Agricultural Chemicals
Locust swarms may meet their match in protein-enriched crops
The specialized crops could save farmers millions. A swarm of desert locusts fly after an aircraft sprayed pesticide in Meru, Kenya in 2021. Breakthroughs, discoveries, and DIY tips sent six days a week. Swarms of locusts devouring a farmer's livelihood might sound apocalyptic, but major locust infestations are a regular problem in agricultural communities around the world. These locust swarms--dense, droning packs of certain grasshopper species--can cover hundreds of square miles, and the insects consume vast amounts of vegetation and threaten global agriculture.
- Africa > Kenya > Meru County > Meru (0.25)
- Africa > Senegal (0.06)
- North America > United States > Massachusetts (0.05)
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- Food & Agriculture > Agriculture (1.00)
- Materials > Chemicals > Agricultural Chemicals (0.71)
Swiss startup turns urine into plant fertilizer
The space-inspired wastewater treatment uses the nutrients and loses the odor. Breakthroughs, discoveries, and DIY tips sent every weekday. When most people need to go number one, they find the nearest bathroom and don't give half a thought to what happens to their pee once it disappears down the toilet or urinal . It turns out that the nitrogen in human urine can be used in fertilizer. However, humanity's use of nitrogen is everything but efficient, according to a pair of siblings who founded the Swiss start-up company, VunaNexus.
- Europe > Switzerland (0.05)
- Asia > Middle East > Republic of Türkiye (0.05)
- Food & Agriculture > Agriculture (0.91)
- Water & Waste Management > Water Management (0.76)
- Materials > Chemicals > Agricultural Chemicals (0.64)
Modular, On-Site Solutions with Lightweight Anomaly Detection for Sustainable Nutrient Management in Agriculture
Cohen, Abigail R., Sun, Yuming, Qin, Zhihao, Muriki, Harsh S., Xiao, Zihao, Lee, Yeonju, Housley, Matthew, Sharkey, Andrew F., Ferrarezi, Rhuanito S., Li, Jing, Gan, Lu, Chen, Yongsheng
Efficient nutrient management is critical for crop growth and sustainable resource consumption (e.g., nitrogen, energy). Current approaches require lengthy analyses, preventing real-time optimization; similarly, imaging facilitates rapid phenotyping but can be computationally intensive, preventing deployment under resource constraints. This study proposes a flexible, tiered pipeline for anomaly detection and status estimation (fresh weight, dry mass, and tissue nutrients), including a comprehensive energy analysis of approaches that span the efficiency-accuracy spectrum. Using a nutrient depletion experiment with three treatments (T1-100%, T2-50%, and T3-25% fertilizer strength) and multispectral imaging (MSI), we developed a hierarchical pipeline using an autoencoder (AE) for early warning. Further, we compared two status estimation modules of different complexity for more detailed analysis: vegetation index (VI) features with machine learning (Random Forest, RF) and raw whole-image deep learning (Vision Transformer, ViT). Results demonstrated high-efficiency anomaly detection (73% net detection of T3 samples 9 days after transplanting) at substantially lower energy than embodied energy in wasted nitrogen. The state estimation modules show trade-offs, with ViT outperforming RF on phosphorus and calcium estimation (R2 0.61 vs. 0.58, 0.48 vs. 0.35) at higher energy cost. With our modular pipeline, this work opens opportunities for edge diagnostics and practical opportunities for agricultural sustainability.
