Crack Propagation Tests for Load Sequences Developed Using Different Flight Parameters of a Trainer Aircraft
Catégorie d'article: Research Article
Publié en ligne: 28 oct. 2024
Pages: 155 - 165
DOI: https://doi.org/10.2478/fas-2023-0010
Mots clés
© 2023 Piotr Reymer et al., published by Sciendo
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 3.0 License.
Compared to commercial aviation, military aircraft experience loads that are highly variable and hard to predict, due to the diverse range of missions, various armament configurations, and the individual piloting style of military aviators. These factors complicate the process of defining the actual loads exerted on the aircraft structure without direct in-flight measurements. Additionally, estimating load sequences in the event of data loss, due to a malfunction of the onboard Flight Data Recorder (FDR) or data mishandling, is challenging. On the other hand, instrumenting an entire fleet of aircraft with direct load measuring sensors and the necessary recording equipment is also difficult to justify financially.
This study investigated the possibility of defining load spectra for the PZL-130 “Orlik” TC-II turbopiston propeller military trainer aircraft based on available flight parameters recorded by the onboard FDR during regular operations, comparing the crack propagation potential of these load spectra to that obtained from direct strain measurement of the lower wing spar during a Operational Load Monitoring (OLM) program.
In military aircraft, the primary driver of operational loads is the load factor, defined as the ratio of the current lift force to the actual weight of the aircraft. This load induces a bending moment in the wing structure, leading to high tension in the lower wing spar flange. This structural element has been shown to be the critical part of the PZL-130 structure using the Full Scale Fatigue Test (FSFT) (Leski et al., 2015) as well as other fatigue tests carried on aircraft structures e.g. (Reymer et al., 2017).
Modern military aircraft operation relies on a damage-tolerance approach, which is based on the crack propagation phenomenon. This approach is sensitive to the actual loads exerted on the structure during flight (U.S. Department of Defense, 2016), making it crucial to detect the actual cracks during scheduled inspections after they become detectable, yet before they reach critical sizes (Jiao et al., 2018; Reymer et al., 2012; Gillet & Bayart, 2020). This is only possible when crack propagation estimates are accurate for the considered location.
To assess an aircraft’s overall structural integrity, FSFTs are often carried out. These tests provide detailed information about the structure’s critical points and crack development during operation in a controlled environment (Nesterenko et al., 2020; Molent et al., 2009; Daverschot et al., 2020; Reymer & Leski, 2011). However, the load spectrum used for a FSFT can vary based on which of the available flight data processing methods is employed. This paper therefore examines how different processing approaches to flight data influence crack propagation estimations.
The data used to prepare the load sequences were recorded during the OLM program carried out as part of the Service Life Extension Program (SLEP) of the PZL-130 “Orlik” TC-II aircraft. The OLM was focused on capturing the real strain signals from over 100 strain gauges installed on the aircraft structure, simultaneously with actual flight data recorded by the onboard FDR. These data were then used to define the load sequence for the FSFT of the aircraft structure (Kottkamp et al., 1976). Figure 1 illustrates the overall strain gauge array on the PZL-130 aircraft structure during OLM.

