The Load Cycle Amplitude Model: An Efficient Time-Domain Extrapolation Technique for Non-Stationary Loads in Agricultural Machinery
Abstract
:1. Introduction
- Reasonable threshold selection methods;
- The method’s unsuitability for non-stationary loads with significant changes in mean value.
2. Materials and Methods
2.1. Principle of Load Cycle Amplitude Model Used for Extrapolation
2.1.1. Modeling of Extreme Loads
2.1.2. Algorithm
- Measured load signals are acquired from target components. It should be noted that the time-domain load samples need to be representative of the load characteristics of the current operating conditions. The specific sample length selection method can be found in the literature [29].
- The turning point sequences in the time-domain signals are extracted. Small load cycles that contribute less to fatigue damage can be filtered out by a rainflow filter.
- The relationship between load cycle characteristics and time-domain loads is established using the rainfall counting method. The period characteristics (full or half cycles), start position, end position, mean value, and amplitude information are recorded for each load cycle.
- The amplitude of each load cycle is analyzed individually as a statistic, and a threshold is set to extract the extreme load cycles with larger amplitudes.
- A suitable distribution function is selected to fit the extreme-amplitude samples according to extreme value theory.
- Monte Carlo methods are used to randomly generate extrapolated amplitudes consistent with the number of extreme-amplitude samples and satisfy the homogeneous distribution requirement. It should be noted that each half-load cycle will have a common peak point or valley point with another half-load cycle. Therefore, the extrapolation results of the common inflection points should be compared; this paper takes the larger amplitude as the extrapolated result for the amplitude of the current half-load cycle.
- The extrapolated eigenvalues of each load cycle are restored to the load time history according to the mapping relationship established in step (3). The specific algorithm is as follows (Algorithm 1):
Algorithm 1: Reconstructing the time-domain signal of turning points. |
Instruction: {a1,…, ai,…, an}: The amplitude of the ith load cycle; {m1,…, mi,…, mn}: The mean value of the ith load cycle; pi: The peak value for the ith load cycle; vi: The valley value for the ith load cycle; for the ith load cycle, i = 1:n if the ith load cycle is a full cycle ; ; else the ith load cycle is a half cycle Assume that the jth load cycle has a common peak or valley with the ith cycle; ; ; end if end for |
- 8
- Steps (1–7) are repeated until the target extrapolation length is satisfied.
2.2. Source of Data
2.3. Construction of the Extrapolation Model
3. Results and Discussion
4. Conclusions
- Compared to the POT model used in the traditional time-domain extrapolation methods, the LCA model proposed in this paper more accurately identifies the large load cycles within the load history. It is valuable that the LCA model is applicable to time-domain loads with different characteristics.
- In constructing the load extrapolation model for tractors, it is recommended to use the GPD to fit extreme-amplitude samples exceeding the threshold. This recommendation is based on the GPD’s ability to provide a more stable and accurate fit than the GEV distribution.
- The case analysis results demonstrate that the extrapolation method based on the LCA model consistently achieved more reliable results with both non-stationary and stationary loads. Additionally, the streamlined modeling process led to a significant reduction in computing time, decreasing it by 10.63% and 20.84% for stress and vibration loads, respectively.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Nomenclature
ai | the amplitude of the ith load cycle |
F(X) | the probability distribution function of X |
i | load cycle serial number |
mi | the mean value of the ith load cycle |
Nμ | the number of load cycles whose amplitude exceeds the threshold value μ |
pi | the peak value for the ith load cycle |
X | extreme-amplitude sample |
Xi | the ith extreme load cycle amplitude |
Xi − μ | exceedance |
vi | the valley value for the ith load cycle |
µ | position parameter |
μ0 | the threshold for classifying the extreme-amplitude sample |
ξ | shape parameter |
σ | scale parameter |
RMSE | root-mean-square error |
d | the pseudo-damage |
Q | the deviation in damage consistency |
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Load Type | Amplitude Threshold μ | Shape Parameter ξ | Scale Parameter σ |
---|---|---|---|
Stress (non-stationary load) | 14.42 (MPa) | 0.0108 | 7.5688 |
Vibration (stationary load) | 4.62 (g) | −0.0389 | 0.8236 |
Data | Extrapolation Method | Eigenvalue [5th Percentile, 95th Percentile] | |||||
Deviation of Load Cycles Maximum Amplitude [%] | Deviation of Load Cycles Mean [%] | Deviation of Load Cycles Standard Deviation [%] | |||||
Stress | POT | [9.6563, 118.4116] | [3.2717, 3.5620] | [8.3915, 13.7504] | |||
LCA | [−20.3089, 19.9517] | [−0.1603, 0.1669] | [−1.9154, 1.9026] | ||||
Vibration | POT | [−6.8915, 5.6357] | [−0.0081, 0.0068] | [−0.2955, −0.1697] | |||
LCA | [−8.3770, 9.4668] | [−0.0118, 0.0121] | [−0.1043, 0.1057] | ||||
Data | Extrapolation Method | Eigenvalue [5th Percentile, 95th Percentile] | |||||
Pseudo-Damage Deviation [%] | Algorithm Runtime [s] | ||||||
Stress | POT | [64.0209, 298.7662] | [0.7882, 0.8483] | ||||
LCA | [−16.7792, 17.5977] | [0.7039, 0.7426] | |||||
Vibration | POT | [−1.1506, −0.7140] | [1.9110, 2.0259] | ||||
LCA | [−0.3564, 0.3628] | [1.5109, 1.5984] |
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Yang, Z.; Liu, X.; Song, Z.; Liu, H. The Load Cycle Amplitude Model: An Efficient Time-Domain Extrapolation Technique for Non-Stationary Loads in Agricultural Machinery. Agriculture 2024, 14, 2322. https://doi.org/10.3390/agriculture14122322
Yang Z, Liu X, Song Z, Liu H. The Load Cycle Amplitude Model: An Efficient Time-Domain Extrapolation Technique for Non-Stationary Loads in Agricultural Machinery. Agriculture. 2024; 14(12):2322. https://doi.org/10.3390/agriculture14122322
Chicago/Turabian StyleYang, Zihan, Xuke Liu, Zhenghe Song, and Hanting Liu. 2024. "The Load Cycle Amplitude Model: An Efficient Time-Domain Extrapolation Technique for Non-Stationary Loads in Agricultural Machinery" Agriculture 14, no. 12: 2322. https://doi.org/10.3390/agriculture14122322
APA StyleYang, Z., Liu, X., Song, Z., & Liu, H. (2024). The Load Cycle Amplitude Model: An Efficient Time-Domain Extrapolation Technique for Non-Stationary Loads in Agricultural Machinery. Agriculture, 14(12), 2322. https://doi.org/10.3390/agriculture14122322