Description: Quasi-static analysis is an approach used in various disciplines, including anomaly detection with artificial intelligence (AI). This type of analysis assumes that the system under study is in a state of equilibrium, meaning that the conditions of the system do not change significantly during the analysis process. This assumption simplifies the model and facilitates the identification of normal patterns and behaviors within the data. In the context of anomaly detection, quasi-static analysis focuses on identifying deviations from this equilibrium state, which may indicate the presence of anomalies or unusual behaviors. This approach is particularly useful in systems where data is stable and expected to follow a predictable pattern. By applying AI techniques, such as machine learning, models can be trained to recognize these patterns and automatically detect any anomalies that deviate from the expected. The relevance of quasi-static analysis lies in its ability to improve the accuracy and efficiency of anomaly detection, which is crucial in a wide range of applications, including industrial system monitoring, cybersecurity, and financial data analysis.