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Deep reinforcement learning for unmanned farming dynamic multi-task allocation problem 基于深度强化学习的无人农业动态多任务分配问题
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2026-03-15 Epub Date: 2026-02-05 DOI: 10.1016/j.compag.2026.111439
Baoxian Liang , Lihong Xu , Yu Su , Jianwei Du , Zhichao Deng
Efficient and scalable multi-task allocation presents a fundamental challenge in multi-machine cooperative operation for unmanned farming. Conventional approaches often assume static attributes and fixed-scale instances, thereby facing significant challenges in adapting to the dynamic characteristics of agricultural production processes. To address the dynamic multi-task allocation problem with time windows (DMAPTW), we propose a novel RL framework that automatically learns high-quality scheduling policies. A scale-agnostic representation mechanism is designed to accurately reflect the current system status, ensuring that the derived policy network is scale-agnostic. To enhance adaptability across diverse production environments, a combination method integrating problem-specific dispatching rules is implemented. Concurrently, a dense reward mechanism is proposed to directly associate the optimization objective. Numerical experiments conducted on a comprehensive set of synthetic instances demonstrate that the proposed algorithm exhibits robust flexibility in handling varying production configurations. Furthermore, comparative analyses reveal that this algorithm consistently outperforms meta-heuristic baselines by 28%–40%, indicating superior computational efficiency and robustness.
高效、可扩展的多任务分配是无人农业多机协同作业的根本挑战。传统方法通常假设静态属性和固定规模实例,因此在适应农业生产过程的动态特征方面面临重大挑战。为了解决带时间窗的动态多任务分配问题(DMAPTW),我们提出了一种自动学习高质量调度策略的强化学习框架。设计了尺度不可知表示机制,以准确反映当前系统状态,确保导出的策略网络是尺度不可知的。为了提高对不同生产环境的适应性,实现了一种集成特定问题调度规则的组合方法。同时,提出了一种密集的奖励机制来直接关联优化目标。在一组综合实例上进行的数值实验表明,该算法在处理不同的生产配置方面具有较强的灵活性。此外,对比分析表明,该算法始终优于元启发式基线28%-40%,表明优越的计算效率和鲁棒性。
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引用次数: 0
Optimized aquaculture feeding through matched-filter audio signal processing and machine learning 通过匹配滤波音频信号处理和机器学习优化水产养殖饲养
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2026-03-01 Epub Date: 2026-01-08 DOI: 10.1016/j.compag.2026.111412
Dror Ettlinger-Levy , Shai Kendler , Iris Meiri Ashkenazi , Shay Tal , Barak Fishbain
Accurate feed management in marine aquaculture is critical for maximizing fish growth and minimizing environmental impacts. While previous approaches have leveraged acoustic monitoring and neural network-based classification to assess feeding, these methods often lack scalability and precision for industrial deployment. This study introduces a matched-filter audio signal processing technique, informed by domain knowledge, to continuously quantify fish feeding intensity in gilthead seabream (Sparus aurata) aquaculture. By extracting a species-specific bite acoustic template and applying matched filtering with sliding window aggregation, we generate a robust, continuous feeding intensity label from passive acoustic recordings. Machine learning regression models (XGBoost and Random Forest) validate the approach, demonstrating that environmental and biological variables explain 89% of the variation in feeding intensity. The proposed methodology offers a simple, scalable, and cost-effective solution for real-time feed optimization and welfare monitoring in aquaculture systems. By reducing data dimensionality and enhancing sensitivity to subtle behavioral changes, this framework supports the deployment of advanced data-driven monitoring tools and paves the way for practical integration in commercial aquaculture operations.
