WHISPER: Wireless Home Identification and Sensing Platform for Energy Reduction

Many regions of the world benefit from heating, ventilating, and air-conditioning (HVAC) systems to provide productive, comfortable, and healthy indoor environments, which are enabled by automatic building controls. Due to climate change, population growth, and industrialization, HVAC use is globally on the rise. Unfortunately, these systems often operate in a continuous fashion without regard to actual human presence, leading to unnecessary energy consumption. As a result, the heating, ventilation, and cooling of unoccupied building spaces makes a substantial contribution to the harmful environmental impacts associated with carbon-based electric power generation, which is important to remedy. For our modern electric power system, transitioning to low-carbon renewable energy is facilitated by integration with distributed energy resources. Automatic engagement between the grid and consumers will be necessary to enable a clean yet stable electric grid, when integrating these variable and uncertain renewable energy sources. We present the WHISPER (Wireless Home Identification and Sensing Platform for Energy Reduction) system to address the energy and power demand triggered by human presence in homes. The presented system includes a maintenance-free and privacy-preserving human occupancy detection system wherein a local wireless network of battery-free environmental, acoustic energy, and image sensors are deployed to monitor homes, record empirical data for a range of monitored modalities, and transmit it to a base station. Several machine learning algorithms are implemented at the base station to infer human presence based on the received data, harnessing a hierarchical sensor fusion algorithm. Results from the prototype system demonstrate an accuracy in human presence detection in excess of 95%; ongoing commercialization efforts suggest approximately 99% accuracy. Using machine learning, WHISPER enables various applications based on its binary occupancy prediction, allowing situation-specific controls targeted at both personalized smart home and electric grid modernization opportunities.

[1]  Mark Modera,et al.  Do occupancy-responsive learning thermostats save energy? A field study in university residence halls , 2016 .

[2]  Siew Eang Lee,et al.  Review of occupancy sensing systems and occupancy modeling methodologies for the application in institutional buildings , 2016 .

[3]  H. Burak Gunay,et al.  Opportunistic occupancy-count estimation using sensor fusion: A case study , 2019, Building and Environment.

[4]  Gregor P. Henze,et al.  Development and Application of Schema Based Occupant-Centric Building Performance Metrics , 2021 .

[5]  Jianhong Zou,et al.  A review of building occupancy measurement systems , 2020 .

[6]  Joshua R. Smith,et al.  Battery-Free Wireless Video Streaming Camera System , 2019, 2019 IEEE International Conference on RFID (RFID).

[7]  Yee Sien Ng,et al.  A Validated Smartphone-Based Assessment of Gait and Gait Variability in Parkinson’s Disease , 2015, PloS one.

[8]  Joshua R. Smith,et al.  Relacks , 2020, Proc. ACM Interact. Mob. Wearable Ubiquitous Technol..

[9]  Joshua R. Smith,et al.  Wireless Video Streaming for Ultra-low-power Cameras , 2018, MobiSys.

[10]  Joshua R. Smith,et al.  Receiver Selectivity Limits on Bistatic Backscatter Range , 2020, 2020 IEEE International Conference on RFID (RFID).

[11]  Styliani I. Kampezidou,et al.  Real-time occupancy detection with physics-informed pattern-recognition machines based on limited CO2 and temperature sensors , 2021, Energy and Buildings.

[12]  A. Florita,et al.  Occupancy sensing in buildings: A review of data analytics approaches , 2019, Energy and Buildings.

[13]  O. Hoegh-Guldberg,et al.  The human imperative of stabilizing global climate change at 1.5°C , 2019, Science.

[14]  Maria Riveiro,et al.  Sensor Fusion and Convolutional Neural Networks for Indoor Occupancy Prediction Using Multiple Low-Cost Low-Resolution Heat Sensor Data , 2021, Sensors.

[15]  Kamin Whitehouse,et al.  The self-programming thermostat: optimizing setback schedules based on home occupancy patterns , 2009, BuildSys '09.

[16]  Gregor P. Henze,et al.  Building occupancy detection through sensor belief networks , 2006 .

[17]  Kamin Whitehouse,et al.  The smart thermostat: using occupancy sensors to save energy in homes , 2010, SenSys '10.

[18]  Zoltán Nagy,et al.  Good to see you again: Capture and recapture method on mobile devices to estimate occupancy profiles , 2019, BuildSys@SenSys.

[19]  Mohamed El Mankibi,et al.  Data driven occupancy information for energy simulation and energy use assessment in residential buildings , 2021 .

[20]  Mark W. Newman,et al.  Learning from a learning thermostat: lessons for intelligent systems for the home , 2013, UbiComp.

[21]  P. Castro,et al.  Smart thermostats: an experimental facility to test their capabilities and savings potential , 2017 .

[22]  Xiao Wang,et al.  Non-Invasive User Tracking via Passive Sensing: Privacy Risks of Time-Series Occupancy Measurement , 2014, AISec '14.

[23]  Homagni Saha,et al.  Battery-Free Camera Occupancy Detection System , 2021, EMDL@MobiSys.

[24]  Therese Peffer,et al.  How people use thermostats in homes: A review , 2011, Building and Environment.

[25]  P Pieter-Jan Hoes,et al.  Occupant behavior in building energy simulation: towards a fit-for-purpose modeling strategy , 2016 .

[26]  Gregor P. Henze,et al.  The performance of occupancy-based lighting control systems: A review , 2010 .

[27]  N. Meinshausen,et al.  Climate change now detectable from any single day of weather at global scale , 2020, Nature Climate Change.

