000894126 001__ 894126 000894126 005__ 20220131120350.0 000894126 0247_ $$2doi$$a10.22059/jdesert.2020.79256 000894126 0247_ $$2Handle$$a2128/28321 000894126 037__ $$aFZJ-2021-03053 000894126 082__ $$a550 000894126 1001_ $$0P:(DE-HGF)0$$aFathololoumi, S.$$b0$$eCorresponding author 000894126 245__ $$aSoil temperature modeling using machine learning techniques 000894126 260__ $$aTehran$$bUniv., International Research Center for Living with Desert$$c2020 000894126 3367_ $$2DRIVER$$aarticle 000894126 3367_ $$2DataCite$$aOutput Types/Journal article 000894126 3367_ $$0PUB:(DE-HGF)16$$2PUB:(DE-HGF)$$aJournal Article$$bjournal$$mjournal$$s1626963127_30323 000894126 3367_ $$2BibTeX$$aARTICLE 000894126 3367_ $$2ORCID$$aJOURNAL_ARTICLE 000894126 3367_ $$00$$2EndNote$$aJournal Article 000894126 520__ $$aSoil Temperature (ST) is critical for environmental applications. While its measurement is often difficult, estimation from environmental parameters has shown promise. The purpose of this study was to model ST in cold season from soil properties and environmental parameters. This study was conducted as a pot experiment in Ardebil, Iran. Automatic thermal sensors were installed at 5 and 10 cm depths. Besides, soil properties and environmental parameters were determined based on field and laboratory works. Machine learning methods including Multiple Linear Regression (MLR), Artificial Neural Network (ANN), and Adaptive Neuro-Fuzzy Interface System (ANFIS) were used for modeling ST. The air temperature was observed as the most effective factor in ST modeling. The relationship between soil and air temperature was stronger at 5 cm depth compared to 10 cm. The R2 between soil and air temperature was higher in the absence of sunlight than in its presence. The prediction of ANFIS (R2= 0.96 and MAPE= 10.5) was closer to the observed ST values compared to the ANN (R2= 0.91 and MAPE= 35) and MLR (R2= 0.57 and MAPE= 41). The results revealed the advantage of ANFIS method for ST modeling. This approach can be applied for soil depths and locations with data gap. 000894126 536__ $$0G:(DE-HGF)POF4-2173$$a2173 - Agro-biogeosystems: controls, feedbacks and impact (POF4-217)$$cPOF4-217$$fPOF IV$$x0 000894126 588__ $$aDataset connected to DataCite 000894126 7001_ $$0P:(DE-HGF)0$$aVaezi, A. R.$$b1 000894126 7001_ $$0P:(DE-HGF)0$$aAlavipanah, S. K.$$b2 000894126 7001_ $$0P:(DE-Juel1)129506$$aMontzka, C.$$b3 000894126 7001_ $$0P:(DE-HGF)0$$aGhorbani, A.$$b4 000894126 7001_ $$0P:(DE-HGF)0$$aBiswas, A.$$b5 000894126 773__ $$0PERI:(DE-600)2548403-5$$a10.22059/jdesert.2020.79256$$n2$$p185-199$$tDesert$$v25$$x1026-1346$$y2020 000894126 8564_ $$uhttps://juser.fz-juelich.de/record/894126/files/JDESERT_Volume%2025_Issue%202_Pages%20185-199.pdf$$yOpenAccess 000894126 909CO $$ooai:juser.fz-juelich.de:894126$$pdnbdelivery$$pdriver$$pVDB$$popen_access$$popenaire 000894126 915__ $$0LIC:(DE-HGF)CCBYNV$$2V:(DE-HGF)$$aCreative Commons Attribution CC BY (No Version)$$bDOAJ$$d2020-08-23 000894126 915__ $$0StatID:(DE-HGF)0600$$2StatID$$aDBCoverage$$bEbsco Academic Search$$d2020-08-23 000894126 915__ $$0StatID:(DE-HGF)0501$$2StatID$$aDBCoverage$$bDOAJ Seal$$d2020-08-23 000894126 915__ $$0StatID:(DE-HGF)0500$$2StatID$$aDBCoverage$$bDOAJ$$d2020-08-23 000894126 915__ $$0StatID:(DE-HGF)0510$$2StatID$$aOpenAccess 000894126 915__ $$0StatID:(DE-HGF)0030$$2StatID$$aPeer Review$$bASC$$d2020-08-23 000894126 9101_ $$0I:(DE-588b)5008462-8$$6P:(DE-Juel1)129506$$aForschungszentrum Jülich$$b3$$kFZJ 000894126 9131_ $$0G:(DE-HGF)POF4-217$$1G:(DE-HGF)POF4-210$$2G:(DE-HGF)POF4-200$$3G:(DE-HGF)POF4$$4G:(DE-HGF)POF$$9G:(DE-HGF)POF4-2173$$aDE-HGF$$bForschungsbereich Erde und Umwelt$$lErde im Wandel – Unsere Zukunft nachhaltig gestalten$$vFür eine nachhaltige Bio-Ökonomie – von Ressourcen zu Produkten$$x0 000894126 9141_ $$y2021 000894126 920__ $$lyes 000894126 9201_ $$0I:(DE-Juel1)IBG-3-20101118$$kIBG-3$$lAgrosphäre$$x0 000894126 980__ $$ajournal 000894126 980__ $$aVDB 000894126 980__ $$aUNRESTRICTED 000894126 980__ $$aI:(DE-Juel1)IBG-3-20101118 000894126 9801_ $$aFullTexts