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Sensor development for estimation of biomass yield applied to Miscanthus giganteus.

机译:传感器开发,用于估计应用于芒草的生物量产量。

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摘要

A yield monitor estimates a total amount of biomass per coverage area in kg/m2 as a function of location. However, for herbaceous type crops such as Miscanthus Giganteus (MxG) and switchgrass, directly measuring the biomass entering a harvester in the field is complicated and impractical. Therefore, a novel yield monitoring system was proposed. The approach taken was to employ an indirect measure by determining a volume of biomass entering the harvester as a function of time. The volume can be obtained by multiplying the diameter related cross-sectional area, the height and the crop density of MxG. Subsequently, this volume is multiplied by an assumed constant, material density of the crop, which results in a mass flow per unit of time. To determine the coverage area, typically the width of the cutting device is multiplied by the machine speed to give the coverage area per unit of time. The ratio between the mass flow and coverage area is now the yield per area, and adding GPS geo-references the yield.;To measure the height of MxG stems, a light detection and ranging (LIDAR) sensor based height measurement approach was developed. The LIDAR was applied to scan to the MxG vertically. Two measurement modes: static and dynamic, were designed and tested. A geometrical MxG height measurement model was developed and analyzed to obtain the resolution of the height measurement. An inclination correction method was proposed to correct errors caused by the uneven ground surface. The relationship between yield and stem height was discussed and analyzed, resulting in a linear relationship.;To estimate the MxG stem diameter, two types of sensors were developed and evaluated. Firstly, a LIDAR based diameter sensor was designed and tested. The LIDAR was applied to scan MxG stems horizontally. A measurement geometry model of the LIDAR was developed to determine the region of interest. An angle continuity based pre-grouping algorithm was applied to group the raw data from the LIDAR. Based on the analysis of the presentation of MxG stems in the LIDAR data, a fuzzy clustering technique was developed to identify the MxG stems within the clusters. The diameter was estimated based on the clustering result. Four types of clustering techniques were compared. Based on their performances, the Gustafson-Kessel Clustering algorithm was selected. A drawback of the LIDAR based diameter sensor was that it could only be used for static diameter measurement. An alternative system based on a machine vision based diameter sensor, which supported the dynamic measurement, was applied. A binocular stereo vision based diameter sensor and a structured lighting-based monocular vision diameter estimation system were developed and evaluated in sequence. Both systems worked with structured lighting provided by a downward slanted laser sheet to provide detectable features in the images. An image segmentation based algorithm was developed to detect these features. These features were used to identify the MxG stems in both the binocular and monocular based systems.;The crop density estimation was also based on the monocular stereo vision