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Projects: Projects for Investigator
Reference Number EP/W031868/1
Title Using high temporal resolution sensor data to support independent living
Status Started
Energy Categories Not Energy Related 90%;
Other Cross-Cutting Technologies or Research(Environmental, social and economic impacts) 10%;
Research Types Basic and strategic applied research 100%
Science and Technology Fields SOCIAL SCIENCES (Sociology) 40%;
PHYSICAL SCIENCES AND MATHEMATICS (Applied Mathematics) 10%;
ENGINEERING AND TECHNOLOGY (Architecture and the Built Environment) 50%;
UKERC Cross Cutting Characterisation Sociological economical and environmental impact of energy (Environmental dimensions) 40%;
Sociological economical and environmental impact of energy (Consumer attitudes and behaviour) 60%;
Principal Investigator Dr M Mueller

Mathematics
University of Exeter
Award Type Standard
Funding Source EPSRC
Start Date 01 January 2023
End Date 31 December 2024
Duration 24 months
Total Grant Value £412,004
Industrial Sectors Healthcare
Region South West
Programme Healthcare : Healthcare
 
Investigators Principal Investigator Dr M Mueller , Mathematics, University of Exeter (99.998%)
  Other Investigator Professor CS Leyshon , Geography, University of Exeter (0.001%)
Professor ER Bland , Institute of Health Research, University of Exeter (0.001%)
  Industrial Collaborator Project Contact , Cornwall Council (0.000%)
Project Contact , Leatside Surgery (0.000%)
Web Site
Objectives
Abstract We will explore the links between patterns of sensor data within the home and health patterns of vulnerable residents. We will monitor internal home environment (temperature, humidity, air quality) and electricity usage over time, and use features in the patterns to detect unusual events. We will use health and wellbeing data from participants to assess whether the usual events detected relate to underlying issues in the home. Once connections between sensor data and underlying health are established, we will aim to predict events in advance to allow earlier or pre-emptive support.To ensure the relevance of this approach we will involve end users throughout using a co-design approach. We have engaged a public involvement and engagement group, and will establish a stakeholder group of representatives of health and care providers.We will recruit 50 participants, who are vulnerable or have existing health conditions. We will draw on our experience of analysis techniques with the comprehensive Smartline data set (including long-term and high-frequency time-series environmental sensor data and electricity usage for four years). We will characterise data, and detect and predict changes in the home suggesting health and wellbeing issues. If successful, this test of feasibility will support early intervention and thus maintaining independent living.We will extract features from the data using the following methods. Fourier analysis will determine dominant frequencies in the sensor data. Autoregressive models will establish the extent of influences from previous readings to current and future readings. Long short-term memory neural networks will be used to predict readings. We will also use neural networks and support vector machines to predict anomalies in advance of them occurring, and cluster analysis to categorise days that have different types of features.
Publications (none)
Final Report (none)
Added to Database 13/04/22