Location of strain gauges during the OLM and the SLM14 sensor
Direct strain measurement during flight provides comprehensive information about the load state of a structural element, independent of the load condition (Jenkins & DeAngelis, 1997; Skopionski et al., 1954). Therefore, the comparative load spectrum used in this study was based on the load factor – horizontal speed – barometric height – horizontal stabilizer angle – flaps extension – ailerons angle – vertical stabilizer angle –
The OLM was divided into three phases. In the first, the aircraft carried out planned flights in order to capture strain data corresponding to particular exercises and maneuvers. In the second phase, the aircraft returned to the 42nd Training Air Force Base in Radom (42 TAFB), where it was operated according to standard training schedule. Lastly, in the third phase, the measurement system was reduced to 8 strain gauges (4 on the wings, including
Throughout these three phases, 350 records were collected. Of these, two were identified as ground tests and 1 duplicate record was found, which resulted in a total of 347 recorded flights of varying intensity (in terms of the maximum load factor range during the flight), altitude, and speed.
Further analysis revealed that 29 flight records (8.4% of the total) had damaged load factor: from -2 to 7, SLMX14 strain gauge: from 0 to 2100 μStr, barometric height: from 0 to 10 000 m, horizontal speed: from 0 to 440 km/h.
The characteristic values of on the ground – 60 μStr, level flight with
Preliminarily, it was assumed that flight data would be extracted from overall records based on the weight on wheels signal. However, due to unreliable values of this sensor, alternative criteria were determined based on changes in air speed and height. The following values were used:
take off – landing –
These defined thresholds allowed the gathered data to be prepared for further analysis and load sequence definition.
After the initial verification, the gathered data were analyzed to identify correlations between individual parameters. The initial correlation matrix for the available parameters is shown in Table 1. Since the
Correlation matrix for the available flight parameters
SLMX14 | nz | Hb | VP | dh | dkl | dl | dv | |
---|---|---|---|---|---|---|---|---|
1.00 | 0.93 | 0.43 | 0.61 | 0.37 | -0.30 | -0.03 | -0.07 | |
0.93 | 1.00 | 0.29 | 0.39 | 0.28 | -0.14 | -0.08 | -0.03 | |
0.43 | 0.29 | 1.00 | 0.30 | 0.42 | -0.49 | 0.09 | 0.17 | |
0.61 | 0.39 | 0.30 | 1.00 | 0.22 | -0.46 | -0.08 | -0.15 | |
0.37 | 0.28 | 0.42 | 0.22 | 1.00 | 0.08 | -0.04 | 0.22 | |
-0.30 | -0.14 | -0.49 | -0.46 | 0.08 | 1.00 | -0.00 | 0.15 | |
-0.03 | -0.08 | 0.09 | -0.08 | -0.04 | -0.00 | 1.00 | -0.15 | |
-0.07 | -0.03 | 0.17 | -0.15 | 0.22 | 0.15 | -0.15 | 1.00 |
The control surface deflection parameters did not show clear linear correlation with neither the
Based on these findings, the load sequence definitions were based on four parameters: strain value
The first load spectrum was based solely on the load factor
Linear regression model parameters for the SLMX14 equations using flight parameters
Independent variables | R | R2 | free coefficient | a | b | c |
---|---|---|---|---|---|---|
0.9320 | 0.8686 | -64.1018 | 388.8242 | - | - | |
0.9459 | 0.8947 | -113.747 | 368.296 | 0.046 | - | |
0.9742 | 0.9491 | -231.156 | 332.524 | 0.032 | 0.726 |
As can be observed in the table, the addition of
To facilitate load spectrum preparation for this study and to enable spectra generation from current flight data, dedicated software was created. This software automated the processing of flight data by defining of flight states based on the aforementioned criteria, selection of desired regression model and other parameters like low bypass filtration. Moreover, to enable comparison of the test results obtained for each of the four spectra, the load cycles in each sequence corresponded to so called Simulated Flight Hours (SFH). This approach meant that executing a certain portion of each sequence represented a defined number of flight hours of the PZL-130 aircraft. The number of cycles and corresponding SFH for each sequence are given in Table 3.
Load sequence characteristics
Sequence | SLMX14 | |||
---|---|---|---|---|
52894 | 30434 | 28241 | 25348 | |
270.6 | 266.7 | 267.7 | 271 |
Each spectrum was filtered with a 5% low bypass filter in order to speed up the laboratory tests and to comply with the relevant standards (ASTM International, 2024). Additionally, due to potential problems with transitions from negative to positive values, all low values were truncated below 100 N.
Crack propagation tests using the obtained spectra were carried on CT samples designed in accordance with the relevant standards (ASTM International, 2024). The overall sample dimensions are shown in Figure 2 and detailed in Table 4. Samples were placed in specially designed clamps, adhering to standard requirements, and loaded in tension on an electromechanical MTS Acumen 12T strength testing machine using the prepared load sequences (Fig. 3).

Technical drawing of the CT samples used in the test and the mount

Test specimen mounted in the test stand, shown during (with a COD gauge) and after the test.
Dimensions of the CT specimens used in the test
W [mm] | B [mm] | Width [mm] | Height [mm] | Holes [fi_mm] | Notch [mm] | CS [mm2] | Precrack [mm] | H [mm] |
---|---|---|---|---|---|---|---|---|
48 | 8 | 60 | 57.6 | 12 | 21.6 | 307.2 | 1 | 3 |
Before the start of each test, a precracking procedure was carried out, aiming to create an initial crack of identical length (approximately 3 mm) for each specimen. The overall crack length throughout the test was derived using the susceptibility method, which requires monitoring of several test parameters to derive the actual crack length using the equation provided in the relevant standards (ASTM International, 2024):
Each test was carried out using a different load sequence until the defined test limits were achieved, which were defined as the maximum displacement of the machine piston under the current load. The maximum load in each load sequence was around 4kN and it appeared several times per cycle. Whenever this load caused the piston displacement to exceed the set value, the test was halted and the specimen was considered fractured.
In addition to the crack length measurement method outlined in the relevant standards (ASTM International, 2024), an additional approach based on surface deformation measurements (Digital Image Correlation) was used during the test. For this, the surface of each sample was covered in a special pattern. Correlation of crack length defined using the method described in the standard and using the DIC method is beyond scope of this paper.
Crack propagation tests for the four defined load spectra were carried out and the obtained results are presented in Figure 4. The initial test using the load sequence based solely on the

Crack propagation curves obtained for different load spectra
Preliminary results indicate that using more detailed models, incorporating more flight parameters with higher correlations to the main driving parameter, leads to crack propagation estimates that more closely resemble those obtained with the comparative
When direct load measurements are not financially justified, using properly defined models based on the available data may result in more reliable crack propagation estimations. Although the load factor is the primary driver of wing loading, it may be beneficial to incorporate more available flight data, as this improves the accuracy of fatigue life predictions.
This study confirms that incorporating additional flight parameters, such as barometric height and horizontal velocity, improves the accuracy of crack propagation predictions for the PZL-130 “Orlik” TC-II military trainer aircraft. Further research will focus on mitigating data loss due to mishandling or malfunction of the recording devices. Moreover, the omitted control surface data could be taken into account, when specific flight mechanics formulas are incorporated. The missing data can be reconstructed using different techniques, such as linear regression models based on other available parameters or machine learning techniques.