Abstract

To improve the energy prediction performance of a building energy model, the occupancy status information is very important. This is more important in real buildings, rather than under construction buildings, because actual building occupancy can significantly influence its energy consumption. In this study, a machine learning based framework for a consecutive occupancy estimation is proposed by utilizing internet of things data, such as indoor temperature and luminance, CO2 density, electricity consumption of lighting, HVAC (heating, ventilation, and air conditioning), electric appliances, etc. Three machine learning based occupancy estimation algorithms (decision tree, support vector machine, artificial neural networks) are selected and evaluated in terms of the performance of estimating the occupancy status for each season. The selection process of the input variables that have crucial impact on the algorithms’ performance are described in detail. Finally, an occupancy estimation framework that can repeat model training and estimation consecutively in a situation when time-series data are continuously provided over the entire measurement period is suggested. In addition, the performance of the framework is evaluated to identify how it improves the energy prediction performance of the building energy model compared to conventional energy modeling practices. The suggested framework is distinguished from similar previous studies in two ways: 1) The proposed framework reveals that input variables for the occupancy estimation model can be occasionally changed by an occupant response to certain times and seasons, and 2) the framework incorporates time-series indirect occupancy sensing data and classification algorithms to consecutively provide occupancy information for the energy modeling effort.

Highlights

  • Detailed building energy modeling tools that can predict heating and cooling energy consumption based on dynamic analysis are being widely used in academia and the industry

  • Aora et al [25] estimated the number of occupants using the decision tree algorithm with indoor environmental data, energy consumption data, door opening and closing data, direct occupancy sensor data, and time-related data collected from office spaces for 16 days; they reported a much lower accuracy of 65%

  • The suggested framework is distinguished from previous similar studies by revealing that input variables for occupancy estimation model could be occasionally changed by an occupant in reaction to certain times and seasons

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Summary

Background of Study

Detailed building energy modeling tools that can predict heating and cooling energy consumption based on dynamic analysis are being widely used in academia and the industry. If one wants to estimate the actual energy consumption of a real building for the detailed operation of building systems or utilization in the model predictive control (MPC), it is necessary to use dynamic schedules for the input variables. In this case, the accuracy of the input occupancy information can have a profound influence on the accuracy of the building energy estimation

Necessity and Purpose of Study
Description on Target Space and Collected Data
General
Quality Control and Pre-Processing of Measurement Data
Selection of Occupancy Estimation Algorithms and Parameter Tuning
Performance Evaluation of Seasonal Short-Term Occupancy Estimation
Selection
Training and Verification of Classification Models
Establishment of Simulation Environment
EnergyPlus Energy Model for the Target Space
Comparison of Energy Consumption Estimation Results
12. Scatter
Schedule the Winter
Schedule
Findings
Conclusions and Future Work
Full Text
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