1. Introduction
The improvement in the durability and reliability of power, chemical, transport, and mining facilities and machines, as well as civil structures, is associated with a variety of factors that have an effect on the limit states and determine the strength of individual elements and entire structures. As a result of breakdowns, equipment must be stopped, the risk of catastrophe increases, and considerable material losses arise. Such failures prove that the design, manufacture, and maintenance methods for a number of facilities are not perfect. During the determination or revision of the life of potential hazardous facilities being designed or used, it is necessary to ensure the strength of each element by exploiting all aspects of the durability properties of the materials [
1,
2,
3,
4].
Structural elements and the linked large parts (i.e., covers, frames, and supports) are subject to a whole spectrum of loads. Their strength is considerably affected by the stress–strain state that develops in the environment of manufacturing and operational defects [
5]. The majority of manufacturing defects (pores, cracks, inclusions, etc.) emerge in the casting process. Operational defects (primarily friction cracks) arise under normal and disturbed operating conditions [
6,
7]. Stopping fatigue cracks and the limit state of the process (i.e., the respective conditions that prevent the development of cracks) have considerable influence on the safe operation of the structures. If there are no defects in the structure or emergence thereof during operation, the defects will not reach critical values to ensure safe operation. Evaluation of the effect of defects upon the detection of a defect or crack is a complex process that requires both theoretical and experimental investigations. Nonuniformity of the statistical parameters of durability under low-cycle loading is explained by such reasons as heterogeneity of the macro- and microstructures, surface defects, conditions of the experiments, chemical composition, and metallurgical factors. Comparison of low-cycle and high-cycle fatigue has suggested that certain factors have a greater effect on the low-cycle strain, while others—on the high-cycle strain.
For greater reliability and safety of a structure or product during its operation, statistical probabilistic methods are used [
8,
9,
10]. Basic fatigue resistance patterns are analysed according to the probabilistic distribution of independent events that allows for assessment of the key durability characteristics using statistical information. In the probabilistic forecasting of life and reliability in relation to failure, permissible stresses that depend on factors, conditions, and loading of the structure are determined [
11]. The reliability and final life of a structure are influenced by the scattering of durability cycles, random deviations of the loads, and a prolonged stress load that causes fatigue failures. The scattering of the points of the fatigue curve reflects the nonuniformity of the material, which depends on the factors of the metallurgical and production processes and signals the action of external factors during operation [
12].
Integrated probabilistic studies of low-cycle strength are used as a scientific basis for assessing durability, safety factors, and service time. Key statistical design, process, and operational factors are considered during these types of investigations including key mechanical and durability properties, welded joints and defects thereof, stationarity and randomness of external loads, degree of utilisation of the service life at a certain stage of service, and adaptation of structural elements to operational actions [
13]. The importance of probabilistic calculation methods, probabilistic assessment of the permissible stresses, and determination of the strength safety margin in static and cyclic strength calculations is based on the contribution of prominent researchers such as W. A. Weibull [
14,
15]; A. M. Freudenthal; E. J. Gumbel [
16,
17]; K. Iida and H. Inoue [
18]; S. V. Serensen; J. V. Giacintov; V. P. Kogaev [
19,
20]; M. N. Stepnov [
21].
