Artificial intelligence to predict soil temperatures by development of novel model
Kannojia, P., Sharma, P. & Sharma, K. Climate Change and Agricultural Ecosystems 43–64 (Elsevier, 2019).
Yang, T., Lupwayi, N., Marc, S.-A., Siddique, K. H. & Bainard, L. D. Anthropogenic drivers of soil microbial communities and impacts on soil biological functions in agroecosystems. Glob. Ecol. Conserv. 27, e01521 (2021).
Frouz, J. Climate Change and Soil Interactions 1–19 (Elsevier, 2020).
Li, M., Wu, P. & Ma, Z. A comprehensive evaluation of soil moisture and soil temperature from third-generation atmospheric and land reanalysis data sets. Int. J. Climatol. 40, 5744–5766 (2020).
Zhang, L. et al. Combined effects of temperature and precipitation on soil organic carbon changes in the uplands of eastern China. Geoderma 337, 1105–1115 (2019).
Du, P., Xu, M. & Li, R. Impacts of climate change on water resources in the major countries along the belt and road. PeerJ 9, e12201 (2021).
Zabihi, N. & Saafi, M. Recent developments in the energy harvesting systems from road infrastructures. Sustainability 12, 6738 (2020).
Yadav, S. S., Hegde, V., Habibi, A. B., Dia, M. & Verma, S. Climate change agriculture and food security. In Food Security and Climate Change 1st edn (eds Yadav, S. S., Redden, R. J., Hatfield, J. L. et al.) (Wiley, 2019).
Dwevedi, A. et al. New Pesticides and Soil Sensors 561–594 (Elsevier, 2017).
Chatterjee, A. et al. Temperature sensitivity of nitrogen dynamics of agricultural soils of the United States. Open J. Soil Sci. 10, 298–305 (2020).
Jeong, S. H., Eom, J.-Y., Park, J. Y., Chun, J. H. & Lee, J. S. Effect of precipitation on soil respiration in a temperate broad-leaved forest. J. Ecol. Environ. 42, 1–8 (2018).
Wu, T., Hao, S. & Kang, L. Effects of soil temperature and moisture on the development and survival of grasshopper eggs in inner mongolian grasslands. Front. Ecol. Evol. 9, 727911 (2021).
Xu, C., Qu, J. J., Hao, X., Zhu, Z. & Gutenberg, L. Surface soil temperature seasonal variation estimation in a forested area using combined satellite observations and in-situ measurements. Int. J. Appl. Earth Obs. Geoinf. 91, 102156 (2020).
Zheng, Y. et al. Climatic factors have unexpectedly strong impacts on soil bacterial β-diversity in 12 forest ecosystems. Soil Biol. Biochem. 142, 107699 (2020).
Azizi-Rad, M., Guggenberger, G., Ma, Y. & Sierra, C. A. Sensitivity of soil respiration rate with respect to temperature, moisture and oxygen under freezing and thawing. Soil Biol. Biochem. 165, 108488 (2022).
Yang, Y. et al. Global effects on soil respiration and its temperature sensitivity depend on nitrogen addition rate. Soil Biol. Biochem. 174, 108814 (2022).
Xu, S., Sheng, C. & Tian, C. Changing soil carbon: Influencing factors, sequestration strategy and research direction. Carbon Balance Manag. 15, 2 (2020).
Chakraborty, P. K., Banerjee, S., Nath, R. & Samanta, S. Assessing congenial soil temperature and its impact on root growth, grain yield of summer rice under varying water stress condition in lower gangetic plain of India. J. Saudi Soc. Agric. Sci. 21, 98–107 (2022).
Hilty, J., Muller, B., Pantin, F. & Leuzinger, S. Plant growth: The what, the how, and the why. New Phytol. 232, 25–41 (2021).
Burger, D., Bauke, S., Amelung, W. & Sommer, M. Fast agricultural topsoil re-formation after complete topsoil loss–evidence from a unique historical field experiment. Geoderma 434, 116492 (2023).
Alizamir, M. et al. Development of a robust daily soil temperature estimation in semi-arid continental climate using meteorological predictors based on computational intelligent paradigms. PLoS ONE 18, e0293751 (2023).
Jiao, M. et al. Spatiotemporal variations of soil temperature at 10 and 50 cm depths in permafrost regions along the Qinghai-Tibet engineering corridor. Remote Sens. 15, 455 (2023).
Bekhzod, A. et al. Present state of pasture types of the central kyzylkum. Am. J. Plant Sci. 7, 677 (2016).
Juraev, Z. MDPI Preprint Water Security. Authorea. (2023).
Khasanov, S. et al. Impact assessment of soil salinity on crop production in Uzbekistan and its global significance. Agric. Ecosyst. Environ. 342, 108262 (2023).
Khamidov, M., Ishchanov, J., Hamidov, A., Donmez, C. & Djumaboev, K. Assessment of soil salinity changes under the climate change in the Khorezm region, Uzbekistan. Int. J. Environ. Res. Public Health 19, 8794 (2022).
Rengasamy P. Oxford Research Encyclopedia of Environmental Science. (2016).
Liu, Z. et al. Water balance analysis based on a quantitative evapotranspiration inversion in the Nukus irrigation area Lower Amu River Basin. Remote Sens. 12, 2317 (2020).
