DocumentCode :
3585748
Title :
Smart Handpumps: A Preliminary Data Analysis
Author :
Colchester, F.E. ; Greeff, H. ; Thomson, P. ; Hope, R. ; Clifton, D.A.
Author_Institution :
Dept. of Eng. Sci., Univ. of Oxford, Oxford, UK
fYear :
2014
Firstpage :
1
Lastpage :
4
Abstract :
Groundwater accessed by handpumps is the primary water supply for many people in Africa. This “Smart Water” project considers the study of a region of Kenya where there is significant demand for groundwater, especially among the poor. Some of the engineering aims of this project are to determine if data acquired from accelerometers mounted in hand-pumps can be used to perform three tasks: (i) estimate the depth of the groundwater at the pump, (ii) predict pump failure, and (iii) classify the user of the pump (e.g., as being a man, woman, or child). This paper describes an initial investigation, based on one week of data collection, that demonstrates there is useful information in the accelerometer data collected from handpumps, which can be discovered using machine learning techniques. We show that features derived from the accelerometry data exhibit stable, similar behaviour suggesting that users and pump locations may be characterised. We demonstrate that a machine learning system can classify the data according to person and pump and accurately differentiate between different users. We conclude that our preliminary study suggests that information may exist in accelerometry from handpumps that could allow us to answer the three main questions of the “Smart Water” project, described above, motivating a largescale´ data-collection activity.
Keywords :
accelerometers; data acquisition; data analysis; groundwater; learning (artificial intelligence); pumps; water supply; accelerometers; data acquisition; data analysis; groundwater depth estimation; machine learning system; smart handpumps; water supply; Condition Monitoring; Machine Learning; Water;
fLanguage :
English
Publisher :
iet
Conference_Titel :
Appropriate Healthcare Technologies for Low Resource Settings (AHT 2014)
Type :
conf
Filename :
7083579
Link To Document :
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