Enabling Insights by Long-Term Evaluation of Social Impact Indicators of Engineered Products for Global Development Using In Situ Sensors and Deep Learning

JOURNAL OF MECHANICAL DESIGN(2023)

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摘要
Remotely measuring social impact indicators of products in developing countries can enable researchers and practitioners to make informed decisions relative to the design of products, improvement of products, or social interventions that can help improve the lives of individuals. Collecting data for determining social impact indicators for long-term periods through manual methods can be cost prohibitive and preclude collection of data that could provide valuable insights. Using in situ sensors remotely deployed and paired with deep learning can enable practitioners to collect long-term data that provide insights that can be as beneficial as data collected through manual observation but with the cost and continuity made possible by sensor devices. Postulates related to successfully developing and deploying this approach have been identified and their usefulness demonstrated through an example application related to a water hand pump in Uganda in which sensor data were collected over a five-month span. Following these postulates can help researchers and practitioners avoid potential issues that could be encountered without them.
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关键词
engineering for global development, design for the developing world, social impact, sensor systems, internet of things, remote sensors, in situ sensors, deep learning, design for humans, machine learning, product development, sustainable design, user-centered design
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