Some of the most recent articles in data analytics, statistics, machine learning, and artificial intelligence are presented below.
It is a data-driven world, and spectroscopy is at the forefront of several data innovations.
Below is a compilation of recent research news that highlight the latest advancements in data analysis, machine learning (ML), and artificial intelligence (AI).
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Evaluating the Efficacy of the Electronic Tongue Prototype Using Machine Learning Models
A recent study by researchers from the University of Campinas (UNICAMP) and IMT Nord Europe tested an electronic tongue (e-tongue) prototype for food and beverage analysis. The device accurately distinguished between fresh and industrialized coconut water by measuring impedance data and utilizing machine learning techniques like PCA and PLS-DA (1). The e-tongue achieved over 90% accuracy in classifying samples based on key parameters like soluble solid content and titratable acidity (1). This tool, therefore, showcases its potential as a faster, cost-effective alternative to traditional methods when it comes to quality control in the food industry. However, the authors acknowledge that further research is needed for commercial adoption (1).
Artificial Intelligence and Machine Learning: Assessing Water Quality
A recent review published in TrAC Trends in Analytical Chemistry highlighted how AI and ML are improving water quality monitoring. These technologies enhance the detection of pollutants in water sources, such as drinking water, surface water, and wastewater, by analyzing spectral data (2). AI-based models can quickly identify contaminants, predict water quality parameters, and support early warning systems, addressing challenges in traditional monitoring methods (2). Although promising, several limitations remain, which include the need for large, diverse data sets. The review emphasizes the importance of selecting appropriate ML algorithms for specific water quality issues to ensure effective management.
AI-Powered Spectroscopy Faces Hurdles in Rapid Food Analysis
A recent study published in Foods highlighted the potential of AI-powered spectroscopy for rapid, non-destructive food analysis, as well as the significant challenges that remain. Conducted by researchers from institutions like Queen’s University Belfast, the study emphasizes that while vibrational spectroscopy, combined with AI, can offer quick assessments of food quality, small sample sizes, overuse of complex models, and difficulties in transitioning to industrial settings hinder its effectiveness (3). The authors stressed the need for larger data sets, better experimental designs, and robust validation to ensure AI-driven methods can reliably enhance food quality assessment and eventually replace traditional techniques (3).
Non-Linear Memory-Based Learning Advances Soil Property Prediction Using vis-NIR Spectral Data
A new study from Zhejiang University has developed a non-linear memory-based learning (N-MBL) model that significantly improves soil property predictions using visible near-infrared (vis-NIR) spectroscopy, a rapid, non-destructive method. Traditional linear models, like partial least squares regression, struggle to capture the complex relationships between soil properties and spectral data (4). N-MBL, tested on a large soil spectral library, outperformed conventional models, especially in predicting soil organic matter and total nitrogen (4). This advancement in non-linear modeling offers a more accurate and reliable approach to soil analysis, with potential benefits for improving agricultural productivity and addressing global food security (4).
Using Multispectral Analysis Combined with Chemometrics to Improve Beer Production
A recent study published in Food Chemistry demonstrates how combining near-infrared (NIR), Raman, and ultraviolet-visible (UV-vis) spectroscopy with chemometrics can enhance beer production efficiency. Researchers from Sichuan University and Wuliangye Group developed a real-time monitoring method for the brewing process of Qingke beer, focusing on key components like sugars, amino nitrogen, and phenols (5). Using neural network and partial least squares models, they achieved precise predictions, improving consistency and quality control in the brewing process (5).
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Drone-Mounted Infrared Camera Sees Invisible Methane Leaks in Real Time
July 9th 2025Researchers in Scotland have developed a drone-mounted infrared imaging system that can detect and map methane gas leaks in real time from up to 13.6 meters away. The innovative approach combines laser spectroscopy with infrared imaging, offering a safer and more efficient tool for monitoring pipeline leaks and greenhouse gas emissions.
How Spectroscopy Drones Are Detecting Hidden Crop Threats in China’s Soybean Fields
July 8th 2025Researchers in Northeast China have demonstrated a new approach using drone-mounted multispectral imaging to monitor and predict soybean bacterial blight disease, offering a promising tool for early detection and yield protection.
Radar and Soil Spectroscopy Boost Soil Carbon Predictions in Brazil’s Semi-Arid Regions
July 7th 2025A new study published in Geoderma demonstrates that combining soil spectroscopy with radar-derived vegetation indices and environmental data significantly improves the accuracy of soil organic carbon predictions in Brazil’s semi-arid regions.
Advancing Deep Soil Moisture Monitoring with AI-Powered Spectroscopy Drones
July 7th 2025A Virginia Tech study has combined drone-mounted NIR hyperspectral imaging (400 nm to 1100 nm) and AI to estimate soil moisture at root depths with remarkable accuracy, paving the way for smarter irrigation and resilient farming.
AI Boosts SERS for Next Generation Biomedical Breakthroughs
July 2nd 2025Researchers from Shanghai Jiao Tong University are harnessing artificial intelligence to elevate surface-enhanced Raman spectroscopy (SERS) for highly sensitive, multiplexed biomedical analysis, enabling faster diagnostics, imaging, and personalized treatments.
Artificial Intelligence Accelerates Molecular Vibration Analysis, Study Finds
July 1st 2025A new review led by researchers from MIT and Oak Ridge National Laboratory outlines how artificial intelligence (AI) is transforming the study of molecular vibrations and phonons, making spectroscopic analysis faster, more accurate, and more accessible.