Indoor air quality and energy management through real-time sensing in commercial buildings

Rapid growth in the global population requires expansion of building stock, which in turn calls for increased energy demand. This demand varies in time and also between different buildings, yet, conventional methods are only able to provide mean energy levels per zone and are unable to capture this inhomogeneity, which is important to conserve energy. An additional challenge is that some of the attempts to conserve energy, through for example lowering of ventilation rates, have been shown to exacerbate another problem, which is unacceptable indoor air quality (IAQ). The rise of sensing technology over the past decade has shown potential to address both these issues simultaneously by providing high–resolution tempo–spatial data to systematically analyse the energy demand and its consumption as well as the impacts of measures taken to control energy consumption on IAQ. However, challenges remain in the development of affordable services for data analysis, deployment of large–scale real–time sensing network and responding through Building Energy Management Systems. This article presents the fundamental drivers behind the rise of sensing technology for the management of energy and IAQ in urban built environments, highlights major challenges for their large–scale deployment and identifies the research gaps that should be closed by future investigations.

[1]  Andreas Schütze Integrated Sensor Systems for Indoor Applications: Ubiquitous Monitoring for Improved Health, Comfort and Safety , 2015 .

[2]  L. Morawska,et al.  Ultrafine particles in cities. , 2014, Environment international.

[3]  V. Geros,et al.  Implementation of an integrated indoor environment and energy management system , 2005 .

[4]  Thananchai Leephakpreeda,et al.  Real-time determination of optimal indoor-air condition for thermal comfort, air quality and efficient energy usage , 2004 .

[5]  O Seppänen,et al.  Ventilation and performance in office work. , 2006, Indoor air.

[7]  Dae-Man Han,et al.  Smart home energy management system using IEEE 802.15.4 and zigbee , 2010, IEEE Transactions on Consumer Electronics.

[8]  L. T. Wong,et al.  An energy impact assessment of ventilation for indoor airborne bacteria exposure risk in air-conditioned offices , 2008 .

[9]  Thomas Weng,et al.  Occupancy-driven energy management for smart building automation , 2010, BuildSys '10.

[10]  Margaret Bell,et al.  Decision Support for Intelligent Traffic and Environment Management , 2009 .

[11]  Luis Pérez-Lombard,et al.  A review on buildings energy consumption information , 2008 .

[12]  R. Harrison,et al.  Particles, air quality, policy and health. , 2012, Chemical Society reviews.

[13]  Filip Kulic,et al.  HVAC system optimization with CO2 concentration control using genetic algorithms , 2009 .

[14]  H. N. Lam,et al.  Using genetic algorithms to optimize controller parameters for HVAC systems , 1997 .

[15]  E. Snyder,et al.  The changing paradigm of air pollution monitoring. , 2013, Environmental science & technology.

[16]  M. Viana,et al.  Indoor and outdoor sources and infiltration processes of PM1 and black carbon in an urban environment , 2011 .

[17]  Jeffrey A. Neasham,et al.  Application of low cost pervasive monitoring to validate models and assess performance of ITS technology implemented to improve the environment , 2011 .

[18]  Ramachandran Ramjee,et al.  PRISM: platform for remote sensing using smartphones , 2010, MobiSys '10.

[19]  Igor Paprotny,et al.  Sensors and 'apps' for community-based: Atmospheric monitoring , 2012 .

[20]  M. Zaheer-Uddin Intelligent control strategies for HVAC processes in buildings , 1994 .

[21]  Youn Kwae Jeong,et al.  Automatic sensor arrangement system for building energy and environmental management , 2012 .

[22]  Roy M. Harrison,et al.  Nanoparticle emissions from 11 non-vehicle exhaust sources – A review , 2013 .

[23]  António E. Ruano,et al.  Development of a temperature control model used in HVAC systems in school spaces in Mediterranean climate , 2009 .

[24]  Andrew Campbell,et al.  The Rise of People-Centric Sensing , 2008, IEEE Internet Computing.

