Abstract

The climate of Houston, classified as a humid subtropical climate with tropical influences, makes the heating, ventilation, and air conditioning (HVAC) systems the largest electricity consumers in buildings. HVAC systems in commercial buildings are usually operated by a centralized control system and/or an energy management system based on a fixed schedule and scheduled control of a zone setpoint, which is not appropriate for many buildings with changing occupancy rates. Lately, as part of energy efficiency analysis, attention has focused on collecting and analyzing smart meters and building-related data, as well as applying supervised learning techniques, to propose new strategies to operate HVAC systems and reduce energy consumption. On the other hand, unsupervised learning techniques have been used to study the consumption information and profile characterization of different buildings after cluster analysis is performed. This paper adopts a different approach by revealing the power of unsupervised learning to cluster data and unveiling hidden patterns. In this study, we also identify energy inefficiencies after exploring the cluster results of a single building’s HVAC consumption data and building usage data as part of the energy efficiency analysis. Time series analysis and the K-means clustering algorithm are successfully applied to identify new energy-saving opportunities in a highly efficient office building located in the Houston area (TX, USA). The paper uses 1-year data from a highly efficient Leadership in Energy and Environment Design (LEED)-, Energy Star-, and Net Zero-certified building, showing a potential energy savings of 6% using the K-means algorithm. The results show that clustering is instrumental in helping building managers identify potential additional energy savings.

Highlights

  • According to the US Department of Energy, commercial buildings consume approximately 20% of the United States’ energy [1]

  • The main contributions of the paper are: 1. This paper presents, in detail, a data analysis process applied to data collected from Houston Advanced Research Center (HARC)

  • This analysis aims to stud7yof 21 the building energy consumption and determine whether it is possible to identify any inefficiencies in the HVAC system

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Summary

Introduction

Ongoing ML-based research is oriented toward identifying HVAC inefficiencies, using supervised learning techniques to propose strategies to operate HVAC systems to decrease energy consumption while maintaining adequate indoor comfort and measuring the performance of the proposed strategy. Most existing of the work on energy efficiency has focused on using supervised machine learning techniques to implement HVAC operating strategies These studies have not considered how to systematically determine the inefficiencies. We followed the standard data analytics process, presented, which consists of defining the problem to solve, collecting the data, exploring the data, proposing a solution to the target problem, and evaluating the proposed solution This analysis aims to stud7yof 21 the building energy consumption and determine whether it is possible to identify any inefficiencies in the HVAC system. 12 by 525477 1 min interval data that represent the following features: date, timeslot, others in kilowatt (kW), plug loads in kilowatt (kW), lighting in kilowatt (kW), HVAC consumption in kilowatt (kW), total in kilowatt (kW), others in kilowatt hour (KWh), plug kilowatt hour (KWh), lighting in kilowatt hour (KWh), HVAC consumption in in kilowatt hour (KWh), total in kilowatt Hour (KWh) 1 min 123

Data Preparation and Exploration
17 From 81:900 to 12:5291
K-Means Clustering Algorithm: A Step-by-Step Process
Clustering HVAC Consumption and Number of Users
Conclusions and Future Work
Findings
ENERGY STAR
Full Text
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