type, Passivation
29
performance
30
1 Introduction
31
The addition of corrosion inhibitors is one of the most effective methods to protect
32
carbon steel from corrosion, and this approach has been widely applied in anti-
33
corrosion engineering [1]. According to the passivation mechanism, the inhibitors can
34
be categorized into adsorption type inhibitors (ATI) and film-forming type inhibitors
35
(FFTI) [2,3]. Generally, the adsorption process and the chemical reaction process
36
dominate the formation of the passive film in the presence of the ATI and the FFTI,
37
respectively [4]. However, the passive film response is sensitive to the variation of the
38
external environment conditions, including the pH value, temperature, and the
39
coexisting ions, etc., resulting in the fluctuation of the passivation efficiency and the
40
reduction of the passivation period [5].
41
It is well recognized that the most direct method to detect the inhibitor type is to
42
analyse the film ingredients [6,7]. However, prior to the component analysis, an intact,
43
homogeneous, and stable passive film should be formed on the surface. Otherwise,
44
the component analysis results are not reliable. In addition, other critical concerns
45
exist regarding how to monitor the stability of the passive film and evaluate the
46
passivation performance during a long-term corrosion process. Weight loss
47
experiments, electrochemical impedance spectroscopy (EIS) measurements, and
48
potentiodynamic polarization curves (PPC) have been well recognized as accurate
49
methods to evaluate inhibitor passivation performance [8-11], although each of these
50
technologies presents its own weakness. Compared to the electrochemistry tests,
51
weight loss experimentation exhibits a relatively long test period (72 h); EIS requires
52
strict test conditions (a stable open circuit potential, and causal, linear, stability, and
53
finiteness conditions) to ensure the accuracy of the results; and PPC destroys the
54
passive film structure by applied bias voltage, thus affecting the further detection of
55
the passive film. Hence, it is meaningful to construct a rapid, convenient, and non-
56
destructive method to estimate the inhibitor type and evaluate the passivation
57
performance.
58
Electrochemical noise (EN) technology, as an in situ and non-destructive
59
technology, has attracted substantial attention in the field of in situ monitoring [12,13].
60
The primary purpose of the EN measurement is to record the spontaneous fluctuations
61
of the current and potential signals, which are produced from the charge transfer
62
process during the corrosion event [14]. EN can be measured without external
63
perturbation, ensuring the stability of the measurement system and keeping the
64
variation of the passive film to the minimum [15]. However, corrosion is a non-
65
stationary and nonlinear process contributing to the existence of the direct current
66
(DC) signal component in the EN signal [16]. Therefore, prior to the EN signal
67
analysis, the DC signal drift should be removed [17]. Then, the processed EN
68
transient signal can be used as a straightforward parameter to reflect the transient
69
corrosion status [14]. To acquire more information to describe the corrosion
70
characteristics from the EN data, various EN signal analysis technologies are applied,
71
including power spectral density (PSD) [18], the Hilbert-Huang transfer [19], and
72
wavelet analysis [15], etc. On the basis of these advantages, EN technology has been
73
widely used to evaluate the anti-corrosion performance of the coating [20,21].
74
However, there are few studies devoted to estimating the inhibitor passivation
75
performance using EN technology due to the instability of the passive film [18,22].
76
This work presents a pioneering study on the application of the EN technology to
77
detect the inhibitor type and to evaluate passivation performances of the ATI and
78
FFTI. Then, the EN results were further verified by the EIS, PPC, and the surface
79
morphology results. The results advanced the application of EN technology in the
80
field of in situ corrosion monitoring in the presence of inhibitors.
81
2 Experimental
82
2.1 Selection of the inhibitors
83
Two kinds of inhibitors, the ATI and the FFTI, were selected. Sodium
84
hexametaphosphate and a boron-based controlled-release inhibitor were selected on
85
behalf of the ATI and the FFTI, respectively. The descriptions of the boron-based
86
controlled-release inhibitor are shown in our previous literatures [23-27]. Fourier
87
transform infrared spectroscopy (FTIR, Nexus 670) was conducted in the range of
88
400-4000 cm−1. The crystalline nature of the FFTI was analysed using X-ray
89
diffraction (XRD, Rigaku D/Max-B) at a scan rate of 4°/min. The elemental
90
composition was detected using X-ray photoelectron spectroscopy (XPS; Axis Ultra
91
Dld, Shimadzu). The concentration of sodium hexametaphosphate was set as 200 mg
92
L-1, an appropriate concentration to form an adsorption layer [28]. To characterize the
93
controlled-release behaviour, ultrapure water (Milli-Q, USA) was added daily to
94
compensate for the evaporation volume. FFTI (2.4 g) was added into 500 mL of
95
corrosive medium (CM), and an aliquot (1 mL) of the solution sample was collected
96
to measure the total boron concentration using inductively coupled plasma atomic
97
emission spectrometry (ICP-AES, Leeman, Profile). Prior to the ICP-AES
98
measurement, all of the solution samples were diluted to 5 mL and passed through a
99
0.22 µm membrane to ensure an appropriate concentration range for the ICP-AES
100
detection. In addition, the metal substrate that was immersed in CM without adding
101
any inhibitors was regarded as the control group.
