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1.
Talanta ; 203: 290-296, 2019 Oct 01.
Article in English | MEDLINE | ID: mdl-31202342

ABSTRACT

The concentration of sheep cheese whey (CW) in water obtained from two Spanish reservoirs, two Spanish rivers, and distilled water has been estimated by combining spectroscopic measurements, obtained with light-emitting diodes (LEDs), and linear or non-linear algorithms. The concentration range of CW that has been studied covers from 0 to 25% in weight. Every sample was measured by six different types of LEDs possessing different emission wavelengths (blue, orange, green, pink, white, and UV). 1,800 fluorescence measurements were carried out and used to design different types of models to estimate the concentration of CW in water. The fluorescence spectra provided by the pink LED originated the most accurate mathematical models, with mean square errors lower than 3.3% and 2.5% for the linear and non-linear approaches, respectively. The pink LED combined with the non-linear model, which was an artificial neural network, was further validated through a k-fold cross-validation and an internal validation. It should be noted that the sensor used here has been designed and produced by a 3D printer and has the potential of being implemented in situ for real-time and cost-effective analysis of natural watercourses.


Subject(s)
Neural Networks, Computer , Water Pollutants/analysis , Whey/chemistry , Animals , Lighting/instrumentation , Linear Models , Rivers/chemistry , Sheep , Spectrometry, Fluorescence/instrumentation , Spectrometry, Fluorescence/methods
2.
Talanta ; 195: 1-7, 2019 Apr 01.
Article in English | MEDLINE | ID: mdl-30625518

ABSTRACT

One of the most profitable products from the Mediterranean basin is extra virgin olive oil (EVOO), and, therefore, some of them have protected designation of origin (PDO) labels. In order to prevent fraudulent practices, a method to quantify adulterants has been developed. 459 binary blends composed of PDO EVOO in date (Saqura, Oleoestepa, and Duque de Baena) mixed with expired PDO EVOO (Quinta do Vallouto, Señorío de Segura, and Planeta) to serve as adulterants (<17%) have been analyzed. Using a laser diode as a source light, the fluorescence emission has been measured and 20 chaotic parameters from the resulting spectra have been calculated. Using these as independent variables of multi-parameter regression models, the concentration of adulterant has been estimated. Every model was evaluated through the mean square error, adjusted correlation coefficient, Mallows' Cp, Akaike information criterion, Hannan-Quinn criterion, and Bayesian information criterion. This approach was validated by the leave-one-out cross-validation method and the results were promising (lower than 10% quantification error). Additionally, the structure of the sensor has been designed and developed by a 3D printer and has the potential of being applied in situ for real-time and cost-effective analysis at oil mills or for quality control.


Subject(s)
Food Contamination/analysis , Olive Oil/analysis , Fraud , Quality Control , Spectrometry, Fluorescence
3.
Talanta ; 190: 269-277, 2018 Dec 01.
Article in English | MEDLINE | ID: mdl-30172509

ABSTRACT

Sheep cheese whey (SCW) is a by-product from the dairy industry, and due to its composition, it is very hazardous for natural bodies of water. However, illegal discharges of this product have been commonly reported in watercourses and reservoirs. To prevent this type of actions, a simple and affordable sensor has been designed and validated using diverse water samples from different sources containing SCW, such as water from two Spanish reservoirs and two Spanish rivers located in the province of Madrid. Using these waters, different SCW solutions (lower than 20% in weight) have been prepared and measured. The equipment used to sense the samples is based on combining fluorescence measurements, obtained with light emitting diodes (LEDs), and algorithms which rely on chaotic parameters. Every sample was measured by six different types of LEDs possessing distinct emission wavelengths (blue, orange, green, pink, white, and UV), leading to 1786 fluorescence spectra that were employed during the modeling phase. After the mathematical analysis, the dataset that generates the best statistical results was from the blue LED. This approach was dually validated via leave-one-out cross-validation as well as externally validation, and the results were very promising (error around 6.5% and 8% quantification error, respectively). Additionally, it is important to note that the sensor used has been designed and developed by a 3D printer and has the potential of being applied in situ for real-time and cost-effective analysis of natural bodies of water.

