Literature DB >> 31772311

Monitored data on occupants' presence and actions in an office building.

Ardeshir Mahdavi1, Christiane Berger2, Farhang Tahmasebi3, Matthias Schuss2.   

Abstract

Within a study, an open plan area and one closed office in a university building with a floor area of around 200 m2 were monitored. The present data set covers a period of one year (from 2013-01-01 to 2013-12-31). The collected data pertains to indoor environmental conditions (temperature, humidity) as well as plug loads and external factors (temperature, humidity, wind speed, and global irradiance) along with occupants' presence and operation of windows and lights. The monitored data can be used for multiple purposes, including the development and validation of occupancy-related models.

Entities:  

Mesh:

Year:  2019        PMID: 31772311      PMCID: PMC6879470          DOI: 10.1038/s41597-019-0271-7

Source DB:  PubMed          Journal:  Sci Data        ISSN: 2052-4463            Impact factor:   6.444


Background & Summary

Professionals in the building design, construction, and operation have become increasingly aware concerning the importance and value of monitored data from buildings[1]. Such data can support the objective assessment of buildings’ indoor environmental conditions and energy performance. As such, building delivery and commissioning process cannot be considered accountable without an evidence-based monitoring-supported verification[2]. Moreover, monitored data can support operational optimisation of existing building stock and – accumulated over time and multiple buildings – inform and improve future projects. Energy and performance contracting, smart load balancing, model-predictive building systems control, and preventive building maintenance can all significantly benefit from systematic collection and analysis of monitored data. Likewise, high-quality data can contribute to the state of knowledge in areas such as building physics, building integrity, building automation, indoor environment, and human factors in building performance. The data included in the present contribution represents a part of an effort toward systematic and comprehensive data collection in an existing office building. The associated process facilitated a better understanding of the shortcomings in the current practices concerning the technical infrastructures for building monitoring and related challenges in hardware scalability and software interoperability. Moreover, the multi-aspect nature of the collected data support the process of ontology development for building-related monitored data. This ontology may be described in terms of a general schema or a structured matrix of multiple data streams originating from, and relevant to, the operation of buildings. This ontology[2,3] has been shown to have the potential to enhance the understanding of building-related data space and provide a solid foundation for further developments with respect to applications in building data acquisition, storage, processing, and analysis.

Methods

The present contribution represents the data monitored over a period of one year (from 2013- 01-01 to 2013-12-31) in an office area of around 200 m2 in a university building in Vienna. Figure 1 illustrates the setting and monitoring infrastructure of the office area. Within this study, multi-aspect (thermal, visual, and equipment) data of this office area as well as external conditions are collected.
Fig. 1

Floor plan office area. The abbreviation KI stands for kitchen, O1 for office 1, O2 for office 2, O3 for office 3, O4 for office 4, and MR for meeting room.

Floor plan office area. The abbreviation KI stands for kitchen, O1 for office 1, O2 for office 2, O3 for office 3, O4 for office 4, and MR for meeting room. Table 1 shows the measured variables within this study including information about inhabitants (around eight occupants were monitored), indoor and external conditions, control systems/devices and equipment.
Table 1

Measured variables.

Categories of measured dataSubcategories of measured dataSpecific variables you measured
InhabitantsPositionPresence at work station
Control actionLight/Window
Indoor conditionsHygro-thermalAir temperature/Air relative humidity
External conditionsHygro-thermalAir temperature/Air relative humidity/Wind speed/Wind direction
Solar radiationGlobal radiation
Control systems/devicesLightingOn/off
EquipmentOfficeEquipment power
Measured variables. The area layout (see Fig. 1) includes a single-occupancy closed office (O3), two single- occupancy semi-closed offices (O2, O4), an open plan office area (O1), a kitchen (KI), and a meeting room (MR). The naturally ventilated office area includes eight workstations, in which each occupant has access to one manually operable casement window. Only the enclosed office entails one workstation and two windows. Opening and closing actions are typically conducted on operable internal and external wings of the casement windows. Each window is equipped with internal shading elements. Dimensions of the casement window are given in Fig. 2. Occupants’ window opening behaviour is not likely to have been influenced by circumstances such as traffic noise or poor air quality, given low external ambient sound levels (windows are oriented toward internal courtyards) and relatively low (measured) CO2 levels.
Fig. 2

Casement window dimensions. The dimensions of south-facing windows are given on the left, the dimensions of north-facing windows are given on the right.

