Saha Gourab, Shahrin Fariha, Khan Farhan Hasin, Meshkat Mashook Mohammad, Azad Akm Abdul Malek
Electrical and Electronic Engineering Department, BRAC University , Dhaka, Bangladesh.
PLoS One. 2025 Mar 18;20(3):e0319268. doi: 10.1371/journal.pone.0319268. eCollection 2025.
As the world population is increasing day by day, so is the need for more advanced automated precision agriculture to meet the increasing demands for food while decreasing labor work and saving water for crops. Recently, there have been many studies done in this field, but very few discuss implementing smart technologies to present a combined sustainable farming system. In this article, we present a complete integrated design of a smart IoT-based suitable agricultural land and crop selection, along with an irrigation system using agricultural mapping, machine learning, and fuzzy logic for precision agriculture. Multi-spectral band images from Landsat-8 satellite images of a chosen land are employed from USGS Earth Resources Observation and Science (EROS) Center for extracting indices that are used for agricultural analysis, determining the vegetation index, water index, and salinity index of that land using K-means. Furthermore, crop yield is predicted using Linear Regression and Random Forest, achieving accuracies of 93.49% and 95.87%, respectively, while using RMSE (Root Mean Squared Error) as the loss function. The LSTM model is used for healthy vegetation area forecasting highlighting the changes of the vegetation area over time. Such analysis helps to decide whether that land is suitable for farming or not. Multiple soil-parameter measuring sensors are used to identify suitable crop and fertilizer requirements for that land using IoT and machine learning. The ML model-based crop prediction showed 97.35% accuracy utilizing random forest algorithm. Finally, a fuzzy logic-based solar-powered irrigation system is used to monitor the water requirements of those crops and irrigate them according to their needs. The experimental results demonstrated that fuzzy logic has faster calibration rate of 66.23% and helps to save around 61% water in comparison to average logic algorithm. The implementation of a fuzzy logic algorithm significantly optimized water usage compared to traditional manual irrigation methods. These findings highlight the effectiveness of advanced computational techniques in enhancing agricultural practices and resource management.
随着世界人口日益增长,对更先进的自动化精准农业的需求也在增加,以满足不断增长的粮食需求,同时减少劳动力投入并为作物节约用水。最近,该领域已经开展了许多研究,但很少有研究讨论如何应用智能技术来构建一个综合的可持续农业系统。在本文中,我们展示了一个基于智能物联网的适宜农业用地和作物选择的完整集成设计,以及一个利用农业测绘、机器学习和模糊逻辑实现精准农业的灌溉系统。我们从美国地质调查局地球资源观测与科学(EROS)中心获取了选定土地的Landsat - 8卫星图像的多光谱波段图像,用于提取农业分析所需的指标,并使用K均值算法确定该土地的植被指数、水分指数和盐分指数。此外,利用线性回归和随机森林预测作物产量,分别达到了93.49%和95.87%的准确率,同时使用均方根误差(RMSE)作为损失函数。长短期记忆(LSTM)模型用于预测健康植被面积,突出植被面积随时间的变化。这样的分析有助于判断该土地是否适合耕种。使用多个土壤参数测量传感器,通过物联网和机器学习来确定该土地适宜种植的作物和所需肥料。基于机器学习模型的作物预测利用随机森林算法显示准确率为97.35%。最后,一个基于模糊逻辑的太阳能灌溉系统用于监测这些作物的需水量,并根据需求进行灌溉。实验结果表明,与平均逻辑算法相比,模糊逻辑的校准速度更快,为66.23%,并且有助于节约约61%的水资源。与传统的人工灌溉方法相比,模糊逻辑算法的实施显著优化了水资源的利用。这些发现凸显了先进计算技术在改善农业实践和资源管理方面的有效性。