Abstract:
In aerospace industry, Fatigue Crack Propagation pose a serious threat to the professionals involved in designing mechanical assembly of the aircraft structures. In these structures crack growth is a problem to be handled seriously as human life risk is concerned in addition to economic loss. Fatigue Crack Growth (FCG) Rate is the rate at which crack grows with number of cycles subjected to constant amplitude loading. FCG curve is drawn between crack growth rate on y-axis and SIF range on x-axis. It must be predicted accurately to avoid losses. Upon analyzing the curve it becomes obvious that the correlation between Stress Intensity Factor (SIF) range βΞ𝐾β and FCG rate β𝑑𝑎𝑑𝑁ββ is non-linear even in Paris Region (Region II). Empirical formulation methods are unable to handle non-linearity satisfactorily. Other hybrid techniques are also found incapable of dealing with non-linearity suitably. In contrast to the prior methods, machine learning algorithms are capable to deal with the non-linearity issue in a much better way owing to their admirable learning ability and flexible nature. In this research work three distinct MLA based Optimized Neural Networks are utilized for prediction of FCG rate. The used algorithms include Genetic Algorithm based Optimized Neural Network, Hill Climbing based Optimized Neural Network and Simulated Annealing based Optimized Neural Network. The algorithms presented in the proposed technique are validated by testing on different aluminum alloys used for aerospace industry that includes 2324-T39, 7055-T7511 and 6013-T651 aluminum alloys. The minimum predicted MSE for 2324-T39 aluminum alloy is achieved by Simulated Annealing based Optimized Neural Network that is 𝟏.𝟎𝟓𝟓𝟗Γ𝟏𝟎β𝟗. For 7055-T7511 alloy, minimum predicted MSE is 𝟏.𝟒𝟐𝟖𝟒Γ𝟏𝟎β𝟗 which is achieved by Hill Climbing based Optimized Neural Network. Finally, the least predicted MSE for 6013-T651 is 𝟑.𝟏𝟎𝟔𝟗Γ𝟏𝟎β𝟖 achieved by Hill Climbing based Optimized Neural Network. Taking all alloys on which experiments were held with used algorithms, the minimum predicted MSE is achieved as 𝟏.𝟎𝟓𝟓𝟗Γ𝟏𝟎β𝟗 for 2324-T39 Aluminum Alloy with Simulated Annealing based Optimized Neural Network. Moreover, the results show an exceptional conformity to experimental data.