Casement window dimensions. The dimensions of south-facing windows are given on the left, the dimensions of north-facing windows are given on the right. The occupants’ presence, state of windows and a number of indoor environment variables (including indoor air temperature, indoor air relative humidity, and equipment power) are monitored on a continuous basis. The arrangement of the monitoring infrastructure within the office area is given in Table 2.
Table 2

Monitored variables at each office.

OfficeFloor area [m2]Presence at work stationWindow control actionsLighting on/offEquipment powerIndoor air temp.Indoor air relative humidity
KI11PkiWkiLkiTkiRhuki
O136Po1_1Wo1_1Lo1_1Eo1_1To1_1Rhuo1_1
Po1_2Wo1_2Lo1_2Eo1_2To1_2Rhuo1_2
Po1_3Wo1_3Eo1_3
Po1_4Wo1_4Eo1_4
Po1_5Eo1_5
O211Po2Wo2_1Lo2Eo2To2Rhuo2
Wo2_2
O329Po3Wo3_1Lo3_1Eo3To3Rhuo3
Wo3_2Lo3_2
Wo3_3
Wo3_4
O411Po4Wo4_1Lo4_1Eo4To4Rhuo4
Wo4_2Lo4_2
MR44Wmr_1TmrRhumr
Wmr_2
Wmr_3
Wmr_4
Wmr_5
Wmr_6
Monitored variables at each office. Table 3 provides an overview of the monitoring infrastructure. Data collection of the indoor climate and the user interactions within the office area was performed with an in-house developed monitoring system concept based on off-the-shelf wireless EnOcean sensors, a wireless telegram data collector and a central web-based monitoring service[4].
Table 3

Elements of the monitoring infrastructure.

Sensor typeMeasured variableRangeAccuracy
Thermokon - SR04 CO2 rHIndoor air temperature0–51 °C±1% of measuring range (typ. at 21 °C)
Indoor air relative humidity0–100%rH±3% between 20–80% rH (typ. at 21 °C)
CO20–2550 ppm±75 ppm or ±10% of measuring range (typ.at 21 °C)
Thermokon - SR-MDS SolarMotion/occupancy0/1
Brightness0–512Lux
Thermokon - SRW01Window contact sensor0/1
Eltako - FWZ61Single phase energy meter0–3680 W±1%
Thies Clima - Pyranometer CM3Solar radiation0–1300 W.m−2±5% (350–1500 nm)
Thies Clima – Hygro-Thermogeber-compact 1.1005.54.000Air temperature−30–+70 °C±0.2 K at 20 °C and wind speed >1.0 m.s−1
Air relative humidity0–100% rH±2% rH
Thies Clima - Windgeber-compact 4.3519.00.000Wind speed0.5–50 m.s−1±0.5 m/s or ±3% of measurement
Thies Clima - Windrichtungsgeber- compact 4.3129.00.000Wind direction0–360°±5°
Elements of the monitoring infrastructure. In detail, the occupancy data has been obtained via wireless ceiling-mounted PIR motion detectors. The sensors are active in interval of 1.6 minutes and detect movements and measure the brightness at ceiling level. Like all sensors based on EnOcean standard, the transmission of the telegrams is reduced to a necessary minimum. The resulting low energy demand is usually covered by a solar cell or a battery. As a result, telegrams were only sent when a value change is higher than a sensor specific minimum or a maximum time difference to the previous telegram was exceeded. The recorded data entails a sequence of time- stamped occupant motion detection with binary values. In order to facilitate data analysis, the event-based data streams were processed to generate 15-minute interval data by the use of stored procedures implemented in the MySQL database of the MOST building monitoring system[5,6]. In case of occupancy, this stored procedure derives the duration of occupancy states (occupied/vacant) from the stored events and returns the dominant occupancy state of each interval. Indoor air temperature and relative humidity were measured inside each office area close to each workstation at 0.9 m height. The state of all windows was measured through a window contact sensor. Light state was indirectly measured by the use of an EnOcean-based electric energy meter. The recorded event-based data from the EnOcean-based sensors was subsequently processed by a stored procedure of the MOST building monitoring system to generate the values of the provided data records for each time interval[6]. Outdoor environmental parameters (including air temperature, air relative humidity, wind speed, wind direction, and global radiation) are monitored via a local weather station. The weather station is located on top of the building at about 40 m above street level. No obstacles were situated close by that could potentially influence the wind direction or speed.

Data Records

Table 4 provides an overview of the data records. Data file names, format types as well as measured variables are described. The data records[7] are stored in CSV format on the figshare repository. Key to the location codes is provided in Fig. 1.
Table 4

Data records.

