Specification of Data Collection System

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Ares(2019)6877874 - 06/11/2019 Specification of data collection system Deliverable 4.5 Lead Author: BEIA Contributors: MS, CSI Deliverable classification : PU Co-funded by the Horizon 2020 Framework Programme of the European Union SAFECARE project | D4.5 – Specification of data collection system | Month 14 (M14) Version Control Sheet Title Specification of data collection system Prepared By George Suciu, Mari-Anais Sachian, Ioana Petre, Cristiana Istrate, Denis Botezatu, Gabriel Petrescu, Loredana Chiva Approved By MS, CSI Version Number 2.0 Contact [email protected] Revision History: Version Date Summary of Changes Initials Changes Marked V0.1 9.08.2019 Initial version CN V0.2 18.10.2019 Review version MAS, GP V0.3 21.10.2019 KUL review included + CCC IP V0.4 24.10.2019 Few revisions according to MS review MAS V0.5 30.10.2019 Final revision according the MS MAS, IP, review GS V1.0 31.10.2019 Finishing touches GS V2.0 5.11.2019 Finishing touches according to MS MAS, IP, review GS 2 SAFECARE project | D4.5 – Specification of data collection system | Month 14 (M14) The research leading to these results has received funding from the European Union’s Horizon 2020 Research and Innovation Programme, under Grant Agreement no 787002. Contents 1 The SAFECARE Project .............................................................................................................................................. 5 2 Executive Summary .................................................................................................................................................... 5 3 Introduction .................................................................................................................................................................... 5 3.1 Vocabulary ............................................................................................................................................................. 6 4 Requirements ................................................................................................................................................................. 8 4.1 Requirements from requirements analysis........................................................................................... 8 4.2 DoA requirements.............................................................................................................................................. 8 4.3 Solution requirements ..................................................................................................................................... 9 5 Solution description .................................................................................................................................................. 10 6 Scenarios ........................................................................................................................................................................ 13 6.1 Scenario 1 ............................................................................................................................................................ 13 6.2 Scenario 2 ............................................................................................................................................................ 14 6.3 Scenario 3 ............................................................................................................................................................ 14 6.3.1 Technical scenario A ............................................................................................................................. 14 6.3.2 Technical scenario B ............................................................................................................................. 14 6.3.3 Technical scenario C ............................................................................................................................. 14 6.3.4 Technical scenario D ............................................................................................................................. 15 6.4 Scenario 4 ............................................................................................................................................................ 15 6.5 Scenario 5 ............................................................................................................................................................ 15 3 SAFECARE project | D4.5 – Specification of data collection system | Month 14 (M14) 6.6 Scenario 6 ............................................................................................................................................................ 15 6.7 Scenario 7 ............................................................................................................................................................ 15 6.7.1 Technical scenario 1 ............................................................................................................................. 15 6.7.2 Technical scenario 2 ............................................................................................................................. 15 6.8 Scenario 8 ............................................................................................................................................................ 15 6.9 Scenario 9 ............................................................................................................................................................ 16 7 Data Exchange Format ............................................................................................................................................. 16 8 Devices and Setups .................................................................................................................................................... 19 8.1. Test Bed Sensors ..................................................................................................................................................... 19 8.2. Sensor Analytics ...................................................................................................................................................... 21 9 Integration with BTMS ............................................................................................................................................ 23 10 Data Availability for Test ........................................................................................................................................ 26 11 Scenarios and Demonstration sites ................................................................................................................... 27 11.1 Unfulfilled Scenarios ....................................................................................................................................... 27 12 Requirements Mapping ........................................................................................................................................... 27 13 Conclusions ................................................................................................................................................................... 28 References ............................................................................................................................................................................... 28 List of Figures FIGURE 1 - SOLUTION OVERVIEW FOR T4.1 AND T4.2 AND HOW THEY CONNECT WITH BUILDING SYSTEMS AND OTHER TASKS ................................................................................................................................................................................................................ 10 FIGURE 2 - SCADA ARCHITECTURE ......................................................................................................................................................... 12 FIGURE 3 - THE FUNCTIONAL SCHEME OF THE SYSTEM WITH THE REQUIRED SENSORS ................................................................. 21 FIGURE 4 - SCHEMATIC REPRESENTATION OF SENSOR PLACEMENT INSIDE A HOSPITAL ROOM .................................................... 22 FIGURE 5 - GLOBAL ARCHITECTURE OF CCS ........................................................................................................................................... 23 FIGURE 6 - THE EXPERIMENTAL SETUP FOR THE EVALUATION OF A VM .......................................................................................... 25 FIGURE 7 - IMPLEMENTATION OF LVM .................................................................................................................................................... 25 List of Tables TABLE 1 - VOCABULARY ................................................................................................................................................................................. 6 TABLE 2 – REQUIREMENTS FROM REQUIREMENTS ANALYSIS ................................................................................................................ 8 TABLE 3 - REQUIREMENTS FOR THE SOLUTION ......................................................................................................................................... 9 TABLE 4 – EVENT TABLE ............................................................................................................................................................................ 17 TABLE 5 -REQUIREMENTS DESCRIPTION.................................................................................................................................................
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