Haq Yasin Ul, Shahbaz Muhammad, Asif Shahzad, Ouahada Khmaies, Hamam Habib
Department of Computer Science, University of Engineering and Technology, Lahore 39161, Pakistan.
Department of Computer Engineering, University of Engineering and Technology, Lahore 39161, Pakistan.
Sensors (Basel). 2023 Sep 27;23(19):8121. doi: 10.3390/s23198121.
Soil, a significant natural resource, plays a crucial role in supporting various ecosystems and serves as the foundation of Pakistan's economy due to its primary use in agriculture. Hence, timely monitoring of soil type and salinity is essential. However, traditional methods for identifying soil types and detecting salinity are time-consuming, requiring expert intervention and extensive laboratory experiments. The objective of this study is to propose a model that leverages MODIS Terra data to identify soil types and detect soil salinity. To achieve this, 195 soil samples were collected from Lahore, Kot Addu, and Kohat, dating from October 2022 to November 2022. Simultaneously, spectral data of the same regions were obtained to spatially map soil types and salinity of bare land. The spectral reflectance of band values, salinity indices, and vegetation indices were utilized to classify the soil types and predict soil salinity. To perform the classification and regression tasks, the study employed three popular techniques in the research community: Random Forest (RF), Ada Boost (AB), and Gradient Boosting (GB), along with Decision Tree (DT), K-Nearest Neighbor (KNN), and Extra Tree (ET). A 70-30 test train validation split was used for the implementation of these techniques. The efficacy of the multi-class classification models for soil types was evaluated using accuracy, precision, recall, and f1-score. On the other hand, the regression models' performances were evaluated and compared using R-squared (R2), Mean Squared Error (MSE), Mean Absolute Error (MAE), and Root Mean Squared Error (RMSE). The results demonstrated that Random Forest outperformed other methods for both predicting soil types (accuracy = 65.38, precision = 0.60, recall = 0.57, and f1-score = 0.57) and predicting salinity (R2 = 0.90, MAE = 0.56, MSE = 0.98, RMSE = 0.97). Finally, the study designed a web portal to enable real-time prediction of soil types and salinity using these models. This web portal can be utilized by farmers and decision-makers to make informed decisions regarding soil, crop cultivation, and agricultural planning.
土壤是一种重要的自然资源,在支持各种生态系统方面发挥着关键作用,并且由于其在农业中的主要用途,它还是巴基斯坦经济的基础。因此,及时监测土壤类型和盐度至关重要。然而,传统的识别土壤类型和检测盐度的方法耗时费力,需要专家干预和大量的实验室实验。本研究的目的是提出一种利用中分辨率成像光谱仪(MODIS)陆地卫星数据来识别土壤类型和检测土壤盐度的模型。为实现这一目标,于2022年10月至2022年11月从拉合尔、科特阿杜和科哈特采集了195个土壤样本。同时,获取了同一地区的光谱数据,以便对裸地的土壤类型和盐度进行空间映射。利用波段值的光谱反射率、盐度指数和植被指数对土壤类型进行分类并预测土壤盐度。为执行分类和回归任务,该研究采用了研究界常用的三种技术:随机森林(RF)、自适应增强(AB)和梯度提升(GB),以及决策树(DT)、K近邻(KNN)和极端随机树(ET)。使用70 - 30的测试集、训练集和验证集划分来实施这些技术。使用准确率、精确率、召回率和F1分数评估土壤类型多类分类模型的有效性。另一方面,使用决定系数(R²)、均方误差(MSE)、平均绝对误差(MAE)和均方根误差(RMSE)评估和比较回归模型的性能。结果表明,随机森林在预测土壤类型(准确率 = 65.38,精确率 = 0.60,召回率 = 0.57,F1分数 = 0.57)和预测盐度(R² = 0.90,MAE = 0.56,MSE = 0.98,RMSE = 0.97)方面均优于其他方法。最后,该研究设计了一个网络门户,以便使用这些模型实时预测土壤类型和盐度。农民和决策者可以利用这个网络门户就土壤、作物种植和农业规划做出明智的决策。