在海洋水产养殖中,准确的饲料管理对于最大限度地提高鱼类生长和减少对环境的影响至关重要。虽然以前的方法利用声学监测和基于神经网络的分类来评估进料,但这些方法通常缺乏工业部署的可扩展性和精度。本研究引入一种匹配滤波音频信号处理技术,结合领域知识,对黄颡鱼(Sparus aurata)养殖中的鱼类摄食强度进行连续量化。通过提取特定物种的咬声模板并应用滑动窗口聚合匹配滤波,我们从被动声学记录中生成鲁棒的、连续的进食强度标签。机器学习回归模型(XGBoost和Random Forest)验证了该方法,表明环境和生物变量解释了89%的摄食强度变化。所提出的方法为水产养殖系统中的实时饲料优化和福利监测提供了一种简单、可扩展且具有成本效益的解决方案。通过降低数据维度和提高对细微行为变化的敏感性,该框架支持部署先进的数据驱动监测工具,并为商业水产养殖业务的实际整合铺平道路。
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引用次数: 0
ELSF-DETR: an efficient lightweight network for detecting strawberry flowers pollination status in non-structured greenhouse environments ELSF-DETR:用于检测非结构化温室环境中草莓花授粉状态的高效轻量级网络
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2026-03-01 Epub Date: 2026-01-05 DOI: 10.1016/j.compag.2025.111398
Jing Xu , Xuemin Zhang , Xiaoyan Wang , Hao Song , Yajuan Wang
Accurate and efficient detection of the pollination status of strawberry flowers is essential for intelligent pollination robots, as it directly affects the determination of optimal pollination timing and improves fruit set rates. However, the small size of strawberry anthers, their visual similarity, varied opening states, and complex field environments make pollination status detection highly formidable. To overcome these constraints, this paper presents a streamlined and resource-efficient detection approach (ELSF-DETR), built upon the Real-Time DEtection Transformer (RT-DETR) and specially refined for detecting densely packed and visually similar small objects in agricultural scenes. A lightweight LS-ResNet backbone is constructed to better capture small and densely clustered anther structures in strawberry flowers while reducing model complexity for improved deployment efficiency. In addition, the integration of a P2 detection head with full-kernel convolution enhance the network’s capacity to focus on delicate anther contours and cracking characteristics. Furthermore, the Hierarchical Attention Fusion Block (HAFB) is employed to balance local detail extraction with global context understanding, reducing misjudgments caused by misleading fine-grained features. Lastly, by employing the Wise-IoU (WIoU) loss mechanism, the model achieves improved sensitivity to minor positional discrepancies in visually similar anther objects. Experiments conducted on a self-built strawberry flower dataset demonstrate that ELSF-DETR achieves superior performance, it achieves 88.2 % accuracy, 85.8 % recall, 87.1 % mAP@50, and F1 score of 86.98 %. Relative to the baseline architecture, mAP@50 and F1 improved by 7.1 % and 4.33 %, respectively, while the model parameters and GFLOPs were reduced by 6.86 MB and 13.7 G, meeting the requirements of high precision and low complexity. This work provides practical support for intelligent pollination systems in precision agriculture.
