地质学
热释光年代测定
长石
信号(编程语言)
发光
饱和(图论)
矿物学
光学测年
光释光
灵敏度(控制系统)
材料科学
遥感
等效剂量
重置(财务)
航程(航空)
持续发光
测距
红外线的
作者
Ting Cheng,Bo Li,Dongju Zhang
标识
DOI:10.1016/j.quageo.2025.101709
摘要
Potassium-rich feldspar (K-feldspar) is widely used in luminescence dating due to its high saturation dose, allowing the determination of ages for older sediments. Previous studies have shown that the ‘sensitivity’ of the post-infrared infrared stimulated luminescence (pIRIR) signal can retain a ‘memory’ of the pre-dose received but can be reset by sunlight bleaching. Building on the development of multi-aliquot and single-aliquot pre-dose multi-elevated-temperature post-IR IRSL (pMET-pIRIR) procedures, we investigate the performance of the single-aliquot regenerative-dose (SAR) pMET-pIRIR procedure for K-feldspar at the single-grain level. Solar bleaching experiments demonstrate that the sensitivity of the IRSL and MET-pIRIR signals can be effectively reset by a 3 h solar simulator bleaching step applied after each regenerative cycle. Integrating the SAR pMET-pIRIR procedure with the standardised growth curve (SGC)-based L n T n method successfully overcomes sensitivity carry-over, mitigates anomalous fading, extends the dating range and improves measurement efficiency for K-feldspar luminescence dating. Equivalent doses (D e ) can be determined using the sensitivity-corrected signal (L x /T x ), regenerative signal (L x ) and test dose signal (T x ), providing flexibility across different dose ranges and improving dating reliability through cross-validation. Application to three sediment samples from China, including samples with independent known ages, confirms the method’s ability to obtain accurate D e values up to ∼1600 Gy (∼440 ka), with the potential to date samples approaching ∼1 Ma using the L x and T x signals. The single-grain SAR pMET-pIRIR method offers a promising approach for dating older sediments and investigating heterogeneous luminescence behaviours among grains or post-depositionally disturbed deposits.
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