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من المورد air_quality_dataset_readme.md في Anonymised Indoor Air Quality Benchmarking Dataset
| f | 1 | { | f | 1 | { |
| 2 | "author": "SMDH Data Science Team", | 2 | "author": "SMDH Data Science Team", | ||
| 3 | "author_email": "info@smdh.uk", | 3 | "author_email": "info@smdh.uk", | ||
| 4 | "cloud_storage_key_segment": | 4 | "cloud_storage_key_segment": | ||
| 5 | "anonymised-indoor-air-quality-benchmarking-dataset", | 5 | "anonymised-indoor-air-quality-benchmarking-dataset", | ||
| 6 | "creator_user_id": "06d04fb0-fe0e-4a6a-b958-061fb38a9f9c", | 6 | "creator_user_id": "06d04fb0-fe0e-4a6a-b958-061fb38a9f9c", | ||
| 7 | "groups": [], | 7 | "groups": [], | ||
| 8 | "id": "ed066cd1-1874-402b-bd38-0ef0ce26894d", | 8 | "id": "ed066cd1-1874-402b-bd38-0ef0ce26894d", | ||
| 9 | "isopen": false, | 9 | "isopen": false, | ||
| 10 | "license_id": "cc-nc", | 10 | "license_id": "cc-nc", | ||
| 11 | "license_title": "Creative Commons Non-Commercial (Any)", | 11 | "license_title": "Creative Commons Non-Commercial (Any)", | ||
| 12 | "license_url": "http://creativecommons.org/licenses/by-nc/2.0/", | 12 | "license_url": "http://creativecommons.org/licenses/by-nc/2.0/", | ||
| 13 | "maintainer": "Dermot Kerr", | 13 | "maintainer": "Dermot Kerr", | ||
| 14 | "maintainer_email": "d.kerr@ulster.ac.uk", | 14 | "maintainer_email": "d.kerr@ulster.ac.uk", | ||
| 15 | "metadata_created": "2026-03-18T17:19:14.660529", | 15 | "metadata_created": "2026-03-18T17:19:14.660529", | ||
| n | 16 | "metadata_modified": "2026-03-18T17:21:17.080376", | n | 16 | "metadata_modified": "2026-03-18T17:21:17.752905", |
| 17 | "name": | 17 | "name": | ||
| 18 | lster-university--anonymised-indoor-air-quality-benchmarking-dataset", | 18 | lster-university--anonymised-indoor-air-quality-benchmarking-dataset", | ||
| 19 | "notes": "# Anonymised Indoor Air Quality Benchmarking Dataset -- | 19 | "notes": "# Anonymised Indoor Air Quality Benchmarking Dataset -- | ||
| 20 | Manufacturing Facilities\r\n\r\n## Description\r\n\r\nThis dataset | 20 | Manufacturing Facilities\r\n\r\n## Description\r\n\r\nThis dataset | ||
| 21 | contains anonymised benchmarking indicators derived from\r\nindoor | 21 | contains anonymised benchmarking indicators derived from\r\nindoor | ||
| 22 | air\u2011quality sensor measurements collected from | 22 | air\u2011quality sensor measurements collected from | ||
| 23 | manufacturing\r\nfacilities participating in the **Smart Manufacturing | 23 | manufacturing\r\nfacilities participating in the **Smart Manufacturing | ||
| 24 | Data Hub (SMDH)**\r\nprogramme.\r\n\r\nThe dataset summarises | 24 | Data Hub (SMDH)**\r\nprogramme.\r\n\r\nThe dataset summarises | ||
| 25 | air\u2011quality performance across multiple companies\r\nand sectors | 25 | air\u2011quality performance across multiple companies\r\nand sectors | ||
| 26 | using aggregated environmental indicators and | 26 | using aggregated environmental indicators and | ||
| 27 | statistical\r\nbenchmarking metrics. The purpose of the dataset is to | 27 | statistical\r\nbenchmarking metrics. The purpose of the dataset is to | ||
| 28 | enable\r\n**cross\u2011company environmental performance comparison | 28 | enable\r\n**cross\u2011company environmental performance comparison | ||
| 29 | while preserving\r\ncompany anonymity**.\r\n\r\nThe dataset focuses on | 29 | while preserving\r\ncompany anonymity**.\r\n\r\nThe dataset focuses on | ||