102
2.2 Preparations of the CM and the metal substrate
103
According to the recirculating water quality (Kaifeng power plant, China), the CM
104
was prepared. The chemical compositions and the corresponding concentrations are
105
listed in Table 1.
106 107 108 109
Carbon steel electrodes and coupons, composed of 0.15 wt % C, 0.46 wt % Mn,
110
0.28 wt % Si, < 0.042 wt % P, < 0.049 wt % S, and the remainder of the Fe were cut
111
from the same plate. The carbon steel electrode used as the working electrode (WE)
112
was in the shape of a cylinder. A copper wire was soldered to each WE. To facilely
113
measure the corrosion parameters, only one surface was exposed to the CM as the
114
working surface (diameter: 1 cm, area: 0.785 cm2). Other surfaces were sealed with
115
epoxy resin (epoxy value: 44%). Similarly, all of the couples were sealed with the
116
epoxy resin, except for the working surface (1×2 cm2). All of the working surfaces
117
were wet-abraded with successive grades of emery paper ranging from 200 to 2000
118
grade, and diamond polishing fluid using a polisher (Truer, GP-2DE), until a mirror-
119
like surface was obtained. After abrasion, all of the working surfaces were washed
120
thoroughly with ultrapure water to remove any remaining powder and were degreased
121
with acetone. Subsequently, the pretreated carbon steel material was dried in a
122
vacuum drier, stored in a drying cabinet at 20 °C, and used within 48 h.
123
2.3 Electrochemical measurements
Table 1 goes here
124
All EN measurements were conducted in a three-electrode system (Fig. S1) using
125
an electrochemical workstation (PGSTAT302N, Metrohm) with an ECN module.
126
Carbon steel electrodes were used as working electrode 1 (WE1) and working
127
electrode 2 (WE2), and the saturated calomel electrode (SCE) was used as reference
128
electrode (RE). The electrochemical current noise (ECN) and electrochemical
129
potential noise (EPN) signals were continuously and simultaneously recorded during
130
the first 12 h of immersion for all groups. Then, the ECN and EPN signals were
131
simultaneously recorded each day for 3600 s during a 30-day experiment. All EN
132
measurements were carried out at 25 °C and with the frequency of 4 Hz. Prior to the
133
statistical analysis, the DC drift was removed from the original EN data using a five-
134
order fitting method [29]. The EN signals were analysed using MATLAB software
135
(MathWorks, USA). Continuous wavelets analysis using Daubechies wavelets “db4”
136
orthogonal function was applied at eight levels of decomposition.
137
Moreover, in order to verify the EN results, EIS and PPC were conducted in a
138
traditional three-electrode system. A Pt slice (3×3 cm2) and an SCE were used as the
139
auxiliary electrode (CE) and RE, respectively. Prior to the measurements, a steady
140
open circuit potential (EOCP) was obtained to ensure the stability of the test condition.
141
EIS tests were measured daily, and only one WE was used for all EIS testing during
142
30 days of experimentation. In contrast, 30 WEs were used to conduct PPC testing
143
during 30 days of experimentation. The EIS data were measured with EOCP in the
144
frequency range from 10 mHz to 100 kHz (10 measurement points per decade) with
145
an A.C. amplitude of ±5 mV (rms). The PPC was measured in the potential range
146
from –0.3 V to 1.8 V in relation to the EOCP at a sweep rate of 0.005 V/s. All
147
electrochemical measurements were conducted in a Faraday cage to avoid
148
interference from external electromagnetic fields.
149
2.4 Surface morphology analysis
150
The surface morphologies of the different samples after 12 h, 5 d, 16 d, and 30
151
days of immersion in CM were observed using a field emission scanning electron
152
microscope (FESEM, Hitachi S-4800). The surface roughnesses of all samples after
153
30 days of immersion were characterized using an atomic force microscope (AFM,
154
Bruker Multimode 8) with an 800×800 nm2 area. Prior to electron microscope
155
observation, all of the samples were gently washed three times using ultrapure water
156
to remove the loose particles on the surface.