[25]  J. S. Park,et al.  The effects of outdoor air supply rate on work performance during 8-h work period. , 2011, Indoor air.

[26]  P. Fanger,et al.  The effects of outdoor air supply rate in an office on perceived air quality, sick building syndrome (SBS) symptoms and productivity. , 2000, Indoor air.

[27]  Moncef Krarti,et al.  Energy Audit of Building Systems : An Engineering Approach , 2000 .

[28]  Gongsheng Huang,et al.  Wireless sensor network based monitoring system for a large-scale indoor space: data process and supply air allocation optimization , 2015 .

[29]  Lidia Morawska,et al.  Influence of ventilation and filtration on indoor particle concentrations in urban office buildings , 2013 .

[30]  Chee-Yee Chong,et al.  Sensor networks: evolution, opportunities, and challenges , 2003, Proc. IEEE.

[31]  Shengwei Wang,et al.  Intelligent Buildings and Building Automation , 2009 .

[32]  Peng Zhao,et al.  An Energy Management System for Building Structures Using a Multi-Agent Decision-Making Control Methodology , 2010, 2010 IEEE Industry Applications Society Annual Meeting.

[33]  Andreas Krause,et al.  Intelligent light control using sensor networks , 2005, SenSys '05.

[34]  Mohammad. Rasul,et al.  Thermal-comfort analysis and simulation for various low-energy cooling-technologies applied to an office building in a subtropical climate , 2008 .

[35]  Efpraxia-Aithra Maria,et al.  The legislative initiatives for smart metering as a precondition to zero energy: the case of Greece , 2015 .

[36]  Nathan Mendes,et al.  Predictive controllers for thermal comfort optimization and energy savings , 2008 .

[37]  Pramod K. Varshney,et al.  Data-aggregation techniques in sensor networks: a survey , 2006, IEEE Communications Surveys & Tutorials.

[38]  Jan-Olof Dalenbäck,et al.  CO2 sensors for occupancy estimations: Potential in building automation applications , 2014 .

[39]  Lidia Morawska,et al.  Variation in indoor particle number and PM2.5 concentrations in a radio station surrounded by busy roads before and after an upgrade of the HVAC system , 2009 .

[40]  Arnaud G. Malan,et al.  HVAC control strategies to enhance comfort and minimise energy usage , 2001 .

[41]  Arman Shehabi,et al.  Can combining economizers with improved filtration save energy and protect equipment in data centers? - eScholarship , 2009 .

[42]  J. Torriti,et al.  A review of the costs and benefits of demand response for electricity in the UK , 2013 .

[43]  Jeff A. Bilmes,et al.  The design and collection of COSINE, a multi-microphone in situ speech corpus recorded in noisy environments , 2012, Comput. Speech Lang..

[44]  Stéphane Ploix,et al.  Managing Energy Smart Homes according to Energy Prices: Analysis of a Building Energy Management System , 2014 .

[45]  J. C. R. Licklider,et al.  Man-Computer Symbiosis , 1960 .

[46]  Prashant Kumar,et al.  Indoor Air Quality: Current Status, Missing Links and Future Road Map for India , 2012 .

[47]  P ? ? ? ? ? ? ? % ? ? ? ? , 1991 .

[48]  Constantinos Cartalis,et al.  Toward resilient cities – a review of definitions, challenges and prospects , 2014 .

[49]  Jingwen Tian,et al.  Networked Remote Meter-Reading System Based on Wireless Communication Technology , 2006, 2006 IEEE International Conference on Information Acquisition.

[50]  S C Sekhar,et al.  Indoor air quality and energy performance of air-conditioned office buildings in Singapore. , 2003, Indoor air.

[51]  Jaume Salom,et al.  Analysis of grid interaction indicators in net zero-energy buildings with sub-hourly collected data , 2015 .

[52]  D. Kolokotsa,et al.  Predictive control techniques for energy and indoor environmental quality management in buildings , 2009 .

[53]  D. Kolokotsa,et al.  Virtual Building Dataset for energy and indoor thermal comfort benchmarking of office buildings in Greece , 2009 .

