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Analysis of Aroma for Beverage Quality Control Using Smart Aroma Database™ and the Headspace Method

Applications | 2022 | ShimadzuInstrumentation
GC/MSD, HeadSpace, GC/SQ
Industries
Food & Agriculture
Manufacturer
Shimadzu

Summary

Significance of the Topic


Beer aroma is a critical quality attribute that influences consumer perception and product consistency. Rapid and reliable profiling of volatile compounds supports both research and routine quality control, enabling breweries to maintain flavor standards and identify production deviations.

Objectives and Overview of the Study


This application note demonstrates how to combine a headspace trap sampling method with GC-MS using Shimadzu’s Smart Aroma Database™ and FASST analysis. The aim is to simplify method development and expedite aroma compound profiling across different beer styles for quality control purposes.

Methodology and Instrumentation


Samples of seven beer types were prepared by adding NaCl and an internal standard (3-octanol) prior to headspace trapping. The HS-20 NX trap unit collected volatiles on Tenax® TA, followed by thermal desorption into a GCMS-QP2020 NX system. FASST analysis alternated between scan and SIM modes to deliver sensitive quantification of key targets and comprehensive screening of additional compounds.
  • Headspace conditions: trap cooling at –10 °C, heating to 280 °C, vial equilibration for 30 min.
  • GC conditions: 30 m × 0.25 mm wax column, split injection (5:1), temperature ramp from 50 °C to 250 °C.
  • MS acquisition: scan range m/z 35–400, event times of 0.3 s (scan) and 0.2 s (SIM).

Used Instrumentation


  • Shimadzu HS-20 NX headspace trap sampler
  • Shimadzu GCMS-QP2020 NX gas chromatograph–mass spectrometer

Results and Discussion


Seven aroma compounds (e.g., ethyl acetate, isoamyl acetate, 2-phenylethanol) were monitored in SIM mode. Area ratio comparisons revealed white ale exhibited the highest concentrations across most targets. Simultaneous scan data allowed detection of 141 additional volatiles. Multivariate analysis (PCA) of FASST results successfully differentiated beer styles, demonstrating the method’s discriminative power.

Benefits and Practical Applications


  • Streamlined method development using a preconfigured aroma compound database.
  • High-throughput QC with automated retention time adjustment and simultaneous quantification and screening.
  • Improved sensitivity and reproducibility from trap headspace sampling and FASST analysis.

Future Trends and Opportunities


The integration of expanded aroma libraries, advanced chemometric tools, and real-time data processing promises further efficiency gains. Adapting similar workflows to other beverages and food matrices will broaden quality control capabilities across the industry. Artificial intelligence–driven spectral matching and predictive aroma modeling represent emerging developments.

Conclusion


Combining headspace trapping, FASST dual-mode MS acquisition, and the Smart Aroma Database provides a rapid, robust workflow for beer aroma quality control. This approach reduces method setup time, increases throughput, and yields comprehensive volatile profiles, making it well suited to routine production monitoring.

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