Measuring Global
Water Security.
Sensors, satellites, data, policy, and business models — what's now measurable, and what each unlocks.
Water Quality Impairment at Scale
drink microbially contaminated water
threatened by water insecurity
half from water management, half from unmanaged human wastewater
fail Clean Water Act standards
Global Mortality Among Children Under 5
Total deaths by cause, 1990–2021. Sources: IHME GBD 2021, UNICEF IGME 2024, WHO Global Health Estimates.
Extreme Poverty by Region
People living below $2.15/day (2017 PPP). Sub-Saharan Africa is the only region where absolute numbers are rising. Source: World Bank, 2024. By 2030, 9 in 10 people in extreme poverty will live in Sub-Saharan Africa.
Per Capita CO2 Emissions
High-income countries have the highest per capita emissions, while low-income countries with the greatest disease burden contribute the least.
Death Rate from Diarrhoeal Diseases
Annual deaths per 100,000, all ages. Disease burden tracks fecal contamination — Sub-Saharan Africa and South Asia carry it. Source: IHME GBD via Our World in Data.
Rwanda — Country Context
Key Indicators
- Population: 14 million (2024)
- GDP per capita: ~$800
- Under-5 mortality: 38 per 1,000 live births
- Over 80% rely on firewood as primary fuel
- Most rural households drink untreated water
Study Location
Western Province, Rwanda — 96 sectors cluster-randomized, reaching 101,000 households with water filters and improved cookstoves.
Programme Implementation
LifeStraw Family 2.0 water filter in household
EcoZoom Dura improved cookstove in use
Electronic sensor monitoring deployment
Key Results — Tubeho Neza Trial
Health Outcomes (Children Under 5)
- 29% reduction in 7-day prevalence of diarrhea
- 25% reduction in acute respiratory infections
- 97.5% reduction in fecal contamination of drinking water
- 38% reduction in cryptosporidium seroconversion
Air Quality — A Cautionary Finding
- Personal PM2.5 exposure remained unchanged despite improved cookstoves
- Stove stacking: traditional fire use increased from 24% to 49% over study period
The Adherence Problem
- Self-reported filter use: 67%
- Sensor-detected filter use: 37%
- Self-reported stove use: 84%
- Sensor-detected stove use: 37%
- Reported use declined: 75% → 68% → 65% across survey rounds
Economics
- 5-year programme cost: ~$12 million
- Estimated 5-year benefit: >$66 million
- Fuelwood savings: 65,000 tons — enough to reverse regional deforestation
Sources: Kirby, Nagel et al. (2019) PLoS Medicine; Thomas et al. (2018) Lancet Planetary Health; Thomas (2019) The Conversation
Technology & Digital Monitoring
Water Filters
- LifeStraw Family 2.0 household water filters
- Significant microbiological effectiveness reducing E. coli contamination
- Free distribution with carbon waiver for credit generation
Remote Sensing Innovation
- Electronic sensors remotely transmitting usage data
- Sensor-reported use was substantially lower than self-reported use
- Demonstrated critical value of objective digital monitoring
- Published in ACS Environmental Science & Technology
Carbon Credit Model
- Pay-for-performance model funded by voluntary carbon credits
- Health, livelihood, and environmental benefits substantially outweighed costs
- Fuel savings and averted healthcare costs = largest economic gains


















Global Water Security Solutions
Lume Sensors
Three optical modes — TLF (E. coli), Chlorophyll-a (algae), FDOM (organics). 75%+ accuracy, >94% categorical. 1-year battery life.
Water for Carbon
Drinking water treatment, precision irrigation, and watershed restoration. Gold Standard, Verra & Regen certified. 29-49% diarrhea reduction.
Global Portfolio
10 active projects across 12 countries. IoT-verified impact — no self-reporting. 5.6x cost-benefit ratio across health, livelihood, and environment.
Meet the Lume
Continuous water quality monitoring — for the cost of a single grab sample.
Three interchangeable optical modes: TLF (280/350nm, E. coli), Cl-A (470/680nm, algae/HABs), FDOM (365/480nm, dissolved organics). Plus turbidity and temperature.
Sampling: 30s–24h intervals. Cellular + satellite connectivity. 1-year battery on hourly sampling. Solar or wall charging. No calibration or maintenance required.
Key Applications
- Drinking water source protection
- Recreational water & beach advisories
- Wastewater discharge & CSO monitoring
- Agricultural return flow monitoring
- Reservoir and intake monitoring
$200/month — includes device, connectivity, cloud dashboard, API, and firmware updates.
Field Testing the Lume
Researchers deploying the Lume sensor in natural stream environments for real-time E. coli monitoring and validation studies.
Seine River, Paris
Virridy’s Lume sensors monitoring water quality for recreational swimming safety along the Seine River.