准确、高效地检测草莓花朵的授粉状态对智能授粉机器人至关重要,因为它直接影响到最佳授粉时机的确定和坐果率的提高。然而,由于草莓花药体积小、视觉相似、开放状态多变以及复杂的田间环境,使得授粉状态检测非常困难。为了克服这些限制,本文提出了一种精简且资源高效的检测方法(elf - detr),该方法建立在实时检测变压器(RT-DETR)的基础上,专门用于检测农业场景中密集包装且视觉上相似的小物体。构建了一个轻量级的LS-ResNet骨干网,以更好地捕获草莓花中小而密集的花药结构,同时降低模型复杂性,提高部署效率。此外,P2检测头与全核卷积的集成增强了网络专注于精细花药轮廓和裂纹特征的能力。此外,采用层次注意融合块(HAFB)来平衡局部细节提取和全局上下文理解,减少由误导性细粒度特征引起的误判。最后,通过采用Wise-IoU (WIoU)损失机制,该模型提高了对视觉上相似的花药物体的微小位置差异的灵敏度。在自建的草莓花数据集上进行的实验表明,ELSF-DETR取得了优异的性能,准确率达到88.2%,召回率达到85.8%,mAP@50达到87.1%,F1得分达到86.98%。相对于基准架构,mAP@50和F1分别提高了7.1%和4.33%,模型参数和GFLOPs分别降低了6.86 MB和13.7 G,满足了高精度和低复杂度的要求。本研究为精准农业智能授粉系统提供了实践支持。
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引用次数: 0
Achieving precise cropland parcel extraction from remote sensing images through integration of segment anything model and adaptive mask refinement 将分段任意模型与自适应掩模细化相结合,实现了遥感影像中农田地块的精确提取
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2026-03-01 Epub Date: 2025-12-27 DOI: 10.1016/j.compag.2025.111347
Huibin Li , Jianyu Zhu , Xing Mao , Xueli Hao , Shiyao Li , Qiangyi Yu , Yun Shi , Jianping Qian
The efficient extraction of cropland parcels from satellite imagery is of crucial importance for modern agricultural management. The advent of the Segment Anything Model (SAM) presents the potential to reduce the need for annotations and complex training in the context of cropland extraction. However, SAM faces challenges in handling diverse and heterogeneous cropland types. To address these issues, this study proposes a novel, unsupervised methodology that integrates SAM with an adaptive mask refinement strategy, enabling accurate cropland extraction under minimal supervision. The refinement strategy comprises three key components: (1) an adaptive prompt point module that leverages superpixels to dynamically generate optimised prompt points, (2) an overlap filtering module to eliminate redundant cropland parcels and (3) a boundary-matching stitching module to maintain spatial continuity across image tiles. The efficacy of the method was evaluated using diverse satellite images (∼160  km2) from seven representative regions in China, the United States, and South Africa. Ablation experiment results showed that the proposed approach achieved notable improvements over the baseline SAM, with increases in recall (R), Intersection over Union (IoU) and global total classification errors (GTC) of 0.971, 0.908 and 0.124, respectively. Furthermore, it outperformed five contemporary state-of-the-art methods, achieving a precision (P) of 0.960. The method also generalised well across different cropland configurations, ranging from large, regular parcels (e.g. Xinjiang, Illinois) to fragmented landscapes (e.g. Guangdong, Western Cape). Seasonal analysis confirmed that images captured during the sowing period yielded the highest extraction accuracy. These findings highlight the potential of SAM-based approaches for scalable and accurate cropland parcel mapping in complex agricultural landscapes under low-supervision settings.
从卫星影像中高效提取农田地块对现代农业管理具有重要意义。片段任意模型(SAM)的出现为减少对农田提取背景下注释和复杂训练的需求提供了潜力。然而,在处理多样化和异质性的农田类型方面,SAM面临着挑战。为了解决这些问题,本研究提出了一种新颖的无监督方法,该方法将SAM与自适应掩模细化策略相结合,从而在最小的监督下实现精确的农田提取。该优化策略包括三个关键组件:(1)利用超像素动态生成优化提示点的自适应提示点模块,(2)消除冗余农田地块的重叠过滤模块,以及(3)保持图像块间空间连续性的边界匹配拼接模块。利用来自中国、美国和南非七个代表性地区的不同卫星图像(~ 160 km2)评估了该方法的有效性。消融实验结果表明,该方法与基线SAM相比有显著改善,召回率(R)、交叉比联合(IoU)和全局总分类误差(GTC)分别提高了0.971、0.908和0.124。此外,它优于五种当代最先进的方法,达到0.960的精度(P)。该方法也可以很好地推广到不同的农田配置,从大的、规则的地块(如新疆、伊利诺伊州)到破碎的景观(如广东、西开普省)。季节分析证实,在播种期间捕获的图像产生了最高的提取精度。这些发现突出了基于sam的方法在低监管环境下复杂农业景观中可扩展和精确的农田地块测绘的潜力。
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引用次数: 0
A lightweight deep learning model for synchronized crop stem detection and row segmentation at the seedling stage: Exploring their contribution to agricultural navigation line extraction 苗期作物茎秆同步检测和行分割的轻量级深度学习模型:探讨其对农业导航线提取的贡献
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2026-03-01 Epub Date: 2025-12-31 DOI: 10.1016/j.compag.2025.111385
Xindong Lai , Jianzhi Huang , Yongmei Mo , Hongwei Li , Tianyun Dong , Tao Wu , Deqiang He