[54]  Robert Fuller,et al.  Energy use and thermal comfort in a rammed earth office building , 2008 .

[55]  Mark H. Hansen,et al.  Participatory sensing - eScholarship , 2006 .

[56]  Elio Rossi,et al.  Policy , 2007, Evidence-based Complementary and Alternative Medicine : eCAM.

[57]  Massimiliano Manfren,et al.  Calibration and uncertainty analysis for computer models – A meta-model based approach for integrated building energy simulation , 2013 .

[58]  Lidia Morawska,et al.  Energy-pollution nexus for urban buildings. , 2013, Environmental science & technology.

[59]  M. Zaheer-Uddin,et al.  Optimal, sub-optimal and adaptive control methods for the design of temperature controllers for intelligent buildings , 1993 .

[60]  K. Balakrishnan,et al.  Air pollution from household solid fuel combustion in India: an overview of exposure and health related information to inform health research priorities , 2011, Global health action.

[61]  Xinrong Li,et al.  A Cost-effective Wireless Sensor Network System for Indoor Air Quality Monitoring Applications , 2014, FNC/MobiSPC.

[62]  Oliver Amft,et al.  Recognizing Energy-related Activities Using Sensors Commonly Installed in Office Buildings , 2013, ANT/SEIT.

[63]  Charles J Weschler,et al.  Understanding and Reducing the Indoor Concentration of Submicron Particles at a Commercial Building in Southern California. , 2012, Journal of the Air & Waste Management Association.

[64]  W. Penrose,et al.  Independent testing and validation of prototype hydrogen sensors , 2014 .

[65]  Vijay Arya,et al.  Cyber Physical Systems for Smarter Energy Grids: Experiences at IBM Research—India , 2013 .

[66]  Olli Seppänen,et al.  Ventilation strategies for good indoor air quality and energy efficiency , 2007 .

[67]  David Lee,et al.  ENERNET: Studying the dynamic relationship between building occupancy and energy consumption , 2012 .

[68]  Yoshito Tobe,et al.  Energy-efficient human probes for high-resolution sensing in urban environments , 2011 .

[69]  David Infield,et al.  The evolution of electricity demand and the role for demand side participation, in buildings and transport , 2013 .

[70]  W. Reimringer,et al.  Selective detection of hazardous VOCs for indoor air quality applications using a virtual gas sensor array , 2014 .

[71]  Andrew K. Persily,et al.  Indoor air quality in sustainable, energy efficient buildings , 2011 .

[72]  L. Morawska,et al.  The rise of low-cost sensing for managing air pollution in cities. , 2015, Environment international.

[73]  L. T. Wong,et al.  A multivariate-logistic model for acceptance of indoor environmental quality (IEQ) in offices , 2008 .

[74]  Nabil Nassif,et al.  Self-Tuning Dynamic Models of HVAC System Components , 2008 .

[75]  Chong Luo,et al.  Multimedia Cloud Computing , 2011, IEEE Signal Processing Magazine.

[76]  Gb Stewart,et al.  The use of electrochemical sensors for monitoring urban air quality in low-cost, high-density networks , 2013 .

[77]  L. T. Wong,et al.  An evaluation model for indoor environmental quality (IEQ) acceptance in residential buildings , 2009 .

[78]  Dejan Mumovic,et al.  Analysis of thermal comfort and indoor air quality in a mechanically ventilated theatre , 2008 .

[79]  Masahiro Inoue,et al.  Network architecture for home energy management system , 2003, IEEE Trans. Consumer Electron..

[80]  Marcus M. Keane,et al.  Improving building operation by tracking performance metrics throughout the building lifecycle (BLC) , 2004 .

[81]  Siamak Arzanpour,et al.  Smart residential load reduction via fuzzy logic, wireless sensors, and smart grid incentives , 2015 .

[82]  Trine Dyrstad Pettersen,et al.  Variation of energy consumption in dwellings due to climate, building and inhabitants , 1994 .

