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Ultrasound technology supplements zinc in soybean seeds and increases the photosynthetic efficiency of seedlings 超声波技术为大豆种子补锌并提高幼苗的光合效率
IF 7.7 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2024-11-09 DOI: 10.1016/j.compag.2024.109619
Érica Souza Gomes , Gustavo Roberto Fonseca de Oliveira , Arthur Almeida Rodrigues , Camila Graziela Corrêa , Eduardo de Almeida , Hudson Wallace Pereira de Carvalho , Valter Arthur , Edvaldo Aparecido Amaral da Silva , Arthur I. Novikov , Clíssia Barboza Mastrangelo
Strategies to increase the concentration of essential micronutrients for the plant cycle have made a remarkable contribution to agriculture. Ultrasonic waves have the potential to increase cell wall permeability and enhance the chemical composition of seed tissues. In this context, the aim of this study was to verify if it is possible to increase the zinc (Zn) supplementation of soybean seeds through their controlled exposure to ultrasonic waves with improvements in the photosynthetic efficiency (Fv/Fm) of the resulting seedlings. Initially, we investigated the impact of ultrasonic waves on the physical, physiological and spectral parameters of soybean seeds. Next, the seeds were treated with Zn and analyzed by X-ray fluorescence spectroscopy to better understand the kinetics of Zn uptake. Finally, we evaluated the germination, vigor, pigments and photosynthetic performance of seedlings. The main results showed that ultrasound modifies the structure of the seed coat without interfering with the dynamics of water absorption and the germination capacity of the seeds. The changes promoted by the technology favor Zn supplementation of more than 100 % in the seeds. In addition, the resulting seedlings show Fv/Fm values 92.7 % higher than the control, and an increase in chlorophyll fluorescence, initial fluorescence, and anthocyanin. We show that ultrasonic wave technology combined with Zn treatment improves the performance of soybean seeds, producing seedlings with superior photosynthetic efficiency.
提高植物循环所必需的微量营养元素浓度的策略为农业做出了卓越的贡献。超声波具有增加细胞壁渗透性和提高种子组织化学成分的潜力。在这种情况下,本研究的目的是验证是否有可能通过控制大豆种子暴露于超声波来增加其锌(Zn)的补充量,从而提高秧苗的光合效率(Fv/Fm)。首先,我们研究了超声波对大豆种子的物理、生理和光谱参数的影响。接着,用锌处理种子并用 X 射线荧光光谱分析,以更好地了解锌的吸收动力学。最后,我们评估了幼苗的发芽率、活力、色素和光合作用性能。主要结果表明,超声波改变了种皮结构,但不会干扰种子的吸水动力学和发芽能力。该技术促进的变化有利于种子中锌的补充量超过 100%。此外,秧苗的 Fv/Fm 值比对照组高 92.7%,叶绿素荧光、初始荧光和花青素也有所增加。我们的研究表明,超声波技术与锌处理相结合可改善大豆种子的性能,培育出光合效率更高的幼苗。
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引用次数: 0
Predictive models of air temperatures inside a naturally ventilated vehicle transporting weaner pigs 运输断奶猪的自然通风车辆内空气温度的预测模型
IF 7.7 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2024-11-07 DOI: 10.1016/j.compag.2024.109591
Guoxing Chen, Guoqiang Zhang, Li Rong
Maintaining proper interior thermal condition during transportation is vital for animal welfare and sustainability of livestock supply chain. This study investigated the air temperatures inside a multi-deck naturally ventilated vehicle when transporting weaner pigs under warmer weather condition by using computational fluid dynamics (CFD). Predictive models of interior air temperatures were developed by using response surface methodology (RSM) and gradient boosting machine (GBM) with the inputs of exterior air temperature, vehicle speed, wind speed, incident wind angle and opening height of shutter based on the dataset generated from CFD simulations and validated as well. The results showed that predictive models developed by RSM were sufficient for predicting the interior air temperatures of moving naturally ventilated livestock vehicle, and GMB could improve the prediction accuracy moderately. RSM models indicated that the interior temperatures increased linearly with the increase in exterior air temperature, opening height and wind speed while insensitive to vehicle speed. GMB model indicated that the plane-average air temperature of front compartments was 2.2 °C higher than those of the other two compartments at the same deck, and the air temperature increased slightly from the bottom to the upper deck. High spatial variations in air temperature were observed inside the moving livestock vehicle, which poses a challenge on monitoring interior air temperatures. The developed models are expected to predict the interior air temperatures and provide suggestion on regulating ventilation systems in advance. Further study could be conducted to investigate the optimum control of opening for improving the natural ventilation potential.