Accurate navigation line extraction is fundamental for agricultural robots. However, most existing studies have not explored the synergistic potential of integrating detection and segmentation on navigation line extraction. To address this gap, this study proposes a model named YOLO for Synchronized Stem-Row (YOLO-SSR). The core contributions of our work include a lightweight dual-task network for perception and an adaptive fusion pipeline for navigation. The proposed model simultaneously detects crop stems and segments crop rows. Its architecture incorporates several key innovations. Specifically, tri-path adaptive convolution (TriPAC) modules are integrated into its backbone to facilitate efficient multi-scale feature capture. The detection branch is augmented with space-to-depth convolution (SPDC) to enrich shallow features and dynamic group shuffle transformer (DGST) to refine contextual information. The minimalist segmentation branch reuses optimized features from the detection neck, ensuring high computational efficiency. Furthermore, an adaptive fusion pipeline is developed to precisely extract navigation lines by integrating detection and segmentation outputs. Comparative experiments demonstrate that YOLO-SSR achieves a competitive performance (AP50: 67.2 %, mIoU: 89.71 %), while maintaining a lightweight architecture (2.45 M parameters, 10.5 GFLOPs). Notably, its real-time processing capability is validated on Nvidia Jetson Orin Nano (27.2 FPS), indicating its suitability for resource-constrained edge devices. Moreover, the fused navigation lines yield a mean normalized lateral distance of 0.72 %, outperforming the results obtained from either task individually. This study provides new insights to explore agricultural navigation line extraction, which can further enrich the theoretical and technical foundations for visual navigation of agricultural robots.
精确的导航线提取是农业机器人的基础。然而,现有的研究大多没有探索融合检测和分割在导航线提取中的协同潜力。为了解决这一问题,本研究提出了一个名为YOLO的同步茎行(YOLO- ssr)模型。我们工作的核心贡献包括用于感知的轻量级双任务网络和用于导航的自适应融合管道。该模型同时检测作物茎段和行段。它的架构包含了几个关键的创新。具体来说,三路径自适应卷积(TriPAC)模块集成到其主干中,以促进高效的多尺度特征捕获。检测分支采用空间深度卷积(SPDC)增强浅层特征,采用动态群洗刷变换(DGST)增强上下文信息。最小分割分支重用了检测颈部的优化特征,保证了较高的计算效率。在此基础上,建立了一种自适应融合管道,通过融合检测和分割输出来精确提取导航线路。对比实验表明,ylo - ssr在保持轻量级架构(2.45 M参数,10.5 GFLOPs)的同时,获得了具有竞争力的性能(AP50: 67.2%, mIoU: 89.71%)。值得注意的是,它的实时处理能力在Nvidia Jetson Orin Nano (27.2 FPS)上得到了验证,表明它适合于资源受限的边缘设备。此外,融合导航线产生的平均标准化横向距离为0.72%,优于单独从任何任务获得的结果。本研究为探索农业导航线提取提供了新的见解,可以进一步丰富农业机器人视觉导航的理论和技术基础。
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引用次数: 0
Development of an olfactory analyzer based on hydrophobic quartz crystal microbalance sensors for predicting contamination levels in moldy wheat 基于疏水石英晶体微平衡传感器的霉变小麦污染水平预测嗅觉分析仪的研制
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2026-03-01 Epub Date: 2025-12-30 DOI: 10.1016/j.compag.2025.111393
Yuxin Hou , Shangjun Wang , Jianfei Xing , Linjie Zhou , Huaimeng Chen , Xiuying Tang
Precise assessment of mold contamination levels in wheat is crucial for ensuring its safe storage and quality. This study developed an olfactory analyzer based on a quartz crystal microbalance (QCM) gas sensor to quantify mold contamination levels in wheat during storage. Specifically, based on the characteristic volatiles identified in wheat during different stages of mold growth, namely, 1-octen-3-ol, 4-methyl-2-pentanone, and 3-octanone, anti-humidity molecularly imprinted polymer (MIP) composites were synthesized for modifying the QCM sensor. The prepared QCM sensor showed anti-humidity interference characteristics along with excellent sensitivity and selectivity for target molecules. In addition, the rational and precise air pathway design of the olfactory analyzer contributed to shorter response and recovery times. Using the number of mold colonies in wheat during different stages of mold growth as a physicochemical parameter for quantifying mold levels, we established a regression model to predict wheat mold contamination levels. Compared with the PLSR and RFR models, the NN model showed optimal predictive performance: the R2 and RMSE values of the testing set are 0.94 and 0.1998, respectively, and the RPD value is 4.15. Finally, the model was embedded into the olfactory analyzer. This study provides technical insights for developing high-performance gas sensors to detect early signs of mold contamination in wheat.
