Title:Dynamic Pattern Analysis for Enhanced Predictive Intelligence in Smart Environments Using Transformer Learning Models
PatternIQ Mining
© 2025 by piqm - Sahara Digital Publications
ISSN: 3006-8894
Volume 02, Issue 01
Year of Publication : 2025
Page: [85 - 96]
Mohammad ameid alkato and Nekita kalenen
Faculty of Information Technology, Isra University, Amman, Jordan
school of Information science and computing, Donetsk National Technical University, Lviv region, 82111, Ukraine
Sophisticated prediction models are needed in intelligent settings to improve system efficiency, security, and customer satisfaction. This study on transformer-based time-lapse forecasting models for intelligent prediction covers numerous occurrences, including energy management, enhanced assistance for driver infrastructure, and in-car technologies. The recommended method identifies permanent correlations and complex temporal patterns in multi-feature collections employing self-focus. The Transformer's topology is developed to forecast time series. The information set is ready for abnormality recognition, event estimation, and trend assessment by cleaning and classifying the event types with different activity rates. The simulation of the Transformer receives the actual data set. Important findings reveal that the Transformer-based approach forecasts consecutive network configurations more accurately and consumes less computational resources than conventional techniques. The model's capabilities for identifying outliers and adjusting event distributions promote adaptive ambient decision-making price; subsequently, the Transformers technique lays the groundwork towards AI prediction, particularly improving sophisticated systems' capacity to interpret the meaning of complex influenced by events stream of information.
Predictive Intelligence, Transformer Model, Time-Series Forecasting, Smart Environments, Anomaly Detection.
https://doi.org/10.70023/sahd/250208