AI Visualization

AI Control Algorithms

Five advanced AI algorithms for autonomous control of 500 MW electrolyzer plants. Each algorithm addresses a specific control challenge with state-of-the-art machine learning techniques.

ASLB
Adaptive Stack Load Balancer using Deep Reinforcement Learning for dynamic load distribution

Benefit: +15-20% stack lifespan

Response: 1-10 seconds

PDC
Predictive Degradation Controller using LSTM with Attention for RUL prediction

Benefit: -30% unplanned downtime

Accuracy: >90% at 6-month horizon

DEO
Dynamic Efficiency Optimizer using Model Predictive Control + Neural Networks

Benefit: +3-5% efficiency gain

Savings: $2-3M annually

ADFI
Anomaly Detection and Fault Isolation using Variational Autoencoder

Benefit: 95% detection rate

Response: <30 seconds

RIC
Renewable Integration Coordinator using RNN + Mixed-Integer Linear Programming

Benefit: 90%+ renewable use

Savings: -40-50% curtailment

Hybrid Architecture
All five algorithms work together in a coordinated control system

Total Benefit: $7.6M/year OPEX reduction

ROI: 4-month break-even

Interactive Algorithm Demonstrations

Explore each algorithm with live simulations and real-time visualizations

Algorithm 1: Adaptive Stack Load Balancer (ASLB)
Deep Reinforcement Learning (Proximal Policy Optimization) for dynamic load distribution
Stopped
400 MW
74.2%
Fleet Efficiency
+0.0%
Lifespan Extension
0.0k
MWh/year Saved

Stack Load Distribution

Stack 180 MW → 80 MW
95%
Efficiency: 76.0%Temp: 75°C
Stack 280 MW → 75 MW
88%
Efficiency: 74.0%Temp: 78°C
Stack 380 MW → 82 MW
92%
Efficiency: 75.0%Temp: 76°C
Stack 480 MW → 70 MW
85%
Efficiency: 72.0%Temp: 80°C
Stack 580 MW → 78 MW
90%
Efficiency: 74.0%Temp: 77°C

Training Approach: Simulation-based training using Digital Twin, with transfer learning fine-tuning on real operational data

Expected Benefit: 15-20% extension of fleet-average stack lifespan through intelligent load distribution

Response Time: 1-10 seconds for load rebalancing decisions

Algorithm 2: Predictive Degradation Controller (PDC)
LSTM with Attention Mechanism + Physics-Informed Constraints for RUL prediction
38
Months RUL
0.42%
Decay/Month
LOW
Risk Level
94%
Confidence

Predicted Degradation Trajectory

Jan 2026
94.6%
Jan 2026
94.2%
Mar 2026
93.8%
Apr 2026
93.4%
May 2026
93.0%
May 2026
92.5%
Jun 2026
92.0%

Continue Monitoring

Low Priority

Stack health is good. Continue normal operations with regular monitoring.

Next Scheduled Maintenance
Optimal maintenance window
July 15, 2026

Accuracy Target: >90% RUL prediction accuracy within ±10% error margin at 6-month horizon

Expected Benefit: 30% reduction in unplanned maintenance events, 25% reduction in maintenance costs

Input Data: Historical performance, operating conditions, maintenance history, EIS data

Algorithm 3: Dynamic Efficiency Optimizer (DEO)
Model Predictive Control + Neural Network Surrogate Model for efficiency maximization
Stopped
400 MW
$50/MWh
8000 kg/h
+0.0%
Efficiency Gain
-0.0%
Cost Reduction
+0.0%
Output Increase

Operating Setpoints

Temperature (°C)
Current:75.0
Optimal:75.0
Pressure (bar)
Current:30.0
Optimal:30.0
Current Density (A/cm²)
Current:1.80
Optimal:1.80
System Efficiency
74.0%
Target: 74.0%
H₂ Output
8000
kg/h
Energy Cost
$20.0k
per hour

Optimization Horizon: 15-minute rolling window with 1-minute resolution

Expected Benefit: 3-5% improvement in overall system efficiency, $2-3M annual energy cost savings

Constraints: Power availability, safe operating limits, hydrogen demand fulfillment

Algorithm 4: Anomaly Detection and Fault Isolation (ADFI)
Variational Autoencoder + Isolation Forest Ensemble for real-time anomaly detection
Stopped
175
Total Sensors
0
Active Anomalies
95.3%
Detection Rate
5.2%
False Alarm Rate

Real-time Sensor Monitoring

Stack 1 Temperature
Value: 75.20 | Anomaly Score: 12%
Stack 2 Pressure
Value: 30.50 | Anomaly Score: 8%
Stack 3 Voltage
Value: 1.85 | Anomaly Score: 15%
Stack 4 Flow Rate
Value: 850.00 | Anomaly Score: 10%
Stack 5 Vibration
Value: 2.30 | Anomaly Score: 7%

Anomaly Alerts

Response Time: <30 seconds from anomaly onset to operator notification

Expected Benefit: 85% reduction in false alarm rate, 95% detection rate for incipient faults

Data Input: 10,000+ data points per second from 175+ sensors

Algorithm 5: Renewable Integration Coordinator (RIC)
RNN + Mixed-Integer Linear Programming for variable renewable energy coordination
Stopped
Time: 12:00
12:00
8.0 m/s
800 W/m²
87.5%
Renewable Use
12.5%
Grid Dependency
45%
Curtailment Reduction
$3.2M
Annual Savings

Power Flow Distribution

Solar Power
150 MW
Wind Power
200 MW
Grid Power
50 MW
Battery Storage
50% charged
Hydrogen Production
8000
kg/h
Energy Curtailment
0
MW wasted

Prediction Horizon: 4-hour rolling forecast with 15-minute resolution

Expected Benefit: 40-50% reduction in renewable curtailment, 90%+ renewable energy utilization

Optimization Objective: Maximize renewable use, minimize grid dependency and curtailment

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© 2026 Electrolyzer Digital Twin. Advanced AI Control for Green Hydrogen Production.