Hardware & Analytics
Sensor Capabilities
- TLF: E. coli & microbial contamination (280/350 nm)
- Cl-A: algal biomass & bloom detection (470/680 nm)
- FDOM: dissolved organics & nutrient loading (365/480 nm)
- Integrated turbidity, temperature, GPS
- No regular calibration or cleaning required
Operations
- Sampling: 30 sec to 24 hours (remote config)
- Battery: up to 1 year; solar or wall charging
- Cellular & satellite connectivity
- Single integrated unit — no external power or telemetry
- ML quantification with protected dashboard & API
Economics
- $200/month vs. competitors at $5K–$30K
- 700+ data points/month/site
- Hand-removable cover for tool-free field maintenance
- Captures transient contamination events that weekly sampling misses
Analytical Features
Adaptive Contamination Detection
The Lume uses machine learning to learn normal conditions and trigger contamination alerts based on learned patterns rather than fixed thresholds.
US Patent 11,506,606 B2 — Bedell, Fankhauser, Sharpe, Wilson & Thomas
Automated System-State Classification
Time-series data from water infrastructure sensors are analyzed to classify system states and support operational decisions without manual inspection or rule-based logic.
US Patent 11,507,861 B2 — Wilson, Coyle, Thomas & Croshere
Natural Waters Application
Gradient-boosted decision tree models achieving 75%+ accuracy across 0–1,000 CFU/100mL, >94% categorical accuracy with site calibration, and 7% MAPE (log-transformed).
Drinking Water Classification
The Lume has been validated for drinking water monitoring across chlorinated and unchlorinated supplies. Binary classification at regulatory thresholds of 1 and 10 CFU/100 mL yields 91–92% overall accuracy with Cohen's kappa of 0.82–0.84.
Confusion matrices for binary classification of water quality using sensor predictions versus laboratory-observed E. coli concentrations at two regulatory thresholds.
Chlorinated Supply Monitoring
The Lume detects chlorine residual presence in treated water supplies with 85% accuracy, distinguishing pre- and post-chlorinated samples.
Left: Predicted vs observed E. coli on log axes. Right: Binary classification of chlorine residual presence (accuracy 0.85, kappa 0.70).
Natural Waters — Local Model
The Lume algorithm has been extensively validated against Colilert E. coli in freshwater systems. Over 75% of predictions fall within the analytical uncertainty bounds of the Colilert reference method, with 7% MAPE in log-transformed space.
Left: Boulder Creek test dataset. Right: Categorical classification into three management-relevant bins (<10, 10–100, >100 MPN/100 mL). Balanced accuracy 95%, Cohen's kappa 0.84.
Natural Waters — Global Model
Temporally structured cross-validation across the global dataset. RMSE ranged from 0.55 (training) to 0.63 log units (test), with MAPE below 22% across both splits.
Left: Global dataset cross-validation. Right: Seine River, Paris — binary classification achieving 96.8% accuracy and 94% balanced accuracy using three TLF sensors.
Lume Development
Hardware Engineering
Internal and contracted expertise in IoT, signals, embedded systems, hardware design.
Analytical Science
Internal and contracted expertise in watershed AI/ML and front-end product development.
Manufacturing
Contract manufacturer established in China. 200 units produced, 60 sold as of March 2026.
Distribution
Internal through 2026; contracted thereafter.
Sales & Applications
Extensive internal sales and research expertise.
Risk Management
Lume 1.1 traction will support positive margin on COGS in 2026 before further NRE investment.
Microbial Sensor Global Market
Global water quality sensor market in 2024, projected to reach $12.9B by 2033 (CAGR ~9%).
Cl-A sensors sold in US in past 10 years. Annual market ~$100M. Microbial is the next frontier.
| Sensor | Description | Setup | Est. Cost | Accuracy |
|---|---|---|---|---|
| Virridy Lume | Tryptophan sensor; ML model analysis | Single, fully integrated IoT sensor | $200/month/site | 75%+ accuracy, >94% categorical |
| Proteus Sonde | Multiparameter sonde | Requires data logger, site-specific calibration | $14K - $24K+ | +/- 10 CFU/100mL |
| Chelsea UViLux | Tryptophan, CDOM, BTEX, BOD | Not specified | ~$5,000 | 0.01 QSU sensitivity |
| YSI (Xylem) | Chlorophyll only, no tryptophan | Multiparameter sonde | $4,985+ | N/A for TLF |
| In Situ Inc. | FDOM, CDOM, Cl-A, no tryptophan | Multiparameter sonde + telemetry | ~$10,000 | N/A for TLF |
Pricing Strategy
Competition sells for $5K - $30K one-time hardware cost. Virridy focuses on recurring revenue.
- $557K Lume revenue YTD March 2026 (target exceeded); targeting $1M+ for full year
- Target 50%+ margin on COGS
- Convert from one-time sales to recurring subscriptions in 2026
- Minimum 10+ units, 12-month contract
- Includes: device lease, connectivity, cloud dashboard, API, fleet monitoring, firmware updates, onboarding support
Key Figures
12-month minimum contract = 2x COGS
What's working overseas,
ready to come home.
Visibility, government commitment, capacity — each pillar of Vessel's roadmap has international precedent. The next eighty minutes are about which lessons fit here.