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AI water quality prediction for Rijnland

Machine learning model predicting chloride levels using environmental data, enabling proactive water quality management for 1.3 million residents.

ClientHoogheemraadschap van Rijnland
IndustryGovernment / Water Management
ProductChloride Content Prediction Model
AI water quality prediction for Rijnland

Hoogheemraadschap van Rijnland

Hoogheemraadschap van Rijnland, the Netherlands' oldest water authority established in 1248, manages water quality across 1,175 square kilometers serving 1.3 million residents. They needed to move from reactive monitoring to predictive water quality management.

80%Faster response time
1.3MResidents protected
1,175 km²Area monitored
24/7Continuous prediction

Chloride monitoring presented significant challenges due to complex interactions between weather patterns, lock operations, seasonal changes, tidal influences, and human activities. Traditional monitoring detected problems only after they occurred, limiting the ability to prevent quality issues. This reactive approach increased operational costs and occasionally resulted in water quality deviations that required costly corrective measures.

What SevenLab built

SevenLab developed a comprehensive machine learning model that integrates multiple environmental data sources to predict chloride content with high accuracy. The system employs ensemble learning techniques and processes real-time data feeds to provide forward-looking predictions.

Predictive ML model

Ensemble algorithms trained on historical environmental data correlating conditions with measured chloride levels.

Real-time data integration

Weather forecasts, lock operation schedules, and water flow data feed continuously into the model.

Automated alerting

Early warning system notifies staff when predicted chloride levels approach concerning thresholds.

Intuitive dashboards

Complex modeling results presented in accessible formats with confidence intervals and accuracy metrics.

Measurable business impact

80%Faster response time
1.3MResidents protected
1,175 km²Area monitored
24/7Continuous prediction

The ML model significantly outperforms traditional monitoring, enabling proactive quality management. Operational costs dropped as expensive corrective measures decreased. Staff now focus on strategic activities instead of manual analysis.

We needed to move beyond simply measuring chloride levels to actually understanding and predicting the environmental factors that drive these changes. SevenLab delivered exactly that.

Water Quality Specialist

Hoogheemraadschap van Rijnland

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