通过人工智能方法和空间数据的整合划分适合种植水稻、小麦和大麦的土地

IF 1.4 Q3 AGRONOMY Agricultural Research Pub Date : 2023-12-22 DOI:10.1007/s40003-023-00686-3
Nikrooz Bagheri, Ali Rajabipour, Alireza Sabzevari
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引用次数: 0

摘要

确定适合种植不同作物的土地是提高农业生产率的必要行动。本研究通过整合伊朗 Silakhor 平面的智能方法和空间数据,对适合种植水稻、小麦和大麦的土地进行分区。区划采用了机器学习方法,包括将人工神经网络和随机森林与地理信息系统数据相结合。九个农业生态参数被用作输入层。作为输出层的适宜性水平分为四个等级:非常适宜 (S1)、适宜 (S2)、相对不适宜 (S3) 和不适宜 (N)。评估模型时考虑了 720 个样本。70% 的样本数据用于训练,15% 用于测试,15% 用于验证。得出变异系数、均方根误差和 ROC(接收者工作特征)曲线下面积,以评估模型的性能。结果表明,这两种方法都足以评估研究区域水稻、小麦和大麦的土地适宜性。通过使用 ANN 模型,56.1%、67.1% 和 80.7% 的研究区域适合种植水稻、小麦和大麦。通过使用 RF 模型,分别有 58.6%、58.3% 和 62.6% 的研究区域适合种植水稻、小麦和大麦。
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Zoning Suitable Land for the Cultivation of Rice, Wheat, and Barley by Integration of Artificial Intelligent Methods and Spatial Data

Determination of suitable land for cultivating different crops is an essential action for increasing agricultural productivity. The present research is carried out to zone suitable lands for cultivating rice, wheat, and barley by integrating intelligent methods and spatial data in the Silakhor plane of Iran. Machine learning methods, including artificial neural network and random forest in integration with geographic information system data, are used for zoning. The nine agro ecological parameters were used as input layers. The suitability level as an output layer is classified into four classes: very suitable (S1), suitable (S2), relatively unsuitable (S3), and not suitable (N). The 720 samples were considered to evaluate the models. The 70% of sample data were used for training, 15% for testing, and 15% for validation. The coefficient of variation, root mean square error, and area under the ROC (Receiver Operating Characteristics) curve were obtained to evaluate the performance of the models. Based on the results, both methods have sufficient validity to assess the land suitability of rice, wheat, and barley in the studied area. By using the ANN model, 56.1%, 67.1%, and 80.7% of the studied areas were suitable for cultivating rice, wheat, and barley, respectively. By using the RF model, 58.6%, 58.3%, and 62.6% of the studied areas were suitable for cultivating rice, wheat, and barley, respectively.

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来源期刊
CiteScore
3.80
自引率
0.00%
发文量
24
期刊介绍: The main objective of this initiative is to promote agricultural research and development. The journal will publish high quality original research papers and critical reviews on emerging fields and concepts for providing future directions. The publications will include both applied and basic research covering the following disciplines of agricultural sciences: Genetic resources, genetics and breeding, biotechnology, physiology, biochemistry, management of biotic and abiotic stresses, and nutrition of field crops, horticultural crops, livestock and fishes; agricultural meteorology, environmental sciences, forestry and agro forestry, agronomy, soils and soil management, microbiology, water management, agricultural engineering and technology, agricultural policy, agricultural economics, food nutrition, agricultural statistics, and extension research; impact of climate change and the emerging technologies on agriculture, and the role of agricultural research and innovation for development.
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