| 30 | indoor air\u2011quality conditions derived from **CO\u2082\r\nand | 30 | indoor air\u2011quality conditions derived from **CO\u2082\r\nand | ||
| 31 | Total Volatile Organic Compounds (TVOC)** sensor measurements. | 31 | Total Volatile Organic Compounds (TVOC)** sensor measurements. | ||
| 32 | These\r\nmeasurements are converted into air\u2011quality indices and | 32 | These\r\nmeasurements are converted into air\u2011quality indices and | ||
| 33 | benchmarking\r\nindicators that allow comparison across facilities | 33 | benchmarking\r\nindicators that allow comparison across facilities | ||
| 34 | with different\r\noperational | 34 | with different\r\noperational | ||
| 35 | -------------------------------------------------------------\r\n\r\n# | 35 | -------------------------------------------------------------\r\n\r\n# | ||
| 36 | Data Source\r\n\r\nThe data originates from **IFM environmental | 36 | Data Source\r\n\r\nThe data originates from **IFM environmental | ||
| 37 | sensors installed in\r\nparticipating manufacturing facilities**. Raw | 37 | sensors installed in\r\nparticipating manufacturing facilities**. Raw | ||
| 38 | sensor measurements were\r\nprocessed and aggregated before inclusion | 38 | sensor measurements were\r\nprocessed and aggregated before inclusion | ||
| 39 | in this anonymised | 39 | in this anonymised | ||
| 40 | -------------------------------------------------------------\r\n\r\n# | 40 | -------------------------------------------------------------\r\n\r\n# | ||
| 41 | Anonymisation\r\n\r\nTo protect company confidentiality:\r\n\r\n- | 41 | Anonymisation\r\n\r\nTo protect company confidentiality:\r\n\r\n- | ||
| 42 | Company names are replaced with anonymised identifiers | 42 | Company names are replaced with anonymised identifiers | ||
| 43 | (`company1`,\r\n `company2`, etc.).\r\n- Sector labels are | 43 | (`company1`,\r\n `company2`, etc.).\r\n- Sector labels are | ||
| 44 | represented as coded identifiers (`sector_code`).\r\n- No | 44 | represented as coded identifiers (`sector_code`).\r\n- No | ||
| 45 | facility\u2011level identifiers or timestamps that could reveal\r\n | 45 | facility\u2011level identifiers or timestamps that could reveal\r\n | ||
| 46 | operational patterns are included.\r\n- The dataset contains | 46 | operational patterns are included.\r\n- The dataset contains | ||
| 47 | **aggregated benchmarking metrics rather than\r\n raw sensor | 47 | **aggregated benchmarking metrics rather than\r\n raw sensor | ||
| 48 | -------------------------------------------------------------\r\n\r\n# | 48 | -------------------------------------------------------------\r\n\r\n# | ||
| 49 | Dataset Structure\r\n\r\nEach row represents a **company\u2011level | 49 | Dataset Structure\r\n\r\nEach row represents a **company\u2011level | ||
| 50 | observation for a specific time\r\nperiod**, including environmental | 50 | observation for a specific time\r\nperiod**, including environmental | ||
| 51 | indicators and benchmarking metrics\r\nused to compare | 51 | indicators and benchmarking metrics\r\nused to compare | ||
| 52 | air\u2011quality performance across companies.\r\n\r\nThe dataset | 52 | air\u2011quality performance across companies.\r\n\r\nThe dataset | ||
| 53 | includes:\r\n\r\n- Environmental performance indicators\r\n- | 53 | includes:\r\n\r\n- Environmental performance indicators\r\n- | ||
| 54 | Normalised benchmarking metrics\r\n- Data coverage indicators\r\n- | 54 | Normalised benchmarking metrics\r\n- Data coverage indicators\r\n- | ||
