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Total Ionizing Dose and Single-Event Effect Response of the AD524CDZ Instrumentation Amplifier

Jaime Cardenas Chavez, Dave Hiemstra, Adriana Noguera Cundar, Brayden Johnson, David Baik,Li Chen

ENERGIES(2024)

Univ Saskatchewan

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Abstract
This manuscript focuses on studying the radiation response of the Commercial-off-the-shelf (COTS) AD524CDZ operational amplifier. Total Ionizing Dose (TID) effects were tested using low-dose 60Co irradiation. Single-Event Effect (SEE) sensitivity was studied on this operational amplifier using a 105 MeV proton beam. Additionally, further study of the SEE response was carried out using a Two-photon absorption laser to scan some sensitive sectors of the die. For this laser experiment, different gain setups and laser energies were employed to determine how the Single Event Transient (SET) response of the device was affected based on the test configuration. The results from the TID experiments revealed that the studied device remained functional after 100 krads (Si). Proton experiments revealed the studied device exhibited a high SET response with a maximum DC offset SET of about 1.5 V. Laser experiments demonstrated that there was a clear SET reduction when using 10× and 1000× gain setups.
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Key words
total ionizing dose (TID),Co-60,single-event effect (SEE),single-event transient (SET),proton beam,two-photon absorption laser,instrumentation amplifier,commercial-off-the-shelf (COTS)
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