Tang Ruipeng, Wei Sun, Jianxun Tang, Aridas Narendra Kumar, Talip Mohamad Sofian Abu
Faculty of Engineering, University of Malaya, Kuala Lumpur, Malaysia.
Faculty of Electronics and Electrical Engineering, Zhaoqing University, Zhaoqing, Guangdong, China.
Front Plant Sci. 2024 Jun 5;15:1387977. doi: 10.3389/fpls.2024.1387977. eCollection 2024.
Durian is one of the tropical fruits that requires soil nutrients in its cultivation. It is important to understand the relationship between the content of critical nutrients, such as nitrogen (N), phosphorus (P), and potassium (K) in the soil and durian yield. How to optimize the fertilization plan is also important to the durian planting.
Thus, this study proposes an Improved Radial Basis Neural Network Algorithm (IM-RBNNA) in the durian precision fertilization. It uses the gray wolf algorithm to optimize the weights and thresholds of the RBNNA algorithm, which can improve the prediction accuracy of the RBNNA algorithm for the soil nutrient content and its relationship with the durian yield. It also collects the soil nutrients and historical yield data to build the IM-RBNNA model and compare with other similar algorithms.
The results show that the IM-RBNNA algorithm is better than the other three algorithms in the average relative error, average absolute error, and coefficient of determination between the predicted and true values of soil N, K, and P fertilizer contents. It also predicts the relationship between soil nutrients and yield, which is closer to the true value.
It shows that the IM-RBNNA algorithm can accurately predict the durian soil nutrient content and yield, which is benefited for farmers to make agronomic plans and management strategies. It uses soil nutrient resources efficiently, which reduces the environmental negative impacts. It also ensures that the durian tree can obtain the appropriate amount of nutrients, maximize its growth potential, reduce production costs, and increase yields.
榴莲是热带水果之一,其种植需要土壤养分。了解土壤中关键养分(如氮(N)、磷(P)和钾(K))的含量与榴莲产量之间的关系非常重要。如何优化施肥计划对榴莲种植也很重要。
因此,本研究在榴莲精准施肥中提出了一种改进的径向基神经网络算法(IM-RBNNA)。它使用灰狼算法优化RBNNA算法的权重和阈值,这可以提高RBNNA算法对土壤养分含量及其与榴莲产量关系的预测精度。它还收集土壤养分和历史产量数据来构建IM-RBNNA模型,并与其他类似算法进行比较。
结果表明,IM-RBNNA算法在土壤N、K和P肥料含量的预测值与真实值之间的平均相对误差、平均绝对误差和决定系数方面优于其他三种算法。它还预测了土壤养分与产量之间的关系,更接近真实值。
结果表明,IM-RBNNA算法可以准确预测榴莲土壤养分含量和产量,这有助于农民制定农艺计划和管理策略。它有效地利用土壤养分资源,减少对环境的负面影响。它还确保榴莲树能够获得适量的养分,最大限度地发挥其生长潜力,降低生产成本并提高产量。