Data file nameData formatLocation codeMeasured variable
01_occcsvO1, O2, O3, O4, KIPresence at work station [0:vacant, 1:occupied]
02_wincsvO1, O2, O3, O4, MR, KIWindow state [0:open, 1:closed]
03_lightcsvO1, O2, O3, O4, KILight state [0:off, 1:on]
04_plugcsvO1, O2, O3, O4Equipment power [W]
05_temp_incsvO1, O2, O3, O4, MR, KIIndoor air temperature [°C]
06_rhu_incsvO1, O2, O3, O4, MR, KIIndoor air relative humidity [%]
07_rad_globalcsvWeather stationGlobal radiation [W.m−2]
08_temp_outcsvWeather stationAir temperature [°C]
09_rhu_outcsvWeather stationAir relative humidity [%]
10_wspcsvWeather stationWind speed [m.s−1]
11_wdicsvWeather stationWind direction [degree] (North:0, East:90, South:180, West:270)
Data records.

Technical Validation

The data included in the present contribution displays an inherently multi-layered nature, involving multiple domains (thermal, visual, equipment) and multiple probes (of different type and built). Moreover, it is relayed and stored via multiple technologies, and processed to fit different categories within the underlying monitoring ontology. Given this nature, evidence of technical validation cannot be presented in terms of a single experimental design. Nonetheless, the long-term data collection and processing effort incorporated a number of measures and operations to ensure the consistency and reliability of the data set. These include: Regular calibration of sensory probes: This was conducted both by third-party instances every three years (specifically regarding the weather station sensors) and via Department’s own climate-chamber for temperature probe output comparison before installation and thereafter (via annual comparisons with a reference probe); Systemic comparison of output of the probes of the same kind when placed in the same positions; Recurrent standard quality and plausibility checks toward preventive detection of potential probe output disruption, malfunction, or corruption; Post-repository pre-submission data distillation excluding all but those data elements meeting the above criteria.
Measurement(s)Occupancy • room temperature ambient air • humidity • radiation • temperature of air • atmospheric wind speed • atmospheric wind direction • electrical energy
Technology Type(s)sensor • Gauge or Meter Device
Sample Characteristic - OrganismHomo sapiens
Sample Characteristic - Environmentoffice building
Sample Characteristic - LocationVienna
  3 in total

1.  A Global Building Occupant Behavior Database.

Authors:  Bing Dong; Yapan Liu; Wei Mu; Zixin Jiang; Pratik Pandey; Tianzhen Hong; Bjarne Olesen; Thomas Lawrence; Zheng O'Neil; Clinton Andrews; Elie Azar; Karol Bandurski; Ronita Bardhan; Mateus Bavaresco; Christiane Berger; Jane Burry; Salvatore Carlucci; Karin Chvatal; Marilena De Simone; Silvia Erba; Nan Gao; Lindsay T Graham; Camila Grassi; Rishee Jain; Sanjay Kumar; Mikkel Kjærgaard; Sepideh Korsavi; Jared Langevin; Zhengrong Li; Aleksandra Lipczynska; Ardeshir Mahdavi; Jeetika Malik; Max Marschall; Zoltan Nagy; Leticia Neves; William O'Brien; Song Pan; June Young Park; Ilaria Pigliautile; Cristina Piselli; Anna Laura Pisello; Hamed Nabizadeh Rafsanjani; Ricardo Forgiarini Rupp; Flora Salim; Stefano Schiavon; Jens Schwee; Andrew Sonta; Marianne Touchie; Andreas Wagner; Sinead Walsh; Zhe Wang; David M Webber; Da Yan; Paolo Zangheri; Jingsi Zhang; Xiang Zhou; Xin Zhou
Journal:  Sci Data       Date:  2022-06-28       Impact factor: 8.501

2.  A measured energy use, solar production, and building air leakage dataset for a zero energy commercial building.

Authors:  Philip Agee; Leila Nikdel; Sydney Roberts
Journal:  Sci Data       Date:  2021-11-23       Impact factor: 6.444

3.  The Building Data Genome Project 2, energy meter data from the ASHRAE Great Energy Predictor III competition.

Authors:  Clayton Miller; Anjukan Kathirgamanathan; Bianca Picchetti; Pandarasamy Arjunan; June Young Park; Zoltan Nagy; Paul Raftery; Brodie W Hobson; Zixiao Shi; Forrest Meggers
Journal:  Sci Data       Date:  2020-10-27       Impact factor: 6.444

  3 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.