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DTSTART;TZID=Europe/Stockholm:20241008T080000
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DTSTAMP:20260425T182658
CREATED:20231219T093801Z
LAST-MODIFIED:20240119T123731Z
UID:9685-1728374400-1728579600@home.climacheck.com
SUMMARY:Chillventa 2024
DESCRIPTION:Specialists from the refrigeration\, AC & ventilation\, architects and building services planners meet at Chillventa\, the international exhibition for the Refrigeration – AC & Ventilation – Heat Pumps sector. \n  \nClimaCheck will be in Hall 9 / Booth Number 9-336
URL:https://home.climacheck.com/event/chillventa-2024/
LOCATION:NürnbergMesse GmbH\, Germany
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DTSTART;TZID=Europe/Stockholm:20241010T112000
DTEND;TZID=Europe/Stockholm:20241010T112000
DTSTAMP:20260425T182658
CREATED:20240912T074940Z
LAST-MODIFIED:20240926T073731Z
UID:10033-1728559200-1728559200@home.climacheck.com
SUMMARY:Machine Learning drives Automated Fault Detection and Diagnostics and predictive maintenance
DESCRIPTION:An opportunity to listen to Klas\, one of ClimaChecks founders and hear the absolute latest in performance analysis and predictive maintenance. During the presentation\, klas will share experiences of using Machine Learning (ML) for Automated Fault Detection and Diagnosis (AFDD) that reduce total cost of ownership and down-time. \nHe will also present how digital twins based on Machine Learning (ML) will make the Air Conditioning\, Refrigeration and Heat Pump systems more reliable and efficient. \nMore information\nDigital twins based on Machine Learning (ML) will change maintenance practices in the air conditioning\, refrigeration and Heat Pump industry. Our industry uses 20 % of the global electricity and pressure to reduce the carbon footprint and total cost of ownership is increasing. Experience shows that an average saving potential of 25 % is realistic without replacing equipment. \nDigital Twins are powerful tools for AFDD \nThe presentation highlights the potential and experience of using ML to increase accuracy and reduce engineering time for Automated Fault Detection and Diagnosis (AFDD). ML will also be used in BMS systems to reduce loads and optimise controls\, but focus is on AFDD. \nML will drive the paradigm shift to Predictive Maintenance (PdM) as it reduces time required and reduce false warnings. Competent staff to optimise hundreds of millions of systems\, without advanced automation\, will not be available. To collect and analyse performance data over varying operation conditions is cost-effective but rarely a part of contracts as savings cannot be guaranteed before baseline is established. The solution will not be to train hundreds of thousands of technicians to become analysts. Analyst competence will be focused to centers that generate workorders for large numbers of sites when AFDD raise “Early Warnings” for performance drift. \nPerformance monitoring with AFDD using ML models increase accuracy and decrease cost. Most sensors are standard in installations since many years. It is a question of specifying what data should be collected\, at what interval\, and ensure that data is made into actionable information. International Energy Agency (IEA)\, Annex 52\, compiled a comprehensive guideline for data collection for Ground Source systems that with slight adaptations is applicable for all systems. Emerging standards such as e.g. “Real Estate Core” establish good practice which streamline and decrease cost for secure data management. \nDigital twins presented are developed on component level – compressor\, condenser and evaporator as well as for all KPIs important for maintenance and in-direct leak detection. A database containing detailed field performance data from thousands of systems in all sectors has been used to train and verify ML models. Experience show that ML is extremely powerful to detect any “performance-drift” with higher accuracy and less engineering time than with traditional rule-based limits. \nMeet us at chillventa\nYou can visit us at Chillventa in Hall 9 / Booth Number 9-336. If you plan to visit\, contact us so we can book a slot to sit down!
URL:https://home.climacheck.com/event/machine-learning-drives-automated-fault-detection-and-diagnostics-and-predictive-maintenance/
LOCATION:NürnbergMesse GmbH\, Germany
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