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AI and machine learning for soil analysis: an assessment of sustainable agricultural practices

Bioresources and Bioprocessing 2023 71 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 55 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Muhammad Awais, Wei Zhang Wei Zhang Syed Muhammad Zaigham Abbas Naqvi, Wei Zhang Wei Zhang Wei Zhang Wei Zhang Hao Zhang, Wei Zhang Vijaya Raghavan, Wei Zhang Linze Li, Vijaya Raghavan, Wei Zhang Wei Zhang Wei Zhang Wei Zhang Wei Zhang Vijaya Raghavan, Wei Zhang Wei Zhang Wei Zhang Wei Zhang Wei Zhang Wei Zhang Wei Zhang Wei Zhang Fuad A. Awwad, M. Ijaz Khan, Wei Zhang Emad A. A. Ismail, Wei Zhang Wei Zhang M. Ijaz Khan, Vijaya Raghavan, Wei Zhang Vijaya Raghavan, Vijaya Raghavan, Vijaya Raghavan, Jiandong Hu, Wei Zhang

Summary

Researchers reviewed how artificial intelligence and machine learning tools can improve the accuracy and speed of measuring soil water content and texture compared to traditional statistical methods. Better soil analysis is critical for smart irrigation and sustainable farming, especially as climate variability makes conventional tools less reliable.

Sustainable agricultural practices help to manage and use natural resources efficiently. Due to global climate and geospatial land design, soil texture, soil-water content (SWC), and other parameters vary greatly; thus, real time, robust, and accurate soil analytical measurements are difficult to be developed. Conventional statistical analysis tools take longer to analyze and interpret data, which may have delayed a crucial decision. Therefore, this review paper is presented to develop the researcher's insight toward robust, accurate, and quick soil analysis using artificial intelligence (AI), deep learning (DL), and machine learning (ML) platforms to attain robustness in SWC and soil texture analysis. Machine learning algorithms, such as random forests, support vector machines, and neural networks, can be employed to develop predictive models based on available soil data and auxiliary environmental variables. Geostatistical techniques, including kriging and co-kriging, help interpolate and extrapolate soil property values to unsampled locations, improving the spatial representation of the data set. The false positivity in SWC results and bugs in advanced detection techniques are also evaluated, which may lead to wrong agricultural practices. Moreover, the advantages of AI data processing over general statistical analysis for robust and noise-free results have also been discussed in light of smart irrigation technologies. Conclusively, the conventional statistical tools for SWCs and soil texture analysis are not enough to practice and manage ergonomic land management. The broader geospatial non-numeric data are more suitable for AI processing that may soon help soil scientists develop a global SWC database.

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