- North America > United States > Georgia > Clarke County > Athens (0.14)
- North America > United States > Georgia > Fulton County > Atlanta (0.04)
- North America > United States > Texas > Ellis County (0.04)
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- Research Report > New Finding (1.00)
- Research Report > Experimental Study (0.68)
- Food & Agriculture > Agriculture (1.00)
- Energy (1.00)
- Government > Regional Government > North America Government > United States Government (0.46)
- Materials > Chemicals > Agricultural Chemicals (0.34)
Rapid Machine Learning-Driven Detection of Pesticides and Dyes Using Raman Spectroscopy
Binh, Quach Thi Thai, Phuoc, Thuan, Hai, Xuan, Phan, Thang Bach, Thu, Vu Thi Hanh, Hung, Nguyen Tuan
The extensive use of pesticides and synthetic dyes poses critical threats to food safety, human health, and environmental sustainability, necessitating rapid and reliable detection methods. Raman spectroscopy offers molecularly specific fingerprints but suffers from spectral noise, fluorescence background, and band overlap, limiting its real-world applicability. Here, we propose a deep learning framework based on ResNet-18 feature extraction, combined with advanced classifiers, including XGBoost, SVM, and their hybrid integration, to detect pesticides and dyes from Raman spectroscopy, called MLRaman. The MLRaman with the CNN-XGBoost model achieved a predictive accuracy of 97.4% and a perfect AUC of 1.0, while it with the CNN-SVM model provided competitive results with robust class-wise discrimination. Dimensionality reduction analyses (PCA, t-SNE, UMAP) confirmed the separability of Raman embeddings across 10 analytes, including 7 pesticides and 3 dyes. Finally, we developed a user-friendly Streamlit application for real-time prediction, which successfully identified unseen Raman spectra from our independent experiments and also literature sources, underscoring strong generalization capacity. This study establishes a scalable, practical MLRaman model for multi-residue contaminant monitoring, with significant potential for deployment in food safety and environmental surveillance.
- Asia > Vietnam > Hồ Chí Minh City > Hồ Chí Minh City (0.05)
- Asia > Vietnam > Thái Bình Province > Thái Bình (0.04)
- Asia > Vietnam > Bình Thuận Province (0.04)
- Asia > Taiwan > Taiwan Province > Taipei (0.04)
- Materials > Chemicals > Agricultural Chemicals (1.00)
- Health & Medicine (1.00)
- Food & Agriculture > Agriculture > Pest Control (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Statistical Learning (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Performance Analysis > Accuracy (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (1.00)
Hardware-Aware YOLO Compression for Low-Power Edge AI on STM32U5 for Weeds Detection in Digital Agriculture
Kouzinopoulos, Charalampos S., Manna, Yuri
Abstract--Weeds significantly reduce crop yields worldwide and pose major challenges to sustainable agriculture. Traditional weed management methods, primarily relying on chemical herbicides, risk environmental contamination and lead to the emergence of herbicide-resistant species. Precision weeding, leveraging computer vision and machine learning methods, offers a promising eco-friendly alternative but is often limited by reliance on high-power computational platforms. This work presents an optimized, low-power edge AI system for weeds detection based on the YOLOv8n object detector deployed on the STM32U575ZI microcontroller . Several compression techniques are applied to the detection model, including structured pruning, integer quantization and input image resolution scaling in order to meet strict hardware constraints. The model is trained and evaluated on the CropAndWeed dataset with 74 plant species, achieving a balanced trade-off between detection accuracy and efficiency. Our system supports real-time, in-situ weeds detection with a minimal energy consumption of 51.8mJ per inference, enabling scalable deployment in power-constrained agricultural environments. EEDS are widespread and persistent plants, known for their rapid reproduction and effective seed dispersal strategies. They are among the primary contributors to crop yield loss globally, posing a significant challenge for farmers and agricultural stakeholders [1].
- Europe > Netherlands > Limburg > Maastricht (0.04)
- Europe > Austria (0.04)
- Materials > Chemicals > Agricultural Chemicals (0.54)
- Food & Agriculture > Agriculture > Pest Control (0.54)
Cultivating Pluralism In Algorithmic Monoculture: The Community Alignment Dataset
Zhang, Lily Hong, Milli, Smitha, Jusko, Karen, Smith, Jonathan, Amos, Brandon, Bouaziz, Wassim, Revel, Manon, Kussman, Jack, Sheynin, Yasha, Titus, Lisa, Radharapu, Bhaktipriya, Yu, Jane, Sarma, Vidya, Rose, Kris, Nickel, Maximilian
How can large language models (LLMs) serve users with varying preferences that may conflict across cultural, political, or other dimensions? To advance this challenge, this paper establishes four key results. First, we demonstrate, through a large-scale multilingual human study with representative samples from five countries (N=15,000), that humans exhibit significantly more variation in preferences than the responses of 21 state-of-the-art LLMs. Second, we show that existing methods for preference dataset collection are insufficient for learning the diversity of human preferences even along two of the most salient dimensions of variability in global values, due to the underlying homogeneity of candidate responses. Third, we argue that this motivates the need for negatively-correlated sampling when generating candidate sets, and we show that simple prompt-based techniques for doing so significantly enhance the performance of alignment methods in learning heterogeneous preferences. Fourth, based on this novel candidate sampling approach, we collect and open-source Community Alignment, the largest and most representative multilingual and multi-turn preference dataset to date, featuring almost 200,000 comparisons from annotators spanning five countries. We hope that the Community Alignment dataset will be a valuable resource for improving the effectiveness of LLMs for a diverse global population.
