Table of contents
Water utilities use District Metering Analysis (DMA) as a fundamental tool for monitoring and managing water distribution networks. DMA involves dividing the network into smaller districts or zones and installing flow meters to measure the flow of water into and out of each zone. By analysing flow data from DMA, utilities can identify leaks, assess water consumption patterns and make informed decisions about infrastructure improvements and resource allocation.
When using DMA in conjunction with AI, water utilities can unlock additional benefits and improve the resilience of the water network. AI can leverage the data collected through DMA and provide advanced analytics and predictive capabilities, enabling utilities to make proactive decisions and optimise network operations.
Demand analysis and planning
DMA provides valuable data on water consumption patterns within each district. Utilities can analyse the data to understand peak demand periods, identify trends, and estimate future demand. This information aids in capacity planning, infrastructure investments, and optimising the network performance. It ensures utilities can meet the water demand efficiently, even during peak periods or in times of increased stress on the system.
Water balance management
DMA allows utilities to calculate the water balance within each district. By comparing the water entering a district with the consumption and losses, utilities can identify discrepancies. This helps ensure that water supplied to a particular zone is accurately measured and accounted for, reducing water loss due to inaccurate metering or unauthorised use.
Incident response
DMA allows for quick response to incidents such as leaks, bursts, or equipment malfunctions. By continuously monitoring the data, utilities can detect anomalies and unusual flow patterns, indicating potential issues. By analysing flow data from DMA, AI can detect early signs of leaks, bursts or abnormal consumption, allowing utilities to take immediate action before the situation escalates. This proactive approach helps reduce water losses, prevent infrastructure damage and ensure uninterrupted water service.
Predictive maintenance
AI can predict the likelihood of equipment failure or pipe deterioration by analysing historical data from DMA and other relevant sources. By taking into account factors such as flow rates, pressure fluctuations and environmental conditions, AI models can provide insights into when and where maintenance activities should be prioritised. Utilities can proactively schedule maintenance to minimise downtime and optimise resource allocation.
Optimal network operation
Water utilities can leverage AI algorithms to optimise the management of their distribution networks using real-time data from DMA. AI takes into account factors like demand, supply capacity, and energy costs. By dynamically adjusting pump operations, valve settings, and water flow distribution based on real-time DMA data, utilities can ensure efficient and resilient network performance while reducing operational costs.
Scenario analysis and planning
With DMA solution from InfoTiles, water utilities can simulate different scenarios and assess the impact on the water network. By combining DMA data with predictive models, utilities can assess the impact of infrastructure changes, population growth or extreme weather events. This information helps with long-term planning, identifying vulnerabilities and implementing resiliency measures.
Decision support
By analysing complex data from DMA, weather forecasts and other sources, water utilities could make informed decisions in real-time with recommendations for operational adjustments, emergency response strategies and resource allocation. This enables utilities to respond quickly to changing conditions, minimise service disruptions and ensure the resilience of the water network.
While DMA provides the foundation for water network management, the integration of AI amplifies its capabilities by introducing advanced analytics, predictive capabilities, and real-time decision support. AI enhances anomaly detection, predictive maintenance, network optimisation, and planning, ultimately improving water network resilience, reducing water losses, and enhancing operational efficiency for water utilities.