Machine-Learning-Based Prediction of HVAC-Driven Load Flexibility in Warehouses

Author:

Dadras Javan Farzad1ORCID,Campodonico Avendano Italo Aldo2ORCID,Najafi Behzad1ORCID,Moazami Amin23ORCID,Rinaldi Fabio1ORCID

Affiliation:

1. Dipartimento di Energia, Politecnico di Milano, Via Lambruschini 4, 20156 Milano, Italy

2. Department of Ocean Operations and Civil Engineering, Faculty of Engineering, NTNU, 6009 Ålesund, Norway

3. Department of Architectural Engineering, SINTEF Community, SINTEF AS, Børrestuveien 3, 0373 Oslo, Norway

Abstract

This paper introduces a methodology for predicting a warehouse’s reduced load while offering flexibility. Physics-based energy simulations are first performed to model flexibility events, which involve adjusting cooling setpoints with controlled temperature increases to reduce the cooling load. The warehouse building encompasses office and storage spaces, and three cooling scenarios are implemented, i.e., exclusive storage area cooling, exclusive office area cooling, and cooling in both spaces, to expand the study’s potential applications. Next, the simulation data are utilized for training machine learning (ML)-based pipelines, predicting five subsequent hourly energy consumption values an hour before the setpoint adjustments, providing time to plan participation in demand response programs or prepare for charging electric vehicles. For each scenario, the performance of an Artificial Neural Network (ANN) and a tree-based ML algorithm are compared. Moreover, an expanding window scheme is utilized, gradually incorporating new data and emulating online learning. The results indicate the superior performance of the tree-based algorithm, with an average error of less than 3.5% across all cases and a maximum hourly error of 7%. The achieved accuracy confirms the method’s reliability even in dynamic scenarios where the integrated load of storage space and offices needs to be predicted.

Funder

National Centre for Sustainable Mobility

Italian National Recovery and Resilience Plan

Publisher

MDPI AG

Subject

Energy (miscellaneous),Energy Engineering and Power Technology,Renewable Energy, Sustainability and the Environment,Electrical and Electronic Engineering,Control and Optimization,Engineering (miscellaneous),Building and Construction

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