Capacity building in Smart and Innovative eNERGY management

Module 06 - Uncertainty, Calibration and Sensitivity of Building Energy Models

Summary:

In this module we will review tools and methods to match building energy simulation results to measured real data. Firstly we will analyse the main causes for discrepancy between building energy models and measured results. Secondly we will differentiate between different terms such as: validation, calibration, verification, replicability, uncertainty and sensitivity, uncertainty propagations. Workflows for different calibration techniques and tools (brute force, Bayesian calibration, etc.) are reviewed.

References:

International Semantic Intelligence Conference (ISIC 2022)

The International Semantic Intelligence Conference (ISIC) is an international platform for the Artificial Intelligence, Machine Learning and the Semantic Web communities. It presents a forum to publish cutting edge research results in intelligent applications.

ISIC aims to bring together researchers, practitioners and industry specialists to discuss, advance, and shape the future of intelligent systems by virtue of machine learning and semantic technologies.

Module 09 - Machine Learning Techniques for Building Energy (Observe & Predict)

Summary:

In this first module we focus on the Artificial Intelligence (AI) methods used to analyse large quantities of data in order to perform two main tasks: (1) to observe anomalies, trends and errors in variables and, (2) use this AI methods to predict and forecast different variables such as building energy consumption thus preventing abnormal settings or faults in energy production. Machine Learning techniques are a relevant predictions tools for demand-response applications in the context of the smart grid e.g.: to avoid matching of peak loads over small periods.

Module 10 - Machine Learning Techniques for Building Energy (Adjust & Manage & Interact)

Summary:

In this second module the practical application of Machine Learning (ML) techniques to adjust system behaviour in the occurrence of anomalies and faults is reviewed. This means a ML system is able to detect and adjust HVAC settings or trigger alarm events when a condition is not met. Typical examples are: (1) the use of reinforcement learning applied to monitoring of occupancy patterns and the interaction with thermostats or lighting, (2) use of weather forecast or weather anomalies to predict energy demand and adjust operational settings accordingly.

Telfor 2021

Telecommunications Forum TELFOR is organized as an INTERNATIONAL annual meeting of those professionals working in the broad fields of Telecommunications and Information Technologies. Different levels and characters of presentations are accepted: presentation of research and scientific results, new ideas, valuable conclusions from experience, state of the art and instructive survey communications.

SINERGY consortium presented the following papers at the event:

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