4.
Talanta ; 185: 196-202, 2018 Aug 01.
Article in English | MEDLINE | ID: mdl-29759189

ABSTRACT

A set of 10 honeys comprising a diverse range of botanical origins have been successfully characterized through fluorescence spectroscopy using inexpensive light-emitting diodes (LEDs) as light sources. It has been proven that each LED-honey combination tested originates a unique emission spectrum, which enables the authentication of every honey, being able to correctly label it with its botanical origin. Furthermore, the analysis was backed up by a mathematical analysis based on partial least square models which led to a correct classification rate of each type of honey of over 95%. Finally, the same approach was followed to analyze rice syrup, which is a common honey adulterant that is challenging to identify when mixed with honey. A LED-dependent and unique fluorescence spectrum was found for the syrup, which presumably qualifies this approach for the design of uncomplicated, fast, and cost-effective quality control and adulteration assessing tools for different types of honey.


Subject(s)
Fluorescence , Honey/analysis , Least-Squares Analysis , Oryza/chemistry , Spectrometry, Fluorescence
5.
Talanta ; 161: 304-308, 2016 Dec 01.
Article in English | MEDLINE | ID: mdl-27769410

ABSTRACT

The identification and quantification of binary blends of refined olive oil with four different extra virgin olive oil (EVOO) varietals (Picual, Cornicabra, Hojiblanca and Arbequina) was carried out with a simple method based on combining visible spectroscopy and non-linear artificial neural networks (ANNs). The data obtained from the spectroscopic analysis was treated and prepared to be used as independent variables for a multilayer perceptron (MLP) model. The model was able to perfectly classify the EVOO varietal (100% identification rate), whereas the error for the quantification of EVOO in the mixtures containing between 0% and 20% of refined olive oil, in terms of the mean prediction error (MPE), was 2.14%. These results turn visible spectroscopy and MLP models into a trustworthy, user-friendly, low-cost technique which can be implemented on-line to characterize olive oil mixtures containing refined olive oil and EVOOs.


Subject(s)
Neural Networks, Computer , Olive Oil/analysis , Food Contamination/analysis , Spectrophotometry, Ultraviolet
6.
Talanta ; 144: 363-8, 2015 Nov 01.
Article in English | MEDLINE | ID: mdl-26452834

ABSTRACT

A common phenomenon that takes place in bottled extra virgin olive oil (EVOO) is the photooxidation of its pigments, especially chlorophyll, which acts as a singlet-oxygen sensitizer. This translates into a severe decrease of quality, potentially leading to oxidized and rancid olive oils by the time they reach to the consumers. In this current research, the photochemical degradation has been monitored for 45 days in binary mixtures of four monovarietal EVOOs (Arbequina, Hojiblanca, Cornicabra, and Picual) through UV-Visible spectroscopy. A multilayer perceptron-based model was optimized to estimate the photodegradation suffered by the samples, in terms of photodegradation time, relying on the spectroscopic information gathered and attaining an error rate of 2.43 days (5.3%) in the determination of this parameter.


Subject(s)
Neural Networks, Computer , Olive Oil/chemistry , Photolysis , Kinetics , Oxidation-Reduction , Spectrophotometry, Ultraviolet
7.
J Agric Food Chem ; 63(23): 5646-52, 2015 Jun 17.
Article in English | MEDLINE | ID: mdl-26028270

ABSTRACT

In this research, the detection and quantification of adulterants in one of the most common varieties of extra virgin olive oil (EVOO) have been successfully carried out. Visible absorption information was collected from binary mixtures of Picual EVOO with one of four adulterants: refined olive oil, orujo olive oil, sunflower oil, and corn oil. The data gathered from the absorption spectra were used as input to create an artificial neural network (ANN) model. The designed mathematical tool was able to detect the type of adulterant with an identification rate of 96% and to quantify the volume percentage of EVOO in the samples with a low mean prediction error of 1.2%. These significant results make ANNs coupled with visible spectroscopy a reliable, inexpensive, user-friendly, and real-time method for difficult tasks, given that the matrices of the different adulterated oils are practically alike.


Subject(s)
Food Contamination/analysis , Olive Oil/chemistry , Corn Oil/chemistry , Neural Networks, Computer , Nonlinear Dynamics , Plant Oils/chemistry , Spectrum Analysis , Sunflower Oil
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