Department of Chemistry, State University of Paraíba, 58429-500 Campina Grande, PB, Brazil.
Department of Chemistry, Technological Federal University of Paraná, 85503-390 Pato Branco, PR, Brazil.
Food Res Int. 2023 Aug;170:112830. doi: 10.1016/j.foodres.2023.112830. Epub 2023 Apr 27.
Cachaça is a Brazilian beverage obtained from the fermentation of sugarcane juice (sugarcane spirit) and is considered one of the most consumed alcoholic beverages in the world with a strong economic impact on the northeastern Brazil, more specifically in the Brejo. This microregion produces sugarcane spirits with high quality associated to edaphoclimatic conditions. In this sense, analysis for sample authentication and quality control that uses solvent-free, environmentally friendly, rapid and non-destructive methods is advantageous for cachaça producers and production chain. Thus, in this work commercial cachaça samples using near-infrared spectroscopy (NIRS) were classified based on geographical origin using one-class classification Data-Driven in Soft Independent Modelling of Class Analogy (DD-SIMCA) and One-Class Partial Least Squares (OCPLS) and predicted quality parameters of alcohol content and density based on different chemometric algorithms. A total of 150 sugarcane spirits samples were purchased from the Brazilian retail market being 100 from Brejo and 50 from other regions of Brazil. The one-class chemometric classification model was obtained with DD-SIMCA using the Savitzky-Golay derivative with first derivative, 9-point window and 1st degree polynomial as preprocessing algorithm and sensibility was 96.70 % and specificity 100 % in the spectral range 7,290-11,726 cm. Satisfactory results were obtained in the model constructs for density and the chemometric model, iSPA-PLS algorithm with baseline offset as preprocessing, obtained root mean square errors of prediction (RMSEP) of 0.0011 mg/L and Relative Error of Prediction (REP) of 0.12 %. The chemometric model for alcohol content prediction used the iSPA-PLS algorithm with Savitzky-Golay derivative with first derivative, 9-point window and 1st degree polynomial as algorithm as preprocessing obtaining RMSEP and REP of 0.69 and 1.81 % (v/v), respectively. Both models used the spectral range from 7,290-11,726 cm. The results reflected the potential of vibrational spectroscopy coupled with chemometrics to build reliable models for identifying the geographical origin of cachaça samples for predicting quality parameters in cachaça samples.
巴西甘蔗酒是一种从甘蔗汁(甘蔗烈酒)发酵而来的饮料,被认为是世界上消费量最大的酒精饮料之一,对巴西东北部,特别是布雷焦地区有着巨大的经济影响。该微地区生产的甘蔗烈酒质量很高,这与土壤气候条件有关。在这方面,使用无溶剂、环保、快速和非破坏性方法进行样品鉴定和质量控制的分析,对甘蔗酒生产商和生产链都有利。因此,在这项工作中,使用近红外光谱(NIRS)对商业甘蔗酒样品进行了分类,根据地理来源,使用基于数据驱动的软独立建模类比分类(DD-SIMCA)和单类偏最小二乘(OCPLS)对一类分类进行了分类,基于不同的化学计量学算法预测了酒精含量和密度的质量参数。总共从巴西零售市场购买了 150 种甘蔗烈酒样品,其中 100 种来自布雷焦,50 种来自巴西其他地区。使用 Savitzky-Golay 导数和一阶导数、9 点窗口和 1 次多项式作为预处理算法的 DD-SIMCA 获得了单类化学计量分类模型,在光谱范围 7,290-11,726 cm 时,灵敏度为 96.70%,特异性为 100%。在密度和化学计量模型的模型构建中得到了令人满意的结果,基线偏移作为预处理的 iSPA-PLS 算法,得到预测均方根误差(RMSEP)为 0.0011mg/L,相对预测误差(REP)为 0.12%。用于预测酒精含量的化学计量模型使用 Savitzky-Golay 导数和一阶导数、9 点窗口和 1 次多项式作为算法的 iSPA-PLS 算法作为预处理,得到 RMSEP 和 REP 分别为 0.69%和 1.81%(v/v)。两个模型都使用了 7,290-11,726 cm 的光谱范围。结果反映了振动光谱与化学计量学相结合构建可靠模型来识别甘蔗酒样品的地理来源,以及预测甘蔗酒样品质量参数的潜力。