157
3 Results and discussion
158
3.1 Characterization of the FFTI
159
A boron-based controlled-release inhibitor that was reported in our previous
160
literature was applied as FFTI [25]. No obvious diffraction peaks were observed from
161
the XRD pattern (Fig. S2), indicating the amorphous nature of the FFTI. According to
162
the FTIR results (Fig. S3), a H-O stretching vibration peak (3427 cm-1), a [BO3]
163
antisymmetric stretching vibration peak (1417 cm-1), a [BO4] antisymmetric stretching
164
vibration peaks (1075 cm-1 and 923 cm-1), and Si-O-Si flexural vibration peaks (696
165
cm−1 and 451 cm−1) were observed. Furthermore, the chemical elements of the
166
inhibitor were analysed by XPS before and after 30 days of release (Fig. S4). It should
167
be noted that the boron peak disappeared after 30 days of dissolution, confirming that
168
boron was the primary released element.
169
Previous publications have reported that the passivation behaviour of the FFTI is
170
closely related to the boron concentration [23]. Hence, the variation of the total boron
171
concentration with increasing dissolution time was analysed (Fig. 1). The cumulative
172
boron concentration and the dissolution-release rate were gradually increased and
173
decreased with increasing dissolution time, respectively. The cumulative boron
174
concentration reached 106.21 mg L-1 after 5 days of dissolution. We have indicated
175
that an acceptable passivation performance can be obtained until the cumulative boron
176
concentration exceeds 100 mg L-1 [23]. Therefore, for the FFTI group, the carbon
177
steel materials were added into the CM after 5 days of dissolution, which was
178
regarded as the 1st day of the FFTI group, and the 30th day of the FFTI group was the
179
35th day of dissolution, when the cumulative boron concentration reached 276.84 mg
180
L-1.
181 182 183
Figure 1 goes here
3.2 Detection of the corrosion inhibitor type
184
Fig. 2 shows the variations of the ECN and EPN signals during the first 12 h. A
185
higher EN signal amplitude represented a stronger interface reaction intensity [30].
186
For the control group, the signal amplitude might be derived from the adsorption and
187
migration of the corrosive ions on the carbon steel surface [31]. In contrast, for the
188
ATI and FFTI groups, the formation of the passive film contributed to the strong
189
signal amplitude during the early stage (0-7200 s) [32]. In addition, both ECN and
190
EPN signal amplitudes gradually decreased with increasing immersion time for all
191
groups, revealing the gradual decrease in the interface reaction intensity. The decrease
192
in the EN signal amplitude was derived from the formation of a corrosion product
193
layer (the control group), a deposition/adsorption layer (the ATI group), or a passive
194
film (the FFTI group) on the carbon steel surface, revealing that the WE surface
195
became stable.
196 197 198 199 200 201
Figure 2 goes here
The noise resistance (Rn), derived from the EN data, was calculated using the following equation [33]: ܴ =
ఙೇ ఙ
(1)
202
where σV and σI refer to the standard deviations in the fluctuations of EPN and ECN
203
signals, respectively. The variations of σV and σI during the first 12 h immersion can
204
be observed in Fig. S5, and the corresponding Rn calculation results are illustrated in
205
Fig. 3. Both σV and σI exhibited a gradually decreasing trend due to the formation of
206
incomplete barrier layers for all samples [34]. It is well known that Rn shows an
207
inverse relationship with the corrosion current (icorr) [35]. As shown in Fig. 3, for the
208
control group, the Rn value gradually increased from 24 Ω cm2 to 132 Ω cm2. In
209
contrast, Rn values reached 416 Ω cm2 and 474 Ω cm2 for the ATI and FFTI groups,
210
respectively. On the basis of these results, we concluded that the Rn could be
211
significantly increased after adding ATI and FFTI, representing the decrease in the
212
icorr due to the passivation performance of the inhibitors. Therefore, we believed that
213
the Rn variation trend could be utilized to detect the absence or presence of inhibitor.