在运输过程中保持适当的车内温度对动物福利和牲畜供应链的可持续发展至关重要。本研究利用计算流体动力学(CFD)研究了在较暖天气条件下运输断奶猪的多层自然通风车辆内的空气温度。根据 CFD 模拟生成的数据集,使用响应面方法学(RSM)和梯度提升机(GBM),以车外气温、车速、风速、入射风角和百叶窗开启高度为输入,建立了车内气温预测模型,并进行了验证。结果表明,RSM 建立的预测模型足以预测行驶中的自然通风畜牧车的车内温度,而 GMB 可以适度提高预测精度。RSM 模型表明,车内温度随外部气温、开口高度和风速的增加而线性上升,但对车速不敏感。GMB 模型表明,前舱的平面平均气温比同一甲板上的其他两个舱室高 2.2 °C,且气温从下层到上层略有上升。在行驶中的畜力车内观察到空气温度的空间变化很大,这给监测车内空气温度带来了挑战。所开发的模型有望预测车内空气温度,并为提前调节通风系统提供建议。还可以开展进一步的研究,探讨改善自然通风潜力的最佳开口控制。
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引用次数: 0
A meta transfer learning-driven few-shot fault diagnosis method for combine harvester gearboxes 联合收割机变速箱的元迁移学习驱动的少量故障诊断方法
IF 7.7 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2024-11-07 DOI: 10.1016/j.compag.2024.109605
Daoming She , Zhichao Yang , Yudan Duan , Michael G. Pecht
Combine harvester gearboxes operate for extended periods under variable operating conditions, making it costly to gather sufficient fault data. A meta transfer learning-driven fault diagnosis method for combine harvester gearboxes is proposed to solve the complex operating conditions and scarce fault samples. The meta learning is employed to train the model so that the performance of the proposed method is not contingent upon the quantity of training data. The multi-step loss optimization (MSL) method is introduced to improve the inner loop and address the unstable update gradients in training. The enhanced method uses each task to refine the model updating strategy, thus circumventing the gradient explosion and decay. The proposed method employs conditional domain adversarial network to extract deep discriminative features from both domains. The batch feature constraint (BFC) is proposed to balance the features’ transferability and class discriminability. A weight-balancing strategy is employed to reconstruct the training loss function, enabling gearbox fault diagnosis under variable operating conditions with few-shot data. The effectiveness of the proposed method is validated through data collected from the combined harvester gearbox’s fault diagnosis experimental rig.
联合收割机变速箱在多变的工作条件下长期运行,因此收集足够的故障数据成本很高。针对联合收割机变速箱复杂的运行条件和稀缺的故障样本,提出了一种元迁移学习驱动的故障诊断方法。该方法采用元学习来训练模型,因此其性能并不取决于训练数据的数量。引入多步损失优化(MSL)方法来改进内循环,解决训练中更新梯度不稳定的问题。增强型方法利用每个任务来完善模型更新策略,从而避免梯度爆炸和衰减。所提出的方法采用条件域对抗网络从两个域中提取深度判别特征。提出了批量特征约束(BFC)来平衡特征的可转移性和类的可区分性。采用权重平衡策略来重构训练损失函数,从而实现了变速箱故障诊断,且只需少量数据。通过联合收割机齿轮箱故障诊断实验台收集的数据,验证了所提方法的有效性。
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引用次数: 0
Optimization of the front-mounted fertilizer pipe strip rotary tillage device by modeling the wide-seedbed characteristics and power consumption 通过建立宽苗床特性和动力消耗模型,优化前置式施肥管带旋耕装置
IF 7.7 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2024-11-07 DOI: 10.1016/j.compag.2024.109624
Pengfei Zhao , Xiaojun Gao , Xiaoteng Ju , Pengkun Yang , Qingbin Song , Yuxiang Huang , Zhiqi Zheng
Conventional wheat wide-seedbed strip rotary tillage devices face several disadvantages, including low straw cleaning efficiency, inadequate soil pulverization, inconsistent sowing depth, and high-power consumption. Therefore, this study introduces a novel front-mounted fertilizer pipe wide-seedbed strip rotary tillage device. The fertilizer pipe is strategically positioned within the gap between the rotary tillage blade groups, enabling an integrated operation with the rotary tillage blade assembly. To minimize trenching resistance, the design combines the fertilizer pipe with a sliding knife. Through theoretical analysis, this study analyzes the operating principles of the front-mounted fertilizer pipe wide-seedbed strip rotary tillage device, explores