Aligned with
This conference contributes to global sustainability by aligning its research discussions and academic sessions with key United Nations Sustainable Development Goals. It fosters knowledge exchange, innovation, and collaborative engagement.
SDG 4 — Quality Education
SDG 8 — Decent Work and Economic Growth
SDG 9 — Industry, Innovation and Infrastructure
SDG 11 — Sustainable Cities and Communities
This track focuses on innovative methodologies for time series forecasting, emphasizing the integration of machine learning algorithms. Participants will explore case studies and applications that demonstrate the effectiveness of these techniques in various engineering domains.
This session will delve into the latest approaches for detecting anomalies in time series data, utilizing both supervised and unsupervised learning methods. Researchers will present their findings on the implications of anomaly detection for engineering applications.
This track examines the application of deep learning architectures, such as recurrent neural networks, for modeling sequential data. Attendees will gain insights into the challenges and successes of implementing these models in real-world engineering scenarios.
This session highlights advanced feature extraction methods tailored for time series analysis, focusing on enhancing predictive modeling accuracy. Participants will discuss the impact of feature selection on model performance across various engineering applications.
This track explores the intersection of temporal data mining and engineering, showcasing techniques that uncover patterns and trends within time-dependent datasets. Researchers will share their experiences in applying these methods to solve complex engineering problems.
This session focuses on the application of regression analysis techniques to time series data, emphasizing their role in predictive analytics. Attendees will learn about various regression models and their effectiveness in engineering-related forecasting tasks.
This track investigates the role of signal processing in enhancing the analysis of time series data, particularly in engineering applications. Participants will discuss methods for data smoothing, filtering, and transformation to improve model accuracy.
This session will cover methodologies for seasonal decomposition and trend analysis in time series data, highlighting their importance in engineering forecasting. Researchers will present techniques that facilitate the identification of underlying patterns in temporal datasets.
This track focuses on the use of machine learning techniques for event prediction within time series contexts, particularly in engineering fields. Participants will explore various models and their applications in anticipating significant events based on historical data.
This session aims to compare the effectiveness of supervised and unsupervised learning techniques in time series analysis. Researchers will present empirical studies that highlight the strengths and limitations of each approach in engineering applications.
This track showcases cutting-edge innovations in predictive analytics specifically tailored for engineering challenges. Participants will discuss novel algorithms and frameworks that enhance decision-making processes through accurate forecasting.
SNRI maintains uninterrupted academic processes in the current global situation. Participants can engage and publish through online and blended conference formats.
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