Department of Information and Communication Engineering, University of Murcia, 30100 Murcia, Spain.
Sensors (Basel). 2023 Mar 11;23(6):3038. doi: 10.3390/s23063038.
Advances in new technologies are allowing any field of real life to benefit from using these ones. Among of them, we can highlight the IoT ecosystem making available large amounts of information, cloud computing allowing large computational capacities, and Machine Learning techniques together with the Soft Computing framework to incorporate intelligence. They constitute a powerful set of tools that allow us to define Decision Support Systems that improve decisions in a wide range of real-life problems. In this paper, we focus on the agricultural sector and the issue of sustainability. We propose a methodology that, starting from times series data provided by the IoT ecosystem, a preprocessing and modelling of the data based on machine learning techniques is carried out within the framework of Soft Computing. The obtained model will be able to carry out inferences in a given prediction horizon that allow the development of Decision Support Systems that can help the farmer. By way of illustration, the proposed methodology is applied to the specific problem of early frost prediction. With some specific scenarios validated by expert farmers in an agricultural cooperative, the benefits of the methodology are illustrated. The evaluation and validation show the effectiveness of the proposal.
新技术的进步使得现实生活的各个领域都能受益于这些技术的应用。其中,我们可以突出物联网生态系统提供大量信息、云计算提供大规模计算能力以及机器学习技术与软计算框架相结合以纳入智能。它们构成了一组强大的工具,使我们能够定义决策支持系统,从而在广泛的现实问题中改善决策。在本文中,我们专注于农业领域和可持续性问题。我们提出了一种方法,该方法从物联网生态系统提供的时间序列数据开始,在软计算框架内基于机器学习技术对数据进行预处理和建模。所得到的模型将能够在给定的预测范围内进行推断,从而开发出能够帮助农民的决策支持系统。为了说明问题,该方法应用于早期霜冻预测的具体问题。通过农业合作社中专家农民验证的一些特定场景,说明了该方法的优势。评估和验证表明了该提案的有效性。