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Development and Basic Qualification Steps Towards an Electrochemically Based H-Sensor for Lithium System Applications

JOURNAL OF NUCLEAR ENGINEERING(2023)

Karlsruhe Inst Technol | ENEA Brasimone

Cited 1|Views11
Abstract
IFMIF-DONES, or the InternationalFusionMaterialsIrradiationFacility-DEMOOrientedNeutronSource, is a facility for investigations into foreseen fusion power plant materials using the relevant neutron irradiation of 14 MeV. This special n-irradiation is generated by the interaction of deuteron beams with liquid lithium. A critical issue during the operation of IFMIF-DONES is the enrichment of dissolved impurities in the Li-melt loops. The danger occurs as a result of hydrogen-induced corrosivity and embrittlement of the loop components, as well as the security hazards associated with the radioactive tritium. Hence, the application of liquid lithium in IFMIF-DONES requires a suitable impurity control system for reliable and low-level maintenance under the operating conditions of DONES. Regarding those requirements, an electrochemical sensor for hydrogen monitoring was developed in the frame of an international EUROFusion–WPENS task, to determine H-concentrations via the electro-motive force (EMF) of Li-melts and a suitable online-monitoring system. Long-term tests demonstrated that the sensor fulfills the requirements of chemical and mechanical stability and functionality under the harsh Li environment under the planned DONES conditions. Obtained results and operational experiences will be discussed in regard to application windows, reproducibility and calibration needs. Additionally, recommendations will be outlined for upgraded systems and future qualification needs.
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Key words
IFMIF-DONES,liquid lithium,electrochemical hydrogen sensor,lithium loop
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要点】:本文开发了一种基于电化学原理的氢传感器,用于监测锂系统中溶解杂质的浓度,以满足国际聚变材料辐照设施IFMIF-DONES的运行需求,并确保系统的化学与机械稳定性及功能性。

方法】:研究者通过测量锂熔体中的电动力势(EMF)来确定氢的浓度,开发了一套适合在线监测的系统。

实验】:在模拟DONES运行条件的严苛环境中,进行了长期测试,证明了该传感器在化学和机械稳定性及功能性方面满足了要求。具体的数据集名称和结果在论文中未明确提及。