214 215 216
Figure 3 goes here
217
Shot noise theory was employed to thoroughly investigate the EN signals by
218
considering them to be packets of charge in the frequency domain. The charge of each
219
corrosion event (Qn) and the occurrence frequency of the corrosion event (fn) can be
220
calculated using the following equations [33]:
221
ܳ =
(ඥఅಶ ×ඥఅ )
(2)
݂ = ܤଶ /(ߖா × )ܣ
222
(3)
223
where ΨE and ΨI are the low-frequency PSD values of the EPN and ECN signals,
224
respectively, B is the Stern-Geary coefficient (the average B value is 0.026 V), Q is
225
calculated based on the values of ΨE and ΨI at 0.001 Hz, and A defines the WE area.
226
The variations of Qn and fn for all groups are shown in Figs. 4a and 4b, respectively.
227
For the control group, both Qn and fn values were gradually decreased with increasing
228
immersion time. High Qn and fn values represented the occurrence of severe general
229
corrosion [36]. Both Qn and fn values then gradually decreased due to the formation of
230
the porous corrosion product layer [37], representing the weakening of corrosion
231
intensity. For the ATI group, the Qn value fluctuated near 2×10-3 C and the fn value
232
exhibited a gradually decreasing trend. The results indicated that the ATI group
233
suffered general corrosion during the early stage (0-5 h), and then the corrosion type
234
changed to localized corrosion during the late stage (5-12 h). Compared to the control
235
and ATI groups, the FFTI group exhibited relatively low Qn and fn values during the
236
first 12 h immersion. The Qn value was significantly decreased from 1.6×10-3 C to
237
0.08×10-3 C and the corresponding fn value fluctuated near 0.1 Hz cm-2 during the first
238
12 h, which was regarded as a passivation state [3]. 8The results indicated that the
239
FFTI exhibited a rapid passivation performance for carbon steel.
240
According to the shot noise analysis results, the general corrosion intensity
241
gradually decreased, which could be regarded as the sample without any added
242
inhibitors; the corrosion type was changed from general corrosion to localized
243
corrosion, which could be defined as adding ATI due to the slow passivation process.
244
Moreover, the sample exhibited passivation status during the first 12 h, which could
245
be recognized as adding FFTI due to the rapid film forming process. Therefore, shot
246
noise theory could be utilized to detect the inhibitor type with respect to the variations
247
of the corrosion states.
248 249 250
Figure 4 goes here
251
To uncover more detailed information and eliminate the effect of the current
252
contribution caused by capacitance charging, the energy distribution plot (EDP) was
253
calculated from the EPN data using Daubechies wavelet “db4” orthogonal function at
254
eight levels of decomposition (Fig. 5). The vertical coordinate was the percentage of
255
each part considering the total energy. Previous publications have reported that the
256
D1-D3 region mainly characterizes the small time scale process, reflecting the
257
activation process; region D3-D6 strongly associates with the medium time scale
258
process controlling the diffusion and activation processes; and region D6-D8 closely
259
reflects the large time scale process information relating to the diffusion process [39-
260
41].
261
It can be observed from Fig. 5a that a relatively high percentage of region D6-D8
262
was observed during the first 12 h for the control group, indicating that the corrosion
263
process was dominated by the large time scale process, such as in the case of general
264
corrosion. For the ATI group (Fig. 5b), a high percentage of region D6-D8 was
265
obtained during 0-4 h, indicating that the corrosion process was controlled by the
266
diffusion process. Then, the corrosion process was controlled by the activation
267
process, revealing that the corrosion event was changed from general corrosion to
268
localized corrosion. For the FFTI group (Fig. 5c), D1-D8 regions exhibited similar
269
percentages, revealing a relatively stable passivation state.
270
According to the above analysis results, we believed that EDP analysis could be
271
utilized as a potential technology to identify inhibitor type. The reasons were as
272
follows: (a) The EDP was continuously dominated by the D6-D8 region,
273
demonstrating the absence of the inhibitor. This is because any kind of passive film
274
could exhibit a suppressive performance on the diffusion process. However, the
275
corrosion product layer could not suppress the diffusion process because of the multi-
276
porosity structure. (b) If the dominated region were significantly changed from the
277
large time scale process (region D6-D8) to the small time scale process (region D1-
278
D3), we believed that the inhibitor could be regarded as the ATI. The substrate
279
surface primarily suffered from general corrosion during the early stage. Then, an
280
adsorption layer was formed on the substrate surface, and the dominant process was
281
shifted from the large time scale process to the small time scale process. (c) No
282
obvious region was found, which was supposed to indicate FFTI. Normally, a
283
dissolution process existed on the substrate surface before the formation of a
284
passivation layer in the presence of FFTI due to the oxidation layer. Then, a passive
285
film was rapidly formed on the substrate surface, resulting in the suppression of the
286
diffusion process. No significant time scale process dominated during the early and
287
late stages. Therefore, EDP was a reliable parameter to identify the inhibitor type.
