Data-driven optimization of building layouts for energy efficiency

07/24/2020
by   Andrew Sonta, et al.
0

One of the primary driving factors in building energy performance is occupant behavioral dynamics. As a result, the layout of building occupant workstations is likely to influence energy consumption. In this paper, we introduce methods for relating lighting zone energy to zone-level occupant dynamics, simulating energy consumption of a lighting system based on this relationship, and optimizing the layout of buildings through the use of both a clustering-based approach and a genetic algorithm in order to reduce energy consumption. We find in a case study that nonhomogeneous behavior (i.e., high diversity) among occupant schedules positively correlates with the energy consumption of a highly controllable lighting system. We additionally find through data-driven simulation that the naïve clustering-based optimization and the genetic algorithm (which makes use of the energy simulation engine) produce layouts that reduce energy consumption by roughly 5 a real office space comprised of 165 occupants. Overall, this study demonstrates the merits of utilizing low-cost dynamic design of existing building layouts as a means to reduce energy usage. Our work provides an additional path to reach our sustainable energy goals in the built environment through new non-capital-intensive interventions.

READ FULL TEXT
research
05/15/2023

Identification of the Factors Affecting the Reduction of Energy Consumption and Cost in Buildings Using Data Mining Techniques

Optimizing energy consumption and coordination of utility systems have l...
research
07/20/2016

Modelling Office Energy Consumption: An Agent Based Approach

In this paper, we develop an agent-based model which integrates four imp...
research
07/04/2023

Automated design of relocation rules for minimising energy consumption in the container relocation problem

The container relocation problem is a combinatorial optimisation problem...
research
04/14/2020

Occupant Plugload Management for Demand Response in Commercial Buildings: Field Experimentation and Statistical Characterization

Commercial buildings account for  36 nearly two-thirds is met by fossil ...
research
03/13/2023

The Evaluation of a New Daylighting System's Energy Performance: Reversible Daylighting System (RDS)

This paper evaluates the energy performance of a new daylighting system,...
research
05/27/2021

Times Series Forecasting for Urban Building Energy Consumption Based on Graph Convolutional Network

The world is increasingly urbanizing and the building industry accounts ...
research
01/04/2018

Deep Reinforcement Learning based Optimal Control of Hot Water Systems

Energy consumption for hot water production is a major draw in high effi...

Please sign up or login with your details

Forgot password? Click here to reset