准确评估小麦霉菌污染水平对保证小麦的安全储存和质量至关重要。本研究开发了一种基于石英晶体微天平(QCM)气体传感器的嗅觉分析仪,用于定量小麦储存过程中的霉菌污染水平。具体而言,基于小麦霉生长不同阶段的特征挥发物,即1-辛烷-3-醇、4-甲基-2-戊酮和3-辛烷酮,合成了抗湿分子印迹聚合物(MIP)复合材料,对QCM传感器进行了改性。所制备的QCM传感器具有抗湿度干扰的特性,对目标分子具有良好的灵敏度和选择性。此外,合理精确的空气通道设计有助于缩短嗅觉分析仪的响应时间和恢复时间。以小麦霉菌生长不同阶段的菌落数作为量化霉菌水平的理化参数,建立了小麦霉菌污染水平的回归模型。与PLSR和RFR模型相比,NN模型的预测性能最优,测试集的R2和RMSE分别为0.94和0.1998,RPD值为4.15。最后,将模型嵌入到嗅觉分析仪中。该研究为开发高性能气体传感器以检测小麦霉菌污染的早期迹象提供了技术见解。
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引用次数: 0
LeafLoDs: A Self-Adaptive 3-D leaf modeling with enhancing level of details expression LeafLoDs:一个自适应的三维树叶模型,增强了细节表达的水平
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2026-03-01 Epub Date: 2025-12-27 DOI: 10.1016/j.compag.2025.111377
Zhenyang Hui , Yating He , Shuanggen Jin , Wenbo Chen , Haiqing He , Yao Yevenyo Ziggah
Leaves play a crucial role in the growth of plants, both functionally and structurally. To meet the requirements of various levels of detail (LoDs) in leaf modeling for different applications, this paper introduces a self-adaptive 3D leaf modeling method aimed at enhancing LoDs representation. In this paper, a self-adaptive leaf axis determination method is first presented. According to the built leaf axis, feature points including contour points, inner corners, and outer corners are identified. Subsequently, based on these feature points, a multi-level veins generation model is proposed, extracting primary, secondary, and tertiary veins individually by leveraging the geometric and morphological traits of the leaf through a spatial colonization strategy. Hereafter, the three-dimensional leaf modeling achieves different LoDs by incorporating varying degrees of vein structures. To evaluate the effectiveness of the proposed method, both simulated and real datasets are utilized for testing. The simulated datasets consist of leaves from four different types, such as entire, toothed, disercted and digitate demonstrating that the method produces satisfactory results with small area deviation and distance residuals. In the real datasets, seven individual tomatoes with a total of 228 leaves are tested, showing that the proposed modeling approach aligns effectively with real data, with distance residuals mostly falling within -0.4 cm to 0.4 cm from real point clouds. Experimental results also reveal that higher levels of modeling lead to better outcomes due to increased detail from additional veins and feature points incorporated in the modeling process.
