Latha M, Mandadi Vasavi, Chunduri Kiran Kumar, B. R, John Babu Guttikonda, Rajesh Kumar T
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引用次数: 0
摘要
许多任务都是智能农业的一部分,包括预测作物产量、分析土壤肥力、提出作物建议、管理水资源等等。为了执行智能农业任务,研究人员正在不断创建多个机器学习(ML)模型。在这项工作中,我们将 ML 与物联网相结合。我们使用 UCI 数据集或 Kaggle 数据集来收集数据。在处理表现出不规则模式或包含对分析和决策有重大影响的微小变化的数据时,有必要采用有效的数据预处理方法(如估算和离群值(IO)方法)来管理错综复杂的数据,并确保正确的分析。本研究的目标是通过研究数据处理的特殊数据准备方法,提供更有意义的数据集。预处理完成后,使用基于自适应神经模糊推理系统(ANFIS)、随机神经网络(PNN)和基于聚类的决策树(CBDT)技术的平均方法对数据进行分类。优化建议的集合分类器超参数调整的下一步是采用新的树状结构帕尔森估计器(TPE)。采用建议的基于 TPE 的集合分类法后,准确率提高了 99.4
Machine Learning Based Precision Agriculture using Ensemble Classification with TPE Model
Many tasks are part of smart farming, including predicting crop yields, analysing soil fertility, making crop recommendations, managing water, and many more. In order to execute smart agricultural tasks, researchers are constantly creating several Machine Learning (ML) models. In this work, we integrate ML with the Internet of Things. Either the UCI dataset or the Kaggle dataset was used to gather the data. Effective data pretreatment approaches, such as the Imputation and Outlier (IO) methods, are necessary to manage the intricacies and guarantee proper analysis when dealing with data that exhibits irregular patterns or contains little changes that can have a substantial influence on analysis and decision making. The goal of this research is to provide a more meaningful dataset by investigating data preparation approaches that are particular to processing data. Following the completion of preprocessing, the data is classified using an average approach based on the Ensemble of Adaptive Neuro-Fuzzy Inference System (ANFIS), Random Neural Network (PNN), and Clustering-Based Decision Tree (CBDT) techniques. The next step in optimising the hyperparameter tuning of the proposed ensemble classifier is to employ a new Tree-Structured Parzen Estimator (TPE). Applying the suggested TPE based Ensemble classification method resulted in a 99.4 percent boost in accuracy