the structural characteristics of the Standard strip rotary tillage blade Group (SG) and Trapezoidal straight blade Group (TG), and examines the sources of power consumption during operation. A corresponding discrete element simulation model is constructed, and its validity is confirmed through soil bin experiments. These experiments underscore the model’s effectiveness. Subsequently, the study compares the effects of the SG and TG on the wide-seedbed strip rotary tillage device based on simulation experiments. Additionally, a regression orthogonal rotation combination experimental design is employed to investigate how the rotation speed of the strip rotary tillage blade group, the forward spacing between the fertilizer pipe and blade shaft, and the types of blades affect straw cleaning and soil crushing. Moreover, response surface methodology is employed to clarify the influence of these factors on the experimental outcomes. Optimization results indicate that under a rotation speed of 270 rpm for the strip rotary tillage blade group, a forward spacing of 30 mm, and a combination of SG and TG, the device performs optimally. Under these conditions, it achieves a theoretical straw cleaning rate of 55.38 %, a soil crushing rate of 79.56 %, and a total power consumption of 3.26 kW. These findings support the development and optimization of wheat wide seedling belt sowing devices.
传统的小麦宽苗床条状旋耕装置面临着秸秆清理效率低、土壤粉碎不充分、播种深度不一致、动力消耗大等缺点。因此,本研究引入了一种新型前置式施肥管宽苗床条状旋耕装置。施肥管被巧妙地安置在旋耕刀组之间的缝隙中,实现了与旋耕刀组件的一体化作业。为了最大限度地减少开沟阻力,该设计将施肥管与滑动刀相结合。本研究通过理论分析,分析了前置式施肥管宽苗床带状旋耕装置的工作原理,探讨了标准带状旋耕刀组(SG)和梯形直刀组(TG)的结构特征,并研究了作业过程中的动力消耗源。建立了相应的离散元模拟模型,并通过土仓实验证实了模型的有效性。这些实验证明了模型的有效性。随后,研究根据模拟实验比较了 SG 和 TG 对宽苗床带状旋耕装置的影响。此外,还采用回归正交旋转组合实验设计,研究条带旋耕刀片组的旋转速度、施肥管与刀片轴之间的正向间距以及刀片类型对秸秆清理和土壤粉碎的影响。此外,还采用了响应面方法来阐明这些因素对实验结果的影响。优化结果表明,在条状旋耕刀片组转速为 270 rpm、前进间距为 30 mm 以及 SG 和 TG 组合的条件下,该装置的性能最佳。在这些条件下,该设备的理论秸秆清理率为 55.38%,土壤粉碎率为 79.56%,总功耗为 3.26 千瓦。这些发现为小麦宽苗带播种装置的开发和优化提供了支持。
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引用次数: 0
Design and optimization of a high-speed maize seed guiding device based on DEM-CFD coupling method 基于 DEM-CFD 耦合方法的玉米种子高速导向装置的设计与优化
IF 7.7 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2024-11-07 DOI: 10.1016/j.compag.2024.109604
Hongsheng Li, Li Yang, Dongxing Zhang, Cui Tao, Xiantao He, Chunji Xie, Chuan Li, Zhaohui Du, Tianpu Xiao, Zhimin Li, Haoyu Wang
This study designs a pneumatic seed delivery system for a high-speed corn planter based on the Venturi effect, aimed at improving seeding uniformity and efficiency. By utilizing an external blower to generate airflow, the seeds are accelerated within the seed tube, reducing collisions between seeds and achieving stable seed transport. The research adopts a gas–solid two-phase method to explore the effects of airflow rate and pressure on seed acceleration and delivery, revealing the principles of gas dynamics in seed transportation. DEM-CFD simulation technology, which integrates Discrete Element Method and Computational Fluid Dynamics, is employed to more accurately simulate the physical processes within the granular-fluid system, ensuring rapid acceleration and stable transport of seeds. Through response surface methodology (RSM), the structural parameters of the seed tube were optimized, identifying the main factors and optimal levels influencing seed delivery performance. Experimental results demonstrate that the newly designed seed tube significantly enhances seed movement speed and seeding uniformity under high-speed seeding conditions, confirming its potential application in high-precision planting.