叶片在植物的功能和结构上都起着至关重要的作用。为了满足不同应用对叶片建模中不同细节层次(lod)的要求,本文介绍了一种自适应的叶片三维建模方法,旨在增强lod的表示。本文首次提出了一种自适应叶轴确定方法。根据构建的叶轴,识别特征点,包括轮廓点、内角和外角。随后,基于这些特征点,提出了一种多级叶脉生成模型,通过空间定植策略,利用叶片的几何和形态特征,分别提取初级、次级和第三系叶脉。此后,叶片三维建模通过加入不同程度的叶脉结构来实现不同的LoDs。为了评估该方法的有效性,利用模拟和真实数据集进行了测试。模拟数据集包括全叶、齿形叶、断叶和数字化叶四种不同类型的叶片,结果表明,该方法具有较小的面积偏差和距离残差,结果令人满意。在实际数据集中,对7个番茄共228片叶子进行了测试,结果表明,所提出的建模方法与实际数据有效吻合,距离残差大多落在-0.4 cm到0.4 cm之间。实验结果还表明,由于在建模过程中加入了额外的静脉和特征点,更高的建模水平会导致更好的结果。
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引用次数: 0
Winter damage diagnostic modeling based on synthetic vegetation indices from UAV-based multispectral imaging 基于无人机多光谱成像植被综合指数的冬季灾害诊断建模
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2026-03-01 Epub Date: 2025-12-27 DOI: 10.1016/j.compag.2025.111334
Xuechen Li , Alireza Sanaeifar , Nicholas Padilla , Cole Stover , Alec Kowalewski , Eric Watkins , Bryan Runck , Lang Qiao , Ce Yang
Accurate detection of winter damage in turfgrass is essential for proactive management but remains difficult because early-stage injury is faint, irregular, and easily confused with background noise. These characteristics create two major challenges: limited availability of reliable training data and the need for a segmentation model that is highly sensitive to subtle features. To address the data limitation, this study employs a Conditional Deep Convolutional Generative Adversarial Network (cDCGAN) to generate synthetic, high-fidelity vegetation index (VI) maps. Compared with raw spectral bands, VIs are more robust to noise and enhance both dataset diversity and model generalization. To meet the segmentation challenge, we introduce a Transformer-based model with a novel Adaptive Attention Decoder (AAD), which dynamically refines feature representations to improve detection of low-contrast, spatially irregular damage. Field experiments conducted on golf courses in central Oregon, USA, from 2022 to 2023 demonstrate that the proposed pipeline outperforms other advanced deep learning models, achieving an mIoU of 82.47%, an accuracy of 97.85%, a recall of 85.62%, and an F1-score of 88.30%. Overall, this research presents a problem-driven framework that integrates targeted data augmentation with an improved segmentation architecture, offering a robust and accurate solution for early detection of winter damage in precision turfgrass management.