| 55 | Statistical benchmarking metrics (z\u2011scores)\r\n- Relative | 55 | Statistical benchmarking metrics (z\u2011scores)\r\n- Relative | ||
| 56 | performance | 56 | performance | ||
| 57 | -------------------------------------------------------------\r\n\r\n# | 57 | -------------------------------------------------------------\r\n\r\n# | ||
| 58 | Analytical Methodology\r\n\r\n1. **Sensor Data Preparation**\r\n - | 58 | Analytical Methodology\r\n\r\n1. **Sensor Data Preparation**\r\n - | ||
| 59 | Cleaning and validation of IFM sensor measurements\r\n - Removal | 59 | Cleaning and validation of IFM sensor measurements\r\n - Removal | ||
| 60 | of missing or inconsistent observations\r\n2. **Indicator | 60 | of missing or inconsistent observations\r\n2. **Indicator | ||
| 61 | Construction**\r\n - Conversion of CO\u2082 and TVOC measurements | 61 | Construction**\r\n - Conversion of CO\u2082 and TVOC measurements | ||
| 62 | into air\u2011quality index\r\n (AQI) metrics\r\n3. | 62 | into air\u2011quality index\r\n (AQI) metrics\r\n3. | ||
| 63 | **Benchmarking Normalisation**\r\n - Normalisation of AQI metrics | 63 | **Benchmarking Normalisation**\r\n - Normalisation of AQI metrics | ||
| 64 | to enable cross\u2011company comparison\r\n4. **Coverage | 64 | to enable cross\u2011company comparison\r\n4. **Coverage | ||
| 65 | Assessment**\r\n - Calculation of data availability metrics to | 65 | Assessment**\r\n - Calculation of data availability metrics to | ||
| 66 | ensure fair\r\n benchmarking\r\n5. **Statistical | 66 | ensure fair\r\n benchmarking\r\n5. **Statistical | ||
| 67 | Benchmarking**\r\n - Calculation of **z\u2011scores** to quantify | 67 | Benchmarking**\r\n - Calculation of **z\u2011scores** to quantify | ||
| 68 | relative performance\r\n compared with peer companies\r\n6. | 68 | relative performance\r\n compared with peer companies\r\n6. | ||
| 69 | **Performance Classification**\r\n - Classification of company | 69 | **Performance Classification**\r\n - Classification of company | ||
| 70 | performance as **Better**,\r\n **Average**, or **Worse** | 70 | performance as **Better**,\r\n **Average**, or **Worse** | ||
| 71 | relative to | 71 | relative to | ||
| 72 | -------------------------------------------------------------\r\n\r\n# | 72 | -------------------------------------------------------------\r\n\r\n# | ||
| 73 | Intended Use\r\n\r\nThis dataset supports:\r\n\r\n- | 73 | Intended Use\r\n\r\nThis dataset supports:\r\n\r\n- | ||
| 74 | Cross\u2011company environmental benchmarking\r\n- Manufacturing | 74 | Cross\u2011company environmental benchmarking\r\n- Manufacturing | ||
| 75 | environmental performance analysis\r\n- Indoor air\u2011quality | 75 | environmental performance analysis\r\n- Indoor air\u2011quality | ||
| 76 | research\r\n- Development of environmental performance | 76 | research\r\n- Development of environmental performance | ||
| 77 | dashboards\r\n- Academic or industrial research into workplace | 77 | dashboards\r\n- Academic or industrial research into workplace | ||
| 78 | environmental\r\n | 78 | environmental\r\n | ||
| 79 | -------------------------------------------------------------\r\n\r\n# | 79 | -------------------------------------------------------------\r\n\r\n# | ||
| 80 | Limitations\r\n\r\n- The dataset contains **derived benchmarking | 80 | Limitations\r\n\r\n- The dataset contains **derived benchmarking | ||
| 81 | indicators rather than\r\n raw sensor readings**.\r\n- Results | 81 | indicators rather than\r\n raw sensor readings**.\r\n- Results | ||
