Source code for FLife.freq_domain.modified_fu_cebon

import numpy as np
from scipy import stats
from scipy import integrate
from .narrowband import Narrowband
from ..tools import pdf_rayleigh_sum

[docs] class ModifiedFuCebon(Narrowband): """Class for fatigue life estimation using frequency domain method by Benasciutti and Tovo[1]. References ---------- [1] Denis Benasciutti and Roberto Tovo. Comparison of spectral methods for fatigue damage assessment in bimodal random processes. 9th International Conference on Structural Safety & Reliability (ICOSSAR), 230:3207-3214, 2005 [2] Aleš Zorman and Janko Slavič and Miha Boltežar. Vibration fatigue by spectral methods—A review with open-source support, Mechanical Systems and Signal Processing, 2023, https://doi.org/10.1016/j.ymssp.2023.110149 Example ------- Import modules, define time- and frequency-domain data >>> import FLife >>> import pyExSi as es >>> import numpy as np >>> from matplotlib import pyplot as plt >>> # time-domain data >>> N = 2 ** 16 # number of data points of time signal >>> fs = 2048 # sampling frequency [Hz] >>> t = np.arange(0, N) / fs # time vector >>> # frequency-domain data >>> M = N // 2 + 1 # number of data points of frequency vector >>> freq = np.arange(0, M, 1) * fs / N # frequency vector >>> PSD_lower = es.get_psd(freq, 20, 60, variance = 5) # lower mode of random process >>> PSD_higher = es.get_psd(freq, 100, 120, variance = 2) # higher mode of random process >>> PSD = PSD_lower + PSD_higher # bimodal one-sided flat-shaped PSD Get Gaussian stationary signal, instantiate SpectralData object and plot PSD >>> rg = np.random.default_rng(123) # random generator seed >>> x = es.random_gaussian(N, PSD, fs, rg) # Gaussian stationary signal >>> sd = FLife.SpectralData(input=x, dt=1/fs) # SpectralData instance >>> plt.plot(sd.psd[:,0], sd.psd[:,1]) >>> plt.xlabel('Frequency [Hz]') >>> plt.ylabel('PSD') Define S-N curve parameters and get fatigue-life estimatate >>> C = 1.8e+22 # S-N curve intercept [MPa**k] >>> k = 7.3 # S-N curve inverse slope [/] >>> mfc = FLife.ModifiedFuCebon(sd, PSD_splitting=('userDefinedBands', [80,150])) >>> print(f'Fatigue life: {mfc.get_life(C,k):.3e} s.') Plot segmentated PSD, used in modified Fu-Cebon method >>> lower_band_index, upper_band_index= mfc.band_stop_indexes >>> plt.plot(sd.psd[:,0], sd.psd[:,1]) >>> plt.vlines(sd.psd[:,0][lower_band_index], 0, np.max(sd.psd[:,1]), 'k', linestyles='dashed', alpha=.5) >>> plt.fill_between(sd.psd[:lower_band_index,0], sd.psd[:lower_band_index,1], 'o', label='lower band', alpha=.2, color='blue') >>> plt.vlines(sd.psd[:,0][upper_band_index], 0, np.max(sd.psd[:,1]), 'k', linestyles='dashed', alpha=.5) >>> plt.fill_between(sd.psd[lower_band_index:upper_band_index,0], sd.psd[lower_band_index:upper_band_index,1], 'o', label='upper band', alpha=.5, color ='orange') >>> plt.xlabel('Frequency [Hz]') >>> plt.ylabel('PSD') >>> plt.xlim(0,300) >>> plt.legend() """
[docs] def __init__(self, spectral_data, PSD_splitting = ('equalAreaBands', 2)): """Get needed values from reference object. :param spectral_data: Instance of class SpectralData :param PSD_splitting: tuple PSD_splitting[0] is PSD spliting method, PSD_splitting[1] is method argument. Splitting methods: - 'userDefinedBands', PSD_splitting[1] must be of type list or tupple, with N elements specifying upper band frequencies of N random processes. - 'equalAreaBands', PSD_splitting[1] must be of type int, specifying N random processes. Defaults to ('equalAreaBands', 2). """ Narrowband.__init__(self, spectral_data) self.PSD_splitting = PSD_splitting self.band_stop_indexes = self.spectral_data._get_band_stop_frequency(self.PSD_splitting)
[docs] def get_life(self, C, k): """Calculate fatigue life with parameters C, k, as defined in [2]. :param C: [int,float] S-N curve intercept [MPa**k]. :param k: [int,float] S-N curve inverse slope [/]. :return: Estimated fatigue life in seconds. :rtype: float """ # -- spectral moments for each narrowband moments = self.spectral_data.get_spectral_moments(self.PSD_splitting, moments=[0,2]) m0L, m2L = moments[0] #spectral moments for lower band m0H, m2H = moments[1] #spectral moments for upper band # -- Vanmarcke bandwidth parameter _, epsV_H = self.spectral_data.get_vanmarcke_parameter(self.PSD_splitting) # -- positive slope zero crossing frequency v0L, v0H = self.spectral_data.get_nup(self.PSD_splitting) # -- normalized variances m0 = np.sum(moments[:, 0]) m0L_norm = m0L/m0 m0H_norm = m0H/m0 v0Large = m0L_norm * v0L* np.sqrt(1 + m0H_norm/m0L_norm * (v0H/v0L*epsV_H)**2) #low + high frequency, large amplitudes v0Small = v0H - v0Large #freqeuncy of small cycless #dNB small #small cycles consist of high frequency component dNB_small = self.damage_intesity_NB(m0H, v0Small, C, k) #dNB large #large cycles consist of low and high frequency component pdf_large = pdf_rayleigh_sum(m0L,m0H) S_large = integrate.quad(lambda x: x**k * pdf_large(x), 0, np.inf)[0] dNB_large = v0Large * S_large / C d = dNB_small + dNB_large T = 1 / d return T
def get_PDF(self, s): raise Exception(f'Function <get_PDF> is not available for class {self.__class__.__name__:s}.')