Affiliation:
1. Muthayammal Engineering College, India
2. Muthayammal College of Engineering, India
Abstract
The plastic limit analysis of structures has several benefits, but it also has certain disadvantages, such high computing costs. In the past twenty years, plastic limit analysis has performed better thanks to metaheuristic algorithms, particularly when it comes to structural issues. Graph theoretical techniques have also significantly reduced the process's processing time. But until recently, the iterative process and its proportional computer memory and time have proven difficult. In order to quickly ascertain the collapse load factors of two-dimensional frames, a metaheuristic-based artificial neural network (ANN), which falls under the category of supervised machine learning techniques, has been utilized in this work. The numerical examples show that the accuracy and performance of the suggested method are adequate.
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