2021
DOI: 10.1109/jsen.2021.3095143
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An Autonomous Environmental Logging Microsystem (ELM) for Harsh Environments

Abstract: This paper describes the design, implementation, and evaluation of an environmental logging microsystem (ELM) for operation at elevated pressure and in corrosive environments, at temperatures up to 125°C. The ELM units are intended to be deployed in large quantities, allowed to collect data, and then retrieved, interrogated, and re-charged. Powered by a rechargeable battery embedded within the system, each ELM incorporates pressure and temperature sensors, control electronics, optical communication elements, a… Show more

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Cited by 11 publications
(5 citation statements)
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“…Extended testing in laboratory conditions mimicking downhole environments suggest that the microsystem can provide measurements for up to 96 hours. overall system density was >2000 kg/m 3 (Openfield 2014;Choi et al 2017;Sui et al 2021), the microsystem described here achieved density lower than 1200 kg/m 3 , which was lower than the targeted upper limit of 1300 kg/m 3 . The microsystem utilized a packaging approach which provided protection against corrosive chemicals that may be encountered downhole, such as H 2 S, a feature not addressed in other work (Seren et al 2017;Buzi et al 2020;Sui et al 2021).…”
Section: Discussionmentioning
confidence: 68%
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“…Extended testing in laboratory conditions mimicking downhole environments suggest that the microsystem can provide measurements for up to 96 hours. overall system density was >2000 kg/m 3 (Openfield 2014;Choi et al 2017;Sui et al 2021), the microsystem described here achieved density lower than 1200 kg/m 3 , which was lower than the targeted upper limit of 1300 kg/m 3 . The microsystem utilized a packaging approach which provided protection against corrosive chemicals that may be encountered downhole, such as H 2 S, a feature not addressed in other work (Seren et al 2017;Buzi et al 2020;Sui et al 2021).…”
Section: Discussionmentioning
confidence: 68%
“…overall system density was >2000 kg/m 3 (Openfield 2014;Choi et al 2017;Sui et al 2021), the microsystem described here achieved density lower than 1200 kg/m 3 , which was lower than the targeted upper limit of 1300 kg/m 3 . The microsystem utilized a packaging approach which provided protection against corrosive chemicals that may be encountered downhole, such as H 2 S, a feature not addressed in other work (Seren et al 2017;Buzi et al 2020;Sui et al 2021). Additionally, this work utilized commercially standard wireless communication (BLE) and battery recharging (Qi) protocols, which can reduce development time and system cost.…”
Section: Discussionmentioning
confidence: 68%
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“…To improve the effectiveness and stability of the intelligent traffic management system, Cui et al proposed the fusion of gravitational algorithm and ELM to construct an improved ELM traffic flow prediction model, which was compared with other advanced models and found to have the highest prediction accuracy and sensitivity [10]. Sui et al combined ELM and packaging components such as pressure and temperature sensors to construct an environmental logging system to address the difficulty of performing measurement work in extreme environments such as high temperatures and high corrosiveness, and the method was found to be of practical use in empirical studies for normal field testing in extreme environments [11]. Since photovoltaic output is intermittently affected by weather conditions, Abdillah et al proposed a nuclear limit learning machine (K-ELM) method for solar irradiance prediction.…”
Section: Related Workmentioning
confidence: 99%
“…This step requires initialising the AE and connecting the weights. The encoding equation is shown in equation (11).…”
Section: { }mentioning
confidence: 99%