Welcome to

International Conference on Spatiotemporal Data Analysis in Engineering
(ICSD-AE-2026)

A global academic platform for research, innovation, and collaboration

Organized by

International Academic Research Forum (IARF)

 
Conference Date
10th - 11th August 2026
 
Conference Location
Regina , Canada
 
Mode of Conference
Hybrid

Conference Session Tracks

Focused research themes driving global academic dialogue and innovation

SDG Wheel

Aligned with

UN Sustainable Development Goals

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.

Goals We Support

SDG 4 SDG 4 — Quality Education
SDG 9 SDG 9 — Industry, Innovation and Infrastructure
SDG 11 SDG 11 — Sustainable Cities and Communities
SDG 12 SDG 12 — Responsible Consumption and Production
SDG 13 SDG 13 — Climate Action
SDG 16 SDG 16 — Peace, Justice and Strong Institutions
Session Tracks
Track 01
Advancements in Predictive Modeling Techniques

This track focuses on the latest methodologies in predictive modeling within engineering contexts. Researchers are invited to present their findings on novel algorithms and frameworks that enhance predictive accuracy and efficiency.

Track 02
Supervised and Unsupervised Learning Applications

This session explores the application of supervised and unsupervised learning techniques in engineering data analysis. Contributions should highlight innovative approaches to feature extraction and model training in complex datasets.

Track 03
Deep Learning Innovations for Engineering Data

This track emphasizes the role of deep learning in processing and analyzing engineering data. Papers should discuss new architectures and techniques that address challenges in spatiotemporal data analysis.

Track 04
Anomaly Detection in Engineering Systems

This session is dedicated to methodologies for detecting anomalies in engineering systems using spatiotemporal data. Researchers are encouraged to present case studies and theoretical advancements that improve anomaly identification.

Track 05
Time Series Analysis in Engineering Applications

This track examines the techniques and challenges associated with time series analysis in various engineering domains. Submissions should focus on innovative methods for forecasting and trend analysis in time-dependent data.

Track 06
Geospatial Analytics in Engineering

This session highlights the integration of geospatial analytics in engineering projects. Papers should address the use of spatial data in decision-making processes and the implications for infrastructure and resource management.

Track 07
Sensor Data Processing and Analysis

This track focuses on the methodologies for processing and analyzing sensor data in engineering applications. Contributions should explore techniques for data cleaning, integration, and real-time analytics.

Track 08
Predictive Maintenance Strategies Using Data Science

This session is dedicated to the development of predictive maintenance strategies leveraging data science techniques. Researchers are invited to share insights on improving maintenance schedules and reducing downtime through data-driven approaches.

Track 09
Industrial IoT and Data Fusion Techniques

This track explores the intersection of industrial IoT and data fusion techniques in engineering. Papers should focus on the integration of diverse data sources to enhance operational efficiency and decision-making.

Track 10
Model Evaluation and Performance Metrics

This session addresses the critical aspects of model evaluation and the development of performance metrics in engineering applications. Contributions should discuss best practices and innovative approaches to assess model reliability and validity.

Track 11
Simulation Analytics for Engineering Insights

This track focuses on the role of simulation analytics in deriving insights from engineering data. Researchers are encouraged to present methodologies that enhance simulation accuracy and applicability in real-world scenarios.