Lehninger, P., Elahi, A., Schnöll, D., Jantsch, A., & Sauter, T. (2026). Hardware-Efficient System State Detection for Embedded Condition Monitoring. IEEE Sensors Letters, 10(5), Article 7002904. https://doi.org/10.1109/LSENS.2026.3682499
E384 - Institut für Computertechnik E056-10 - Fachbereich SecInt-Secure and Intelligent Human-Centric Digital Technologies E056-16 - Fachbereich SafeSeclab
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Journal:
IEEE Sensors Letters
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ISSN:
2475-1472
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Date (published):
May-2026
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Number of Pages:
4
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Peer reviewed:
Yes
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Keywords:
Condition Monitoring; Context Awareness; Sensor Data Processing
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Abstract:
Condition Monitoring of devices and control systems allows for a decrease in maintenance costs while requiring less computational effort than machine learning methods. To provide the option to include a monitoring circuit on a sensor or small edge device, and thus further lower computational and communication overhead, this work presents a minimized hardware implementation of a condition monitoring algorithm called TCAM and compares it to a more traditional implementation of the algorithm. Furthermore, a trade-off analysis examines the effect of sample bit widths on gate count and accuracy. For the selected case study, the gate count has been decreased by 57 % and the needed memory size by roughly 86 % while still yielding system state detection results at the same level of accuracy. For an example hydraulic monitoring application with four input signals monitored and a 9 bit numeric representation delivering reasonable accuracy, TCAM can be implemented with 1918 logic gates and 3092 bit RAM.
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Project title:
Nanomechanical Hardware Platforms for Edge Computing: 101092018 (European Commission)
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Project (external):
Horizon Europe Horizon Europe
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Project ID:
10061130 10063023
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Research Areas:
Computer Engineering and Software-Intensive Systems: 75% Sensor Systems: 25%