Algorithm-Driven: Real-Time Structural Failure Prediction and Prevention Systems

https://doi.org/10.55529/ijasm.12.30.42

Authors

  • Ayush Kumar Ojha SSSUTMS, B.Tech in Artificial Intelligence and Data Science Branch, Indore, India.

Keywords:

Structural Mechanics, Real-Time Failure Prediction, Infrastructure Safety, Advanced Algorithms, Embedded Sensors, Structural Integrity.

Abstract

In the field of structural mechanics, the ability to predict and prevent failures in real time is crucial for ensuring the safety and longevity of infrastructures. This paper presents a novel approach to structural failure prediction and prevention utilizing advanced algorithms. By integrating continuous data analysis from embedded sensors with sophisticated predictive algorithms, this system can identify potential failure points before they occur. The proposed system leverages real-time data from various sources, including environmental conditions and material stress indicators, to dynamically assess the structural integrity. The algorithms process this data to predict potential failures, allowing for timely interventions that can prevent catastrophic events. This research demonstrates the effectiveness of algorithm-driven systems in maintaining structural health and proposes a framework for their implementation in various types of infrastructure. The results show significant improvements in both the accuracy of failure predictions and the speed of preventive measures, marking a substantial advancement in the field of structural mechanics.

Published

2021-11-27

How to Cite

Ayush Kumar Ojha. (2021). Algorithm-Driven: Real-Time Structural Failure Prediction and Prevention Systems. International Journal of Applied and Structural Mechanics , 1(02), 30–42. https://doi.org/10.55529/ijasm.12.30.42