School of Electronics and Electrical Engineering, Lovely Professional University, Punjab, India.
College of Science and Technology, University of Rwanda, Rwanda.
Comput Math Methods Med. 2022 Aug 30;2022:8434966. doi: 10.1155/2022/8434966. eCollection 2022.
In the farming industry, the Internet of Things (IoT) is crucial for boosting utility. Innovative agriculture practices and medical informatics have the potential to increase crop yield while using the same amount of input. Individuals can benefit from the Internet of Things in various ways. The intelligent farms require the creation of an IoT-based infrastructure based on sensors, actuators, embedded systems, and a network connection. The agriculture sector will gain new advantages from machine learning and IoT data analytics in terms of improving crop output quantity and quality to fulfill rising food demand. This paper described an intelligent medical informatics farming system with predictive data analytics on sensing parameters, utilizing a supervised machine learning approach in an intelligent agricultural system. The four essential components of the proposed approach are the cloud layer, fog layer, edge layer, and sensor layer. The primary goal is to enhance production and provide organic farming by adjusting farming conditions as per plant needs that are considered in experimentation. The use of machine learning on acquired sensor data from a prototype embedded model is investigated for regulating the actuators in the system. Then, an analytics and decision-making system was built at the fog layer, employing two supervised machine learning approaches including classification and regression algorithms using a support vector machine (SVM) and artificial neural network (ANN) for effective computation over the cloud layer. The experimental results are evaluated and analyzed in MATLAB software, and it is found that the classification accuracy using SVM is much better as compared to ANN and other state of art methods.
在农业领域,物联网对于提高效率至关重要。创新的农业实践和医疗信息学有可能在使用相同投入的情况下增加作物产量。个人可以通过多种方式从物联网中受益。智能农场需要基于传感器、执行器、嵌入式系统和网络连接创建基于物联网的基础设施。在提高作物产量和质量以满足不断增长的粮食需求方面,农业部门将从机器学习和物联网数据分析中获得新的优势。本文描述了一种具有传感参数预测数据分析的智能医疗信息学农业系统,该系统在智能农业系统中采用了监督机器学习方法。所提出方法的四个基本组成部分是云层、雾层、边缘层和传感器层。主要目标是通过根据实验中考虑的植物需求调整种植条件来提高产量并提供有机农业。研究了在系统中使用从原型嵌入式模型获得的传感器数据进行机器学习,以调节系统中的执行器。然后,在雾层构建了一个分析和决策系统,使用两种监督机器学习方法,包括使用支持向量机 (SVM) 和人工神经网络 (ANN) 的分类和回归算法,用于在云层上进行有效计算。使用 MATLAB 软件对实验结果进行了评估和分析,结果发现,与 ANN 和其他最先进的方法相比,SVM 的分类准确性要好得多。