准确检测草坪冬季损伤对于主动管理至关重要,但由于早期损伤微弱、不规则且容易与背景噪声混淆,因此仍然很困难。这些特征带来了两个主要挑战:可靠训练数据的可用性有限,以及对细微特征高度敏感的分割模型的需求。为了解决数据的局限性,本研究采用了条件深度卷积生成对抗网络(cDCGAN)来生成合成的高保真植被指数(VI)地图。与原始光谱波段相比,可视化对噪声的鲁棒性更强,增强了数据集的多样性和模型的泛化。为了应对分割挑战,我们引入了一种基于变压器的模型,该模型带有一种新的自适应注意力解码器(AAD),它可以动态地改进特征表示,以提高对低对比度、空间不规则损伤的检测。2022年至2023年在美国俄勒冈州中部的高尔夫球场进行的现场实验表明,所提出的管道优于其他先进的深度学习模型,mIoU为82.47%,准确率为97.85%,召回率为85.62%,f1分数为88.30%。总体而言,本研究提出了一个问题驱动的框架,将目标数据增强与改进的分割架构相结合,为精确草坪管理中的冬季损害早期检测提供了一个强大而准确的解决方案。
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引用次数: 0
Computer-aided design and DEM-based simulation analysis of a diversion-type precision soybean metering device 导流式大豆精密计量装置的计算机辅助设计与dem仿真分析
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2026-03-01 Epub Date: 2025-12-27 DOI: 10.1016/j.compag.2025.111374
Pengfei Zhao , Xirui Zhang , Xiaojun Gao , Junchang Zhang , Bing Qi , Hua Li , Chao Ji , Silin Cao , Congju Shen
To address the issues of unstable filling performance and poor sowing quality caused by ineffective seed clearing in mechanical soybean metering devices under high-speed operation, a novel high-speed precision metering device featuring seed diversion and pending filling functions was developed. The design introduces the concept of ’directional diversion and seed pending’ in which the sloped seed inlet guides the seeds directionally, while the double-lug hole structure enables orderly filling and temporary pending, thereby significantly enhancing the filling qualification index. Theoretical analysis was conducted to identify key structural parameters influencing seed filling, transportation, pending, and clearing. Orthogonal simulation experiments were performed to evaluate three critical parameters—perturbation angle, sidewall length, and bottom length—using the qualification index and pending index as optimization criteria. The results indicated that optimal seeding performance was achieved at a perturbation angle of − 12.07°, a sidewall length of 5.08 mm, and a bottom length of 15.28 mm. Bench validation experiments conducted at 6–10 km/h showed that the qualification index exceeded 98 %, while the pending index reached 93.47 %, representing an improvement of at least 3.9 percentage points over conventional brush-type metering devices. These results meet the operational requirements for high-speed precision seeding and offer new insights into the design of soybean metering devices.
针对高速运行下大豆机械计量装置因清种效果不佳而导致灌浆性能不稳定和播种质量不佳的问题,研制了一种具有导种和待灌浆功能的高速精密计量装置。设计引入了“定向导流暂种”的概念,倾斜的种子入口引导种子定向,双耳孔结构实现了有序填充和暂挂,显著提高了填充合格指标。通过理论分析,确定了影响种子灌浆、运输、悬置和清除的关键结构参数。采用正交模拟试验对扰动角、侧壁长度和底长3个关键参数进行了评价,并以合格指数和待决指数为优化标准。结果表明:扰动角为- 12.07°、侧壁长为5.08 mm、底长为15.28 mm时播种效果最佳;在6 ~ 10 km/h下进行的台架验证实验表明,合格率超过98%,待定率达到93.47%,比传统电刷式计量装置提高至少3.9个百分点。这些结果满足了高速精密播种的操作要求,为大豆计量装置的设计提供了新的思路。
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引用次数: 0
Few-shot and interpretable agentic framework based on large language models for data-efficient plant phenotyping 基于数据高效植物表型的大语言模型的少镜头和可解释的代理框架
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2026-03-01 Epub Date: 2025-12-27 DOI: 10.1016/j.compag.2025.111382
Wenyi Cai , Fubo Qi , Lingyan Zha , Guanzheng Chen , Jingjin Zhang , Mengxuan Song , Hua Bao
The integration of electronic system into agricultural production can significantly enhance its efficiency and scalability. However, most of the current research focuses on the data acquisition and automated control. The development of expert-level, interpretable decision-making systems remains a challenge, primarily due to the prohibitive requirement for extensive domain-specific labeled data. In this manuscript, a novel agentic framework integrated with Large Language Models is proposed and demonstrated, using seedling assessment as a case study. The framework achieves high predictive accuracy, strong interpretability, and fast-adaption ability, offering a distinct advantage over methods that demand large labeled datasets. An agentic orchestration framework integrated with the Analytic Hierarchy Process and the reasoning ability of the Large Language Models is constructed to automatically derive the raw assessment rating. Based on a score calibration system using few-shot learning with three different types of lettuce, Butterhead, Grand Rapids, and Ramosa Hort, the final rating score can be derived with good prediction accuracy based on a small dataset (less than 20 labelled data). Additionally, three supplementary plant species (Sprout, Ball Brassica, and Rapa Brassica) are used to demonstrate the framework’s rapid adaptation capability. A field experiment guided by the agentic framework is conducted to prove that this seedling assessment system can be applied to help increase yield by more than 20 %. Our framework presents an important attempt towards an intelligent agricultural system that is capable to achieve expert-level and data-efficient decision making, thereby helping to bridge the critical gap between artificial intelligence research and practical agricultural application.