本研究基于文丘里效应为高速玉米播种机设计了一种气动种子输送系统,旨在提高播种的均匀性和效率。通过利用外部鼓风机产生气流,种子在输种管内被加速,减少了种子之间的碰撞,实现了稳定的种子输送。研究采用气固两相法探讨气流速率和压力对种子加速和输送的影响,揭示了种子输送过程中的气体动力学原理。采用离散元法和计算流体动力学相结合的 DEM-CFD 模拟技术,更精确地模拟颗粒-流体系统内的物理过程,确保种子的快速加速和稳定输送。通过响应面方法(RSM),对种子管的结构参数进行了优化,确定了影响种子输送性能的主要因素和最佳水平。实验结果表明,在高速播种条件下,新设计的输种管能显著提高种子移动速度和播种均匀性,证实了其在高精度播种中的应用潜力。
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引用次数: 0
High-throughput phenotypic traits estimation of faba bean based on machine learning and drone-based multimodal data 基于机器学习和无人机多模态数据的高通量蚕豆表型性状评估
IF 7.7 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2024-11-06 DOI: 10.1016/j.compag.2024.109584
Yishan Ji , Zehao Liu , Rong Liu , Zhirui Wang , Xuxiao Zong , Tao Yang
Faba bean is a global food legume crop, and it is essential to accurately and timely determine its plant height, above-ground biomass (fresh and dry weight) and yield for enhancing cultivation practices and planning the next planting season. Traditional ground sampling is a time-consuming and labor-intensive approach. However, the utilization of an unmanned aerial vehicle (UAV) as a high-throughput technique offers a promising alternative strategy for estimating crop phenotypic traits. In this study, a two-year experiment was conducted from 2020 to 2022, where UAV-based multimodal data were collected using red–green–blue, multispectral and thermal infrared sensors. The variables derived from these three sensors and their combinations were used to estimate the fresh weight, dry weight and yield of faba bean based on extreme gradient boosting (XGBoost), random forest, multiple linear regression and k-nearest neighbor algorithms. The following findings were obtained: (1) The use of the maximum percentile crop surface model resulted in the highest estimation accuracy for faba bean plant height. (2) Fusion data from multiple sensors increased the estimation accuracy of faba bean fresh weight, dry weight and yield, the coefficient of determination (R2) improved by 14.22%, 1.45%, and 18.76%, respectively, compared with the best estimation accuracy of a single sensor. (3) The XGBoost algorithm outperformed the other algorithms in estimating fresh weight, dry weight and yield of faba bean. These results demonstrate that multiple sensors and appropriate algorithms can be used to effectively estimate faba bean phenotypic traits and provide valuable insights for agricultural remote sensing research.
咖啡豆是一种全球性的食用豆类作物,准确及时地测定其株高、地上生物量(鲜重和干重)和产量对于改进种植方法和规划下一种植季节至关重要。传统的地面采样耗时耗力。然而,利用无人驾驶飞行器(UAV)作为一种高通量技术,为估测作物表型特征提供了一种前景广阔的替代策略。本研究从 2020 年到 2022 年进行了为期两年的实验,使用红-绿-蓝、多光谱和热红外传感器收集基于无人机的多模态数据。基于极端梯度提升算法(XGBoost)、随机森林算法、多元线性回归算法和 k 近邻算法,利用这三种传感器及其组合得出的变量来估算蚕豆的鲜重、干重和产量。结果如下:(1)使用最大百分位数作物表面模型对蚕豆株高的估计精度最高。(2)融合多个传感器的数据提高了蚕豆鲜重、干重和产量的估算精度,与单个传感器的最佳估算精度相比,决定系数(R2)分别提高了 14.22%、1.45% 和 18.76%。(3) 在估算蚕豆鲜重、干重和产量方面,XGBoost 算法优于其他算法。这些结果表明,多个传感器和适当的算法可用于有效估计蚕豆的表型性状,并为农业遥感研究提供有价值的见解。
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引用次数: 0
A review of unmanned aerial vehicle based remote sensing and machine learning for cotton crop growth monitoring 基于无人机遥感和机器学习的棉花作物生长监测综述
IF 7.7 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2024-11-06 DOI: 10.1016/j.compag.2024.109601
Nueraili Aierken , Bo Yang , Yongke Li , Pingan Jiang , Gang Pan , Shijian Li
Cotton is one of the world’s most economically significant crops. Evaluating and monitoring cotton crop growth play vital roles in precision agriculture. Unmanned aerial vehicle (UAV) based remote sensing, when integrated with machine learning technologies, exhibits considerable promise for crop growth management. Despite these technologies’ substantial impact on cotton production, there exists a scarcity of consolidated information regarding various methods used. This paper offers a comprehensive review and analysis focused on methods for monitoring and evaluating cotton growth using UAV-based imagery combined with machine learning techniques. We synthesize the existing research from the past decade within this context, particularly discussing data acquisition strategies, preprocessing methods necessary for handling UAV-acquired images effectively, and a range of machine learning models applied. This investigation offers a comprehensive outlook that could guide future research efforts towards more efficient and sustainable agricultural practices in cotton production, leveraging state-of-the-art technology.
