Fe-N-C core-shell catalysts with single low-spin Fe(Ⅱ)-N4 species for oxygen reduction reaction and high-performance proton exchange membrane fuel cells

Yan Wan,Linhui Yu, Bingxin Yang, Caihong Li,Chen Fang,Wei Guo,Fang-Xing Xiao,Yangming Lin

Journal of Energy Chemistry(2024)

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摘要
Fe-N-doped carbon materials (Fe-N-C) are promising candidates for oxygen reduction reaction (ORR) relative to Pt-based catalysts in proton exchange membrane fuel cells (PEMFCs). However, the intrinsic contributions of Fe-N4 moiety with different chemical/spin states (e.g. D1, D2, D3, etc.) to ORR are unclear since various states coexist inevitably. In the present work, Fe-N-C core-shell nanocatalyst with single low-spin Fe(Ⅱ)-N4 species (D1) is synthesized and identified with ex-situ ultralow temperature Mössbauer spectroscopy (T=1.6 K) that could essentially differentiate various Fe-N4 states and invisible Fe-O species. By quantifying with CO-pulse chemisorption, site density and turnover frequency of Fe-N-C catalysts reach 2.4×1019 site g−1 and 23 e site−1 s−1 during the ORR, respectively. Half-wave potential (0.915 VRHE) of the Fe-N-C catalyst is more positive (approximately 54 mV) than that of Pt/C. Moreover, we observe that the performance of PEMFCs on Fe-N-C almost achieves the 2025 target of the US Department of Energy by demonstrating a current density of 1.037 A cm−2 combined with the peak power density of 0.685 W cm−2, suggesting the critical role of Fe(Ⅱ)-N4 site (D1). After 500 h of running, PEMFCs still deliver a power density of 1.26 W cm−2 at 1.0 bar H2-O2. An unexpected rate-determining step is figured out by isotopic labelling experiment and theoretical calculation. This work not only offers valuable insights regarding the intrinsic contribution of Fe-N4 with a single spin state to alkaline/acidic ORR, but also provides great opportunities for developing high-performance stable PEMFCs.
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关键词
fuel cells,oxygen reduction reaction,non-platinum group metals (PGMs),isotopic labelling,active site,TOF
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