288 289
Figure 5 goes here
290 291
To verify the reliability of the EN analysis results, EIS was applied as a
292
conventional method. Prior to the EIS measurement, stable EOCP values were achieved
293
for all samples (Fig. S6), and the last EOCP value was held potentiostatically for EIS
294
measurements. The typical Nyquist curves are shown in Fig. 6, and the corresponding
295
equivalent circuits are shown in Fig. 7. The EIS results of the control group were well
296
fitted using the [R([R(QR)]Q)] model (Fig. 7a), and the EIS results of the ATI and
297
FFTI groups were well fitted using the [R(RQ)] model (Fig. 7b). Rs is the solution
298
resistance, RP represents the corrosion product layer resistance in Fig. 7a and the
299
resistance of the passive film in Fig. 7b, and Rct can be regarded as the charge transfer
300
impedance. In this work, constant phase element (CPE) rather than capacitance (Q)
301
was applied in the equivalent circuit because the solid electrode interface often reveals
302
a frequency dispersion as a result of the capacitive dispersion [42]. According to the
303
Nyquist curves, all samples exhibited an intact semicircle, revealing that the
304
electrochemical process was under the control of charge transfer [43]. However, the
305
arc was slightly depressed in the ATI group, which was related to the roughness and
306
inhomogeneity of the carbon steel surface [44]. The capacitance arc radii followed the
307
order of control (93 Ω cm2) < ATI (436 Ω cm2) ≤ FFTI (456 Ω cm2). Moreover, the
308
Bode plots are shown in Fig. S7, and it was well recognized that a high impedance
309
modulus at low frequency represents high corrosion resistance [45]. The Bode
310
impedance magnitude results indicated that the surface resistance followed the order
311
of control < ATI ≤ FFTI. In the phase angle plots, the maximum phase angle peak was
312
gradually increased in the order of control < ATI ≤ FFTI. The maximum phase angle
313
peak was close to 90° in the FFTI group, exhibiting good passivation performance.
314
The EIS results indicated that the passivation performance increased after adding the
315
ATI or FFTI, which coincided with the EN results.
316 317 318 319 320
Figure 6 goes here Figure 7 goes here
321
The PPC of all samples are illustrated in Fig. 8. It can be observed that the anodic
322
process was strongly affected by the ATI and the FFTI, and the anodic branch was
323
changed from the typical active dissolution characteristic (the control) to slight (ATI)
324
and clear (FFTI) passivating characteristics [46,47]. icorr was calculated using the
325
Tafel extrapolation method. Compared to the control group, the icorr value was
326
decreased by 1 and 2 orders of magnitude in the presence of ATI and FFTI,
327
respectively. This variation can be applied to verify the higher Rn values of the ATI
328
and FFTI groups versus the control group (Fig. 3). The appearance of an evident
329
passivating region indicated that a passive film was formed on the carbon steel
330
surface in the presence of the FFTI [48].
331 332 333
Figure 8 goes here
334
The optical images of all groups after 0, 4, 8, and 12 h immersion in CM can be
335
observed in Fig. S8. For the control group, the amount of the corrosion products
336
gradually increased with lengthening immersion time. However, a light-white layer
337
was observed on the sample surface in the presence of the ATI after 4 h immersion,
338
which supported the decrease of fn (Fig. 4b) after 5 h of immersion for the ATI group.
339
For the FFTI group, no significant changes could be found on the sample surface,
340
representing good passivation performance. To gain more insights, the surface
341
morphology results of all groups after 12 h immersion are shown in Fig. 9. The
342
control group exhibited a loose and multi-porous layer, which was mainly composed
343
of Fe and O, confirming the mapping results. The ATI group exhibited a fractured
344
surface due to the formation of an adsorption layer composed of phosphate. Further,
345
elemental Fe was only detected in the crevice regions. For the FFTI group, a relatively
346
smooth surface was observed. Combined with our previous results [23], we believed
347
that a passive film with Fe-O-B structure was formed on the substrate surface,
348
confirming the elemental detection results. The FESEM results further confirmed that
349
different kinds of barrier layers were formed in the presence of the different inhibitors.
350
According to the EIS, PPC, and FESEM results, we believed that the EN signals and
351
the corresponding parameters could be effectively used to identify the inhibitor type
352
and detect the absence or existence of inhibitor.