棉花是世界上最具经济价值的作物之一。评估和监测棉花作物生长情况在精准农业中发挥着至关重要的作用。基于无人机(UAV)的遥感技术与机器学习技术相结合,在作物生长管理方面大有可为。尽管这些技术对棉花生产具有重大影响,但有关各种方法的综合信息却十分匮乏。本文对利用无人机图像结合机器学习技术监测和评估棉花生长的方法进行了全面回顾和分析。在此背景下,我们对过去十年的现有研究进行了总结,特别讨论了数据采集策略、有效处理无人机采集图像所需的预处理方法以及所应用的一系列机器学习模型。这项调查提供了一个全面的展望,可以指导未来的研究工作,利用最先进的技术,在棉花生产中实现更高效、更可持续的农业实践。
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引用次数: 0
Image quality safety model for the safety of the intended functionality in highly automated agricultural machines 高度自动化农业机械预期功能安全的图像质量安全模型
IF 7.7 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2024-11-06 DOI: 10.1016/j.compag.2024.109622
Changjoo Lee , Simon Schätzle , Stefan Andreas Lang , Timo Oksanen
Achieving safe and reliable environmental perception is crucial for the success of highly automated or even autonomous agricultural machinery. However, developing such a system is challenging due to the inherent limitations of perception sensors. In certain conditions, these sensors may fail to capture accurate data, leading to erroneous perceptions of the environment and potentially compromising safety. Monitoring the functional insufficiencies of the measurement data is crucial for ensuring the safety and reliability of perception systems.
This article introduces ISO standards, which provide guidelines for ensuring functional safety in highly automated mobile machines and vehicles. It also proposes an Image Quality Safety Model (IQSM) for monitoring the safety of the intended functionality in perception systems. The IQSM estimates the confidence level with which a camera can safely perform a specific object detection task. If the confidence level falls below a predefined threshold, the IQSM can trigger actions, alert operators, and prevent potential safety hazards. The IQSM exhibits remarkable performance, achieving a validation accuracy of about 90%, demonstrating its ability to effectively distinguish the safety of the intended functionality under a variety of image quality conditions.