The application of probabilistic methods of strength and durability to various structures has become more frequent. These methods enable the use of statistical data on mechanical characteristics during the application of cyclic load on the materials. Daunys et al. [
22,
23,
24,
25] investigated the low-cycle durability dependences of low-cycle durability of the mechanical properties of steels used in the welded joints of nuclear power plants. A new probabilistic fatigue model was proposed in [
26] for durability assessment and combines the concept of the weakest link theory and the strain energy. A new concept of an effective density of the strain energy was developed in order to establish a link between the experimental data of the specimens and the strain energy. The results suggested that the proposed model was more accurate than the other four models. The curves obtained in the study provided a more effective description of the distribution of the experimental data. Williams et al. [
27] proposed a method to construct accurate statistical strain and durability curves based on experimental data obtained from fatigue tests under strain-controlled loading. Strzelecki [
28] presented the characteristics of the
S–N curve that uses the Weibull distribution of parameters 2 and 3 for fatigue limit and the limited service life, respectively. The parameters of the proposed model were assessed under the maximum likelihood method. Moreover, the solution to the estimation of the initial values of the likelihood function was presented in the paper. Liu et al. [
29] used the finite element (FE) method for numerical analysis to investigate the reliability of low-cycle fatigue durability and designed the simulation method to obtain the distributions of the probabilistic density of the level of stress and strain at dangerous points of the disc structure in an aeronautical engine turbine. Zhu et al. [
30] aimed to design a Bayesian system for the probabilistic prediction of low-cycle fatigue and quantitative uncertainty of material properties that emerge when different deterministic models of low-cycle strain are selected. Zhao et al. [
31] investigated the statistical evolution of low-cycle fatigue crack initiation in the following aspects: general correspondence of statistical parameters to the test data and application of the most common distributions: Weibull (parameters 2 and 3), normal, log-normal, marginal minimum, marginal maximum, and exponential.
Most studies dedicated to the statistical evaluation of the results of the low-cycle fatigue test were conducted for single-axis stress states and are largely related to the evaluation of the durability distribution before the onset of fatigue crack or until crack propagation to a certain length. The scientific literature still lacks systematic investigations for the design of probabilistic low-cycle fatigue in view of the statistical durability values, or the available investigations available were carried out by the calculating mechanical characteristics of materials for single strain [
32] and the characteristics of the strain diagram parameters [
33]. Statistical investigation of low-cycle strain to crack initiation or complete failure has not been carried out to the fullest extent.
Based on the topics discussed above, the main outcomes of this paper are as follows: (1) we investigated materials with contrasting typical cyclic properties, namely, the cyclically softening alloyed steel 15Cr2MoVA, cyclically stable structural steel C45, and cyclically hardening aluminium alloy D16T1; (2) we determined the distribution patterns of statistical parameters of the durability of low-cycle fatigue; (3) we performed the statistical assessment parameters of durability to crack initiation and durability to crack propagation to complete rupture; (4) we confirmed the agreement between the hypotheses of the empirical distribution and the theoretical law of normal distribution according to the Smirnov compatibility criterion; (5) we present a comparison of the low-cycle fatigue durability curves of the experimental data; (6) we provide equations based on the experimental result for predicting the statistical performance of the durability parameters in advance.
3. Results
The fatigue crack appeared as a result of various defects in the metallographic or geometric structures that determined the statistical nature of fatigue and were the main cause of the distribution of the fatigue characteristics. The internal defects and nonuniformity of the microstructure of the metals appeared largely in the processes of metallurgical and thermal treatment. Surface defects (i.e., smoothness and hardening) that appear in the manufacturing of the specimens and are of a statistical nature also play an important role. Certain errors appeared as a result of the nonuniformity of the experimental conditions, for example, variations in the concentricity of the specimen and machine clamps during tension–compression, inaccuracy of the loading level setting, and fluctuations in the experimental temperature, where the specimens of a single batch were tested. All of these errors were characteristic of the metal of a single batch. All factors had an effect on the durability distribution, although the effect was not uniform.
The numbers of cycles obtained during the low-cycle fatigue experiments to the fatigue crack initiation or rupture of fatigue cracks were distributed in ascending order and constituted a variation series, which was the initial information for statistical processing and graphic representation of the random value function and distribution.
The number of results was usually very high where a large number of tests (i.e., hundreds) were conducted. Hence, to determine the low-cycle fatigue failure characteristics, additional statistical processing was performed, i.e., the statistical series were formed. During the formation of the histograms, the total number of histograms was divided into 10 equal statistical series (intervals), the length of which was calculated using the equation:
The use of 15–20 intervals was unreasonable, as a very large number of results does not translate into greater precision of the statistical characteristics. Upon division of the statistical series into 10 intervals, histograms of durability for crack initiation and to failure were formed. Intervals of the same length were marked on the
x-coordinate axis. The height of each interval was equal to probability,
P. Probabilistic values of the low-cycle fatigue to crack initiation or to failure may be calculated according to the dependence:
The analysis of the stress-controlled loading histograms (
Figure 5) showed a positive asymmetry that was characteristic of all of the levels of the materials and all of the rupture zones analysed. A large positive asymmetry was observed when comparing the quasi-static versus fatigue failure cases of steel 15Cr2MoVa. The largest asymmetry was observed in the steel C45 histograms in the transitional zone, while the lowest was observed in the case of fatigue failure.