353 354 355
Figure 9 goes here
3.3 Evaluation of long-term passivation performance
356
To evaluate the long-term passivation performance of the inhibitors, EN was
357
measured daily during a long-term experiment (30 days). In addition, EIS and PPC
358
were conducted daily to verify the accuracy of the EN results.
359
The variation trend of Rn with increasing immersion time is shown in Fig. 10. For
360
the control group, the Rn value fluctuated between 150 Ω cm2 and 300 Ω cm2. For the
361
ATI group, the Rn value gradually increased (0-10 d) and stabilized (10-30 d) near
362
1000 Ω cm2. In contrast, the Rn value exhibited an increase-stabilization-decrease
363
variation trend in the FFTI group. However, the Rn value followed the order of control
364
< ATI < FFTI during 30 days of experimentation. A higher Rn value represents a
365
better passivation performance [49]. Therefore, the FFTI group exhibited the best
366
passivation performance among all groups. The gradual decrease in Rn value from the
367
24th day of the experiment was due to the breakdown of the passive film. However,
368
the Rn value remained higher than those of other groups. According to the variation of
369
the Rn value, we believed that the passivation performance significantly enhanced
370
after adding the inhibitors during a long-term period.
371 372 373
Figure 10 goes here
374
The variations of Qn and fn during 30 days of immersion are shown in Figs. 11a
375
and 11b, respectively. For the control group, the Qn value gradually increased (0-10 d)
376
and then stabilized (10-30 d), and the corresponding fn value gradually decreased (0-9
377
d) and then stabilized (9-30 d). The Qn-fn variation represented that the intensity of the
378
general corrosion slightly decreased (0-10 d) and then stabilized (10-30 d) due to the
379
formation of a porous corrosion product layer. For the ATI and the FFTI groups, the
380
Qn values gradually decreased and then stabilized during the early and middle stages
381
(near 0-20 d) due to the formation of the passive film, and then the Qn values
382
gradually increased during the late stage due to the occurrence of crevices on the
383
passive film surface. Additionally, the fn values were relatively stable during 30 days
384
of experimentation for ATI and FFTI groups. The results indicated that the corrosion
385
types of the ATI and FFTI groups changed from passivation to localized corrosion as
386
a result of the failure of the passive film.
387 388 389
Figure 11 goes here
390
According to the variations of the Rn, fn, and Qn, we divided the experimental
391
period into two parts: part I was 0-5 d, 0-14 d, and 0-22 d for the control, ATI, and
392
FFTI groups, respectively; part II was 5-30 d, 14-30 d, and 22-30 d for the control,
393
ATI, and FFTI groups, respectively. To obtain the characteristics of each part, two
394
days were selected to represent characteristics. The EDP results of the selected days
395
are shown in Fig. 12. The EDP plots of the control group are dominated by the D6-D8
396
region on days 2 and 4 (part I, Fig. 12a), relating to the large time scale process.
397
However, the EDP was predominated by the D1-D3 region on days 12 and 24 (part II,
398
Fig. 12d), which was attributed to the small time scale process. For the ATI group, an
399
opposite characteristic was obtained. Regions D1-D3 and D6-D8 mainly contributed
400
to parts I and II, respectively (Figs. 12b and 12e). Similarly, the FFTI group showed
401
the same variation trend with the ATI group (Figs. 12c and 12f). The variations of the
402
EDP for the ATI and FFTI groups could be attributed to the formation and the
403
breakdown of the passive film during parts I and II, respectively. The EDP results
404
were consistent with the Qn-fn and Rn analysis results, which could be used to reveal
405
the corrosion control process and verify the long-term passivation performance of the
406
inhibitors.
407 408 409
Figure 12 goes here
410
Since it was difficult to distinguish the corrosion type in the time-domain EN
411
curves, a wavelet transformation method was applied to deconvolute the time-domain
412
EN curves, and the deconvolution results with two-dimensional diagrams are shown
413
in Fig. 13. In the two-dimensional diagram, higher energy generated from the
414
corrosion event corresponds to a lighter colour [15]. For the control group, the
415
rectangle colours for the 1-4 levels became gradually darker after 20 days of
416
immersion during the early stage (0-12 min). The results demonstrated that the
417
general corrosion event intensity was decreased, because the carbon steel was directly
418
exposed to the CM during the early stage and a multi-porous barrier layer was formed
419
on the surface to protect carbon steel from corrosion during the middle and later
420
stages. In contrast, the ATI and the FFTI groups showed patterns of intersecting light
421
and
422
formation/breakdown/re-passivation process. Moreover, the rectangle colours were
423
lighter in levels 5-8 than levels 1-4, revealing the domination of the localized
424
corrosion process [23]. Furthermore, the area of the dark section was broader in the
dark
colours,
indicating
that
the
passive
film
experienced
a
425
FFTI group than the ATI group, indicating a better passivation performance of the
426
FFTI. These results were consistent with the analysis results of the Qn-fn.