实现安全可靠的环境感知对于高度自动化甚至自主农业机械的成功至关重要。然而,由于感知传感器固有的局限性,开发这样的系统极具挑战性。在某些条件下,这些传感器可能无法捕捉到准确的数据,从而导致对环境的错误感知,并可能危及安全。监测测量数据的功能缺陷对于确保感知系统的安全性和可靠性至关重要。本文介绍了 ISO 标准,这些标准为确保高度自动化的移动机器和车辆的功能安全提供了指导。文章还提出了一种图像质量安全模型(IQSM),用于监控感知系统中预期功能的安全性。IQSM 可估算摄像头安全执行特定物体检测任务的置信度。如果置信度低于预定阈值,IQSM 就会触发行动,提醒操作人员并防止潜在的安全隐患。IQSM 性能卓越,验证准确率达到约 90%,证明了其在各种图像质量条件下有效区分预期功能安全性的能力。
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引用次数: 0
A general image classification model for agricultural machinery trajectory mode recognition 用于农业机械轨迹模式识别的通用图像分类模型
IF 7.7 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2024-11-06 DOI: 10.1016/j.compag.2024.109629
Weixin Zhai , Zhi Xu , Jiawen Pan , Zhou Guo , Caicong Wu
Field-road trajectory classification is a crucial task for agricultural machinery behavior mode recognition, aiming to distinguish field operation mode and road driving mode automatically. However, the imbalanced distribution of agricultural machine trajectories brings challenges for the field-road trajectory classification task. Additionally, most existing field-road trajectory classification methods have certain shortcomings. For instance, they encounter difficulties in accurately representing the state of agricultural machinery movement using the current features. The data transformation process often leads to information loss, and the model’s generalization capabilities are limited. The performance of the models is constrained by each of these elements. To address these shortcomings, this paper introduces a general image classification model for agricultural machinery trajectory mode recognition named ATRNet. First, to address the issue of imbalanced field-road proportions in agricultural machinery trajectory data, a Conditional Tabular Generative Adversarial Network (CTGAN) is employed to generate quasi trajectories, balancing the distribution of positive and negative samples in the data. This step aims to eliminate biases during the model training process. Second, to accurately characterize the motion status of agricultural machinery, we propose a multiangle feature enhancement method to extract rich spatiotemporal features from trajectory data. Finally, different from conventional field-road trajectory classification models that primarily rely on spatial and temporal information for identifying trajectories, we present a lossless trajectory data representation paradigm. This paradigm maps each trajectory point into a “feature map” and uses an image classification model to capture latent feature representations of trajectory points for the recognition of different behavior modes of agricultural machinery. This paradigm can generalize image classification networks to the field-road trajectory classification task, providing a general vision model solution for agricultural machinery trajectory mode recognition. To validate the effectiveness of the ATRNet model, experiments were conducted on real corn and wheat harvester trajectory datasets. The results demonstrate that the proposed model achieves remarkable performance improvements over the state-of-the-art (SOTA) models. In the corn harvester trajectory dataset, ATRNet achieves an accuracy of 92.36% and an F1-score of 92.34%, surpassing existing SOTA models by 3.12% and 12.46%, respectively. Similarly, in the wheat harvester trajectory dataset, ATRNet achieves an accuracy of 92.36% and an F1-score of 92.33%, outperforming the existing optimal algorithm by 4.76% and 18.18%, respectively.
田间-道路轨迹分类是农业机械行为模式识别的一项重要任务,旨在自动区分田间作业模式和道路行驶模式。然而,农机轨迹分布的不平衡性给田间-道路轨迹分类任务带来了挑战。此外,现有的田间-道路轨迹分类方法大多存在一定的缺陷。例如,它们在利用当前特征准确表示农业机械运动状态时遇到了困难。数据转换过程往往会导致信息丢失,模型的泛化能力有限。这些因素都制约了模型的性能。针对这些不足,本文介绍了一种用于农业机械轨迹模式识别的通用图像分类模型,命名为 ATRNet。首先,针对农业机械轨迹数据中田间与道路比例失调的问题,采用条件表生成对抗网络(Conditional Tabular Generative Adversarial Network,CTGAN)生成准轨迹,平衡数据中正负样本的分布。这一步骤旨在消除模型训练过程中的偏差。其次,为了准确描述农业机械的运动状态,我们提出了一种多角度特征增强方法,从轨迹数据中提取丰富的时空特征。最后,与主要依靠时空信息识别轨迹的传统田间道路轨迹分类模型不同,我们提出了一种无损轨迹数据表示范式。该范式将每个轨迹点映射为 "特征图",并使用图像分类模型捕捉轨迹点的潜在特征表征,以识别农业机械的不同行为模式。该范例可将图像分类网络推广到田间道路轨迹分类任务中,为农业机械轨迹模式识别提供通用视觉模型解决方案。为了验证 ATRNet 模型的有效性,我们在真实的玉米和小麦收割机轨迹数据集上进行了实验。结果表明,与最先进的(SOTA)模型相比,所提出的模型在性能上有显著提高。在玉米收割机轨迹数据集中,ATRNet 的准确率达到 92.36%,F1 分数达到 92.34%,分别比现有的 SOTA 模型高出 3.12% 和 12.46%。同样,在小麦收割机轨迹数据集中,ATRNet 的准确率达到 92.36%,F1 分数达到 92.33%,分别比现有最优算法高出 4.76% 和 18.18%。