[28]  John W. Polak,et al.  Implicit sensing of building occupancy count with information and communication technology data sets , 2019 .

[29]  Grant Hernandez,et al.  Smart Nest Thermostat A Smart Spy in Your Home , 2014 .

[30]  Costas J. Spanos,et al.  Privacy-Enhanced Architecture for Occupancy-Based HVAC Control , 2016, 2017 ACM/IEEE 8th International Conference on Cyber-Physical Systems (ICCPS).

[31]  Mohammad Yusri Hassan,et al.  A review on lighting control technologies in commercial buildings, their performance and affecting factors , 2014 .

[32]  Weiming Shen,et al.  Leveraging existing occupancy-related data for optimal control of commercial office buildings: A review , 2017, Adv. Eng. Informatics.

[33]  Nilesh Modi,et al.  Problems with PIR Sensors in Smart Lighting+Security Solution and Solutions of Problems , 2020 .

[34]  Richard A. Davis,et al.  Introduction to time series and forecasting , 1998 .

[35]  Gregor P. Henze,et al.  Development and Evaluation of Occupancy-Aware HVAC Control for Residential Building Energy Efficiency and Occupant Comfort , 2020, Energies.

[36]  Adam Hawkes,et al.  Going smart, staying confused: Perceptions and use of smart thermostats in British homes , 2019, Energy Research & Social Science.

[37]  Kamin Whitehouse,et al.  WalkSense: Classifying Home Occupancy States Using Walkway Sensing , 2016, BuildSys@SenSys.

[38]  Lihua Xie,et al.  Building occupancy estimation and detection: A review , 2018, Energy and Buildings.

[39]  Dan Yang,et al.  Passive Infrared (PIR)-Based Indoor Position Tracking for Smart Homes Using Accessibility Maps and A-Star Algorithm , 2018, Sensors.

[40]  Amir Roth,et al.  Grid-Interactive Efficient Buildings Technical Report Series: Whole-Building Controls, Sensors, Modeling, and Analytics , 2019 .

[41]  Abbas Javed,et al.  Occupancy detection in non-residential buildings – A survey and novel privacy preserved occupancy monitoring solution , 2020, Applied Computing and Informatics.

[42]  Joshua R. Smith,et al.  LoRa Backscatter , 2017, Proc. ACM Interact. Mob. Wearable Ubiquitous Technol..

[43]  Holger Kenn,et al.  About the relationship between people and discoverable Bluetooth devices in urban environments , 2007, Mobility '07.

[44]  Gaël Varoquaux,et al.  Scikit-learn: Machine Learning in Python , 2011, J. Mach. Learn. Res..

[45]  Xin Jin,et al.  Optimization of symbolic feature extraction for pattern classification , 2012, Signal Process..

[46]  Tasos Dagiuklas,et al.  Video surveillance systems-current status and future trends , 2017, Comput. Electr. Eng..

[47]  Amarjeet Singh,et al.  An in depth study into using EMI signatures for appliance identification , 2014, BuildSys@SenSys.

[48]  Sousso Kelouwani,et al.  A comprehensive review of approaches to building occupancy detection , 2020 .

[49]  Therese Peffer,et al.  Original research articleEnergy efficiency and the misuse of programmable thermostats: The effectiveness of crowdsourcing for understanding household behavior , 2015 .

[50]  Costas J. Spanos,et al.  A Framework for Privacy-Preserving Data Publishing with Enhanced Utility for Cyber-Physical Systems , 2018, ACM Trans. Sens. Networks.

[51]  Shwetak N. Patel,et al.  ElectriSense: single-point sensing using EMI for electrical event detection and classification in the home , 2010, UbiComp.

[52]  David Wetherall,et al.  Ambient backscatter: wireless communication out of thin air , 2013, SIGCOMM.

[53]  Darren Robinson,et al.  A generalised stochastic model for the simulation of occupant presence , 2008 .

[54]  Bing Dong,et al.  Building energy and comfort management through occupant behaviour pattern detection based on a large-scale environmental sensor network , 2011 .

[55]  Catalina Spataru,et al.  A Review of the Regulatory Energy Performance Gap and Its Underlying Causes in Non-domestic Buildings , 2016, Front. Mech. Eng..

[56]  Soumik Sarkar,et al.  Granger Causality Based Hierarchical Time Series Clustering for State Estimation , 2021, ArXiv.

[57]  Mani B. Srivastava,et al.  Privacy risks emerging from the adoption of innocuous wearable sensors in the mobile environment , 2011, CHI.

[58]  Draguna Vrabie,et al.  Optimal Renewable Resource Allocation and Load Scheduling of Resilient Communities , 2020 .

[59]  Santosh Veda,et al.  Potential Impacts of Transportation and Building Electrification on the Grid: A Review of Electrification Projections and Their Effects on Grid Infrastructure, Operation, and Planning , 2019, Current Sustainable/Renewable Energy Reports.

[60]  W Wim Zeiler,et al.  Occupancy measurement in commercial office buildings for demand-driven control applications : a survey and detection system evaluation , 2015 .

[61]  Caesar , 2019, Proceedings of the 17th Conference on Embedded Networked Sensor Systems.

[62]  Daniel Jackson,et al.  Occupancy monitoring using environmental & context sensors and a hierarchical analysis framework , 2014, BuildSys@SenSys.

[63]  Scott Sanner,et al.  Comparison of machine learning models for occupancy prediction in residential buildings using connected thermostat data , 2019, Building and Environment.