首页> 外文学位 >Neural network-based crop growth model to predict processing tomato yield on a site-specific basis using remotely sensed data.
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Neural network-based crop growth model to predict processing tomato yield on a site-specific basis using remotely sensed data.

机译:基于神经网络的作物生长模型可使用遥感数据在特定地点预测番茄的加工产量。

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摘要

Remote sensing is one of the major data acquisition tools available to rapidly acquire soil and plant related information over a wide area for use in precision agriculture. Green canopy has very specific reflectance characteristics distinguishing it from other materials such as soil and dry vegetative matter. Reflectance values in red (R) and near infra-red (NIR) spectral bands have been widely used for calculating normalized difference vegetation index (NDVI). Many researchers have related NDVI values to plant vigor, water stress, leaf area index (LAI) and/or yield. However, vegetative indices such as NDVI are usually sensitive to background reflectance characteristics. Often soil adjusted vegetation indices (SAVI) are used to minimize the background effect. In this study we have developed a relationship between the processing tomato yield and SAVI based on the R and NIR reflectance. Eight three band (R, NIR and green) aerial images were obtained at approximately two-week intervals during the 2000 processing tomato growing season. These images were analyzed to obtain SAVI values which were in turn related to LAI using regression techniques. A tuned neural network was developed to predict daily LAI values based on the biweekly experimental LAI values derived from aerial images. The coefficients of multiple determination between the actual LAI and neural network predicted LAI values were greater than 0.96 for all 56 grid points. The LAI values were numerically integrated over the whole growing season to obtain cumulative leaf area index days (CLAID). The CLAID values predicted from the neural network correlated very well with experimentally derived CLAID values (coefficient of determination, r2 = 0.83) indicating that the neural network model simulated processing tomato growth well. A crop growth model that was capable of predicting crop yield based on neural network predicted LAI values and CIMIS weather data was developed. Although predicted yield tended to be low where the true yield was low, the coefficient of determination between predicted and experimental yield was poor on a grid point by grid point basis. However, the correlation coefficient improved when a classification technique was used to classify the yield into five (r2 = 0.53) or nine zones (r2 = 0.58). This research clearly shows that aerial images have a great potential in predicting crop yield, if they are used with sound analytical models and properly took into account relevant weather data.
机译:遥感是主要的数据采集工具之一,可用于在广泛的区域内快速采集与土壤和植物相关的信息,以供精密农业使用。绿层具有非常特殊的反射特性,使其与其他材料(例如土壤和干燥的植物性物质)区别开来。红色(R)和近红外(NIR)光谱带中的反射率值已被广泛用于计算归一化差异植被指数(NDVI)。许多研究人员已将NDVI值与植物活力,水分胁迫,叶面积指数(LAI)和/或产量相关。但是,诸如NDVI之类的营养指标通常对背景反射特性敏感。通常使用土壤调节的植被指数(SAVI)来最小化背景影响。在这项研究中,我们基于R和NIR反射率建立了加工番茄产量与SAVI之间的关系。在2000年加工番茄的生长季节中,以大约两周的间隔获得了八个三波段(R,NIR和绿色)航空影像。使用回归技术分析这些图像以获得与LAI相关的SAVI值。基于从航空影像获得的每两周一次的实验LAI值,开发了一种调谐神经网络来预测每日LAI值。对于所有56个网格点,实际LAI与神经网络预测LAI值之间的多重确定系数均大于0.96。在整个生长季节中对LAI值进行数值积分,以获得累积叶面积指数天数(CLAID)。从神经网络预测的CLAID值与实验得出的CLAID值(测定系数,r 2 = 0.83)具有很好的相关性,表明该神经网络模型很好地模拟了番茄的生长过程。开发了一种能够基于神经网络预测的LAI值和CIMIS天气数据来预测作物产量的作物生长模型。尽管在实际产量较低的情况下预测产量往往较低,但是在逐个网格点的基础上,预测产量与实验产量之间的确定系数很差。但是,当使用分类技术将产量分为五个(r 2 = 0.53)或九个区域(r 2 = 0.58)时,相关系数得到改善。这项研究清楚地表明,如果将航空图像与合理的分析模型一起使用并适当考虑相关的气象数据,则它们在预测作物产量方面具有巨大的潜力。

著录项

  • 作者

    Koller, Michal.;

  • 作者单位

    University of California, Davis.;

  • 授予单位 University of California, Davis.;
  • 学科 Engineering Agricultural.; Agriculture Food Science and Technology.; Remote Sensing.
  • 学位 Ph.D.
  • 年度 2003
  • 页码 144 p.
  • 总页数 144
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 农业工程;农产品收获、加工及贮藏;遥感技术;
  • 关键词

  • 入库时间 2022-08-17 11:44:51

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