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HeatOps

지역난방을 위한 AI 운영

지역난방 네트워크를 위한 AI 운영 레이어로, 부하 예측, 온도 운영, 수력 균형 분석, 이상 탐지를 지원합니다.

Heating networks are complex thermodynamic systems

District heating networks span kilometers of pipe, thousands of delivery points, and dozens of heat sources. Traditional control uses fixed supply temperature curves based on outdoor temperature. FactVerse AI Agent replaces static curves with dynamic optimization that accounts for thermal inertia, weather forecasts, and real-time network conditions.

Predict the cold before it arrives

Weather-integrated load forecasting with Holt-Winters gives operators 24 hours of visibility into heating demand. Pre-heating strategies activate automatically before cold snaps, ensuring comfort is maintained proactively rather than reactively.

Every building deserves the right temperature

Hydraulic imbalances mean some buildings overheat while others freeze. AI Agent identifies these imbalances from network telemetry and recommends valve adjustments that improve distribution uniformity — improving end-user comfort compliance from 85% to 98%.

Why AI Agent for District Heating?

Traditional Heating ControlFactVerse AI Agent
Fixed supply temperature curvesMPC dynamic optimization
Reactive cold snap responseWeather-predicted pre-heating
Manual hydraulic balancingAI-detected imbalances with recommendations
Periodic insulation inspectionsContinuous heat loss anomaly detection
Aggregate energy reportingPer-circuit comfort compliance tracking

Related

자주 묻는 질문

DFS는 OPC UA, BACnet, REST API 등 표준 프로토콜로 기존 시스템에 연결됩니다.

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