| 82 | should be interpreted as **relative benchmarking indicators\r\n | 82 | should be interpreted as **relative benchmarking indicators\r\n | ||
| 83 | rather than regulatory compliance assessments**.\r\n- Sector codes | 83 | rather than regulatory compliance assessments**.\r\n- Sector codes | ||
| 84 | are anonymised and do not represent specific\r\n industries.", | 84 | are anonymised and do not represent specific\r\n industries.", | ||
| 85 | "num_resources": 3, | 85 | "num_resources": 3, | ||
| 86 | "num_tags": 2, | 86 | "num_tags": 2, | ||
| 87 | "organization": { | 87 | "organization": { | ||
| 88 | "approval_status": "approved", | 88 | "approval_status": "approved", | ||
| 89 | "created": "2023-03-20T14:27:38.943709", | 89 | "created": "2023-03-20T14:27:38.943709", | ||
| 90 | "description": "Ulster University has a sustained track record in | 90 | "description": "Ulster University has a sustained track record in | ||
| 91 | robotics, computer vision, and computational intelligence. Translating | 91 | robotics, computer vision, and computational intelligence. Translating | ||
| 92 | research into technologies that catalyse innovation in small and large | 92 | research into technologies that catalyse innovation in small and large | ||
| 93 | enterprises, we have been instrumental in attracting inward investment | 93 | enterprises, we have been instrumental in attracting inward investment | ||
| 94 | and developing the knowledge economy. Ulster lead SMDH, lead the | 94 | and developing the knowledge economy. Ulster lead SMDH, lead the | ||
| 95 | virtual manufacturing platform and contribute to data science, | 95 | virtual manufacturing platform and contribute to data science, | ||
| 96 | roll-out and marketing.", | 96 | roll-out and marketing.", | ||
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| 98 | "image_url": "2023-05-02-104737.949700uu.png", | 98 | "image_url": "2023-05-02-104737.949700uu.png", | ||
| 99 | "is_organization": true, | 99 | "is_organization": true, | ||
| 100 | "name": "ulster-university", | 100 | "name": "ulster-university", | ||
| 101 | "state": "active", | 101 | "state": "active", | ||
| 102 | "title": "Ulster University", | 102 | "title": "Ulster University", | ||
| 103 | "type": "organization" | 103 | "type": "organization" | ||
| 104 | }, | 104 | }, | ||
| 105 | "owner_org": "ef5c8779-8217-40b9-a33a-bf371253343c", | 105 | "owner_org": "ef5c8779-8217-40b9-a33a-bf371253343c", | ||
| 106 | "private": false, | 106 | "private": false, | ||
| 107 | "relationships_as_object": [], | 107 | "relationships_as_object": [], | ||
| 108 | "relationships_as_subject": [], | 108 | "relationships_as_subject": [], | ||
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| 191 | { | 190 | { | ||
| 192 | "display_name": "Sensor-Air_Quality", | 191 | "display_name": "Sensor-Air_Quality", | ||
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| 198 | { | 197 | { | ||
| 199 | "display_name": "Sensor-Air_Quality", | 198 | "display_name": "Sensor-Air_Quality", | ||
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| 206 | "name": "Sensor-Air_Quality", | 205 | "name": "Sensor-Air_Quality", | ||
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| 208 | } | 207 | } | ||
| 209 | ], | 208 | ], | ||
| 210 | "title": "Anonymised Indoor Air Quality Benchmarking Dataset", | 209 | "title": "Anonymised Indoor Air Quality Benchmarking Dataset", | ||
| 211 | "type": "dataset", | 210 | "type": "dataset", | ||
| 212 | "url": "", | 211 | "url": "", | ||
| 213 | "version": "1.0" | 212 | "version": "1.0" | ||
| 214 | } | 213 | } |