Lubin, N. Environmental Resources and Constraints in the Former Soviet Republics 289–306 (Routledge, 2019).
Rakhmatullaev, S., Huneau, F., Le Coustumer, P. & Motelica-Heino, M. 2011 Sustainable irrigated agricultural production of countries in economic transition: Challenges and opportunities (a case study of Uzbekistan, Central Asia). Agric. Prod.. 139–161. https://insu.hal.science/insu-00460453 (2011).
Orazaliev, K., Mukasheva, A., Ybyray, N. & Nurekeshov, T. Current regulation of water relations in Central Asia. Reg. Sci. Policy Pract., 100038. https://eabr.org/en/analytics/special-reports/regulation-of-the-water-and-energy-complex-of-central-asia/ (2024).
Biazar, S. M., Shehadeh, H. A., Ghorbani, M. A., Golmohammadi, G. & Saha, A. Soil temperature forecasting using a hybrid artificial neural network in florida subtropical Grazinglands agro-ecosystems. Sci. Rep. 14, 1535 (2024).
Wang, H. et al. Scientific discovery in the age of artificial intelligence. Nature 620, 47–60 (2023).
Ali, S. et al. Explainable artificial intelligence (XAI): What we know and what is left to attain trustworthy artificial intelligence. Inf. Fusion 99, 101805 (2023).
Imanian, H., Shirkhani, H., Mohammadian, A., Hiedra Cobo, J. & Payeur, P. Spatial interpolation of soil temperature and water content in the land-water interface using artificial intelligence. Water 15, 473 (2023).
Talsma, C. J., Solander, K. C., Mudunuru, M. K., Crawford, B. & Powell, M. R. Frost prediction using machine learning and deep neural network models. Front. Artif. Intell. 5, 963781 (2023).
Meddage, P. et al. Interpretation of machine-learning-based (black-box) wind pressure predictions for low-rise gable-roofed buildings using Shapley additive explanations (SHAP). Buildings 12, 734 (2022).
Mampitiya, L., Rathnayake, N., Hoshino, Y. & Rathnayake, U. Performance of machine learning models to forecast PM10 levels. MethodsX 12, 102557 (2024).
Kujawska, J., Kulisz, M., Oleszczuk, P. & Cel, W. Machine learning methods to forecast the concentration of PM10 in lublin Poland. Energies 15, 6428 (2022).
Moharm, K., Eltahan, M. & Elsaadany, E. In 2020 International Conference on Smart Grids and Energy Systems (SGES), 922–927 (IEEE, 2020).
Mampitiya, L. et al. Machine learning techniques to predict the air quality using meteorological data in two urban areas in Sri Lanka. Environments 10, 141 (2023).
Narisetty, N. N. Handbook of Statistics 207–248 (Elsevier, 2020).
Liu, W. & Li, Q. An efficient elastic net with regression coefficients method for variable selection of spectrum data. PLoS ONE 12, e0171122 (2017).
Pereira, J. M., Basto, M. & Da Silva, A. F. The logistic lasso and ridge regression in predicting corporate failure. Proced. Econ. Finance 39, 634–641 (2016).
Mampitiya, L., Rathnayake, N., Hoshino, Y. & Rathnayake, U. Forecasting PM10 levels in Sri Lanka: A comparative analysis of machine learning models PM10. J. Hazard. Mater. Adv. 13, 100395 (2024).
Imanian, H., Hiedra Cobo, J., Payeur, P., Shirkhani, H. & Mohammadian, A. A comprehensive study of artificial intelligence applications for soil temperature prediction in ordinary climate conditions and extremely hot events. Sustainability 14, 8065 (2022).
Ozturk, M., Salman, O. & Koc, M. Artificial neural network model for estimating the soil temperature. Can. J. Soil Sci. 91, 551–562 (2011).
Chathuranika, I., Khaniya, B., Neupane, K., Rustamjonovich, K. M. & Rathnayake, U. Implementation of water-saving agro-technologies and irrigation methods in agriculture of Uzbekistan on a large scale as an urgent issue. Sustain. Water Resour. Manag. 8, 155 (2022).
Komariah, et al. The effects of soil temperature from soil mulching and harvest age on phenol, flavonoid and antioxidant contents of java tea (Orthosiphon aristatus B.). Chem. Biol. Technol. Agric. 8, 1–13 (2021).
Szczerba, A. et al. Effect of low temperature on germination, growth, and seed yield of four soybean (Glycine max L.) cultivars. Agronomy 11, 800 (2021).
Liu, P., Xia, Y. & Shang, M. A bench-scale assessment of the effect of soil temperature on bare soil evaporation in winter. Hydrol. Res. 51, 1349–1357 (2020).
Li, Y. et al. Analysis on the temporal and spatial characteristics of the shallow soil temperature of the Qinghai-Tibet Plateau. Sci. Rep. 12, 19746 (2022).
Azamathulla, H. M., Rathnayake, U. & Shatnawi, A. Gene expression programming and artificial neural network to estimate atmospheric temperature in Tabuk Saudi Arabia. Appl. Water Sci. 8(184), 1–7 (2018).
Perera, A. et al. Recent climatic trends in Trinidad and Tobago, West Indies. Asia-Pac. J. Sci. Technol. 25(2), 1–11 (2020).