427 428 429
Figure 13 goes here
430
4,096 data points acquired from the EPN signals were transferred into the PSD
431
using maximum entropy method (Fig. 14). It could be observed that the white noise
432
region and the frequency dependent region were higher in the control group than in
433
the ATI and FFTI groups, revealing that both ATI and FFTI could suppress carbon
434
steel corrosion in CM. Moreover, the white noise and the frequency dependent
435
regions gradually decreased with lengthening immersion time, demonstrating that
436
both the corrosion product layer and the passivation film could protect carbon steel
437
from corrosion.
438 439 440
Figure 14 goes here
441
EIS and PPC were measured to confirm the accuracy of the EN results, and the
442
corresponding Rp and icorr values were calculated. The EOCP and Nyquist plots are
443
shown in Figs. S9 and S10, respectively, and the variation of the Rp during 30 days of
444
experimentation is shown in Fig. 15. The control group samples exhibited an intact
445
capacitance arc with the increasing immersion time. In contrast, for the ATI group,
446
the low frequency arc gradually evolved into a straight line during the late stage of
447
experimentation, revealing the typical characteristic of the Warburg impedance. The
448
appearance of Warburg impedance indicates the increase in the permeability of the
449
passive film [50]. The results indicated that the passivation performance of ATI was
450
decreased. In addition, all of the Rp values were similar in the control group (100 Ω
451
cm2). In contrast, the Rp values of the ATI and the FFTI groups were gradually
452
increased to 1500 Ω cm2 (23 d) and 2600 Ω cm2 (22 d), respectively, following by a
453
decreasing trend until the end of experimentation. According to Fig. 15, the Rp values
454
followed the order of control < ATI < FFTI, which was consistent with the variation
455
of the Rn results.
456 457 458
Figure 15 goes here
459
Similarly, the PPC and the corresponding variation trends of icorr are illustrated in
460
Figs. S11 and 16, respectively. The icorr value was decreased after 5 days of
461
immersion and stabilized at 10 µA cm-2 for the control group. In contrast, the icorr
462
values of ATI and FFTI groups fluctuated near 3.5 µA cm-2 and 2 µA cm-2,
463
respectively. The results confirmed that an inverse relationship existed between the Rn
464
and the icorr in the long-term passivation period. Namely, a higher Rn value
465
represented a lower icorr value and a better passivation performance in the presence of
466
the inhibitor. Therefore, we believed that the Rn value could be utilized as a reliable
467
parameter to evaluate long-term passivation performance of the inhibitors.
468 469 470
Figure 16 goes here
471
The FESEM images are shown in Fig. 17. It can be observed that a barrier layer
472
with multi-porous structure was formed on the control group sample surface (Figs.
473
17a-17c), coinciding with the optical photographs. The observation results could
474
further confirm that the corrosion was controlled by the dissolution-diffusion process
475
in the control group. For the ATI group, a barrier layer with multiple crevices was
476
observed due to the formation of a P-based adsorption layer, as confirmed by Fig. 9.
477
Further, some particles were observed on the sample surface. Combined with the
478
optical photographs, these particles might be determined to consist of the deposition
479
substances and the corrosion products, and the amounts of these particles increased
480
with lengthening immersion time due to the breakdown of the adsorption layer (Figs.
481
17e and 17f). This result could be used to explain the gradual decreases in Rn and Rp
482
and the increase in icorr during 30 days of immersion. In contrast, a relatively smooth
483
sample surface was observed in the presence of the FFTI during 30 days of immersion.
484
Although both Rn and Rp exhibited gradually decreasing trends during the late stage,
485
the surface resistance still exhibited an acceptable passivation performance for carbon
486
steel. In addition, AFM was conducted to describe the surface morphology after 30
487
days of immersion (Fig. 18). The heights of the control, ATI, and FFTI groups were
488
69.6, 23.4, and 7.6 nm, respectively. The control and the FFTI groups exhibited the
489
highest and the lowest roughness among all groups, which was consistent with the
490
FESEM results. The observation results of the optical photographs, FESEM, and
491
AFM images could be utilized to support the EN analysis results.
