Current research projects

Image Corrosion inhibitor for ammonia absorption systems
Image Calibration leak for the water bath leak test
Image Performance tests of condensing units
Image Development of test methods and test rigs for stationary integrated refrigeration units
Image Certifiable connection types in cryogenics
Image Service offer for Leak Detection and Tightness Test
Image Cool Up
Image Investigation according to DIN EN ISO 14903
Image Refrigerants, lubricants and mixtures
Image Hybrid- Fluid for CO2-Sublimation Cycle
Image Production of novel barrier layers on polymer materials to reduce hydrogen permeation
Image Preformance measurements of heat exchangers
Image Low Temperature Tribology
Image Range of services laboratory analyses
Image CO₂ GAS HYDRATES FOR SUSTAINABLE ENERGY AND COOLING SOLUTIONS
Image Development of a Cryogenic Magnetic Air Separation Unit

You are here:  Home /  Research and Development


Optimizing HVAC operation with machine learning

BMWi Euronorm Innokom

01/2019–05/2021

Dr.-Ing. Thomas Oppelt

+49-351-4081-5321

in progress

Intelligent control of HVAC systems – high comfort with low energy demand

Motivation

During operation, the energy efficiency of many HVAC systems remains considerably below the value predicted when planning. One reason is that especially complex systems with multiple generators, storages and consumer locations frequently are not operated optimally.

Aim of the project

Development of a tool for optimizing the operation of HVAC systems which uses machine learning (ML) methods and data from the digital building model (Building Information Model, BIM):

  • Optimization goal: high energy efficiency with at the same time high comfort for users

  • Saving operating costs, energy and carbon dioxide emissions due to increased efficiency

  • Continuous autonomous improvement of the ML algorithm by learning from new measured data with auto-adaptive reaction to changing conditions (building, system, use, smart meter for real time billing of energy and media, etc.)

Approach

  • Reproduction of the real system’s thermal-energetic behaviour in the machine learning system, training with BIM data, measured data and a digital twin of the real system
  • Application of ML methods for load forecasting (weather, usage patterns)

  • Automatic classification of utilisation scenarios, fault detection

  • Integration of available tools for efficient simulation of indoor air flows and for calculating energy demands

  • Co-Validation of optimization tool, experimental studies and digital twin

Interested?

Please get in touch with us if you are interested in a cooperation: klima@ilkdresden.de

 


Your Request