- Europe > Austria > Vienna (0.13)
- Asia > India (0.04)
- South America > Brazil (0.04)
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- Overview (0.92)
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- Water & Waste Management > Water Management > Water Supplies & Services (1.00)
- Media > Music (1.00)
- Materials > Chemicals > Agricultural Chemicals (1.00)
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Towards Rational Pesticide Design with Graph Machine Learning Models for Ecotoxicology
This research focuses on rational pesticide design, using graph machine learning to accelerate the development of safer, eco-friendly agrochemicals, inspired by in silico methods in drug discovery. With an emphasis on ecotoxicology, the initial contributions include the creation of ApisTox, the largest curated dataset on pesticide toxicity to honey bees. We conducted a broad evaluation of machine learning (ML) models for molecular graph classification, including molecular fingerprints, graph kernels, GNNs, and pretrained transformers. The results show that methods successful in medicinal chemistry often fail to generalize to agrochemicals, underscoring the need for domain-specific models and benchmarks. Future work will focus on developing a comprehensive benchmarking suite and designing ML models tailored to the unique challenges of pesticide discovery.
- Europe > Poland > Lesser Poland Province > Kraków (0.15)
- Asia > South Korea > Seoul > Seoul (0.05)
- North America > United States > New York > New York County > New York City (0.04)
- Europe > Switzerland (0.04)
- Materials > Chemicals > Agricultural Chemicals (1.00)
- Health & Medicine > Pharmaceuticals & Biotechnology (1.00)
- Food & Agriculture > Agriculture > Pest Control (1.00)
Meet the Ethiopian entrepreneur who is reinventing ammonia production
After growing up without reliable power at home, Iwnetim Abate is working to develop a steady supply of sustainable energy. "I'm the only one who wears glasses and has eye problems in the family," Iwnetim Abate says with a smile as sun streams in through the windows of his MIT office. "I think it's because of the candles." In the small town in Ethiopia where he grew up, Abate's family had electricity, but it was unreliable. So, for several days each week when they were without power, Abate would finish his homework by candlelight. Today, Abate, 32, is an assistant professor at MIT in the department of materials science and engineering.
- Africa > Ethiopia (0.28)
- North America > United States > New Mexico > Los Alamos County > Los Alamos (0.05)
- North America > United States > Minnesota (0.05)
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- Materials > Chemicals > Industrial Gases (1.00)
- Materials > Chemicals > Agricultural Chemicals (1.00)
- Energy (1.00)
- Materials > Chemicals > Commodity Chemicals > Ammonia (0.84)
Non-Linear Model-Based Sequential Decision-Making in Agriculture
Sequential decision-making is central to sustainable agricultural management and precision agriculture, where resource inputs must be optimized under uncertainty and over time. However, such decisions must often be made with limited observations, whereas classical bandit and reinforcement learning approaches typically rely on either linear or black-box reward models that may misrepresent domain knowledge or require large amounts of data. We propose a family of nonlinear, model-based bandit algorithms that embed domain-specific response curves directly into the exploration-exploitation loop. By coupling (i) principled uncertainty quantification with (ii) closed-form or rapidly computable profit optima, these algorithms achieve sublinear regret and near-optimal sample complexity while preserving interpretability. Theoretical analysis establishes regret and sample complexity bounds, and extensive simulations emulating real-world fertilizer-rate decisions show consistent improvements over both linear and nonparametric baselines (such as linear UCB and $k$-NN UCB) in the low-sample regime, under both well-specified and shape-compatible misspecified models. Because our approach leverages mechanistic insight rather than large data volumes, it is especially suited to resource-constrained settings, supporting sustainable, inclusive, and transparent sequential decision-making across agriculture, environmental management, and allied applications. This methodology directly contributes to SDG 2 (Zero Hunger) and SDG 12 (Responsible Consumption and Production) by enabling data-driven, less wasteful agricultural practices.
- Food & Agriculture > Agriculture (1.00)
- Energy > Oil & Gas > Upstream (0.48)
- Materials > Chemicals > Agricultural Chemicals (0.38)