首页> 外文期刊>Acta Horticulturae >Unfold Principal Component Analysis and Functional Unfold Principal Component Analysis for Online Plant Stress Detection
【24h】

Unfold Principal Component Analysis and Functional Unfold Principal Component Analysis for Online Plant Stress Detection

机译:在线植物胁迫检测的展开主成分分析和功能展开主成分分析

获取原文
获取原文并翻译 | 示例
       

摘要

To be able to develop accurate plant-based irrigation scheduling tools, automatic and early detection of plant drought stress is of great importance. In this context, measurements of stem diameter variations are very promising as a source of information. These measurements are sensitive for drought stress, but also depend on changing microclimatic conditions. Specific data mining techniques, such as Unfold Principal Component Analysis (UPCA), have been developed to facilitate monitoring and diagnosing of such large-dimensional data sets. A UPCA model is used in this study to determine whether the measured stem diameter variations deviate from normal conditions due to drought stress. A newer technique, Functional Unfold Principal Component Analysis (FUPCA), combines functional data analysis with UPCA. The function parameters instead of the original data are then analysed by UPCA. The resulting FUPCA model is less complex and more robust compared to the original UPCA model. Moreover, FUPCA can handledays with missing data straightforwardly. The performances of UPCA and FUPCA models for online plant stress detection were investigated and compared to each other. Two pilot-scale setups were conducted: one with an herbaceous and one with a woody species. For both species, UPCA and FUPCA were shown to be applicable for stress detection. Both allowed successful detection days before visible symptoms appeared, while FUPCA exhibited a lesser parametric complexity.
机译:为了能够开发出精确的基于植物的灌溉调度工具,对植物干旱胁迫进行自动和早期检测非常重要。在这种情况下,杆直径变化的测量作为信息来源非常有前途。这些测量对干旱压力敏感,但也取决于不断变化的微气候条件。已经开发了特定的数据挖掘技术,例如展开主成分分析(UPCA),以促进对此类大型数据集的监视和诊断。在本研究中使用UPCA模型来确定测得的茎直径变化是否因干旱胁迫而偏离正常条件。一种新技术,功能展开主成分分析(FUPCA),将功能数据分析与UPCA相结合。然后,UPCA会分析功能参数而不是原始数据。与原始UPCA模型相比,生成的FUPCA模型更简单,更健壮。而且,FUPCA可以直接处理丢失数据的日子。研究并比较了用于在线植物胁迫检测的UPCA和FUPCA模型的性能。进行了两个中试规模的设置:一个带有草本植物,另一个带有木质物种。对于这两个物种,UPCA和FUPCA被证明适用于压力检测。两者都允许在可见症状出现之前成功检测几天,而FUPCA表现出较小的参数复杂性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号