[83]  M. Inoue,et al.  Network architecture for home energy management system , 2003, 2003 IEEE International Conference on Consumer Electronics, 2003. ICCE..

[84]  Ari Asmi,et al.  Indoor air measurement campaign in Helsinki, Finland 1999 – the effect of outdoor air pollution on indoor air , 2001 .

[85]  Masahiro Inoue,et al.  Integrated residential gateway controller for home energy management system , 2003, IEEE Trans. Consumer Electron..

[86]  Pawel Wargocki,et al.  The performance and subjective responses of call-center operators with new and used supply air filters at two outdoor air supply rates. , 2004, Indoor air.

[87]  Jessica Granderson Building Energy Information Systems: State of the Technology and User Case Studies , 2010 .

[88]  K. P. Wacks,et al.  Utility load management using home automation , 1991 .

[89]  S. A. Al-Sanea,et al.  Optimized monthly-fixed thermostat-setting scheme for maximum energy-savings and thermal comfort in air-conditioned spaces , 2008 .

[90]  R. Lindberg,et al.  Five-year data of measured weather, energy consumption, and time-dependent temperature variations within different exterior wall structures , 2004 .

[91]  A. Kanarachos,et al.  Multivariable control of single zone hydronic heating systems with neural networks , 1998 .

[92]  Ralf Kilian,et al.  Mounting of sensors on surfaces in historic buildings , 2015 .

[93]  Hermann Kopetz,et al.  Real-time systems , 2018, CSC '73.

[94]  Zion Hwang,et al.  An intelligent cloud-based energy management system using machine to machine communications in future energy environments , 2012, 2012 IEEE International Conference on Consumer Electronics (ICCE).

[95]  T. Agami Reddy Automated fault detection and diagnosis for hvac&r systems: Functional description and lessons learnt , 2008 .

[96]  Majid Jamil,et al.  Building Energy Management System: A Review , 2017, 2017 14th IEEE India Council International Conference (INDICON).

[97]  Anastasios I. Dounis,et al.  Design of a fuzzy set environment comfort system , 1995 .

[98]  Steven B. Leeb,et al.  FPGA-based spectral envelope preprocessor for power monitoring and control , 2010, 2010 Twenty-Fifth Annual IEEE Applied Power Electronics Conference and Exposition (APEC).

[99]  Matthew G. Falk,et al.  Vertical particle concentration profiles around urban office buildings , 2012 .

[100]  K W Tham,et al.  Effects of temperature and outdoor air supply rate on the performance of call center operators in the tropics. , 2004, Indoor air.

[101]  R. Norman,et al.  Health consequences of exposure to e-waste: a systematic review. , 2013, The Lancet. Global health.

[102]  Rex Britter,et al.  New Directions: Can a “blue sky” return to Indian megacities? , 2013 .

[103]  Milind Tambe,et al.  Coordinating occupant behavior for building energy and comfort management using multi-agent systems , 2012 .

[104]  Margaret Bell,et al.  Integration of Low-Cost Sensors with UTMC for Assessing Environmental Impacts of Traffic in Urban Area , 2011 .

[105]  Prashant Kumar,et al.  Indoor–outdoor concentrations of particulate matter in nine microenvironments of a mix-use commercial building in megacity Delhi , 2013, Air Quality, Atmosphere & Health.

[106]  Hiroshi Mineno,et al.  Adaptive Home/Building Energy Management System Using Heterogeneous Sensor/Actuator Networks , 2010, 2010 7th IEEE Consumer Communications and Networking Conference.

[107]  John Psarras,et al.  Intelligent building energy management system using rule sets , 2007 .

[108]  Junjie Yan,et al.  Water Filling: Unsupervised People Counting via Vertical Kinect Sensor , 2012, 2012 IEEE Ninth International Conference on Advanced Video and Signal-Based Surveillance.

[109]  David Galipeau,et al.  A study of low-cost sensors for measuring low relative humidity , 1995 .

[110]  Andrew P. Jones,et al.  Indoor air quality and health , 1999 .