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引用次数: 0
Assessing traditional and machine learning methods to smooth and impute device-based body condition score throughout the lactation in dairy cows 评估传统方法和机器学习方法,以平滑和估算奶牛整个泌乳期基于设备的体况评分
IF 7.7 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2024-11-06 DOI: 10.1016/j.compag.2024.109599
J. Chelotti , H. Atashi , M. Ferrero , C. Grelet , H. Soyeurt , L. Giovanini , H.L. Rufiner , N. Gengler
Regular monitoring of body condition score (BCS) changes during lactation is an essential management tool in dairy cattle; however, the current BCS measurements are often discontinuous and unevenly spaced in time. The imputation of BCS values is useful for two main reasons: i) achieving completeness of data is necessary to be able to relate BCS to other traits (e.g. milk yield and milk composition) that have been routinely recorded at different times and with a different frequency, and ii) having expected BCS values provides the possibility to trigger early warnings for animals with certain unexpected conditions. The contribution of this study was to propose and evaluate potential methods useful to smooth and impute device-based BCS values recorded during lactation in dairy cattle. In total, 26,207 BCS records were collected from 3,038 cows (9,199 and 14,462 BCS records on 1,546 Holstein and 1,211 Montbéliarde cows respectively, and the rest corresponded to other minority cattle breeds). Six methods were evaluated to predict BCS values: the traditional methods of test interval method (TIM), and multiple-trait procedure (MTP), and the machine learning (ML) methods of multi-layer perceptron (MLP), Elman network (Elman), long-short term memories (LSTM) and bi-directional LSTM (BiLSTM). The performance of each method was evaluated by a hold-out validation approach using statistics of the root mean squared error (RMSE) and Pearson correlation (r). TIM, MTP, MLP, and BiLSTM were assessed for the imputation of intermediate missing values, while MTP, Elman, and LSTM were evaluated for the forecasting of future BCS values. Regarding the machine learning methods, BiLSTM demonstrated the best performance for the intermediate value imputation task (RMSE = 0.295, r = 0.845), while LSTM demonstrated the best performance for the future value forecasting task (RMSE = 0.356, r = 0.751). Among the methods evaluated, MTP showed the best performance for imputation of intermediate missing values in terms of RMSE (0.288) and r (0.856). MTP also achieved the best performance for forecasting of future BCS values in terms of RMSE (0.348) and r (0.760). This study demonstrates the ability of MTP and machine learning methods to impute missing BCS data and provides a cost-effective solution for the application area.
定期监测泌乳期体况评分(BCS)的变化是奶牛的一项基本管理工具;然而,目前的 BCS 测量通常不连续,时间间隔也不均匀。BCS值的估算之所以有用,主要有两个原因:i)数据的完整性是将BCS与其他性状(如产奶量和乳成分)联系起来的必要条件,这些性状在不同时间以不同频率被常规记录;ii)预期的BCS值提供了对出现某些意外情况的动物发出预警的可能性。这项研究的目的是提出并评估潜在的方法,用于平滑和估算奶牛泌乳期记录的基于设备的 BCS 值。本研究共收集了 3038 头奶牛的 26207 条 BCS 记录(其中 1546 头荷斯坦奶牛和 1211 头蒙贝利亚德奶牛分别有 9199 条和 14462 条 BCS 记录,其余为其他少数牛种)。对六种预测 BCS 值的方法进行了评估:传统的测试区间法 (TIM) 和多性状程序 (MTP),以及机器学习 (ML) 方法:多层感知器 (MLP)、Elman 网络 (Elman)、长短期记忆 (LSTM) 和双向 LSTM (BiLSTM)。采用均方根误差(RMSE)和皮尔逊相关性(r)的统计数据,通过保持验证方法对每种方法的性能进行了评估。TIM、MTP、MLP 和 BiLSTM 被评估用于中间缺失值的估算,而 MTP、Elman 和 LSTM 被评估用于未来 BCS 值的预测。在机器学习方法中,BiLSTM 在中间值估算任务中表现最佳(RMSE = 0.295,r = 0.845),而 LSTM 在未来值预测任务中表现最佳(RMSE = 0.356,r = 0.751)。在所评估的方法中,MTP 在中间缺失值估算方面的 RMSE(0.288)和 r(0.856)表现最佳。在预测未来 BCS 值方面,MTP 的 RMSE(0.348)和 r(0.760)也表现最佳。这项研究证明了 MTP 和机器学习方法对 BCS 数据缺失的补偿能力,并为该应用领域提供了一种经济高效的解决方案。
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Computers and Electronics in Agriculture
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