The asymmetry increased in the failure diagrams of the DT16T1 aluminium alloy with the rising loading level. However, under stress-controlled loading, the fatigue failure zone of this material covered the entire range of durability, and the loading levels chosen by the study authors were distributed evenly in the fatigue zone.
Histograms of the strain-controlled loading durability to crack initiation,
, and failure,
, are presented in
Figure 6. Analysis of the histograms of the durability to crack initiation,
, and failure,
, of steel 15Cr2MoVa under strain-controlled loading suggest that their distribution depends on the sample size. It can be observed in
Figure 6a,d that under a loading level
(150 specimens tested), the form of the histogram resembles a normal distribution.
During the investigation of the durability diagrams to crack initiation and steel C45, the forms of the histograms of this material were found to depend on the sample size. With increasing sample size, a normal distribution with positive asymmetry was approached. Under the loading level (120 specimens analysed), the failure () histogram was similar to the form of normal distribution with significant positive asymmetry and a mean arithmetic value of the cycles. It should be noted that compared to the failure () diagrams, the histograms of durability to failure, , of steel C45 was characterised by lower asymmetry and more significant mean values, where the loading level reached , the mean arithmetic value of the durability to failure was cycles; where the loading level reached , the mean arithmetic value of the durability to failure was cycles; where the loading level reached , the mean arithmetic value of the durability to failure was cycles.
Upon investigation of the durability to failure histograms of the aluminium alloy D16T1 under strain-controlled loading
(
Figure 6c), positive asymmetry was found for all loading levels, while the form was found to be close to the normal distribution. The histograms of the durability to failure of the aluminium alloy D16T1,
had very few differences from the failure histograms,
.
The analysis of histograms showed the qualitative correspondence of the characteristics of the durability to crack initiation (
and to failure (
) to the normal distribution. Nonetheless, for improvement of the statistical assessment of the characteristics, the statistical characteristics were calculated for the three most common distribution patterns: Weibull, normal, and log-normal. The calculation was performed using statistical characteristics: arithmetic mean (
, standard deviation
(, dispersion (
, skewness (
, and coefficient of variation
:
The statistical characteristics of the Weibull distribution pattern were calculated according to [
40]:
Table A1 and
Table A2 present the calculated key statistical characteristics of the normal, log-normal, and Weibull distributions of the durability characteristics of the materials analysed under the strain-controlled and stress-controlled loading. Following the analysis of the statistical characteristics, it could be claimed that the lower values of the coefficient of variation of one of the key statistical indicators,
, were obtained by using the log-normal distribution. Therefore, this distribution should be considered to be superior to the normal and Weibull distributions. It could be noted that the distribution of statistical durability on the coefficient of variation (
of the strain-controlled loading did not depend on the loading level. Analysis of the durability characteristics also showed positive asymmetry for most of the loading levels. Under strain-controlled loading, the dispersion and mean squared deviation decreased under an increasing loading level (
Table A1).
The analysis of statistical characteristics showed that the minimally varying values of the coefficient were obtained under the log-normal distribution. Under strain-controlled loading, the coefficient of variation did not depend on the load level. Meanwhile, under stress-controlled loading, the coefficient increased under increasing loading level for all the materials analysed. This might probably depend on the skewness (degree of hardening) of the strain diagram. With an increasing loading level, the strain diagram became less sloped, and even minor variations in the stress level would cause greater variations in the hysteresis loop compared to the lower levels, where the strain diagram would be more sloped. This increased the dispersion of durability under high loading levels.