system. To predict the crop density, the geometry perspective model of the sensor unit was further analyzed to calculate the coverage area of the sensor. A Monte Carlo model based method was designed to predict the number of occluded MxG stems based on the number of visible MxG stems in images. The results indicated that the yield has a linear relationship with the number of stems with a zero intercept and the average individual mass as the coefficient.;All sensors were evaluated in the field during the growing seasons of 2009, 2010 and 2011 using manually measured parameters (height, diameter and crop density) as references. The results showed that the LIDAR based height sensor achieved an accuracy of 92% (0.3m error) to 98.2% (0.06m error) in static height measurements and accuracy of 93.5% (0.22m error) to 98.5% (0.05m error) in dynamic height measurements. For the diameter measurements, the machine vision based sensors showed a more accurate result than the LIDAR based sensor. The binocular stereo vision based and monocular vision based diameter measurement achieved an accuracy of 93.1% and 93.5% for individual stem diameter estimation, and 99.8% and 99.9% for average stem diameter estimation, while the achieved accuracy of LIDAR based sensor for average stem diameter estimation was 92.5%. Among three stem diameter sensors, the monocular vision based sensor was recommended due to its higher accuracy and lower cost in both device and computation. The achieved accuracy of machine vision based crop density measurement was 92.2%. (Abstract shortened by UMI.)
机译:产量监控器根据位置来估算每个覆盖区域的生物量总量(kg / m2)。然而,对于诸如芒草(Miscanthus Giganteus,MxG)和柳枝switch这样的草类作物,直接测量进入田间的收割机的生物量是复杂且不切实际的。因此,提出了一种新颖的产量监测系统。所采取的方法是通过确定进入收集器的生物量随时间变化而采用间接措施。可以通过将与直径相关的横截面积,高度和MxG的作物密度相乘来获得体积。随后,将该体积乘以假定的恒定的农作物材料密度,这导致每单位时间的质量流量。为了确定覆盖区域,通常将切割设备的宽度乘以机器速度,以得出每单位时间的覆盖区域。现在,质量流量与覆盖区域之间的比率为每面积的产量,并添加GPS地理参考产量。为了测量MxG茎的高度,开发了一种基于光检测和测距(LIDAR)传感器的高度测量方法。 LIDAR用于垂直扫描MxG。设计和测试了两种测量模式:静态和动态。开发并分析了几何MxG高度测量模型,以获取高度测量的分辨率。提出了一种倾斜校正方法来校正由不平坦地面引起的误差。讨论并分析了产量与茎高之间的关系,得出了线性关系。为了估算MxG茎的直径,开发并评估了两种类型的传感器。首先,设计并测试了基于激光雷达的直径传感器。该激光雷达被应用于水平扫描MxG茎。开发了LIDAR的测量几何模型以确定感兴趣区域。应用基于角度连续性的预分组算法对来自LIDAR的原始数据进行分组。在分析LIDAR数据中MxG茎的表示的基础上,开发了一种模糊聚类技术来识别聚类中的MxG茎。基于聚类结果估计直径。比较了四种类型的聚类技术。根据其性能,选择了Gustafson-Kessel聚类算法。基于LIDAR的直径传感器的一个缺点是它只能用于静态直径测量。应用了基于机器视觉的直径传感器的替代系统,该系统支持动态测量。开发并评估了基于双眼立体视觉的直径传感器和基于结构照明的单眼视觉直径估计系统。两种系统都使用向下倾斜的激光片提供的结构化照明,以在图像中提供可检测的特征。开发了基于图像分割的算法来检测这些特征。这些特征用于在基于双目和单眼的系统中识别MxG茎。作物密度估计也基于单眼立体视觉系统。为了预测作物密度,进一步分析了传感器单元的几何透视模型,以计算传感器的覆盖面积。设计了一种基于蒙特卡洛模型的方法,以基于图像中可见MxG茎的数量来预测被堵塞的MxG茎的数量。结果表明,产量与截距为零的茎秆数量和平均个体质量为系数呈线性关系。;在2009、2010和2011年生长季节,使用人工测量的参数对所有传感器进行了田间评估(高度,直径和农作物密度)作为参考。结果表明,基于LIDAR的高度传感器在静态高度测量中的准确度为92%(0.3m误差)至98.2%(0.06m误差),准确度为93.5%(0.22m误差)至98.5%(0.05m误差)在动态高度测量中。对于直径测量,基于机器视觉的传感器比基于LIDAR的传感器显示出更准确的结果。基于双目立体视觉和基于单眼视觉的直径测量,单个杆直径估计的精度达到93.1%和93.5%,平均杆直径估计的精度达到99.8%和99.9%,而基于LIDAR的传感器平均杆直径的测量精度达到了估计是92.5%。在三个杆直径传感器中,推荐使用基于单眼视觉的传感器,因为它具有更高的精度和更低的设备和计算成本。基于机器视觉的农作物密度测量的准确度为92.2%。 (摘要由UMI缩短。)

著录项

  • 作者

    Zhang, Lei.;

  • 作者单位

    University of Illinois at Urbana-Champaign.;

  • 授予单位 University of Illinois at Urbana-Champaign.;
  • 学科 Agriculture Agronomy.;Engineering Agricultural.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 152 p.
  • 总页数 152
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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