决策支持农林业系统的多智能体知识增强模型

Danilo Cavaliere, S. Senatore
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引用次数: 1

摘要

精准农业(PA)和森林管理(FM)应用需要基于传感器的环境监测来评估被监测区域的植被状况。植被指数(VIs)根据卫星拍摄的光谱图像评估,描绘了一些特征(如植被活力、覆盖度等),但它们不足以描述植被状况,因此需要根据地区物候、纬度和天气将它们结合起来,以正确解释植被状况。此外,异构数据收集可能导致数据集成和互操作性问题。此外,操作员必须在时间关键的情况下监控多个大型环境,因此需要有关发生情况的简短有意义的报告。本文提出了一种基于知识的多智能体方法来处理用户指定感兴趣区域的环境监测并评估其植被状况。该方法采用不同类型的agent来完成数据采集和知识存储、终端用户交互和植被分析完成等任务。最终用户可以请求不同类型的分析,并通过代理管理的GUI将数据传递给系统,因此植被分析是通过使用基于决策树的方法来正确查询基于VIs和上下文数据的知识库,从而构建关于ROI植被状态的报告来进行的。构建的报告包括对其他特征(土壤、天气)的描述,有助于描述检测到的植被状态。几个案例研究证明了该方法的功能和有效性。
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A multi-agent knowledge-enhanced model for decision-supporting agroforestry systems
Precision Agriculture (PA) and Forest Management (FM) applications require sensor-based environment monitoring to assess the vegetation status of monitored areas. Vegetation Indices (VIs), assessed from satellite-taken spectral images, depict some features (e.g., vegetation vigour, coverage, etc.) but they are not enough to describe vegetation status, hence they need to be contextualized according to the area phenology, latitude and weather for correct vegetation status interpretations. Moreover, heterogeneous data collection can cause data integration and interoperability issues. Additionally, human operators, who have to monitor multiple vast environments in time critical contexts, require brief meaningful reports about occurred situations. In this paper a knowledge-based multi-agent approach is presented to deal with environment monitoring of user-specified Regions of Interest (ROIs) and assess their vegetation status. The approach employs different types of agents to carry out various tasks, including data acquisition and knowledge storing, end-user interaction and vegetation analysis accomplishment. The end-user can request different types of analysis and pass data to the system through an agent-managed GUI, hence vegetation analysis is carried out by using a decision tree-based method to properly query the KB built on VIs and contextual data to consequently build a report about the vegetation status of the ROI. The built report includes a description of other features (soil, weather) that helps depicting the detected vegetation status. Several case studies demonstrate the functioning and efficacy of the approach.
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