For a more accurate definition of the distribution law, a computer-aided study was conducted to confirm the agreement between the hypotheses of the empirical distribution and the theoretical law of the normal distribution according to the Smirnov compatibility criterion,
[
41]:
The criterion for the results of a sample to satisfy the law of the normal or log-normal distribution is expressed by inequality:
The results of the agreement with the normal distribution according to the Smirnov compatibility criterion (
) are provided in
Table 4 and
Table 5. Adjustment calculations were performed for the strain-controlled and stress-controlled loadings. A significance level of
was assumed in the analysis of the characteristics of the durability to failure
and failure
. The calculation results confirmed inequality
, which shows that the experimental data were in line with the theoretical pattern of normal distribution. Comparison of the calculation results of the
criterion and the durability parameters of all of the materials showed that the values of function
were distributed according to a normal pattern similar to the histograms.
Reliable quantitative evaluation of the durability parameters can be performed in the case of a large sample size. In the case of a limited number of tests, it is necessary to indicate the degree of accuracy and reliability, i.e., to calculate the confidence intervals [
42]:
Based on the distribution pattern selected, the possible limits of the confidence intervals were calculated for the confidence levels
. The calculation results are presented in
Table A3 and
Table A4. To increase the reliability of the probabilistic calculations of the strength and durability of the structural elements, using the calculated values of the reliability interval limits would be more reasonable than using the standard mechanical characteristics provided in the manuals.
Figure 7 presents three coefficients of variation of the distribution patterns: log-normal, normal, and Weibull. Analysis of
Figure 7 suggests that the log-normal pattern provides the best description of the durability parameters under various loading levels, under both the stress-controlled and the strain-controlled loadings.
The durability results of the investigated materials are shown in
Figure A1 in the coordinates of the probability of events and the durability of the probabilistic grid. The probability was described using the following equation:
The linear distribution of the experimental results in the probabilistic diagrams of the log-normal distribution support the correspondence to this pattern.
The distribution of a random event in a normal distribution pattern is known to be characterised by the mean squared deviation (
and dispersion (
D). Whereas the standard deviation (
may be mathematically associated with the maximum and minimum values of the random quantity; the ratio of these values can also be assessed as the distribution characteristic:
The values of the quantity of the key durability characteristics (
) of the strain-controlled loading are presented in
Table 6, while equivalent values of the quantity of the key durability characteristics (
) of the stress-controlled loading are presented in
Table 7. The results suggest that in the case of strain-controlled loading, the values of the coefficient
of steel 15Cr2MoVa did not depend on the loading level; while for steel C45, with the loading level increasing from
to
, coefficient
decreased by two times. This could probably be related to the accuracy of adding the loading level. For steel C45, the start of unloading (reverse) of the first semi-cycle loading level from
and
is in the transitional area of the yield region and strengthening zone. Therefore, it is probable that the variation in the yield region at these loading levels caused considerable scattering of the durability. For the aluminium alloy D16T1, the same as for the steel 15Cr2MoVa, a strong scattering of the durability could be observed at the medium loading level. This could be explained by the larger sample size (
Table 6).
For steel 15Cr2MoVa and aluminium alloy D16T1, with an increasing loading level, the values of coefficient
tended to increase as well. For steel 15Cr2MoVa, with the loading level that increased from
to
, the coefficient
values varied from 8.09 to 18.75. For the aluminium alloy, with a loading level that increased from
to
, the coefficient
values varied from 2.45 to 4.16. For steel C45, this connection between coefficient
and the loading level
was not observed. Investigation of the values of the variation coefficient
of the materials suggested similar conclusions (
Table A1). Diagrams
and
in
Figure 8 show the curves of the characteristics of the materials analysed and the durability.
The curves are described using the following expressions in
Figure 8:
where
and
V.
Using Equation (10), it is possible to perform a preliminary evaluation of the limiting values of the durability until crack initiation () and durability until the cracks propagated to the complete rupture () limit values of the arithmetic mean (), dispersion ), and coefficient of variation () under strain-controlled and stress-controlled loadings.
The resulting initial statistical characteristics may also be used to determine the minimum number of statistical specimens [
34]:
This approach eliminates the need for performing additional experiments and statistical processing.