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SNAPS: Sensor aNAlytics Point Solutions for detection and decision support systems

Authors :
Massachusetts Institute of Technology. Auto-ID Laboratory
McLamore, Eric S.
Datta, Shoumen Pa
Morgan, Victoria
Cavallaro, Nicholas
Kiker, Greg
Jenkins, Daniel M.
Rong, Yue
Gomes, Carmen
Claussen, Jonathan
Vanegas, Diana
Alocilja, Evangelyn C.
Massachusetts Institute of Technology. Auto-ID Laboratory
McLamore, Eric S.
Datta, Shoumen Pa
Morgan, Victoria
Cavallaro, Nicholas
Kiker, Greg
Jenkins, Daniel M.
Rong, Yue
Gomes, Carmen
Claussen, Jonathan
Vanegas, Diana
Alocilja, Evangelyn C.
Source :
Multidisciplinary Digital Publishing Institute
Publication Year :
2020

Abstract

In this review, we discuss the role of sensor analytics point solutions (SNAPS), a reduced complexity machine-assisted decision support tool. We summarize the approaches used for mobile phone-based chemical/biological sensors, including general hardware and software requirements for signal transduction and acquisition. We introduce SNAPS, part of a platform approach to converge sensor data and analytics. The platform is designed to consist of a portfolio of modular tools which may lend itself to dynamic composability by enabling context-specific selection of relevant units, resulting in case-based working modules. SNAPS is an element of this platform where data analytics, statistical characterization and algorithms may be delivered to the data either via embedded systems in devices, or sourced, in near real-time, from mist, fog or cloud computing resources. Convergence of the physical systems with the cyber components paves the path for SNAPS to progress to higher levels of artificial reasoning tools (ART) and emerge as data-informed decision support, as a service for general societal needs. Proof of concept examples of SNAPS are demonstrated both for quantitative data and qualitative data, each operated using a mobile device (smartphone or tablet) for data acquisition and analytics. We discuss the challenges and opportunities for SNAPS, centered around the value to users/stakeholders and the key performance indicators users may find helpful, for these types of machine-assisted tools. Keywords: sensor; smart systems; data analytics; cyber-physical systems; artificial reasoning tools; ART; drag and drop analytics; DADA; sensor-analytics point solutions; SNAPS; sense-analyze-respond-actuate; SARA; machine-assisted tools; MAT; machine-assisted platform; MAP; knowledge graphs; trans-disciplinary convergence<br />Agriculture and Food Research Initiative Competitive Grant (grant no. 2018-67016-27578)<br />NSF (project no. 1805512)<br />NSF (project no. 1511953)

Details

Database :
OAIster
Journal :
Multidisciplinary Digital Publishing Institute
Notes :
application/pdf
Publication Type :
Electronic Resource
Accession number :
edsoai.on1239994827
Document Type :
Electronic Resource