Colorimetric sensor array (CSA) and bionicalgorithms were integrated to form a facile platform for total volatile basic nitrogen (TVB-N) determination. First, a CSA containing twelve color-sensitive materials was pre...
详细信息
Colorimetric sensor array (CSA) and bionicalgorithms were integrated to form a facile platform for total volatile basic nitrogen (TVB-N) determination. First, a CSA containing twelve color-sensitive materials was prepared to obtain scent information of beef and generate scent fingerprints for visualization. Second, four bionic optimi-zation algorithms, ant colony optimization (ACO), particle swarm optimization (PSO), simulated annealing (SA), and whale optimizationalgorithm (WOA), were used to extract the characteristic fingerprint variables from the CSA. Finally, the back-propagation neural network (BPNN) model combined with characteristic color compo-nents was constructed to determine the TVB-N during beef storage, with improved precision, robustness, and generalization performance. The results demonstrated that WOA had the best optimization performance, fol-lowed by PSO, ACO, and SA. The WOA-BPNN optimized only two materials to detect TVB-N during beef storage. The BPNN constructed by three variables from the two selected materials had the best determination results, with the RMSEC, Rc, RMSEP, Rp, and RPD were 2.502 +/- 0.083 mg/100 g, 0.966 +/- 0.002, 2.903 +/- 0.143 mg/100 g, 0.952 +/- 0.006, and 3.430 +/- 0.185, respectively. Therefore, the WOA-BPNN model could realize high-precision quantitative determination of TVB-N during beef storage and save resources for CSA preparation. The combi-nation of CSA and the excellent bionicalgorithm is expected to become a facile on-site sensing platform for food freshness monitoring.
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