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Shri S. Suresh Kumar

Andhra Pradesh is advancing a comprehensive AI-led transformation across town planning, civic utilities, water quality management, and infrastructure monitoring, positioning itself at the forefront of predictive and data-driven governance. The Directorate of Town and Country Planning (DTCP) has outlined AI priorities for 2026–2031 aimed at revolutionising spatial planning and regulatory compliance through GIS-enabled analytics and predictive modelling. The strategy includes integrating AI with GIS-generated maps to forecast land value shifts, flood vulnerabilities, and Floor Space Index optimisation using satellite, drone, and IoT data. Systems such as the Unauthorised Constructions Identification and Monitoring System (UCIMS) and the Unauthorised Layouts Identification and Monitoring System (ULIMS) are proposed to be automated and integrated for real-time detection of illegal developments, with AI-generated alerts and penalisation notices. The flagship Andhra Pradesh Development Permission Management System (APDPMS 2.0) is also envisioned to move toward full automation of plan scrutiny by 2031, significantly reducing approval timelines while improving compliance analytics. The roadmap further recommends localising the IndiaAI Mission through a dedicated urban or town planning vertical, investing in municipal compute infrastructure, training 50,000 planners in AI-GIS tools by 2028, and establishing a national urban GIS repository with privacy safeguards to strengthen predictive zoning and climate-resilient planning.

In parallel, the Municipal Administration & Urban Development (MA&UD) Department has identified critical urban governance gaps that AI can address. One major challenge is the lack of real-time water quality monitoring, which currently relies on infrequent manual sampling and delayed laboratory results, often leading to slow detection of contamination and increased public health risks such as cholera, typhoid, and diarrhoeal outbreaks. The proposed AI-powered Water Quality Risk Monitoring system will continuously analyse parameters such as turbidity, chlorine, pH levels, historical contamination incidents, complaint trends, pipeline age, repair history, reservoir cleaning schedules, pressure complaints, and disease surveillance indicators. The system will generate daily and weekly contamination risk heatmaps at ward, pipeline, and zone levels, identify high-risk zones even before laboratory confirmation, and trigger real-time alerts when risk thresholds are crossed or when complaint surges coincide with flooding, pipe repairs, or supply disruptions. A proof-of-concept in Vijayawada Municipal Corporation will deploy 50 IoT monitoring points, integrate mobile lab systems, and engage approximately 2,000 citizen users through multilingual alerts in English and Telugu. The pilot aims to achieve at least a 50 percent reduction in median time from anomaly detection to first corrective action, strengthening surveillance, accountability, and community engagement while reducing waterborne disease risks.

Another priority area is smart demand forecasting for civic utilities, as rapid urbanisation, encroachments on natural catchments, and static planning approaches have led to recurring service breakdowns and urban flooding. The proposed AI-powered demand forecasting framework will analyse ward-level demographic data, utility consumption records, rainfall patterns, hydrology, drainage density, elevation, and land-use changes to project short- term, seasonal, and medium-term demand for water supply, sanitation, stormwater drainage, and solid waste management. The system will simulate the impact of population growth, new housing, and commercial activity on future utility loads, enabling early identification of high-growth and high-stress wards. Decision-support dashboards will help planners prioritise tanker deployment, desludging schedules, waste collection capacity, and infrastructure upgrades. A pilot covering approximately 10,000 households across three flood- prone wards in Vijayawada aims to achieve at least 85 percent forecast accuracy compared to actual usage, strengthening resilience and improving long-term investment planning.

In infrastructure governance, the absence of smart monitoring has limited the ability of planners to detect degradation risks in roads, bridges, and public buildings. The proposed AI-based system will integrate LiDAR, drone, and satellite datasets to generate high-resolution 3D maps of urban assets, automatically detect structural deformations, subsidence, surface wear, and encroachments, and perform historical change detection. Asset-level risk scores will be generated to rank infrastructure based on urgency of inspection and maintenance. Interactive GIS-based dashboards will provide administrators with insights into infrastructure health, risk areas, and prioritised development interventions. A pilot in Visakhapatnam covering around 200 infrastructure assets—including roads, bridges, and government buildings—aims to achieve at least 95 percent accuracy in detecting structural risks, reducing reliance on manual surveys and enabling proactive asset management.

While accelerating AI adoption, the broader framework recognises the importance of safety, accountability, and institutional oversight. The evolving AI ecosystem globally has demonstrated that advances in reasoning models and autonomous systems bring not only enhanced capabilities but also new oversight and risk management challenges. India’s AI governance approach emphasises trust, human-centric design, fairness, accountability, transparency, safety, resilience, and innovation. It recommends a whole-of-government approach through coordinated institutional mechanisms, graded liability across the AI value chain, incident reporting systems, grievance redressal mechanisms, and integration of Digital Public Infrastructure with AI to ensure scalable and inclusive deployment.

Also Read | Bridging The Skill Gap – Karnataka’s Industry-Linked ITI Model

Taken together, Andhra Pradesh’s AI initiatives represent a decisive shift from reactive administration to predictive governance. By embedding AI across planning approvals, water safety, utility demand forecasting, and infrastructure monitoring—while aligning with structured governance principles and institutional safeguards—the state is building a model of urban administration that is data-driven, transparent, resilient, and citizen-centric.

Views Expressed By: Shri S. Suresh Kumar, IAS, Principal Secretary, Municipal Administration and Urban Development, Government of Andhra Pradesh 

 

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