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April 29, 2026

Registration closes April 29, 2026

Air Quality AI: Spatiotemporal Fusion, Concept Drift & Forecasting

  • Mode: Virtual / Online
  • Type: Mentor Based
  • Level: Moderate
  • Duration: 3 Days (60-90 Minutes Each Day)
  • Starts: 29 April 2026
  • Time: 5:30 PM IST IST

About This Course

Designed for researchers, professionals, and learners, this workshop focuses on measuring air quality parameters, identifying sensor drift, and detecting environmental anomalies using data-driven methods.

Aim

To provide participants with a strong understanding of air quality analytics by focusing on accurate measurement techniques, sensor drift identification, and intelligent detection methods for reliable environmental monitoring and data-driven decision-making.

Workshop Objectives

  • Understand key air quality parameters and monitoring methods.
  • Learn the basics of sensor drift and its impact on data accuracy.
  • Explore methods for drift analysis, calibration, and correction.
  • Identify pollution patterns and anomalies using analytics.
  • Apply air quality data for effective environmental monitoring and decision-making.

Workshop Structure

 Day 1 Air Quality Components and Common Pollutants

  • Air Quality Components, measurements and WHO Standards ( PM2.5 –PM10  )
  • Data Sources: Ground-based sensors, satellite imagery, and meteorological data,
  • Analytics Techniques time-series analysis for daily/seasonal trends, regression analysis, and spatial mapping of pollution.
  • Monitoring and Visualization Methods: Ambient Air Monitoring Method, maps and dashboards (e.g., Air Gradient) that visualize pollution hotspots.
  • Measure Air Quality Index and AI tools for Air Quality measure ,WHO Standards
  • Hands-on: Google AI Air View, IQAir Air Visual, Computer Vision and Geospatial AI

Day 2 : Real-time monitoring  systems and Drift Systems

  • Components, Data Flow, Sensors (PM2.5, PM10 ,CO, VOCs), Microcontrollers (Node MCU, ESP8266, Arduino), and communication modules (GPRS/Wi-Fi)
  • Data Flow: Sensors detect pollutants, send data to a microcontroller for preprocessing, then transmit to cloud platforms (e.g., Blink) for visualization on mobile/web applications.
  • Features: Automated alerts, 24-hour monitoring, and data storage for historical analysis.
  • Monitoring Devices : Portable/Low-Cost Sensors: MQ-series (MQ135 for air quality, MQ7 for CO), particulate matter (PM) sensors.
  • Commercial Monitors: IQAir AirVisual Pro (measures PM2.5, temperature, humidity).
  • Hands –on: Climate Trace: An AI-powered platform that uses satellite data to map and monitor emissions from, major industrial sources like power plants.
  • IoT-Enabled AI Sensors: Low-cost, AI-integrated sensors (like the Bosch BME 690) deployed in urban environments or schools to provide real-time data analysis, often using algorithms such as Artificial Neural Networks (ANN) or Random Forest for enhanced accuracy.

Day 3: Air Quality Analytics: Drift & Detect

  • Sensor Data Drift & Calibration,
  • Pollution Drift and Forecasting Systems
  • Air Quality Early Warning System (AQ-EWS)
  • Drift Detection Methods, AI/ML for Forecasting and Detection:
  • Impact Assessment: Particulate Matter, gaseous,
  • Health impact assessments and Specific software for air quality modeling
  • Hands-on: Commercial Monitors: IQAir AirVisual Pro (measures PM2.5, , temperature, humidity).EPA REal TIme Geospatial Data Viewer (RETIGO):  sensortoolkit (Python Library):  IQAir AirVisual Platform:  OpenAQ API:  AQI.in API Open-Meteo Air Quality API: Computer Vision for Air Quality

Who Should Enrol?

  • Students and early researchers in environmental science or data analytics
  • Ph.D. scholars, researchers, and academicians
  • Environmental engineers and air quality professionals
  • AI/ML and data science practitioners working with sensor data
  • IoT professionals involved in environmental monitoring
  • Industry professionals in sustainability, smart cities, and pollution control

Important Dates

Registration Ends

April 29, 2026
IST 4:30 PM IST

Workshop Dates

April 29, 2026 – May 1, 2026
IST 5:30 PM IST

Workshop Outcomes

  • Gain a clear understanding of air quality measurement and monitoring concepts.
  • Recognize sensor drift and evaluate its effect on data reliability.
  • Apply basic methods for calibration, drift correction, and anomaly detection.
  • Interpret air quality data to identify pollution trends and variations.
  • Build confidence in using analytics for environmental monitoring and informed decision-making.

Meet Your Mentor(s)

Mentor Photo

Nurchu shirisha

more


Fee Structure

Student

₹2499 | $75

Ph.D. Scholar / Researcher

₹3499 | $84

Academician / Faculty

₹4499 | $95

Industry Professional

₹6499 | $115

What You’ll Gain

  • Live & recorded sessions
  • e-Certificate upon completion
  • Post-workshop query support
  • Hands-on learning experience

Need Help?

We’re here for you!


(+91) 120-4781-217

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