将电子系统集成到农业生产中,可以显著提高农业生产的效率和可扩展性。然而,目前的研究大多集中在数据采集和自动控制方面。开发专家级的、可解释的决策系统仍然是一个挑战,主要是由于对广泛的特定领域标记数据的限制要求。本文以幼苗评估为例,提出并论证了一种集成了大型语言模型的新型代理框架。该框架具有较高的预测精度、较强的可解释性和快速适应能力,与需要大型标记数据集的方法相比具有明显的优势。构建了结合层次分析法和大型语言模型推理能力的代理编排框架,实现了原始评价等级的自动生成。基于使用三种不同类型的莴苣(Butterhead, Grand Rapids和Ramosa Hort)的few-shot学习的评分校准系统,可以基于小数据集(少于20个标记数据)获得具有良好预测精度的最终评级分数。此外,还使用了三种补充植物(芽甘蓝、球甘蓝和油菜)来证明该框架的快速适应能力。在机构框架指导下进行了田间试验,证明该育苗评价系统可帮助增产20%以上。我们的框架提出了对智能农业系统的重要尝试,该系统能够实现专家级和数据高效的决策,从而有助于弥合人工智能研究与实际农业应用之间的关键差距。
{"title":"Few-shot and interpretable agentic framework based on large language models for data-efficient plant phenotyping","authors":"Wenyi Cai ,&nbsp;Fubo Qi ,&nbsp;Lingyan Zha ,&nbsp;Guanzheng Chen ,&nbsp;Jingjin Zhang ,&nbsp;Mengxuan Song ,&nbsp;Hua Bao","doi":"10.1016/j.compag.2025.111382","DOIUrl":"10.1016/j.compag.2025.111382","url":null,"abstract":"<div><div>The integration of electronic system into agricultural production can significantly enhance its efficiency and scalability. However, most of the current research focuses on the data acquisition and automated control. The development of expert-level, interpretable decision-making systems remains a challenge, primarily due to the prohibitive requirement for extensive domain-specific labeled data. In this manuscript, a novel agentic framework integrated with Large Language Models is proposed and demonstrated, using seedling assessment as a case study. The framework achieves high predictive accuracy, strong interpretability, and fast-adaption ability, offering a distinct advantage over methods that demand large labeled datasets. An agentic orchestration framework integrated with the Analytic Hierarchy Process and the reasoning ability of the Large Language Models is constructed to automatically derive the raw assessment rating. Based on a score calibration system using few-shot learning with three different types of lettuce, Butterhead, Grand Rapids, and Ramosa Hort, the final rating score can be derived with good prediction accuracy based on a small dataset (less than 20 labelled data). Additionally, three supplementary plant species (Sprout, Ball Brassica, and Rapa Brassica) are used to demonstrate the framework’s rapid adaptation capability. A field experiment guided by the agentic framework is conducted to prove that this seedling assessment system can be applied to help increase yield by more than 20 %. Our framework presents an important attempt towards an intelligent agricultural system that is capable to achieve expert-level and data-efficient decision making, thereby helping to bridge the critical gap between artificial intelligence research and practical agricultural application.</div></div>","PeriodicalId":50627,"journal":{"name":"Computers and Electronics in Agriculture","volume":"243 ","pages":"Article 111382"},"PeriodicalIF":8.9,"publicationDate":"2026-03-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"145842813","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":1,"RegionCategory":"农林科学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
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Computers and Electronics in Agriculture
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