Beyond Control: Enabling Smart Thermostats For Leakage Detection

01/22/2019
by   Milan Jain, et al.
0

Smart thermostats, with multiple sensory abilities, are becoming pervasive and ubiquitous, in both residential and commercial buildings. By analyzing occupants' behavior, adjusting set temperature automatically, and adapting to temporal and spatial changes in the atmosphere, smart thermostats can maximize both - energy savings and user comfort. In this paper, we study smart thermostats for refrigerant leakage detection. Retail outlets, such as milk-booths and quick service restaurants set up cold-rooms to store perishable items. In each room, a refrigeration unit (akin to air-conditioners) is used to maintain a suitable temperature for the stored products. Often, refrigerant leaks through the coils (or valves) of the refrigeration unit which slowly diminishes the cooling capacity of the refrigeration unit while allowing it to be functional. Such leaks waste significant energy, risk occupants' health, and impact the quality of stored perishable products. While store managers usually fail to sense the early symptoms of such leaks, current techniques to report refrigerant leakage are often not scalable. We propose Greina - to continuously monitor the readily available ambient information from the thermostat and timely report such leaks. We evaluate our approach on 74 outlets of a retail enterprise and results indicate that Greina can report the leakage a week in advance when compared to manual reporting.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/10/2018

Is Leakage Power a Linear Function of Temperature?

In this work, we present a study of the leakage power modeling technique...
research
10/26/2017

Analysis of the Leakage Queue: A Queueing Model for Energy Storage Systems with Self-discharge

Energy storage is a crucial component of the smart grid, since it provid...
research
04/29/2018

Energy-Efficient Thermostats for Room-Level Air Conditioning

Room-level air conditioners (also referred as ACs) consume a significant...
research
02/28/2023

Time Series Anomaly Detection in Smart Homes: A Deep Learning Approach

Fixing energy leakage caused by different anomalies can result in signif...
research
02/08/2019

Privacy Leakage in Smart Homes and Its Mitigation: IFTTT as a Case Study

The combination of smart home platforms and automation apps introduces m...
research
06/08/2020

Machine Learning Interpretability and Its Impact on Smart Campus Projects

Machine learning (ML) has shown increasing abilities for predictive anal...
research
12/02/2020

Detection of False-Reading Attacks in the AMI Net-Metering System

In smart grid, malicious customers may compromise their smart meters (SM...

Please sign up or login with your details

Forgot password? Click here to reset