Huang Ying
Electronic Information School, Wuhan University, Wuhan 430072, China.
School of Automatic Control, Liuzhou Railway Vocational Technical College, Liuzhou 545616, China.
Plants (Basel). 2023 Jun 14;12(12):2309. doi: 10.3390/plants12122309.
Accurate prediction of soil moisture content in tea plantations plays a crucial role in optimizing irrigation practices and improving crop productivity. Traditional methods for SMC prediction are difficult to implement due to high costs and labor requirements. While machine learning models have been applied, their performance is often limited by the lack of sufficient data. To address the challenges of inaccurate and inefficient soil moisture prediction in tea plantations and enhance predictive performance, an improved support-vector-machine- (SVM) based model was developed to predict the SMC in a tea plantation. The proposed model addresses several limitations of existing approaches by incorporating novel features and enhancing the SVM algorithm's performance, which was improved with the Bald Eagle Search algorithm (BES) method for hyper-parameter optimization. The study utilized a comprehensive dataset comprising soil moisture measurements and relevant environmental variables collected from a tea plantation. Feature selection techniques were applied to identify the most informative variables, including rainfall, temperature, humidity, and soil type. The selected features were then used to train and optimize the SVM model. The proposed model was applied to prediction of soil water moisture in a tea plantation in Guangxi State-owned Fuhu Overseas Chinese Farm. Experimental results demonstrated the superior performance of the improved SVM model in predicting soil moisture content compared to traditional SVM approaches and other machine-learning algorithms. The model exhibited high accuracy, robustness, and generalization capabilities across different time periods and geographical locations with R, MSE, and RMSE of 0.9435, 0.0194 and 0.1392, respectively, which helps to enhance the prediction performance, especially when limited real data are available. The proposed SVM-based model offers several advantages for tea plantation management. It provides timely and accurate soil moisture predictions, enabling farmers to make informed decisions regarding irrigation scheduling and water resource management. By optimizing irrigation practices, the model helps enhance tea crop yield, minimize water usage, and reduce environmental impact.
准确预测茶园土壤湿度含量对于优化灌溉措施和提高作物产量起着至关重要的作用。传统的土壤湿度含量预测方法由于成本高和劳动力需求大而难以实施。虽然机器学习模型已被应用,但其性能往往受到数据不足的限制。为了解决茶园土壤湿度预测不准确和效率低下的挑战,并提高预测性能,开发了一种基于改进支持向量机(SVM)的模型来预测茶园的土壤湿度含量。所提出的模型通过纳入新特征和提高支持向量机算法的性能,解决了现有方法的几个局限性,支持向量机算法通过秃鹰搜索算法(BES)进行超参数优化得到了改进。该研究使用了一个综合数据集,该数据集包括从一个茶园收集的土壤湿度测量数据和相关环境变量。应用特征选择技术来识别最具信息性的变量,包括降雨量、温度、湿度和土壤类型。然后使用所选特征来训练和优化支持向量机模型。所提出的模型应用于广西国有伏虎华侨农场一个茶园的土壤水分预测。实验结果表明,与传统支持向量机方法和其他机器学习算法相比,改进的支持向量机模型在预测土壤湿度含量方面具有卓越的性能。该模型在不同时间段和地理位置均表现出高精度、鲁棒性和泛化能力,其相关系数R、均方误差MSE和均方根误差RMSE分别为0.9435、0.0194和0.1392,这有助于提高预测性能,特别是在可用实际数据有限的情况下。所提出的基于支持向量机的模型为茶园管理提供了几个优势。它提供及时准确的土壤湿度预测,使农民能够就灌溉计划和水资源管理做出明智决策。通过优化灌溉措施,该模型有助于提高茶叶作物产量、减少用水量并降低环境影响。