492
493
Figure 17 goes here
494 495 496 497
Figure 18 goes here
4 Conclusions
498
The results of this work demonstrated that inhibitor type and long-term
499
passivation performance could be effectively monitored by the time-domain and
500
frequency–domain EN curves. The results were verified by EIS, PPC, and surface
501
morphology analysis. The following results were obtained:
502
●
The amplitudes of the EN signals and the Rn exhibited significant decreases after
503
the formation of a passive film on the substrate surface. This decrease could be
504
used to identify the absence or presence of the corrosion inhibitor.
505
●
Shot noise theory (Qn-fn) and EDP exhibited different variation trends in response
506
to the variation of the corrosion process resulting from different inhibitor types.
507
These trends could be used to detect the inhibitor type.
508
●
The variation of Rn showed a positive relationship with the Rp and exhibited a
509
negative relationship with icorr values during a long-term passivation process,
510
indicating that Rn coupled with Qn-fn and EDP could be used as a reliable
511
evaluation system to evaluate the long-term passivation performance of the
512
inhibitors.
513 514
Acknowledgements This work is supported in part by National Natural Science Foundation of China
515
(51579009) and China Postdoctoral Science Foundation (Pre-station) (2019TQ0292).
516
References
517 518 519 520 521 522 523 524 525 526
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TABLE 1 Chemical Compositions of the CM (500 mL) Ions
Ca2+
Mg2+
NO3-
HCO3-
Na+
Cl-
Analytic grade reagent Concentration / (mg L-1)
CaCl2 200
MgCl2•6H2O 120
NaNO3 100
NaHCO3 100
-200
-640
Note: Na+ and Cl- were provided by the CaCl2, MgCl2•6H2O, NaNO3, and NaHCO3.
Fig. 1. Variation of the total boron concentration during 40 days of dissolution in CM.
Fig. 2. Variations of the (a) ECN and (b) EPN time-domain signals during the first 12 h.
Fig. 3. Variation of Rn extracted from the EN time-domain signal during the first 12 h.
Fig. 4. Variations of (a) Qn and (b) fn extracted from the EN frequency-domain signals during the first 12 h.
Fig. 5. EDP variations of (a) the control group, (b) the ATI group, and (c) the FFTI group during the first 12 h.
Fig. 6. Nyquist plots of all samples after 12 h immersion.
Fig. 7. Equivalent circuit models used to fit the experimental impedance data. A, B, C, D, and E represent the carbon steel, double electrode layer, corrosion product layer, solution, and passive film, respectively.
Fig. 8. PPC of all samples after 12 h immersion.
Fig. 9. Surface morphology observation results and the corresponding elemental analysis results of (a) the control group, (b) the ATI group, and (c) the FFTI group after 12 h immersion.
Fig. 10. Variation of Rn extracted from the EN time-domain signal during 30 days of immersion.
Fig. 11. Variations of (a) Qn and (b) fn extracted from the EN frequency-domain signals during 30 days of immersion.
Fig. 12. EDP results of the selected days: part I of (a) the control group, (b) the ATI group, and (c) the FFTI group; part II of (d) the control group, (e) the ATI group, and (f) the FFTI group I during 30 days of immersion.
Fig. 13. Two-dimensional visual representation of the discrete time wavelet transformation of the EPN signals for the control, ATI, and FFTI groups.
Fig. 14. PSD of all samples after 1, 10, 20, and 30 days of immersion for (a) the control group, (b) the ATI group, and (c) the FFTI group.
Fig. 15. Variation of RP values extracted from the EIS during 30 days of immersion.
Fig. 16. Variation of icorr values extracted from the PPC during 30 days of immersion.
Fig. 17. FESEM images of the control group after (a) 5, (b) 16, and (c) 30 days of immersion, the ATI group after (d) 5, (e) 16, and (f) 30 days of immersion, and the FFTI group after (g) 5, (h) 16, and (i) 30 days of immersion.
Fig. 18. AFM images of (a) the control, (b) ATI, and (c) FFTI surface morphology after 30 days of immersion.
Highlights
The variations of the EN amplitude and noise resistance value can be used to identify the existence of the corrosion inhibitor or not.
The shot noise theory results and energy distribution plots exhibit different characteristics in the present of the different types of inhibitors.
The noise resistance shows a positive relationship with the polarization resistance and was inversely proportional to the corrosion current.
Declaration of Interest statement The authors declared that they have no any actual or potential conflict of interest to this work, including any financial, personal or other relationships with other people or organizations.