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Climate Change Impact on India and World – International Reports, Key Observations, etc.

How Delhi’s air quality monitors work and why their readings can falter

INTRODUCTION

Delhi operates a dense network of 40 Continuous Ambient Air Quality Monitoring Stations (CAAQMS) that serve as automated laboratories tracking eight key pollutants. These stations guide the daily AQI, enable pollution-control measures and emergency responses, and form the backbone of environmental governance. However, recent judicial scrutiny and scientific studies highlight significant gaps in equipment suitability, calibration, meteorological sensitivity, and data reliability, creating a critical governance challenge.

WHY IN THE NEWS 

The Supreme Court recently demanded clarity on whether Delhi’s air-quality monitoring equipment is suited to city-specific pollution and meteorological conditions. This scrutiny is significant because Delhi heavily depends on AQI data for health advisories and regulatory actions, yet multiple stations fail to generate adequate, validated data on many days. A CAG report and recent scientific studies show systematic errors, including 30-40% overestimation of PM2.5 under high humidity, raising concerns about the credibility of pollution data itself.

How Delhi’s Air Quality Monitoring System Functions

  1. CAAQMS Network: Operates 40 automated, temperature-controlled stations functioning as compact laboratories across different city zones.
  2. Regulatory Basis: Functions under CPCB’s 2012 guidelines, which define calibration steps, quality-control procedures, and uniform monitoring standards.
  3. Pollutant Coverage: Tracks eight pollutants, PM2.5, PM10, NO₂, SO₂, CO, O₃, NH₃, Pb, ensuring representative citywide measurement.
  4. Instrumentation Setup: Stations contain racks of analysers, pumps, and data loggers, with sampling inlets mounted on masts above the roof to capture ambient air.

How Pollutants Are Measured Inside the Stations

  1. Beta Attenuation Monitors (BAM): Use beta ray attenuation to measure particulate concentration by assessing signal weakening through collected particulate mass.
  2. Gaseous Pollutant Monitors: Use optical and chemiluminescent methods, depending on pollutant type, to detect gas behaviour under specific wavelengths.
  3. National Standards: Measurements follow NAAQS procedures, including “gravimetric, wet-chemical and automatic instrument-based techniques” ensuring comparable data across India.

Factors That Distort or Corrupt Monitoring Readings

  1. Equipment Performance: AQI depends on validated data; CPCB requires 16 hours of reliable data per day for at least three pollutants, including PM2.5 or PM10.
  2. System Failures: Calibration lapses, power outages, and extreme weather cause routine station downtime.
  3. CAG Findings: A report tabled in Parliament revealed several stations failed to generate adequate, valid, real-time data, especially for pollutants like lead, Ammonia, etc.
  4. Location-Based Distortions: Stations placed near buildings, trees, or exhaust vents risk skewed results due to poor dispersion.
  5. Meteorological Disruptions: Severe weather disrupts data transmission, reducing continuity in real-time updates.

What Scientific Studies Reveal About Measurement Accuracy

  1. Variability with Humidity: CSIR–NPL’s 2021 analysis showed PM2.5 measurements vary with RH, particle mass loading, boundary layer height, and ventilation effects.
  2. Overestimation Threshold: When RH > 60%, BAM monitors exhibited 30-40% overestimation of PM2.5 because water absorption artificially increases mass signal attenuation.
  3. High-Pollution Episodes: Dust-heavy conditions can cause a factor up to 5 underestimation, as heavy loading disturbs air beam pathways.
  4. USEPA Insights: Notes that “high filter loading can lead to flow perturbations,” and “excessive particulate accumulation” disrupts instrument stability.
  5. Recommended Corrections: Scientists recommend site-specific correction factors, which were shown to reduce overestimation errors from 46% to under 2%.

Why This Issue Matters for Governance and Public Health

  1. Policy Dependence on Data: Emergency actions (GRAP stages, school closures, construction bans) rely on AQI accuracy.
  2. Public Health Impact: Misreporting distorts exposure assessments, health risk communication, and hospital preparedness.
  3. Environmental Justice: Vulnerable groups (elderly, children, labourers) depend on reliable alerts for safe mobility.
  4. Accountability: Data reliability determines CPCB, DPCC and state-level regulatory performance.

CONCLUSION

Delhi’s air pollution management depends critically on trustworthy, scientifically robust, and well-maintained monitoring infrastructure. While the city has one of India’s largest automatic monitoring networks, recent judicial scrutiny and scientific findings reveal persistent calibration errors, equipment inconsistencies, and meteorological vulnerabilities. Ensuring accuracy requires standardised maintenance, site-specific correction factors, stronger institutional oversight, and resilient instrumentation capable of performing reliably under Delhi’s complex pollution environment.

PYQ Relevance

[UPSC 2021] Describe the key points of the revised Global Air Quality Guidelines (AQGs) released by WHO (2021). How are these different from the 2005 update? What changes in India’s National Clean Air Programme are required to achieve these standards?

Linkage: The question links directly to GS-III themes of environmental pollution, health-based standards, and regulatory capacity. It is highly relevant as India’s NCAP, NAAQS and AQI-based governance must realign with WHO’s stricter 2021 guidelines to ensure credible monitoring, policy effectiveness, and public health protection.

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